ApexBase Usage Examples¶
Comprehensive examples covering 100% of the ApexBase Python API.
Table of Contents¶
- Basic Operations
- Table Management
- SQL DDL Operations
- Data Import
- Querying Data
- File Reading Table Functions
- Temporary Tables from Files
- Set Operations
- Vector Search
- Column Operations
- Full-Text Search
- Data Modification
- Utility Methods
- Advanced Usage
Basic Operations¶
Initialization¶
from apexbase import ApexClient
# Basic initialization
client = ApexClient("./data")
# With options
client = ApexClient(
dirpath="./data",
durability="safe", # "fast" | "safe" | "max"
batch_size=1000,
cache_size=10000
)
# Create clean instance (deletes existing data)
client = ApexClient.create_clean("./fresh_data")
Storing Data¶
# Create a table first (required before any data operations)
client.create_table("users")
# Single record
client.store({"name": "Alice", "age": 30})
# Multiple records
client.store([
{"name": "Bob", "age": 25},
{"name": "Charlie", "age": 35}
])
# Columnar format (fastest for bulk)
client.store({
"name": ["David", "Eve", "Frank"],
"age": [28, 32, 40],
"city": ["NYC", "LA", "Chicago"]
})
Closing¶
# Explicit close
client.close()
# Context manager (recommended)
with ApexClient("./data") as client:
client.create_table("mydata")
client.store({"key": "value"})
# Auto-closes on exit
Table Management¶
ApexBase requires explicit table creation before any data operations. Each table is stored as a separate .apex file.
client = ApexClient("./data")
# Create tables (the last created table becomes the active table)
client.create_table("users")
# Create table with pre-defined schema
client.create_table("orders", schema={
"order_id": "int64",
"product": "string",
"price": "float64"
})
# List tables
tables = client.list_tables()
print(tables) # ['users', 'orders']
# Switch table
client.use_table("users")
print(client.current_table) # 'users'
# Store in the active table
client.store({"username": "alice", "email": "alice@example.com"})
# Reopen an existing database
client2 = ApexClient("./data")
client2.use_table("users") # Select an existing table
# Drop table (active table resets to None)
client.drop_table("orders")
client.close()
SQL DDL Operations¶
ApexBase supports full SQL DDL (Data Definition Language) operations:
CREATE TABLE¶
client = ApexClient("./data")
# Create a new table (becomes the active table)
client.execute("CREATE TABLE employees")
# Create table only if it doesn't exist
client.execute("CREATE TABLE IF NOT EXISTS departments")
# Verify tables were created
print(client.list_tables()) # ['employees', 'departments']
INSERT¶
# Insert single row with column names
client.execute("INSERT INTO employees (name, age, department) VALUES ('Alice', 30, 'Engineering')")
# Insert multiple rows in one statement
client.execute("""
INSERT INTO employees (name, age, department)
VALUES
('Charlie', 35, 'Marketing'),
('David', 28, 'Engineering')
""")
# Query the data
results = client.execute("SELECT * FROM employees")
print(f"Inserted {len(results)} records")
ALTER TABLE¶
# Add a column with type
client.execute("ALTER TABLE employees ADD COLUMN email STRING")
client.execute("ALTER TABLE employees ADD COLUMN salary FLOAT")
# Rename a column
client.execute("ALTER TABLE employees RENAME COLUMN email TO email_address")
# Drop a column
client.execute("ALTER TABLE employees DROP COLUMN email_address")
DROP TABLE¶
# Drop a table
client.execute("DROP TABLE departments")
# Drop only if exists (avoids error if table doesn't exist)
client.execute("DROP TABLE IF EXISTS temp_table")
# Verify department table was dropped
print(client.list_tables()) # ['employees']
Complete DDL Workflow¶
client = ApexClient("./data")
# 1. Create tables via SQL
client.execute("CREATE TABLE IF NOT EXISTS products")
client.execute("CREATE TABLE IF NOT EXISTS categories")
# 2. Add columns via SQL
client.execute("ALTER TABLE categories ADD COLUMN name STRING")
