AugmentClaude

Databricks SQL

Master advanced SQL features, stored procedures, and warehouse optimization on Databricks.

Installation

  1. Make sure Claude is on your device and in your terminal.

    Skills load from ~/.claude/skills/ when Claude Code starts up — so you need it on your machine first. If you don't have it yet, install it once with the command below, then run claude in any terminal to verify.

    One-time setup
    npm i -g @anthropic-ai/claude-code

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  2. Paste into Claude Code or into your terminal.

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  3. Restart Claude Code.

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  4. Just ask Claude.

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When Claude uses it

Databricks SQL (DBSQL) advanced features and SQL warehouse capabilities. This skill MUST be invoked when the user mentions: "DBSQL", "Databricks SQL", "SQL warehouse", "SQL scripting", "stored procedure", "CALL procedure", "materialized view", "CREATE MATERIALIZED VIEW", "pipe syntax", "|>", "geospatial", "H3", "ST_", "spatial SQL", "collation", "COLLATE", "ai_query", "ai_classify", "ai_extract", "ai_gen", "AI function", "http_request", "remote_query", "read_files", "Lakehouse Federation", "recursive CTE", "WITH RECURSIVE", "multi-statement transaction", "temp table", "temporary view", "pipe operator". SHOULD also invoke when the user asks about SQL best practices, data modeling patterns, or advanced SQL features on Databricks.

What this skill does

Databricks SQL (DBSQL) - Advanced Features

Quick Reference

FeatureKey SyntaxSinceReference
SQL ScriptingBEGIN...END, DECLARE, IF/WHILE/FORDBR 16.3+references/sql-scripting.md
Stored ProceduresCREATE PROCEDURE, CALLDBR 17.0+references/sql-scripting.md
Recursive CTEsWITH RECURSIVEDBR 17.0+references/sql-scripting.md
TransactionsBEGIN ATOMIC...ENDPreviewreferences/sql-scripting.md
Materialized ViewsCREATE MATERIALIZED VIEWPro/Serverlessreferences/materialized-views-pipes.md
Temp TablesCREATE TEMPORARY TABLEAllreferences/materialized-views-pipes.md
Pipe Syntax|> operatorDBR 16.1+references/materialized-views-pipes.md
Geospatial (H3)h3_longlatash3(), h3_polyfillash3()DBR 11.2+references/geospatial-collations.md
Geospatial (ST)ST_Point(), ST_Contains(), 80+ funcsDBR 16.0+references/geospatial-collations.md
CollationsCOLLATE, UTF8_LCASE, locale-awareDBR 16.1+references/geospatial-collations.md
AI Functionsai_query(), ai_classify(), 11+ funcsDBR 15.1+references/ai-functions.md
http_requesthttp_request(conn, ...)Pro/Serverlessreferences/ai-functions.md
remote_querySELECT * FROM remote_query(...)Pro/Serverlessreferences/ai-functions.md
read_filesSELECT * FROM read_files(...)Allreferences/ai-functions.md
Data ModelingStar schema, Liquid ClusteringAllreferences/best-practices.md

Common Patterns

SQL Scripting - Procedural ETL

BEGIN
  DECLARE v_count INT;
  DECLARE v_status STRING DEFAULT 'pending';

  SET v_count = (SELECT COUNT(*) FROM catalog.schema.raw_orders WHERE status = 'new');

  IF v_count > 0 THEN
    INSERT INTO catalog.schema.processed_orders
    SELECT *, current_timestamp() AS processed_at
    FROM catalog.schema.raw_orders
    WHERE status = 'new';

    SET v_status = 'completed';
  ELSE
    SET v_status = 'skipped';
  END IF;

  SELECT v_status AS result, v_count AS rows_processed;
END

Stored Procedure with Error Handling

CREATE OR REPLACE PROCEDURE catalog.schema.upsert_customers(
  IN p_source STRING,
  OUT p_rows_affected INT
)
LANGUAGE SQL
SQL SECURITY INVOKER
BEGIN
  DECLARE EXIT HANDLER FOR SQLEXCEPTION
  BEGIN
    SET p_rows_affected = -1;
    SIGNAL SQLSTATE '45000'
      SET MESSAGE_TEXT = concat('Upsert failed for source: ', p_source);
  END;

