| name | databricks-apps |
| description | Build apps on Databricks Apps platform. Use when asked to create dashboards, data apps, analytics tools, or visualizations. Auto-detects need for Lakebase when app stores state; evaluates data access patterns (analytics vs Lakebase synced tables) before scaffolding. Invoke BEFORE starting implementation. |
| compatibility | Requires databricks CLI (>= v0.294.0) |
| metadata | {"version":"0.1.2"} |
| parent | databricks-core |
Databricks Apps Development
FIRST: Use the parent databricks-core skill for CLI basics, authentication, and profile selection.
Build apps that deploy to Databricks Apps platform.
Required Reading by Phase
| Phase | READ BEFORE proceeding |
|---|
| Scaffolding | ⚠️ STOP — evaluate the State Storage Rule and Data Access Decision Gate below before scaffolding. Parent databricks-core skill (auth, warehouse discovery); then run databricks apps manifest + databricks apps init with --features and --set (see AppKit section below) |
| Writing SQL queries | SQL Queries Guide |
| Writing UI components | Frontend Guide |
Using useAnalyticsQuery | AppKit SDK |
| Adding API endpoints | tRPC Guide |
| Using Lakebase (OLTP database) | Lakebase Guide |
| Adding Genie chat / Genie-powered apps | Genie Guide — follow the Genie agent workflow below |
| Using Model Serving (ML inference) | Model Serving Guide |
| Typed data contracts (proto-first design) | Proto-First Guide and Plugin Contracts |
| Managing files in UC Volumes | Files Guide |
| Triggering / monitoring Lakeflow Jobs from the app | Jobs Guide |
| Platform rules (permissions, deployment, limits) | Platform Guide — READ for ALL apps including AppKit |
| Non-AppKit app (Streamlit, FastAPI, Flask, Gradio, Next.js, etc.) | Other Frameworks |
Generic Guidelines
- App name: ≤26 characters, lowercase letters/numbers/hyphens only (no underscores). dev- prefix adds 4 chars, max 30 total.
- Validation:
databricks apps validate --profile <PROFILE> before deploying.
- Smoke tests (AppKit only): ALWAYS update
tests/smoke.spec.ts selectors BEFORE running validation. Default template checks for "Minimal Databricks App" heading and "hello world" text — these WILL fail in your custom app. See testing guide.
- Smoke test selectors: use only Playwright locator APIs —
getByRole, getByText, getByPlaceholder, getByLabel. getByLabelText does not exist in Playwright (it is a React Testing Library method) and throws TypeError at runtime. See testing guide or npx playwright codegen.
- Smoke test data: keep result sets under the 1 MB analytics-event payload cap. Queries returning thousands of rows cause
INVALID_REQUEST: Event exceeds max size of 1048576 bytes and net::ERR_ABORTED, leaving every asserted UI element absent. Use LIMIT or an aggregated query (e.g. COUNT(*) GROUP BY status) — never raw row dumps.
- AppKit version: never override the
@databricks/appkit or @databricks/appkit-ui version in package.json — databricks apps init sets the correct version. Do not run npm install @databricks/appkit@<version> unless explicitly asked by the user. If you need a different version, re-scaffold with databricks apps init --version <version>.
- Authentication: covered by parent
databricks-core skill.
- AppKit API surface: before writing code that calls AppKit APIs (
createApp, plugin shapes, useAnalyticsQuery, etc.), run npx @databricks/appkit docs <section> and use the actual signature. Training data has stale shapes; a single invented signature fails tsc --noEmit during validate. The docs ship with the installed AppKit and are the authoritative source.
- TypeScript casts: never use
as unknown as <T> double-assertions — appkit lint enforces no-double-type-assertion and one violation fails the entire validate step. Instead: narrow with Zod (z.infer<typeof schema>), use a runtime type guard, or write a typed mapper function. If a query result needs reshaping, type the row schema via queryKey types rather than casting.
Project Structure (after databricks apps init --features analytics)
client/src/App.tsx — main React component (start here)
config/queries/*.sql — SQL query files (queryKey = filename without .sql)
server/server.ts — backend entry (tRPC routers)
tests/smoke.spec.ts — smoke test (⚠️ MUST UPDATE selectors for your app)
client/src/appKitTypes.d.ts — auto-generated types (npm run typegen)
Project Structure (after databricks apps init --features lakebase)
server/server.ts — backend with Lakebase pool + tRPC routes
client/src/App.tsx — React frontend
app.yaml — manifest with database resource declaration
package.json — includes @databricks/lakebase dependency
- Note: No
config/queries/ — Lakebase apps use pool.query() in tRPC, not SQL files
Data Discovery
Before writing any SQL, use the parent databricks-core skill for data exploration — search information_schema by keyword, then batch discover-schema for the tables you need. Do NOT skip this step.
