| name | metabase_ingest |
| description | Convert Metabase questions, models, and metrics into ktx Semantic Layer source definitions. Covers result-metadata to KSL column type mapping, FK/PK detection, near-duplicate deduplication, pre-aggregation decomposition, join-graph connectivity, and how to react to priorProvenance from earlier ingest syncs. Load when the WorkUnit contains `cards/<id>.json` files under a Metabase bundle. |
| callers | ["memory_agent"] |
Metabase to ktx Semantic Layer
Each WorkUnit represents one Metabase collection's cards for one Metabase database (mapped to exactly one ktx connection). Every cards/<id>.json file carries the resolved SQL, result_metadata, card type, collection path, and referenced-card ids. The WU's sync-config.json tells you which sync mode is active and which selections apply. databases/<id>.json tells you the target ktx connection.
Context format
Each card JSON looks like:
{
"metabaseId": 7,
"name": "Daily orders",
"description": "Orders by day",
"type": "model",
"databaseId": 42,
"collectionId": 5,
"resolvedSql": "SELECT ...",
"templateTags": [{"name": "ref", "type": "card", "cardReference": 10}],
"resultMetadata": [
{"name": "day", "base_type": "type/DateTime", "semantic_type": "type/CreationTimestamp"},
{"name": "order_count", "base_type": "type/Integer"}
],
"collectionPath": ["Data", "Orders Team"],
"referencedCardIds": [10]
}
Use resultMetadata to:
- Map
base_type to KSL column type: type/Integer, type/Float, type/Decimal, type/BigInteger → number; type/Text, type/TextLike → string; type/DateTime, type/Date, type/DateTimeWithTZ → time; type/Boolean → boolean.
- Identify grain candidates: columns with
semantic_type: type/PK.
- Identify join candidates: columns with
semantic_type: type/FK plus fk_target_field_id.
- Identify time columns:
semantic_type: type/CreationTimestamp or type/UpdatedTimestamp → set role: time.
- Use
display_name for measure descriptions when available.
Additional card metadata
parameters: list of card-level parameters with widget types and defaults. When SQL resolution fell back to unresolved SQL, use this to drive Step A of the SQL-translation workflow (drop optional clauses): knowing each {{ var }} is type: "date/range" vs type: "category" tells you what kind of clause it is.
resultMetadata[i].field_ref: Metabase's canonical reference to the source warehouse field. Shape ["field", <field_id>, <options>]. When this is set, the column maps directly to a warehouse field, which is useful for declaring joins from FK metadata without re-parsing SQL.
lastRunAt: ISO timestamp of the card's last execution. If null or very old, the card may be dead; prefer skipping over creating a source.
dashboardCount: number of dashboards referencing the card. Cards with dashboardCount: 0 and a stale lastRunAt are strong skip signals.
Before writing a wiki page derived from a Metabase question SQL, verify each
schema.table.column mentioned with entity_details.
Identifier Verification Protocol
Before writing a wiki page or SL source on any topic:
discover_data({query: "<topic>"}) - see what wikis, SL sources, and raw
tables already exist. Prefer updating existing pages over creating new ones.
Before emitting any schema.table or schema.table.column into a wiki body,
SL source, tables: frontmatter, sl_refs, or emit_unmapped_fallback:
entity_details({connectionId, targets: [{display: "<identifier>"}]}) -
confirm the identifier resolves; inspect native types, FK/PK, and
sampleValues.
- For literal values from the source, such as status codes or plan tiers,
check whether they appear in
entity_details sampleValues for the relevant
column. If sampleValues is short or the sample may have missed real values,
run a sql_execution probe with the same warehouse connection id:
sql_execution({connectionId, sql: "SELECT DISTINCT <col> FROM <ref> LIMIT 50"}).
- If the candidate identifier still does not resolve, do one of:
- Use
sql_execution({connectionId, sql: "SELECT 1 FROM <ref> LIMIT 0"}).
If it errors, the identifier is fictional.
- Wrap the identifier in
[unverified - from <rawPath>] in the wiki body,
citing the exact raw path that mentioned it.
- When recording
emit_unmapped_fallback with no_physical_table, include
the failing probe error in clarification.
- Never copy
<schema>.<table> placeholder strings from these instructions
into output.
