agnes-the-ai-analyst/CLAUDE.md
ZdenekSrotyr 79b55b6ff3 remove agnes query --register-bq from client CLI
The flag ran RemoteQueryEngine in-process on the caller's machine and
required local BigQuery credentials (BIGQUERY_PROJECT + ADC). Analysts
don't have those, so calling --register-bq from an analyst workspace
surfaced as a confusing not_configured error chain ("Could not load
static instance.yaml" + "BigQuery project not configured"). An agent
following CLAUDE.md's hybrid-queries guidance would land in exactly
that trap.

The underlying engine was originally designed server-side (commit
d180b201, "Step 28: Remote query architecture"); the CLI port (commit
d605e7d9) silently assumed parity with the server. Server-side hybrid
already exists as an admin-only POST /api/query/hybrid endpoint
(app/api/query_hybrid.py) and is untouched here.

Analysts combining local + remote data now have two documented paths:
agnes snapshot create a filtered slice and join locally, or run the
join server-side via agnes query --remote. CLAUDE.md, the agent skill,
docs/DATA_SOURCES.md, and connectors.md updated accordingly.
2026-05-12 18:18:13 +02:00

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# AI Data Analyst
Open-source data distribution platform for AI analytical systems. Extracts data from sources into DuckDB, serves via FastAPI, and distributes parquets to analysts who use Claude Code for local analysis.
## First-Time Setup
When a user opens this project for the first time, guide them through interactive setup:
### Step 1: Gather Information
Ask the user for:
1. Company domain (e.g., "acme.com") - used for Google OAuth
2. Data source type: keboola / bigquery / csv
3. Instance name (e.g., "Acme Data Analyst")
### Step 2: Generate Configuration
1. Copy `config/instance.yaml.example` to `config/instance.yaml`
2. Fill in values from Step 1
3. If Keboola: ask for Storage API token, stack URL, project ID
4. Create `.env` from `config/.env.template`
### Step 3: Register Tables
1. Use the FastAPI admin API (`POST /api/admin/register-table`, then `PUT /api/admin/registry/{id}` for updates) or webapp UI to register tables
2. Tables are stored in DuckDB `table_registry` with source_type, bucket, source_table, query_mode
3. For migration from old format: `python scripts/migrate_registry_to_duckdb.py`
### Step 4: Docker Deployment
```bash
docker compose up # Start app + scheduler
docker compose --profile full up # Include telegram bot
# HTTPS mode — Caddy + corporate-CA certs at /data/state/certs
docker compose -f docker-compose.yml -f docker-compose.prod.yml -f docker-compose.tls.yml \
--profile tls up -d
```
See `docs/DEPLOYMENT.md`**TLS** for cert provisioning + `scripts/ops/agnes-tls-rotate.sh` (daily refetch from `TLS_FULLCHAIN_URL`, `SIGUSR1` reload on diff, no-op when unchanged). The infra repo's `startup.sh` installs this as a systemd timer automatically.
## Project Structure
```
├── src/ # Core engine
│ ├── db.py # DuckDB schema (system.duckdb, analytics.duckdb)
│ ├── orchestrator.py # SyncOrchestrator — ATTACHes extract.duckdb files
│ ├── repositories/ # DuckDB-backed CRUD (sync_state, table_registry, users, etc.)
│ ├── profiler.py # Data profiling
│ └── catalog_export.py # OpenMetadata catalog export
├── app/ # FastAPI application
│ ├── main.py # App setup, router registration
│ ├── api/ # REST API (sync, data, catalog, admin, auth)
│ └── web/ # HTML dashboard routes
├── connectors/ # Data source connectors (extract.duckdb contract)
│ ├── keboola/ # Keboola: extractor.py (DuckDB extension) + client.py (fallback)
│ ├── bigquery/ # BigQuery: extractor.py (remote-only via DuckDB BQ extension)
│ └── jira/ # Jira: webhook + incremental parquet → extract.duckdb
├── cli/ # CLI tool (`agnes pull`, `agnes query`, `agnes admin`)
├── app/auth/ # Authentication (FastAPI-based providers)
├── services/ # Standalone services (scheduler, telegram_bot, ws_gateway, etc.)
├── server/ # Legacy deployment infrastructure
├── scripts/ # Utility + migration scripts
├── config/ # Configuration templates (instance.yaml.example)
├── docs/ # Documentation + metric YAML definitions
└── tests/ # Test suite (633 tests)
```
## Architecture: extract.duckdb Contract
Every data source produces the same output:
```
/data/extracts/{source_name}/
├── extract.duckdb ← _meta table + views
└── data/ ← parquet files (local sources only)
```
### Remote table support (`_remote_attach`)
Extractors with remote/passthrough tables (query_mode='remote') include a `_remote_attach` table
in extract.duckdb so the orchestrator can re-ATTACH the external DuckDB extension at query time:
```sql
CREATE TABLE _remote_attach (
alias VARCHAR, -- DuckDB alias used in views, e.g. 'kbc'
extension VARCHAR, -- Extension name, e.g. 'keboola'
url VARCHAR, -- Connection URL
token_env VARCHAR -- Env-var name holding the auth token, OR empty for
-- extensions with built-in auth (e.g. BigQuery uses the
-- GCE metadata server — see `connectors/bigquery/auth.py`).