client.execute("ALTER TABLE categories ADD COLUMN description STRING")
client.execute("ALTER TABLE products ADD COLUMN name STRING")
client.execute("ALTER TABLE products ADD COLUMN price FLOAT")
client.execute("ALTER TABLE products ADD COLUMN category_id INT")
# 3. Insert data via SQL
client.execute("INSERT INTO categories (name, description) VALUES ('Electronics', 'Gadgets')")
client.execute("""
INSERT INTO products (name, price, category_id)
VALUES
('Laptop', 999.99, 1),
('Smartphone', 699.99, 1)
""")
# 4. Query the data
products = client.execute("SELECT * FROM products")
print(products.to_pandas())
# 5. Clean up via SQL
client.execute("DROP TABLE IF EXISTS products")
client.execute("DROP TABLE IF EXISTS categories")
client.close()
Supported DDL Syntax¶
| Statement | Description | Example |
|---|---|---|
CREATE TABLE [IF NOT EXISTS] name |
Create new table | CREATE TABLE users |
INSERT INTO ... VALUES ... |
Insert single row | INSERT INTO users (name) VALUES ('Alice') |
INSERT INTO ... VALUES (...), (...) |
Insert multiple rows | INSERT INTO users (name) VALUES ('A'), ('B') |
ALTER TABLE ... ADD COLUMN ... |
Add column | ALTER TABLE users ADD COLUMN age INT |
ALTER TABLE ... RENAME COLUMN ... |
Rename column | ALTER TABLE users RENAME COLUMN age TO years |
ALTER TABLE ... DROP COLUMN ... |
Drop column | ALTER TABLE users DROP COLUMN age |
DROP TABLE [IF EXISTS] name |
Drop table | DROP TABLE users |
Supported Data Types in DDL¶
| Type | Aliases | Description |
|---|---|---|
STRING |
VARCHAR, TEXT |
Variable-length text |
INT |
INTEGER, INT32, INT64 |
Integer numbers |
FLOAT |
DOUBLE, FLOAT64 |
Floating-point numbers |
BOOL |
BOOLEAN |
True/false values |
Multi-Statement SQL¶
Execute multiple SQL statements separated by semicolons:
client = ApexClient("./data")
# Setup entire schema in one call
client.execute("""
CREATE TABLE IF NOT EXISTS products;
ALTER TABLE products ADD COLUMN name STRING;
ALTER TABLE products ADD COLUMN price FLOAT;
ALTER TABLE products ADD COLUMN category STRING;
INSERT INTO products (name, price, category) VALUES ('Laptop', 999.99, 'Electronics')
""")
# Insert multiple rows efficiently
client.execute("""
INSERT INTO products (name, price, category) VALUES ('Mouse', 29.99, 'Electronics');
INSERT INTO products (name, price, category) VALUES ('Keyboard', 79.99, 'Electronics');
INSERT INTO products (name, price, category) VALUES ('Monitor', 299.99, 'Electronics');
INSERT INTO products (name, price, category) VALUES ('Desk', 199.99, 'Furniture')
""")
# Query and analyze
results = client.execute("""
SELECT category, COUNT(*) as count, AVG(price) as avg_price
FROM products
GROUP BY category
""")
print(results.to_pandas())
# Clean up multiple tables
client.execute("""
DROP TABLE IF EXISTS products;
DROP TABLE IF EXISTS temp_table
""")
client.close()
Notes on Multi-Statement SQL:
- Statements are separated by semicolons (;)
- Semicolons inside string literals are handled correctly
- Statements execute sequentially
- The result of the last statement is returned
- Useful for schema setup and batch operations
Data Import¶
From Pandas¶
import pandas as pd
client = ApexClient("./data")
df = pd.DataFrame({
"product": ["A", "B", "C"],
"price": [10.5, 20.0, 15.0],
"quantity": [100, 200, 150]
})
# table_name auto-creates and selects the table
client.from_pandas(df, table_name="products")
From Polars¶
import polars as pl
client = ApexClient("./data")
df = pl.DataFrame({
"name": ["Alice", "Bob", "Charlie"],
"score": [85, 92, 78]
})
client.from_polars(df, table_name="scores")
From PyArrow¶
import pyarrow as pa
client = ApexClient("./data")
table = pa.table({
"id": [1, 2, 3],
"value": ["a", "b", "c"]
})
client.from_pyarrow(table, table_name="items")
Querying Data¶
SQL Queries¶
client = ApexClient("./data")
client.create_table("metrics")
# Insert test data
for i in range(100):
client.store({"id": i, "value": i * 10, "category": f"cat_{i % 5}"})