  MERGE INTO catalog.schema.dim_customer AS t
  USING (SELECT * FROM identifier(p_source)) AS s
  ON t.customer_id = s.customer_id
  WHEN MATCHED THEN UPDATE SET *
  WHEN NOT MATCHED THEN INSERT *;

  SET p_rows_affected = (SELECT COUNT(*) FROM identifier(p_source));
END;

-- Invoke:
CALL catalog.schema.upsert_customers('catalog.schema.staging_customers', ?);

Materialized View with Scheduled Refresh

CREATE OR REPLACE MATERIALIZED VIEW catalog.schema.daily_revenue
  CLUSTER BY (order_date)
  SCHEDULE EVERY 1 HOUR
  COMMENT 'Hourly-refreshed daily revenue by region'
AS SELECT
    order_date,
    region,
    SUM(amount) AS total_revenue,
    COUNT(DISTINCT customer_id) AS unique_customers
FROM catalog.schema.fact_orders
JOIN catalog.schema.dim_store USING (store_id)
GROUP BY order_date, region;

Pipe Syntax - Readable Transformations

-- Traditional SQL rewritten with pipe syntax
FROM catalog.schema.fact_orders
  |> WHERE order_date >= current_date() - INTERVAL 30 DAYS
  |> AGGREGATE SUM(amount) AS total, COUNT(*) AS cnt GROUP BY region, product_category
  |> WHERE total > 10000
  |> ORDER BY total DESC
  |> LIMIT 20;

AI Functions - Enrich Data with LLMs

-- Classify support tickets
SELECT
  ticket_id,
  description,
  ai_classify(description, ARRAY('billing', 'technical', 'account', 'feature_request')) AS category,
  ai_analyze_sentiment(description) AS sentiment
FROM catalog.schema.support_tickets
LIMIT 100;

-- Extract entities from text
SELECT
  doc_id,
  ai_extract(content, ARRAY('person_name', 'company', 'dollar_amount')) AS entities
FROM catalog.schema.contracts;

-- General-purpose AI query with structured output
SELECT ai_query(
  'databricks-meta-llama-3-3-70b-instruct',
  concat('Summarize this customer feedback in JSON with keys: topic, sentiment, action_items. Feedback: ', feedback),
  returnType => 'STRUCT<topic STRING, sentiment STRING, action_items ARRAY<STRING>>'
) AS analysis
FROM catalog.schema.customer_feedback
LIMIT 50;

Geospatial - Proximity Search with H3

-- Find stores within 5km of each customer using H3 indexing
WITH customer_h3 AS (
  SELECT *, h3_longlatash3(longitude, latitude, 7) AS h3_cell
  FROM catalog.schema.customers
),
store_h3 AS (
  SELECT *, h3_longlatash3(longitude, latitude, 7) AS h3_cell
  FROM catalog.schema.stores
)
SELECT
  c.customer_id,
  s.store_id,
  ST_Distance(
    ST_Point(c.longitude, c.latitude),
    ST_Point(s.longitude, s.latitude)
  ) AS distance_m
FROM customer_h3 c
JOIN store_h3 s ON h3_ischildof(c.h3_cell, h3_toparent(s.h3_cell, 5))
WHERE ST_Distance(
  ST_Point(c.longitude, c.latitude),
  ST_Point(s.longitude, s.latitude)
) < 5000;

Collation - Case-Insensitive Search

-- Create table with case-insensitive collation
CREATE TABLE catalog.schema.products (
  product_id BIGINT GENERATED ALWAYS AS IDENTITY,
  name STRING COLLATE UTF8_LCASE,
  category STRING COLLATE UTF8_LCASE,
  price DECIMAL(10, 2)
);