);
```
The orchestrator reads this table, installs/loads the extension, fetches the token
(via `token_env` lookup, or via the extension-specific auth path when `token_env=''`),
creates a session-scoped DuckDB SECRET when the extension requires one (BigQuery), and
ATTACHes the external source. Views referencing `kbc."bucket"."table"` then resolve correctly.
This mechanism is generic — any connector can plug in.
The SyncOrchestrator scans `/data/extracts/*/extract.duckdb`, ATTACHes each into master `analytics.duckdb`, and creates views.
```
┌──────────────┐ ┌──────────────┐ ┌──────────────┐
│ Keboola │ │ BigQuery │ │ Jira │
│ extractor │ │ extractor │ │ webhooks │
│ (DuckDB ext) │ │ (remote BQ) │ │ (incremental)│
└──────┬───────┘ └──────┬───────┘ └──────┬───────┘
│ │ │
▼ ▼ ▼
extract.duckdb extract.duckdb extract.duckdb
+ data/*.parquet (views → BQ) + data/*.parquet
│ │ │
└─────────────────┼─────────────────┘
SyncOrchestrator.rebuild()
ATTACH → master views in analytics.duckdb
┌──────────┼──────────┐
▼ ▼ ▼
FastAPI CLI
(serve) (agnes pull)
```
Source modes:
- **Batch pull** (Keboola, `query_mode='local'`): DuckDB extension downloads to parquet, scheduled
- **Remote attach** (BigQuery, `query_mode='remote'`): DuckDB BQ extension, no download, queries go to BQ
- **Materialized SQL** (BigQuery, `query_mode='materialized'`): scheduler runs admin-registered SQL through DuckDB BQ extension (via `BqAccess` from `connectors/bigquery/access.py`) and writes the result to `/data/extracts/bigquery/data/<id>.parquet`. Distributed via the same manifest + `agnes pull` flow as Keboola tables. Cost guardrail via `data_source.bigquery.max_bytes_per_materialize` (default 10 GiB; set `0` to disable — YAML `null` falls through to the default).
- **Real-time push** (Jira): Webhooks update parquets incrementally
## Configuration
Instance-specific config: `config/instance.yaml` (see example).
Environment variables: `.env` (never committed).
Table definitions: DuckDB `table_registry` table in `system.duckdb`.
## Development
```bash
# Setup
python3 -m venv .venv && source .venv/bin/activate
uv pip install ".[dev]"
# Run FastAPI locally
uvicorn app.main:app --reload
# Run tests
pytest tests/ -v
# Trigger sync manually
curl -X POST http://localhost:8000/api/sync/trigger
# Docker
docker compose up
```
### Local sync & Claude Code hooks
`agnes pull` is the canonical analyst-side distribution path: pulls the RBAC-filtered manifest from the server, downloads parquets whose MD5 changed (skipping `query_mode='remote'` rows), rebuilds local DuckDB views over them. `agnes push` mirrors it for the upload direction (sessions, CLAUDE.local.md).
`agnes init` writes two hooks into `<workspace>/.claude/settings.json`:
- `SessionStart``agnes pull --quiet` — pulls fresh parquets at the start of every Claude Code session
- `SessionEnd``agnes push --quiet` — uploads session jsonl + `CLAUDE.local.md` to the server
Both pass `--quiet` so they don't pollute Claude Code stdout, and trail with `|| true` so a server outage never blocks a session. Workspace-level (not user-home) so the hooks fire only when Claude Code opens this analyst workspace, not in unrelated sessions on the same machine.
Admin RBAC for auto-sync: `query_mode IN ('local', 'materialized')` plus a `resource_grants` row for one of the analyst's groups → table appears in their manifest → `agnes pull` downloads it. No per-user sync config; the admin layer is the single source of truth.
## Business Metrics
Standardized metric definitions live in DuckDB (`metric_definitions` table). Import starter pack:
```bash
agnes admin metrics import docs/metrics/
```
### For AI agents analyzing data:
Before computing any business metric, look up the canonical definition:
1. `agnes catalog --metrics` — find the relevant metric
2. `agnes catalog --metrics --show revenue/mrr` — read the SQL and business rules
3. Use the SQL from the metric definition, adapt to the specific question
Never invent metric calculations — always use the canonical definitions.
## Querying Agnes data — agent rails
When asked about ANY data in Agnes, follow this protocol.
### Discovery first
Before writing ANY query against a table, run:
agnes catalog --json | jq <filter> # know what's available
agnes schema <table> # learn columns + types
agnes describe <table> -n 5 # see real values for shape
NEVER write `SELECT * FROM <table>` blindly. For local-mode tables it's
wasteful; for remote-mode tables it can blow up at 225M rows.
