> azure-ai-document-intelligence-ts
Extract text, tables, and structured data from documents using Azure Document Intelligence (@azure-rest/ai-document-intelligence). Use when processing invoices, receipts, IDs, forms, or building custom document models.
curl "https://skillshub.wtf/microsoft/skills/azure-ai-document-intelligence-ts?format=md"Azure Document Intelligence REST SDK for TypeScript
Extract text, tables, and structured data from documents using prebuilt and custom models.
Installation
npm install @azure-rest/ai-document-intelligence @azure/identity
Environment Variables
DOCUMENT_INTELLIGENCE_ENDPOINT=https://<resource>.cognitiveservices.azure.com
DOCUMENT_INTELLIGENCE_API_KEY=<api-key>
Authentication
Important: This is a REST client. DocumentIntelligence is a function, not a class.
DefaultAzureCredential
import DocumentIntelligence from "@azure-rest/ai-document-intelligence";
import { DefaultAzureCredential } from "@azure/identity";
const client = DocumentIntelligence(
process.env.DOCUMENT_INTELLIGENCE_ENDPOINT!,
new DefaultAzureCredential()
);
API Key
import DocumentIntelligence from "@azure-rest/ai-document-intelligence";
const client = DocumentIntelligence(
process.env.DOCUMENT_INTELLIGENCE_ENDPOINT!,
{ key: process.env.DOCUMENT_INTELLIGENCE_API_KEY! }
);
Analyze Document (URL)
import DocumentIntelligence, {
isUnexpected,
getLongRunningPoller,
AnalyzeOperationOutput
} from "@azure-rest/ai-document-intelligence";
const initialResponse = await client
.path("/documentModels/{modelId}:analyze", "prebuilt-layout")
.post({
contentType: "application/json",
body: {
urlSource: "https://example.com/document.pdf"
},
queryParameters: { locale: "en-US" }
});
if (isUnexpected(initialResponse)) {
throw initialResponse.body.error;
}
const poller = getLongRunningPoller(client, initialResponse);
const result = (await poller.pollUntilDone()).body as AnalyzeOperationOutput;
console.log("Pages:", result.analyzeResult?.pages?.length);
console.log("Tables:", result.analyzeResult?.tables?.length);
Analyze Document (Local File)
import { readFile } from "node:fs/promises";
const fileBuffer = await readFile("./document.pdf");
const base64Source = fileBuffer.toString("base64");
const initialResponse = await client
.path("/documentModels/{modelId}:analyze", "prebuilt-invoice")
.post({
contentType: "application/json",
body: { base64Source }
});
if (isUnexpected(initialResponse)) {
throw initialResponse.body.error;
}
const poller = getLongRunningPoller(client, initialResponse);
const result = (await poller.pollUntilDone()).body as AnalyzeOperationOutput;
Prebuilt Models
| Model ID | Description |
|---|---|
prebuilt-read | OCR - text and language extraction |
prebuilt-layout | Text, tables, selection marks, structure |
prebuilt-invoice | Invoice fields |
prebuilt-receipt | Receipt fields |
prebuilt-idDocument | ID document fields |
prebuilt-tax.us.w2 | W-2 tax form fields |
prebuilt-healthInsuranceCard.us | Health insurance card fields |
prebuilt-contract | Contract fields |
prebuilt-bankStatement.us | Bank statement fields |
Extract Invoice Fields
const initialResponse = await client
.path("/documentModels/{modelId}:analyze", "prebuilt-invoice")
.post({
contentType: "application/json",
body: { urlSource: invoiceUrl }
});
if (isUnexpected(initialResponse)) {
throw initialResponse.body.error;
}
const poller = getLongRunningPoller(client, initialResponse);
const result = (await poller.pollUntilDone()).body as AnalyzeOperationOutput;
const invoice = result.analyzeResult?.documents?.[0];
if (invoice) {
console.log("Vendor:", invoice.fields?.VendorName?.content);
console.log("Total:", invoice.fields?.InvoiceTotal?.content);
console.log("Due Date:", invoice.fields?.DueDate?.content);
}
Extract Receipt Fields
const initialResponse = await client
.path("/documentModels/{modelId}:analyze", "prebuilt-receipt")
.post({
contentType: "application/json",
body: { urlSource: receiptUrl }
});
const poller = getLongRunningPoller(client, initialResponse);
const result = (await poller.pollUntilDone()).body as AnalyzeOperationOutput;
const receipt = result.analyzeResult?.documents?.[0];
if (receipt) {
console.log("Merchant:", receipt.fields?.MerchantName?.content);
console.log("Total:", receipt.fields?.Total?.content);
