# CLAUDE.md This file provides guidance to Claude Code (claude.ai/code) when working with code in this repository. ## Commands **Start all services:** ```bash docker compose up --build ``` **Interactive CLI (Docker container, requires gateway running):** ```bash docker compose --profile tools run --rm -it cli # or with options: docker compose --profile tools run --rm -it cli python3 cli.py --url http://deepagents:8000 --session cli-alvis ``` **Run integration tests** (from `tests/integration/`, require all Docker services running): ```bash python3 test_health.py # service health: deepagents, bifrost, Ollama, Qdrant, SearXNG python3 test_memory.py # name store/recall + memory benchmark + dedup python3 test_memory.py --name-only # only name store/recall pipeline python3 test_memory.py --bench-only # only 5-fact store + 10-question recall python3 test_memory.py --dedup-only # only deduplication test python3 test_routing.py # all routing benchmarks (easy + medium + hard) python3 test_routing.py --easy-only # light-tier routing benchmark python3 test_routing.py --medium-only # medium-tier routing benchmark python3 test_routing.py --hard-only # complex-tier + VRAM flush benchmark ``` Shared config and helpers are in `tests/integration/common.py`. **Use case tests** (`tests/use_cases/`) — markdown skill files executed by Claude Code, which acts as mock user and quality evaluator. Run by reading the `.md` file and following its steps with tools (Bash, WebFetch, etc.). ## Architecture Adolf is a multi-channel personal assistant. All LLM inference is routed through **Bifrost**, an open-source Go-based LLM gateway that adds retry logic, failover, and observability in front of Ollama. ### Request flow ``` Channel adapter → POST /message {text, session_id, channel, user_id} → 202 Accepted (immediate) → background: run_agent_task() → asyncio.gather( _fetch_urls_from_message() ← Crawl4AI, concurrent _retrieve_memories() ← openmemory search, concurrent _fast_tool_runner.run_matching() ← FastTools (weather, commute), concurrent ) → router.route() → tier decision (light/medium/complex) fast tool match → force medium if URL content fetched → upgrade light→medium → invoke agent for tier via Bifrost (url_context + memories in system prompt) deepagents:8000 → bifrost:8080/v1 → ollama:11436 → _push_stream_chunk() per token (medium streaming) / full reply (light, complex) → _stream_queues[session_id] asyncio.Queue → _end_stream() sends [DONE] sentinel → channels.deliver(session_id, channel, reply) → channel-specific callback (Telegram POST) → _store_memory() background task (openmemory) CLI streaming → GET /stream/{session_id} (SSE, per-token for medium, single-chunk for others) ``` ### Bifrost integration Bifrost (`bifrost-config.json`) is configured with the `ollama` provider pointing to the GPU Ollama instance on host port 11436. It exposes an OpenAI-compatible API at `http://bifrost:8080/v1`. `agent.py` uses `langchain_openai.ChatOpenAI` with `base_url=BIFROST_URL`. Model names use the `provider/model` format that Bifrost expects: `ollama/qwen3:4b`, `ollama/qwen3:8b`, `ollama/qwen2.5:1.5b`. Bifrost strips the `ollama/` prefix before forwarding to Ollama. `VRAMManager` bypasses Bifrost and talks directly to Ollama via `OLLAMA_BASE_URL` (host:11436) for flush/poll/prewarm operations — Bifrost cannot manage GPU VRAM. ### Three-tier routing (`router.py`, `agent.py`) | Tier | Model (env var) | Trigger | |------|-----------------|---------| | light | `qwen2.5:1.5b` (`DEEPAGENTS_ROUTER_MODEL`) | Regex pre-match or LLM classifies "light" — answered by router model directly, no agent invoked | | medium | `qwen3:4b` (`DEEPAGENTS_MODEL`) | Default for tool-requiring queries | | complex | `qwen3:8b` (`DEEPAGENTS_COMPLEX_MODEL`) | `/think ` prefix only | The router does regex pre-classification first, then LLM classification. Complex tier is blocked unless the message starts with `/think ` — any LLM classification of "complex" is downgraded to medium. A global `asyncio.Semaphore(1)` (`_reply_semaphore`) serializes all LLM inference — one request at a time. ### Thinking mode and streaming qwen3 models produce chain-of-thought `...` tokens. Handling differs by tier: - **Medium** (`qwen3:4b`): streams via `astream()`. A state machine (`in_think` flag) filters `` blocks in real time — only non-think tokens are pushed to `_stream_queues` and displayed to the user. - **Complex** (`qwen3:8b`): `create_deep_agent` returns a complete reply; `_strip_think()` filters think blocks before the reply is pushed as a single chunk. - **Router/light** (`qwen2.5:1.5b`): no thinking support; `_strip_think()` used defensively. `_strip_think()` in `agent.py` and `router.py` strips any `` blocks from non-streaming output. ### VRAM management (`vram_manager.py`) Hardware: GTX 1070 (8 GB). Before running the 8b model, medium models are flushed via Ollama `keep_alive=0`, then `/api/ps` is polled (15s timeout) to confirm eviction. On timeout, falls back to medium tier. After complex reply, 8b is flushed and medium models are pre-warmed as a background task. ### Channel adapters (`channels.py`) - **Telegram**: Grammy Node.js bot (`grammy/bot.mjs`) long-polls Telegram → `POST /message`; replies delivered via `POST grammy:3001/send` - **CLI**: `cli.py` (Docker container, `profiles: [tools]`) posts to `/message`, then streams from `GET /stream/{session_id}` SSE with Rich `Live` display and final Markdown render. Session IDs: `tg-` for Telegram, `cli-` for CLI. Conversation history: 5-turn buffer per session. ### Services (`docker-compose.yml`) | Service | Port | Role | |---------|------|------| | `bifrost` | 8080 | LLM gateway — retries, failover, observability; config from `bifrost-config.json` | | `deepagents` | 8000 | FastAPI gateway + agent core | | `openmemory` | 8765 | FastMCP server + mem0 memory tools (Qdrant-backed) | | `grammy` | 3001 | grammY Telegram bot + `/send` HTTP endpoint | | `crawl4ai` | 11235 | JS-rendered page fetching | | `routecheck` | 8090 | Local routing web service — image captcha UI + Yandex Routing API backend | | `cli` | — | Interactive CLI container (`profiles: [tools]`), Rich streaming display | External (from `openai/` stack, host ports): - Ollama GPU: `11436` — all reply inference (via Bifrost) + VRAM management (direct) - Ollama CPU: `11435` — nomic-embed-text embeddings for openmemory - Qdrant: `6333` — vector store for memories - SearXNG: `11437` — web search ### Bifrost config (`bifrost-config.json`) The file is mounted into the bifrost container at `/app/data/config.json`. It declares one Ollama provider key pointing to `host.docker.internal:11436` with 2 retries and 300s timeout. To add fallback providers or adjust weights, edit this file and restart the bifrost container. ### Crawl4AI integration Crawl4AI is embedded at all levels of the pipeline: - **Pre-routing (all tiers)**: `_fetch_urls_from_message()` detects URLs in any message via `_URL_RE`, fetches up to 3 URLs concurrently with `_crawl4ai_fetch_async()` (async httpx). URL content is injected as a system context block into enriched history before routing, and into the system prompt for medium/complex agents. - **Tier upgrade**: if URL content is successfully fetched, light tier is upgraded to medium (light model cannot process page content). - **Complex agent tools**: `web_search` (SearXNG + Crawl4AI auto-fetch of top 2 results) and `fetch_url` (single-URL Crawl4AI fetch) remain available for the complex agent's agentic loop. Complex tier also receives the pre-fetched content in system prompt to avoid redundant re-fetching. MCP tools from openmemory (`add_memory`, `search_memory`, `get_all_memories`) are **excluded** from agent tools — memory management is handled outside the agent loop. ### Fast Tools (`fast_tools.py`) Pre-flight tools that run before the LLM in the `asyncio.gather` alongside URL fetch and memory retrieval. Each tool has a regex `matches()` classifier and an async `run()` that returns a context string injected into the system prompt. The router uses `FastToolRunner.any_matches()` to force medium tier when a tool matches. | Tool | Trigger | Data source | |------|---------|-------------| | `WeatherTool` | weather/forecast/temperature keywords | SearXNG query `"погода Балашиха сейчас"` — Russian sources return °C | | `CommuteTool` | commute/traffic/arrival time keywords | `routecheck:8090/api/route` — Yandex Routing API, Balashikha→Moscow center | To add a new fast tool: subclass `FastTool` in `fast_tools.py`, add an instance to `_fast_tool_runner` in `agent.py`. ### `routecheck` service (`routecheck/app.py`) Local web service that exposes Yandex Routing API behind an image captcha. Two access paths: - **Web UI** (`localhost:8090`): solve PIL-generated arithmetic captcha → query any two lat/lon points - **Internal API**: `GET /api/route?from=lat,lon&to=lat,lon&token=ROUTECHECK_TOKEN` — bypasses captcha, used by `CommuteTool` Requires `.env`: `YANDEX_ROUTING_KEY` (free tier from `developer.tech.yandex.ru`) and `ROUTECHECK_TOKEN`. The container routes Yandex API calls through the host HTTPS proxy (`host.docker.internal:56928`). ### Medium vs Complex agent | Agent | Builder | Speed | Use case | |-------|---------|-------|----------| | medium | `_DirectModel` (single LLM call, no tools) | ~3s | General questions, conversation | | complex | `create_deep_agent` (deepagents) | Slow — multi-step planner | Deep research via `/think` prefix | ### Key files - `agent.py` — FastAPI app, lifespan wiring, `run_agent_task()`, Crawl4AI pre-fetch, fast tools, memory pipeline, all endpoints - `fast_tools.py` — `FastTool` base class, `FastToolRunner`, `WeatherTool`, `CommuteTool` - `routecheck/app.py` — captcha UI + `/api/route` Yandex proxy - `bifrost-config.json` — Bifrost provider config (Ollama GPU, retries, timeouts) - `channels.py` — channel registry and `deliver()` dispatcher - `router.py` — `Router` class: regex + LLM classification, light-tier reply generation - `vram_manager.py` — `VRAMManager`: flush/poll/prewarm Ollama VRAM directly - `agent_factory.py` — `build_medium_agent` (`_DirectModel`, single call) / `build_complex_agent` (`create_deep_agent`) - `openmemory/server.py` — FastMCP + mem0 config with custom extraction/dedup prompts - `wiki_research.py` — batch research pipeline using `/message` + SSE polling - `grammy/bot.mjs` — Telegram long-poll + HTTP `/send` endpoint