State Storage Rule (evaluate BEFORE the Decision Gate):
If the user's app description implies storing or persisting data — forms, CRUD operations, user input, preferences, bookmarks, orders, todos, comments, votes, or any user-generated content — the app needs a Lakebase database. Do not wait for the user to ask for one.
- Use the
databricks-lakebase skill to create a Lakebase project (if one doesn't already exist) and obtain the branch and database resource names.
- Scaffold with
--features lakebase and pass --set lakebase.postgres.branch=<BRANCH_NAME> --set lakebase.postgres.database=<DATABASE_NAME>.
- If the app also reads from Unity Catalog tables, proceed to the Data Access Decision Gate below to determine whether to add
--features analytics or use Lakebase synced tables.
This rule governs state storage only. For how the app reads existing lakehouse data, proceed to the Decision Gate below. This is not optional — any app that writes user-generated data needs Lakebase.
Development Workflow (FOLLOW THIS ORDER)
Data Access Decision Gate (REQUIRED before scaffolding):
If the app reads from Unity Catalog / lakehouse tables, you MUST show the comparison below to the user and ask them to choose. Do not skip this. Do not choose for them.
| (A) Lakebase synced tables | (B) Analytics |
|---|
| Speed | Sub-second responses | Takes a few seconds |
| Best for | Search, lookups, catalogs, real-time data, operational apps | Dashboards, charts, aggregations, KPIs |
| How it works | Data synced from Delta into Lakebase Postgres | Queries run on SQL warehouse at read time |
After showing the table, add a brief recommendation. Default to recommending Lakebase synced tables (A) unless the use case is clearly about aggregations, charts, or dashboards where seconds of latency is acceptable. For lookups, searches, serving data to users, or any interactive use case, recommend Lakebase synced tables. Always let the user make the final call.
After the user chooses:
- (A) Lakebase synced tables → scaffold with
--features lakebase. See Lakebase Guide for full workflow.
- (B) Analytics → scaffold with
--features analytics.
- Both → scaffold with
--features analytics,lakebase if the app needs both patterns.
- If the app does NOT read UC data (pure CRUD, Genie, Model Serving), skip this gate. For pure CRUD/state apps, the State Storage Rule above already applies — scaffold with
--features lakebase. For Genie or Model Serving, scaffold with the corresponding --features flag.
Analytics apps (--features analytics):
- Create SQL files in
config/queries/
- Run
npm run typegen — verify all queries show ✓
- Read
client/src/appKitTypes.d.ts to see generated types
- THEN write
App.tsx using the generated types
- Update
tests/smoke.spec.ts selectors
- Run
databricks apps validate --profile <PROFILE>
DO NOT write UI code before running typegen — types won't exist and you'll waste time on compilation errors.
Lakebase apps (--features lakebase): No SQL files or typegen. See Lakebase Guide for the tRPC pattern: initialize schema at startup, write procedures in server/server.ts, then build the React frontend.
When to Use What
After completing the decision gate above, use this routing table:
- Read analytics data → display in chart/table: Use visualization components with
queryKey prop
- Read analytics data → custom display (KPIs, cards): Use
useAnalyticsQuery hook
- Read analytics data → need computation before display: Still use
useAnalyticsQuery, transform client-side
- Read lakehouse data at low latency (lookups, search, catalogs): Use Lakebase synced tables — see Lakebase Guide
- Read/write persistent data (users, orders, CRUD state): Use Lakebase pool via tRPC — see Lakebase Guide
- Natural language query interface over tables (Genie): Use
genie() plugin — see Genie Guide
- Call ML model endpoint: Use
serving() plugin — see Model Serving Guide
- Trigger or monitor a Lakeflow Job from the app: Use the
jobs() plugin — see Jobs Guide
- ⚠️ NEVER use tRPC to run SELECT queries against the warehouse — always use SQL files in
config/queries/
- ⚠️ NEVER use
useAnalyticsQuery for Lakebase data — it queries the SQL warehouse only
Frameworks
AppKit (Recommended)
TypeScript/React framework with type-safe SQL queries and built-in components.
Official Documentation — the source of truth for all API details:
npx @databricks/appkit docs
npx @databricks/appkit docs <query>
npx @databricks/appkit docs --full
npx @databricks/appkit docs "appkit-ui API reference"
npx @databricks/appkit docs ./docs/plugins/analytics.md
DO NOT guess doc paths. Run without args first, pick from the index. The <query> argument accepts both section names (from the index) and file paths. Docs are the authority on component props, hook signatures, and server APIs — skill files only cover anti-patterns and gotchas.
App Manifest and Scaffolding
Agent workflow for scaffolding: get the manifest first, then build the init command.
-
Get the manifest (JSON schema describing plugins and their resources):
databricks apps manifest --profile <PROFILE>
databricks apps manifest --version <VERSION> --profile <PROFILE>
databricks apps manifest --template <GIT_URL> --profile <PROFILE>
The output defines:
- Plugins: each has a key (plugin ID for
--features), plus requiredByTemplate, and resources.
