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22 Commits

Author SHA1 Message Date
Andy Lee
679848a3b7 simplify: Make templates more concise and user-friendly 2025-09-19 13:51:15 -07:00
Andy Lee
da811061f4 feat: Add GitHub PR and issue templates for better contributor experience 2025-09-19 11:56:40 -07:00
Andy Lee
e93c0dec6f [Fix] Enable AST chunking when installed (package chunking utils) (#101)
* fix(core): package chunking utils for AST chunking; re-export in apps; CLI imports packaged utils

* style

* chore: fix ruff warnings (RUF059, F401)

* style
2025-09-17 18:44:00 -07:00
GitHub Actions
c5a29f849a chore: release v0.3.4 2025-09-16 20:45:22 +00:00
Yichuan Wang
3b8dc6368e Ast fork (#92) 2025-09-08 18:43:31 -07:00
Aiden Huang
e309f292de docs(mcp): add root llms.txt for MCP discovery; update MCP README to reference it; refs #76 (#91) 2025-09-07 14:39:58 -07:00
AWS Mcleod
0d9f92ea0f Add grep search functionality - Issue #86 (#87)
* Add grep search functionality to LeannSearcher

- Add use_grep parameter to search method
- Implement grep-based search on .jsonl files
- Add fallback Python regex search
- Support same SearchResult format as semantic search

Addresses issue #86

* fix: resolve linting errors

* docs: add grep search example

* docs: add grep search to README examples

* refactor: remove regex fallback, move grep example to features section

* docs: add grep search to Advanced Features with comprehensive guide
2025-09-05 13:48:07 -07:00
GitHub Actions
b0b353d279 chore: release v0.3.3 2025-09-02 21:29:56 +00:00
Andy Lee
4dffdfedbe feat: Add ARM64 Linux wheel support for leann-backend-hnsw (#83)
* feat: Add ARM64 Linux wheel support for leann-backend-hnsw

* fix: Use OpenBLAS for ARM64 Linux builds instead of Intel MKL

* fix: Configure Faiss with SVE optimization for ARM64 builds

- Set FAISS_OPT_LEVEL to "sve" for ARM64 architecture
- Disable x86-specific SIMD instructions (AVX2, AVX512, SSE4.1)
- Use ARM64-native SVE optimization as per Faiss conda build scripts
- Add architecture detection and proper configuration messages

Fixes compilation error: "xmmintrin.h: No such file or directory"
on ubuntu-24.04-arm runners.

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

* fix: Apply ARM64 compatibility fix directly to Faiss submodule

- Modify faiss/impl/pq.cpp to use x86-specific preprocessor conditions
- Remove patch file approach in favor of direct submodule modification
- Update CMakeLists.txt to reflect the submodule changes
- Fixes ARM64 Linux compilation by preventing x86 SIMD header inclusion

This resolves the "xmmintrin.h: No such file or directory" error
when building ARM64 Linux wheels for Docker compatibility.

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

* chore: Update Faiss submodule to include ARM64 compatibility fix

- Points to commit ed96ff7d with x86-specific preprocessor conditions
- Enables successful ARM64 Linux wheel builds

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

* retrigger ci

* fix: Use different optimization levels for ARM64 based on platform

- Use SVE optimization only for ARM64 Linux
- Use generic optimization for ARM64 macOS to avoid clang SVE issues
- Fixes macOS ARM64 compilation errors with SVE instructions

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

* feat: Update DiskANN submodule with OpenBLAS fallback support

- Points to commit 5c396c4 with ARM64 Linux OpenBLAS support
- Enables DiskANN to build on ARM64 Linux using standard BLAS libraries
- Resolves Intel MKL dependency issues for Docker ARM64 deployments

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

* fix: Update DiskANN submodule with ZeroMQ polling configuration

- Points to commit 3a1016e with explicit polling method setup
- Resolves ZeroMQ autodetection issues on ARM64 Linux
- Ensures stable cross-platform ZeroMQ builds

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

* retrigger ci

* fix: Update DiskANN submodule with ARM64 compiler flags fix

- Points to commit a0dc600 with architecture-specific compiler flags
- Removes x86 SIMD flags on ARM64 Linux to fix compilation errors
- Enables successful ARM64 Linux wheel builds

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

* fix: Update DiskANN submodule with ARM64 compiler flags fix

- Points to commit 0921664 with architecture-specific compiler flags
- Removes x86 SIMD flags on ARM64 Linux to fix compilation errors
- Enables successful ARM64 Linux wheel builds

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

* retrigger ci

* fix: Update DiskANN submodule with cross-platform prefetch support

- Points to commit 39192d6 with unified prefetch macros
- Replaces all Intel-specific _mm_prefetch calls with cross-platform macros
- Enables ARM64 Linux compatibility while maintaining x86 performance
- Resolves all remaining compilation errors for ARM64 builds

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

* fix: Update DiskANN submodule with corrected ARM64 compatibility fixes

- Points to commit 3cb87a8 with proper x86 platform detection
- Includes ARM64 fallback for AVXDistanceInnerProductFloat function
- Resolves all remaining '__m256 was not declared' compilation errors
- Enables successful ARM64 Linux wheel builds for Docker compatibility

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

* fix: Update DiskANN submodule with template type handling fix

- Points to commit d396bc3 with corrected template type handling
- Fixes DistanceInnerProduct template instantiation for int8_t/uint8_t types
- Resolves 'cannot convert const signed char* to const float*' error
- Completes ARM64 Linux compilation compatibility

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

* fix: Update DiskANN submodule with DistanceFastL2::norm template fix

- Points to commit 69d9a99 with corrected template type handling
- Fixes DistanceFastL2::norm template instantiation for int8_t/uint8_t types
- Resolves another 'cannot convert const signed char* to const float*' error
- Continues ARM64 Linux compilation compatibility improvements

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

* fix: Update DiskANN submodule with LAPACKE header detection

- Points to commit 64a9e01 with LAPACKE header path configuration
- Adds pkg-config based detection for LAPACKE include directories
- Resolves 'lapacke.h: No such file or directory' compilation error
- Completes OpenBLAS integration for ARM64 Linux builds

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

* fix: Update DiskANN submodule with enhanced LAPACKE header detection

- Points to commit 18d0721 with fallback LAPACKE header search paths
- Checks multiple standard locations for lapacke.h on various systems
- Improves ARM64 Linux compatibility for OpenBLAS builds
- Should resolve 'lapacke.h: No such file or directory' errors

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

* fix: Add liblapacke-dev package for ARM64 Linux builds

- Add liblapacke-dev to ARM64 dependencies alongside libopenblas-dev
- Provides lapacke.h header file needed for LAPACK C interface
- Fixes 'lapacke.h: No such file or directory' compilation error
- Enables complete OpenBLAS + LAPACKE support for ARM64 wheel builds

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

* fix: Update DiskANN submodule with cosine_similarity.h x86 intrinsics fix

- Points to commit dbb17eb with corrected conditional compilation
- Fixes immintrin.h inclusion for ARM64 compatibility in cosine_similarity.h
- Resolves 'immintrin.h: No such file or directory' error
- Continues systematic ARM64 Linux compilation fixes

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

* fix: Update DiskANN submodule with LAPACKE library linking fix

- Points to commit 19f9603 with explicit LAPACKE library discovery and linking
- Resolves 'undefined symbol: LAPACKE_sgesdd' runtime error on ARM64 Linux
- Completes ARM64 Linux wheel build compatibility for Docker deployments

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-Authored-By: Claude <noreply@anthropic.com>

---------

Co-authored-by: Claude <noreply@anthropic.com>
2025-09-02 14:27:06 -07:00
Yichuan Wang
d41e467df9 [CLI] More robust leann list and leann build (#84)
* chore(submodule): bump faiss to latest storage-efficient build

* [chore] add slack to share use case

* [cli] better gitignore / better leann list

* [cli] fix # 81
2025-09-01 18:36:27 -07:00
yichuan520030910320
4ca0489cb1 [chore] add slack to share use case 2025-09-01 13:31:16 -07:00
yichuan520030910320
e83a671918 chore(submodule): bump faiss to latest storage-efficient build 2025-09-01 13:31:12 -07:00
yichuan520030910320
4e5b73ce7b fix bug introduce in #58 2025-08-22 02:35:09 -07:00
Gabriel Dehan
31b4973141 Metadata filtering feature (#75)
* Metadata filtering initial version

* Metadata filtering initial version

* Fixes linter issues

* Cleanup code

* Clean up and readme

* Fix after review

* Use UV in example

* Merge main into feature/metadata-filtering
2025-08-20 19:57:56 -07:00
Yichuan Wang
dde2221513 [EXP] Update the benchmark code (#71)
* chore(hnsw): reorder imports to satisfy ruff I001

* chore: sync changes; fix Ruff import order; update examples, benchmarks, and dependencies

- Fix import order in packages/leann-backend-hnsw/leann_backend_hnsw/hnsw_backend.py (Ruff I001)

- Update benchmarks/run_evaluation.py

- Update apps/base_rag_example.py and leann-core API usage

- Add benchmarks/data/README.md

- Update uv.lock

- Misc cleanup

- Note: added paru-bin as an embedded git repo; consider making it a submodule (git rm --cached paru-bin) if unintended

* chore: remove unintended embedded repo paru-bin and ignore it

Fix CI: avoid missing .gitmodules entry by removing gitlink and adding to .gitignore.

* ci: retrigger after removing unintended gitlink (paru-bin)

* feat(benchmarks): add --batch-size option and plumb through to HNSW search (default 0)

* feat(hnsw): add batch_size to LeannSearcher.search and LeannChat.ask; forward only for HNSW backend

* chore(logging): surface recompute and batching params; enable INFO logging in benchmark

* feat(embeddings): add optional manual tokenization path (HF tokenizer+model) with mean pooling; default remains SentenceTransformer.encode

* fix micro bench and fix pre commit

* update readme

---------

Co-authored-by: yichuan-w <yichuan-w@users.noreply.github.com>
2025-08-20 17:31:46 -07:00
Andy Lee
6d11e86e71 Run Evaluation RPJ Wiki on Arch Linux (#74)
* chore: ignore benchmark data

* perf: avoid merging offset dicts for lower mem usage

* style: format

* docs: rpj_wiki
2025-08-20 12:25:54 -07:00
Gabriel Dehan
13bb561aad Add AST-aware code chunking for better code understanding (#58)
* feat(core): Add AST-aware code chunking with astchunk integration

This PR introduces intelligent code chunking that preserves semantic boundaries
(functions, classes, methods) for better code understanding in RAG applications.

Key Features:
- AST-aware chunking for Python, Java, C#, TypeScript files
- Graceful fallback to traditional chunking for unsupported languages
- New specialized code RAG application for repositories
- Enhanced CLI with --use-ast-chunking flag
- Comprehensive test suite with integration tests

Technical Implementation:
- New chunking_utils.py module with enhanced chunking logic
- Extended base RAG framework with AST chunking arguments
- Updated document RAG with --enable-code-chunking flag
- CLI integration with proper error handling and fallback

Benefits:
- Better semantic understanding of code structure
- Improved search quality for code-related queries
- Maintains backward compatibility with existing workflows
- Supports mixed content (code + documentation) seamlessly

Dependencies:
- Added astchunk and tree-sitter parsers to pyproject.toml
- All dependencies are optional - fallback works without them

Testing:
- Comprehensive test suite in test_astchunk_integration.py
- Integration tests with document RAG
- Error handling and edge case coverage

Documentation:
- Updated README.md with AST chunking highlights
- Added ASTCHUNK_INTEGRATION.md with complete guide
- Updated features.md with new capabilities

* Refactored chunk utils

* Remove useless import

* Update README.md

* Update apps/chunking/utils.py

Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>

* Update apps/code_rag.py

Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>

* Fix issue

* apply suggestion from @Copilot

Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>

* Fixes after pr review

* Fix tests not passing

* Fix linter error for documentation files

* Update .gitignore with unwanted files

---------

Co-authored-by: Copilot <175728472+Copilot@users.noreply.github.com>
Co-authored-by: Andy Lee <andylizf@outlook.com>
2025-08-19 23:35:31 -07:00
GitHub Actions
0174ba5571 chore: release v0.3.2 2025-08-19 09:41:40 +00:00
Andy Lee
03af82d695 fix: leann mcp search cwd & interactive issues (#72) 2025-08-19 02:27:06 -07:00
GitHub Actions
738f1dbab8 chore: release v0.3.1 2025-08-19 05:56:45 +00:00
yichuan520030910320
37d990d51c [feature] fix cli 2025-08-18 22:55:43 -07:00
Andy Lee
a6f07a54f1 fix: Use uv venv for Arch Linux CI wheel installation (#69)
- Use astral-sh/setup-uv@v4 action for consistency with other jobs
- Create virtual environment with uv venv to bypass PEP 668 restrictions
- Install wheels using uv pip install for faster dependency resolution
- Maintain tool consistency across the entire CI pipeline

🤖 Generated with [Claude Code](https://claude.ai/code)

Co-authored-by: Claude <noreply@anthropic.com>
2025-08-16 21:32:19 -07:00
52 changed files with 7626 additions and 4151 deletions

50
.github/ISSUE_TEMPLATE/bug_report.yml vendored Normal file
View File

@@ -0,0 +1,50 @@
name: Bug Report
description: Report a bug in LEANN
labels: ["bug"]
body:
- type: textarea
id: description
attributes:
label: What happened?
description: A clear description of the bug
validations:
required: true
- type: textarea
id: reproduce
attributes:
label: How to reproduce
placeholder: |
1. Install with...
2. Run command...
3. See error
validations:
required: true
- type: textarea
id: error
attributes:
label: Error message
description: Paste any error messages
render: shell
- type: input
id: version
attributes:
label: LEANN Version
placeholder: "0.1.0"
validations:
required: true
- type: dropdown
id: os
attributes:
label: Operating System
options:
- macOS
- Linux
- Windows
- Docker
validations:
required: true

8
.github/ISSUE_TEMPLATE/config.yml vendored Normal file
View File

@@ -0,0 +1,8 @@
blank_issues_enabled: true
contact_links:
- name: Documentation
url: https://github.com/LEANN-RAG/LEANN-RAG/tree/main/docs
about: Read the docs first
- name: Discussions
url: https://github.com/LEANN-RAG/LEANN-RAG/discussions
about: Ask questions and share ideas

View File

@@ -0,0 +1,27 @@
name: Feature Request
description: Suggest a new feature for LEANN
labels: ["enhancement"]
body:
- type: textarea
id: problem
attributes:
label: What problem does this solve?
description: Describe the problem or need
validations:
required: true
- type: textarea
id: solution
attributes:
label: Proposed solution
description: How would you like this to work?
validations:
required: true
- type: textarea
id: example
attributes:
label: Example usage
description: Show how the API might look
render: python

13
.github/pull_request_template.md vendored Normal file
View File

@@ -0,0 +1,13 @@
## What does this PR do?
<!-- Brief description of your changes -->
## Related Issues
Fixes #
## Checklist
- [ ] Tests pass (`uv run pytest`)
- [ ] Code formatted (`ruff format` and `ruff check`)
- [ ] Pre-commit hooks pass (`pre-commit run --all-files`)

View File

@@ -54,6 +54,17 @@ jobs:
python: '3.12'
- os: ubuntu-22.04
python: '3.13'
# ARM64 Linux builds
- os: ubuntu-24.04-arm
python: '3.9'
- os: ubuntu-24.04-arm
python: '3.10'
- os: ubuntu-24.04-arm
python: '3.11'
- os: ubuntu-24.04-arm
python: '3.12'
- os: ubuntu-24.04-arm
python: '3.13'
- os: macos-14
python: '3.9'
- os: macos-14
@@ -87,7 +98,7 @@ jobs:
runs-on: ${{ matrix.os }}
steps:
- uses: actions/checkout@v4
- uses: actions/checkout@v5
with:
ref: ${{ inputs.ref }}
submodules: recursive
@@ -98,7 +109,7 @@ jobs:
python-version: ${{ matrix.python }}
- name: Install uv
uses: astral-sh/setup-uv@v4
uses: astral-sh/setup-uv@v6
- name: Install system dependencies (Ubuntu)
if: runner.os == 'Linux'
@@ -108,13 +119,46 @@ jobs:
pkg-config libabsl-dev libaio-dev libprotobuf-dev \
patchelf
# Install Intel MKL for DiskANN
wget -q https://registrationcenter-download.intel.com/akdlm/IRC_NAS/79153e0f-74d7-45af-b8c2-258941adf58a/intel-onemkl-2025.0.0.940.sh
sudo sh intel-onemkl-2025.0.0.940.sh -a --components intel.oneapi.lin.mkl.devel --action install --eula accept -s
source /opt/intel/oneapi/setvars.sh
echo "MKLROOT=/opt/intel/oneapi/mkl/latest" >> $GITHUB_ENV
echo "LD_LIBRARY_PATH=/opt/intel/oneapi/compiler/latest/linux/compiler/lib/intel64_lin" >> $GITHUB_ENV
echo "LD_LIBRARY_PATH=$LD_LIBRARY_PATH:/opt/intel/oneapi/mkl/latest/lib/intel64" >> $GITHUB_ENV
# Debug: Show system information
echo "🔍 System Information:"
echo "Architecture: $(uname -m)"
echo "OS: $(uname -a)"
echo "CPU info: $(lscpu | head -5)"
# Install math library based on architecture
ARCH=$(uname -m)
echo "🔍 Setting up math library for architecture: $ARCH"
if [[ "$ARCH" == "x86_64" ]]; then
# Install Intel MKL for DiskANN on x86_64
echo "📦 Installing Intel MKL for x86_64..."
wget -q https://registrationcenter-download.intel.com/akdlm/IRC_NAS/79153e0f-74d7-45af-b8c2-258941adf58a/intel-onemkl-2025.0.0.940.sh
sudo sh intel-onemkl-2025.0.0.940.sh -a --components intel.oneapi.lin.mkl.devel --action install --eula accept -s
source /opt/intel/oneapi/setvars.sh
echo "MKLROOT=/opt/intel/oneapi/mkl/latest" >> $GITHUB_ENV
echo "LD_LIBRARY_PATH=/opt/intel/oneapi/compiler/latest/linux/compiler/lib/intel64_lin" >> $GITHUB_ENV
echo "LD_LIBRARY_PATH=$LD_LIBRARY_PATH:/opt/intel/oneapi/mkl/latest/lib/intel64" >> $GITHUB_ENV
echo "✅ Intel MKL installed for x86_64"
# Debug: Check MKL installation
echo "🔍 MKL Installation Check:"
ls -la /opt/intel/oneapi/mkl/latest/ || echo "MKL directory not found"
ls -la /opt/intel/oneapi/mkl/latest/lib/ || echo "MKL lib directory not found"
elif [[ "$ARCH" == "aarch64" ]]; then
# Use OpenBLAS for ARM64 (MKL installer not compatible with ARM64)
echo "📦 Installing OpenBLAS for ARM64..."
sudo apt-get install -y libopenblas-dev liblapack-dev liblapacke-dev
echo "✅ OpenBLAS installed for ARM64"
# Debug: Check OpenBLAS installation
echo "🔍 OpenBLAS Installation Check:"
dpkg -l | grep openblas || echo "OpenBLAS package not found"
ls -la /usr/lib/aarch64-linux-gnu/openblas/ || echo "OpenBLAS directory not found"
fi
# Debug: Show final library paths
echo "🔍 Final LD_LIBRARY_PATH: $LD_LIBRARY_PATH"
- name: Install system dependencies (macOS)
if: runner.os == 'macOS'
@@ -322,24 +366,29 @@ jobs:
pacman -S --noconfirm python python-pip gcc git zlib openssl
- name: Download ALL wheel artifacts from this run
uses: actions/download-artifact@v4
uses: actions/download-artifact@v5
with:
# Don't specify name, download all artifacts
path: ./wheels
- name: Install wheels (pip automatically picks matching tags from wheels directory)
- name: Install uv
uses: astral-sh/setup-uv@v6
- name: Create virtual environment and install wheels
run: |
python -m pip install --upgrade pip
pip install --find-links wheels leann-core
pip install --find-links wheels leann-backend-hnsw
pip install --find-links wheels leann-backend-diskann
pip install --find-links wheels leann
uv venv
source .venv/bin/activate || source .venv/Scripts/activate
uv pip install --find-links wheels leann-core
uv pip install --find-links wheels leann-backend-hnsw
uv pip install --find-links wheels leann-backend-diskann
uv pip install --find-links wheels leann
- name: Import & tiny runtime check
env:
OMP_NUM_THREADS: 1
MKL_NUM_THREADS: 1
run: |
source .venv/bin/activate || source .venv/Scripts/activate
python - <<'PY'
import leann
import leann_backend_hnsw as h

