mirror of
https://github.com/VectifyAI/PageIndex.git
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- get_agent_tools branches on doc_ids:
- scoped (doc_ids=[...]): drops list_documents and hard-enforces a
whitelist on the remaining tools; system prompt switches to
SCOPED_SYSTEM_PROMPT (no list_documents instruction); doc list +
summaries are prepended to the user message via wrap_with_doc_context.
- open (doc_ids=None): unchanged 4-tool agent loop.
- list_documents now exposes doc_description (sqlite + cloud).
- Collection.query emits UserWarning when doc_ids is None and the
collection holds >1 documents; PAGEINDEX_EXPERIMENTAL_MULTIDOC=1
silences it. Single-doc collections skip the warning; empty
collections raise ValueError.
- Agents SDK tracing upload disabled by default (avoids SSL timeouts);
PAGEINDEX_AGENTS_TRACING=1 re-enables it.
- README: new SDK Usage section covering local/cloud quick start,
streaming, multi-doc as experimental, and runnable examples.
143 lines
5.8 KiB
Python
143 lines
5.8 KiB
Python
# pageindex/agent.py
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from __future__ import annotations
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import os
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from typing import AsyncIterator
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from .events import QueryEvent
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from .backend.protocol import AgentTools
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# Disable Agents SDK tracing upload by default — it posts to OpenAI's tracing
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# endpoint and can fail with SSL timeouts in restricted networks. Opt back in
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# with PAGEINDEX_AGENTS_TRACING=1.
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if os.getenv("PAGEINDEX_AGENTS_TRACING", "").lower() not in ("1", "true", "yes"):
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try:
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from agents import set_tracing_disabled
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set_tracing_disabled(True)
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except ImportError:
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pass
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OPEN_SYSTEM_PROMPT = """
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You are PageIndex, a document QA assistant.
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TOOL USE:
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- Call list_documents() to see available documents; use doc_name and doc_description to pick which doc(s) are relevant.
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- Call get_document(doc_id) to confirm status and page/line count.
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- Call get_document_structure(doc_id) to identify relevant page ranges.
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- Call get_page_content(doc_id, pages="5-7") with tight ranges; never fetch the whole document.
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- Before each tool call, output one short sentence explaining the reason.
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IMAGES:
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- Page content may contain image references like . Always preserve these in your answer so the downstream UI can render them.
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- Place images near the relevant context in your answer.
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Answer based only on tool output. Be concise.
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"""
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SCOPED_SYSTEM_PROMPT = """
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You are PageIndex, a document QA assistant.
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TOOL USE:
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- Call get_document(doc_id) to confirm status and page/line count.
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- Call get_document_structure(doc_id) to identify relevant page ranges.
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- Call get_page_content(doc_id, pages="5-7") with tight ranges; never fetch the whole document.
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- Before each tool call, output one short sentence explaining the reason.
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IMAGES:
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- Page content may contain image references like . Always preserve these in your answer so the downstream UI can render them.
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- Place images near the relevant context in your answer.
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Answer based only on tool output. Be concise.
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"""
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def wrap_with_doc_context(docs: list[dict], question: str) -> str:
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"""Prepend a doc-context block to the user question for scoped queries."""
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lines = []
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for d in docs:
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line = f"- {d['doc_id']}: {d.get('doc_name', '')}"
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desc = d.get("doc_description") or ""
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if desc:
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line += f" — {desc}"
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lines.append(line)
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label = "document" if len(docs) == 1 else "documents"
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return (
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f"The user has specified the following {label}:\n"
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+ "\n".join(lines)
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+ f"\n\nUse the doc_id(s) above directly with get_document_structure() "
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f"and get_page_content() — do not look for other documents.\n\n"
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f"User question: {question}"
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)
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# Backwards-compatible alias (open mode is the historical default).
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SYSTEM_PROMPT = OPEN_SYSTEM_PROMPT
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class QueryStream:
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"""Streaming query result, similar to OpenAI's RunResultStreaming.
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Usage:
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stream = col.query("question", stream=True)
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async for event in stream:
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if event.type == "answer_delta":
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print(event.data, end="", flush=True)
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"""
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def __init__(self, tools: AgentTools, question: str, model: str = None,
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instructions: str | None = None):
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from agents import Agent
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from agents.model_settings import ModelSettings
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self._agent = Agent(
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name="PageIndex",
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instructions=instructions or OPEN_SYSTEM_PROMPT,
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tools=tools.function_tools,
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mcp_servers=tools.mcp_servers,
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model=model,
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model_settings=ModelSettings(parallel_tool_calls=False),
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)
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self._question = question
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async def stream_events(self) -> AsyncIterator[QueryEvent]:
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"""Async generator yielding QueryEvent as they arrive."""
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from agents import Runner, ItemHelpers
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from agents.stream_events import RawResponsesStreamEvent, RunItemStreamEvent
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from openai.types.responses import ResponseTextDeltaEvent
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streamed_run = Runner.run_streamed(self._agent, self._question)
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async for event in streamed_run.stream_events():
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if isinstance(event, RawResponsesStreamEvent):
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if isinstance(event.data, ResponseTextDeltaEvent):
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yield QueryEvent(type="answer_delta", data=event.data.delta)
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elif isinstance(event, RunItemStreamEvent):
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item = event.item
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if item.type == "tool_call_item":
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raw = item.raw_item
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yield QueryEvent(type="tool_call", data={
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"name": raw.name, "args": getattr(raw, "arguments", "{}"),
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})
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elif item.type == "tool_call_output_item":
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yield QueryEvent(type="tool_result", data=str(item.output))
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elif item.type == "message_output_item":
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text = ItemHelpers.text_message_output(item)
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if text:
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yield QueryEvent(type="answer_done", data=text)
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def __aiter__(self):
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return self.stream_events()
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class AgentRunner:
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def __init__(self, tools: AgentTools, model: str = None,
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instructions: str | None = None):
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self._tools = tools
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self._model = model
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self._instructions = instructions or OPEN_SYSTEM_PROMPT
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def run(self, question: str) -> str:
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"""Sync non-streaming query. Returns answer string."""
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from agents import Agent, Runner
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from agents.model_settings import ModelSettings
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agent = Agent(
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name="PageIndex",
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instructions=self._instructions,
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tools=self._tools.function_tools,
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mcp_servers=self._tools.mcp_servers,
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model=self._model,
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model_settings=ModelSettings(parallel_tool_calls=False),
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)
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result = Runner.run_sync(agent, question)
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return result.final_output
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