- requiredByTemplate: If true, that plugin is mandatory for this template — do not add it to
--features (it is included automatically); you must still supply all of its required resources via --set. If false or absent, the plugin is optional — add it to --features only when the user's prompt indicates they want that capability (e.g. analytics/SQL), and then supply its required resources via --set.
- Resources: Each plugin has
resources.required and resources.optional (arrays). Each item has resourceKey and fields (object: field name → description/env). Use --set <plugin>.<resourceKey>.<field>=<value> for each required resource field of every plugin you include.
-
Scaffold (DO NOT use npx; use the CLI only):
databricks apps init --name <NAME> --features <plugin1>,<plugin2> \
--set <plugin1>.<resourceKey>.<field>=<value> \
--set <plugin2>.<resourceKey>.<field>=<value> \
--description "<DESC>" --run none --profile <PROFILE>
databricks apps init --template <GIT_URL> --name <NAME> --features ... --set ... --profile <PROFILE>
Optionally use --version <VERSION> to target a specific AppKit version.
- Required:
--name, --profile. Name: ≤26 chars, lowercase letters/numbers/hyphens only. Use --features only for optional plugins the user wants (plugins with requiredByTemplate: false or absent); mandatory plugins must not be listed in --features.
- Resources: Pass
--set for every required resource (each field in resources.required) for (1) all plugins with requiredByTemplate: true, and (2) any optional plugins you added to --features. Add --set for resources.optional only when the user requests them.
- Discovery: Use the parent
databricks-core skill to resolve IDs (e.g. warehouse: databricks warehouses list --profile <PROFILE> or databricks experimental aitools tools get-default-warehouse --profile <PROFILE>).
DO NOT guess plugin names, resource keys, or property names — always derive them from databricks apps manifest output. Example: if the manifest shows plugin analytics with a required resource resourceKey: "sql-warehouse" and fields: { "id": ... }, include --set analytics.sql-warehouse.id=<ID>.
Scaffolding Rules Protocol — databricks apps manifest may emit scaffolding.rules at the template level (top-level scaffolding.rules) and on individual plugins (plugins[].scaffolding.rules). Each block has must / should / never arrays of short directive strings. Consume them as follows:
- Gather — for every plugin in your final
--features list AND every plugin with requiredByTemplate: true, read plugins[].scaffolding.rules. Union those with the top-level template scaffolding.rules into one working set, tagged by source (template vs <plugin>).
- Precedence — manifest rules override the directives baked into this skill. Where the manifest is silent on a topic, this skill's content is the floor.
- Phase ordering — rules whose text begins with
Before init MUST be executed before databricks apps init. Rules beginning with After init MUST be executed after init completes (e.g. migrations, typegen, connectivity checks). Rules without a phase prefix apply throughout the scaffold/develop loop.
- Conflict detection — if a plugin
must rule contradicts a template never rule on the same target (or vice versa), STOP and ask the user which to follow before proceeding. Do not silently pick one. Treat must vs never on the same action as a conflict; should is advisory and does not block.
- Reporting — before running
databricks apps init, surface the merged working set to the user grouped by phase (Before init / After init / Always) and by severity (must / should / never), so the active guardrails are explicit.
READ AppKit Overview for project structure, workflow, and pre-implementation checklist.
Genie Agent Workflow — when the user wants a Genie-powered app, do not start by asking for a Genie Space ID. Instead:
- Ask which Unity Catalog tables the app should query (fully qualified:
catalog.schema.table).
- Ask whether to reuse an existing Genie space or create a new one.
- If creating: discover the warehouse, then create the space with
databricks genie create-space (see Genie Guide for syntax and serialized space format).
- If reusing: discover existing spaces with
databricks genie list-spaces --profile <PROFILE> and let the user pick.
- Scaffold or wire the space ID into the app — derive
--set keys from databricks apps manifest.
Read the Genie Guide for configuration, SSE endpoints, and frontend integration.
Common Scaffolding Mistakes
databricks apps init --features analytics my-app-name
databricks apps init --name my-app-name --features analytics --set "..." --profile <PROFILE>
Directory Naming
databricks apps init creates directories in kebab-case matching the app name.
App names must be lowercase with hyphens only (≤26 chars).
Other Frameworks (Streamlit, FastAPI, Flask, Gradio, Dash, Next.js, etc.)
Databricks Apps supports any framework that runs as an HTTP server. LLMs already know these frameworks — the challenge is Databricks platform integration.
READ Other Frameworks Guide BEFORE building any non-AppKit app. It covers port/host configuration, app.yaml and databricks.yml setup, dependency management, networking, and framework-specific gotchas.
Post-Deploy Verification
After deploying, verify the app is running:
databricks apps get <app-name> --profile <PROFILE> -o json
databricks apps logs <app-name> --follow --profile <PROFILE>