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.
38 KiB
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:
- Company domain (e.g., "acme.com") - used for Google OAuth
- Data source type: keboola / bigquery / csv
- Instance name (e.g., "Acme Data Analyst")
Step 2: Generate Configuration
- Copy
config/instance.yaml.exampletoconfig/instance.yaml - Fill in values from Step 1
- If Keboola: ask for Storage API token, stack URL, project ID
- Create
.envfromconfig/.env.template
Step 3: Register Tables
- Use the FastAPI admin API (
POST /api/admin/register-table, thenPUT /api/admin/registry/{id}for updates) or webapp UI to register tables - Tables are stored in DuckDB
table_registrywith source_type, bucket, source_table, query_mode - For migration from old format:
python scripts/migrate_registry_to_duckdb.py
Step 4: Docker Deployment
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:
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 (viaBqAccessfromconnectors/bigquery/access.py) and writes the result to/data/extracts/bigquery/data/<id>.parquet. Distributed via the same manifest +agnes pullflow as Keboola tables. Cost guardrail viadata_source.bigquery.max_bytes_per_materialize(default 10 GiB; set0to disable — YAMLnullfalls 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
# 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 sessionSessionEnd→agnes push --quiet— uploads session jsonl +CLAUDE.local.mdto 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:
agnes admin metrics import docs/metrics/
For AI agents analyzing data:
Before computing any business metric, look up the canonical definition:
agnes catalog --metrics— find the relevant metricagnes catalog --metrics --show revenue/mrr— read the SQL and business rules- 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 viaagnes pull). Query directly withagnes query "SELECT … FROM <table>". -
remote(typically BigQuery): the parquet does NOT exist on the laptop. You MUST either:agnes snapshot createa filtered subset → query the local snapshot, ORagnes query --remotefor one-shot server-side execution. Works on allquery_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). Directbq."<dataset>"."<table>"paths are registry-gated — unregistered paths return 403bq_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
--wherefor remote tables; otherwise add--limit. - ALWAYS run
--estimatefirst when:- You're not sure of the data shape
- The table has
partition_byorclustered_byset (peragnes schema) - The fetch could plausibly exceed 1 GB local bytes
- Reuse
agnes snapshot listbefore 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)(NOTINT)
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-infoto see total cache size.
When NOT to use agnes snapshot create
- Single aggregate on remote BASE TABLE (
SELECT COUNT(*) FROM remote): useagnes 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_largewithagnes snapshot createsuggestion. Pivot toagnes snapshot create <id> --where '<predicate>'if the cap is hit. - Throwaway exploration:
agnes query --remote "SELECT … FROM <registered_id>". Directbq."<dataset>"."<table>"paths are now registry-gated — register first or use the catalog id. - Cross-table JOIN with both tables remote: combine
agnes snapshot createfor one side +agnes query --remotefor 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) orPOST /api/marketplaces. - Scheduler calls
POST /api/marketplaces/sync-all(admin-only, authed viaSCHEDULER_API_TOKEN) atdaily 03:00UTC. Routing through HTTP keeps the app the sole writer tosystem.duckdb— the previous in-process call from the scheduler container raced the app's long-lived DB handle and 500-ed onCould 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) asAGNES_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.pyparses.claude-plugin/marketplace.jsonfrom the cloned repo and caches the plugin list inmarketplace_plugins(keyed by(marketplace_id, plugin_name)). src/marketplace.pyhandles clone/fetch/reset with token redaction in any surfaced error message.
Access control (v13)
Two layers, no role hierarchy. Full reference: docs/RBAC.md.
user_groups— named groups. Two seeded asis_system=TRUEat startup:Admin(god-mode short-circuit on every authorization check) andEveryone(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. Replacesplugin_accessfrom 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 withETag/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.mdfor the GCP setup checklist + thesecuritylabel gotcha) - Email: Email magic link (itsdangerous token)
- Desktop: JWT for API
RBAC
See Access control (v13) above and 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>-latestalias.
