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https://gitee.com/wanwujie/deer-flow
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* refactor: extract shared utils to break harness→app cross-layer imports Move _validate_skill_frontmatter to src/skills/validation.py and CONVERTIBLE_EXTENSIONS + convert_file_to_markdown to src/utils/file_conversion.py. This eliminates the two reverse dependencies from client.py (harness layer) into gateway/routers/ (app layer), preparing for the harness/app package split. Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com> * refactor: split backend/src into harness (deerflow.*) and app (app.*) Physically split the monolithic backend/src/ package into two layers: - **Harness** (`packages/harness/deerflow/`): publishable agent framework package with import prefix `deerflow.*`. Contains agents, sandbox, tools, models, MCP, skills, config, and all core infrastructure. - **App** (`app/`): unpublished application code with import prefix `app.*`. Contains gateway (FastAPI REST API) and channels (IM integrations). Key changes: - Move 13 harness modules to packages/harness/deerflow/ via git mv - Move gateway + channels to app/ via git mv - Rename all imports: src.* → deerflow.* (harness) / app.* (app layer) - Set up uv workspace with deerflow-harness as workspace member - Update langgraph.json, config.example.yaml, all scripts, Docker files - Add build-system (hatchling) to harness pyproject.toml - Add PYTHONPATH=. to gateway startup commands for app.* resolution - Update ruff.toml with known-first-party for import sorting - Update all documentation to reflect new directory structure Boundary rule enforced: harness code never imports from app. All 429 tests pass. Lint clean. Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com> * chore: add harness→app boundary check test and update docs Add test_harness_boundary.py that scans all Python files in packages/harness/deerflow/ and fails if any `from app.*` or `import app.*` statement is found. This enforces the architectural rule that the harness layer never depends on the app layer. Update CLAUDE.md to document the harness/app split architecture, import conventions, and the boundary enforcement test. Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com> * feat: add config versioning with auto-upgrade on startup When config.example.yaml schema changes, developers' local config.yaml files can silently become outdated. This adds a config_version field and auto-upgrade mechanism so breaking changes (like src.* → deerflow.* renames) are applied automatically before services start. - Add config_version: 1 to config.example.yaml - Add startup version check warning in AppConfig.from_file() - Add scripts/config-upgrade.sh with migration registry for value replacements - Add `make config-upgrade` target - Auto-run config-upgrade in serve.sh and start-daemon.sh before starting services - Add config error hints in service failure messages Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com> * fix comments * fix: update src.* import in test_sandbox_tools_security to deerflow.* Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com> * fix: handle empty config and search parent dirs for config.example.yaml Address Copilot review comments on PR #1131: - Guard against yaml.safe_load() returning None for empty config files - Search parent directories for config.example.yaml instead of only looking next to config.yaml, fixing detection in common setups Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com> * fix: correct skills root path depth and config_version type coercion - loader.py: fix get_skills_root_path() to use 5 parent levels (was 3) after harness split, file lives at packages/harness/deerflow/skills/ so parent×3 resolved to backend/packages/harness/ instead of backend/ - app_config.py: coerce config_version to int() before comparison in _check_config_version() to prevent TypeError when YAML stores value as string (e.g. config_version: "1") - tests: add regression tests for both fixes Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com> * fix: update test imports from src.* to deerflow.*/app.* after harness refactor Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com> --------- Co-authored-by: Claude Opus 4.6 <noreply@anthropic.com>
196 lines
5.8 KiB
Python
196 lines
5.8 KiB
Python
"""Memory update queue with debounce mechanism."""
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import threading
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import time
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from dataclasses import dataclass, field
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from datetime import datetime
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from typing import Any
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from deerflow.config.memory_config import get_memory_config
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@dataclass
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class ConversationContext:
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"""Context for a conversation to be processed for memory update."""
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thread_id: str
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messages: list[Any]
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timestamp: datetime = field(default_factory=datetime.utcnow)
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agent_name: str | None = None
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class MemoryUpdateQueue:
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"""Queue for memory updates with debounce mechanism.
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This queue collects conversation contexts and processes them after
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a configurable debounce period. Multiple conversations received within
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the debounce window are batched together.