### Choose the right tool
Tables in `agnes catalog` have a `query_mode`:
- **`local`**: data is on the laptop as parquet (synced via `agnes pull`).
Query directly with `agnes query "SELECT … FROM <table>"`.
- **`remote`** (typically BigQuery): the parquet does NOT exist on the laptop.
You MUST either:
1. **`agnes snapshot create`** a filtered subset → query the local snapshot, OR
2. **`agnes query --remote`** for one-shot server-side execution. Works on
all `query_mode='remote'` rows regardless of upstream BQ entity type
(BASE TABLE → Storage Read API with predicate pushdown; VIEW /
MATERIALIZED_VIEW → BQ jobs API, no pushdown). Cost-guarded by a
5 GiB scan cap (configurable in /admin/server-config). Direct
`bq."<dataset>"."<table>"` paths are registry-gated — unregistered
paths return 403 `bq_path_not_registered`.
### `agnes snapshot create` workflow (preferred for remote tables)
# 1. estimate first
agnes snapshot create web_sessions_example \
--select event_date,country_code,session_id \
--where "event_date >= DATE_SUB(CURRENT_DATE(), INTERVAL 30 DAY)
AND country_code = 'CZ'" \
--estimate
# → "estimated_scan_bytes: 4.2 GB, result: ~250k rows, 12 MB locally"
# 2. if reasonable, fetch
agnes snapshot create web_sessions_example ... --as cz_recent
# 3. query the local snapshot
agnes query "SELECT event_date, COUNT(*) FROM cz_recent GROUP BY 1 ORDER BY 1"
### Heuristics for `agnes snapshot create`
- ALWAYS list specific columns in `--select`. Avoid implicit SELECT *.
- ALWAYS include a `--where` for remote tables; otherwise add `--limit`.
- ALWAYS run `--estimate` first when:
- You're not sure of the data shape
- The table has `partition_by` or `clustered_by` set (per `agnes schema`)
- The fetch could plausibly exceed 1 GB local bytes
- Reuse `agnes snapshot list` before fetching — if a snapshot covers your
query already, skip the fetch.
### BigQuery SQL flavor for `--where`
For `source_type=bigquery` (per `agnes catalog`):
- Date literal: `DATE '2026-01-01'` (NOT `'2026-01-01'::date`)
- Timestamp literal: `TIMESTAMP '2026-01-01 00:00:00 UTC'`
- Now: `CURRENT_DATE()`, `CURRENT_TIMESTAMP()`
- Date arithmetic: `DATE_SUB(CURRENT_DATE(), INTERVAL 30 DAY)`
- Regex: `REGEXP_CONTAINS(col, r'pattern')` (raw string!)
- NULL: `col IS NOT NULL` (standard)
- Cast: `CAST(x AS INT64)` (NOT `INT`)
For `source_type=keboola` / `source_type=jira` (local), use DuckDB SQL flavor
in your `agnes query` calls — there's no `--where` on local since fetch is implicit.
### Snapshot hygiene
- Reuse snapshots across questions in the same conversation.
- Use descriptive names: `cz_recent`, `orders_q1_us`, `sessions_today`.
- Drop with `agnes snapshot drop <name>` when done with a topic.
- `agnes disk-info` to see total cache size.
### When NOT to use `agnes snapshot create`
- Single aggregate on remote BASE TABLE (`SELECT COUNT(*) FROM remote`):
use `agnes query --remote "SELECT COUNT(*) FROM web_sessions_example"`.
Storage Read API pushes the COUNT into BQ — cheap, no materialization.
- Single aggregate on remote VIEW/MATERIALIZED_VIEW: same syntax works
(#160), but the BQ jobs API can't push WHERE/COUNT into the view body.
Cost guardrail (default 5 GiB) catches expensive scans → 400
`remote_scan_too_large` with `agnes snapshot create` suggestion. Pivot to
`agnes snapshot create <id> --where '<predicate>'` if the cap is hit.
- Throwaway exploration: `agnes query --remote "SELECT … FROM <registered_id>"`.
Direct `bq."<dataset>"."<table>"` paths are now registry-gated — register
first or use the catalog id.
- Cross-table JOIN with both tables remote: combine `agnes snapshot create` for one
side + `agnes query --remote` for the other; full cross-remote JOIN
requires more thought (see #101 for design space).
## Marketplace Repositories
Admin-managed git repos cloned nightly to `${DATA_DIR}/marketplaces/<slug>/`
so FastAPI can read their contents from disk.
- Register via `/admin/marketplaces` (admin UI) or `POST /api/marketplaces`.
- Scheduler calls `POST /api/marketplaces/sync-all` (admin-only, authed via `SCHEDULER_API_TOKEN`) at `daily 03:00` UTC. Routing through HTTP keeps the app the sole writer to `system.duckdb` — the previous in-process call from the scheduler container raced the app's long-lived DB handle and 500-ed on `Could not set lock on file`.
