lakebase-autoscale

📁 databricks-solutions/ai-dev-kit 📅 14 days ago
4
总安装量
4
周安装量
#50813
全站排名
安装命令
npx skills add https://github.com/databricks-solutions/ai-dev-kit --skill lakebase-autoscale

Agent 安装分布

opencode 4
continue 3
github-copilot 2
amp 1
kimi-cli 1
codex 1

Skill 文档

Lakebase Autoscaling

Patterns and best practices for using Lakebase Autoscaling, the next-generation managed PostgreSQL on Databricks with autoscaling compute, branching, scale-to-zero, and instant restore.

When to Use

Use this skill when:

  • Building applications that need a PostgreSQL database with autoscaling compute
  • Working with database branching for dev/test/staging workflows
  • Adding persistent state to applications with scale-to-zero cost savings
  • Implementing reverse ETL from Delta Lake to an operational database via synced tables
  • Managing Lakebase Autoscaling projects, branches, computes, or credentials

Overview

Lakebase Autoscaling is Databricks’ next-generation managed PostgreSQL service for OLTP workloads. It provides autoscaling compute, Git-like branching, scale-to-zero, and instant point-in-time restore.

Feature Description
Autoscaling Compute 0.5-112 CU with 2 GB RAM per CU; scales dynamically based on load
Scale-to-Zero Compute suspends after configurable inactivity timeout
Branching Create isolated database environments (like Git branches) for dev/test
Instant Restore Point-in-time restore from any moment within the configured window (up to 35 days)
OAuth Authentication Token-based auth via Databricks SDK (1-hour expiry)
Reverse ETL Sync data from Delta tables to PostgreSQL via synced tables

Available Regions (AWS): us-east-1, us-east-2, eu-central-1, eu-west-1, eu-west-2, ap-south-1, ap-southeast-1, ap-southeast-2

Available Regions (Azure Beta): eastus2, westeurope, westus

Project Hierarchy

Understanding the hierarchy is essential for working with Lakebase Autoscaling:

Project (top-level container)
  └── Branch(es) (isolated database environments)
        ├── Compute (primary R/W endpoint)
        ├── Read Replica(s) (optional, read-only)
        ├── Role(s) (Postgres roles)
        └── Database(s) (Postgres databases)
              └── Schema(s)
Object Description
Project Top-level container. Created via w.postgres.create_project().
Branch Isolated database environment with copy-on-write storage. Default branch is production.
Compute Postgres server powering a branch. Configurable CU sizing and autoscaling.
Database Standard Postgres database within a branch. Default is databricks_postgres.

Quick Start

Create a project and connect:

from databricks.sdk import WorkspaceClient
from databricks.sdk.service.postgres import Project, ProjectSpec

w = WorkspaceClient()

# Create a project (long-running operation)
operation = w.postgres.create_project(
    project=Project(
        spec=ProjectSpec(
            display_name="My Application",
            pg_version="17"
        )
    ),
    project_id="my-app"
)
result = operation.wait()
print(f"Created project: {result.name}")

Common Patterns

Generate OAuth Token

from databricks.sdk import WorkspaceClient

w = WorkspaceClient()

# Generate database credential for connecting (optionally scoped to an endpoint)
cred = w.postgres.generate_database_credential(
    endpoint="projects/my-app/branches/production/endpoints/ep-primary"
)
token = cred.token  # Use as password in connection string
# Token expires after 1 hour

Connect from Notebook

import psycopg
from databricks.sdk import WorkspaceClient

w = WorkspaceClient()

# Get endpoint details
endpoint = w.postgres.get_endpoint(
    name="projects/my-app/branches/production/endpoints/ep-primary"
)
host = endpoint.status.hosts.host

# Generate token (scoped to endpoint)
cred = w.postgres.generate_database_credential(
    endpoint="projects/my-app/branches/production/endpoints/ep-primary"
)

# Connect using psycopg3
conn_string = (
    f"host={host} "
    f"dbname=databricks_postgres "
    f"user={w.current_user.me().user_name} "
    f"password={cred.token} "
    f"sslmode=require"
)
with psycopg.connect(conn_string) as conn:
    with conn.cursor() as cur:
        cur.execute("SELECT version()")
        print(cur.fetchone())

Create a Branch for Development

from databricks.sdk.service.postgres import Branch, BranchSpec, Duration

# Create a dev branch with 7-day expiration
branch = w.postgres.create_branch(
    parent="projects/my-app",
    branch=Branch(
        spec=BranchSpec(
            source_branch="projects/my-app/branches/production",
            ttl=Duration(seconds=604800)  # 7 days
        )
    ),
    branch_id="development"
).wait()
print(f"Branch created: {branch.name}")

Resize Compute (Autoscaling)

from databricks.sdk.service.postgres import Endpoint, EndpointSpec, FieldMask

# Update compute to autoscale between 2-8 CU
w.postgres.update_endpoint(
    name="projects/my-app/branches/production/endpoints/ep-primary",
    endpoint=Endpoint(
        name="projects/my-app/branches/production/endpoints/ep-primary",
        spec=EndpointSpec(
            autoscaling_limit_min_cu=2.0,
            autoscaling_limit_max_cu=8.0
        )
    ),
    update_mask=FieldMask(field_mask=[
        "spec.autoscaling_limit_min_cu",
        "spec.autoscaling_limit_max_cu"
    ])
).wait()

MCP Tools

The following MCP tools are available for managing Lakebase infrastructure. Use type="autoscale" for Lakebase Autoscaling.