8
.gitignore vendored
View File

@@ -22,6 +22,7 @@ demo/experiment_results/**/*.json
*.sh
*.txt
!CMakeLists.txt
!llms.txt
latency_breakdown*.json
experiment_results/eval_results/diskann/*.json
aws/
@@ -93,3 +94,10 @@ packages/leann-backend-diskann/third_party/DiskANN/_deps/
batchtest.py
tests/__pytest_cache__/
tests/__pycache__/
paru-bin/
CLAUDE.md
CLAUDE.local.md
.claude/*.local.*
.claude/local/*
benchmarks/data/

4
.gitmodules vendored
View File

@@ -14,3 +14,7 @@
[submodule "packages/leann-backend-hnsw/third_party/libzmq"]
path = packages/leann-backend-hnsw/third_party/libzmq
url = https://github.com/zeromq/libzmq.git
[submodule "packages/astchunk-leann"]
path = packages/astchunk-leann
url = git@github.com:yichuan-w/astchunk-leann.git
branch = main

View File

@@ -13,4 +13,5 @@ repos:
rev: v0.12.7 # Fixed version to match pyproject.toml
hooks:
- id: ruff
args: [--fix, --exit-non-zero-on-fix]
- id: ruff-format

View File

@@ -8,6 +8,8 @@
<img src="https://img.shields.io/badge/Platform-Ubuntu%20%26%20Arch%20%26%20WSL%20%7C%20macOS%20(ARM64%2FIntel)-lightgrey" alt="Platform">
<img src="https://img.shields.io/badge/License-MIT-green.svg" alt="MIT License">
<img src="https://img.shields.io/badge/MCP-Native%20Integration-blue" alt="MCP Integration">
<a href="https://join.slack.com/t/leann-e2u9779/shared_invite/zt-3ckd2f6w1-OX08~NN4gkWhh10PRVBj1Q"><img src="https://img.shields.io/badge/Slack-Join-4A154B?logo=slack&logoColor=white" alt="Join Slack">
<a href="assets/wechat_user_group.JPG" title="Join WeChat group"><img src="https://img.shields.io/badge/WeChat-Join-2DC100?logo=wechat&logoColor=white" alt="Join WeChat group"></a>
</p>
<h2 align="center" tabindex="-1" class="heading-element" dir="auto">
@@ -176,6 +178,8 @@ response = chat.ask("How much storage does LEANN save?", top_k=1)
LEANN supports RAG on various data sources including documents (`.pdf`, `.txt`, `.md`), Apple Mail, Google Search History, WeChat, and more.
### Generation Model Setup
LEANN supports multiple LLM providers for text generation (OpenAI API, HuggingFace, Ollama).
@@ -218,7 +222,8 @@ ollama pull llama3.2:1b
</details>
### ⭐ Flexible Configuration
## ⭐ Flexible Configuration
LEANN provides flexible parameters for embedding models, search strategies, and data processing to fit your specific needs.
@@ -294,6 +299,12 @@ python -m apps.document_rag --data-dir "~/Documents/Papers" --chunk-size 1024
# Filter only markdown and Python files with smaller chunks
python -m apps.document_rag --data-dir "./docs" --chunk-size 256 --file-types .md .py
# Enable AST-aware chunking for code files
python -m apps.document_rag --enable-code-chunking --data-dir "./my_project"
# Or use the specialized code RAG for better code understanding
python -m apps.code_rag --repo-dir "./my_codebase" --query "How does authentication work?"
```
</details>
@@ -468,10 +479,20 @@ Once the index is built, you can ask questions like:
### 🚀 Claude Code Integration: Transform Your Development Workflow!
<details>
<summary><strong>NEW!! ASTAware Code Chunking</strong></summary>
LEANN features intelligent code chunking that preserves semantic boundaries (functions, classes, methods) for Python, Java, C#, and TypeScript, improving code understanding compared to text-based chunking.
📖 Read the [AST Chunking Guide →](docs/ast_chunking_guide.md)
</details>
**The future of code assistance is here.** Transform your development workflow with LEANN's native MCP integration for Claude Code. Index your entire codebase and get intelligent code assistance directly in your IDE.
**Key features:**
- 🔍 **Semantic code search** across your entire project, fully local index and lightweight
- 🧠 **AST-aware chunking** preserves code structure (functions, classes)
- 📚 **Context-aware assistance** for debugging and development
- 🚀 **Zero-config setup** with automatic language detection
@@ -534,7 +555,8 @@ leann remove my-docs
**Key CLI features:**
- Auto-detects document formats (PDF, TXT, MD, DOCX, PPTX + code files)
- Smart text chunking with overlap
- **🧠 AST-aware chunking** for Python, Java, C#, TypeScript files
- Smart text chunking with overlap for all other content
- Multiple LLM providers (Ollama, OpenAI, HuggingFace)
- Organized index storage in `.leann/indexes/` (project-local)
- Support for advanced search parameters
@@ -607,6 +629,46 @@ Options:
</details>
## 🚀 Advanced Features
### 🎯 Metadata Filtering
LEANN supports a simple metadata filtering system to enable sophisticated use cases like document filtering by date/type, code search by file extension, and content management based on custom criteria.
```python
# Add metadata during indexing
builder.add_text(
"def authenticate_user(token): ...",
metadata={"file_extension": ".py", "lines_of_code": 25}
)
# Search with filters
results = searcher.search(
query="authentication function",
metadata_filters={
"file_extension": {"==": ".py"},
"lines_of_code": {"<": 100}
}
)
```
**Supported operators**: `==`, `!=`, `<`, `<=`, `>`, `>=`, `in`, `not_in`, `contains`, `starts_with`, `ends_with`, `is_true`, `is_false`
📖 **[Complete Metadata filtering guide →](docs/metadata_filtering.md)**
### 🔍 Grep Search
For exact text matching instead of semantic search, use the `use_grep` parameter:
```python
# Exact text search
results = searcher.search("bananacrocodile", use_grep=True, top_k=1)
```
**Use cases**: Finding specific code patterns, error messages, function names, or exact phrases where semantic similarity isn't needed.
📖 **[Complete grep search guide →](docs/grep_search.md)**
## 🏗️ Architecture & How It Works
<p align="center">
@@ -646,6 +708,7 @@ Options:
```bash
uv pip install -e ".[dev]" # Install dev dependencies
python benchmarks/run_evaluation.py # Will auto-download evaluation data and run benchmarks
python benchmarks/run_evaluation.py benchmarks/data/indices/rpj_wiki/rpj_wiki --num-queries 2000 # After downloading data, you can run the benchmark with our biggest index
```
The evaluation script downloads data automatically on first run. The last three results were tested with partial personal data, and you can reproduce them with your own data!
@@ -685,6 +748,9 @@ MIT License - see [LICENSE](LICENSE) for details.
Core Contributors: [Yichuan Wang](https://yichuan-w.github.io/) & [Zhifei Li](https://github.com/andylizf).
Active Contributors: [Gabriel Dehan](https://github.com/gabriel-dehan)
We welcome more contributors! Feel free to open issues or submit PRs.
This work is done at [**Berkeley Sky Computing Lab**](https://sky.cs.berkeley.edu/).

View File

@@ -11,7 +11,6 @@ from typing import Any
import dotenv
from leann.api import LeannBuilder, LeannChat
from leann.registry import register_project_directory
from llama_index.core.node_parser import SentenceSplitter
dotenv.load_dotenv()
@@ -109,6 +108,38 @@ class BaseRAGExample(ABC):
help="Thinking budget for reasoning models (low/medium/high). Supported by GPT-Oss:20b and other reasoning models.",
)
# AST Chunking parameters
ast_group = parser.add_argument_group("AST Chunking Parameters")
ast_group.add_argument(
"--use-ast-chunking",
action="store_true",
help="Enable AST-aware chunking for code files (requires astchunk)",
)
ast_group.add_argument(
"--ast-chunk-size",
type=int,
default=512,
help="Maximum characters per AST chunk (default: 512)",
)
ast_group.add_argument(
"--ast-chunk-overlap",
type=int,
default=64,
help="Overlap between AST chunks (default: 64)",
)
ast_group.add_argument(
"--code-file-extensions",
nargs="+",
default=None,
help="Additional code file extensions to process with AST chunking (e.g., .py .java .cs .ts)",
)
ast_group.add_argument(
"--ast-fallback-traditional",
action="store_true",
default=True,
help="Fall back to traditional chunking if AST chunking fails (default: True)",
)
# Search parameters
search_group = parser.add_argument_group("Search Parameters")
search_group.add_argument(
@@ -268,7 +299,6 @@ class BaseRAGExample(ABC):
chat = LeannChat(
index_path,
llm_config=self.get_llm_config(args),
system_prompt=f"You are a helpful assistant that answers questions about {self.name} data.",
complexity=args.search_complexity,
)
@@ -310,21 +340,3 @@ class BaseRAGExample(ABC):
await self.run_single_query(args, index_path, args.query)
else:
await self.run_interactive_chat(args, index_path)
def create_text_chunks(documents, chunk_size=256, chunk_overlap=25) -> list[str]:
"""Helper function to create text chunks from documents."""
node_parser = SentenceSplitter(
chunk_size=chunk_size,
chunk_overlap=chunk_overlap,
separator=" ",
paragraph_separator="\n\n",
)
all_texts = []
for doc in documents:
nodes = node_parser.get_nodes_from_documents([doc])
if nodes:
all_texts.extend(node.get_content() for node in nodes)
return all_texts

View File

@@ -10,7 +10,8 @@ from pathlib import Path
# Add parent directory to path for imports
sys.path.insert(0, str(Path(__file__).parent))
from base_rag_example import BaseRAGExample, create_text_chunks
from base_rag_example import BaseRAGExample
from chunking import create_text_chunks
from .history_data.history import ChromeHistoryReader

44
apps/chunking/__init__.py Normal file
View File

@@ -0,0 +1,44 @@
"""Unified chunking utilities facade.
This module re-exports the packaged utilities from `leann.chunking_utils` so
that both repo apps (importing `chunking`) and installed wheels share one
single implementation. When running from the repo without installation, it
adds the `packages/leann-core/src` directory to `sys.path` as a fallback.
"""
import sys
from pathlib import Path
try:
from leann.chunking_utils import (
CODE_EXTENSIONS,
create_ast_chunks,
create_text_chunks,
create_traditional_chunks,
detect_code_files,
get_language_from_extension,
)
except Exception: # pragma: no cover - best-effort fallback for dev environment
repo_root = Path(__file__).resolve().parents[2]
leann_src = repo_root / "packages" / "leann-core" / "src"
if leann_src.exists():
sys.path.insert(0, str(leann_src))
from leann.chunking_utils import (
CODE_EXTENSIONS,
create_ast_chunks,
create_text_chunks,
create_traditional_chunks,
detect_code_files,
get_language_from_extension,
)
else:
raise
__all__ = [
"CODE_EXTENSIONS",
"create_ast_chunks",
"create_text_chunks",
"create_traditional_chunks",
"detect_code_files",
"get_language_from_extension",
]

211
apps/code_rag.py Normal file
View File

@@ -0,0 +1,211 @@
"""
Code RAG example using AST-aware chunking for optimal code understanding.
Specialized for code repositories with automatic language detection and
optimized chunking parameters.
"""
import sys
from pathlib import Path
# Add parent directory to path for imports
sys.path.insert(0, str(Path(__file__).parent))
from base_rag_example import BaseRAGExample
from chunking import CODE_EXTENSIONS, create_text_chunks
from llama_index.core import SimpleDirectoryReader
class CodeRAG(BaseRAGExample):
"""Specialized RAG example for code repositories with AST-aware chunking."""
def __init__(self):
super().__init__(
name="Code",
description="Process and query code repositories with AST-aware chunking",
default_index_name="code_index",
)
# Override defaults for code-specific usage
self.embedding_model_default = "facebook/contriever" # Good for code
self.max_items_default = -1 # Process all code files by default
def _add_specific_arguments(self, parser):
"""Add code-specific arguments."""
code_group = parser.add_argument_group("Code Repository Parameters")
code_group.add_argument(
"--repo-dir",
type=str,
default=".",
help="Code repository directory to index (default: current directory)",
)
code_group.add_argument(
"--include-extensions",
nargs="+",
default=list(CODE_EXTENSIONS.keys()),
help="File extensions to include (default: supported code extensions)",
)
code_group.add_argument(
"--exclude-dirs",
nargs="+",
default=[
".git",
"__pycache__",
"node_modules",
"venv",
".venv",
"build",
"dist",
"target",
],
help="Directories to exclude from indexing",
)
code_group.add_argument(
"--max-file-size",
type=int,
default=1000000, # 1MB
help="Maximum file size in bytes to process (default: 1MB)",
)
code_group.add_argument(
"--include-comments",
action="store_true",
help="Include comments in chunking (useful for documentation)",
)
code_group.add_argument(
"--preserve-imports",
action="store_true",
default=True,
help="Try to preserve import statements in chunks (default: True)",
)
async def load_data(self, args) -> list[str]:
"""Load code files and convert to AST-aware chunks."""
print(f"🔍 Scanning code repository: {args.repo_dir}")
print(f"📁 Including extensions: {args.include_extensions}")
print(f"🚫 Excluding directories: {args.exclude_dirs}")
# Check if repository directory exists
repo_path = Path(args.repo_dir)
if not repo_path.exists():
raise ValueError(f"Repository directory not found: {args.repo_dir}")
# Load code files with filtering
reader_kwargs = {
"recursive": True,
"encoding": "utf-8",
"required_exts": args.include_extensions,
"exclude_hidden": True,
}
# Create exclusion filter
def file_filter(file_path: str) -> bool:
"""Filter out unwanted files and directories."""
path = Path(file_path)
# Check file size
try:
if path.stat().st_size > args.max_file_size:
print(f"⚠️ Skipping large file: {path.name} ({path.stat().st_size} bytes)")
return False
except Exception:
return False
# Check if in excluded directory
for exclude_dir in args.exclude_dirs:
if exclude_dir in path.parts:
return False
return True
try:
# Load documents with file filtering
documents = SimpleDirectoryReader(
args.repo_dir,
file_extractor=None, # Use default extractors
**reader_kwargs,
).load_data(show_progress=True)
# Apply custom filtering
filtered_docs = []
for doc in documents:
file_path = doc.metadata.get("file_path", "")
if file_filter(file_path):
filtered_docs.append(doc)
documents = filtered_docs
except Exception as e:
print(f"❌ Error loading code files: {e}")
return []
if not documents:
print(
f"❌ No code files found in {args.repo_dir} with extensions {args.include_extensions}"
)
return []
print(f"✅ Loaded {len(documents)} code files")
# Show breakdown by language/extension
ext_counts = {}
for doc in documents:
file_path = doc.metadata.get("file_path", "")
if file_path:
ext = Path(file_path).suffix.lower()
ext_counts[ext] = ext_counts.get(ext, 0) + 1
print("📊 Files by extension:")
for ext, count in sorted(ext_counts.items()):
print(f" {ext}: {count} files")
# Use AST-aware chunking by default for code
print(
f"🧠 Using AST-aware chunking (chunk_size: {args.ast_chunk_size}, overlap: {args.ast_chunk_overlap})"
)
all_texts = create_text_chunks(
documents,
chunk_size=256, # Fallback for non-code files
chunk_overlap=64,
use_ast_chunking=True, # Always use AST for code RAG
ast_chunk_size=args.ast_chunk_size,
ast_chunk_overlap=args.ast_chunk_overlap,
code_file_extensions=args.include_extensions,
ast_fallback_traditional=True,
)
# Apply max_items limit if specified
if args.max_items > 0 and len(all_texts) > args.max_items:
print(f"⏳ Limiting to {args.max_items} chunks (from {len(all_texts)})")
all_texts = all_texts[: args.max_items]
print(f"✅ Generated {len(all_texts)} code chunks")
return all_texts
if __name__ == "__main__":
import asyncio
# Example queries for code RAG
print("\n💻 Code RAG Example")
print("=" * 50)
print("\nExample queries you can try:")
print("- 'How does the embedding computation work?'")
print("- 'What are the main classes in this codebase?'")
print("- 'Show me the search implementation'")
print("- 'How is error handling implemented?'")
print("- 'What design patterns are used?'")
print("- 'Explain the chunking logic'")
print("\n🚀 Features:")
print("- ✅ AST-aware chunking preserves code structure")
print("- ✅ Automatic language detection")
print("- ✅ Smart filtering of large files and common excludes")
print("- ✅ Optimized for code understanding")
print("\nUsage examples:")
print(" python -m apps.code_rag --repo-dir ./my_project")
print(
" python -m apps.code_rag --include-extensions .py .js --query 'How does authentication work?'"
)
print("\nOr run without --query for interactive mode\n")
rag = CodeRAG()
asyncio.run(rag.run())

View File

@@ -9,7 +9,8 @@ from pathlib import Path
# Add parent directory to path for imports
sys.path.insert(0, str(Path(__file__).parent))
from base_rag_example import BaseRAGExample, create_text_chunks
from base_rag_example import BaseRAGExample
from chunking import create_text_chunks
from llama_index.core import SimpleDirectoryReader
@@ -44,6 +45,11 @@ class DocumentRAG(BaseRAGExample):
doc_group.add_argument(
"--chunk-overlap", type=int, default=128, help="Text chunk overlap (default: 128)"
)
doc_group.add_argument(
"--enable-code-chunking",
action="store_true",
help="Enable AST-aware chunking for code files in the data directory",
)
async def load_data(self, args) -> list[str]:
"""Load documents and convert to text chunks."""
@@ -76,9 +82,22 @@ class DocumentRAG(BaseRAGExample):
print(f"Loaded {len(documents)} documents")
# Convert to text chunks
# Determine chunking strategy
use_ast = args.enable_code_chunking or getattr(args, "use_ast_chunking", False)
if use_ast:
print("Using AST-aware chunking for code files")
# Convert to text chunks with optional AST support
all_texts = create_text_chunks(
documents, chunk_size=args.chunk_size, chunk_overlap=args.chunk_overlap
documents,
chunk_size=args.chunk_size,
chunk_overlap=args.chunk_overlap,
use_ast_chunking=use_ast,
ast_chunk_size=getattr(args, "ast_chunk_size", 512),
ast_chunk_overlap=getattr(args, "ast_chunk_overlap", 64),
code_file_extensions=getattr(args, "code_file_extensions", None),
ast_fallback_traditional=getattr(args, "ast_fallback_traditional", True),
)
# Apply max_items limit if specified
@@ -102,6 +121,10 @@ if __name__ == "__main__":
print(
"- 'What is the problem of developing pan gu model Huawei meets? (盘古大模型开发中遇到什么问题?)'"
)
print("\n🚀 NEW: Code-aware chunking available!")
print("- Use --enable-code-chunking to enable AST-aware chunking for code files")
print("- Supports Python, Java, C#, TypeScript files")
print("- Better semantic understanding of code structure")
print("\nOr run without --query for interactive mode\n")
rag = DocumentRAG()

View File

@@ -9,7 +9,8 @@ from pathlib import Path
# Add parent directory to path for imports
sys.path.insert(0, str(Path(__file__).parent))
from base_rag_example import BaseRAGExample, create_text_chunks
from base_rag_example import BaseRAGExample
from chunking import create_text_chunks
from .email_data.LEANN_email_reader import EmlxReader

View File

@@ -74,7 +74,7 @@ class ChromeHistoryReader(BaseReader):
if count >= max_count and max_count > 0:
break
last_visit, url, title, visit_count, typed_count, hidden = row
last_visit, url, title, visit_count, typed_count, _hidden = row
# Create document content with metadata embedded in text
doc_content = f"""

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After

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@@ -1,82 +0,0 @@
*.7z filter=lfs diff=lfs merge=lfs -text
*.arrow filter=lfs diff=lfs merge=lfs -text
*.bin filter=lfs diff=lfs merge=lfs -text
*.bz2 filter=lfs diff=lfs merge=lfs -text
*.ckpt filter=lfs diff=lfs merge=lfs -text
*.ftz filter=lfs diff=lfs merge=lfs -text
*.gz filter=lfs diff=lfs merge=lfs -text
*.h5 filter=lfs diff=lfs merge=lfs -text
*.joblib filter=lfs diff=lfs merge=lfs -text
*.lfs.* filter=lfs diff=lfs merge=lfs -text
*.lz4 filter=lfs diff=lfs merge=lfs -text
*.mds filter=lfs diff=lfs merge=lfs -text
