Five threads of work landing as one milestone — all individually
verified end-to-end against real data, full release build clean,
46 unit tests pass.
## Phase 16.2 / 16.5 — autotune agent + ingest triggers
`vectord::agent` is a long-running tokio task that watches the trial
journal and autonomously proposes + runs new HNSW configs. Distinct
from `autotune::run_autotune` (synchronous one-shot grid). Triggered
on POST /vectors/agent/enqueue/{idx} or by the periodic wake; ingest
paths now push DatasetAppended events when an index's source dataset
gets re-ingested. Rate-limited (max_trials_per_hour) and cooldown-
gated so it can't saturate Ollama under live load.
The proposer is ε-greedy around the current champion: with prob 0.25
sample random from full bounds, otherwise perturb champion ± small
delta on both axes. Dedup against history. Deterministic — RNG seeded
from history.len() so the same journal state proposes the same next
config (helps offline replay debugging).
`[agent]` config section in lakehouse.toml; opt-in via enabled=true.
## Federation Layer 2 — runtime bucket lifecycle + per-index scoping
`BucketRegistry.buckets` moved to `std::sync::RwLock<HashMap>` so
buckets can be added/removed after startup. POST /storage/buckets
provisions at runtime; DELETE /storage/buckets/{name} unregisters
(refuses primary/rescue with 403). Local-backend buckets get their
root directory auto-created.
`IndexMeta.bucket` (default "primary" via serde) records each index's
home bucket. `TrialJournal` and `PromotionRegistry` now hold
Arc<BucketRegistry> + IndexRegistry; they resolve target store per-
index via IndexMeta.bucket. PromotionRegistry::list_all scans every
bucket and dedups by index_name. Pre-federation indexes keep working
unchanged — they just default to primary.
`ModelProfile.bucket: Option<String>` declares per-profile artifact
home. POST /vectors/profile/{id}/activate auto-provisions the
profile's bucket under storage.profile_root if not yet registered.
EvalSets stay primary-only for now — noted gap, low-risk to extend
later with the same resolver pattern.
## Phase 17 — VRAM-aware two-profile gate
Sidecar gains POST /admin/unload (Ollama keep_alive=0 trick — forces
immediate VRAM release), POST /admin/preload (keep_alive=5m with
empty prompt, takes the slot warm), and GET /admin/vram (combines
nvidia-smi snapshot with Ollama /api/ps). Exposed via aibridge as
unload_model / preload_model / vram_snapshot.
`VectorState.active_profile` is the GPU-slot singleton —
Arc<RwLock<Option<ActiveProfileSlot>>>. activate_profile checks for
a previous profile with a different ollama_name and unloads it
before preloading the new one; same-model reactivations skip the
unload (Ollama no-ops). New routes: POST /vectors/profile/{id}/
deactivate (unload + clear slot), GET /vectors/profile/active.
Verified live: staffing-recruiter (qwen2.5) → docs-assistant
(mistral) swap freed qwen2.5 from VRAM and loaded mistral. nomic-
embed-text persists across swaps because both profiles use it —
free optimization that fell out of the design. Scoped search
correctly 403s cross-profile in both directions.
## MySQL streaming connector
`crates/ingestd/src/my_stream.rs` mirrors pg_stream.rs for MySQL.
Pure-rust `mysql_async` driver (default-features=false to avoid C
deps). Same OFFSET pagination, same Parquet-streaming write shape.
Type mapping per ADR-010: int/bigint → Int32/Int64, decimal/float
→ Float64, tinyint(1)/bool → Boolean, everything else → Utf8 with
fallback parsers for date/time/json/uuid via Display.
POST /ingest/mysql parallel to /ingest/db. Same PII auto-detection,
same lineage capture (source_system="mysql"), same agent-trigger
hook. `redact_dsn` generalized — was hardcoded to "postgresql://"
length, now works for any scheme://user:pass@host/path URL (latent
PII leak fix for MySQL DSNs).
Verified live against MariaDB on localhost: 10 rows × 9 columns of
test data round-tripped through datatypes int/varchar/decimal/
tinyint/datetime/text. PII detection auto-flagged name + email.
Aggregation queries through DataFusion match the source values
exactly.
## Phase 18 — Hybrid Parquet+HNSW ⊕ Lance backend (ADR-019)
`vectord-lance` is a new firewall crate. Lance pulls Arrow 57 and
DataFusion 52 — incompatible with the rest of the workspace's
Arrow 55 / DataFusion 47. The firewall isolates that dep tree:
public API uses only std types (Vec<f32>, Vec<String>, Hit, Row,
*Stats), so no Arrow types cross the crate boundary and nothing
propagates to vectord. The ADR-019 path that didn't ship until now.
