# BaraQL - Query Language Reference BaraQL is a SQL-compatible query language with extensions for graph, vector, and document operations. ## Data Types | Type | Description | Example | |------|-------------|---------| | `null` | Null value | `null` | | `bool` | Boolean | `true`, `false` | | `int8` | 8-bit signed integer | `127` | | `int16` | 16-bit signed integer | `32767` | | `int32` | 32-bit signed integer | `2147483647` | | `int64` | 64-bit signed integer | `9223372036854775807` | | `float32` | 32-bit float | `3.14` | | `float64` | 64-bit float | `3.14159265359` | | `str` | UTF-8 string | `'hello'` | | `bytes` | Raw bytes | `0xDEADBEEF` | | `array` | Homogeneous array | `[1, 2, 3]` | | `vector` | Float32 vector | `[0.1, 0.2, 0.3]` | | `object` | Key-value object | `{"a": 1}` | | `datetime` | ISO 8601 timestamp | `'2025-01-15T10:30:00Z'` | | `uuid` | UUID v4 | `'550e8400-e29b-41d4-a716-446655440000'` | | `json` | JSON document | `{"key": "value"}` | | `jsonb` | Binary JSON (validated) | `{"key": "value"}` | ## Basic Queries ### SELECT ```sql -- All columns SELECT * FROM users; -- Specific columns SELECT name, age FROM users; -- Aliases SELECT name AS full_name, age AS years FROM users; -- DISTINCT SELECT DISTINCT department FROM employees; -- LIMIT and OFFSET SELECT * FROM users LIMIT 10 OFFSET 20; ``` ### WHERE ```sql -- Comparison operators SELECT * FROM users WHERE age > 18; SELECT * FROM users WHERE age >= 18 AND age <= 65; SELECT * FROM users WHERE name = 'Alice'; SELECT * FROM users WHERE name != 'Bob'; -- Range SELECT * FROM users WHERE age BETWEEN 18 AND 65; -- Set membership SELECT * FROM users WHERE department IN ('Engineering', 'Sales'); -- Pattern matching SELECT * FROM users WHERE name LIKE 'A%'; SELECT * FROM users WHERE name ILIKE 'alice'; -- Case-insensitive -- NULL checks SELECT * FROM users WHERE email IS NOT NULL; -- Logical operators SELECT * FROM users WHERE age > 18 AND (department = 'Engineering' OR department = 'Sales'); ``` ### ORDER BY ```sql -- Ascending (default) SELECT * FROM users ORDER BY age; -- Descending SELECT * FROM users ORDER BY age DESC; -- Multiple columns SELECT * FROM users ORDER BY department ASC, age DESC; ``` ### INSERT ```sql -- Single row INSERT users { name := 'Alice', age := 30 }; -- With explicit type INSERT User { name := 'Alice', age := 30 }; -- Multiple rows INSERT users { { name := 'Alice', age := 30 }, { name := 'Bob', age := 25 } }; ``` ### UPDATE ```sql -- Update all rows UPDATE users SET status = 'active'; -- Conditional update UPDATE users SET age = 31 WHERE name = 'Alice'; -- Update multiple columns UPDATE users SET age = 32, status = 'premium' WHERE name = 'Alice'; ``` ### DELETE ```sql -- Delete all rows DELETE FROM users; -- Conditional delete DELETE FROM users WHERE age < 18; ``` ## Aggregates and Grouping ### Aggregate Functions | Function | Description | |----------|-------------| | `count(*)` | Count all rows | | `count(column)` | Count non-NULL values | | `sum(column)` | Sum of values | | `avg(column)` | Average | | `min(column)` | Minimum value | | `max(column)` | Maximum value | | `stddev(column)` | Standard deviation | | `variance(column)` | Variance | ### GROUP BY ```sql SELECT department, count(*) as emp_count, avg(salary) as avg_salary FROM employees GROUP BY department; -- With HAVING SELECT department, count(*) as emp_count FROM employees GROUP BY department HAVING count(*) > 5; -- Multiple groupings SELECT department, role, count(*), avg(salary) FROM employees GROUP BY department, role; ``` ## JOINs ```sql -- INNER JOIN SELECT u.name, o.total FROM users u INNER JOIN orders o ON u.id = o.user_id; -- LEFT JOIN