- Manual re-sync from the UI ("Sync now") hits `POST /api/marketplaces/{id}/sync`.
- PATs for private repos persist to `${DATA_DIR}/state/.env_overlay` (chmod 600) as `AGNES_MARKETPLACE_<SLUG>_TOKEN`. DuckDB stores only the env-var name (`token_env`), never the secret.
- Registry lives in DuckDB table `marketplace_registry` (schema v9).
- After each successful sync, `src/marketplace.py` parses `.claude-plugin/marketplace.json`
from the cloned repo and caches the plugin list in `marketplace_plugins`
(keyed by `(marketplace_id, plugin_name)`).
- `src/marketplace.py` handles clone/fetch/reset with token redaction in any surfaced error message.
## Access control (v13)
Two layers, no role hierarchy. Full reference: [`docs/RBAC.md`](docs/RBAC.md).
- `user_groups` — named groups. Two seeded as `is_system=TRUE` at startup:
`Admin` (god-mode short-circuit on every authorization check) and
`Everyone` (auto-membership for every user).
- `user_group_members``(user_id, group_id, source)`. `source ∈
{admin, google_sync, system_seed}` so each writer only manipulates its own
rows; Google's nightly DELETE+INSERT does not clobber admin-added members.
- `resource_grants` — generic `(group, resource_type, resource_id)` triple.
Replaces `plugin_access` from v12; the same shape now covers any future
entity-scoped grant (datasets, knowledge categories, …).
Resource types are an `app.resource_types.ResourceType` `StrEnum` paired with
a `ResourceTypeSpec` registered in `RESOURCE_TYPES` — adding a new one is one
enum member, one `list_blocks(conn)` delegate (projects domain tables into the
`(block → items)` shape the /admin/access tree renders), and one spec entry.
No DB migration, no second wiring step. Endpoints gate with either
`require_admin` (app-level) or `require_resource_access(ResourceType.X,
"{path}")` (entity-level), both from `app.auth.access`.
Admin UI: `/admin/access`. CLI: `agnes admin group {list,create,delete,members,
add-member,remove-member}` and `agnes admin grant {list,create,delete}`.
## Claude Code marketplace endpoint
Agnes serves a single aggregated Claude Code marketplace over two channels,
both gated by PAT auth and filtered per caller:
- `GET /marketplace.zip` — deterministic ZIP download with `ETag` /
`If-None-Match` (304 when content unchanged). Consumed by a client-side
SessionStart hook.
- `GET /marketplace.git/*` — git smart-HTTP (dulwich via a2wsgi). Registered
in Claude Code once, then Claude Code owns the clone/fetch cycle.
Auth: ZIP uses `Authorization: Bearer <PAT>`. Git uses HTTP Basic where the
password field carries the PAT (`https://x:<PAT>@host/marketplace.git/`) —
git CLI does not speak Bearer.
Content: filtered via `src.marketplace_filter.resolve_allowed_plugins` which
joins `resource_grants ↔ marketplace_plugins` (matching
`mp.marketplace_id || '/' || mp.name = rg.resource_id`) scoped to the
caller's `user_group_members`. Admin is treated as a regular group here —
no god-mode shortcut for the marketplace feed, so admins curate their own
view by granting plugins to the Admin group (or any group they belong to).
On-disk layout in the served ZIP / git tree uses a slug-prefixed directory
(`plugins/<slug>-<plugin>/`) so two marketplaces shipping a same-named
plugin don't overwrite each other's files. The synth marketplace.json's
`name` field, however, is the plugin's authoritative name from its own
`.claude-plugin/plugin.json` (with a fallback to the upstream
marketplace.json `name`) — Claude Code's `/plugin` UI resolves a loaded
plugin back to its catalog entry by `plugin.json` name, so the catalog
entry's `name` must match. Same-named plugins from two upstream
marketplaces therefore collide in the catalog by design; admin RBAC
(which grants survive the filter) decides which one wins, identical to
how Claude Code behaves when a user adds two upstream marketplaces with
overlapping plugin names directly. `/marketplace/info` exposes both
`name` and `prefixed_name` so operators can disambiguate.
Cache: content-addressed bare repos at `${DATA_DIR}/marketplaces/git-cache/`
keyed by sha256(filtered content). Two users with the same RBAC view share
one repo; content change → new repo next to the old one. No TTL / prune yet.
