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add-gh-pat
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fix/ask-cl
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47aeb85f82 |
@@ -546,6 +546,9 @@ leann search my-docs "machine learning concepts"
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# Interactive chat with your documents
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leann ask my-docs --interactive
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# Ask a single question (non-interactive)
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leann ask my-docs "Where are prompts configured?"
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# List all your indexes
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leann list
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@@ -257,6 +257,11 @@ Examples:
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# Ask command
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ask_parser = subparsers.add_parser("ask", help="Ask questions")
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ask_parser.add_argument("index_name", help="Index name")
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ask_parser.add_argument(
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"query",
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nargs="?",
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help="Question to ask (omit for prompt or when using --interactive)",
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)
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ask_parser.add_argument(
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"--llm",
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type=str,
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@@ -1531,7 +1536,29 @@ Examples:
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chat = LeannChat(index_path=index_path, llm_config=llm_config)
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llm_kwargs: dict[str, Any] = {}
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if args.thinking_budget:
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llm_kwargs["thinking_budget"] = args.thinking_budget
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def _ask_once(prompt: str) -> None:
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response = chat.ask(
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prompt,
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top_k=args.top_k,
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complexity=args.complexity,
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beam_width=args.beam_width,
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prune_ratio=args.prune_ratio,
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recompute_embeddings=args.recompute_embeddings,
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pruning_strategy=args.pruning_strategy,
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llm_kwargs=llm_kwargs,
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)
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print(f"LEANN: {response}")
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initial_query = (args.query or "").strip()
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if args.interactive:
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if initial_query:
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_ask_once(initial_query)
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print("LEANN Assistant ready! Type 'quit' to exit")
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print("=" * 40)
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@@ -1544,41 +1571,14 @@ Examples:
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if not user_input:
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continue
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# Prepare LLM kwargs with thinking budget if specified
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llm_kwargs = {}
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if args.thinking_budget:
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llm_kwargs["thinking_budget"] = args.thinking_budget
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response = chat.ask(
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user_input,
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top_k=args.top_k,
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complexity=args.complexity,
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beam_width=args.beam_width,
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prune_ratio=args.prune_ratio,
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recompute_embeddings=args.recompute_embeddings,
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pruning_strategy=args.pruning_strategy,
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llm_kwargs=llm_kwargs,
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)
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print(f"LEANN: {response}")
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_ask_once(user_input)
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else:
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query = input("Enter your question: ").strip()
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if query:
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# Prepare LLM kwargs with thinking budget if specified
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llm_kwargs = {}
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if args.thinking_budget:
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llm_kwargs["thinking_budget"] = args.thinking_budget
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query = initial_query or input("Enter your question: ").strip()
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if not query:
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print("No question provided. Exiting.")
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return
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response = chat.ask(
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query,
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top_k=args.top_k,
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complexity=args.complexity,
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beam_width=args.beam_width,
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prune_ratio=args.prune_ratio,
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recompute_embeddings=args.recompute_embeddings,
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pruning_strategy=args.pruning_strategy,
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llm_kwargs=llm_kwargs,
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)
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print(f"LEANN: {response}")
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_ask_once(query)
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async def run(self, args=None):
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parser = self.create_parser()
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14
tests/test_cli_ask.py
Normal file
14
tests/test_cli_ask.py
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@@ -0,0 +1,14 @@
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from leann.cli import LeannCLI
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def test_cli_ask_accepts_positional_query(tmp_path, monkeypatch):
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monkeypatch.chdir(tmp_path)
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cli = LeannCLI()
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parser = cli.create_parser()
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args = parser.parse_args(["ask", "my-docs", "Where are prompts configured?"])
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assert args.command == "ask"
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assert args.index_name == "my-docs"
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assert args.query == "Where are prompts configured?"
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