> apify-generate-output-schema
Generate output schemas (dataset_schema.json, output_schema.json, key_value_store_schema.json) for an Apify Actor by analyzing its source code. Use when creating or updating Actor output schemas.
curl "https://skillshub.wtf/apify/agent-skills/apify-generate-output-schema?format=md"Generate Actor Output Schema
You are generating output schema files for an Apify Actor. The output schema tells Apify Console how to display run results. You will analyze the Actor's source code, create dataset_schema.json, output_schema.json, and key_value_store_schema.json (if the Actor uses key-value store), and update actor.json.
Core Principles
- Analyze code first: Read the Actor's source to understand what data it actually pushes to the dataset — never guess
- Every field is nullable: APIs and websites are unpredictable — always set
"nullable": true - Anonymize examples: Never use real user IDs, usernames, or personal data in examples
- Verify against code: If TypeScript types exist, cross-check the schema against both the type definition AND the code that produces the values
- Reuse existing patterns: Before generating schemas, check if other Actors in the same repository already have output schemas — match their structure, naming conventions, description style, and formatting
- Don't reinvent the wheel: Reuse existing type definitions, interfaces, and utilities from the codebase instead of creating duplicate definitions
Phase 1: Discover Actor Structure
Goal: Locate the Actor and understand its output
Initial request: $ARGUMENTS
Actions:
- Create todo list with all phases
- Find the
.actor/directory containingactor.json - Read
actor.jsonto understand the Actor's configuration - Check if
dataset_schema.json,output_schema.json, andkey_value_store_schema.jsonalready exist - Search for existing schemas in the repository: Look for other
.actor/directories or schema files (e.g.,**/dataset_schema.json,**/output_schema.json,**/key_value_store_schema.json) to learn the repo's conventions — match their description style, field naming, example formatting, and overall structure - Find all places where data is pushed to the dataset:
- JavaScript/TypeScript: Search for
Actor.pushData(,dataset.pushData(,Dataset.pushData( - Python: Search for
Actor.push_data(,dataset.push_data(,Dataset.push_data(
- JavaScript/TypeScript: Search for
- Find all places where data is stored in the key-value store:
- JavaScript/TypeScript: Search for
Actor.setValue(,keyValueStore.setValue(,KeyValueStore.setValue( - Python: Search for
Actor.set_value(,key_value_store.set_value(,KeyValueStore.set_value(
- JavaScript/TypeScript: Search for
- Find output type definitions — reuse them directly instead of recreating from scratch:
- TypeScript: Look for output type interfaces/types (e.g., in
src/types/,src/types/output.ts). If an interface or type already defines the output shape, derive the schema fields from it — do not create a parallel definition - Python: Look for TypedDict, dataclass, or Pydantic model definitions. Use the existing field names, types, and docstrings as the source of truth
- TypeScript: Look for output type interfaces/types (e.g., in
- Check for existing shared schema utilities or helper functions in the codebase that handle schema generation or validation — reuse them rather than creating new logic
- If inline
storages.datasetorstorages.keyValueStoreconfig exists inactor.json, note it for migration
Present findings to user: list all discovered dataset output fields, key-value store keys, their types, and where they come from.
Phase 2: Generate dataset_schema.json
Goal: Create a complete dataset schema with field definitions and display views
File structure
{
"actorSpecification": 1,
"fields": {
"$schema": "http://json-schema.org/draft-07/schema#",
"type": "object",
"properties": {
// ALL output fields here — every field the Actor can produce,
// not just the ones shown in the overview view
},
"required": [],
"additionalProperties": true
},
"views": {
"overview": {
"title": "Overview",
"description": "Most important fields at a glance",
"transformation": {
"fields": [
// 8-12 most important field names
]
},
"display": {
"component": "table",
"properties": {
// Display config for each overview field
}
}
}
}
}
Consistency with existing schemas
If existing output schemas were found in the repository during Phase 1 (step 5), follow their conventions:
- Match the description writing style (sentence case vs. lowercase, period vs. no period, etc.)
- Match the field naming convention (camelCase vs. snake_case) — this must also match the actual keys produced by the Actor code
- Match the example value style (e.g., date formats, URL patterns, placeholder names)
- Match the view structure (number of fields in overview, display format choices)
- Match the JSON formatting (indentation, property ordering, spacing) — all schemas in the same repository must use identical formatting, including standalone Actors
When the Actor code already has well-defined TypeScript interfaces or Python type classes, derive fields directly from those types rather than re-analyzing pushData/push_data calls from scratch. The type definition is the canonical source.