*.mlmodel filter=lfs diff=lfs merge=lfs -text
*.model filter=lfs diff=lfs merge=lfs -text
*.msgpack filter=lfs diff=lfs merge=lfs -text
*.npy filter=lfs diff=lfs merge=lfs -text
*.npz filter=lfs diff=lfs merge=lfs -text
*.onnx filter=lfs diff=lfs merge=lfs -text
*.ot filter=lfs diff=lfs merge=lfs -text
*.parquet filter=lfs diff=lfs merge=lfs -text
*.pb filter=lfs diff=lfs merge=lfs -text
*.pickle filter=lfs diff=lfs merge=lfs -text
*.pkl filter=lfs diff=lfs merge=lfs -text
*.pt filter=lfs diff=lfs merge=lfs -text
*.pth filter=lfs diff=lfs merge=lfs -text
*.rar filter=lfs diff=lfs merge=lfs -text
*.safetensors filter=lfs diff=lfs merge=lfs -text
saved_model/**/* filter=lfs diff=lfs merge=lfs -text
*.tar.* filter=lfs diff=lfs merge=lfs -text
*.tar filter=lfs diff=lfs merge=lfs -text
*.tflite filter=lfs diff=lfs merge=lfs -text
*.tgz filter=lfs diff=lfs merge=lfs -text
*.wasm filter=lfs diff=lfs merge=lfs -text
*.xz filter=lfs diff=lfs merge=lfs -text
*.zip filter=lfs diff=lfs merge=lfs -text
*.zst filter=lfs diff=lfs merge=lfs -text
*tfevents* filter=lfs diff=lfs merge=lfs -text
# Audio files - uncompressed
*.pcm filter=lfs diff=lfs merge=lfs -text
*.sam filter=lfs diff=lfs merge=lfs -text
*.raw filter=lfs diff=lfs merge=lfs -text
# Audio files - compressed
*.aac filter=lfs diff=lfs merge=lfs -text
*.flac filter=lfs diff=lfs merge=lfs -text
*.mp3 filter=lfs diff=lfs merge=lfs -text
*.ogg filter=lfs diff=lfs merge=lfs -text
*.wav filter=lfs diff=lfs merge=lfs -text
# Image files - uncompressed
*.bmp filter=lfs diff=lfs merge=lfs -text
*.gif filter=lfs diff=lfs merge=lfs -text
*.png filter=lfs diff=lfs merge=lfs -text
*.tiff filter=lfs diff=lfs merge=lfs -text
# Image files - compressed
*.jpg filter=lfs diff=lfs merge=lfs -text
*.jpeg filter=lfs diff=lfs merge=lfs -text
*.webp filter=lfs diff=lfs merge=lfs -text
# Video files - compressed
*.mp4 filter=lfs diff=lfs merge=lfs -text
*.webm filter=lfs diff=lfs merge=lfs -text
ground_truth/dpr/id_map.json filter=lfs diff=lfs merge=lfs -text
indices/dpr/dpr_diskann.passages.idx filter=lfs diff=lfs merge=lfs -text
indices/dpr/dpr_diskann.passages.jsonl filter=lfs diff=lfs merge=lfs -text
indices/dpr/dpr_diskann_disk.index filter=lfs diff=lfs merge=lfs -text
indices/dpr/leann.labels.map filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/leann.labels.map filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/rpj_wiki.index filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/rpj_wiki.passages.0.idx filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/rpj_wiki.passages.0.jsonl filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/rpj_wiki.passages.1.idx filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/rpj_wiki.passages.1.jsonl filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/rpj_wiki.passages.2.idx filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/rpj_wiki.passages.2.jsonl filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/rpj_wiki.passages.3.idx filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/rpj_wiki.passages.3.jsonl filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/rpj_wiki.passages.4.idx filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/rpj_wiki.passages.4.jsonl filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/rpj_wiki.passages.5.idx filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/rpj_wiki.passages.5.jsonl filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/rpj_wiki.passages.6.idx filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/rpj_wiki.passages.6.jsonl filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/rpj_wiki.passages.7.idx filter=lfs diff=lfs merge=lfs -text
indices/rpj_wiki/rpj_wiki.passages.7.jsonl filter=lfs diff=lfs merge=lfs -text

44
benchmarks/data/README.md Executable file
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@@ -0,0 +1,44 @@
---
license: mit
---
# LEANN-RAG Evaluation Data
This repository contains the necessary data to run the recall evaluation scripts for the [LEANN-RAG](https://huggingface.co/LEANN-RAG) project.
## Dataset Components
This dataset is structured into three main parts:
1. **Pre-built LEANN Indices**:
* `dpr/`: A pre-built index for the DPR dataset.
* `rpj_wiki/`: A pre-built index for the RPJ-Wiki dataset.
These indices were created using the `leann-core` library and are required by the `LeannSearcher`.
2. **Ground Truth Data**:
* `ground_truth/`: Contains the ground truth files (`flat_results_nq_k3.json`) for both the DPR and RPJ-Wiki datasets. These files map queries to the original passage IDs from the Natural Questions benchmark, evaluated using the Contriever model.
3. **Queries**:
* `queries/`: Contains the `nq_open.jsonl` file with the Natural Questions queries used for the evaluation.
## Usage
To use this data, you can download it locally using the `huggingface-hub` library. First, install the library:
```bash
pip install huggingface-hub
```
Then, you can download the entire dataset to a local directory (e.g., `data/`) with the following Python script:
```python
from huggingface_hub import snapshot_download
snapshot_download(
repo_id="LEANN-RAG/leann-rag-evaluation-data",
repo_type="dataset",
local_dir="data"
)
```
This will download all the necessary files into a local `data` folder, preserving the repository structure. The evaluation scripts in the main [LEANN-RAG Space](https://huggingface.co/LEANN-RAG) are configured to work with this data structure.

View File

@@ -12,7 +12,7 @@ import time
from pathlib import Path
import numpy as np
from leann.api import LeannBuilder, LeannSearcher
from leann.api import LeannBuilder, LeannChat, LeannSearcher
def download_data_if_needed(data_root: Path, download_embeddings: bool = False):
@@ -197,6 +197,25 @@ def main():
parser.add_argument(
"--ef-search", type=int, default=120, help="The 'efSearch' parameter for HNSW."
)
parser.add_argument(
"--batch-size",
type=int,
default=0,
help="Batch size for HNSW batched search (0 disables batching)",
)
parser.add_argument(
"--llm-type",
type=str,
choices=["ollama", "hf", "openai", "gemini", "simulated"],
default="ollama",
help="LLM backend type to optionally query during evaluation (default: ollama)",
)
parser.add_argument(
"--llm-model",
type=str,
default="qwen3:1.7b",
help="LLM model identifier for the chosen backend (default: qwen3:1.7b)",
)
args = parser.parse_args()
# --- Path Configuration ---
@@ -318,9 +337,24 @@ def main():
for i in range(num_eval_queries):
start_time = time.time()
new_results = searcher.search(queries[i], top_k=args.top_k, ef=args.ef_search)
new_results = searcher.search(
queries[i],
top_k=args.top_k,
complexity=args.ef_search,
batch_size=args.batch_size,
)
search_times.append(time.time() - start_time)
# Optional: also call the LLM with configurable backend/model (does not affect recall)
llm_config = {"type": args.llm_type, "model": args.llm_model}
chat = LeannChat(args.index_path, llm_config=llm_config, searcher=searcher)
answer = chat.ask(
queries[i],
top_k=args.top_k,
complexity=args.ef_search,
batch_size=args.batch_size,
)
print(f"Answer: {answer}")
# Correct Recall Calculation: Based on TEXT content
new_texts = {result.text for result in new_results}

View File

@@ -20,7 +20,7 @@ except ImportError:
@dataclass
class BenchmarkConfig:
model_path: str = "facebook/contriever"
model_path: str = "facebook/contriever-msmarco"
batch_sizes: list[int] = None
seq_length: int = 256
num_runs: int = 5
@@ -34,7 +34,7 @@ class BenchmarkConfig:
def __post_init__(self):
if self.batch_sizes is None:
self.batch_sizes = [1, 2, 4, 8, 16, 32, 64]
self.batch_sizes = [1, 2, 4, 8, 16, 32, 64, 128, 256, 512, 1024]
class MLXBenchmark:
@@ -179,10 +179,16 @@ class Benchmark:
def _run_inference(self, input_ids: torch.Tensor) -> float:
attention_mask = torch.ones_like(input_ids)
# print shape of input_ids and attention_mask
print(f"input_ids shape: {input_ids.shape}")
print(f"attention_mask shape: {attention_mask.shape}")
start_time = time.time()
with torch.no_grad():
self.model(input_ids=input_ids, attention_mask=attention_mask)
if torch.cuda.is_available():
torch.cuda.synchronize()
if torch.backends.mps.is_available():
torch.mps.synchronize()
end_time = time.time()
return end_time - start_time

143
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@@ -0,0 +1,143 @@
# AST-Aware Code chunking guide
## Overview
This guide covers best practices for using AST-aware code chunking in LEANN. AST chunking provides better semantic understanding of code structure compared to traditional text-based chunking.
## Quick Start
### Basic Usage
```bash
# Enable AST chunking for mixed content (code + docs)
python -m apps.document_rag --enable-code-chunking --data-dir ./my_project
# Specialized code repository indexing
python -m apps.code_rag --repo-dir ./my_codebase
# Global CLI with AST support
leann build my-code-index --docs ./src --use-ast-chunking
```
### Installation
```bash
# Install LEANN with AST chunking support
uv pip install -e "."
```
#### For normal users (PyPI install)
- Use `pip install leann` or `uv pip install leann`.
- `astchunk` is pulled automatically from PyPI as a dependency; no extra steps.
#### For developers (from source, editable)
```bash
git clone https://github.com/yichuan-w/LEANN.git leann
cd leann
git submodule update --init --recursive
uv sync
```
- This repo vendors `astchunk` as a git submodule at `packages/astchunk-leann` (our fork).
- `[tool.uv.sources]` maps the `astchunk` package to that path in editable mode.
- You can edit code under `packages/astchunk-leann` and Python will use your changes immediately (no separate `pip install astchunk` needed).
## Best Practices
### When to Use AST Chunking
**Recommended for:**
- Code repositories with multiple languages
- Mixed documentation and code content
- Complex codebases with deep function/class hierarchies
- When working with Claude Code for code assistance
**Not recommended for:**
- Pure text documents
- Very large files (>1MB)
- Languages not supported by tree-sitter
### Optimal Configuration
```bash
# Recommended settings for most codebases
python -m apps.code_rag \
--repo-dir ./src \
--ast-chunk-size 768 \
--ast-chunk-overlap 96 \
--exclude-dirs .git __pycache__ node_modules build dist
```
### Supported Languages
| Extension | Language | Status |
|-----------|----------|--------|
| `.py` | Python | ✅ Full support |
| `.java` | Java | ✅ Full support |
| `.cs` | C# | ✅ Full support |
| `.ts`, `.tsx` | TypeScript | ✅ Full support |
| `.js`, `.jsx` | JavaScript | ✅ Via TypeScript parser |
## Integration Examples
### Document RAG with Code Support
```python
# Enable code chunking in document RAG
python -m apps.document_rag \
--enable-code-chunking \
--data-dir ./project \
--query "How does authentication work in the codebase?"
```
### Claude Code Integration
When using with Claude Code MCP server, AST chunking provides better context for:
- Code completion and suggestions
- Bug analysis and debugging
- Architecture understanding
- Refactoring assistance
## Troubleshooting
### Common Issues
1. **Fallback to Traditional Chunking**
- Normal behavior for unsupported languages
- Check logs for specific language support
2. **Performance with Large Files**
- Adjust `--max-file-size` parameter
- Use `--exclude-dirs` to skip unnecessary directories
3. **Quality Issues**
- Try different `--ast-chunk-size` values (512, 768, 1024)
- Adjust overlap for better context preservation
### Debug Mode
```bash
export LEANN_LOG_LEVEL=DEBUG
python -m apps.code_rag --repo-dir ./my_code
```
## Migration from Traditional Chunking
Existing workflows continue to work without changes. To enable AST chunking:
```bash
# Before
python -m apps.document_rag --chunk-size 256
# After (maintains traditional chunking for non-code files)
python -m apps.document_rag --enable-code-chunking --chunk-size 256 --ast-chunk-size 768
```
## References
- [astchunk GitHub Repository](https://github.com/yilinjz/astchunk)
- [LEANN MCP Integration](../packages/leann-mcp/README.md)
- [Research Paper](https://arxiv.org/html/2506.15655v1)
---
**Note**: AST chunking maintains full backward compatibility while enhancing code understanding capabilities.

View File

@@ -3,6 +3,7 @@
## 🔥 Core Features
- **🔄 Real-time Embeddings** - Eliminate heavy embedding storage with dynamic computation using optimized ZMQ servers and highly optimized search paradigm (overlapping and batching) with highly optimized embedding engine
- **🧠 AST-Aware Code Chunking** - Intelligent code chunking that preserves semantic boundaries (functions, classes, methods) for Python, Java, C#, and TypeScript files
- **📈 Scalable Architecture** - Handles millions of documents on consumer hardware; the larger your dataset, the more LEANN can save
- **🎯 Graph Pruning** - Advanced techniques to minimize the storage overhead of vector search to a limited footprint
- **🏗️ Pluggable Backends** - HNSW/FAISS (default), with optional DiskANN for large-scale deployments

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@@ -0,0 +1,149 @@
# LEANN Grep Search Usage Guide
## Overview
LEANN's grep search functionality provides exact text matching for finding specific code patterns, error messages, function names, or exact phrases in your indexed documents.
## Basic Usage
### Simple Grep Search
```python
from leann.api import LeannSearcher
searcher = LeannSearcher("your_index_path")
# Exact text search
results = searcher.search("def authenticate_user", use_grep=True, top_k=5)
for result in results:
print(f"Score: {result.score}")
print(f"Text: {result.text[:100]}...")
print("-" * 40)
```
### Comparison: Semantic vs Grep Search
```python
# Semantic search - finds conceptually similar content
semantic_results = searcher.search("machine learning algorithms", top_k=3)
# Grep search - finds exact text matches
grep_results = searcher.search("def train_model", use_grep=True, top_k=3)
```
## When to Use Grep Search
### Use Cases
- **Code Search**: Finding specific function definitions, class names, or variable references
- **Error Debugging**: Locating exact error messages or stack traces
- **Documentation**: Finding specific API endpoints or exact terminology
### Examples
```python
# Find function definitions
functions = searcher.search("def __init__", use_grep=True)
# Find import statements
imports = searcher.search("from sklearn import", use_grep=True)
# Find specific error types
errors = searcher.search("FileNotFoundError", use_grep=True)
# Find TODO comments
todos = searcher.search("TODO:", use_grep=True)
# Find configuration entries
configs = searcher.search("server_port=", use_grep=True)
```
## Technical Details
### How It Works
1. **File Location**: Grep search operates on the raw text stored in `.jsonl` files
2. **Command Execution**: Uses the system `grep` command with case-insensitive search
3. **Result Processing**: Parses JSON lines and extracts text and metadata
4. **Scoring**: Simple frequency-based scoring based on query term occurrences
### Search Process
```
Query: "def train_model"
grep -i -n "def train_model" documents.leann.passages.jsonl
Parse matching JSON lines
Calculate scores based on term frequency
Return top_k results
```
### Scoring Algorithm
```python
# Term frequency in document
score = text.lower().count(query.lower())
```
Results are ranked by score (highest first), with higher scores indicating more occurrences of the search term.
## Error Handling
### Common Issues
#### Grep Command Not Found
```
RuntimeError: grep command not found. Please install grep or use semantic search.
```
**Solution**: Install grep on your system:
- **Ubuntu/Debian**: `sudo apt-get install grep`
- **macOS**: grep is pre-installed
- **Windows**: Use WSL or install grep via Git Bash/MSYS2
#### No Results Found
```python
# Check if your query exists in the raw data
results = searcher.search("your_query", use_grep=True)
if not results:
print("No exact matches found. Try:")
print("1. Check spelling and case")
print("2. Use partial terms")
print("3. Switch to semantic search")
```
## Complete Example
```python
#!/usr/bin/env python3
"""
Grep Search Example
Demonstrates grep search for exact text matching.
"""
from leann.api import LeannSearcher
def demonstrate_grep_search():
# Initialize searcher
searcher = LeannSearcher("my_index")
print("=== Function Search ===")
functions = searcher.search("def __init__", use_grep=True, top_k=5)
for i, result in enumerate(functions, 1):
print(f"{i}. Score: {result.score}")
print(f" Preview: {result.text[:60]}...")
print()
print("=== Error Search ===")
errors = searcher.search("FileNotFoundError", use_grep=True, top_k=3)
for result in errors:
print(f"Content: {result.text.strip()}")
print("-" * 40)
if __name__ == "__main__":
demonstrate_grep_search()
```

300
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@@ -0,0 +1,300 @@
# LEANN Metadata Filtering Usage Guide
## Overview
Leann possesses metadata filtering capabilities that allow you to filter search results based on arbitrary metadata fields set during chunking. This feature enables use cases like spoiler-free book search, document filtering by date/type, code search by file type, and potentially much more.
## Basic Usage
### Adding Metadata to Your Documents
When building your index, add metadata to each text chunk:
```python
from leann.api import LeannBuilder
builder = LeannBuilder("hnsw")
# Add text with metadata
builder.add_text(
text="Chapter 1: Alice falls down the rabbit hole",
metadata={
"chapter": 1,
"character": "Alice",
"themes": ["adventure", "curiosity"],
"word_count": 150
}
)
builder.build_index("alice_in_wonderland_index")
```
### Searching with Metadata Filters
Use the `metadata_filters` parameter in search calls:
```python
from leann.api import LeannSearcher
searcher = LeannSearcher("alice_in_wonderland_index")
# Search with filters
results = searcher.search(
query="What happens to Alice?",
top_k=10,
metadata_filters={
"chapter": {"<=": 5}, # Only chapters 1-5
"spoiler_level": {"!=": "high"} # No high spoilers
}
)
```
## Filter Syntax
### Basic Structure
```python
metadata_filters = {
"field_name": {"operator": value},
"another_field": {"operator": value}
}
```
### Supported Operators
#### Comparison Operators
- `"=="`: Equal to
- `"!="`: Not equal to
- `"<"`: Less than
- `"<="`: Less than or equal
- `">"`: Greater than
- `">="`: Greater than or equal
```python
# Examples
{"chapter": {"==": 1}} # Exactly chapter 1
{"page": {">": 100}} # Pages after 100
{"rating": {">=": 4.0}} # Rating 4.0 or higher
{"word_count": {"<": 500}} # Short passages
```
#### Membership Operators
- `"in"`: Value is in list
- `"not_in"`: Value is not in list
```python
# Examples
{"character": {"in": ["Alice", "Bob"]}} # Alice OR Bob
{"genre": {"not_in": ["horror", "thriller"]}} # Exclude genres
{"tags": {"in": ["fiction", "adventure"]}} # Any of these tags
```
#### String Operators
- `"contains"`: String contains substring
- `"starts_with"`: String starts with prefix
- `"ends_with"`: String ends with suffix
```python
# Examples
{"title": {"contains": "alice"}} # Title contains "alice"
{"filename": {"ends_with": ".py"}} # Python files
{"author": {"starts_with": "Dr."}} # Authors with "Dr." prefix
```
#### Boolean Operators
- `"is_true"`: Field is truthy
- `"is_false"`: Field is falsy
```python
# Examples
{"is_published": {"is_true": True}} # Published content
{"is_draft": {"is_false": False}} # Not drafts
```