# Basic SELECT (use your table name in FROM clause)
results = client.execute("SELECT * FROM metrics")
print(f"Total rows: {len(results)}")
# WHERE clause
results = client.execute("SELECT * FROM metrics WHERE value > 500")
# ORDER BY with LIMIT
results = client.execute("""
SELECT * FROM metrics
WHERE category = 'cat_1'
ORDER BY value DESC
LIMIT 10
""")
# Aggregation
results = client.execute("""
SELECT
COUNT(*) as total,
AVG(value) as avg_value,
MAX(value) as max_value,
MIN(value) as min_value
FROM metrics
""")
print(results.first())
# GROUP BY
results = client.execute("""
SELECT category, COUNT(*), AVG(value)
FROM metrics
GROUP BY category
""")
for row in results:
print(row)
# Get single scalar value
count = client.execute("SELECT COUNT(*) FROM metrics").scalar()
print(f"Count: {count}")
# Count rows shortcut
count = client.count_rows()
count = client.count_rows("users") # Specific table
client.close()
Quoted Identifiers (Reserved Keyword Column Names)¶
client = ApexClient("./data")
client.create_table("events")
# Store data with columns named after SQL keywords
client.store([
{"order": 1, "group": "A", "select": 100},
{"order": 2, "group": "B", "select": 200},
{"order": 3, "group": "A", "select": 150},
])
# Use backticks (Hive/MySQL style) to quote reserved keywords
results = client.execute("SELECT `order`, `group` FROM events WHERE `order` > 1")
print(results.to_pandas())
# Double quotes (SQL standard) also work
results = client.execute('SELECT "order", "group" FROM events ORDER BY "order" DESC')
# GROUP BY with quoted column
results = client.execute("""
SELECT `group`, COUNT(*), AVG(`select`)
FROM events
GROUP BY `group`
""")
for row in results:
print(row)
# INSERT with quoted column names
client.execute("INSERT INTO events (`order`, `group`, `select`) VALUES (4, 'C', 300)")
client.close()
Using query() Method¶
client = ApexClient("./data")
client.use_table("users") # Select existing table
# Simple WHERE expression (uses the active table)
results = client.query("age > 25")
results = client.query("name LIKE 'A%'")
# With limit
results = client.query("age > 25", limit=100)
# Using where_clause parameter
results = client.query(where_clause="city = 'NYC'", limit=50)
client.close()
Retrieve by ID¶
client = ApexClient("./data")
client.use_table("users")
# Single record
record = client.retrieve(1)
print(record) # {'_id': 1, 'name': 'Alice', ...}
# Multiple records
results = client.retrieve_many([1, 6, 11, 16])
df = results.to_pandas()
# All records
results = client.retrieve_all()
print(f"Shape: {results.shape}")
client.close()
ResultView Operations¶
results = client.execute("SELECT * FROM users WHERE age > 25")
# Convert formats
df = results.to_pandas()
pl_df = results.to_polars()
arrow_table = results.to_arrow()
dicts = results.to_dict()
# Properties
print(results.shape) # (rows, columns)
print(results.columns) # ['_id', 'name', 'age', ...]
print(len(results)) # row count
# Get IDs
ids = results.get_ids() # numpy array
ids = results.get_ids(return_list=True) # Python list
# Get single values
first = results.first()
scalar = client.execute("SELECT COUNT(*) FROM users").scalar()
# Iteration
for row in results:
print(row["name"])
# Indexing
row = results[0]
Column Operations¶
client = ApexClient("./data")
client.create_table("people")
client.store({"name": "Alice", "age": 30})
# Add column
client.add_column("email", "String")
client.add_column("score", "Float64")
# Rename column
client.rename_column("email", "email_address")
# Get column type
dtype = client.get_column_dtype("age")
print(f"age column type: {dtype}") # Int64
# List all fields
fields = client.list_fields()
print(fields) # ['_id', 'name', 'age', 'email_address', 'score']
# Drop column
client.drop_column("score")
client.close()
Full-Text Search¶
FTS is available via two interfaces. The SQL interface (recommended) works over Python, PG Wire, and Arrow Flight. The Python API provides direct programmatic access.
See FTS_GUIDE.md for the complete reference.
