ktx/packages/context/skills/sl/SKILL.md
2026-05-14 00:57:51 +02:00

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sl KTX's semantic layer — a structured catalog of sources (tables/views), measures, joins, and segments expressed as YAML. Covers the schema and how to query it via `sl_query`. Use when the task involves querying pre-defined metrics (ARR, churn, retention, LTV, MAU) or reading SL source YAML to understand the catalog. Capture is handled by the `sl_capture` skill (memory-agent only).

Semantic Layer

KTX's semantic layer (SL) is a structured catalog. Each source represents a table, a SQL view, or an overlay that enriches a manifest-backed table with measures, computed columns, joins, and named segments. The catalog is the single source of truth for reusable business metrics.

This skill covers two parts:

  • Part 1 — Schema reference (what an SL source looks like).
  • Part 2 — Querying via sl_query.

Capture (when and how to add new patterns to the SL) is a separate concern handled by the memory-agent — see the sl_capture skill if you are running in capture mode. The research agent reads and queries the SL via the tools described here; it does not write to it.

For capture-time identifier verification, load sl_capture. Synthesis writer skills must verify warehouse identifiers with discover_data, entity_details, and sql_execution before emitting table or column names.


Part 1 — Schema reference

An SL source is a YAML file at semantic-layer/<connectionId>/<source_name>.yaml. There are three flavors:

Overlay sources

Enrich a manifest-backed table with measures, computed columns, joins, and segments. No table or sql field. The base table's columns and grain are inherited from the manifest.

name: fct_orders           # must match an existing manifest table
descriptions:
  user: "Overlay adding business measures to the orders fact table."
measures:
  - name: total_revenue
    expr: sum(amount)
    description: Total order revenue — filter by status or region at query time
columns:                    # computed dimensions only
  - name: is_large_order
    type: boolean
    expr: "amount > 1000"
segments:
  - name: paid_non_refunded
    expr: "is_paid = true AND is_refunded = false"
joins:
  - to: customers
    on: "customer_id = customers.id"
    relationship: many_to_one

Rules:

  • Do not repeat base-table columns, grain, table, or source_type in an overlay — those are inherited.
  • Overlay columns MUST be computed (expr + type).
  • exclude_columns hides specific manifest columns; disable_joins suppresses specific auto-detected joins.

Standalone table sources

Self-contained; own their schema. Has source_type: table and table:.

name: account_health_scores
source_type: table
table: "analytics.account_health_scores"
grain: [account_id, snapshot_date]
columns:
  - name: account_id
    type: string
  - name: snapshot_date
    type: time
    role: time
  - name: health_score
    type: number
measures:
  - name: avg_health_score
    expr: avg(health_score)

Standalone SQL sources

Self-contained; schema derived from a SQL query. Has source_type: sql and sql:.

name: monthly_cancellations
source_type: sql
sql: |
  SELECT
    date_trunc('month', cancelled_at) AS month,
    customer_id,
    plan_name,
    mrr_amount
  FROM subscriptions
  WHERE status = 'cancelled'
grain: [customer_id, month]
columns:
  - name: month
    type: time
    role: time
  - name: customer_id
    type: string
  - name: plan_name
    type: string
  - name: mrr_amount
    type: number
measures:
  - name: cancellation_count
    expr: count(*)

An SQL source is a one-shot answer: the aggregation is frozen, callers cannot re-group or re-filter by columns the SQL has collapsed, and the source is disconnected from the join graph. Prefer overlays + measures over SQL sources when possible — the sl_capture skill covers when SQL is justified.

Columns

Every standalone column requires name and type. Overlays have computed columns only.

  • type: one of string, number, boolean, time. Map LookML date/datetime/timestamptime. Map LookML yesnoboolean.
  • role (optional): time enables time-granularity queries (month, week, day). default is the implicit fallback.
  • visibility (optional): public, internal, or hidden.
  • expr (optional for standalone, required for overlay columns): SQL expression that computes the value. Expanded by sqlglot before generating SQL, so you can reference other columns on the same source.

Grain

grain: [col_a, col_b] — the set of columns that uniquely identify one row. The query engine uses grain to prevent fan-out in joins. Overlays inherit grain from the manifest unless they override.

Joins

joins:
  - to: customers                                    # target source name
    on: "customer_id = customers.id"                 # local_col = TARGET.target_col
    relationship: many_to_one                        # or one_to_many, one_to_one
    alias: primary_customer                          # optional — lets you join the same target twice
  • on format: local_col = TARGET.target_col. Always qualify the right side with the target source name.
  • relationship is the cardinality from this source to the target. Most joins are many_to_one (FK → PK on the parent).