`vectord::lance_backend::LanceRegistry` lazy-creates a
LanceVectorStore per index, resolving bucket → URI via the
conventional local-bucket layout. `IndexMeta.vector_backend` and
`ModelProfile.vector_backend` carry the choice (default Parquet so
existing indexes unchanged).
Six routes under /vectors/lance/*:
- migrate/{idx}: convert binary-blob Parquet → Lance FixedSizeList
- index/{idx}: build IVF_PQ
- search/{idx}: vector search (embed via sidecar)
- doc/{idx}/{doc_id}: random row fetch
- append/{idx}: native fragment append
- stats/{idx}: row count + index presence
Verified live on the real resumes_100k_v2 corpus (100K × 768d):
- Migrate: 0.57s
- Build IVF_PQ index: 16.2s (matches ADR-019 bench; 14× faster than
HNSW's 230s for the same data)
- Search end-to-end (Ollama embed + Lance scan): 23-53ms
- Random doc_id fetch: 5-7ms (filter scan; faster than Parquet's
~35ms full-file scan, slower than the bench's 311us positional
take — would close that gap with a scalar btree on doc_id)
- Append 100 rows: 3.3ms / +320KB on disk vs Parquet's required
full ~330MB rewrite — the structural win
- Index survives append; both backends coexist cleanly
## Known follow-ups not in this milestone
- ModelProfile.vector_backend doesn't yet auto-route /vectors/profile/
{id}/search to Lance; callers go through /vectors/lance/* directly
- Scalar btree on doc_id (closes the 5-7ms → ~300us gap)
- vectord-lance built default-features=false → no S3 yet
- IVF_PQ recall not measured (ADR-019 caveat) — needs a Lance-aware
variant of the eval harness
- Watcher-path ingest doesn't push agent triggers (HTTP paths do)
- EvalSets still primary-only (federation gap)
- No PATCH endpoint to move an existing index between buckets
- The pre-existing storaged::append_log doctest fails to compile
(malformed `{prefix}/` parses as code fence) — pre-existing bug,
left for a focused fix
🤖 Generated with [Claude Code](https://claude.com/claude-code)
Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
Implements PRD invariant 9 ("every reader gets its own profile") and
completes the multi-model substrate vision. Local models (or agents)
bind to a named set of datasets; activation pre-loads their vector
indexes into memory; search enforces scope.
Schema (shared::types):
- ModelProfile { id, ollama_name, description, bound_datasets,
hnsw_config, embed_model, created_at, created_by }
- ProfileHnswConfig mirrors vectord::trial::HnswConfig to avoid a
cross-crate dep cycle. Default (ec=80, es=30) matches the Phase 15
trial winner.
- bound_datasets can reference raw dataset names OR AiView names
(both register as DataFusion tables with the same name, so mixing
raw tables and PII-redacted views composes naturally)
Catalog (catalogd::registry):
- put_profile validates id is a slug (alphanumeric + -_ only) and
every binding resolves to an existing dataset or view
- Persistence at _catalog/profiles/{id}.json, loaded on rebuild
- get_profile / list_profiles / delete_profile
HTTP endpoints:
- POST /catalog/profiles (create/update)
- GET /catalog/profiles (list)
- GET/DELETE /catalog/profiles/{id}
- POST /vectors/profile/{id}/activate (HNSW hot-load)
- POST /vectors/profile/{id}/search (scope-enforced)
Activation (vectord::service::activate_profile):
- For each bound dataset, find vector indexes with matching source
- Pre-load embeddings into EmbeddingCache
- Build HNSW with profile's config
- Report warmed indexes + per-binding failures + duration
- Failures on individual bindings don't abort — "substrate keeps
working" per ADR-017
Scoped search (vectord::service::profile_scoped_search):
- Look up profile, verify index.source ∈ profile.bound_datasets
- Returns 403 with allowed bindings list if out-of-scope
- Uses HNSW if index is warm, brute-force cosine otherwise (graceful
degradation — no "must activate first" friction)
Bug fix surfaced during testing: vectord::refresh::try_update_index_meta
was a no-op for first-time indexes, so threat_intel_v1 and
kb_team_runs_v1 (both built via refresh after Phase C shipped) didn't
show up in the index registry. Now it auto-infers the source from the
index name convention (`{source}_vN`) and registers new metadata with
reasonable defaults.