SQL Interface (Recommended)¶
client = ApexClient("./data")
client.create_table("articles")
# 1. Create the FTS index via SQL DDL
client.execute("CREATE FTS INDEX ON articles (title, content)")
# 2. Insert data — rows are indexed automatically
client.store([
{"title": "Python Tutorial", "content": "Learn Python programming"},
{"title": "Rust Guide", "content": "Systems programming with Rust"},
{"title": "Database Design", "content": "Designing efficient databases"},
{"title": "Machine Learning", "content": "Deep learning with PyTorch"},
])
# 3. MATCH — all query terms must appear
results = client.execute("SELECT * FROM articles WHERE MATCH('python')")
print(results.to_pandas())
# _id title content
# 0 0 Python Tutorial Learn Python programming
# 4. FUZZY_MATCH — tolerates typos
results = client.execute("SELECT * FROM articles WHERE FUZZY_MATCH('progaming')")
# 5. Combine FTS with other predicates
results = client.execute("""
SELECT title FROM articles
WHERE MATCH('programming') AND _id > 0
ORDER BY _id DESC LIMIT 5
""")
# 6. FTS + aggregation
n = client.execute("SELECT COUNT(*) FROM articles WHERE MATCH('python')").scalar()
print(f"Python articles: {n}")
# 7. Manage indexes
client.execute("SHOW FTS INDEXES") # lists all databases
client.execute("ALTER FTS INDEX ON articles DISABLE") # suspend, keep files
client.execute("ALTER FTS INDEX ON articles ENABLE") # resume + back-fill missed rows
client.execute("DROP FTS INDEX ON articles") # remove + delete files
client.close()
FTS with Options¶
# Large index: lazy loading + bigger cache
client.execute("""
CREATE FTS INDEX ON logs (message, source)
WITH (lazy_load=true, cache_size=100000)
""")
# Cross-interface: after init, PG Wire and Arrow Flight can use MATCH() too
# (No extra configuration needed — FTS registry is global in the Rust executor)
Python API (Alternative)¶
client = ApexClient("./data")
client.create_table("docs")
client.store([
{"title": "Python Tutorial", "content": "Learn Python programming"},
{"title": "Rust Guide", "content": "Systems programming with Rust"},
{"title": "Database Design", "content": "Designing efficient databases"},
])
# Initialize FTS (also registers with global SQL executor)
client.init_fts(index_fields=["title", "content"])
# Search — returns numpy array of _ids
ids = client.search_text("Python")
print(f"Found {len(ids)} documents")
# Search and retrieve full records
results = client.search_and_retrieve("programming")
for row in results:
print(f"Title: {row['title']}")
# Top N results
top_results = client.search_and_retrieve_top("database", n=5)
# Fuzzy search (tolerates typos)
ids = client.fuzzy_search_text("progamming") # Note typo
# Stats
stats = client.get_fts_stats()
print(f"Documents: {stats['doc_count']}, Terms: {stats['term_count']}")
client.disable_fts() # suspend (keep files)
client.drop_fts() # remove (delete files)
client.close()
FTS with Lazy Loading¶
client = ApexClient("./data")
client.use_table("docs")
# Initialize with lazy loading
client.init_fts(
index_fields=["content"],
lazy_load=True, # Index loaded on first search
cache_size=50000 # FTS cache size
)
# First search will load the index
results = client.search_and_retrieve("keyword")
client.close()
Data Modification¶
Replace Records¶
client = ApexClient("./data")
client.create_table("people")
# Insert test data
client.store({"name": "Alice", "age": 30})
# Replace by ID
success = client.replace(0, {"name": "Alice Smith", "age": 31})
# Batch replace
updated_ids = client.batch_replace({
0: {"name": "Alice Updated", "age": 32},
1: {"name": "Bob Updated", "age": 26}
})
client.close()
Delete Records¶
client = ApexClient("./data")
client.use_table("people")
# Delete single record
client.delete(5)
# Delete multiple records
client.delete([1, 2, 3, 4, 5])
client.close()
Utility Methods¶
client = ApexClient("./data")
client.use_table("users")
# Flush data to disk
client.flush()
# Flush cache (alias for flush)
client.flush_cache()
# Set auto-flush thresholds
client.set_auto_flush(rows=1000) # Flush every 1000 rows
client.set_auto_flush(bytes=1024*1024) # Flush every 1MB
client.set_auto_flush(rows=500, bytes=512*1024)
# Get auto-flush config
rows, bytes = client.get_auto_flush()
