13 Devin findings across 10 files: 🔴 Critical: - app/api/v2_catalog.py:42 — `_fetch_hint` returns `da fetch` in /api/v2/catalog responses (user-visible in every catalog list) - cli/skills/agnes-data-querying.md — 11 stale `da fetch`/`da sync` refs in the bundled skill markdown - config/claude_md_template.txt:38 — referenced `agnes pull --docs-only` flag that does NOT exist in agnes pull (removed; spec only ships --quiet/--json/ --dry-run) 🟡 Important: - app/api/admin.py:252 — `da fetch` in bq_max_scan_bytes hint - cli/commands/auth.py:119 — `da sync` in import-token docstring (--help text) - cli/commands/tokens.py:48 — "Export it so `da` can use it" prose - ARCHITECTURE.md — 4 stale rows in CLI commands table - README.md — stale paragraphs for analysts (da sync, da analyst setup) 🚩 Substantive observations addressed: - app/api/query.py:249,302,489 — server-side error/help strings still said `da sync`/`da fetch` (returned in API responses to clients) - cli/commands/snapshot.py:235-241 — DuckDB existence guard incorrectly blocked `--estimate` (server-side dry-run that never opens local DB). Added test ensuring estimate path skips the guard. Skipped (intentionally historical): - app/api/admin.py:2377,2429,2437 — historical comments describing past manifest-vs-sync_state bug; past tense, accurate to keep as `da sync`.
135 lines
6.4 KiB
Markdown
135 lines
6.4 KiB
Markdown
---
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name: agnes-table-registration
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description: Use when adding tables to the Agnes catalog so analysts can query them — single registration, bulk discovery, updates, and removals. Admin role required.
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---
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# Registering tables in Agnes
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`agnes catalog` lists tables from `system.duckdb::table_registry`. A table you can `agnes snapshot create` exists in that registry. This skill is the protocol for getting tables into and out of it.
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**Auth:** every command here requires admin role. The CLI sends the active PAT (`agnes auth import-token`); REST examples use `Authorization: Bearer $PAT` against the configured server.
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## Decision flow — single vs. bulk vs. update
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```
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user wants to add tables
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├── one specific table they named → register-table (single)
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├── "everything from <source>" → discover-and-register
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├── existing entry, change a field → PUT /api/admin/registry/{id}
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└── remove a table from catalog → DELETE /api/admin/registry/{id}
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```
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## Before you register — verify the source exists
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Registering a table that does NOT exist at the source is silent: the row lands in the registry, but every later `agnes snapshot create` / `agnes query` against it 404s or 500s with an opaque message. Always verify first.
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For BigQuery (`source-type=bigquery`):
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```bash
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# 1. confirm the dataset and table exist (uses the analyst's BQ creds, not the server's)
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bq show --project_id=<billing-project> <data-project>:<dataset>.<table>
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```
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For Keboola (`source-type=keboola`):
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```bash
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# the discover-and-register dry-run is the lowest-friction probe
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agnes admin discover-and-register --source-type=keboola --dry-run
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```
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If the source can't confirm the table exists, **stop and ask the user to verify** rather than registering speculatively.
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## Single-table registration
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```bash
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agnes admin register-table <name> \
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--source-type=<keboola|bigquery|jira> \
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--bucket=<dataset_or_bucket> \
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--source-table=<source_object_name> \
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--query-mode=<local|remote> \
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--description="<short purpose, 1 line>"
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```
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Field meanings:
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| Flag | Meaning | Example |
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|---|---|---|
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| `<name>` | Display name; the slugged form (`lower`, spaces→`_`) becomes the table id | `User Sessions` → id `user_sessions` |
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| `--source-type` | Connector identity | `bigquery`, `keboola`, `jira` |
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| `--bucket` | BQ dataset / Keboola bucket / Jira board | `product_analytics` |
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| `--source-table` | Object name at the source (case-sensitive for BQ) | `s1_session_landings` |
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| `--query-mode` | `local` = synced parquet / `remote` = on-demand BQ | `remote` for BQ views |
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| `--description` | One sentence shown in `agnes catalog` | `"Per-session landing-page rows."` |
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**Idempotence:** the API returns `409 Conflict` if the slugged id already exists. Always run `agnes admin list-tables --json` first and only register when the id is missing.