Measures

measures:
  - name: total_arr
    expr: sum(arr_amount)
    description: Sum of ARR — filter by plan_name at query time
    filter: "is_active = true"
    segments: [paid_non_refunded]
  • name (required, snake_case).
  • expr (required): any valid SQL aggregate — sum(x), count(*), count(distinct user_id), avg(score).
  • description (required on capture): what the measure computes and how to use it.
  • filter (optional): SQL predicate applied as a WHERE clause specific to this measure.
  • segments (optional): names of segments defined on the same source. The engine AND-composes each segment's expr into this measure's effective filter.

Use safe_divide(num, den) for ratio measures to avoid division by zero.

Segments

segments:
  - name: paid_non_refunded
    expr: "is_paid = true AND is_refunded = false"
    description: Orders that were paid and not refunded

Named, reusable boolean predicates scoped to one source. Reference by bare name in a measure's segments: [], or by dotted form source.segment_name in an sl_query. Segments are predicates only — they are NOT selectable as dimensions. If you need to group by the predicate, add a columns[] entry instead.

Cross-references with the wiki

The reverse edge (wiki pages that cite this source) is derived automatically from each wiki's sl_refs: — you don't emit anything on the SL side. Author the edge once on the wiki via sl_refs:; the post-write reconciler populates the knowledge↔SL index.


Part 2 — Querying via sl_query

The sl_query tool generates correct SQL from a structured query. It handles joins, fan-out prevention, aggregation correctness, and filter classification automatically. Prefer it over writing raw SQL whenever the SL has the relevant sources.

When to prefer sl_query over raw SQL

  • A pre-defined measure already exists (source.measure_name appears in the catalog).
  • The question combines fields from multiple sources — the engine resolves the join path automatically.
  • The question asks for a standard metric (revenue, ARR, churn, retention, LTV, conversion, MAU, etc.) — even if no pre-defined measure exists, a runtime aggregation over a catalog column is usually correct.

Use raw SQL (sql_execution) only when:

  • The computation requires multi-step CTEs whose intermediate grain is not a column in any source.
  • The question explicitly asks for a one-off exploration that will never be asked again.

Input shape

{
  "connectionId": "uuid-of-the-connection",
  "measures": ["orders.total_revenue", "sum(orders.amount)"],
  "dimensions": ["customers.segment", { "field": "orders.created_at", "granularity": "month" }],
  "filters": ["orders.status != 'cancelled'", "orders.total_revenue > 10000"],
  "segments": ["orders.paid_non_refunded"],
  "order_by": [{ "field": "orders.created_at", "direction": "desc" }],
  "limit": 1000
}
  • measures: mix pre-defined refs (source.measure) and runtime aggregations (sum(source.column)).
  • dimensions: column refs or { field, granularity } objects for time grains (day, week, month, quarter, year).
  • filters: free-form SQL predicates. The engine auto-classifies each as WHERE or HAVING based on whether it references an aggregated measure.
  • segments: dotted source.segment_name. Each segment is AND-ed into the effective filter of every measure whose base source matches. Segments never become a global WHERE — use filters for cross-source predicates.
  • order_by: string or { field, direction }. Direction defaults to asc.
  • limit: integer row cap.

Join resolution

You don't specify a base table. The engine infers the set of sources needed from the fields you reference and resolves the shortest join path through the catalog's declared joins. If no path exists between two sources, the query fails with a path-not-found error — check discover_data or sl_discover to see which sources are connected.

Worked examples

Cross-source query — engine resolves account_health_scores → accounts ← opportunities automatically:

{
  "measures": ["account_health_scores.avg_health_score"],
  "dimensions": ["opportunities.stage"],
  "filters": ["opportunities.stage != 'Closed Won'"]
}

Monthly ARR trend with a segment:

{
  "measures": ["subscriptions.arr"],
  "dimensions": [{ "field": "subscriptions.month", "granularity": "month" }],
  "segments": ["subscriptions.paid_non_refunded"],
  "order_by": [{ "field": "subscriptions.month", "direction": "asc" }]
}

Multi-source with runtime aggregation:

{
  "measures": ["sum(orders.amount)", "count(support_tickets.ticket_id)"],
  "dimensions": ["customers.segment"]
}