User registration inside Claude Code:
```
# ZIP channel (typically via a SessionStart hook that unpacks into ./marketplace/)
curl -H "Authorization: Bearer $AGNES_PAT" https://agnes.example.com/marketplace.zip
# Git channel — one-time registration. Two paths; pick the first that works.
# (a) Direct registration — preferred when it works.
/plugin marketplace add https://x:$AGNES_PAT@agnes.example.com/marketplace.git/
# (b) Two-step fallback — required when (a) fails. Bun-compiled `claude` on
# macOS / Windows ignores the OS trust store and CA env vars on the
# marketplace HTTPS path, so direct add can fail with TLS errors against
# a private-CA Agnes instance even when system tools work fine. System
# `git` honors GIT_SSL_CAINFO + the OS trust store, so cloning manually
# and pointing Claude Code at the local clone sidesteps the Bun TLS path
# entirely.
git clone https://x:$AGNES_PAT@agnes.example.com/marketplace.git/ ~/agnes-marketplace
claude plugin marketplace add ~/agnes-marketplace
# Optional hardening: strip the PAT from the cloned repo's origin so it
# doesn't sit in plaintext at ~/agnes-marketplace/.git/config — re-clone via
# the dashboard's setup flow when the PAT rotates.
git -C ~/agnes-marketplace remote set-url origin https://agnes.example.com/marketplace.git/
```
The dashboard-served setup payload (see `app/web/setup_instructions.py`) already
branches between (a) and (b) automatically based on platform when a private CA
is in play. The block above is the manual equivalent for users registering
outside that flow (e.g. operators bringing up a new instance, or
analysts whose first attempt failed and need to retry by hand).
## Hybrid Queries (BigQuery + Local)
Server-side only. Admins can POST `{sql, register_bq: {alias: bq_sql}}` to
`/api/query/hybrid` (see `app/api/query_hybrid.py`), which runs the BQ
sub-queries server-side (where BQ credentials live) and joins the result
against the server's local parquet views in a single DuckDB session.
There is no analyst-facing CLI flag for this — analysts who need to combine
a local table with a remote one should `agnes snapshot create` a filtered
subset of the remote table and `agnes query` the join locally, or run the
join server-side via `agnes query --remote`. The earlier `agnes query
--register-bq` flag ran in-process on the caller's machine and required
local BigQuery credentials that analysts don't have; it was removed.
## Extensibility
### Data Sources (extract.duckdb contract)
New connector = `connectors/<name>/extractor.py` producing `extract.duckdb + data/`.
Must create `_meta` table with columns: table_name, description, rows, size_bytes, extracted_at, query_mode.
Orchestrator ATTACHes it automatically.
### Authentication
Auth providers in `app/auth/` (FastAPI-based):
- **Google**: OAuth via Google (Workspace group memberships pulled at sign-in — see `docs/auth-groups.md` for the GCP setup checklist + the `security` label gotcha)
- **Email**: Email magic link (itsdangerous token)
- **Desktop**: JWT for API
### RBAC
See **[Access control (v13)](#access-control-v13)** above and [`docs/RBAC.md`](docs/RBAC.md) for the full reference. TL;DR for module authors: gate endpoints with `Depends(require_admin)` for app-level mutations or `Depends(require_resource_access(ResourceType.X, "{path}"))` for entity-scoped grants. Add a new resource type by extending the `ResourceType` `StrEnum` and registering a `ResourceTypeSpec` (with a `list_blocks` projection delegate) in `app/resource_types.py`.
## Release & deploy workflows
Two separate release.yml-style workflows produce GHCR images. Pick the one that matches what you're shipping.
### `release.yml` — auto-build on every push
Runs on **every** push to **every** branch.
- Push to `main``:stable`, `:stable-YYYY.MM.N` (CalVer).
- Push to non-main `<prefix>/<branch>``:dev`, `:dev-YYYY.MM.N`, `:dev-<branch-slug>`, and (when prefix isn't a Git Flow convention) `:dev-<prefix>-latest` alias.
VMs that pin to a floating tag (`:dev`, `:dev-<prefix>-latest`) auto-upgrade within ~5 min via the cron in `agnes-auto-upgrade.sh`. Convenient for per-developer dev VMs; **footgun for shared dev VMs** (last pusher wins, regardless of who).
### `keboola-deploy.yml` — tag-triggered, explicit deploy only
Runs **only** on git tags matching `keboola-deploy-*`. Publishes:
- `:keboola-deploy-<git-tag-suffix>` — immutable, tied to the exact commit
- `:keboola-deploy-latest` — floating alias the consumer pins to
**Operator workflow:**
```bash
git checkout <commit-or-branch>
git tag keboola-deploy-<descriptive-name>
git push origin keboola-deploy-<descriptive-name>
# → workflow builds + publishes both tags
# → VM cron picks up :keboola-deploy-latest within ~5 min
# → manual cron trigger (skip the wait): sudo /usr/local/bin/agnes-auto-upgrade.sh on the VM
```
Use this when the consumer (e.g. a customer dev VM) needs **deploy-when-I-decide** semantics — no surprise rollouts from upstream branch pushes by other contributors. The infra repo pins `image_tag = "keboola-deploy-latest"` on the relevant VM.
### Module versioning
The customer-instance Terraform module under `infra/modules/customer-instance/` is published as `infra-vMAJOR.MINOR.PATCH` git tags (separate from app CalVer tags). Bump on any module-API change; downstream infra repos pin to the tag in their `source = "github.com/keboola/agnes-the-ai-analyst//infra/modules/customer-instance?ref=infra-v1.X.Y"`.