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"""
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def __init__(self):
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"""Initialize the memory update queue."""
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self._queue: list[ConversationContext] = []
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self._lock = threading.Lock()
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self._timer: threading.Timer | None = None
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self._processing = False
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def add(self, thread_id: str, messages: list[Any], agent_name: str | None = None) -> None:
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"""Add a conversation to the update queue.
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Args:
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thread_id: The thread ID.
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messages: The conversation messages.
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agent_name: If provided, memory is stored per-agent. If None, uses global memory.
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"""
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config = get_memory_config()
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if not config.enabled:
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return
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context = ConversationContext(
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thread_id=thread_id,
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messages=messages,
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agent_name=agent_name,
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)
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with self._lock:
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# Check if this thread already has a pending update
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# If so, replace it with the newer one
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self._queue = [c for c in self._queue if c.thread_id != thread_id]
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self._queue.append(context)
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# Reset or start the debounce timer
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self._reset_timer()
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print(f"Memory update queued for thread {thread_id}, queue size: {len(self._queue)}")
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def _reset_timer(self) -> None:
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"""Reset the debounce timer."""
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config = get_memory_config()
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# Cancel existing timer if any
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if self._timer is not None:
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self._timer.cancel()
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# Start new timer
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self._timer = threading.Timer(
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config.debounce_seconds,
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self._process_queue,
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)
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self._timer.daemon = True
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self._timer.start()
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print(f"Memory update timer set for {config.debounce_seconds}s")
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def _process_queue(self) -> None:
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"""Process all queued conversation contexts."""
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# Import here to avoid circular dependency
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from deerflow.agents.memory.updater import MemoryUpdater
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with self._lock:
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if self._processing:
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# Already processing, reschedule
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self._reset_timer()
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return
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if not self._queue:
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return
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self._processing = True
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contexts_to_process = self._queue.copy()
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self._queue.clear()
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self._timer = None
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print(f"Processing {len(contexts_to_process)} queued memory updates")
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try:
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updater = MemoryUpdater()
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for context in contexts_to_process:
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try:
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print(f"Updating memory for thread {context.thread_id}")
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success = updater.update_memory(
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messages=context.messages,
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thread_id=context.thread_id,
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agent_name=context.agent_name,
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)
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if success:
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print(f"Memory updated successfully for thread {context.thread_id}")
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else:
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print(f"Memory update skipped/failed for thread {context.thread_id}")
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except Exception as e:
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print(f"Error updating memory for thread {context.thread_id}: {e}")
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# Small delay between updates to avoid rate limiting
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if len(contexts_to_process) > 1:
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time.sleep(0.5)
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finally:
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with self._lock:
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self._processing = False
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def flush(self) -> None:
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"""Force immediate processing of the queue.
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This is useful for testing or graceful shutdown.
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"""
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with self._lock:
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if self._timer is not None:
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self._timer.cancel()
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self._timer = None
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self._process_queue()
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def clear(self) -> None:
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"""Clear the queue without processing.
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This is useful for testing.
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"""
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with self._lock:
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if self._timer is not None:
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self._timer.cancel()
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self._timer = None
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self._queue.clear()
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self._processing = False
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@property
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def pending_count(self) -> int:
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"""Get the number of pending updates."""
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with self._lock:
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return len(self._queue)
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@property
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def is_processing(self) -> bool:
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"""Check if the queue is currently being processed."""
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with self._lock:
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return self._processing
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# Global singleton instance
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_memory_queue: MemoryUpdateQueue | None = None
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_queue_lock = threading.Lock()
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def get_memory_queue() -> MemoryUpdateQueue:
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"""Get the global memory update queue singleton.
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Returns:
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The memory update queue instance.
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"""
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global _memory_queue
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with _queue_lock:
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if _memory_queue is None:
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_memory_queue = MemoryUpdateQueue()
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return _memory_queue
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def reset_memory_queue() -> None:
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"""Reset the global memory queue.
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This is useful for testing.
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"""
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global _memory_queue
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with _queue_lock:
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if _memory_queue is not None:
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_memory_queue.clear()
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_memory_queue = None
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