Async on-prem LLM-powered structured information extraction microservice
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feat(app): production wiring — factories, pipeline, /healthz real probes
Task 4.3 closes the loop on Chunk 4: the FastAPI lifespan now selects
fake vs real clients via IX_TEST_MODE (new AppConfig field), wires
/healthz probes to the live selfcheck() on OllamaClient / SuryaOCRClient,
and spawns the worker with a production Pipeline factory that builds
SetupStep -> OCRStep -> GenAIStep -> ReliabilityStep -> ResponseHandler
over the injected clients.

Factories:
- make_genai_client(cfg) -> FakeGenAIClient | OllamaClient
- make_ocr_client(cfg)   -> FakeOCRClient  | SuryaOCRClient (spec §6.2)

Probes run the async selfcheck on a fresh event loop in a short-lived
thread so they're safe to call from either sync callers or a live
FastAPI handler without stalling the request loop.

Drops the worker-loop spawn_worker_task stub — the app module owns the
production spawn directly.

Tests: +11 unit tests (5 factories + 6 app-wiring / probe adapter /
pipeline build). Full suite: 236 passed.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-04-18 12:09:11 +02:00
.forgejo/workflows ci: run on every push (not just main) so feat branches also get CI 2026-04-18 10:40:44 +02:00
alembic feat(store): Alembic scaffolding + initial ix_jobs migration (spec §4) 2026-04-18 11:37:21 +02:00
docs Implementation plan for ix MVP 2026-04-18 10:34:30 +02:00
scripts test(pipeline): end-to-end hermetic test with fakes + synthetic fixture 2026-04-18 11:24:29 +02:00
src/ix feat(app): production wiring — factories, pipeline, /healthz real probes 2026-04-18 12:09:11 +02:00
tests feat(app): production wiring — factories, pipeline, /healthz real probes 2026-04-18 12:09:11 +02:00
.env.example feat(scaffold): project skeleton with uv + pytest + forgejo CI 2026-04-18 10:36:43 +02:00
.gitignore feat(scaffold): project skeleton with uv + pytest + forgejo CI 2026-04-18 10:36:43 +02:00
.python-version feat(scaffold): project skeleton with uv + pytest + forgejo CI 2026-04-18 10:36:43 +02:00
AGENTS.md Initial design: on-prem LLM extraction microservice MVP 2026-04-18 10:23:17 +02:00
alembic.ini feat(store): Alembic scaffolding + initial ix_jobs migration (spec §4) 2026-04-18 11:37:21 +02:00
pyproject.toml feat(scaffold): project skeleton with uv + pytest + forgejo CI 2026-04-18 10:36:43 +02:00
README.md Initial design: on-prem LLM extraction microservice MVP 2026-04-18 10:23:17 +02:00
uv.lock feat(scaffold): project skeleton with uv + pytest + forgejo CI 2026-04-18 10:36:43 +02:00

InfoXtractor (ix)

Async, on-prem, LLM-powered structured information extraction microservice.

Given a document (PDF, image, text) and a named use case, ix returns a structured JSON result whose shape matches the use-case schema — together with per-field provenance (OCR segment IDs, bounding boxes, cross-OCR agreement flags) that let the caller decide how much to trust each extracted value.

Status: design phase. Implementation about to start.

Principles

  • On-prem always. LLM = Ollama, OCR = local engines (Surya first). No OpenAI / Anthropic / Azure / AWS / cloud.
  • Grounded extraction, not DB truth. ix returns best-effort fields + provenance; the caller decides what to trust.
  • Transport-agnostic pipeline core. REST + Postgres-queue adapters in parallel on one job store.