After merging a module change to `main`:
```bash
git tag infra-vX.Y.Z origin/main
git push origin infra-vX.Y.Z
```
### Replacing a VM after a startup-script change
Module sets `lifecycle { ignore_changes = [metadata_startup_script] }` on `google_compute_instance.vm` so normal `terraform apply` doesn't churn running VMs. To propagate a startup-script update, trigger the consumer's apply workflow manually with the VM resource address — typical workflow_dispatch input is `recreate_targets='module.agnes.google_compute_instance.vm["<vm-name>"]'`.
## Key Implementation Details
### DuckDB Schema (src/db.py)
- Schema v35 with auto-migration v1→…→v35 (v5 adds `users.active`, v6 adds `personal_access_tokens`, v7 adds `personal_access_tokens.last_used_ip`, v8/v9 added the legacy internal_roles/role-grants tables, v10 added `view_ownership` for cross-connector view-name collision detection (issue #81 Group C), v11 added marketplace_registry + marketplace_plugins + user_groups + plugin_access, v12 added users.groups JSON + user_groups.is_system, **v13 replaces internal_roles/group_mappings/user_role_grants/plugin_access with user_group_members + resource_grants and drops users.groups JSON**, v14 adds FK constraints on user_group_members + resource_grants after orphan cleanup, v15 adds knowledge_items context-engineering columns + contradictions + session_extraction_state, v16 adds verification_evidence, v17 adds knowledge_item_relations, v18 drops stranded non-google memberships from google-managed groups, **v19 drops legacy `dataset_permissions`, `access_requests` tables and `users.role`, `table_registry.is_public` columns — table access is now exclusively per-group via `resource_grants(resource_type='table')`**, **v20 adds `source_query` TEXT to `table_registry` to back `query_mode='materialized'` (BigQuery scheduled-query parquet path)**, **v21 adds `welcome_template` singleton table backing the Agent Setup Prompt admin override (`/admin/agent-prompt`)**, **v22 reserves the `setup_banner` table — feature dropped mid-development; table retained for forward compatibility with already-migrated instances**, **v23 adds `claude_md_template` singleton table backing the Agent Workspace Prompt admin override (`/admin/workspace-prompt`)**, **v24 rewrites materialized BQ `source_query` from DuckDB-flavor `bq."ds"."t"` to BQ-native `` `<project>.ds.t` `` so the new wrapping path accepts them; idempotent + warns when project unconfigured**, **v25 adds `store_entities` + `user_store_installs` + `user_plugin_optouts` backing the flea-market and my-stack views (now served at `/marketplace?tab=flea` + `/marketplace?tab=my`; the original standalone `/store` and `/my-ai-stack` page routes were dropped post-v25) — the served marketplace is now `(admin_granted opt_outs) store_installs`**, **v26 unifies Keboola `query_mode='local'` rows into `'materialized'` — the old local mode (DuckDB Keboola extension's COPY through QueryService) is replaced by the new Storage API export-async path which works regardless of project flags; existing `local` Keboola rows are flipped, NULL `source_query` means full-table export**, **v27 adds 7 columns to `table_registry` for Keboola per-table sync-strategy support: `incremental_window_days`, `max_history_days`, `incremental_column`, `where_filters`, `partition_by`, `partition_granularity`, `initial_load_chunk_days`. Layered on top of v26: admins can opt specific tables back to `query_mode='local'` (via the Direct extract Edit-modal radio) to enable the new dispatcher. The pre-existing `sync_strategy` column (default `'full_refresh'`) is reused — pre-v27 it was inert catalog metadata; post-v27 the Keboola extractor dispatches off it (`full_refresh` | `incremental` | `partitioned`). All new columns NULL on existing rows; meaningful only when paired with the matching strategy.**, **v28 introduces explicit-install (Model B) for curated marketplace plugins — served set flips from `(rbac user_plugin_optouts)` to `(rbac ∩ subscriptions)`. The `user_plugin_optouts` table+columns are reused (no DDL rename) so existing operator instances skip migration churn; row PRESENCE flips meaning from "excluded" to "subscribed", and the migration wipes existing rows so the inverted reading starts from a clean baseline. Also adds `marketplace_plugins.created_at` (per-plugin newest-first sort on /marketplace), backfilled from parent `marketplace_registry.registered_at` so existing plugins get a sensible date until the next sync overwrites with `CURRENT_TIMESTAMP`.**, **v29 adds `store_submissions` table backing flea-market upload guardrails (manifest + static-security + LLM-review verdicts) plus `store_entities.visibility_status` (`pending | approved | hidden`) — entity visible in flea browse only when `visibility_status='approved'`. Existing rows backfilled to `'approved'` so live flea content stays visible.**, **v30 adds `store_submissions.