### Multiple Operators on Same Field
You can apply multiple operators to the same field (AND logic):
```python
metadata_filters = {
"word_count": {
">=": 100, # At least 100 words
"<=": 500 # At most 500 words
}
}
```
### Compound Filters
Multiple fields are combined with AND logic:
```python
metadata_filters = {
"chapter": {"<=": 10}, # Up to chapter 10
"character": {"==": "Alice"}, # About Alice
"spoiler_level": {"!=": "high"} # No major spoilers
}
```
## Use Case Examples
### 1. Spoiler-Free Book Search
```python
# Reader has only read up to chapter 5
def search_spoiler_free(query, max_chapter):
return searcher.search(
query=query,
metadata_filters={
"chapter": {"<=": max_chapter},
"spoiler_level": {"in": ["none", "low"]}
}
)
results = search_spoiler_free("What happens to Alice?", max_chapter=5)
```
### 2. Document Management by Date
```python
# Find recent documents
recent_docs = searcher.search(
query="project updates",
metadata_filters={
"date": {">=": "2024-01-01"},
"document_type": {"==": "report"}
}
)
```
### 3. Code Search by File Type
```python
# Search only Python files
python_code = searcher.search(
query="authentication function",
metadata_filters={
"file_extension": {"==": ".py"},
"lines_of_code": {"<": 100}
}
)
```
### 4. Content Filtering by Audience
```python
# Age-appropriate content
family_content = searcher.search(
query="adventure stories",
metadata_filters={
"age_rating": {"in": ["G", "PG"]},
"content_warnings": {"not_in": ["violence", "adult_themes"]}
}
)
```
### 5. Multi-Book Series Management
```python
# Search across first 3 books only
early_series = searcher.search(
query="character development",
metadata_filters={
"series": {"==": "Harry Potter"},
"book_number": {"<=": 3}
}
)
```
## Running the Example
You can see metadata filtering in action with our spoiler-free book RAG example:
```bash
# Don't forget to set up the environment
uv venv
source .venv/bin/activate
# Set your OpenAI API key (required for embeddings, but you can update the example locally and use ollama instead)
export OPENAI_API_KEY="your-api-key-here"
# Run the spoiler-free book RAG example
uv run examples/spoiler_free_book_rag.py
```
This example demonstrates:
- Building an index with metadata (chapter numbers, characters, themes, locations)
- Searching with filters to avoid spoilers (e.g., only show results up to chapter 5)
- Different scenarios for readers at various points in the book
The example uses Alice's Adventures in Wonderland as sample data and shows how you can search for information without revealing plot points from later chapters.
## Advanced Patterns
### Custom Chunking with metadata
```python
def chunk_book_with_metadata(book_text, book_info):
chunks = []
for chapter_num, chapter_text in parse_chapters(book_text):
# Extract entities, themes, etc.
characters = extract_characters(chapter_text)
themes = classify_themes(chapter_text)
spoiler_level = assess_spoiler_level(chapter_text, chapter_num)
# Create chunks with rich metadata
for paragraph in split_paragraphs(chapter_text):
chunks.append({
"text": paragraph,
"metadata": {
"book_title": book_info["title"],
"chapter": chapter_num,
"characters": characters,
"themes": themes,
"spoiler_level": spoiler_level,
"word_count": len(paragraph.split()),
"reading_level": calculate_reading_level(paragraph)
}
})
return chunks
```
## Performance Considerations
### Efficient Filtering Strategies
1. **Post-search filtering**: Applies filters after vector search, which should be efficient for typical result sets (10-100 results).
2. **Metadata design**: Keep metadata fields simple and avoid deeply nested structures.
### Best Practices
1. **Consistent metadata schema**: Use consistent field names and value types across your documents.
2. **Reasonable metadata size**: Keep metadata reasonably sized to avoid storage overhead.
3. **Type consistency**: Use consistent data types for the same fields (e.g., always integers for chapter numbers).
4. **Index multiple granularities**: Consider chunking at different levels (paragraph, section, chapter) with appropriate metadata.
### Adding Metadata to Existing Indices
To add metadata filtering to existing indices, you'll need to rebuild them with metadata:
```python
# Read existing passages and add metadata
def add_metadata_to_existing_chunks(chunks):
for chunk in chunks:
# Extract or assign metadata based on content
chunk["metadata"] = extract_metadata(chunk["text"])
return chunks
# Rebuild index with metadata
enhanced_chunks = add_metadata_to_existing_chunks(existing_chunks)
builder = LeannBuilder("hnsw")
for chunk in enhanced_chunks:
builder.add_text(chunk["text"], chunk["metadata"])
builder.build_index("enhanced_index")
```

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@@ -0,0 +1,35 @@
"""
Grep Search Example
Shows how to use grep-based text search instead of semantic search.
Useful when you need exact text matches rather than meaning-based results.
"""
from leann import LeannSearcher
# Load your index
searcher = LeannSearcher("my-documents.leann")
# Regular semantic search
print("=== Semantic Search ===")
results = searcher.search("machine learning algorithms", top_k=3)
for result in results:
print(f"Score: {result.score:.3f}")
print(f"Text: {result.text[:80]}...")
print()
# Grep-based search for exact text matches
print("=== Grep Search ===")
results = searcher.search("def train_model", top_k=3, use_grep=True)
for result in results:
print(f"Score: {result.score}")
print(f"Text: {result.text[:80]}...")
print()
# Find specific error messages
error_results = searcher.search("FileNotFoundError", use_grep=True)
print(f"Found {len(error_results)} files mentioning FileNotFoundError")
# Search for function definitions
func_results = searcher.search("class SearchResult", use_grep=True, top_k=5)
print(f"Found {len(func_results)} class definitions")

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@@ -0,0 +1,250 @@
#!/usr/bin/env python3
"""
Spoiler-Free Book RAG Example using LEANN Metadata Filtering
This example demonstrates how to use LEANN's metadata filtering to create
a spoiler-free book RAG system where users can search for information
up to a specific chapter they've read.
Usage:
python spoiler_free_book_rag.py
"""
import os
import sys
from typing import Any, Optional
# Add LEANN to path (adjust path as needed)
sys.path.insert(0, os.path.join(os.path.dirname(__file__), "../packages/leann-core/src"))
from leann.api import LeannBuilder, LeannSearcher
def chunk_book_with_metadata(book_title: str = "Sample Book") -> list[dict[str, Any]]:
"""
Create sample book chunks with metadata for demonstration.
In a real implementation, this would parse actual book files (epub, txt, etc.)
and extract chapter boundaries, character mentions, etc.
Args:
book_title: Title of the book
Returns:
List of chunk dictionaries with text and metadata
"""
# Sample book chunks with metadata
# In practice, you'd use proper text processing libraries
sample_chunks = [
{
"text": "Alice was beginning to get very tired of sitting by her sister on the bank, and of having nothing to do.",
"metadata": {
"book": book_title,
"chapter": 1,
"page": 1,
"characters": ["Alice", "Sister"],
"themes": ["boredom", "curiosity"],
"location": "riverbank",
},
},
{
"text": "So she was considering in her own mind (as well as she could, for the hot day made her feel very sleepy and stupid), whether the pleasure of making a daisy-chain would be worth the trouble of getting up and picking the daisies, when suddenly a White Rabbit with pink eyes ran close by her.",
"metadata": {
"book": book_title,
"chapter": 1,
"page": 2,
"characters": ["Alice", "White Rabbit"],
"themes": ["decision", "surprise", "magic"],
"location": "riverbank",
},
},
{
"text": "Alice found herself falling down a very deep well. Either the well was very deep, or she fell very slowly, for she had plenty of time as she fell to look about her and to wonder what was going to happen next.",
"metadata": {
"book": book_title,
"chapter": 2,
"page": 15,
"characters": ["Alice"],
"themes": ["falling", "wonder", "transformation"],
"location": "rabbit hole",
},
},
{
"text": "Alice meets the Cheshire Cat, who tells her that everyone in Wonderland is mad, including Alice herself.",
"metadata": {
"book": book_title,
"chapter": 6,
"page": 85,
"characters": ["Alice", "Cheshire Cat"],
"themes": ["madness", "philosophy", "identity"],
"location": "Duchess's house",
},
},
{
"text": "At the Queen's croquet ground, Alice witnesses the absurd trial that reveals the arbitrary nature of Wonderland's justice system.",
"metadata": {
"book": book_title,
"chapter": 8,
"page": 120,
"characters": ["Alice", "Queen of Hearts", "King of Hearts"],
"themes": ["justice", "absurdity", "authority"],
"location": "Queen's court",
},
},
{
"text": "Alice realizes that Wonderland was all a dream, even the Rabbit, as she wakes up on the riverbank next to her sister.",
"metadata": {
"book": book_title,
"chapter": 12,
"page": 180,
"characters": ["Alice", "Sister", "Rabbit"],
"themes": ["revelation", "reality", "growth"],
"location": "riverbank",
},
},
]
return sample_chunks
def build_spoiler_free_index(book_chunks: list[dict[str, Any]], index_name: str) -> str:
"""
Build a LEANN index with book chunks that include spoiler metadata.
Args:
book_chunks: List of book chunks with metadata
index_name: Name for the index
Returns:
Path to the built index
"""
print(f"📚 Building spoiler-free book index: {index_name}")
# Initialize LEANN builder
builder = LeannBuilder(
backend_name="hnsw", embedding_model="text-embedding-3-small", embedding_mode="openai"
)
# Add each chunk with its metadata
for chunk in book_chunks:
builder.add_text(text=chunk["text"], metadata=chunk["metadata"])
# Build the index
index_path = f"{index_name}_book_index"
builder.build_index(index_path)
print(f"✅ Index built successfully: {index_path}")
return index_path
def spoiler_free_search(
index_path: str,
query: str,
max_chapter: int,
character_filter: Optional[list[str]] = None,
) -> list[dict[str, Any]]:
"""
Perform a spoiler-free search on the book index.
Args:
index_path: Path to the LEANN index
query: Search query
max_chapter: Maximum chapter number to include
character_filter: Optional list of characters to focus on
Returns:
List of search results safe for the reader
"""
print(f"🔍 Searching: '{query}' (up to chapter {max_chapter})")
searcher = LeannSearcher(index_path)
metadata_filters = {"chapter": {"<=": max_chapter}}
if character_filter:
metadata_filters["characters"] = {"contains": character_filter[0]}
results = searcher.search(query=query, top_k=10, metadata_filters=metadata_filters)
return results
def demo_spoiler_free_rag():
"""
Demonstrate the spoiler-free book RAG system.
"""
print("🎭 Spoiler-Free Book RAG Demo")
print("=" * 40)
# Step 1: Prepare book data
book_title = "Alice's Adventures in Wonderland"
book_chunks = chunk_book_with_metadata(book_title)
print(f"📖 Loaded {len(book_chunks)} chunks from '{book_title}'")
# Step 2: Build the index (in practice, this would be done once)
try:
index_path = build_spoiler_free_index(book_chunks, "alice_wonderland")
except Exception as e:
print(f"❌ Failed to build index (likely missing dependencies): {e}")
print(
"💡 This demo shows the filtering logic - actual indexing requires LEANN dependencies"
)
return
# Step 3: Demonstrate various spoiler-free searches
search_scenarios = [
{
"description": "Reader who has only read Chapter 1",
"query": "What can you tell me about the rabbit?",
"max_chapter": 1,
},
{
"description": "Reader who has read up to Chapter 5",
"query": "Tell me about Alice's adventures",
"max_chapter": 5,
},
{
"description": "Reader who has read most of the book",
"query": "What does the Cheshire Cat represent?",
"max_chapter": 10,
},
{
"description": "Reader who has read the whole book",
"query": "What can you tell me about the rabbit?",
"max_chapter": 12,
},
]
for scenario in search_scenarios:
print(f"\n📚 Scenario: {scenario['description']}")
print(f" Query: {scenario['query']}")
try:
results = spoiler_free_search(
index_path=index_path,
query=scenario["query"],
max_chapter=scenario["max_chapter"],
)
print(f" 📄 Found {len(results)} results:")
for i, result in enumerate(results[:3], 1): # Show top 3
chapter = result.metadata.get("chapter", "?")
location = result.metadata.get("location", "?")
print(f" {i}. Chapter {chapter} ({location}): {result.text[:80]}...")
except Exception as e:
print(f" ❌ Search failed: {e}")
if __name__ == "__main__":
print("📚 LEANN Spoiler-Free Book RAG Example")
print("=====================================")
try:
demo_spoiler_free_rag()
except ImportError as e:
print(f"❌ Cannot run demo due to missing dependencies: {e}")
except Exception as e:
print(f"❌ Error running demo: {e}")

28
llms.txt Normal file
View File

@@ -0,0 +1,28 @@
# llms.txt — LEANN MCP and Agent Integration
product: LEANN
homepage: https://github.com/yichuan-w/LEANN
contact: https://github.com/yichuan-w/LEANN/issues
# Installation
install: uv tool install leann-core --with leann
# MCP Server Entry Point
mcp.server: leann_mcp
mcp.protocol_version: 2024-11-05
# Tools
mcp.tools: leann_list, leann_search
mcp.tool.leann_list.description: List available LEANN indexes
mcp.tool.leann_list.input: {}
mcp.tool.leann_search.description: Semantic search across a named LEANN index
mcp.tool.leann_search.input.index_name: string, required
mcp.tool.leann_search.input.query: string, required
mcp.tool.leann_search.input.top_k: integer, optional, default=5, min=1, max=20
mcp.tool.leann_search.input.complexity: integer, optional, default=32, min=16, max=128
# Notes
note: Build indexes with `leann build <name> --docs <files...>` before searching.
example.add: claude mcp add --scope user leann-server -- leann_mcp
example.verify: claude mcp list | cat

View File

@@ -83,9 +83,7 @@ def create_diskann_embedding_server(
logger.info(f"Loading PassageManager with metadata_file_path: {passages_file}")
passages = PassageManager(meta["passage_sources"], metadata_file_path=passages_file)
logger.info(
f"Loaded PassageManager with {len(passages.global_offset_map)} passages from metadata"
)
logger.info(f"Loaded PassageManager with {len(passages)} passages from metadata")
# Import protobuf after ensuring the path is correct
try:

View File

@@ -4,8 +4,8 @@ build-backend = "scikit_build_core.build"
[project]
name = "leann-backend-diskann"
version = "0.3.0"
dependencies = ["leann-core==0.3.0", "numpy", "protobuf>=3.19.0"]
version = "0.3.4"
dependencies = ["leann-core==0.3.4", "numpy", "protobuf>=3.19.0"]
[tool.scikit-build]
# Key: simplified CMake path

View File

@@ -49,9 +49,28 @@ set(BUILD_TESTING OFF CACHE BOOL "" FORCE)
set(FAISS_ENABLE_C_API OFF CACHE BOOL "" FORCE)
set(FAISS_OPT_LEVEL "generic" CACHE STRING "" FORCE)
# Disable additional SIMD versions to speed up compilation
# Disable x86-specific SIMD optimizations (important for ARM64 compatibility)
set(FAISS_ENABLE_AVX2 OFF CACHE BOOL "" FORCE)
set(FAISS_ENABLE_AVX512 OFF CACHE BOOL "" FORCE)
set(FAISS_ENABLE_SSE4_1 OFF CACHE BOOL "" FORCE)
# ARM64-specific configuration
if(CMAKE_SYSTEM_PROCESSOR MATCHES "aarch64|arm64")
message(STATUS "Configuring Faiss for ARM64 architecture")
if(CMAKE_SYSTEM_NAME STREQUAL "Linux")
# Use SVE optimization level for ARM64 Linux (as seen in Faiss conda build)
set(FAISS_OPT_LEVEL "sve" CACHE STRING "" FORCE)
message(STATUS "Setting FAISS_OPT_LEVEL to 'sve' for ARM64 Linux")
else()
# Use generic optimization for other ARM64 platforms (like macOS)
set(FAISS_OPT_LEVEL "generic" CACHE STRING "" FORCE)
message(STATUS "Setting FAISS_OPT_LEVEL to 'generic' for ARM64 ${CMAKE_SYSTEM_NAME}")
endif()
# ARM64 compatibility: Faiss submodule has been modified to fix x86 header inclusion
message(STATUS "Using ARM64-compatible Faiss submodule")
endif()
# Additional optimization options from INSTALL.md
set(CMAKE_BUILD_TYPE "Release" CACHE STRING "" FORCE)

View File

@@ -1,6 +1,7 @@
import logging
import os
import shutil
import time
from pathlib import Path
from typing import Any, Literal, Optional
@@ -236,6 +237,7 @@ class HNSWSearcher(BaseSearcher):
distances = np.empty((batch_size_query, top_k), dtype=np.float32)
labels = np.empty((batch_size_query, top_k), dtype=np.int64)
search_time = time.time()
self._index.search(
query.shape[0],
faiss.swig_ptr(query),
@@ -244,7 +246,8 @@ class HNSWSearcher(BaseSearcher):
faiss.swig_ptr(labels),
params,
)
search_time = time.time() - search_time
logger.info(f" Search time in HNSWSearcher.search() backend: {search_time} seconds")
string_labels = [[str(int_label) for int_label in batch_labels] for batch_labels in labels]
return {"labels": string_labels, "distances": distances}

View File

@@ -90,9 +90,7 @@ def create_hnsw_embedding_server(
embedding_dim: int = int(meta.get("dimensions", 0))
except Exception:
embedding_dim = 0
logger.info(
f"Loaded PassageManager with {len(passages.global_offset_map)} passages from metadata"
)
logger.info(f"Loaded PassageManager with {len(passages)} passages from metadata")
# (legacy ZMQ thread removed; using shutdown-capable server only)

View File

@@ -6,10 +6,10 @@ build-backend = "scikit_build_core.build"
[project]
name = "leann-backend-hnsw"
version = "0.3.0"
version = "0.3.4"
description = "Custom-built HNSW (Faiss) backend for the Leann toolkit."
dependencies = [
"leann-core==0.3.0",
"leann-core==0.3.4",
"numpy",
"pyzmq>=23.0.0",
"msgpack>=1.0.0",

View File

@@ -4,7 +4,7 @@ build-backend = "setuptools.build_meta"
[project]
name = "leann-core"
version = "0.3.0"
version = "0.3.4"
description = "Core API and plugin system for LEANN"
readme = "README.md"
requires-python = ">=3.9"

View File

@@ -6,11 +6,13 @@ with the correct, original embedding logic from the user's reference code.
import json
import logging
import pickle
import re
import subprocess
import time
import warnings
from dataclasses import dataclass, field
from pathlib import Path
from typing import Any, Literal, Optional
from typing import Any, Literal, Optional, Union
import numpy as np
@@ -18,6 +20,7 @@ from leann.interface import LeannBackendSearcherInterface
from .chat import get_llm
from .interface import LeannBackendFactoryInterface
from .metadata_filter import MetadataFilterEngine
from .registry import BACKEND_REGISTRY
logger = logging.getLogger(__name__)
@@ -119,9 +122,13 @@ class PassageManager:
def __init__(
self, passage_sources: list[dict[str, Any]], metadata_file_path: Optional[str] = None
):
self.offset_maps = {}
self.passage_files = {}
self.global_offset_map = {} # Combined map for fast lookup
self.offset_maps: dict[str, dict[str, int]] = {}
self.passage_files: dict[str, str] = {}
# Avoid materializing a single gigantic global map to reduce memory
# footprint on very large corpora (e.g., 60M+ passages). Instead, keep
# per-shard maps and do a lightweight per-shard lookup on demand.
self._total_count: int = 0
self.filter_engine = MetadataFilterEngine() # Initialize filter engine
# Derive index base name for standard sibling fallbacks, e.g., <index_name>.passages.*
index_name_base = None
@@ -142,12 +149,25 @@ class PassageManager:
default_name: Optional[str],
source_dict: dict[str, Any],
) -> list[Path]:
"""
Build an ordered list of candidate paths. For relative paths specified in
metadata, prefer resolution relative to the metadata file directory first,
then fall back to CWD-based resolution, and finally to conventional
sibling defaults (e.g., <index_base>.passages.idx / .jsonl).