Decision tree
For each card:
- Analyze
resolvedSql + resultMetadata: identify base tables, aggregations, joins, filters, column types.
- REQUIRED before any write: call
sl_discover for every candidate target source name. The response tells you whether the name is manifest-backed (Type: table or Type: sql). For manifest-backed names you MUST use the overlay shape (name: plus overlay fields such as measures:, segments:, descriptions:, joins:, disable_joins:, column_overrides:, and computed-only columns: entries with expr + type; no sql:, table:, grain:, or base-table columns:); the tool will reject a standalone write and you'll have wasted the call. If sl_discover returns nothing for the name, you can write a standalone source. Also call sl_read_source on existing sources you intend to extend so you don't duplicate measures.
- Include
rawPaths: ["cards/<id>.json"] on every sl_write_source, sl_edit_source, and wiki_write call. If one artifact generalizes multiple near-duplicate cards, include each contributing card path and no unrelated cards.
- Decide:
- Simple aggregation on a table that already has a source →
sl_edit_source to add a measure.
- Join between tables that should be linked in the SL graph →
sl_edit_source to add a join.
- Complex derived SQL (CTEs, multi-layer aggregation, scoring models) →
sl_write_source with source_type: sql. When the SQL projects/filters from a single manifest-backed base table, set inherits_columns_from: <manifest_key> so columns inherit type and description from the manifest - see sl_capture skill for the slim form. Use sl_discover to discover the manifest key from the table reference in the SQL (it accepts MARTS.CONSIGNMENTS, ANALYTICS.MARTS.CONSIGNMENTS, or CONSIGNMENTS).
- New base table not yet in the semantic layer →
sl_write_source with source_type: table.
- Trivial query (
SELECT *, simple COUNT(*) with no business logic) → do nothing; the runner will record this card as action_type='skipped'.
- Duplicate of an existing measure → same as trivial; do nothing for this card.
Manifest-only names need an overlay first. If sl_discover shows a source name with Type: table but sl_read_source returns "Source not found", the source lives only in the schema manifest (no standalone overlay yet). sl_edit_source cannot edit manifest-only names, and a full standalone sl_write_source for that name would shadow manifest columns and joins. Bootstrap an overlay with sl_write_source using the overlay shape:
name: <SOURCE_NAME>
measures:
- name: <measure_name>
expr: "<expression>"
Overlay shape: name: plus any of measures:, segments:, descriptions:, joins:, disable_joins:, exclude_columns:, column_overrides:, or computed-only columns: entries with expr + type. Never include sql:, table:, grain:, or base-table columns: on a manifest-backed name — those would shadow the manifest's schema and drop its joins. Use column_overrides: for inherited column descriptions. Overlay joins: are merged additively with the manifest's joins (deduped by to + on); use disable_joins: ["<on-clause>"] to suppress a specific manifest join. After the overlay exists, use sl_edit_source for further tweaks. See sl_capture skill for the canonical overlay rule.
Join discovery: When your card's SQL references warehouse tables (e.g. in FROM or JOIN clauses), call sl_discover({ query: '<table>' }) before writing. The matching manifest entry's name is the value you use in joins: [- to: <name>] only when the card output exposes a local key that matches the target source grain (for example account_id = mart_account_segments.account_id). Do not declare a ktx join just because the card SQL joins that table internally. If the output only exposes display fields such as account_name, keep the SQL source self-contained or project the key before adding the join. Use many_to_one for FK-to-dimension joins, one_to_many for the reverse.
Hard rule on join columns (prevents broken joins): For every join you declare, the local column on the left of on: MUST be (a) present in your source's projected output and (b) a key/ID column, never a display value. If the natural FK isn't in your SELECT, add it to SELECT before declaring the join. Joining account_name = mart_account_segments.account_id is always wrong - names are not identifiers and the equality produces zero matches. The validator rejects this with a "display value to identifier" error; the tool will refuse to save it. Add account_id to your SELECT and join on account_id = mart_account_segments.account_id, or omit the join entirely.
priorProvenance
If the WU prompt includes a priorProvenance section for a card, it tells you what happened on prior ingest syncs. Treat it as advisory:
action_type: source_created on source X → prefer editing X with sl_edit_source rather than writing a new source.
action_type: measure_added on source X → you already contributed to X; add only measures that aren't present.
action_type: subsumed or merged → this card was folded into another source last time; unless its SQL has changed structurally, keep it subsumed (no new write).
action_type: skipped → last time we decided not to ingest this card; re-read the SQL and confirm the decision still holds. If the card now has non-trivial business logic, ingest it.