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:
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:
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 addspersonal_access_tokens, v7 addspersonal_access_tokens.last_used_ip, v8/v9 added the legacy internal_roles/role-grants tables, v10 addedview_ownershipfor 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 legacydataset_permissions,access_requeststables andusers.role,table_registry.is_publiccolumns — table access is now exclusively per-group viaresource_grants(resource_type='table'), v20 addssource_queryTEXT totable_registryto backquery_mode='materialized'(BigQuery scheduled-query parquet path), v21 addswelcome_templatesingleton table backing the Agent Setup Prompt admin override (/admin/agent-prompt), v22 reserves thesetup_bannertable — feature dropped mid-development; table retained for forward compatibility with already-migrated instances, v23 addsclaude_md_templatesingleton table backing the Agent Workspace Prompt admin override (/admin/workspace-prompt), v24 rewrites materialized BQsource_queryfrom DuckDB-flavorbq."ds"."t"to BQ-native`<project>.ds.t`so the new wrapping path accepts them; idempotent + warns when project unconfigured, v25 addsstore_entities+user_store_installs+user_plugin_optoutsbacking the flea-market and my-stack views (now served at/marketplace?tab=flea+/marketplace?tab=my; the original standalone/storeand/my-ai-stackpage routes were dropped post-v25) — the served marketplace is now(admin_granted ∖ opt_outs) ∪ store_installs, v26 unifies Keboolaquery_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; existinglocalKeboola rows are flipped, NULLsource_querymeans full-table export, v27 adds 7 columns totable_registryfor 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 toquery_mode='local'(via the Direct extract Edit-modal radio) to enable the new dispatcher. The pre-existingsync_strategycolumn (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). Theuser_plugin_optoutstable+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 addsmarketplace_plugins.created_at(per-plugin newest-first sort on /marketplace), backfilled from parentmarketplace_registry.registered_atso existing plugins get a sensible date until the next sync overwrites withCURRENT_TIMESTAMP., v29 addsstore_submissionstable backing flea-market upload guardrails (manifest + static-security + LLM-review verdicts) plusstore_entities.visibility_status(pending | approved | hidden) — entity visible in flea browse only whenvisibility_status='approved'. Existing rows backfilled to'approved'so live flea content stays visible., v30 addsstore_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_atflips on at purge time so detail page can render "purged on YYYY-MM-DD", v31 reshapesstore_submissions(drops legacy unique onentity_idso multiple submissions per entity work — re-uploads/rescans land as new rows; idempotent table rebuild), v32 addsstore_entities.{archived_at, archived_by}columns plus broadensvisibility_statusenum 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 dropsstore_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 ensuresidx_store_submissions_entityexists after the v33 column drop (DuckDB rebuilds the table sans index when dropping a column referenced by an index), v35 broadensstore_entities.visibility_statusenum to include lifecycle value beyond'archived'already added in v32 — column-rebuild migration to register the new value with DuckDB's CHECK constraint, soset_visibility('archived')works against the constrained column. Also marks the architectural cutover from denormalizing'archived'/'deleted'ontostore_submissions.statusto LEFT-JOINingstore_entitiesat 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 progressusers,audit_log: account state + audit trail. RBAC lives inuser_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_staterebuild_source(name): single source (used after Jira webhooks)- Thread-safe via
_rebuild_lock
Connector Pattern
- Keboola:
connectors/keboola/extractor.pyuses DuckDB Keboola extension, fallback toclient.py - BigQuery:
connectors/bigquery/extractor.pyuses DuckDB BQ extension (remote-only, no download) - Jira:
connectors/jira/webhook.py→incremental_transform.py→extract_init.pyupdates_meta connectors/keboola/client.py: legacy Keboola Storage API wrapper (kept as fallback)
Config Loading
config/loader.pyloadsinstance.yamlapp/instance_config.pyexposesget_data_source_type(),get_value()- Table config lives in DuckDB
table_registry(not markdown files)
Files NOT to modify (stable infrastructure)
connectors/jira/file_lock.py- Advisory file lockingconnectors/jira/transform.py- Core Jira transform logicservices/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
versioninpyproject.tomlto matchX.Y.Z. - Tag the merge commit as
vX.Y.Zand 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:
- Stop. Will this PR land alone in
[Unreleased](no other in-flight PRs queued behind it)? - If yes, the release-cut is REQUIRED in the same PR before merge. BEFORE pushing the final commit:
- Bump
pyproject.tomltoX.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.Zcommit on the same branch
- Bump
- THEN push, approve, enable auto-merge.
- After auto-merge fires: tag
vX.Y.Zagainst 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):
.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> -qfor area-scoped checks while iteratingpytest tests/test_X.py tests/test_Y.py -qfor 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.