SELECT u.name, o.total FROM users u LEFT JOIN orders o ON u.id = o.user_id; -- RIGHT JOIN SELECT u.name, o.total FROM users u RIGHT JOIN orders o ON u.id = o.user_id; -- FULL JOIN SELECT u.name, o.total FROM users u FULL JOIN orders o ON u.id = o.user_id; -- CROSS JOIN SELECT u.name, p.name FROM users u CROSS JOIN products p; -- Multiple JOINs SELECT u.name, o.id, p.name FROM orders o JOIN users u ON o.user_id = u.id JOIN products p ON o.product_id = p.id; -- Self JOIN SELECT e.name, m.name as manager FROM employees e JOIN employees m ON e.manager_id = m.id; ``` ## CTEs (Common Table Expressions) ```sql -- Single CTE WITH active_users AS ( SELECT * FROM users WHERE active = true ) SELECT * FROM active_users; -- Multiple CTEs WITH recent AS ( SELECT * FROM orders WHERE date > '2025-01-01' ), totals AS ( SELECT user_id, sum(amount) as total FROM recent GROUP BY user_id ) SELECT u.name, t.total FROM users u JOIN totals t ON u.id = t.user_id; -- Recursive CTE WITH RECURSIVE subordinates AS ( SELECT id, name, manager_id FROM employees WHERE name = 'CEO' UNION ALL SELECT e.id, e.name, e.manager_id FROM employees e JOIN subordinates s ON e.manager_id = s.id ) SELECT * FROM subordinates; ``` ## Subqueries ```sql -- Subquery in SELECT SELECT name, (SELECT count(*) FROM orders WHERE user_id = u.id) as order_count FROM users u; -- Subquery in FROM SELECT * FROM (SELECT id, name FROM users WHERE active = true) AS active; -- Subquery in WHERE (IN) SELECT name FROM users WHERE id IN (SELECT user_id FROM orders); -- Subquery in WHERE (EXISTS) SELECT name FROM users WHERE EXISTS (SELECT 1 FROM orders WHERE orders.user_id = users.id); -- Correlated subquery SELECT name FROM users u WHERE age > (SELECT avg(age) FROM users WHERE department = u.department); ``` ## CASE Expressions ```sql SELECT name, CASE WHEN age < 13 THEN 'child' WHEN age < 20 THEN 'teenager' WHEN age < 65 THEN 'adult' ELSE 'senior' END AS category FROM users; -- Simple CASE SELECT name, CASE department WHEN 'Engineering' THEN 'Tech' WHEN 'Sales' THEN 'Revenue' ELSE 'Other' END AS division FROM employees; ``` ## Set Operations ```sql -- UNION (distinct) SELECT name FROM customers UNION SELECT name FROM suppliers; -- UNION ALL (with duplicates) SELECT name FROM customers UNION ALL SELECT name FROM suppliers; -- INTERSECT SELECT name FROM customers INTERSECT SELECT name FROM suppliers; -- EXCEPT SELECT name FROM customers EXCEPT SELECT name FROM suppliers; ``` ## Schema Definition ### CREATE TYPE ```sql CREATE TYPE Person { name: str, age: int32 }; -- With required fields CREATE TYPE User { email: str REQUIRED, name: str, age: int32, created_at: datetime DEFAULT now() }; -- With links CREATE TYPE Movie { title: str, year: int32, director: Person }; -- With computed properties CREATE TYPE Employee { name: str, base_salary: float64, bonus: float64, total_compensation: float64 COMPUTED (base_salary + bonus) }; ``` ### Inheritance ```sql CREATE TYPE Animal { name: str }; CREATE TYPE Dog EXTENDING Animal { breed: str }; CREATE TYPE Cat EXTENDING Animal { indoor: bool }; ``` ### Indexes ```sql CREATE INDEX idx_users_name ON users(name); CREATE UNIQUE INDEX idx_users_email ON users(email); CREATE INDEX idx_users_age ON users(age) USING btree; ``` ### DROP ```sql DROP TYPE User; DROP INDEX idx_users_name; ``` ### JSON Path Operators ```sql -- Extract JSON field as JSON SELECT data->'name' FROM users; -- Extract JSON field as text SELECT data->>'name' FROM users; ``` ### Full-Text Search (SQL) ```sql -- Create FTS index with BM25 CREATE INDEX idx_fts ON articles(body) USING FTS; -- Search with BM25 ranking SELECT * FROM articles WHERE body @@ 'machine