Deduplication
Before writing, scan all cards in this WU for near-duplicate groups - cards whose resolvedSql shares the same CTEs, base tables, joins, and aggregation structure but differs only in:
- Trailing filters (e.g.
date_trunc(week, date) vs date_trunc(month, date)).
- Minor
WHERE clause variations.
- Column aliases or output column subsets.
- Aggregation granularity (daily vs weekly vs monthly).
When you find a group of near-duplicates:
- Create ONE generalized source from the most comprehensive card in the group.
- Strip card-specific trailing filters from the SQL so the source covers all variants (e.g. keep daily grain instead of filtering to week/month).
- If each card had a distinct measure or filter, add them as separate measures on the single source.
- For all cards except the canonical one, do nothing - they'll be recorded as
action_type='skipped' automatically by the runner.
Do NOT merge cards with fundamentally different business logic, even if they share CTEs.
Pre-aggregation decomposition
When a card's resolvedSql contains GROUP BY with aggregation functions (SUM, COUNT, AVG, …):
- Detect: simple aggregation on base tables/joins -
SELECT with GROUP BY, no complex CTEs or window functions.
- Decompose: strip the
GROUP BY and aggregation functions. Keep FROM, JOIN, and WHERE intact.
- Expose row-level columns: include the grouped-by columns AND the raw columns being aggregated (e.g.
money_out instead of SUM(money_out) AS total_money_out).
- Define aggregations as measures: convert each aggregation into a KSL measure (e.g.
sum(money_out)).
- Add joins: with FK columns now exposed, declare joins to dimension sources.
Exception: keep the pre-aggregated SQL when the query involves multi-CTE pipelines, window functions, or recursive logic where decomposition would lose business logic.
SQL translation from raw native to KSL
Every card carries a resolvedSql field. Check the staged card's resolutionStatus first:
resolutionStatus: "resolved" - {{#N}} references are inlined and [[ ... ]] optional clauses have been dropped locally. If the resolved SQL contains no other parameters the SQL is executable as-is. If the card had required (non-bracketed) {{ var }} placeholders, the SQL is prefixed with a placeholder-warning comment block listing every dummy substitution Metabase made - see "Step A" below.
resolutionStatus: "fallback" - Metabase failed to resolve. The SQL still contains {{#N}}, {{#N-name}} alias, {{ var }}, and [[ ... ]] syntax. Do the translation steps below before writing a source.
Step A - Handle dummy-substituted placeholders (resolved cards only)
When a card has a required {{ var }} outside any [[ ]] block, the resolver substitutes a dummy value purely so Metabase's parser will accept the query. The resulting SQL is prefixed with a comment like:
SELECT ...
WHERE start_date >= '2020-01-01' AND start_date < '2021-01-01' AND status = 'placeholder'
For each listed placeholder: locate the WHERE clause(s) in the SQL that reference the dummy literal and drop them, then strip the warning comment. SL chat-time filters compose narrowing predicates dynamically, so the source should represent the unfiltered dataset.
For fallback cards, dropping is simpler - the SQL still has the [[ ... ]] brackets and {{ var }} placeholders intact:
WHERE 1=1
[[AND {{ auction_end }} ]]
[[AND status = {{ status }} ]]
WHERE 1=1
Step B - Inline {{#N}} references (fallback cards only)
Resolved cards already have {{#N}} inlined for you. For fallback cards, each {{#N}} (or {{#N-some-slug}}) in the SQL refers to another card's resolvedSql. The referenced card is in the WU's rawFiles or dependencyPaths. Read it with read_raw_file, then inline its SQL.
If the reference has an alias (from {{#5996-listing-interactions}} tb), the outer SQL probably uses that alias (select tb.* ..., tb.column_name, etc.). When you inline, you must EITHER:
- Pick a single base table inside the inlined SQL and rename its alias to the outer alias. Useful when the inlined card is
SELECT * FROM listings JOIN ... - set the LISTINGS alias to tb and tb.* keeps working in the outer query.
