databricks-apps-python
Builds Databricks applications. Prefers AppKit (TypeScript + React SDK) for new apps; falls back to Python frameworks (Dash, Streamlit, Gradio, Flask, FastAPI, Reflex) when Python is required. Handles OAuth authorization, app resources, SQL warehouse and Lakebase connectivity, model serving, foundation model APIs, and deployment. Use when building web apps, dashboards, ML demos, or REST APIs for Databricks, or when the user mentions AppKit, Streamlit, Dash, Gradio, Flask, FastAPI, Reflex, or Databricks app.
Skill body
Databricks Applications
Build Databricks applications. For full examples and recipes, see the Databricks Apps Cookbook.
AppKit (Preferred for New Apps)
AppKit is the recommended SDK for new Databricks apps. It is a TypeScript + React SDK with a plugin architecture, built-in caching, telemetry, and end-to-end type safety.
Requirements
- Node.js v22+
- Databricks CLI v0.295.0+
Scaffold a new app
databricks apps init
This interactive command scaffolds the full project, installs dependencies, and optionally deploys.
Deploy
databricks apps deploy
AppKit plugins
| Plugin | Purpose | |——–|———| | Analytics | SQL queries against Databricks SQL Warehouses — file-based, typed, cached | | Genie | Conversational AI/BI interface with natural language queries | | Files | Browse/upload Unity Catalog Volumes | | Lakebase | OLTP PostgreSQL via Lakebase with OAuth token management |
AI-assisted development
# Install agent skills for AI-powered scaffolding
databricks aitools install
# Query AppKit docs inline
npx @databricks/appkit docs "your question here"
AppKit documentation
- AppKit Docs — getting started, plugins, API reference
- AI-assisted development — guidance for code assistants
- llms.txt — machine-readable docs for AI context
Python Apps (alternative)
Use Python when: the team is Python-only, you need Streamlit/Dash/Gradio, or you are extending an existing Python app.
Critical Rules for Python apps (always follow)
- MUST confirm framework choice or use Python Framework Selection below
- MUST use SDK
Config()for authentication (never hardcode tokens) - MUST use
app.yamlvalueFromfor resources (never hardcode resource IDs) - MUST use
dash-bootstrap-componentsfor Dash app layout and styling - MUST use
@st.cache_resourcefor Streamlit database connections - MUST deploy Flask with Gunicorn, FastAPI with uvicorn (not dev servers)
Required Steps for Python apps
Copy this checklist and verify each item:
- [ ] Framework selected
- [ ] Auth strategy decided: app auth, user auth, or both
- [ ] App resources identified (SQL warehouse, Lakebase, serving endpoint, etc.)
- [ ] Backend data strategy decided (SQL warehouse, Lakebase, or SDK)
- [ ] Deployment method: CLI or DABs
Python Framework Selection
| Framework | Best For | app.yaml Command |
|---|---|---|
| Dash | Production dashboards, BI tools, complex interactivity | ["python", "app.py"] |
| Streamlit | Rapid prototyping, data science apps, internal tools | ["streamlit", "run", "app.py"] |
| Gradio | ML demos, model interfaces, chat UIs | ["python", "app.py"] |
| Flask | Custom REST APIs, lightweight apps, webhooks | ["gunicorn", "app:app", "-w", "4", "-b", "0.0.0.0:8000"] |
| FastAPI | Async APIs, auto-generated OpenAPI docs | ["uvicorn", "app:app", "--host", "0.0.0.0", "--port", "8000"] |
| Reflex | Full-stack Python apps without JavaScript | ["reflex", "run", "--env", "prod"] |
Default: Recommend Streamlit for prototypes, Dash for production dashboards, FastAPI for APIs, Gradio for ML demos.
Quick Reference
| Concept | Details |
|---|---|
| Runtime | Python 3.11, Ubuntu 22.04, 2 vCPU, 6 GB RAM |
| Pre-installed | Dash 2.18.1, Streamlit 1.38.0, Gradio 4.44.0, Flask 3.0.3, FastAPI 0.115.0 |
| Auth (app) | Service principal via Config() — auto-injected DATABRICKS_CLIENT_ID/DATABRICKS_CLIENT_SECRET |
| Auth (user) | x-forwarded-access-token header — see references/1-authorization.md |
| Resources | valueFrom in app.yaml — see references/2-app-resources.md |
| Cookbook | https://apps-cookbook.dev/ |
| Docs | https://docs.databricks.com/dev-tools/databricks-apps/ |
Detailed Guides
Authorization: Use references/1-authorization.md when configuring app or user authorization — covers service principal auth, on-behalf-of user tokens, OAuth scopes, and per-framework code examples. (Keywords: OAuth, service principal, user auth, on-behalf-of, access token, scopes)
App resources: Use references/2-app-resources.md when connecting your app to Databricks resources — covers SQL warehouses, Lakebase, model serving, secrets, volumes, and the valueFrom pattern. (Keywords: resources, valueFrom, SQL warehouse, model serving, secrets, volumes, connections)
Frameworks: See references/3-frameworks.md for Databricks-specific patterns per framework — covers Dash, Streamlit, Gradio, Flask, FastAPI, and Reflex with auth integration, deployment commands, and Cookbook links. (Keywords: Dash, Streamlit, Gradio, Flask, FastAPI, Reflex, framework selection)
Deployment: Use references/4-deployment.md when deploying your app — covers Databricks CLI, Asset Bundles (DABs), app.yaml configuration, and post-deployment verification. (Keywords: deploy, CLI, DABs, asset bundles, app.yaml, logs)