# Estimate memory usage
mem_bytes = client.estimate_memory_bytes()
print(f"Memory: {mem_bytes / 1024 / 1024:.2f} MB")
# Optimize storage
client.optimize() # Currently same as flush
client.close()
Advanced Usage¶
Multi-Table Operations¶
client = ApexClient("./data")
# Create multiple tables
client.create_table("users")
client.create_table("products")
client.create_table("orders")
# Work with users
client.use_table("users")
client.store([
{"user_id": 1, "name": "Alice"},
{"user_id": 2, "name": "Bob"}
])
# Work with products
client.use_table("products")
client.store([
{"product_id": 1, "name": "Laptop", "price": 999.99},
{"product_id": 2, "name": "Mouse", "price": 29.99}
])
# Query across tables
users = client.execute("SELECT * FROM users")
client.use_table("products")
products = client.execute("SELECT * FROM products")
# Get row counts for all tables
for table in client.list_tables():
count = client.count_rows(table)
print(f"{table}: {count} rows")
client.close()
Durability Options¶
# Fast - async writes, best performance (default)
client = ApexClient("./data", durability="fast")
# Safe - sync writes, data safety
client = ApexClient("./data", durability="safe")
# Max - fsync every write, maximum durability
client = ApexClient("./data", durability="max")
Working with Large Datasets¶
# Use columnar storage for bulk inserts
client = ApexClient("./data")
client.create_table("benchmark")
# Generate large dataset
import numpy as np
n = 1_000_000
data = {
"id": range(n),
"value": np.random.randn(n),
"category": np.random.choice(["A", "B", "C"], n)
}
# Columnar insert is much faster
client.store(data)
# Query with limit
results = client.execute("SELECT * FROM benchmark LIMIT 100")
client.close()
Complete Workflow Example¶
from apexbase import ApexClient
import pandas as pd
# Initialize with safe durability
with ApexClient("./analytics", durability="safe") as client:
# Create table
client.create_table("sales")
# Import data from pandas
df = pd.DataFrame({
"date": pd.date_range("2024-01-01", periods=365),
"product": np.random.choice(["A", "B", "C"], 365),
"quantity": np.random.randint(1, 100, 365),
"revenue": np.random.randn(365) * 100 + 500
})
client.from_pandas(df)
# Add computed column
client.add_column("region", "String")
# Query analytics
monthly = client.execute("""
SELECT
strftime('%Y-%m', date) as month,
SUM(revenue) as total_revenue,
AVG(quantity) as avg_quantity
FROM sales
GROUP BY month
ORDER BY month
""")
print(monthly.to_pandas())
# Initialize FTS for product search
client.init_fts(index_fields=["product"])
# Search products
results = client.search_and_retrieve("A")
print(f"Found {len(results)} records")
# Cleanup
client.drop_fts()
# Client automatically closed
File Reading Table Functions¶
Read external files directly inside a SQL FROM clause — no data import or table creation needed. The full SQL engine (WHERE, GROUP BY, ORDER BY, LIMIT, JOIN, UNION) applies to the result.
read_csv¶
from apexbase import ApexClient
import tempfile, os
client = ApexClient(tempfile.mkdtemp())
# Minimal — auto-infers comma delimiter and header row
df = client.execute("SELECT * FROM read_csv('/path/to/file.csv')").to_pandas()
# Tab-separated values
df = client.execute("SELECT * FROM read_csv('/path/to/file.tsv', delimiter='\t')").to_pandas()
# No header row (columns named col0, col1, ...)
df = client.execute("SELECT * FROM read_csv('/path/to/raw.csv', header=false)").to_pandas()
# Filter and aggregate on the file
result = client.execute("""
SELECT region, COUNT(*) AS orders, SUM(revenue) AS total_rev
FROM read_csv('/data/sales_2024.csv')
WHERE revenue > 0
GROUP BY region
ORDER BY total_rev DESC
LIMIT 20
""")
for row in result:
print(row)
# Read into Arrow Table (zero-copy)
table = client.execute("SELECT * FROM read_csv('/data/large.csv')").to_arrow()
# Read into polars DataFrame
import polars as pl
df = client.execute("SELECT * FROM read_csv('/data/data.csv')").to_polars()
read_parquet¶
# Schema is taken from the Parquet file's own metadata
df = client.execute("SELECT * FROM read_parquet('/data/events.parquet')").to_pandas()
# Projection (only read needed columns)
df = client.execute("""
SELECT user_id, event_type, ts
FROM read_parquet('/data/events.parquet')