"""
candidates: list[Path] = []
# 1) Primary as-is (absolute or relative)
# 1) Primary path
if primary:
p = Path(primary)
candidates.append(p if p.is_absolute() else (Path.cwd() / p))
# 2) metadata-relative explicit relative key
if p.is_absolute():
candidates.append(p)
else:
# Prefer metadata-relative resolution for relative paths
if metadata_file_path:
candidates.append(Path(metadata_file_path).parent / p)
# Also consider CWD-relative as a fallback for legacy layouts
candidates.append(Path.cwd() / p)
# 2) metadata-relative explicit relative key (if present)
if metadata_file_path and source_dict.get(relative_key):
candidates.append(Path(metadata_file_path).parent / source_dict[relative_key])
# 3) metadata-relative standard sibling filename
@@ -177,23 +197,78 @@ class PassageManager:
raise FileNotFoundError(f"Passage index file not found: {index_file}")
with open(index_file, "rb") as f:
offset_map = pickle.load(f)
offset_map: dict[str, int] = pickle.load(f)
self.offset_maps[passage_file] = offset_map
self.passage_files[passage_file] = passage_file
# Build global map for O(1) lookup
for passage_id, offset in offset_map.items():
self.global_offset_map[passage_id] = (passage_file, offset)
self._total_count += len(offset_map)
def get_passage(self, passage_id: str) -> dict[str, Any]:
if passage_id in self.global_offset_map:
passage_file, offset = self.global_offset_map[passage_id]
# Lazy file opening - only open when needed
with open(passage_file, encoding="utf-8") as f:
f.seek(offset)
return json.loads(f.readline())
# Fast path: check each shard map (there are typically few shards).
# This avoids building a massive combined dict while keeping lookups
# bounded by the number of shards.
for passage_file, offset_map in self.offset_maps.items():
try:
offset = offset_map[passage_id]
with open(passage_file, encoding="utf-8") as f:
f.seek(offset)
return json.loads(f.readline())
except KeyError:
continue
raise KeyError(f"Passage ID not found: {passage_id}")
def filter_search_results(
self,
search_results: list[SearchResult],
metadata_filters: Optional[dict[str, dict[str, Union[str, int, float, bool, list]]]],
) -> list[SearchResult]:
"""
Apply metadata filters to search results.
Args:
search_results: List of SearchResult objects
metadata_filters: Filter specifications to apply
Returns:
Filtered list of SearchResult objects
"""
if not metadata_filters:
return search_results
logger.debug(f"Applying metadata filters to {len(search_results)} results")
# Convert SearchResult objects to dictionaries for the filter engine
result_dicts = []
for result in search_results:
result_dicts.append(
{
"id": result.id,
"score": result.score,
"text": result.text,
"metadata": result.metadata,
}
)
# Apply filters using the filter engine
filtered_dicts = self.filter_engine.apply_filters(result_dicts, metadata_filters)
# Convert back to SearchResult objects
filtered_results = []
for result_dict in filtered_dicts:
filtered_results.append(
SearchResult(
id=result_dict["id"],
score=result_dict["score"],
text=result_dict["text"],
metadata=result_dict["metadata"],
)
)
logger.debug(f"Filtered results: {len(filtered_results)} remaining")
return filtered_results
def __len__(self) -> int:
return self._total_count
class LeannBuilder:
def __init__(
@@ -557,6 +632,8 @@ class LeannSearcher:
self.passage_manager = PassageManager(
self.meta_data.get("passage_sources", []), metadata_file_path=self.meta_path_str
)
# Preserve backend name for conditional parameter forwarding
self.backend_name = backend_name
backend_factory = BACKEND_REGISTRY.get(backend_name)
if backend_factory is None:
raise ValueError(f"Backend '{backend_name}' not found.")
@@ -576,15 +653,49 @@ class LeannSearcher:
recompute_embeddings: bool = True,
pruning_strategy: Literal["global", "local", "proportional"] = "global",
expected_zmq_port: int = 5557,
metadata_filters: Optional[dict[str, dict[str, Union[str, int, float, bool, list]]]] = None,
batch_size: int = 0,
use_grep: bool = False,
**kwargs,
) -> list[SearchResult]:
"""
Search for nearest neighbors with optional metadata filtering.
Args:
query: Text query to search for
top_k: Number of nearest neighbors to return
complexity: Search complexity/candidate list size, higher = more accurate but slower
beam_width: Number of parallel search paths/IO requests per iteration
prune_ratio: Ratio of neighbors to prune via approximate distance (0.0-1.0)
recompute_embeddings: Whether to fetch fresh embeddings from server vs use stored codes
pruning_strategy: Candidate selection strategy - "global" (default), "local", or "proportional"
expected_zmq_port: ZMQ port for embedding server communication
metadata_filters: Optional filters to apply to search results based on metadata.
Format: {"field_name": {"operator": value}}
Supported operators:
- Comparison: "==", "!=", "<", "<=", ">", ">="
- Membership: "in", "not_in"
- String: "contains", "starts_with", "ends_with"
Example: {"chapter": {"<=": 5}, "tags": {"in": ["fiction", "drama"]}}
**kwargs: Backend-specific parameters
Returns:
List of SearchResult objects with text, metadata, and similarity scores
"""
# Handle grep search
if use_grep:
return self._grep_search(query, top_k)
logger.info("🔍 LeannSearcher.search() called:")
logger.info(f" Query: '{query}'")
logger.info(f" Top_k: {top_k}")
logger.info(f" Metadata filters: {metadata_filters}")
logger.info(f" Additional kwargs: {kwargs}")
# Smart top_k detection and adjustment
total_docs = len(self.passage_manager.global_offset_map)
# Use PassageManager length (sum of shard sizes) to avoid
# depending on a massive combined map
total_docs = len(self.passage_manager)
original_top_k = top_k
if top_k > total_docs:
top_k = total_docs
@@ -613,23 +724,33 @@ class LeannSearcher:
use_server_if_available=recompute_embeddings,
zmq_port=zmq_port,
)
# logger.info(f" Generated embedding shape: {query_embedding.shape}")
# time.time() - start_time
# logger.info(f" Embedding time: {embedding_time} seconds")
logger.info(f" Generated embedding shape: {query_embedding.shape}")
embedding_time = time.time() - start_time
logger.info(f" Embedding time: {embedding_time} seconds")
start_time = time.time()
backend_search_kwargs: dict[str, Any] = {
"complexity": complexity,
"beam_width": beam_width,
"prune_ratio": prune_ratio,
"recompute_embeddings": recompute_embeddings,
"pruning_strategy": pruning_strategy,
"zmq_port": zmq_port,
}
# Only HNSW supports batching; forward conditionally
if self.backend_name == "hnsw":
backend_search_kwargs["batch_size"] = batch_size
# Merge any extra kwargs last
backend_search_kwargs.update(kwargs)
results = self.backend_impl.search(
query_embedding,
top_k,
complexity=complexity,
beam_width=beam_width,
prune_ratio=prune_ratio,
recompute_embeddings=recompute_embeddings,
pruning_strategy=pruning_strategy,
zmq_port=zmq_port,
**kwargs,
**backend_search_kwargs,
)
# logger.info(f" Search time: {search_time} seconds")
search_time = time.time() - start_time
logger.info(f" Search time in search() LEANN searcher: {search_time} seconds")
logger.info(f" Backend returned: labels={len(results.get('labels', [[]])[0])} results")
enriched_results = []
@@ -668,15 +789,109 @@ class LeannSearcher:
f" {RED}{RESET} [{i + 1:2d}] ID: '{string_id}' -> {RED}ERROR: Passage not found!{RESET}"
)
# Apply metadata filters if specified
if metadata_filters:
logger.info(f" 🔍 Applying metadata filters: {metadata_filters}")
enriched_results = self.passage_manager.filter_search_results(
enriched_results, metadata_filters
)
# Define color codes outside the loop for final message
GREEN = "\033[92m"
RESET = "\033[0m"
logger.info(f" {GREEN}✓ Final enriched results: {len(enriched_results)} passages{RESET}")
return enriched_results
def _find_jsonl_file(self) -> Optional[str]:
"""Find the .jsonl file containing raw passages for grep search"""
index_path = Path(self.meta_path_str).parent
potential_files = [
index_path / "documents.leann.passages.jsonl",
index_path.parent / "documents.leann.passages.jsonl",
]
for file_path in potential_files:
if file_path.exists():
return str(file_path)
return None
def _grep_search(self, query: str, top_k: int = 5) -> list[SearchResult]:
"""Perform grep-based search on raw passages"""
jsonl_file = self._find_jsonl_file()
if not jsonl_file:
raise FileNotFoundError("No .jsonl passages file found for grep search")
try:
cmd = ["grep", "-i", "-n", query, jsonl_file]
result = subprocess.run(cmd, capture_output=True, text=True, check=False)
if result.returncode == 1:
return []
elif result.returncode != 0:
raise RuntimeError(f"Grep failed: {result.stderr}")
matches = []
for line in result.stdout.strip().split("\n"):
if not line:
continue
parts = line.split(":", 1)
if len(parts) != 2:
continue
try:
data = json.loads(parts[1])
text = data.get("text", "")
score = text.lower().count(query.lower())
matches.append(
SearchResult(
id=data.get("id", parts[0]),
text=text,
metadata=data.get("metadata", {}),
score=float(score),
)
)
except json.JSONDecodeError:
continue
matches.sort(key=lambda x: x.score, reverse=True)
return matches[:top_k]
except FileNotFoundError:
raise RuntimeError(
"grep command not found. Please install grep or use semantic search."
)
def _python_regex_search(self, query: str, top_k: int = 5) -> list[SearchResult]:
"""Fallback regex search"""
jsonl_file = self._find_jsonl_file()
if not jsonl_file:
raise FileNotFoundError("No .jsonl file found")
pattern = re.compile(re.escape(query), re.IGNORECASE)
matches = []
with open(jsonl_file, encoding="utf-8") as f:
for line_num, line in enumerate(f, 1):
if pattern.search(line):
try:
data = json.loads(line.strip())
matches.append(
SearchResult(
id=data.get("id", str(line_num)),
text=data.get("text", ""),
metadata=data.get("metadata", {}),
score=float(len(pattern.findall(data.get("text", "")))),
)
)
except json.JSONDecodeError:
continue
matches.sort(key=lambda x: x.score, reverse=True)
return matches[:top_k]
def cleanup(self):
"""Explicitly cleanup embedding server resources.
This method should be called after you're done using the searcher,
especially in test environments or batch processing scenarios.
"""
@@ -708,9 +923,15 @@ class LeannChat:
index_path: str,
llm_config: Optional[dict[str, Any]] = None,
enable_warmup: bool = False,
searcher: Optional[LeannSearcher] = None,
**kwargs,
):
self.searcher = LeannSearcher(index_path, enable_warmup=enable_warmup, **kwargs)
if searcher is None:
self.searcher = LeannSearcher(index_path, enable_warmup=enable_warmup, **kwargs)
self._owns_searcher = True
else:
self.searcher = searcher
self._owns_searcher = False
self.llm = get_llm(llm_config)
def ask(
@@ -724,6 +945,9 @@ class LeannChat:
pruning_strategy: Literal["global", "local", "proportional"] = "global",
llm_kwargs: Optional[dict[str, Any]] = None,
expected_zmq_port: int = 5557,
metadata_filters: Optional[dict[str, dict[str, Union[str, int, float, bool, list]]]] = None,
batch_size: int = 0,
use_grep: bool = False,
**search_kwargs,
):
if llm_kwargs is None:
@@ -738,10 +962,12 @@ class LeannChat:
recompute_embeddings=recompute_embeddings,
pruning_strategy=pruning_strategy,
expected_zmq_port=expected_zmq_port,
metadata_filters=metadata_filters,
batch_size=batch_size,
**search_kwargs,
)
search_time = time.time() - search_time
# logger.info(f" Search time: {search_time} seconds")
logger.info(f" Search time: {search_time} seconds")
context = "\n\n".join([r.text for r in results])
prompt = (
"Here is some retrieved context that might help answer your question:\n\n"
@@ -777,7 +1003,9 @@ class LeannChat:
This method should be called after you're done using the chat interface,
especially in test environments or batch processing scenarios.
"""
if hasattr(self.searcher, "cleanup"):
# Only stop the embedding server if this LeannChat instance created the searcher.
# When a shared searcher is passed in, avoid shutting down the server to enable reuse.
if getattr(self, "_owns_searcher", False) and hasattr(self.searcher, "cleanup"):
self.searcher.cleanup()
# Enable automatic cleanup patterns

View File

@@ -0,0 +1,220 @@
"""
Enhanced chunking utilities with AST-aware code chunking support.
Packaged within leann-core so installed wheels can import it reliably.
"""
import logging
from pathlib import Path
from typing import Optional
from llama_index.core.node_parser import SentenceSplitter
logger = logging.getLogger(__name__)
# Code file extensions supported by astchunk
CODE_EXTENSIONS = {
".py": "python",
".java": "java",
".cs": "csharp",
".ts": "typescript",
".tsx": "typescript",
".js": "typescript",
".jsx": "typescript",
}
def detect_code_files(documents, code_extensions=None) -> tuple[list, list]:
"""Separate documents into code files and regular text files."""
if code_extensions is None:
code_extensions = CODE_EXTENSIONS
code_docs = []
text_docs = []
for doc in documents:
file_path = doc.metadata.get("file_path", "") or doc.metadata.get("file_name", "")
if file_path:
file_ext = Path(file_path).suffix.lower()
if file_ext in code_extensions:
doc.metadata["language"] = code_extensions[file_ext]
doc.metadata["is_code"] = True
code_docs.append(doc)
else:
doc.metadata["is_code"] = False
text_docs.append(doc)
else:
doc.metadata["is_code"] = False
text_docs.append(doc)
logger.info(f"Detected {len(code_docs)} code files and {len(text_docs)} text files")
return code_docs, text_docs
def get_language_from_extension(file_path: str) -> Optional[str]:
"""Return language string from a filename/extension using CODE_EXTENSIONS."""
ext = Path(file_path).suffix.lower()
return CODE_EXTENSIONS.get(ext)
def create_ast_chunks(
documents,
max_chunk_size: int = 512,
chunk_overlap: int = 64,
metadata_template: str = "default",
) -> list[str]:
"""Create AST-aware chunks from code documents using astchunk.
Falls back to traditional chunking if astchunk is unavailable.
"""
try:
from astchunk import ASTChunkBuilder # optional dependency
except ImportError as e:
logger.error(f"astchunk not available: {e}")
logger.info("Falling back to traditional chunking for code files")
return create_traditional_chunks(documents, max_chunk_size, chunk_overlap)
all_chunks = []
for doc in documents:
language = doc.metadata.get("language")
if not language:
logger.warning("No language detected; falling back to traditional chunking")
all_chunks.extend(create_traditional_chunks([doc], max_chunk_size, chunk_overlap))
continue
try:
configs = {
"max_chunk_size": max_chunk_size,
"language": language,
"metadata_template": metadata_template,
"chunk_overlap": chunk_overlap if chunk_overlap > 0 else 0,
}
repo_metadata = {
"file_path": doc.metadata.get("file_path", ""),
"file_name": doc.metadata.get("file_name", ""),
"creation_date": doc.metadata.get("creation_date", ""),
"last_modified_date": doc.metadata.get("last_modified_date", ""),
}
configs["repo_level_metadata"] = repo_metadata
chunk_builder = ASTChunkBuilder(**configs)
code_content = doc.get_content()
if not code_content or not code_content.strip():
logger.warning("Empty code content, skipping")
continue
chunks = chunk_builder.chunkify(code_content)
for chunk in chunks:
if hasattr(chunk, "text"):
chunk_text = chunk.text
elif isinstance(chunk, dict) and "text" in chunk:
chunk_text = chunk["text"]
elif isinstance(chunk, str):
chunk_text = chunk
else:
chunk_text = str(chunk)
if chunk_text and chunk_text.strip():
all_chunks.append(chunk_text.strip())
logger.info(
f"Created {len(chunks)} AST chunks from {language} file: {doc.metadata.get('file_name', 'unknown')}"
)
except Exception as e:
logger.warning(f"AST chunking failed for {language} file: {e}")
logger.info("Falling back to traditional chunking")
all_chunks.extend(create_traditional_chunks([doc], max_chunk_size, chunk_overlap))
return all_chunks
def create_traditional_chunks(
documents, chunk_size: int = 256, chunk_overlap: int = 128
) -> list[str]:
"""Create traditional text chunks using LlamaIndex SentenceSplitter."""
if chunk_size <= 0:
logger.warning(f"Invalid chunk_size={chunk_size}, using default value of 256")
chunk_size = 256
if chunk_overlap < 0:
chunk_overlap = 0
if chunk_overlap >= chunk_size:
chunk_overlap = chunk_size // 2
node_parser = SentenceSplitter(
chunk_size=chunk_size,
chunk_overlap=chunk_overlap,
separator=" ",
paragraph_separator="\n\n",
)
all_texts = []
for doc in documents:
try:
nodes = node_parser.get_nodes_from_documents([doc])
if nodes:
all_texts.extend(node.get_content() for node in nodes)
except Exception as e:
logger.error(f"Traditional chunking failed for document: {e}")
content = doc.get_content()
if content and content.strip():
all_texts.append(content.strip())
return all_texts
def create_text_chunks(
documents,
chunk_size: int = 256,
chunk_overlap: int = 128,
use_ast_chunking: bool = False,
ast_chunk_size: int = 512,
ast_chunk_overlap: int = 64,
code_file_extensions: Optional[list[str]] = None,
ast_fallback_traditional: bool = True,
) -> list[str]:
"""Create text chunks from documents with optional AST support for code files."""
if not documents:
logger.warning("No documents provided for chunking")
return []
local_code_extensions = CODE_EXTENSIONS.copy()
if code_file_extensions:
ext_mapping = {
".py": "python",
".java": "java",
".cs": "c_sharp",
".ts": "typescript",
".tsx": "typescript",
}
for ext in code_file_extensions:
if ext.lower() not in local_code_extensions:
if ext.lower() in ext_mapping:
local_code_extensions[ext.lower()] = ext_mapping[ext.lower()]
else:
logger.warning(f"Unsupported extension {ext}, will use traditional chunking")
all_chunks = []
if use_ast_chunking:
code_docs, text_docs = detect_code_files(documents, local_code_extensions)
if code_docs:
try:
all_chunks.extend(
create_ast_chunks(
code_docs, max_chunk_size=ast_chunk_size, chunk_overlap=ast_chunk_overlap
)
)
except Exception as e:
logger.error(f"AST chunking failed: {e}")
if ast_fallback_traditional:
all_chunks.extend(
create_traditional_chunks(code_docs, chunk_size, chunk_overlap)
)
else:
raise
if text_docs:
all_chunks.extend(create_traditional_chunks(text_docs, chunk_size, chunk_overlap))
else:
all_chunks = create_traditional_chunks(documents, chunk_size, chunk_overlap)
logger.info(f"Total chunks created: {len(all_chunks)}")
return all_chunks

View File

@@ -1,7 +1,7 @@
import argparse
import asyncio
from pathlib import Path
from typing import Optional, Union
from typing import Any, Optional, Union
from llama_index.core import SimpleDirectoryReader
from llama_index.core.node_parser import SentenceSplitter
@@ -180,6 +180,29 @@ Examples:
default=50,
help="Code chunk overlap (default: 50)",
)
build_parser.add_argument(
"--use-ast-chunking",
action="store_true",
help="Enable AST-aware chunking for code files (requires astchunk)",
)
build_parser.add_argument(
"--ast-chunk-size",
type=int,
default=768,
help="AST chunk size in characters (default: 768)",
)
build_parser.add_argument(
"--ast-chunk-overlap",
type=int,
default=96,
help="AST chunk overlap in characters (default: 96)",
)
build_parser.add_argument(
"--ast-fallback-traditional",
action="store_true",
default=True,
help="Fall back to traditional chunking if AST chunking fails (default: True)",
)
# Search command
search_parser = subparsers.add_parser("search", help="Search documents")
@@ -206,6 +229,11 @@ Examples:
default="global",
help="Pruning strategy (default: global)",
)
search_parser.add_argument(
"--non-interactive",
action="store_true",
help="Non-interactive mode: automatically select index without prompting",
)
