Files
agentic-resources/session_memory
tegwick 519e76442a session-memory Phase 2: curate entrypoint + README (T06)
python -m session_memory.curate: refreshes detect candidates, then drives them
through review interactively or with --auto-approve (batch, gate-driven) /
--json. Emits a catalog diff summary; queues hub decisions when offline.
[curate] config gains decision_queue + workstream id. README documents the
detect -> curate -> distribute flow and the gate knobs. 2 new tests; suite 72/72.

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-06-07 10:00:56 +02:00
..

session_memory

Capture + retention layer for Helix Forge — the Capture stage of the loop in ../docs/PRD-helix-forge.md, built to the ../docs/DESIGN-session-memory.md spec.

It scans coding-agent session logs, normalizes them into one schema, distills a compact per-session digest, and ages out raw bulk under a storage budget (dropping sessions once analyzed and once space is needed) rather than a fixed time window.

Layout

session_memory/
  adapters/common.py   # shared Normalized bundle + helpers
  adapters/claude.py   # Tier0 -> Tier1 normalizers, one per flavor
  adapters/codex.py    #   (rollout {timestamp,type,payload}, flat call_id join)
  adapters/grok.py     #   (per-session dir: chat_history + events + updates)
  core/schema.py       # Session / SessionEvent / Cost
  core/store.py        # SQLite rows + blob-dir bodies (Tier1) + digests/patterns (Tier2)
  core/cursor.py       # incremental ingest cursors
  core/digest.py       # Tier1 -> Tier2 promotion + outcome heuristic
  core/retention.py    # budget-based eviction sweep
  ingest.py            # one sweep: discover -> normalize -> store -> digest -> evict
  detect/signals.py    # signal extractors over digests
  detect/cluster.py    # cluster signals -> candidate patterns + cross-flavor flag
  detect/__main__.py   # python -m session_memory.detect (ranked report)
  curate/schema.py     # SolutionPattern artifact + per-flavor rendering hints
  curate/catalog.py    # versioned, files-first Pattern Catalog (dedup on id)
  curate/gating.py     # promotion evidence bar + bloat guard
  curate/review.py     # discuss/approve/reject -> promote workflow
  curate/decisions.py  # hub decision audit trail (graceful local-queue fallback)
  curate/__main__.py   # python -m session_memory.curate (interactive / --auto-approve)
  catalog/             # the committed Pattern Catalog (source of truth)
  config.toml          # store paths, retention caps, sources, repo->domain map, curate gate

The local store lives under session_memory/.store/ (gitignored).

Run a sweep

# from the repo root
python -m session_memory.ingest                 # ingest + analyze + evict
python -m session_memory.ingest --dry-run       # discover + parse only, writes nothing
python -m session_memory.ingest --config path/to/config.toml

Output reports discovered / ingested / skipped_unchanged / analyzed and a retention line (freed, final_usage, and per-pass eviction counts). Sweeps are idempotent — re-running skips unchanged files via the cursor.

Scheduling (cadence)

Retention is budget-based; the cadence in config.toml only decides how often the sweep runs. Trigger it with the repo scheduler, e.g. daily:

# Claude Code: schedule a daily routine that runs the sweep
/schedule "daily session-memory sweep" -- python -m session_memory.ingest

or a cron entry / /loop on a timer. Push-capture (agent Stop/SessionEnd hooks) can also enqueue a sweep; see design §7.

Detect candidate patterns

After ingesting, mine the digests for recurring problem/success patterns:

python -m session_memory.detect                 # ranked report, cross-flavor first
python -m session_memory.detect --json          # machine-readable candidates
python -m session_memory.detect --min-frequency 3

Candidates are persisted to a Tier 2 patterns table and are the input to the Curate phase (Phase 2). Patterns whose evidence spans more than one agent flavor are flagged [CROSS-FLAVOR] — the highest-value reuse targets.

Curate candidates into the Pattern Catalog

Review detect candidates into versioned Solution Patterns held in the files-first catalog (session_memory/catalog/). The flow is detect → curate → (Phase 3) distribute; curate refreshes candidates by running detect first.

python -m session_memory.curate                 # interactive review (a/r/d per candidate)
python -m session_memory.curate --auto-approve  # batch: promote all that clear the evidence bar
python -m session_memory.curate --json          # machine-readable result
  • Promotion writes a SolutionPattern file (id = source candidate key, so re-promoting the same candidate dedups; content changes bump the semver and archive the prior version to <id>.history.jsonl).
  • The evidence bar ([curate.gate]) sets two floors: a promote floor and a stricter distribution floor. A thin-but-real candidate lands provisional; one clearing the distribution floor lands approved + distribution_ready.
  • A bloat guard flags duplicate / near-duplicate candidates so the catalog stays lean.
  • Re-review is idempotent — a remembered decision is skipped unless the candidate's evidence changed; a prior reject is not re-surfaced.
  • Each final promote/reject is recorded as a hub decision; if the hub is offline the decision is queued to [curate].decision_queue for later sync (the same after-the-fact pattern used in Phase 1).

Curate knobs ([curate] / [curate.gate] in config.toml)

Key Meaning
catalog_dir committed Pattern Catalog dir (source of truth)
review_log / decision_queue remembered decisions + pending hub decisions (gitignored)
min_frequency / min_sessions / min_cost_impact floor to promote at all
dist_require_cross_flavor require cross-flavor evidence to be distribution-eligible
dist_min_frequency / dist_min_cost_impact stricter floor for distribution_ready

Retention knobs ([retention] in config.toml)

Key Meaning
raw_soft_cap_bytes begin evicting analyzed sessions above this (oldest first)
raw_hard_cap_bytes absolute Tier 1 ceiling; overflow path may, as a last resort, evict un-analyzed sessions and report data_loss
raw_max_age_days backstop: analyzed raw older than this is evictable regardless of space
distilled_cap_bytes Tier 2 ceiling — alert only, never auto-dropped

Invariant: a session's raw bytes are never dropped before its Tier 2 digest exists, except the explicitly-reported hard-cap overflow path.

Tests

python -m pytest          # schema, adapters, store, digest, retention, ingest, detect, curate

Status

  • Phase 0 (AGENTIC-WP-0002): schema, store, digest, budget retention, Claude adapter, ingest sweep.
  • Phase 1 (AGENTIC-WP-0003): Codex + Grok adapters, multi-file session merge, and the Detect pipeline (signals → clustering → cross-flavor candidate patterns).
  • Phase 2 (AGENTIC-WP-0004): Curate — Solution Pattern schema, versioned files-first Pattern Catalog, discuss/approve/reject review with an evidence bar + bloat guard, and hub-decision audit trail.
  • Next — Phase 3 (Distribute) / Phase 4 (Measure) follow per the PRD.