WHERE event_type = 'purchase'
""").to_pandas()
# Aggregate directly
result = client.execute("""
SELECT event_type, COUNT(*) AS cnt, AVG(amount) AS avg_amount
FROM read_parquet('/data/transactions.parquet')
GROUP BY event_type
ORDER BY cnt DESC
""")
# To Arrow — zero-copy from mmap
import pyarrow as pa
table = client.execute("SELECT * FROM read_parquet('/data/wide.parquet')").to_arrow()
read_json¶
# NDJSON (one JSON object per line — .json, .jsonl, .ndjson)
df = client.execute("SELECT * FROM read_json('/data/logs.ndjson')").to_pandas()
# pandas-exported JSON (df.to_json(orient='columns') or orient='split')
df = client.execute("SELECT * FROM read_json('/data/export.json')").to_pandas()
# Filter and aggregate
result = client.execute("""
SELECT level, COUNT(*) AS cnt
FROM read_json('/data/app_logs.json')
WHERE level IN ('ERROR', 'WARN')
GROUP BY level
ORDER BY cnt DESC
""")
Combining file reads with tables and set operations¶
client.create_table("users")
client.store([{"id": 1, "email": "alice@example.com"}, {"id": 2, "email": "bob@example.com"}])
# JOIN: enrich stored users with scores from a file
result = client.execute("""
SELECT u.email, s.score
FROM users u
JOIN read_csv('/data/scores.csv') s ON u.id = s.user_id
WHERE s.score >= 80
ORDER BY s.score DESC
""")
# UNION ALL: merge stored table with new rows from a file
result = client.execute("""
SELECT email FROM users
UNION ALL
SELECT email FROM read_csv('/data/new_signups.csv')
""")
# EXCEPT: remove unsubscribed addresses from the list
result = client.execute("""
SELECT email FROM users
EXCEPT
SELECT email FROM read_csv('/data/unsubscribed.csv')
""")
read_csv options summary:
| Option | Default | Aliases | Description |
|---|---|---|---|
header |
true |
— | false or 0 to treat first row as data |
delimiter |
, |
delim, sep |
Single-character field separator |
Vector Search¶
ApexBase provides SIMD-accelerated nearest-neighbour search over vector columns. The engine scans an OS-level mmap float buffer that is populated once and reused, delivering 3–4× speedups over DuckDB at 1M rows.
Storing vectors¶
import numpy as np
from apexbase import ApexClient
client = ApexClient("./vecdb")
client.create_table("items")
# Bulk insert — numpy arrays become FixedList columns (optimal path)
N, D = 100_000, 128
vecs = np.random.rand(N, D).astype(np.float32)
client.store({
"label": [f"item_{i}" for i in range(N)],
"vec": list(vecs), # list of 1-D numpy arrays
})
# Single record
client.store({"label": "query_item", "vec": np.array([0.1] * D, dtype=np.float32)})
# Python list/tuple vectors also work
client.store({"label": "list_item", "vec": [0.1, 0.2, 0.3]})
topk_distance — single-query search¶
Returns the k nearest neighbours for one query vector as a ResultView.
query = np.random.rand(D).astype(np.float32)
# Default: L2 distance, top 10
results = client.topk_distance('vec', query, k=10)
df = results.to_pandas()
print(df.columns.tolist()) # ['_id', 'dist']
print(df.head())
# _id dist
# 0 42 0.312...
# 1 17 0.318...
# ...
# Cosine distance
results = client.topk_distance('vec', query, k=5, metric='cosine')
# Dot product (inner product) — maximise similarity
results = client.topk_distance('vec', query, k=10, metric='dot')
# Custom output column names
results = client.topk_distance(
'vec', query, k=10, metric='l2',
id_col='item_id', dist_col='l2_dist',
)
df = results.to_pandas()
print(df.columns.tolist()) # ['item_id', 'l2_dist']
Retrieve full records for the top-k results:
results = client.topk_distance('vec', query, k=10)
top_ids = results.get_ids() # numpy int64 array
records = client.retrieve_many(top_ids.tolist()) # ResultView with all columns
print(records.to_pandas())
All supported metrics:
metric |
Aliases | Notes |
|---|---|---|
'l2' |
'euclidean' |
Euclidean distance (default) |
'l2_squared' |
— | Squared L2 (avoids sqrt, same ranking) |
'l1' |
'manhattan' |
Sum of absolute differences |
'linf' |
'chebyshev' |
Maximum absolute difference |
'cosine' |
'cosine_distance' |
1 − cosine similarity |
'dot' |
'inner_product' |
Negated dot product (min = max similarity) |
batch_topk_distance — N queries in one call¶
Significantly faster than N sequential topk_distance calls when the scan buffer is warm.