End-to-end verified:
- Created security-analyst profile bound to [threat_intel]
- POST /vectors/profile/security-analyst/activate → warmed
threat_intel_v1 (54 vectors) in 156ms, HNSW built
- Within-scope search: method=hnsw, returned relevant IP indicators
- Out-of-scope: tried to search resumes_100k_v2 (source=candidates)
→ 403 "profile 'security-analyst' is not bound to 'candidates' —
allowed bindings: [\"threat_intel\"]"
- staffing-recruiter profile created bound to candidates + placements;
search without activation fell through to brute_force (graceful)
Deferred (Phase 17 followups):
- VRAM-aware activation (unload-then-load via Ollama keep_alive=0)
— Ollama already handles this; we don't need to reinvent
- Model-identity in audit trail — Phase 13 has role-based audit;
adding model_id is ~20 LOC when we want it
- Profile bucket pre-load (profile:user bucket mount) — Phase 17.5
Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
Implements GDPR/CCPA-compatible row-level deletion without rewriting
the underlying Parquet. Tombstone markers live beside each dataset and
are applied at query time via a DataFusion view that excludes the
deleted row_key_values.
Schema (shared::types):
- Tombstone { dataset, row_key_column, row_key_value, deleted_at,
actor, reason }
- All tombstones for a dataset must share one row_key_column —
enforced at write so the query-time filter remains a single
WHERE NOT IN (...) clause
Storage (catalogd::tombstones):
- Per-dataset AppendLog at _catalog/tombstones/{dataset}/
- flush_threshold=1 + explicit flush after every append — tombstones
are high-value, low-frequency; durability on return is the contract
- Reuses storaged::append_log infra so compaction is already wired
(POST .../tombstones/compact will work once we expose it)
Catalog (catalogd::registry):
- add_tombstone validates dataset exists + key column compatibility
- list_tombstones for the GET endpoint
- TombstoneStore exposed via Registry::tombstones() for queryd
HTTP (catalogd::service):
- POST /catalog/datasets/by-name/{name}/tombstone
{ row_key_column, row_key_values[], actor, reason }
Returns rows_tombstoned count + per-value failure list (207 on
partial success).
- GET same path lists active tombstones with full audit info.
Query layer (queryd::context):
- Snapshot tombstones-by-dataset before registering tables
- Tombstoned tables: raw goes to "__raw__{name}", public "{name}"
becomes DataFusion view with
SELECT * FROM "__raw__{name}" WHERE CAST(col AS VARCHAR) NOT IN (...)
- CAST AS VARCHAR handles both string and integer key columns
- Untombstoned tables register as before — zero overhead
End-to-end on candidates (100K rows):
- Pick CAND-000001/2/3 (Linda/Charles/Kimberly)
- POST tombstone -> rows_tombstoned: 3
- COUNT(*) drops 100000 -> 99997
- WHERE candidate_id IN (those 3) -> 0 rows
- candidates_safe view transitively excludes them
(Linda+Denver: __raw__candidates=159, candidates_safe=158)
- Restart: COUNT still 99997, 3 tombstones reload from disk
Reversibility: tombstones are reversible deletes, not destruction.
Power users can still query "__raw__{name}" to see deleted rows.
Phase 13 access control is what stops a non-admin from accessing
__raw__* tables.
Limits / follow-up:
- Physical compaction not yet integrated — Phase 8's compact_files
doesn't read tombstones during merge. Tombstoned rows are still
on disk until that integration ships.
- Phase 9 journald event emission for tombstones not wired —
tombstone records carry their own actor+reason+timestamp so the
audit trail is intact, but cross-referencing with the mutation
event log would help compliance reporting.
Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
Implements the llms3.com "AI-safe views" pattern: a named projection
that exposes only whitelisted columns, with optional row filter and
per-column redactions. AI agents (or Phase 13 roles) bind to the view;
they can never accidentally see PII even if they write raw SQL.
Schema (shared::types):
- AiView { name, base_dataset, columns: Vec<String>, row_filter,
column_redactions: HashMap<String, Redaction>, ... }
- Redaction enum: Null | Hash | Mask { keep_prefix, keep_suffix }
Catalog (catalogd::registry):
- put_view validates base dataset exists + columns non-empty
- Persists JSON at _catalog/views/{name}.json (sanitized name)
- rebuild() loads views alongside dataset manifests on startup
Query layer (queryd::context):
- build_context registers every AiView as a DataFusion view object
- Constructed SELECT applies whitelist projection, WHERE filter, and
redaction expressions per column
- Mask: substr(prefix) + repeat('*', mid_len) + substr(suffix)
- Hash: digest(value, 'sha256')
- Null: CAST(NULL AS VARCHAR) AS col
- DataFusion handles JOINs/aggregates over the view natively — it's a
real view, not a query rewrite
HTTP (catalogd::service):
- POST /catalog/views (create)
- GET /catalog/views (list)
- GET /catalog/views/{name} (full def)
- DELETE /catalog/views/{name}
End-to-end test on candidates (100K rows, 15 columns):
candidates_safe view:
columns: candidate_id, first_name, city, state, vertical,
skills, years_experience, status
row_filter: status != 'blocked'
redaction: candidate_id mask(prefix=3, suffix=2)
SELECT * FROM candidates_safe LIMIT 5
-> 8 columns only, candidate_id shown as "CAN******01"
(PII fields email/phone/last_name absent from result)
SELECT email FROM candidates_safe
-> fails (column not in projection)
SELECT email FROM candidates
-> succeeds (raw table still accessible by name —
Phase 13 access control is the gate, not the view itself)
Survives restart — view definitions reload from object storage.