{file_size, bundle_sha256, bundle_purged_at}` so blocked-inline bundles persist for forensics + admin rescan/override (instead of the prior rmtree-on-reject); SHA256 survives the 30-day TTL purge, `bundle_purged_at` flips on at purge time so detail page can render "purged on YYYY-MM-DD"**, **v31 reshapes `store_submissions` (drops legacy unique on `entity_id` so multiple submissions per entity work — re-uploads/rescans land as new rows; idempotent table rebuild)**, **v32 adds `store_entities.{archived_at, archived_by}` columns plus broadens `visibility_status` enum to include `'archived'` for soft-delete; `DELETE /api/store/entities/{id}` is now soft (archive) by default, hard delete moves to `?hard=true` (admin-only)**, **v33 drops `store_submissions.retry_count` — counter mixed automatic LLM retries (capped) with admin-initiated rescans (unbounded), no useful semantics; admin Rescan button + audit_log carry the operational signal**, **v34 ensures `idx_store_submissions_entity` exists after the v33 column drop (DuckDB rebuilds the table sans index when dropping a column referenced by an index)**, **v35 broadens `store_entities.visibility_status` enum to include lifecycle value beyond `'archived'` already added in v32 — column-rebuild migration to register the new value with DuckDB's CHECK constraint, so `set_visibility('archived')` works against the constrained column. Also marks the architectural cutover from denormalizing `'archived'`/`'deleted'` onto `store_submissions.status` to LEFT-JOINing `store_entities` at query time: verdict (sub.status) becomes immutable forensic record, lifecycle (entity.visibility_status) becomes the live source of truth that the admin queue's Archived chip filters by.** — see CHANGELOG and docs/RBAC.md)
- `table_registry`: id, name, source_type, bucket, source_table, query_mode, sync_schedule, etc.
- `sync_state`, `sync_history`: track extraction progress
- `users`, `audit_log`: account state + audit trail. RBAC lives in `user_groups` + `user_group_members` + `resource_grants`.
- System DB at `{DATA_DIR}/state/system.duckdb`
- Analytics DB at `{DATA_DIR}/analytics/server.duckdb`
### SyncOrchestrator (src/orchestrator.py)
- `rebuild()`: scans extracts dir, ATTACHes all, creates master views, updates sync_state
- `rebuild_source(name)`: single source (used after Jira webhooks)
- Thread-safe via `_rebuild_lock`
### Connector Pattern
- **Keboola**: `connectors/keboola/extractor.py` uses DuckDB Keboola extension, fallback to `client.py`
- **BigQuery**: `connectors/bigquery/extractor.py` uses DuckDB BQ extension (remote-only, no download)
- **Jira**: `connectors/jira/webhook.py``incremental_transform.py``extract_init.py` updates `_meta`
- `connectors/keboola/client.py`: legacy Keboola Storage API wrapper (kept as fallback)
### Config Loading
1. `config/loader.py` loads `instance.yaml`
2. `app/instance_config.py` exposes `get_data_source_type()`, `get_value()`
3. Table config lives in DuckDB `table_registry` (not markdown files)
### Files NOT to modify (stable infrastructure)
- `connectors/jira/file_lock.py` - Advisory file locking
- `connectors/jira/transform.py` - Core Jira transform logic
- `services/ws_gateway/` - WebSocket notification gateway
## Vendor-agnostic OSS — no customer-specific content
This repo is the public OSS distribution. **Nothing customer-specific belongs in code, configuration defaults, comments, docs, commit messages, PR titles, or PR bodies.** That includes:
- Specific deployments or brands (private VM names, internal product brands, organization names that aren't already public sponsors).
- Cloud project IDs, internal hostnames, runbook paths from a particular install (`/opt/<deployment>`, `<host>.<internal-domain>`, `prj-<org>-…`, internal SA emails).
- Cross-references to private repos (`<private-org>/<private-repo>#NN`). Describe the integration in generic terms or link to public examples instead.
When you motivate a change, frame it abstractly ("behind a TLS-terminating reverse proxy", "in containerized deploys") rather than naming a specific operator. When you show examples, use placeholders (`example.com`, `<your-host>`, `<install-dir>`). When config has reasonable defaults pulled from one deployment's habits, generalize them or surface them as documented examples — not hard-coded assumptions.
Customer-specific automation, hostnames, and identities live in private infra repos that *consume* this OSS. The OSS describes capabilities, defaults, and configuration knobs — not how a specific operator wired them up.
## Changelog discipline — non-negotiable
**Every PR that adds, removes, or changes user-visible behavior MUST update `CHANGELOG.md` in the same PR.** No exceptions, no follow-ups, no "I'll do it after merge". User-visible = anything an operator, end-user, or downstream integrator can observe: CLI flags / output / exit codes, REST endpoints / payloads / status codes, web UI, `instance.yaml` schema, env vars, `extract.duckdb` contract, Docker / compose / Caddyfile knobs, default behaviors, breaking changes, security fixes.