import numpy as np
N_queries = 200
queries = np.random.rand(N_queries, D).astype(np.float32)
# Returns ndarray of shape (N_queries, k, 2)
result = client.batch_topk_distance('vec', queries, k=10)
print(result.shape) # (200, 10, 2)
# Extract IDs and distances
ids = result[:, :, 0].astype(np.int64) # shape (200, 10)
dists = result[:, :, 1] # shape (200, 10)
# Best (nearest) neighbour for each query
nearest_id = ids[:, 0] # shape (200,)
nearest_dist = dists[:, 0] # shape (200,)
# Batch cosine search
result_cos = client.batch_topk_distance('vec', queries, k=5, metric='cosine')
# Single-query convenience: 1-D array is accepted as N=1
result_single = client.batch_topk_distance('vec', queries[0], k=10)
print(result_single.shape) # (1, 10, 2)
Result layout:
result[i, j, 0] → _id of the j-th nearest neighbour for query i
result[i, j, 1] → dist of the j-th nearest neighbour for query i
Rows padded with (-1, inf) when fewer than k neighbours exist.
SQL: explode_rename(topk_distance(...))¶
Vector search is also available as a SQL expression. The Python topk_distance() method builds this SQL internally; you can write it directly for more complex compositions.
# Basic SQL vector search
results = client.execute("""
SELECT explode_rename(topk_distance(vec, [0.1, 0.2, 0.3], 10, 'l2'), '_id', 'dist')
FROM items
""")
df = results.to_pandas()
# 10 rows: _id (int64), dist (float64), sorted nearest first
# Cosine search with custom names
results = client.execute("""
SELECT explode_rename(
topk_distance(vec, [1.0, 0.0, 0.0], 5, 'cosine'),
'item_id', 'cosine_dist'
)
FROM items
""")
# Dot product search
results = client.execute("""
SELECT explode_rename(topk_distance(vec, [0.5, 0.5, 0.5], 20, 'dot'), '_id', 'score')
FROM embeddings
""")
SQL syntax summary:
SELECT explode_rename(
topk_distance(col, [q1, q2, ..., qD], k, 'metric'),
'id_column_name',
'dist_column_name'
)
FROM table_name
- The query vector must be an inline array literal
[f1, f2, ...]. - For dynamic Python query vectors, prefer
client.topk_distance()which formats the literal automatically.
End-to-end example: embedding search¶
import numpy as np
from apexbase import ApexClient
DIM = 64
client = ApexClient("./embed_db")
client.create_table("docs")
# Insert documents with embeddings
docs = [
{"title": "Introduction to Rust", "vec": np.random.rand(DIM).astype(np.float32)},
{"title": "Python Data Science", "vec": np.random.rand(DIM).astype(np.float32)},
{"title": "Deep Learning Basics", "vec": np.random.rand(DIM).astype(np.float32)},
{"title": "Vector Database Guide", "vec": np.random.rand(DIM).astype(np.float32)},
]
client.store(docs)
# Query: find the 3 most similar documents
query_vec = np.random.rand(DIM).astype(np.float32)
top = client.topk_distance('vec', query_vec, k=3, metric='cosine')
# Retrieve full records
top_ids = top.get_ids()
results = client.retrieve_many(top_ids.tolist())
for row in results:
print(row['title'], row['_id'])
# Batch: multiple query vectors at once
queries = np.random.rand(10, DIM).astype(np.float32)
batch = client.batch_topk_distance('vec', queries, k=3, metric='cosine')
ids = batch[:, :, 0].astype(np.int64) # (10, 3)
dists = batch[:, :, 1] # (10, 3)
print("Top-3 IDs for each query:")
print(ids)
Temporary Tables from Files¶
Register CSV, JSON, or Parquet files as native temp tables. The file is parsed once; all subsequent queries use the mmap-backed .apex format (zone maps, bloom filters, zero-copy reads).
Register a CSV file¶
# Register — parses and materializes as native .apex
client.register_temp_table("sales", "/data/sales.csv")
# Query — no parsing overhead on subsequent calls
monthly = client.execute("""
SELECT category, SUM(amount) AS total
FROM sales
WHERE amount > 100
GROUP BY category
ORDER BY total DESC
LIMIT 10
""")
# JOIN with a persistent table
result = client.execute("""
SELECT s.*, u.name
FROM sales s
JOIN users u ON s.user_id = u._id
WHERE s.city = 'Beijing'
""")
Register JSON / NDJSON¶
client.register_temp_table("logs", "/data/events.ndjson")
# Aggregate over the temp table
counts = client.execute("""
SELECT event_type, COUNT(*) AS cnt
FROM logs
GROUP BY event_type
""").to_dict()
Register Parquet¶
client.register_temp_table("users", "/data/users.parquet")
count = client.execute("SELECT COUNT(*) FROM users WHERE age > 30").scalar()
Drop a temp table¶
CREATE TEMP TABLE (SQL syntax)¶
Performance comparison¶
For workloads that query the same file repeatedly, register_temp_table() provides dramatic speedups:
import time
# Slow: re-parses CSV every time
t0 = time.perf_counter()
for _ in range(100):
client.execute("SELECT COUNT(*) FROM read_csv('/data/big.csv')")
print(f"read_csv repeated: {(time.perf_counter()-t0)*1000:.0f}ms")
# Fast: parse once, query native .apex
client.register_temp_table("big", "/data/big.csv")
t0 = time.perf_counter()
for _ in range(100):
client.execute("SELECT COUNT(*) FROM big")
print(f"temp table: {(time.perf_counter()-t0)*1000:.0f}ms")
client.drop_temp_table("big")
Set Operations¶
Set operations combine result sets from two SELECT statements. Both sides must produce the same number of columns.
