Commit Graph

2 Commits

Author SHA1 Message Date
1ca2351488 fix(clustering): route embeddings through LiteLLM instead of Ollama directly
The old code called Ollama's /api/embeddings one task at a time, which caused
silent fallback to project-based grouping when host.docker.internal:11434 was
unreachable from the ml-serving container.

- Switch to LiteLLM /embeddings (model alias "embedder") as primary path
- Batch all task contents in one request instead of N serial calls
- Fall back to Ollama /api/embed (updated to current API) when LITELLM_URL is absent
- Update tests to mock _embed_batch instead of the removed _embed

Fixes #123

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-12 13:42:53 +00:00
26fc67776f feat(agents): semantic task clustering + focus-area inferred preferred_areas (#97, #113)
- New ml/agents/clustering.py: embed task content via nomic-embed-text
  (Ollama), greedy cosine clustering (threshold 0.72, max 6 clusters),
  graceful fallback to project-id grouping when Ollama is unreachable
- focus_area v2.0.0: compute() uses semantic clusters as focus areas;
  adds preferred_areas InferredParam inferred from top-2 projects by
  task_completion count
- 135 tests, all passing

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-05-06 06:54:46 +00:00