Hard rules (no exceptions)
| Rule | Detail |
|---|---|
All fields in properties | The fields.properties object must contain every field the Actor can output, not just the fields shown in the overview view. The views section selects a subset for display — the properties section must be the complete superset |
"nullable": true | On every field — APIs are unpredictable |
"additionalProperties": true | On the top-level fields object AND on every nested object within properties. This is the most commonly missed rule — it must appear at both levels |
"required": [] | Always empty array — on the top-level fields object AND on every nested object within properties |
| Anonymized examples | No real user IDs, usernames, or content |
"type" required with "nullable" | AJV rejects nullable without a type on the same field |
Warning — most common mistakes:
- Only including fields that appear in the overview view. The
fields.propertiesmust list ALL output fields, even if they are not in theviewssection.- Only adding
"required": []and"additionalProperties": trueon nested object-type properties but forgetting them on the top-levelfieldsobject. Both levels need them.
Note:
nullableis an Apify-specific extension to JSON Schema draft-07. It is intentional and correct.
Field type patterns
String field:
"title": {
"type": "string",
"description": "Title of the scraped item",
"nullable": true,
"example": "Example Item Title"
}
Number field:
"viewCount": {
"type": "number",
"description": "Number of views",
"nullable": true,
"example": 15000
}
Boolean field:
"isVerified": {
"type": "boolean",
"description": "Whether the account is verified",
"nullable": true,
"example": true
}
Array field:
"hashtags": {
"type": "array",
"description": "Hashtags associated with the item",
"items": { "type": "string" },
"nullable": true,
"example": ["#example", "#demo"]
}
Nested object field:
"authorInfo": {
"type": "object",
"description": "Information about the author",
"properties": {
"name": { "type": "string", "nullable": true },
"url": { "type": "string", "nullable": true }
},
"required": [],
"additionalProperties": true,
"nullable": true,
"example": { "name": "Example Author", "url": "https://example.com/author" }
}
Enum field:
"contentType": {
"type": "string",
"description": "Type of content",
"enum": ["article", "video", "image"],
"nullable": true,
"example": "article"
}
Union type (e.g., TypeScript ObjectType | string):
"metadata": {
"type": ["object", "string"],
"description": "Structured metadata object, or error string if unavailable",
"nullable": true,
"example": { "key": "value" }
}
Anonymized example values
Use realistic but generic values. Follow platform ID format conventions:
| Field type | Example approach |
|---|---|
| IDs | Match platform format and length (e.g., 11 chars for YouTube video IDs) |
| Usernames | "exampleuser", "sampleuser123" |
| Display names | "Example Channel", "Sample Author" |
| URLs | Use platform's standard URL format with fake IDs |
| Dates | "2025-01-15T12:00:00.000Z" (ISO 8601) |
| Text content | Generic descriptive text, e.g., "This is an example description." |
Views section
transformation.fields: List 8–12 most important field names (order = column order in UI)display.properties: One entry per overview field withlabelandformat- Available formats:
"text","number","date","link","boolean","image","array","object"
Pick fields that give users the most useful at-a-glance summary of the data.
Phase 3: Generate key_value_store_schema.json (if applicable)
Goal: Define key-value store collections if the Actor stores data in the key-value store
Skip this phase if no
Actor.setValue()/Actor.set_value()calls were found in Phase 1 (beyond the defaultINPUTkey).
File structure
{
"actorKeyValueStoreSchemaVersion": 1,
"title": "<Descriptive title — what the key-value store contains>",
"description": "<One sentence describing the stored data>",
"collections": {
"<collectionName>": {
"title": "<Human-readable title>",
"description": "<What this collection contains>",
"keyPrefix": "<prefix->"
}
}
}
How to identify collections
Group the discovered setValue / set_value calls by key pattern:
- Fixed keys (e.g.,
"RESULTS","summary") — use"key"(exact match) - Dynamic keys with a prefix (e.g.,
"screenshot-${id}",f"image-{name}") — use"keyPrefix"
Each group becomes a collection.
Collection properties
| Property | Required | Description |
|---|---|---|
title | Yes | Shown in UI tabs |
description | No | Shown in UI tooltips |
key | Conditional | Exact key for single-key collections (use key OR keyPrefix, not both) |
keyPrefix | Conditional | Prefix for multi-key collections (use key OR keyPrefix, not both) |
contentTypes | No | Restrict allowed MIME types (e.g., ["image/jpeg"], ["application/json"]) |
jsonSchema | No | JSON Schema draft-07 for validating application/json content |
Examples
Single file output (e.g., a report):
{
"actorKeyValueStoreSchemaVersion": 1,
"title": "Analysis Results",
"description": "Key-value store containing analysis output",
"collections": {
"report": {
"title": "Report",
"description": "Final analysis report",
"key": "REPORT",
"contentTypes": ["application/json"]
}
}
}
Multiple files with prefix (e.g., screenshots):
{
"actorKeyValueStoreSchemaVersion": 1,
"title": "Scraped Files",
"description": "Key-value store containing downloaded files and screenshots",
"collections": {
"screenshots": {
"title": "Screenshots",
"description": "Page screenshots captured during scraping",
"keyPrefix": "screenshot-",
"contentTypes": ["image/png", "image/jpeg"]
},
"documents": {
"title": "Documents",
"description": "Downloaded document files",
"keyPrefix": "doc-",
"contentTypes": ["application/pdf", "text/html"]
}
}
}
Phase 4: Generate output_schema.json
Goal: Create the output schema that tells Apify Console where to find results
For most Actors that push data to a dataset, this is a minimal file:
{
"actorOutputSchemaVersion": 1,
"title": "<Descriptive title — what the Actor returns>",
"description": "<One sentence describing the output data>",
"properties": {
"dataset": {
"type": "string",
"title": "Results",
"description": "Dataset containing all scraped data",
"template": "{{links.apiDefaultDatasetUrl}}/items"
}
}
}
Critical: Each property entry must include
"type": "string"— this is an Apify-specific convention. The Apify meta-validator rejects properties without it (and rejects"type": "object"— only"string"is valid here).