# Ask command
ask_parser = subparsers.add_parser("ask", help="Ask questions")
@@ -293,9 +321,17 @@ Examples:
return basic_matches
def _should_exclude_file(self, relative_path: Path, gitignore_matches) -> bool:
"""Check if a file should be excluded using gitignore parser."""
return gitignore_matches(str(relative_path))
def _should_exclude_file(self, file_path: Path, gitignore_matches) -> bool:
"""Check if a file should be excluded using gitignore parser.
Always match against absolute, posix-style paths for consistency with
gitignore_parser expectations.
"""
try:
absolute_path = file_path.resolve()
except Exception:
absolute_path = Path(str(file_path))
return gitignore_matches(absolute_path.as_posix())
def _is_git_submodule(self, path: Path) -> bool:
"""Check if a path is a git submodule."""
@@ -367,7 +403,9 @@ Examples:
print(f" {current_path}")
print(" " + "" * 45)
current_indexes = self._discover_indexes_in_project(current_path)
current_indexes = self._discover_indexes_in_project(
current_path, exclude_dirs=other_projects
)
if current_indexes:
for idx in current_indexes:
total_indexes += 1
@@ -405,14 +443,15 @@ Examples:
print("💡 Get started:")
print(" leann build my-docs --docs ./documents")
else:
projects_count = len(
[
p
for p in valid_projects
if (p / ".leann" / "indexes").exists()
and list((p / ".leann" / "indexes").iterdir())
]
)
# Count only projects that have at least one discoverable index
projects_count = 0
for p in valid_projects:
if p == current_path:
discovered = self._discover_indexes_in_project(p, exclude_dirs=other_projects)
else:
discovered = self._discover_indexes_in_project(p)
if len(discovered) > 0:
projects_count += 1
print(f"📊 Total: {total_indexes} indexes across {projects_count} projects")
if current_indexes_count > 0:
@@ -429,9 +468,22 @@ Examples:
print("\n💡 Create your first index:")
print(" leann build my-docs --docs ./documents")
def _discover_indexes_in_project(self, project_path: Path):
"""Discover all indexes in a project directory (both CLI and apps formats)"""
def _discover_indexes_in_project(
self, project_path: Path, exclude_dirs: Optional[list[Path]] = None
):
"""Discover all indexes in a project directory (both CLI and apps formats)
exclude_dirs: when provided, skip any APP-format index files that are
located under these directories. This prevents duplicates when the
current project is a parent directory of other registered projects.
"""
indexes = []
exclude_dirs = exclude_dirs or []
# normalize to resolved paths once for comparison
try:
exclude_dirs_resolved = [p.resolve() for p in exclude_dirs]
except Exception:
exclude_dirs_resolved = exclude_dirs
# 1. CLI format: .leann/indexes/index_name/
cli_indexes_dir = project_path / ".leann" / "indexes"
@@ -461,26 +513,46 @@ Examples:
)
# 2. Apps format: *.leann.meta.json files anywhere in the project
cli_indexes_dir = project_path / ".leann" / "indexes"
for meta_file in project_path.rglob("*.leann.meta.json"):
if meta_file.is_file():
# Extract index name from filename (remove .leann.meta.json extension)
index_name = meta_file.name.replace(".leann.meta.json", "")
# Skip CLI-built indexes (which store meta under .leann/indexes/<name>/)
try:
if cli_indexes_dir.exists() and cli_indexes_dir in meta_file.parents:
continue
except Exception:
pass
# Skip meta files that live under excluded directories
try:
meta_parent_resolved = meta_file.parent.resolve()
if any(
meta_parent_resolved.is_relative_to(ex_dir)
for ex_dir in exclude_dirs_resolved
):
continue
except Exception:
# best effort; if resolve or comparison fails, do not exclude
pass
# Use the parent directory name as the app index display name
display_name = meta_file.parent.name
# Extract file base used to store files
file_base = meta_file.name.replace(".leann.meta.json", "")
# Apps indexes are considered complete if the .leann.meta.json file exists
status = ""
# Calculate total size of all related files
# Calculate total size of all related files (use file base)
size_mb = 0
try:
index_dir = meta_file.parent
for related_file in index_dir.glob(f"{index_name}.leann*"):
for related_file in index_dir.glob(f"{file_base}.leann*"):
size_mb += related_file.stat().st_size / (1024 * 1024)
except (OSError, PermissionError):
pass
indexes.append(
{
"name": index_name,
"name": display_name,
"type": "app",
"status": status,
"size_mb": size_mb,
@@ -534,13 +606,79 @@ Examples:
if not project_path.exists():
continue
# 1) CLI-format index under .leann/indexes/<name>
index_dir = project_path / ".leann" / "indexes" / index_name
if index_dir.exists():
is_current = project_path == current_path
matches.append(
{"project_path": project_path, "index_dir": index_dir, "is_current": is_current}
{
"project_path": project_path,
"index_dir": index_dir,
"is_current": is_current,
"kind": "cli",
}
)
# 2) App-format indexes
# We support two ways of addressing apps:
# a) by the file base (e.g., `pdf_documents`)
# b) by the parent directory name (e.g., `new_txt`)
seen_app_meta = set()
# 2a) by file base
for meta_file in project_path.rglob(f"{index_name}.leann.meta.json"):
if meta_file.is_file():
# Skip CLI-built indexes' meta under .leann/indexes
try:
cli_indexes_dir = project_path / ".leann" / "indexes"
if cli_indexes_dir.exists() and cli_indexes_dir in meta_file.parents:
continue
except Exception:
pass
is_current = project_path == current_path
key = (str(project_path), str(meta_file))
if key in seen_app_meta:
continue
seen_app_meta.add(key)
matches.append(
{
"project_path": project_path,
"files_dir": meta_file.parent,
"meta_file": meta_file,
"is_current": is_current,
"kind": "app",
"display_name": meta_file.parent.name,
"file_base": meta_file.name.replace(".leann.meta.json", ""),
}
)
# 2b) by parent directory name
for meta_file in project_path.rglob("*.leann.meta.json"):
if meta_file.is_file() and meta_file.parent.name == index_name:
# Skip CLI-built indexes' meta under .leann/indexes
try:
cli_indexes_dir = project_path / ".leann" / "indexes"
if cli_indexes_dir.exists() and cli_indexes_dir in meta_file.parents:
continue
except Exception:
pass
is_current = project_path == current_path
key = (str(project_path), str(meta_file))
if key in seen_app_meta:
continue
seen_app_meta.add(key)
matches.append(
{
"project_path": project_path,
"files_dir": meta_file.parent,
"meta_file": meta_file,
"is_current": is_current,
"kind": "app",
"display_name": meta_file.parent.name,
"file_base": meta_file.name.replace(".leann.meta.json", ""),
}
)
# Sort: current project first, then by project name
matches.sort(key=lambda x: (not x["is_current"], x["project_path"].name))
return matches
@@ -548,8 +686,8 @@ Examples:
def _remove_single_match(self, match, index_name: str, force: bool):
"""Handle removal when only one match is found"""
project_path = match["project_path"]
index_dir = match["index_dir"]
is_current = match["is_current"]
kind = match.get("kind", "cli")
if is_current:
location_info = "current project"
@@ -560,7 +698,10 @@ Examples:
print(f"✅ Found 1 index named '{index_name}':")
print(f" {emoji} Location: {location_info}")
print(f" 📍 Path: {project_path}")
if kind == "cli":
print(f" 📍 Path: {project_path / '.leann' / 'indexes' / index_name}")
else:
print(f" 📍 Meta: {match['meta_file']}")
if not force:
if not is_current:
@@ -572,9 +713,22 @@ Examples:
print(" ❌ Removal cancelled.")
return False
return self._delete_index_directory(
index_dir, index_name, project_path if not is_current else None
)
if kind == "cli":
return self._delete_index_directory(
match["index_dir"],
index_name,
project_path if not is_current else None,
is_app=False,
)
else:
return self._delete_index_directory(
match["files_dir"],
match.get("display_name", index_name),
project_path if not is_current else None,
is_app=True,
meta_file=match.get("meta_file"),
app_file_base=match.get("file_base"),
)
def _remove_from_multiple_matches(self, matches, index_name: str, force: bool):
"""Handle removal when multiple matches are found"""
@@ -585,19 +739,34 @@ Examples:
for i, match in enumerate(matches, 1):
project_path = match["project_path"]
is_current = match["is_current"]
kind = match.get("kind", "cli")
if is_current:
print(f" {i}. 🏠 Current project")
print(f" 📍 {project_path}")
print(f" {i}. 🏠 Current project ({'CLI' if kind == 'cli' else 'APP'})")
else:
print(f" {i}. 📂 {project_path.name}")
print(f" 📍 {project_path}")
print(f" {i}. 📂 {project_path.name} ({'CLI' if kind == 'cli' else 'APP'})")
# Show path details
if kind == "cli":
print(f" 📍 {project_path / '.leann' / 'indexes' / index_name}")
else:
print(f" 📍 {match['meta_file']}")
# Show size info
try:
size_mb = sum(
f.stat().st_size for f in match["index_dir"].iterdir() if f.is_file()
) / (1024 * 1024)
if kind == "cli":
size_mb = sum(
f.stat().st_size for f in match["index_dir"].iterdir() if f.is_file()
) / (1024 * 1024)
else:
file_base = match.get("file_base")
size_mb = 0.0
if file_base:
size_mb = sum(
f.stat().st_size
for f in match["files_dir"].glob(f"{file_base}.leann*")
if f.is_file()
) / (1024 * 1024)
print(f" 📦 Size: {size_mb:.1f} MB")
except (OSError, PermissionError):
pass
@@ -621,8 +790,8 @@ Examples:
if 0 <= choice_idx < len(matches):
selected_match = matches[choice_idx]
project_path = selected_match["project_path"]
index_dir = selected_match["index_dir"]
is_current = selected_match["is_current"]
kind = selected_match.get("kind", "cli")
location = "current project" if is_current else f"'{project_path.name}' project"
print(f" 🎯 Selected: Remove from {location}")
@@ -635,9 +804,22 @@ Examples:
print(" ❌ Confirmation failed. Removal cancelled.")
return False
return self._delete_index_directory(
index_dir, index_name, project_path if not is_current else None
)
if kind == "cli":
return self._delete_index_directory(
selected_match["index_dir"],
index_name,
project_path if not is_current else None,
is_app=False,
)
else:
return self._delete_index_directory(
selected_match["files_dir"],
selected_match.get("display_name", index_name),
project_path if not is_current else None,
is_app=True,
meta_file=selected_match.get("meta_file"),
app_file_base=selected_match.get("file_base"),
)
else:
print(" ❌ Invalid choice. Removal cancelled.")
return False
@@ -647,21 +829,65 @@ Examples:
return False
def _delete_index_directory(
self, index_dir: Path, index_name: str, project_path: Optional[Path] = None
self,
index_dir: Path,
index_display_name: str,
project_path: Optional[Path] = None,
is_app: bool = False,
meta_file: Optional[Path] = None,
app_file_base: Optional[str] = None,
):
"""Actually delete the index directory"""
"""Delete a CLI index directory or APP index files safely."""
try:
import shutil
if is_app:
removed = 0
errors = 0
# Delete only files that belong to this app index (based on file base)
pattern_base = app_file_base or ""
for f in index_dir.glob(f"{pattern_base}.leann*"):
try:
f.unlink()
removed += 1
except Exception:
errors += 1
# Best-effort: also remove the meta file if specified and still exists
if meta_file and meta_file.exists():
try:
meta_file.unlink()
removed += 1
except Exception:
errors += 1
shutil.rmtree(index_dir)
if project_path:
print(f"Index '{index_name}' removed from {project_path.name}")
if removed > 0 and errors == 0:
if project_path:
print(
f"App index '{index_display_name}' removed from {project_path.name}"
)
else:
print(f"✅ App index '{index_display_name}' removed successfully")
return True
elif removed > 0 and errors > 0:
print(
f"⚠️ App index '{index_display_name}' partially removed (some files couldn't be deleted)"
)
return True
else:
print(
f"❌ No files found to remove for app index '{index_display_name}' in {index_dir}"
)
return False
else:
print(f"✅ Index '{index_name}' removed successfully")
return True
import shutil
shutil.rmtree(index_dir)
if project_path:
print(f"✅ Index '{index_display_name}' removed from {project_path.name}")
else:
print(f"✅ Index '{index_display_name}' removed successfully")
return True
except Exception as e:
print(f"❌ Error removing index '{index_name}': {e}")
print(f"❌ Error removing index '{index_display_name}': {e}")
return False
def load_documents(
@@ -669,6 +895,7 @@ Examples:
docs_paths: Union[str, list],
custom_file_types: Union[str, None] = None,
include_hidden: bool = False,
args: Optional[dict[str, Any]] = None,
):
# Handle both single path (string) and multiple paths (list) for backward compatibility
if isinstance(docs_paths, str):
@@ -833,7 +1060,8 @@ Examples:
# Try to use better PDF parsers first, but only if PDFs are requested
documents = []
docs_path = Path(docs_dir)
# Use resolved absolute paths to avoid mismatches (symlinks, relative vs absolute)
docs_path = Path(docs_dir).resolve()
# Check if we should process PDFs
should_process_pdfs = custom_file_types is None or ".pdf" in custom_file_types
@@ -842,10 +1070,15 @@ Examples:
for file_path in docs_path.rglob("*.pdf"):
# Check if file matches any exclude pattern
try:
# Ensure both paths are resolved before computing relativity
file_path_resolved = file_path.resolve()
# Determine directory scope using the non-resolved path to avoid
# misclassifying symlinked entries as outside the docs directory
relative_path = file_path.relative_to(docs_path)
if not include_hidden and _path_has_hidden_segment(relative_path):
continue
if self._should_exclude_file(relative_path, gitignore_matches):
# Use absolute path for gitignore matching
if self._should_exclude_file(file_path_resolved, gitignore_matches):
continue
except ValueError:
# Skip files that can't be made relative to docs_path
@@ -888,10 +1121,11 @@ Examples:
) -> bool:
"""Return True if file should be included (not excluded)"""
try:
docs_path_obj = Path(docs_dir)
file_path_obj = Path(file_path)
relative_path = file_path_obj.relative_to(docs_path_obj)
return not self._should_exclude_file(relative_path, gitignore_matches)
docs_path_obj = Path(docs_dir).resolve()
file_path_obj = Path(file_path).resolve()
# Use absolute path for gitignore matching
_ = file_path_obj.relative_to(docs_path_obj) # validate scope
return not self._should_exclude_file(file_path_obj, gitignore_matches)
except (ValueError, OSError):
return True # Include files that can't be processed
@@ -974,18 +1208,47 @@ Examples:
}
print("start chunking documents")
# Add progress bar for document chunking
for doc in tqdm(documents, desc="Chunking documents", unit="doc"):
# Check if this is a code file based on source path
source_path = doc.metadata.get("source", "")
is_code_file = any(source_path.endswith(ext) for ext in code_file_exts)
# Use appropriate parser based on file type
parser = self.code_parser if is_code_file else self.node_parser
nodes = parser.get_nodes_from_documents([doc])
# Check if AST chunking is requested
use_ast = getattr(args, "use_ast_chunking", False)
for node in nodes:
all_texts.append(node.get_content())
if use_ast:
print("🧠 Using AST-aware chunking for code files")
try:
# Import enhanced chunking utilities from packaged module
from .chunking_utils import create_text_chunks
# Use enhanced chunking with AST support
all_texts = create_text_chunks(
documents,
chunk_size=self.node_parser.chunk_size,
chunk_overlap=self.node_parser.chunk_overlap,
use_ast_chunking=True,
ast_chunk_size=getattr(args, "ast_chunk_size", 768),
ast_chunk_overlap=getattr(args, "ast_chunk_overlap", 96),
code_file_extensions=None, # Use defaults
ast_fallback_traditional=getattr(args, "ast_fallback_traditional", True),
)
except ImportError as e:
print(
f"⚠️ AST chunking utilities not available in package ({e}), falling back to traditional chunking"
)
use_ast = False
if not use_ast:
# Use traditional chunking logic
for doc in tqdm(documents, desc="Chunking documents", unit="doc"):
# Check if this is a code file based on source path
source_path = doc.metadata.get("source", "")
is_code_file = any(source_path.endswith(ext) for ext in code_file_exts)
# Use appropriate parser based on file type
parser = self.code_parser if is_code_file else self.node_parser
nodes = parser.get_nodes_from_documents([doc])
for node in nodes:
all_texts.append(node.get_content())
print(f"Loaded {len(documents)} documents, {len(all_texts)} chunks")
return all_texts
@@ -1052,7 +1315,7 @@ Examples:
)
all_texts = self.load_documents(
docs_paths, args.file_types, include_hidden=args.include_hidden
docs_paths, args.file_types, include_hidden=args.include_hidden, args=args
)
if not all_texts:
print("No documents found")
@@ -1085,13 +1348,101 @@ Examples:
async def search_documents(self, args):
index_name = args.index_name
query = args.query
index_path = self.get_index_path(index_name)
if not self.index_exists(index_name):
print(
f"Index '{index_name}' not found. Use 'leann build {index_name} --docs <dir> [<dir2> ...]' to create it."
)
return
# First try to find the index in current project
index_path = self.get_index_path(index_name)
if self.index_exists(index_name):
# Found in current project, use it
pass
else:
# Search across all registered projects (like list_indexes does)
all_matches = self._find_all_matching_indexes(index_name)
if not all_matches:
print(
f"Index '{index_name}' not found. Use 'leann build {index_name} --docs <dir> [<dir2> ...]' to create it."
)
return
elif len(all_matches) == 1:
# Found exactly one match, use it
match = all_matches[0]
if match["kind"] == "cli":
index_path = str(match["index_dir"] / "documents.leann")
else:
# App format: use the meta file to construct the path
meta_file = match["meta_file"]
file_base = match["file_base"]
index_path = str(meta_file.parent / f"{file_base}.leann")
project_info = (
"current project"
if match["is_current"]
else f"project '{match['project_path'].name}'"
)
print(f"Using index '{index_name}' from {project_info}")
else:
# Multiple matches found
if args.non_interactive:
# Non-interactive mode: automatically select the best match
# Priority: current project first, then first available
current_matches = [m for m in all_matches if m["is_current"]]
if current_matches:
match = current_matches[0]
location_desc = "current project"
else:
match = all_matches[0]
location_desc = f"project '{match['project_path'].name}'"
if match["kind"] == "cli":
index_path = str(match["index_dir"] / "documents.leann")
else:
meta_file = match["meta_file"]
file_base = match["file_base"]
index_path = str(meta_file.parent / f"{file_base}.leann")
print(
f"Found {len(all_matches)} indexes named '{index_name}', using index from {location_desc}"
)
else:
# Interactive mode: ask user to choose
print(f"Found {len(all_matches)} indexes named '{index_name}':")
for i, match in enumerate(all_matches, 1):
project_path = match["project_path"]
is_current = match["is_current"]
kind = match.get("kind", "cli")
if is_current:
print(
f" {i}. 🏠 Current project ({'CLI' if kind == 'cli' else 'APP'})"
)
else:
print(
f" {i}. 📂 {project_path.name} ({'CLI' if kind == 'cli' else 'APP'})"
)
try:
choice = input(f"Which index to search? (1-{len(all_matches)}): ").strip()
choice_idx = int(choice) - 1
if 0 <= choice_idx < len(all_matches):
match = all_matches[choice_idx]
if match["kind"] == "cli":
index_path = str(match["index_dir"] / "documents.leann")
else:
meta_file = match["meta_file"]
file_base = match["file_base"]
index_path = str(meta_file.parent / f"{file_base}.leann")
project_info = (
"current project"
if match["is_current"]
else f"project '{match['project_path'].name}'"
)
print(f"Using index '{index_name}' from {project_info}")
else:
print("Invalid choice. Aborting search.")
return
except (ValueError, KeyboardInterrupt):
print("Invalid input. Aborting search.")