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## Bulk discovery
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When the user says "register everything from <source>", let the connector enumerate:
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```bash
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# 1. preview without writing anything
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agnes admin discover-and-register --source-type=bigquery --dry-run --json
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# 2. review output, then commit
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agnes admin discover-and-register --source-type=bigquery
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```
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`discover-and-register` is **safe on re-run**: existing tables are skipped (not overwritten), new ones added. The `--dry-run` output lists what *would* change.
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For Keboola, pass `--token` and `--url` if not already in `instance.yaml`:
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```bash
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agnes admin discover-and-register --source-type=keboola \
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--token="$KEBOOLA_TOKEN" --url=https://connection.keboola.com --dry-run
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```
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## Update an existing entry
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No CLI command for this — use REST directly:
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```bash
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# change description, source-table, or query-mode on a registered entry
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curl -sS -X PUT \
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-H "Authorization: Bearer $PAT" \
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-H "Content-Type: application/json" \
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-d '{"description": "Updated copy", "query_mode": "remote"}' \
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"$AGNES_SERVER_URL/api/admin/registry/<table_id>"
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```
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Only fields you include in the JSON body are updated — unspecified fields keep prior values.
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## Remove a table
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```bash
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curl -sS -X DELETE \
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-H "Authorization: Bearer $PAT" \
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"$AGNES_SERVER_URL/api/admin/registry/<table_id>"
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```
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Returns `204 No Content` on success, `404` if the id doesn't exist. **The underlying source data is NOT touched** — only the catalog entry. Local snapshots created via `agnes snapshot create` also remain on the analyst's laptop until they `agnes snapshot drop` them.
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## Heuristics
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- **Slug, not display name.** When a later command asks for `table_id`, use the lower-snake_case form, not the original `--name`. `agnes admin list-tables` shows both columns.
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- **One descriptive line.** `--description` shows up in `agnes catalog --json` and in agent rails reasoning. Make it count: "What's in this table?" not "Imported 2026-01-15."
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- **`local` vs `remote` is permanent until you re-register.** Switching modes mid-life requires PUT-ing `query_mode`; that doesn't move data, just changes how it's served.
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- **Don't register joins or views you'd rather compute on-the-fly.** A registered table is a long-term contract — analysts will write to its name. For one-off computations prefer `agnes query --remote`.
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## When NOT to register
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- The user wants to inspect a table once, doesn't intend to share it: register the row once with `query_mode='remote'` (admin-only, ~30s) and query it via `agnes query --remote "SELECT … FROM <registered_id>"`. Direct `bq."<dataset>"."<table>"` syntax is now registry-gated — unregistered paths return 403 `bq_path_not_registered` (closes the pre-existing RBAC + cost-cap bypass).
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- The data lives in a third source not yet supported by a connector: implement the connector first (see `connectors.md` skill), then register.
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- The dataset already has a registered "parent" view that exposes the rows you want: register-table is for distinct catalog entities, not for slicing existing ones — slice with `agnes snapshot create --where`.
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## Confirmation flow
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After registration, sanity-check:
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```bash
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agnes admin list-tables --json | jq '.[] | select(.id == "<table_id>")'
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agnes catalog --json | jq '.tables[] | select(.id == "<table_id>")'
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agnes schema <table_id> # forces a real source-side schema fetch — fails fast if source is wrong
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```
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If `agnes schema` 500s on a freshly registered remote BQ table, the most common causes (in order): wrong `--source-table` (typo), wrong `--bucket` (dataset), missing `data_source.bigquery.billing_project` when reading cross-project, missing `serviceusage.services.use` IAM on the billing project.
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