-- Queries automatically case-insensitive (no LOWER() needed)
SELECT * FROM catalog.schema.products
WHERE name = 'MacBook Pro';  -- matches 'macbook pro', 'MACBOOK PRO', etc.

http_request - Call External APIs

-- Set up connection first (one-time)
CREATE CONNECTION my_api_conn
  TYPE HTTP
  OPTIONS (host 'https://api.example.com', bearer_token secret('scope', 'token'));

-- Call API from SQL
SELECT
  order_id,
  http_request(
    conn => 'my_api_conn',
    method => 'POST',
    path => '/v1/validate',
    json => to_json(named_struct('order_id', order_id, 'amount', amount))
  ).text AS api_response
FROM catalog.schema.orders
WHERE needs_validation = true;

read_files - Ingest Raw Files

-- Read JSON files from a Volume with schema hints
SELECT *
FROM read_files(
  '/Volumes/catalog/schema/raw/events/',
  format => 'json',
  schemaHints => 'event_id STRING, timestamp TIMESTAMP, payload MAP<STRING, STRING>',
  pathGlobFilter => '*.json',
  recursiveFileLookup => true
);

-- Read CSV with options
SELECT *
FROM read_files(
  '/Volumes/catalog/schema/raw/sales/',
  format => 'csv',
  header => true,
  delimiter => '|',
  dateFormat => 'yyyy-MM-dd',
  schema => 'sale_id INT, sale_date DATE, amount DECIMAL(10,2), store STRING'
);

Recursive CTE - Hierarchy Traversal

WITH RECURSIVE org_chart AS (
  -- Anchor: top-level managers
  SELECT employee_id, name, manager_id, 0 AS depth, ARRAY(name) AS path
  FROM catalog.schema.employees
  WHERE manager_id IS NULL

  UNION ALL

  -- Recursive: direct reports
  SELECT e.employee_id, e.name, e.manager_id, o.depth + 1, array_append(o.path, e.name)
  FROM catalog.schema.employees e
  JOIN org_chart o ON e.manager_id = o.employee_id
  WHERE o.depth < 10  -- safety limit
)
SELECT * FROM org_chart ORDER BY depth, name;

remote_query - Federated Queries

-- Query PostgreSQL via Lakehouse Federation
SELECT *
FROM remote_query(
  'my_postgres_connection',
  database => 'my_database',
  query    => 'SELECT customer_id, email, created_at FROM customers WHERE active = true'
);

Reference Files

Load these for detailed syntax, full parameter lists, and advanced patterns:

FileContentsWhen to Read
references/sql-scripting.mdSQL Scripting, Stored Procedures, Recursive CTEs, TransactionsUser needs procedural SQL, error handling, loops, dynamic SQL
references/materialized-views-pipes.mdMaterialized Views, Temp Tables/Views, Pipe SyntaxUser needs MVs, refresh scheduling, temp objects, pipe operator
references/geospatial-collations.md39 H3 functions, 80+ ST functions, Collation types and hierarchyUser needs spatial analysis, H3 indexing, case/accent handling
references/ai-functions.md13 AI functions, http_request, remote_query, read_files (all options)User needs AI enrichment, API calls, federation, file ingestion
references/best-practices.mdData modeling, performance, Liquid Clustering, anti-patternsUser needs architecture guidance, optimization, or modeling advice

Key Guidelines

  • Always use Serverless SQL warehouses for AI functions, MVs, and http_request
  • Use LIMIT during development with AI functions to control costs
  • Prefer Liquid Clustering over partitioning for new tables (1-4 keys max)
  • Use CLUSTER BY AUTO when unsure about clustering keys
  • Star schema in Gold layer for BI; OBT acceptable in Silver
  • Define PK/FK constraints on dimensional models for query optimization
  • Use COLLATE UTF8_LCASE for user-facing string columns that need case-insensitive search
  • Test SQL via CLI (databricks experimental aitools tools query) or notebooks before deploying. If --warehouse is rejected on your CLI version, set DATABRICKS_WAREHOUSE_ID in the environment instead.

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