If key_value_store_schema.json was generated in Phase 3, add a second property:
"files": {
"type": "string",
"title": "Files",
"description": "Key-value store containing downloaded files",
"template": "{{links.apiDefaultKeyValueStoreUrl}}/keys"
}
Available template variables
{{links.apiDefaultDatasetUrl}}— API URL of default dataset{{links.apiDefaultKeyValueStoreUrl}}— API URL of default key-value store{{links.publicRunUrl}}— Public run URL{{links.consoleRunUrl}}— Console run URL{{links.apiRunUrl}}— API run URL{{links.containerRunUrl}}— URL of webserver running inside the run{{run.defaultDatasetId}}— ID of the default dataset{{run.defaultKeyValueStoreId}}— ID of the default key-value store
Phase 5: Update actor.json
Goal: Wire the schema files into the Actor configuration
Actions:
- Read the current
actor.json - Add or update the
storages.datasetreference:"storages": { "dataset": "./dataset_schema.json" } - If
key_value_store_schema.jsonwas generated, add the reference:"storages": { "dataset": "./dataset_schema.json", "keyValueStore": "./key_value_store_schema.json" } - Add or update the
outputreference:"output": "./output_schema.json" - If
actor.jsonhad inlinestorages.datasetorstorages.keyValueStoreobjects (not string paths), migrate their content into the respective schema files and replace the inline objects with file path strings
Phase 6: Review and Validate
Goal: Ensure correctness and completeness
Checklist:
- Every output field from the source code is in
dataset_schema.jsonfields.properties— not just the overview view fields but ALL fields the Actor can produce - Every field has
"nullable": true - The top-level
fieldsobject has both"additionalProperties": trueand"required": [] - Every nested object within
propertiesalso has"additionalProperties": trueand"required": [] - Every field has a
"description"and an"example" - All example values are anonymized
-
"type"is present on every field that has"nullable" - Views list 8–12 most useful fields with correct display formats
-
output_schema.jsonhas"type": "string"on every property - If key-value store is used:
key_value_store_schema.jsonhas collections matching allsetValue/set_valuecalls - If key-value store is used: each collection uses either
keyorkeyPrefix(not both) -
actor.jsonreferences all generated schema files - Schema field names match the actual keys in the code (camelCase/snake_case consistency)
- If existing schemas were found in the repo, the new schema follows their conventions (description style, example format, view structure)
- Schema fields are derived from existing type definitions (interfaces, TypedDicts, dataclasses) where available — no duplicated or divergent field definitions
Present the generated schemas to the user for review before writing them.
Phase 7: Summary
Goal: Document what was created
Report:
- Files created or updated
- Number of fields in the dataset schema
- Number of collections in the key-value store schema (if generated)
- Fields selected for the overview view
- Any fields that need user clarification (ambiguous types, unclear nullability)
- Suggested next steps (test locally with
apify run, verify output tab in Console)
> related_skills --same-repo
> apify-ultimate-scraper
Universal AI-powered web scraper for any platform. Scrape data from Instagram, Facebook, TikTok, YouTube, Google Maps, Google Search, Google Trends, Booking.com, and TripAdvisor. Use for lead generation, brand monitoring, competitor analysis, influencer discovery, trend research, content analytics, audience analysis, or any data extraction task.
> apify-lead-generation
Generates B2B/B2C leads by scraping Google Maps, websites, Instagram, TikTok, Facebook, LinkedIn, YouTube, and Google Search. Use when user asks to find leads, prospects, businesses, build lead lists, enrich contacts, or scrape profiles for sales outreach.
> apify-ecommerce
Scrape e-commerce data for pricing intelligence, customer reviews, and seller discovery across Amazon, Walmart, eBay, IKEA, and 50+ marketplaces. Use when user asks to monitor prices, track competitors, analyze reviews, research products, or find sellers.
> apify-brand-reputation-monitoring
Track reviews, ratings, sentiment, and brand mentions across Google Maps, Booking.com, TripAdvisor, Facebook, Instagram, YouTube, and TikTok. Use when user asks to monitor brand reputation, analyze reviews, track mentions, or gather customer feedback.