return
searcher = LeannSearcher(index_path=index_path)
results = searcher.search(

View File

@@ -6,6 +6,7 @@ Preserves all optimization parameters to ensure performance
import logging
import os
import time
from typing import Any
import numpy as np
@@ -28,6 +29,8 @@ def compute_embeddings(
is_build: bool = False,
batch_size: int = 32,
adaptive_optimization: bool = True,
manual_tokenize: bool = False,
max_length: int = 512,
) -> np.ndarray:
"""
Unified embedding computation entry point
@@ -50,6 +53,8 @@ def compute_embeddings(
is_build=is_build,
batch_size=batch_size,
adaptive_optimization=adaptive_optimization,
manual_tokenize=manual_tokenize,
max_length=max_length,
)
elif mode == "openai":
return compute_embeddings_openai(texts, model_name)
@@ -71,6 +76,8 @@ def compute_embeddings_sentence_transformers(
batch_size: int = 32,
is_build: bool = False,
adaptive_optimization: bool = True,
manual_tokenize: bool = False,
max_length: int = 512,
) -> np.ndarray:
"""
Compute embeddings using SentenceTransformer with model caching and adaptive optimization
@@ -214,20 +221,130 @@ def compute_embeddings_sentence_transformers(
logger.info(f"Model cached: {cache_key}")
# Compute embeddings with optimized inference mode
logger.info(f"Starting embedding computation... (batch_size: {batch_size})")
logger.info(
f"Starting embedding computation... (batch_size: {batch_size}, manual_tokenize={manual_tokenize})"
)
# Use torch.inference_mode for optimal performance
with torch.inference_mode():
embeddings = model.encode(
texts,
batch_size=batch_size,
show_progress_bar=is_build, # Don't show progress bar in server environment
convert_to_numpy=True,
normalize_embeddings=False,
device=device,
)
start_time = time.time()
if not manual_tokenize:
# Use SentenceTransformer's optimized encode path (default)
with torch.inference_mode():
embeddings = model.encode(
texts,
batch_size=batch_size,
show_progress_bar=is_build, # Don't show progress bar in server environment
convert_to_numpy=True,
normalize_embeddings=False,
device=device,
)
# Synchronize if CUDA to measure accurate wall time
try:
if torch.cuda.is_available():
torch.cuda.synchronize()
except Exception:
pass
else:
# Manual tokenization + forward pass using HF AutoTokenizer/AutoModel
try:
from transformers import AutoModel, AutoTokenizer # type: ignore
except Exception as e:
raise ImportError(f"transformers is required for manual_tokenize=True: {e}")
# Cache tokenizer and model
tok_cache_key = f"hf_tokenizer_{model_name}"
mdl_cache_key = f"hf_model_{model_name}_{device}_{use_fp16}"
if tok_cache_key in _model_cache and mdl_cache_key in _model_cache:
hf_tokenizer = _model_cache[tok_cache_key]
hf_model = _model_cache[mdl_cache_key]
logger.info("Using cached HF tokenizer/model for manual path")
else:
logger.info("Loading HF tokenizer/model for manual tokenization path")
hf_tokenizer = AutoTokenizer.from_pretrained(model_name, use_fast=True)
torch_dtype = torch.float16 if (use_fp16 and device == "cuda") else torch.float32
hf_model = AutoModel.from_pretrained(model_name, torch_dtype=torch_dtype)
hf_model.to(device)
hf_model.eval()
# Optional compile on supported devices
if device in ["cuda", "mps"]:
try:
hf_model = torch.compile(hf_model, mode="reduce-overhead", dynamic=True) # type: ignore
except Exception:
pass
_model_cache[tok_cache_key] = hf_tokenizer
_model_cache[mdl_cache_key] = hf_model
all_embeddings: list[np.ndarray] = []
# Progress bar when building or for large inputs
show_progress = is_build or len(texts) > 32
try:
if show_progress:
from tqdm import tqdm # type: ignore
batch_iter = tqdm(
range(0, len(texts), batch_size),
desc="Embedding (manual)",
unit="batch",
)
else:
batch_iter = range(0, len(texts), batch_size)
except Exception:
batch_iter = range(0, len(texts), batch_size)
start_time_manual = time.time()
with torch.inference_mode():
for start_index in batch_iter:
end_index = min(start_index + batch_size, len(texts))
batch_texts = texts[start_index:end_index]
tokenize_start_time = time.time()
inputs = hf_tokenizer(
batch_texts,
padding=True,
truncation=True,
max_length=max_length,
return_tensors="pt",
)
tokenize_end_time = time.time()
logger.info(
f"Tokenize time taken: {tokenize_end_time - tokenize_start_time} seconds"
)
# Print shapes of all input tensors for debugging
for k, v in inputs.items():
print(f"inputs[{k!r}] shape: {getattr(v, 'shape', type(v))}")
to_device_start_time = time.time()
inputs = {k: v.to(device) for k, v in inputs.items()}
to_device_end_time = time.time()
logger.info(
f"To device time taken: {to_device_end_time - to_device_start_time} seconds"
)
forward_start_time = time.time()
outputs = hf_model(**inputs)
forward_end_time = time.time()
logger.info(f"Forward time taken: {forward_end_time - forward_start_time} seconds")
last_hidden_state = outputs.last_hidden_state # (B, L, H)
attention_mask = inputs.get("attention_mask")
if attention_mask is None:
# Fallback: assume all tokens are valid
pooled = last_hidden_state.mean(dim=1)
else:
mask = attention_mask.unsqueeze(-1).to(last_hidden_state.dtype)
masked = last_hidden_state * mask
lengths = mask.sum(dim=1).clamp(min=1)
pooled = masked.sum(dim=1) / lengths
# Move to CPU float32
batch_embeddings = pooled.detach().to("cpu").float().numpy()
all_embeddings.append(batch_embeddings)
embeddings = np.vstack(all_embeddings).astype(np.float32, copy=False)
try:
if torch.cuda.is_available():
torch.cuda.synchronize()
except Exception:
pass
end_time = time.time()
logger.info(f"Manual tokenize time taken: {end_time - start_time_manual} seconds")
end_time = time.time()
logger.info(f"Generated {len(embeddings)} embeddings, dimension: {embeddings.shape[1]}")
logger.info(f"Time taken: {end_time - start_time} seconds")
# Validate results
if np.isnan(embeddings).any() or np.isinf(embeddings).any():

View File

@@ -192,6 +192,7 @@ class EmbeddingServerManager:
stderr_target = None # Direct to console for visible logs
# Start embedding server subprocess
logger.info(f"Starting server process with command: {' '.join(command)}")
self.server_process = subprocess.Popen(
command,
cwd=project_root,

View File

@@ -94,7 +94,7 @@ def handle_request(request):
},
}
# Build simplified command
# Build simplified command with non-interactive flag for MCP compatibility
cmd = [
"leann",
"search",
@@ -102,6 +102,7 @@ def handle_request(request):
args["query"],
f"--top-k={args.get('top_k', 5)}",
f"--complexity={args.get('complexity', 32)}",
"--non-interactive",
]
result = subprocess.run(cmd, capture_output=True, text=True)

View File

@@ -0,0 +1,240 @@
"""
Metadata filtering engine for LEANN search results.
This module provides generic metadata filtering capabilities that can be applied
to search results from any LEANN backend. The filtering supports various
operators for different data types including numbers, strings, booleans, and lists.
"""
import logging
from typing import Any, Union
logger = logging.getLogger(__name__)
# Type alias for filter specifications
FilterValue = Union[str, int, float, bool, list]
FilterSpec = dict[str, FilterValue]
MetadataFilters = dict[str, FilterSpec]
class MetadataFilterEngine:
"""
Engine for evaluating metadata filters against search results.
Supports various operators for filtering based on metadata fields:
- Comparison: ==, !=, <, <=, >, >=
- Membership: in, not_in
- String operations: contains, starts_with, ends_with
- Boolean operations: is_true, is_false
"""
def __init__(self):
"""Initialize the filter engine with supported operators."""
self.operators = {
"==": self._equals,
"!=": self._not_equals,
"<": self._less_than,
"<=": self._less_than_or_equal,
">": self._greater_than,
">=": self._greater_than_or_equal,
"in": self._in,
"not_in": self._not_in,
"contains": self._contains,
"starts_with": self._starts_with,
"ends_with": self._ends_with,
"is_true": self._is_true,
"is_false": self._is_false,
}
def apply_filters(
self, search_results: list[dict[str, Any]], metadata_filters: MetadataFilters
) -> list[dict[str, Any]]:
"""
Apply metadata filters to a list of search results.
Args:
search_results: List of result dictionaries, each containing 'metadata' field
metadata_filters: Dictionary of filter specifications
Format: {"field_name": {"operator": value}}
Returns:
Filtered list of search results
"""
if not metadata_filters:
return search_results
logger.debug(f"Applying filters: {metadata_filters}")
logger.debug(f"Input results count: {len(search_results)}")
filtered_results = []
for result in search_results:
if self._evaluate_filters(result, metadata_filters):
filtered_results.append(result)
logger.debug(f"Filtered results count: {len(filtered_results)}")
return filtered_results
def _evaluate_filters(self, result: dict[str, Any], filters: MetadataFilters) -> bool:
"""
Evaluate all filters against a single search result.
All filters must pass (AND logic) for the result to be included.
Args:
result: Full search result dictionary (including metadata, text, etc.)
filters: Filter specifications to evaluate
Returns:
True if all filters pass, False otherwise
"""
for field_name, filter_spec in filters.items():
if not self._evaluate_field_filter(result, field_name, filter_spec):
return False
return True
def _evaluate_field_filter(
self, result: dict[str, Any], field_name: str, filter_spec: FilterSpec
) -> bool:
"""
Evaluate a single field filter against a search result.
Args:
result: Full search result dictionary
field_name: Name of the field to filter on
filter_spec: Filter specification for this field
Returns:
True if the filter passes, False otherwise
"""
# First check top-level fields, then check metadata
field_value = result.get(field_name)
if field_value is None:
# Try to get from metadata if not found at top level
metadata = result.get("metadata", {})
field_value = metadata.get(field_name)
# Handle missing fields - they fail all filters except existence checks
if field_value is None:
logger.debug(f"Field '{field_name}' not found in result or metadata")
return False
# Evaluate each operator in the filter spec
for operator, expected_value in filter_spec.items():
if operator not in self.operators:
logger.warning(f"Unsupported operator: {operator}")
return False
try:
if not self.operators[operator](field_value, expected_value):
logger.debug(
f"Filter failed: {field_name} {operator} {expected_value} "
f"(actual: {field_value})"
)
return False
except Exception as e:
logger.warning(
f"Error evaluating filter {field_name} {operator} {expected_value}: {e}"
)
return False
return True
# Comparison operators
def _equals(self, field_value: Any, expected_value: Any) -> bool:
"""Check if field value equals expected value."""
return field_value == expected_value
def _not_equals(self, field_value: Any, expected_value: Any) -> bool:
"""Check if field value does not equal expected value."""
return field_value != expected_value
def _less_than(self, field_value: Any, expected_value: Any) -> bool:
"""Check if field value is less than expected value."""
return self._numeric_compare(field_value, expected_value, lambda a, b: a < b)
def _less_than_or_equal(self, field_value: Any, expected_value: Any) -> bool:
"""Check if field value is less than or equal to expected value."""
return self._numeric_compare(field_value, expected_value, lambda a, b: a <= b)
def _greater_than(self, field_value: Any, expected_value: Any) -> bool:
"""Check if field value is greater than expected value."""
return self._numeric_compare(field_value, expected_value, lambda a, b: a > b)
def _greater_than_or_equal(self, field_value: Any, expected_value: Any) -> bool:
"""Check if field value is greater than or equal to expected value."""
return self._numeric_compare(field_value, expected_value, lambda a, b: a >= b)
# Membership operators
def _in(self, field_value: Any, expected_value: Any) -> bool:
"""Check if field value is in the expected list/collection."""
if not isinstance(expected_value, (list, tuple, set)):
raise ValueError("'in' operator requires a list, tuple, or set")
return field_value in expected_value
def _not_in(self, field_value: Any, expected_value: Any) -> bool:
"""Check if field value is not in the expected list/collection."""
if not isinstance(expected_value, (list, tuple, set)):
raise ValueError("'not_in' operator requires a list, tuple, or set")
return field_value not in expected_value
# String operators
def _contains(self, field_value: Any, expected_value: Any) -> bool:
"""Check if field value contains the expected substring."""
field_str = str(field_value)
expected_str = str(expected_value)
return expected_str in field_str
def _starts_with(self, field_value: Any, expected_value: Any) -> bool:
"""Check if field value starts with the expected prefix."""
field_str = str(field_value)
expected_str = str(expected_value)
return field_str.startswith(expected_str)
def _ends_with(self, field_value: Any, expected_value: Any) -> bool:
"""Check if field value ends with the expected suffix."""
field_str = str(field_value)
expected_str = str(expected_value)
return field_str.endswith(expected_str)
# Boolean operators
def _is_true(self, field_value: Any, expected_value: Any) -> bool:
"""Check if field value is truthy."""
return bool(field_value)
def _is_false(self, field_value: Any, expected_value: Any) -> bool:
"""Check if field value is falsy."""
return not bool(field_value)
# Helper methods
def _numeric_compare(self, field_value: Any, expected_value: Any, compare_func) -> bool:
"""
Helper for numeric comparisons with type coercion.
Args:
field_value: Value from metadata
expected_value: Value to compare against
compare_func: Comparison function to apply
Returns:
Result of comparison
"""
try:
# Try to convert both values to numbers for comparison
if isinstance(field_value, str) and isinstance(expected_value, str):
# String comparison if both are strings
return compare_func(field_value, expected_value)
# Numeric comparison - attempt to convert to float
field_num = (
float(field_value) if not isinstance(field_value, (int, float)) else field_value
)
expected_num = (
float(expected_value)
if not isinstance(expected_value, (int, float))
else expected_value
)
return compare_func(field_num, expected_num)
except (ValueError, TypeError):
# Fall back to string comparison if numeric conversion fails
return compare_func(str(field_value), str(expected_value))

View File

@@ -2,6 +2,8 @@
Transform your development workflow with intelligent code assistance using LEANN's semantic search directly in Claude Code.
For agent-facing discovery details, see `llms.txt` in the repository root.
## Prerequisites
Install LEANN globally for MCP integration (with default backend):

View File

@@ -4,7 +4,7 @@ build-backend = "setuptools.build_meta"
[project]
name = "leann"
version = "0.3.0"
version = "0.3.4"
description = "LEANN - The smallest vector index in the world. RAG Everything with LEANN!"
readme = "README.md"
requires-python = ">=3.9"

View File

@@ -46,6 +46,13 @@ dependencies = [
"pathspec>=0.12.1",
"nbconvert>=7.16.6",
"gitignore-parser>=0.1.12",
# AST-aware code chunking dependencies
"astchunk>=0.1.0",
"tree-sitter>=0.20.0",
"tree-sitter-python>=0.20.0",
"tree-sitter-java>=0.20.0",
"tree-sitter-c-sharp>=0.20.0",
"tree-sitter-typescript>=0.20.0",
]
[project.optional-dependencies]
@@ -92,6 +99,7 @@ wechat-exporter = "wechat_exporter.main:main"
leann-core = { path = "packages/leann-core", editable = true }
leann-backend-diskann = { path = "packages/leann-backend-diskann", editable = true }
leann-backend-hnsw = { path = "packages/leann-backend-hnsw", editable = true }
astchunk = { path = "packages/astchunk-leann", editable = true }
[tool.ruff]
target-version = "py39"

View File

@@ -0,0 +1,397 @@
"""
Test suite for astchunk integration with LEANN.
Tests AST-aware chunking functionality, language detection, and fallback mechanisms.
"""
import os
import subprocess
import sys
import tempfile
from pathlib import Path
from unittest.mock import patch
import pytest
# Add apps directory to path for imports
sys.path.insert(0, str(Path(__file__).parent.parent / "apps"))
from typing import Optional
from chunking import (
create_ast_chunks,
create_text_chunks,
create_traditional_chunks,
detect_code_files,
get_language_from_extension,
)
class MockDocument:
"""Mock LlamaIndex Document for testing."""
def __init__(self, content: str, file_path: str = "", metadata: Optional[dict] = None):
self.content = content
self.metadata = metadata or {}
if file_path:
self.metadata["file_path"] = file_path
def get_content(self) -> str:
return self.content
class TestCodeFileDetection:
"""Test code file detection and language mapping."""
def test_detect_code_files_python(self):
"""Test detection of Python files."""
docs = [
MockDocument("print('hello')", "/path/to/file.py"),
MockDocument("This is text", "/path/to/file.txt"),
]
code_docs, text_docs = detect_code_files(docs)
assert len(code_docs) == 1
assert len(text_docs) == 1
assert code_docs[0].metadata["language"] == "python"
assert code_docs[0].metadata["is_code"] is True
assert text_docs[0].metadata["is_code"] is False
def test_detect_code_files_multiple_languages(self):
"""Test detection of multiple programming languages."""
docs = [
MockDocument("def func():", "/path/to/script.py"),
MockDocument("public class Test {}", "/path/to/Test.java"),
MockDocument("interface ITest {}", "/path/to/test.ts"),
MockDocument("using System;", "/path/to/Program.cs"),
MockDocument("Regular text content", "/path/to/document.txt"),
]
code_docs, text_docs = detect_code_files(docs)
assert len(code_docs) == 4
assert len(text_docs) == 1
languages = [doc.metadata["language"] for doc in code_docs]
assert "python" in languages
assert "java" in languages
assert "typescript" in languages
assert "csharp" in languages
def test_detect_code_files_no_file_path(self):
"""Test handling of documents without file paths."""
docs = [
MockDocument("some content"),
MockDocument("other content", metadata={"some_key": "value"}),
]
code_docs, text_docs = detect_code_files(docs)
assert len(code_docs) == 0
assert len(text_docs) == 2
for doc in text_docs:
assert doc.metadata["is_code"] is False
def test_get_language_from_extension(self):
"""Test language detection from file extensions."""
assert get_language_from_extension("test.py") == "python"
assert get_language_from_extension("Test.java") == "java"
assert get_language_from_extension("component.tsx") == "typescript"
assert get_language_from_extension("Program.cs") == "csharp"
assert get_language_from_extension("document.txt") is None
assert get_language_from_extension("") is None
class TestChunkingFunctions:
"""Test various chunking functionality."""
def test_create_traditional_chunks(self):
"""Test traditional text chunking."""
docs = [
MockDocument(
"This is a test document. It has multiple sentences. We want to test chunking."
)
]
chunks = create_traditional_chunks(docs, chunk_size=50, chunk_overlap=10)
assert len(chunks) > 0
assert all(isinstance(chunk, str) for chunk in chunks)
assert all(len(chunk.strip()) > 0 for chunk in chunks)
def test_create_traditional_chunks_empty_docs(self):
"""Test traditional chunking with empty documents."""
chunks = create_traditional_chunks([], chunk_size=50, chunk_overlap=10)
assert chunks == []
@pytest.mark.skipif(
os.environ.get("CI") == "true",
reason="Skip astchunk tests in CI - dependency may not be available",
)
def test_create_ast_chunks_with_astchunk_available(self):
"""Test AST chunking when astchunk is available."""