UNION — deduplicated¶
client.execute("CREATE TABLE a (val INT)")
client.execute("INSERT INTO a VALUES (1),(2),(3),(4)")
client.execute("CREATE TABLE b (val INT)")
client.execute("INSERT INTO b VALUES (2),(3),(5),(6)")
# UNION removes duplicates — result: [1, 2, 3, 4, 5, 6]
result = client.execute("""
SELECT val FROM a
UNION
SELECT val FROM b
ORDER BY val
""")
assert [r['val'] for r in result] == [1, 2, 3, 4, 5, 6]
UNION ALL — all rows including duplicates¶
# UNION ALL keeps duplicates — result: 8 rows (2, 3 appear twice)
result = client.execute("""
SELECT val FROM a
UNION ALL
SELECT val FROM b
ORDER BY val
""")
assert len(result) == 8
INTERSECT — rows in both sides¶
# INTERSECT returns rows present in both a and b — result: [2, 3]
result = client.execute("""
SELECT val FROM a
INTERSECT
SELECT val FROM b
ORDER BY val
""")
assert [r['val'] for r in result] == [2, 3]
EXCEPT — rows only in left side¶
# EXCEPT returns rows in a that are NOT in b — result: [1, 4]
result = client.execute("""
SELECT val FROM a
EXCEPT
SELECT val FROM b
ORDER BY val
""")
assert [r['val'] for r in result] == [1, 4]
Practical examples¶
# Find customers who both placed an order AND have a wishlist entry
result = client.execute("""
SELECT user_id FROM orders
INTERSECT
SELECT user_id FROM wishlist
""")
# Find customers who ordered but have NO open support ticket
result = client.execute("""
SELECT user_id FROM orders
EXCEPT
SELECT user_id FROM support_tickets WHERE status = 'open'
""")
# Combine users from two separate databases
result = client.execute("""
SELECT name, email FROM default.users
UNION
SELECT name, email FROM analytics.trial_users
ORDER BY name
""")
# Set operations work with read_csv too
result = client.execute("""
SELECT email FROM subscribers
EXCEPT
SELECT email FROM read_csv('/data/bounced_emails.csv')
""")
Quick reference¶
| Operation | Duplicates | Returns |
|---|---|---|
UNION |
removed | rows in left or right |
UNION ALL |
kept | all rows from both sides |
INTERSECT |
removed | rows in left and right |
EXCEPT |
removed | rows in left but not right |
API Summary¶
ApexClient Methods¶
Initialization: __init__, create_clean, close
Table Management: use_table, create_table, drop_table, list_tables, current_table
Data Storage: store, from_pandas(df, table_name=), from_polars(df, table_name=), from_pyarrow(table, table_name=)
Query: execute, query, retrieve, retrieve_many, retrieve_all, count_rows
Vector Search: topk_distance(col, query, k=10, metric='l2', id_col='_id', dist_col='dist'), batch_topk_distance(col, queries, k=10, metric='l2')
Modification: replace, batch_replace, delete
Columns: add_column, drop_column, rename_column, get_column_dtype, list_fields
FTS: init_fts, search_text, fuzzy_search_text, search_and_retrieve, search_and_retrieve_top, get_fts_stats, disable_fts, drop_fts
Utility: flush, flush_cache, set_auto_flush, get_auto_flush, estimate_memory_bytes, optimize
ResultView Methods¶
Conversion: to_pandas, to_polars, to_arrow, to_dict
Access: scalar, first, get_ids, __len__, __iter__, __getitem__
Properties: shape, columns
This documentation covers 100% of the public ApexBase Python API.