Limits / not in MVP:
- View CANNOT shadow base table by name (DataFusion treats them as
separate identifiers; access control must restrict raw-table access)
- row_filter is treated as trusted SQL — operators must validate
before persisting; only authenticated admin path should call put_view
- Redaction expressions assume column is castable to VARCHAR; numeric
redactions could be misleading (a Hash on Int64 returns a hex string
that won't equi-join with another hash on the same value type)
Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
Implements the llms3.com-inspired pattern: embeddings refresh
asynchronously, decoupled from transactional row writes. New rows arrive,
ingest marks the vector index stale, a later refresh embeds only the
delta (doc_ids not already in the index).
Schema additions (DatasetManifest):
- last_embedded_at: Option<DateTime> - when the index was last refreshed
- embedding_stale_since: Option<DateTime> - set when data written, cleared on refresh
- embedding_refresh_policy: Option<RefreshPolicy> - Manual | OnAppend | Scheduled
Ingest paths (pipeline::ingest_file + pg_stream) call
registry.mark_embeddings_stale after writing. No-op if the dataset has
never been embedded — stale semantics only kick in once last_embedded_at
is set.
Refresh pipeline (vectord::refresh::refresh_index):
- Reads the dataset Parquet, extracts (doc_id, text) pairs
- Accepts Utf8 / Int32 / Int64 id columns (covers both CSV and pg schemas)
- Loads existing embeddings via EmbeddingCache (empty on first-time build)
- Filters to rows whose doc_id is NOT in the existing set
- Chunks (chunker::chunk_column), embeds via Ollama (batches of 32),
writes combined index, clears stale flag
Endpoints:
- POST /vectors/refresh/{dataset_name} - body {index_name, id_column,
text_column, chunk_size?, overlap?}
- GET /vectors/stale - lists datasets whose embedding_stale_since is set
End-to-end verified on threat_intel (knowledge_base.threat_intel):
- Initial refresh: 20 rows -> 20 chunks -> embedded in 2.1s,
last_embedded_at set
- Idempotent second refresh: 0 new docs -> 1.8ms (pure delta check)
- Re-ingest to 54 rows: mark_embeddings_stale fires -> stale_since set
- /vectors/stale surfaces threat_intel with timestamps + policy
- Delta refresh: 34 new docs embedded in 970ms (6x faster than full
re-embed); stale_cleared = true
Not in MVP scope:
- UPDATE semantics (same doc_id, different content) - would need
per-row content hashing
- OnAppend policy auto-trigger - just declares intent; actual scheduler
deferred
- Scheduler runtime - the Scheduled(cron) variant declares the intent so
operators can see which datasets expect what, but the cron itself is
separate
Per ADR-019: when a profile switches to vector_backend=Lance, this
refresh path benefits — Lance's native append replaces our "read all +
rewrite" Parquet rebuild pattern. Current MVP works well enough at
~500-5K rows to validate the architecture; Lance unblocks the 5M+ case.
Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
- DatasetManifest expanded: description, owner, sensitivity, columns,
lineage, freshness contract, tags, row_count
- All new fields use #[serde(default)] for backward compatibility
- PII auto-detection: scans column names for email, phone, SSN, salary,
address, DOB, medical terms — flags as PII/PHI/Financial
- Column-level metadata: name, type, sensitivity, is_pii flag
- Lineage tracking: source_system, source_file, ingest_job, timestamp
- Ingest pipeline auto-populates: PII scan, column meta, lineage, row count
- PATCH /catalog/datasets/by-name/{name}/metadata — update metadata
- Catalog responses now include all rich fields
- 25 unit tests passing (5 new PII detection tests)
Per ADR-013: datasets without metadata become mystery files.
This makes every ingested file self-describing from day one.
Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>