Commit graph

14 commits

Author SHA1 Message Date
Petr
c5c24cb45b Implement OpenMetadata catalog integration (Phase 1)
Add OpenMetadata REST API connector and enricher to merge table/column metadata
from OpenMetadata catalog at sync and query time.

Changes:
- connectors/openmetadata/client.py: HTTP client for OM API
- connectors/openmetadata/enricher.py: Data enrichment with TTL cache
- tests/test_openmetadata_*: Unit tests for client and enricher
- src/config.py: Add catalog_fqn field to TableConfig
- src/data_sync.py: Use enricher in _generate_schema_yaml (catalog > BQ API > data_description.md)
- webapp/app.py: Initialize enricher, enrich catalog data with tags/tier/owners/url
- config/instance.yaml.example: Document openmetadata section

Features:
- FQN auto-derivation: bigquery.{table.id}
- TTL cache (default 1h) to avoid repeated API calls
- Graceful degradation: disabled if token missing, silent on HTTP errors
- Column description priority: catalog > BQ API > (none)
- Table description priority: catalog > data_description.md
2026-03-12 14:07:13 +01:00
Petr
8bb46a9e0a Add per-partition streaming sync and hybrid query architecture
Partitioned sync: iterates day-by-day instead of loading full dataset.
Each partition: query BQ -> stream to disk -> free RAM. Peak ~50 MB.
New helpers: _sync_single_partition, _cleanup_old_partitions, _generate_partition_dates.

Config: added partition_column_type (DATE/TIMESTAMP/DATETIME), query_mode (local/remote/hybrid).
DuckDB manager: hybrid architecture support (local Parquet + remote BQ tables).
Data sync: skips remote tables, filters by query_mode.

Tests: 113 passing (adapter, client, config, data_sync, duckdb_manager).
2026-03-12 13:20:41 +01:00
Petr
ee70da86c3 Stream BQ results to Parquet instead of loading into memory
Replace to_arrow() (loads entire result into RAM) with
to_arrow_iterable() (streams RecordBatches). Each batch is written
directly to disk via ParquetWriter - constant memory regardless
of table size. Prevents OOM on 8GB server for multi-million row tables.
2026-03-11 20:13:03 +01:00
Petr
a191ede28c Add columns and row_filter to TableConfig for selective BQ export
Propagate column selection and row filtering from data_description.md
through the BigQuery adapter to the BQ client. This enables exporting
only needed columns and applying date range filters at the SQL level,
critical for large DataView tables (e.g., 412-col unit_economics).
2026-03-11 19:37:04 +01:00
Petr
758910463b Add BigQuery data source adapter
BigQuery connector that syncs BQ tables to local Parquet files via PyArrow
(no CSV intermediate step). Supports full refresh, timestamp-based
incremental (via incremental_column), and partition-based sync strategies.

- connectors/bigquery/client.py: BQ API wrapper with ADC auth, parameterized
  queries, metadata cache, cross-project support (job project != data project)
- connectors/bigquery/adapter.py: DataSource implementation with merge/dedup
- src/config.py: Add incremental_column field to TableConfig
- 72 unit tests (mocked, no GCP SDK required)
2026-03-11 13:56:12 +01:00
Petr
5a84473213 Add dynamic Business Metrics with sample e-commerce definitions
Replace hardcoded Keboola-specific metrics card in Data Catalog with
dynamic Jinja template that renders whatever metric YAMLs exist in
docs/metrics/. Add 10 sample e-commerce metric definitions across
4 categories (revenue, customers, marketing, support) that align
with the sample data generator tables.

Key changes:
- MetricParser: new category colors + dynamic sql_* field discovery
- _load_metrics_data(): scans docs/metrics/*/*.yml with prod fallback
- catalog.html: 240 lines hardcoded HTML -> 35 lines Jinja loop
- metric_modal.js: regex-based category class removal, new categories
- 21 tests validating YAML schema, parser, and loader
2026-03-10 22:38:44 +01:00
Petr
302494b632 Add --format parquet using project's ParquetManager
Generator now supports --format {csv,parquet,both}. Parquet mode
uses src.parquet_manager.ParquetManager for snappy compression,
proper column types (DATE, TIMESTAMP, DOUBLE), and metadata.
No more ad-hoc pandas conversion needed on the server.
2026-03-10 21:46:20 +01:00
Petr
44bf43535b Add sample data generator with 9 e-commerce tables
Synthetic data generator for demo/testing without real data adapter:
- 9 tables: customers, products, campaigns, web_sessions, web_leads,
  orders, order_items, payments, support_tickets
- 4 size presets: xs (1MB), s (15MB), m (150MB), l (1.5GB)
- Realistic patterns: seasonality, Pareto customer distribution,
  segment-based behavior, referential integrity
- Deterministic output via --seed parameter