Database (Project) Management

Tool Description
create_or_update_lakebase_database Create or update a database. Finds by name, creates if new, updates if existing. Use type="autoscale", display_name, pg_version params. A new project auto-creates a production branch, default compute, and databricks_postgres database.
get_lakebase_database Get database details (including branches and endpoints) or list all. Pass name to get one, omit to list all. Use type="autoscale" to filter.
delete_lakebase_database Delete a project and all its branches, computes, and data. Use type="autoscale".

Branch Management

Tool Description
create_or_update_lakebase_branch Create or update a branch with its compute endpoint. Params: project_name, branch_id, source_branch, ttl_seconds, is_protected, plus compute params (autoscaling_limit_min_cu, autoscaling_limit_max_cu, scale_to_zero_seconds).
delete_lakebase_branch Delete a branch and its compute endpoints.

Credentials

Tool Description
generate_lakebase_credential Generate OAuth token for PostgreSQL connections (1-hour expiry). Pass endpoint resource name for autoscale.

Reference Files

CLI Quick Reference

# Create a project
databricks postgres create-project \
    --project-id my-app \
    --json '{"spec": {"display_name": "My App", "pg_version": "17"}}'

# List projects
databricks postgres list-projects

# Get project details
databricks postgres get-project projects/my-app

# Create a branch
databricks postgres create-branch projects/my-app development \
    --json '{"spec": {"source_branch": "projects/my-app/branches/production", "no_expiry": true}}'

# List branches
databricks postgres list-branches projects/my-app

# Get endpoint details
databricks postgres get-endpoint projects/my-app/branches/production/endpoints/ep-primary

# Delete a project
databricks postgres delete-project projects/my-app

Key Differences from Lakebase Provisioned

Aspect Provisioned Autoscaling
SDK module w.database w.postgres
Top-level resource Instance Project
Capacity CU_1, CU_2, CU_4, CU_8 (16 GB/CU) 0.5-112 CU (2 GB/CU)
Branching Not supported Full branching support
Scale-to-zero Not supported Configurable timeout
Operations Synchronous Long-running operations (LRO)
Read replicas Readable secondaries Dedicated read-only endpoints

Common Issues

Issue Solution
Token expired during long query Implement token refresh loop; tokens expire after 1 hour
Connection refused after scale-to-zero Compute wakes automatically on connection; reactivation takes a few hundred ms; implement retry logic
DNS resolution fails on macOS Use dig command to resolve hostname, pass hostaddr to psycopg
Branch deletion blocked Delete child branches first; cannot delete branches with children
Autoscaling range too wide Max – min cannot exceed 8 CU (e.g., 8-16 CU is valid, 0.5-32 CU is not)
SSL required error Always use sslmode=require in connection string
Update mask required All update operations require an update_mask specifying fields to modify
Connection closed after 24h idle All connections have a 24-hour idle timeout and 3-day max lifetime; implement retry logic

Current Limitations

These features are NOT yet supported in Lakebase Autoscaling:

  • High availability with readable secondaries (use read replicas instead)
  • Databricks Apps UI integration (Apps can connect manually via credentials)
  • Feature Store integration
  • Stateful AI agents (LangChain memory)
  • Postgres-to-Delta sync (only Delta-to-Postgres reverse ETL)
  • Custom billing tags and serverless budget policies
  • Direct migration from Lakebase Provisioned (use pg_dump/pg_restore or reverse ETL)

SDK Version Requirements

  • Databricks SDK for Python: >= 0.81.0 (for w.postgres module)
  • psycopg: 3.x (supports hostaddr parameter for DNS workaround)
  • SQLAlchemy: 2.x with postgresql+psycopg driver
%pip install -U "databricks-sdk>=0.81.0" "psycopg[binary]>=3.0" sqlalchemy

Notes

  • Compute Units in Autoscaling provide ~2 GB RAM each (vs 16 GB in Provisioned).
  • Resource naming follows hierarchical paths: projects/{id}/branches/{id}/endpoints/{id}.
  • All create/update/delete operations are long-running — use .wait() in the SDK.
  • Tokens are short-lived (1 hour) — production apps MUST implement token refresh.
  • Postgres versions 16 and 17 are supported.