- Replace the outer alias references with explicit columns from the inlined SQL. Useful when the inlined card has multiple JOINs and
tb.* is ambiguous.
Never leave the outer alias dangling: after inlining, grep your SQL for the outer alias name and rewrite or remove every reference. A leftover tb.* with no tb table is the most common failure mode here.
Step C - Inlining cleanup checklist
After Steps A and B, your SQL must:
- Contain no placeholder-warning comment, no
{{, }}, [[, or ]] characters anywhere.
- Reference no aliases that aren't defined inside the SQL itself.
- Be valid as a standalone subquery (the validator runs
SELECT * FROM (your_sql) LIMIT 1).
If resolutionStatus: "fallback" and the SQL is still complex enough that you can't confidently translate it, skip the card rather than writing broken SQL. Call emit_unmapped_fallback with the staged card path as rawPath, reason: "parse_error", clarification: "metabase_sql_untranslated", and fallback: "flagged".
Join-graph connectivity
For source_type: table:
- Use FK columns (
semantic_type: type/FK) to declare many_to_one joins to dimension sources.
- Match column names ending in
_id against existing sources' grain columns.
For source_type: sql:
- The validator parses your SQL and rejects the write when a referenced manifest table has a viable projected local key but no declared
joins: entry. Add the join only after confirming the output key and target grain match.
- If
sl_discover resolves the table, it is not outside the manifest. Do not write an unmapped-table-* fallback for resolved orbit_raw, mart, or other manifest-backed sources just because they appear inside card SQL.
- If
sl_discover cannot resolve a referenced table at all, write a single-line wiki_write with key unmapped-table-<table_name> and rawPaths: ["cards/<id>.json"] so the gap is documented, then call emit_unmapped_fallback with the staged card path as rawPath, reason: "missing_target_table", tableRef: "<table_name>", and fallback: "wiki_only". Do not use this fallback if sl_discover resolved the table/source.
Joins on manifest-backed names compose: the manifest's joins are inherited automatically, and any overlay joins: are merged on top (deduped by to + on). Use disable_joins: ["<on-clause>"] in the overlay to suppress a specific manifest join. If sl_discover shows a manifest-backed source with Joins: 0 and the warehouse FK metadata is genuinely absent, declaring application-level joins via the overlay is fair game - bootstrap with sl_write_source (overlay shape above), then refine via sl_edit_source.
Cross-card references ({{#N}})
Resolved cards (resolutionStatus: "resolved") have these inlined for you. Unresolved cards (resolutionStatus: "fallback") need manual handling - see "SQL translation from raw native to KSL" above.
Provenance markers
Every SL source and wiki page you write carries HTML-comment provenance tags pointing to the cards/<id>.json files they derive from:
name: orders
...
If a source is derived from multiple cards (e.g. a generalized source for a near-duplicate group), emit one tag per contributing card.
Quality standards
Source definitions must follow ktx-sl YAML conventions:
source_type: "table" (physical table/view) or "sql" (arbitrary SQL / derived view).
table: required when source_type: "table" (e.g. "public.orders").
sql: required when source_type: "sql".
grain: what one row represents (e.g. [id], [customer_id, product_id]).
columns: all columns with correct types (string, number, time, boolean).
- Time columns: mark with
role: time.
joins: use correct relationship types (many_to_one for FK→PK, one_to_many for reverse).
joins.on: local_column = TARGET_SOURCE.target_column - the right side MUST include the target source name.
measures.expr: aggregation expression (e.g. "sum(amount)"); optional filter for business rules; required description.
Measure naming: descriptive snake_case (e.g. total_revenue, avg_order_value).
Rules
- Prefer adding measures to existing sources over creating new ones.
- Before editing, always
sl_read_source the source to check for existing measures.
- Don't duplicate measures (same aggregation on the same column).
- If two measures differ only by a filter (e.g.
revenue vs paid_revenue), they are distinct.
- Use the card's
name + description to write meaningful measure descriptions.
- When multiple cards in a WU are near-duplicates, create ONE generalized source; the runner will skip the rest automatically.
- Process every card in the WU - don't stop early.