Lakebase: Use references/5-lakebase.md when using Lakebase (PostgreSQL) as your app’s data layer — covers auto-injected env vars, psycopg2/asyncpg patterns, and when to choose Lakebase vs SQL warehouse. (Keywords: Lakebase, PostgreSQL, psycopg2, asyncpg, transactional, PGHOST)
CLI commands: Use references/6-cli-approach.md for managing app lifecycle via CLI — covers creating, deploying, monitoring, and deleting apps. (Keywords: CLI, create app, deploy app, app logs)
Foundation Models: See examples/llm_config.py for calling Databricks foundation model APIs — covers OAuth M2M auth, OpenAI-compatible client wiring, and token caching. (Keywords: foundation model, LLM, OpenAI client, chat completions)
Workflow
-
Determine the task type:
New app from scratch? → Use AppKit (
databricks apps init). Fall back to Python Framework Selection only if Python is required. Setting up authorization? → Read references/1-authorization.md Connecting to data/resources? → Read references/2-app-resources.md Using Lakebase (PostgreSQL)? → Read references/5-lakebase.md Deploying to Databricks? → Read references/4-deployment.md Using CLI for app lifecycle? → Read references/6-cli-approach.md Calling foundation model/LLM APIs? → See examples/llm_config.py - Follow the instructions in the relevant guide
- For full code examples, browse https://apps-cookbook.dev/
Core Architecture
All Python Databricks apps follow this pattern:
app-directory/
├── app.py # Main application (or framework-specific name)
├── models.py # Pydantic data models
├── backend.py # Data access layer
├── requirements.txt # Additional Python dependencies
├── app.yaml # Databricks Apps configuration
└── README.md
Backend Toggle Pattern
import os
from databricks.sdk.core import Config
USE_MOCK = os.getenv("USE_MOCK_BACKEND", "true").lower() == "true"
if USE_MOCK:
from backend_mock import MockBackend as Backend
else:
from backend_real import RealBackend as Backend
backend = Backend()
SQL Warehouse Connection (shared across all frameworks)
from databricks.sdk.core import Config
from databricks import sql
cfg = Config() # Auto-detects credentials from environment
conn = sql.connect(
server_hostname=cfg.host,
http_path=f"/sql/1.0/warehouses/{os.getenv('DATABRICKS_WAREHOUSE_ID')}",
credentials_provider=lambda: cfg.authenticate,
)
Pydantic Models
from pydantic import BaseModel, Field
from datetime import datetime
from enum import Enum
class Status(str, Enum):
ACTIVE = "active"
PENDING = "pending"
class EntityOut(BaseModel):
id: str
name: str
status: Status
created_at: datetime
class EntityIn(BaseModel):
name: str = Field(..., min_length=1)
status: Status = Status.PENDING
Common Issues
| Issue | Solution |
|---|---|
| Connection exhausted | Use @st.cache_resource (Streamlit) or connection pooling |
| Auth token not found | Check x-forwarded-access-token header — only available when deployed, not locally |
| App won’t start | Check app.yaml command matches framework; check databricks apps logs <name> |
| Resource not accessible | Add resource via UI, verify SP has permissions, use valueFrom in app.yaml |
| Import error on deploy | Add missing packages to requirements.txt (pre-installed packages don’t need listing) |
| Lakebase app crashes on start | psycopg2/asyncpg are NOT pre-installed — MUST add to requirements.txt |
| Port conflict | Apps must bind to DATABRICKS_APP_PORT env var (defaults to 8000). Never use 8080. Streamlit is auto-configured; for others, read the env var in code or use 8000 in app.yaml command |
| Streamlit: set_page_config error | st.set_page_config() must be the first Streamlit command |
| Dash: unstyled layout | Add dash-bootstrap-components; use dbc.themes.BOOTSTRAP |
| Slow queries | Use Lakebase for transactional/low-latency; SQL warehouse for analytical queries |
Platform Constraints
| Constraint | Details |
|---|---|
| Runtime | Python 3.11, Ubuntu 22.04 LTS |
| Compute | 2 vCPUs, 6 GB memory (default) |
| Pre-installed frameworks | Dash, Streamlit, Gradio, Flask, FastAPI, Shiny |
| Custom packages | Add to requirements.txt in app root |
| Network | Apps can reach Databricks APIs; external access depends on workspace config |
| User auth | Public Preview — workspace admin must enable before adding scopes |
Official Documentation
- AppKit — preferred SDK for new apps (TypeScript + React)
- Databricks Apps Overview — main docs hub
- Apps Cookbook — ready-to-use code snippets (Streamlit, Dash, Reflex, FastAPI)
- Authorization — app auth and user auth
- Resources — SQL warehouse, Lakebase, serving, secrets
- app.yaml Reference — command and env config
- System Environment — pre-installed packages, runtime details
Related Skills
- databricks-app-apx - full-stack apps with FastAPI + React
- databricks-dabs - deploying apps via DABs
- databricks-python-sdk - backend SDK integration
- databricks-lakebase - adding persistent PostgreSQL state (autoscaling managed PG with branching)
- databricks-model-serving - serving ML models for app integration