python_code = '''
def hello_world():
"""Print hello world message."""
print("Hello, World!")
def add_numbers(a, b):
"""Add two numbers and return the result."""
return a + b
class Calculator:
"""A simple calculator class."""
def __init__(self):
self.history = []
def add(self, a, b):
result = a + b
self.history.append(f"{a} + {b} = {result}")
return result
'''
docs = [MockDocument(python_code, "/test/calculator.py", {"language": "python"})]
try:
chunks = create_ast_chunks(docs, max_chunk_size=200, chunk_overlap=50)
# Should have multiple chunks due to different functions/classes
assert len(chunks) > 0
assert all(isinstance(chunk, str) for chunk in chunks)
assert all(len(chunk.strip()) > 0 for chunk in chunks)
# Check that code structure is somewhat preserved
combined_content = " ".join(chunks)
assert "def hello_world" in combined_content
assert "class Calculator" in combined_content
except ImportError:
# astchunk not available, should fall back to traditional chunking
chunks = create_ast_chunks(docs, max_chunk_size=200, chunk_overlap=50)
assert len(chunks) > 0 # Should still get chunks from fallback
def test_create_ast_chunks_fallback_to_traditional(self):
"""Test AST chunking falls back to traditional when astchunk is not available."""
docs = [MockDocument("def test(): pass", "/test/script.py", {"language": "python"})]
# Mock astchunk import to fail
with patch("chunking.create_ast_chunks"):
# First call (actual test) should import astchunk and potentially fail
# Let's call the actual function to test the import error handling
chunks = create_ast_chunks(docs)
# Should return some chunks (either from astchunk or fallback)
assert isinstance(chunks, list)
def test_create_text_chunks_traditional_mode(self):
"""Test text chunking in traditional mode."""
docs = [
MockDocument("def test(): pass", "/test/script.py"),
MockDocument("This is regular text.", "/test/doc.txt"),
]
chunks = create_text_chunks(docs, use_ast_chunking=False, chunk_size=50, chunk_overlap=10)
assert len(chunks) > 0
assert all(isinstance(chunk, str) for chunk in chunks)
def test_create_text_chunks_ast_mode(self):
"""Test text chunking in AST mode."""
docs = [
MockDocument("def test(): pass", "/test/script.py"),
MockDocument("This is regular text.", "/test/doc.txt"),
]
chunks = create_text_chunks(
docs,
use_ast_chunking=True,
ast_chunk_size=100,
ast_chunk_overlap=20,
chunk_size=50,
chunk_overlap=10,
)
assert len(chunks) > 0
assert all(isinstance(chunk, str) for chunk in chunks)
def test_create_text_chunks_custom_extensions(self):
"""Test text chunking with custom code file extensions."""
docs = [
MockDocument("function test() {}", "/test/script.js"), # Not in default extensions
MockDocument("Regular text", "/test/doc.txt"),
]
# First without custom extensions - should treat .js as text
chunks_without = create_text_chunks(docs, use_ast_chunking=True, code_file_extensions=None)
# Then with custom extensions - should treat .js as code
chunks_with = create_text_chunks(
docs, use_ast_chunking=True, code_file_extensions=[".js", ".jsx"]
)
# Both should return chunks
assert len(chunks_without) > 0
assert len(chunks_with) > 0
class TestIntegrationWithDocumentRAG:
"""Integration tests with the document RAG system."""
@pytest.fixture
def temp_code_dir(self):
"""Create a temporary directory with sample code files."""
with tempfile.TemporaryDirectory() as temp_dir:
temp_path = Path(temp_dir)
# Create sample Python file
python_file = temp_path / "example.py"
python_file.write_text('''
def fibonacci(n):
"""Calculate fibonacci number."""
if n <= 1:
return n
return fibonacci(n-1) + fibonacci(n-2)
class MathUtils:
@staticmethod
def factorial(n):
if n <= 1:
return 1
return n * MathUtils.factorial(n-1)
''')
# Create sample text file
text_file = temp_path / "readme.txt"
text_file.write_text("This is a sample text file for testing purposes.")
yield temp_path
@pytest.mark.skipif(
os.environ.get("CI") == "true",
reason="Skip integration tests in CI to avoid dependency issues",
)
def test_document_rag_with_ast_chunking(self, temp_code_dir):
"""Test document RAG with AST chunking enabled."""
with tempfile.TemporaryDirectory() as index_dir:
cmd = [
sys.executable,
"apps/document_rag.py",
"--llm",
"simulated",
"--embedding-model",
"facebook/contriever",
"--embedding-mode",
"sentence-transformers",
"--index-dir",
index_dir,
"--data-dir",
str(temp_code_dir),
"--enable-code-chunking",
"--query",
"How does the fibonacci function work?",
]
env = os.environ.copy()
env["HF_HUB_DISABLE_SYMLINKS"] = "1"
env["TOKENIZERS_PARALLELISM"] = "false"
try:
result = subprocess.run(
cmd,
capture_output=True,
text=True,
timeout=300, # 5 minutes
env=env,
)
# Should succeed even if astchunk is not available (fallback)
assert result.returncode == 0, f"Command failed: {result.stderr}"
output = result.stdout + result.stderr
assert "Index saved to" in output or "Using existing index" in output
except subprocess.TimeoutExpired:
pytest.skip("Test timed out - likely due to model download in CI")
@pytest.mark.skipif(
os.environ.get("CI") == "true",
reason="Skip integration tests in CI to avoid dependency issues",
)
def test_code_rag_application(self, temp_code_dir):
"""Test the specialized code RAG application."""
with tempfile.TemporaryDirectory() as index_dir:
cmd = [
sys.executable,
"apps/code_rag.py",
"--llm",
"simulated",
"--embedding-model",
"facebook/contriever",
"--index-dir",
index_dir,
"--repo-dir",
str(temp_code_dir),
"--query",
"What classes are defined in this code?",
]
env = os.environ.copy()
env["HF_HUB_DISABLE_SYMLINKS"] = "1"
env["TOKENIZERS_PARALLELISM"] = "false"
try:
result = subprocess.run(cmd, capture_output=True, text=True, timeout=300, env=env)
# Should succeed
assert result.returncode == 0, f"Command failed: {result.stderr}"
output = result.stdout + result.stderr
assert "Using AST-aware chunking" in output or "traditional chunking" in output
except subprocess.TimeoutExpired:
pytest.skip("Test timed out - likely due to model download in CI")
class TestErrorHandling:
"""Test error handling and edge cases."""
def test_text_chunking_empty_documents(self):
"""Test text chunking with empty document list."""
chunks = create_text_chunks([])
assert chunks == []
def test_text_chunking_invalid_parameters(self):
"""Test text chunking with invalid parameters."""
docs = [MockDocument("test content")]
# Should handle negative chunk sizes gracefully
chunks = create_text_chunks(
docs, chunk_size=0, chunk_overlap=0, ast_chunk_size=0, ast_chunk_overlap=0
)
# Should still return some result
assert isinstance(chunks, list)
def test_create_ast_chunks_no_language(self):
"""Test AST chunking with documents missing language metadata."""
docs = [MockDocument("def test(): pass", "/test/script.py")] # No language set
chunks = create_ast_chunks(docs)
# Should fall back to traditional chunking
assert isinstance(chunks, list)
assert len(chunks) >= 0 # May be empty if fallback also fails
def test_create_ast_chunks_empty_content(self):
"""Test AST chunking with empty content."""
docs = [MockDocument("", "/test/script.py", {"language": "python"})]
chunks = create_ast_chunks(docs)
# Should handle empty content gracefully
assert isinstance(chunks, list)
if __name__ == "__main__":
pytest.main([__file__, "-v"])

View File

@@ -57,6 +57,51 @@ def test_document_rag_simulated(test_data_dir):
assert "This is a simulated answer" in output
@pytest.mark.skipif(
os.environ.get("CI") == "true",
reason="Skip AST chunking tests in CI to avoid dependency issues",
)
def test_document_rag_with_ast_chunking(test_data_dir):
"""Test document_rag with AST-aware chunking enabled."""
with tempfile.TemporaryDirectory() as temp_dir:
# Use a subdirectory that doesn't exist yet to force index creation
index_dir = Path(temp_dir) / "test_ast_index"
cmd = [
sys.executable,
"apps/document_rag.py",
"--llm",
"simulated",
"--embedding-model",
"facebook/contriever",
"--embedding-mode",
"sentence-transformers",
"--index-dir",
str(index_dir),
"--data-dir",
str(test_data_dir),
"--enable-code-chunking", # Enable AST chunking
"--query",
"What is Pride and Prejudice about?",
]
env = os.environ.copy()
env["HF_HUB_DISABLE_SYMLINKS"] = "1"
env["TOKENIZERS_PARALLELISM"] = "false"
result = subprocess.run(cmd, capture_output=True, text=True, timeout=600, env=env)
# Check return code
assert result.returncode == 0, f"Command failed: {result.stderr}"
# Verify output
output = result.stdout + result.stderr
assert "Index saved to" in output or "Using existing index" in output
assert "This is a simulated answer" in output
# Should mention AST chunking if code files are present
# (might not be relevant for the test data, but command should succeed)
@pytest.mark.skipif(not os.environ.get("OPENAI_API_KEY"), reason="OpenAI API key not available")
@pytest.mark.skipif(
os.environ.get("CI") == "true", reason="Skip OpenAI tests in CI to avoid API costs"

View File

@@ -0,0 +1,365 @@
"""
Comprehensive tests for metadata filtering functionality.
This module tests the MetadataFilterEngine class and its integration
with the LEANN search system.
"""
import os
# Import the modules we're testing
import sys
from unittest.mock import Mock, patch
sys.path.insert(0, os.path.join(os.path.dirname(__file__), "../packages/leann-core/src"))
from leann.api import PassageManager, SearchResult
from leann.metadata_filter import MetadataFilterEngine
class TestMetadataFilterEngine:
"""Test suite for the MetadataFilterEngine class."""
def setup_method(self):
"""Setup test fixtures."""
self.engine = MetadataFilterEngine()
# Sample search results for testing
self.sample_results = [
{
"id": "doc1",
"score": 0.95,
"text": "This is chapter 1 content",
"metadata": {
"chapter": 1,
"character": "Alice",
"tags": ["adventure", "fantasy"],
"word_count": 150,
"is_published": True,
"genre": "fiction",
},
},
{
"id": "doc2",
"score": 0.87,
"text": "This is chapter 3 content",
"metadata": {
"chapter": 3,
"character": "Bob",
"tags": ["mystery", "thriller"],
"word_count": 250,
"is_published": True,
"genre": "fiction",
},
},
{
"id": "doc3",
"score": 0.82,
"text": "This is chapter 5 content",
"metadata": {
"chapter": 5,
"character": "Alice",
"tags": ["romance", "drama"],
"word_count": 300,
"is_published": False,
"genre": "non-fiction",
},
},
{
"id": "doc4",
"score": 0.78,
"text": "This is chapter 10 content",
"metadata": {
"chapter": 10,
"character": "Charlie",
"tags": ["action", "adventure"],
"word_count": 400,
"is_published": True,
"genre": "fiction",
},
},
]
def test_engine_initialization(self):
"""Test that the filter engine initializes correctly."""
assert self.engine is not None
assert len(self.engine.operators) > 0
assert "==" in self.engine.operators
assert "contains" in self.engine.operators
assert "in" in self.engine.operators
def test_direct_instantiation(self):
"""Test direct instantiation of the engine."""
engine = MetadataFilterEngine()
assert isinstance(engine, MetadataFilterEngine)
def test_no_filters_returns_all_results(self):
"""Test that passing None or empty filters returns all results."""
# Test with None
result = self.engine.apply_filters(self.sample_results, None)
assert len(result) == len(self.sample_results)
# Test with empty dict
result = self.engine.apply_filters(self.sample_results, {})
assert len(result) == len(self.sample_results)
# Test comparison operators
def test_equals_filter(self):
"""Test equals (==) filter."""
filters = {"chapter": {"==": 1}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 1
assert result[0]["id"] == "doc1"
def test_not_equals_filter(self):
"""Test not equals (!=) filter."""
filters = {"genre": {"!=": "fiction"}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 1
assert result[0]["metadata"]["genre"] == "non-fiction"
def test_less_than_filter(self):
"""Test less than (<) filter."""
filters = {"chapter": {"<": 5}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 2
chapters = [r["metadata"]["chapter"] for r in result]
assert all(ch < 5 for ch in chapters)
def test_less_than_or_equal_filter(self):
"""Test less than or equal (<=) filter."""
filters = {"chapter": {"<=": 5}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 3
chapters = [r["metadata"]["chapter"] for r in result]
assert all(ch <= 5 for ch in chapters)
def test_greater_than_filter(self):
"""Test greater than (>) filter."""
filters = {"word_count": {">": 200}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 3 # Documents with word_count 250, 300, 400
word_counts = [r["metadata"]["word_count"] for r in result]
assert all(wc > 200 for wc in word_counts)
def test_greater_than_or_equal_filter(self):
"""Test greater than or equal (>=) filter."""
filters = {"word_count": {">=": 250}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 3
word_counts = [r["metadata"]["word_count"] for r in result]
assert all(wc >= 250 for wc in word_counts)
# Test membership operators
def test_in_filter(self):
"""Test in filter."""
filters = {"character": {"in": ["Alice", "Bob"]}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 3
characters = [r["metadata"]["character"] for r in result]
assert all(ch in ["Alice", "Bob"] for ch in characters)
def test_not_in_filter(self):
"""Test not_in filter."""
filters = {"character": {"not_in": ["Alice", "Bob"]}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 1
assert result[0]["metadata"]["character"] == "Charlie"
# Test string operators
def test_contains_filter(self):
"""Test contains filter."""
filters = {"genre": {"contains": "fiction"}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 4 # Both "fiction" and "non-fiction"
def test_starts_with_filter(self):
"""Test starts_with filter."""
filters = {"genre": {"starts_with": "non"}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 1
assert result[0]["metadata"]["genre"] == "non-fiction"
def test_ends_with_filter(self):
"""Test ends_with filter."""
filters = {"text": {"ends_with": "content"}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 4 # All sample texts end with "content"
# Test boolean operators
def test_is_true_filter(self):
"""Test is_true filter."""
filters = {"is_published": {"is_true": True}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 3
assert all(r["metadata"]["is_published"] for r in result)
def test_is_false_filter(self):
"""Test is_false filter."""
filters = {"is_published": {"is_false": False}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 1
assert not result[0]["metadata"]["is_published"]
# Test compound filters (AND logic)
def test_compound_filters(self):
"""Test multiple filters applied together (AND logic)."""
filters = {"genre": {"==": "fiction"}, "chapter": {"<=": 5}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 2
for r in result:
assert r["metadata"]["genre"] == "fiction"
assert r["metadata"]["chapter"] <= 5
def test_multiple_operators_same_field(self):
"""Test multiple operators on the same field."""
filters = {"word_count": {">=": 200, "<=": 350}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 2
for r in result:
wc = r["metadata"]["word_count"]
assert 200 <= wc <= 350
# Test edge cases
def test_missing_field_fails_filter(self):
"""Test that missing metadata fields fail filters."""
filters = {"nonexistent_field": {"==": "value"}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 0
def test_invalid_operator(self):
"""Test that invalid operators are handled gracefully."""
filters = {"chapter": {"invalid_op": 1}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 0 # Should filter out all results
def test_type_coercion_numeric(self):
"""Test numeric type coercion in comparisons."""
# Add a result with string chapter number
test_results = [
*self.sample_results,
{
"id": "doc5",
"score": 0.75,
"text": "String chapter test",
"metadata": {"chapter": "2", "genre": "test"},
},
]
filters = {"chapter": {"<": 3}}
result = self.engine.apply_filters(test_results, filters)
# Should include doc1 (chapter=1) and doc5 (chapter="2")
assert len(result) == 2
ids = [r["id"] for r in result]
assert "doc1" in ids
assert "doc5" in ids
def test_list_membership_with_nested_tags(self):
"""Test membership operations with list metadata."""
# Note: This tests the metadata structure, not list field filtering
# For list field filtering, we'd need to modify the test data
filters = {"character": {"in": ["Alice"]}}
result = self.engine.apply_filters(self.sample_results, filters)
assert len(result) == 2
assert all(r["metadata"]["character"] == "Alice" for r in result)
def test_empty_results_list(self):
"""Test filtering on empty results list."""
filters = {"chapter": {"==": 1}}
result = self.engine.apply_filters([], filters)
assert len(result) == 0
class TestPassageManagerFiltering:
"""Test suite for PassageManager filtering integration."""
def setup_method(self):
"""Setup test fixtures."""
# Mock the passage manager without actual file I/O
self.passage_manager = Mock(spec=PassageManager)
self.passage_manager.filter_engine = MetadataFilterEngine()
# Sample SearchResult objects
self.search_results = [
SearchResult(
id="doc1",
score=0.95,
text="Chapter 1 content",
metadata={"chapter": 1, "character": "Alice"},
),
SearchResult(
id="doc2",
score=0.87,
text="Chapter 5 content",
metadata={"chapter": 5, "character": "Bob"},
),
SearchResult(
id="doc3",
score=0.82,
text="Chapter 10 content",
metadata={"chapter": 10, "character": "Alice"},
),
]
def test_search_result_filtering(self):
"""Test filtering SearchResult objects."""
# Create a real PassageManager instance just for the filtering method
# We'll mock the file operations
with patch("builtins.open"), patch("json.loads"), patch("pickle.load"):
pm = PassageManager([{"type": "jsonl", "path": "test.jsonl"}])
filters = {"chapter": {"<=": 5}}
result = pm.filter_search_results(self.search_results, filters)
assert len(result) == 2
chapters = [r.metadata["chapter"] for r in result]
assert all(ch <= 5 for ch in chapters)
def test_filter_search_results_no_filters(self):
"""Test that None filters return all results."""
with patch("builtins.open"), patch("json.loads"), patch("pickle.load"):
pm = PassageManager([{"type": "jsonl", "path": "test.jsonl"}])
result = pm.filter_search_results(self.search_results, None)
assert len(result) == len(self.search_results)
def test_filter_maintains_search_result_type(self):
"""Test that filtering returns SearchResult objects."""
with patch("builtins.open"), patch("json.loads"), patch("pickle.load"):
pm = PassageManager([{"type": "jsonl", "path": "test.jsonl"}])
filters = {"character": {"==": "Alice"}}
result = pm.filter_search_results(self.search_results, filters)
assert len(result) == 2
for r in result:
assert isinstance(r, SearchResult)
assert r.metadata["character"] == "Alice"
# Integration tests would go here, but they require actual LEANN backend setup
# These would test the full pipeline from LeannSearcher.search() with metadata_filters
if __name__ == "__main__":
# Run basic smoke tests
engine = MetadataFilterEngine()
sample_data = [
{
"id": "test1",
"score": 0.9,
"text": "Test content",
"metadata": {"chapter": 1, "published": True},
}
]
# Test basic filtering
result = engine.apply_filters(sample_data, {"chapter": {"==": 1}})
assert len(result) == 1
print("✅ Basic filtering test passed")
result = engine.apply_filters(sample_data, {"chapter": {"==": 2}})
assert len(result) == 0
print("✅ No match filtering test passed")
print("🎉 All smoke tests passed!")

7831
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