learning'; ``` ### Point-in-Time Recovery ```sql RECOVER TO TIMESTAMP '2026-05-07T12:00:00'; ``` ## Vector Search ```sql -- Insert with vector INSERT articles { title := 'Nim Programming', embedding := [0.1, 0.2, 0.3, 0.4] }; -- Similarity search (cosine distance) SELECT title FROM articles ORDER BY cosine_distance(embedding, [0.1, 0.2, 0.3, 0.4]) LIMIT 5; -- Euclidean distance SELECT title FROM articles ORDER BY l2_distance(embedding, [0.1, 0.2, 0.3, 0.4]) LIMIT 5; -- Dot product SELECT title FROM articles ORDER BY dot_product(embedding, [0.1, 0.2, 0.3, 0.4]) DESC LIMIT 5; -- With metadata filter SELECT title FROM articles WHERE category = 'tech' ORDER BY cosine_distance(embedding, [0.1, 0.2, 0.3, 0.4]) LIMIT 5; ``` ## Graph Patterns ```sql -- Find friends of Alice MATCH (p:Person)-[:KNOWS]->(friend:Person) WHERE p.name = 'Alice' RETURN friend.name; -- Find shortest path MATCH path = shortestPath((a:Person)-[:KNOWS*1..5]->(b:Person)) WHERE a.name = 'Alice' AND b.name = 'Bob' RETURN path; -- Find all relationships MATCH (p:Person)-[r]->(other) WHERE p.name = 'Alice' RETURN type(r), other.name; -- Multiple hops MATCH (a:Person)-[:KNOWS]->(b:Person)-[:KNOWS]->(c:Person) WHERE a.name = 'Alice' RETURN c.name; -- With aggregates MATCH (p:Person)-[:KNOWS]->(friend) RETURN p.name, count(friend) as friend_count ORDER BY friend_count DESC; ``` ## Full-Text Search ```sql -- Basic search SELECT * FROM articles WHERE MATCH(title, body) AGAINST('database programming'); -- With relevance score SELECT title, relevance() FROM articles WHERE MATCH(title, body) AGAINST('Nim language') ORDER BY relevance() DESC; -- Boolean mode SELECT * FROM articles WHERE MATCH(title, body) AGAINST('+Nim -Python' IN BOOLEAN MODE); -- Fuzzy search SELECT * FROM articles WHERE MATCH(title) AGAINST('programing' WITH FUZZINESS 2); ``` ## Transactions ```sql BEGIN; INSERT users { name := 'Alice', age := 30 }; INSERT orders { user_id := last_insert_id(), total := 100 }; COMMIT; -- With savepoint BEGIN; INSERT users { name := 'Bob', age := 25 }; SAVEPOINT sp1; INSERT orders { user_id := last_insert_id(), total := 200 }; -- Oops, rollback to savepoint ROLLBACK TO sp1; COMMIT; ``` ## User-Defined Functions ```sql -- Register a UDF CREATE FUNCTION greet(name str) -> str { RETURN 'Hello, ' || name || '!'; }; -- Use it SELECT greet(name) FROM users; -- Built-in functions SELECT abs(-5), sqrt(16), lower('HELLO'), len('test'); ``` ## Query Hints ```sql -- Force index usage SELECT /*+ USE_INDEX(idx_users_age) */ * FROM users WHERE age > 18; -- Force approximate vector search SELECT /*+ APPROXIMATE */ * FROM vectors ORDER BY cosine_distance(embedding, [...]) LIMIT 10; -- Parallel execution SELECT /*+ PARALLEL(4) */ * FROM large_table; ``` ## Supported Keywords | Category | Keywords | |----------|----------| | DQL | SELECT, FROM, WHERE, ORDER BY, GROUP BY, HAVING, LIMIT, OFFSET, DISTINCT | | DML | INSERT, UPDATE, DELETE, SET, VALUES | | DDL | CREATE TYPE, DROP TYPE, CREATE INDEX, DROP INDEX, ALTER TYPE | | Join | INNER JOIN, LEFT JOIN, RIGHT JOIN, FULL JOIN, CROSS JOIN, ON | | Set | UNION, UNION ALL, INTERSECT, EXCEPT | | CTEs | WITH, RECURSIVE, AS | | Case | CASE, WHEN, THEN, ELSE, END | | Transaction | BEGIN, COMMIT, ROLLBACK, SAVEPOINT | | Graph | MATCH, RETURN, WHERE, shortestPath, type | | FTS | MATCH, AGAINST, relevance, IN BOOLEAN MODE, WITH FUZZINESS | | Vector | cosine_distance, l2_distance, dot_product, manhattan_distance | | JSON | ->, ->> | | FTS | @@ (BM25 match) | | Recovery | RECOVER TO TIMESTAMP | | Functions | count, sum, avg, min, max, stddev, variance, abs, sqrt, lower, upper, len, trim, substr, now, last_insert_id |