Anto01 146f2e4a5e chore: Day 8 — close mini-phase with before/after metrics
Mini-phase complete. Before/after deltas:

  Metric                    Before     After
  ─────────────────────────────────────────
  Rule extractor recall     0%         0% (unchanged, deprioritized)
  LLM extractor recall      n/a        100% (new, claude -p haiku)
  LLM candidate yield       n/a        2.55/interaction
  First triage accept rate  n/a        31% (16/51)
  Active memories           20         36 (+16)
  p06-polisher memories     2          16 (+14)
  atocore memories          0          5  (+5)
  Retrieval harness         6/6        15/18 (expanded to 18 fixtures)
  Test count                264        278 (+14)

3 remaining harness failures are budget-contention on the p06 memory
band: the specific memory a fixture targets ranks 4th+ and the 25%
budget only holds 2-3 entries. Not a ranking bug — the per-entry
250-char cap was the one justified tweak; a second budget change
risks regressing other fixtures per Codex's Day 7 hard gate.

Ledger updated: Orientation, Session Log, main_tip, harness line.

Next on the roadmap (from DEV-LEDGER Active Plan / docs/next-steps):
  - Wave 2 trusted operational ingestion (p04/p05/p06 dashboards)
  - Finish OpenClaw integration (Phase 8)
  - Auto-triage (multi-model second pass to reduce human review)

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
2026-04-12 06:41:42 -04:00

AtoCore

Personal context engine that enriches LLM interactions with durable memory, structured context, and project knowledge.

Quick Start

pip install -e .
uvicorn src.atocore.main:app --port 8100

Usage

# Ingest markdown files
curl -X POST http://localhost:8100/ingest \
  -H "Content-Type: application/json" \
  -d '{"path": "/path/to/notes"}'

# Build enriched context for a prompt
curl -X POST http://localhost:8100/context/build \
  -H "Content-Type: application/json" \
  -d '{"prompt": "What is the project status?", "project": "myproject"}'

# CLI ingestion
python scripts/ingest_folder.py --path /path/to/notes

# Live operator client
python scripts/atocore_client.py health
python scripts/atocore_client.py audit-query "gigabit" 5

API Endpoints

Method Path Description
POST /ingest Ingest markdown file or folder
POST /query Retrieve relevant chunks
POST /context/build Build full context pack
GET /health Health check
GET /debug/context Inspect last context pack

Architecture

FastAPI (port 8100)
  |- Ingestion: markdown -> parse -> chunk -> embed -> store
  |- Retrieval: query -> embed -> vector search -> rank
  |- Context Builder: retrieve -> boost -> budget -> format
  |- SQLite (documents, chunks, memories, projects, interactions)
  '- ChromaDB (vector embeddings)

Configuration

Set via environment variables (prefix ATOCORE_):

Variable Default Description
ATOCORE_DEBUG false Enable debug logging
ATOCORE_PORT 8100 Server port
ATOCORE_CHUNK_MAX_SIZE 800 Max chunk size (chars)
ATOCORE_CONTEXT_BUDGET 3000 Context pack budget (chars)
ATOCORE_EMBEDDING_MODEL paraphrase-multilingual-MiniLM-L12-v2 Embedding model

Testing

pip install -e ".[dev]"
pytest

Operations

  • scripts/atocore_client.py provides a live API client for project refresh, project-state inspection, and retrieval-quality audits.
  • docs/operations.md captures the current operational priority order: retrieval quality, Wave 2 trusted-operational ingestion, AtoDrive scoping, and restore validation.

Architecture Notes

Implementation-facing architecture notes live under docs/architecture/.

Current additions:

  • docs/architecture/engineering-knowledge-hybrid-architecture.md — 5-layer hybrid model
  • docs/architecture/engineering-ontology-v1.md — V1 object and relationship inventory
  • docs/architecture/engineering-query-catalog.md — 20 v1-required queries
  • docs/architecture/memory-vs-entities.md — canonical home split
  • docs/architecture/promotion-rules.md — Layer 0 to Layer 2 pipeline
  • docs/architecture/conflict-model.md — contradictory facts detection and resolution
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