Also: docs/sample-data.md, updated auto-install.md with Step 6,
updated CLAUDE.md (email auth provider, dual-repo architecture)
2026-03-10 12:31:14 +01:00
Petr
f635195c80 Add multi-domain support and full-email username generation
- Support comma-separated domains in auth.allowed_domain config
- Use full email as system username (user@domain.com -> user_domain_com)
  to avoid collisions with reserved names and across domains
- Update both auth providers (google, email) for multi-domain display
- Add tests for username generation and update email auth tests
2026-03-10 10:50:01 +01:00
Petr
e2ab219171 Add email magic link authentication provider
New pluggable auth provider that sends passwordless sign-in links.
Works with domain restriction (same as Google OAuth). Falls back to
showing the link in browser when SMTP is not configured (dev mode).
2026-03-10 10:39:19 +01:00
Petr
b99ec576ca Add self-service data onboarding system
Table Registry as central source of truth (JSON) with atomic writes,
optimistic locking, audit logging, and data_description.md generation.
Existing readers (config.py, profiler.py) need zero changes.

Phase 1 - Discovery API:
  - discover_tables() on DataSource ABC + Keboola implementation
  - admin_required decorator with server-side recomputation
  - GET /api/admin/discover-tables endpoint

Phase 2 - Table Registry:
  - src/table_registry.py with CRUD, validation, migration from MD
  - Admin API: register/update/unregister with version locking
  - DELETE cascade cleans up per-user subscriptions

Phase 3 - Auto-Profiling:
  - profile_changed_tables() for incremental profiling
  - Non-fatal hook in sync_all() after successful sync

Phase 4 - Per-Table Subscriptions:
  - table_mode (all/explicit) with per-table toggles
  - GET/POST /api/table-subscriptions endpoints
  - Subscription status in catalog and dashboard views

Phase 5 - Smart Sync:
  - Python-generated rsync filter files (not shell YAML parsing)
  - sync_data.sh uses --filter="merge ..." for explicit mode

Phase 6 - Admin UI:
  - /admin/tables with discovery, registration modal, registry mgmt
  - Vanilla JS, matching existing design system
2026-03-09 14:25:37 +01:00
Petr
86edd27655 Extract Jira into connectors/jira module
Move all Jira-specific code into a self-contained connector module:
- 22 files moved via git mv (transform, service, webhook, scripts,
  systemd units, tests, docs, bin helper)
- All imports updated to use connectors.jira.* paths
- Jira is now conditional: auto-detected via JIRA_DOMAIN env var
- Webapp registers Jira blueprint only when available
- Health service monitors Jira timers only when enabled
- Profiler loads Jira tables dynamically from filesystem
- Sync settings uses config-driven dependency validation
- Renamed keboola_platform_url -> custom_url in transform
- Updated deploy.sh, sudoers-deploy, backfill_gap.sh paths
- Fixed pytest.ini to skip live tests by default
2026-03-09 11:17:50 +01:00
Petr
26c4e0934d OSS cleanup: remove internal references, harden deployment, add config env interpolation
Phase 1 - Internal reference cleanup:
- Delete dev_docs/meetings/ (internal meeting notes/transcripts)
- Replace hardcoded usernames (padak/matejkys/dasa) with deploy/generic
- Replace "Internal AI Data Analyst" with "AI Data Analyst"
- Replace keboola/internal_ai_data_analyst URLs with your-org/ai-data-analyst
- Replace /tmp/keboola_load/ with /tmp/data_analyst_staging/ in dev_docs

Phase 2 - Deployment hardening:
- Tighten sudoers wildcards to explicit paths (visudo, sudoers cp)
- setup.sh creates all groups (data-ops, dataread, data-private) and deploy user
- webapp-setup.sh copies sudoers-webapp from repo instead of inline definition
- deploy.sh conditional copy for data_description.md (not in git for OSS)
- deploy.sh ownership changed to deploy:data-ops for /data/{scripts,docs,examples}

Phase 3 - Config and misc:
- Add ${ENV_VAR} interpolation to config/loader.py
- Expand config/instance.yaml.example with all sections (admins, deployment, auth, etc.)
- Create config/.env.template for secret values
- Add MIT LICENSE
- Fix .gitignore: add .venv/, docs/data_description.md
- Fix README.md: CSV status Planned, remove metrics/, update license text
- Translate Czech comments in requirements.txt to English
- Fix test_account_service.py: mock username mapping instead of relying on instance config

All 118 tests pass.
2026-03-09 07:59:57 +01:00
Petr
c56905d34f Initial commit: OSS data distribution platform
Open-source AI data analyst platform extracted from internal repo.
Includes data sync engine, Keboola adapter, Flask web portal,
server deployment scripts, and configuration templates.
2026-03-08 23:31:28 +01:00