**How:**
- Add a bullet under the topmost `## [Unreleased]` heading (create one if missing — it sits above the latest released version).
- Group by `### Added` / `### Changed` / `### Fixed` / `### Removed` / `### Internal` (Keep-a-Changelog sections).
- Mark breaking changes with `**BREAKING**` at the start of the bullet — operators grep for that string before bumping the pin.
- Reference the relevant doc/runbook if one exists (e.g. `see docs/auth-groups.md`), don't restate it.
- Internal-only changes (refactors, test additions, dependency bumps without behavior change) go under `### Internal` — still log them, just keep them terse.
**When you cut a release:**
- Rename `## [Unreleased]``## [X.Y.Z] — YYYY-MM-DD`.
- Append a new empty `## [Unreleased]` section at the top so the next PR has somewhere to land.
- Bump `version` in `pyproject.toml` to match `X.Y.Z`.
- Tag the merge commit as `vX.Y.Z` and push the tag.
**If you find yourself opening a PR without a CHANGELOG entry, stop and add one before requesting review.** Reviewers should bounce PRs that touch user-visible behavior without a changelog update — same way they'd bounce a PR with no test changes for new logic.
## Release-cut belongs to the PR — non-negotiable
**The version bump + CHANGELOG rename + new empty `[Unreleased]` are the LAST commit on the PR that earned the version. Never a standalone follow-up PR.**
When a PR lands the only `[Unreleased]` content (or is the last in a queue of in-flight feature PRs), the release-cut MUST ship as part of the same merge. Standalone release-cut PRs add review-overhead PRs to history with no behavior change of their own and pollute `git log` with the worst kind of churn — bookkeeping commits separated from the work that earned them.
**Mandatory checklist before approving / enabling auto-merge on ANY PR:**
1. **Stop.** Will this PR land alone in `[Unreleased]` (no other in-flight PRs queued behind it)?
2. **If yes**, the release-cut is REQUIRED in the same PR before merge. BEFORE pushing the final commit:
- Bump `pyproject.toml` to `X.Y.Z`
- Rename `## [Unreleased]``## [X.Y.Z] — YYYY-MM-DD`, add a new empty `## [Unreleased]` on top
- Either squash these into the consolidation commit OR add as a separate `release: X.Y.Z` commit on the same branch
3. **THEN** push, approve, enable auto-merge.
4. After auto-merge fires: tag `vX.Y.Z` against the merge commit + create a GitHub Release. Done — one PR, one merge, one release.
**Failure mode to avoid:** enabling auto-merge on the feature PR thinking "I'll add the release-cut after." Auto-merge fires faster than the second commit lands. The window closes; the only fix is a standalone release-cut PR — exactly what this rule prohibits.
**Acceptable standalone release-cut** (rare): only when `[Unreleased]` accumulated bullets from MULTIPLE already-merged PRs AND no further behavior-change PR is queued — i.e. the cut is the only outstanding work and there's no PR to attach it to.
## Run tests before every push — non-negotiable
**Before `git push`, run the full pytest suite locally.** CI runs the same command (`.github/workflows/ci.yml:29` → `pytest tests/ -v --tb=short -n auto`); a failure that surfaces in CI was discoverable in 90 seconds locally. Pushing first and watching CI fail wastes operator time, slows the PR, and trains everyone to ignore CI badges.
**Command (matches CI):**
```bash
.venv/bin/pytest tests/ --tb=short -n auto -q
```
`-n auto` parallelizes across CPU cores; the suite runs in ~90s on a modern laptop. Local-only env (no `instance.yaml`, dev defaults) is fine — fixtures use `fresh_db` per-test isolation.
**When tests fail:**
- **Failures in code you touched** → fix before pushing. Update test expectations when the behavior change is intentional and documented (e.g. template restructure that changes assertion strings).
- **Failures unrelated to your diff** → confirm with `git stash && pytest <failing-test> && git stash pop`. If they reproduce on a clean branch, they are pre-existing — note them in the PR body but don't block your push on them. Don't silently skip; flag them so someone owns the fix.
- **Flaky tests** → re-run once. Two consecutive failures = real failure, fix or quarantine with a tracked issue.
**Smoke shortcuts (when full suite is too slow during iteration):**
- `pytest tests/ -k <pattern> -q` for area-scoped checks while iterating
- `pytest tests/test_X.py tests/test_Y.py -q` for the modules you touched
But the **full** `pytest tests/ -n auto` runs once before push. No exceptions.
If a CHANGELOG entry, doc edit, or pure-formatting commit genuinely doesn't touch any code path the tests exercise, you can skip the full run — but be honest with yourself about whether that's actually the case.
## Git Commits & Pull Requests
- Keep commit messages clean and concise
- Do not include AI attribution in commits or PRs
- Before opening a PR, scan the diff and the PR body for the customer-specific tokens listed above (`grep -niE '<token1>|<token2>|...'`). If anything matches, generalize or remove it.