for (const item of receipt.fields?.Items?.values || []) {
console.log("Item:", item.properties?.Description?.content);
console.log("Price:", item.properties?.TotalPrice?.content);
}
}
List Document Models
import DocumentIntelligence, { isUnexpected, paginate } from "@azure-rest/ai-document-intelligence";
const response = await client.path("/documentModels").get();
if (isUnexpected(response)) {
throw response.body.error;
}
for await (const model of paginate(client, response)) {
console.log(model.modelId);
}
Build Custom Model
const initialResponse = await client.path("/documentModels:build").post({
body: {
modelId: "my-custom-model",
description: "Custom model for purchase orders",
buildMode: "template", // or "neural"
azureBlobSource: {
containerUrl: process.env.TRAINING_CONTAINER_SAS_URL!,
prefix: "training-data/"
}
}
});
if (isUnexpected(initialResponse)) {
throw initialResponse.body.error;
}
const poller = getLongRunningPoller(client, initialResponse);
const result = await poller.pollUntilDone();
console.log("Model built:", result.body);
Build Document Classifier
import { DocumentClassifierBuildOperationDetailsOutput } from "@azure-rest/ai-document-intelligence";
const containerSasUrl = process.env.TRAINING_CONTAINER_SAS_URL!;
const initialResponse = await client.path("/documentClassifiers:build").post({
body: {
classifierId: "my-classifier",
description: "Invoice vs Receipt classifier",
docTypes: {
invoices: {
azureBlobSource: { containerUrl: containerSasUrl, prefix: "invoices/" }
},
receipts: {
azureBlobSource: { containerUrl: containerSasUrl, prefix: "receipts/" }
}
}
}
});
if (isUnexpected(initialResponse)) {
throw initialResponse.body.error;
}
const poller = getLongRunningPoller(client, initialResponse);
const result = (await poller.pollUntilDone()).body as DocumentClassifierBuildOperationDetailsOutput;
console.log("Classifier:", result.result?.classifierId);
Classify Document
const initialResponse = await client
.path("/documentClassifiers/{classifierId}:analyze", "my-classifier")
.post({
contentType: "application/json",
body: { urlSource: documentUrl },
queryParameters: { split: "auto" }
});
if (isUnexpected(initialResponse)) {
throw initialResponse.body.error;
}
const poller = getLongRunningPoller(client, initialResponse);
const result = await poller.pollUntilDone();
console.log("Classification:", result.body.analyzeResult?.documents);
Get Service Info
const response = await client.path("/info").get();
if (isUnexpected(response)) {
throw response.body.error;
}
console.log("Custom model limit:", response.body.customDocumentModels.limit);
console.log("Custom model count:", response.body.customDocumentModels.count);
Polling Pattern
import DocumentIntelligence, {
isUnexpected,
getLongRunningPoller,
AnalyzeOperationOutput
} from "@azure-rest/ai-document-intelligence";
// 1. Start operation
const initialResponse = await client
.path("/documentModels/{modelId}:analyze", "prebuilt-layout")
.post({ contentType: "application/json", body: { urlSource } });
// 2. Check for errors
if (isUnexpected(initialResponse)) {
throw initialResponse.body.error;
}
// 3. Create poller
const poller = getLongRunningPoller(client, initialResponse);
// 4. Optional: Monitor progress
poller.onProgress((state) => {
console.log("Status:", state.status);
});
// 5. Wait for completion
const result = (await poller.pollUntilDone()).body as AnalyzeOperationOutput;
Key Types
import DocumentIntelligence, {
isUnexpected,
getLongRunningPoller,
paginate,
parseResultIdFromResponse,
AnalyzeOperationOutput,
DocumentClassifierBuildOperationDetailsOutput
} from "@azure-rest/ai-document-intelligence";
Best Practices
- Use getLongRunningPoller() - Document analysis is async, always poll for results
- Check isUnexpected() - Type guard for proper error handling
- Choose the right model - Use prebuilt models when possible, custom for specialized docs
- Handle confidence scores - Fields have confidence values, set thresholds for your use case
- Use pagination - Use
paginate()helper for listing models - Prefer neural mode - For custom models, neural handles more variation than template
> related_skills --same-repo
> skill-creator
Guide for creating effective skills for AI coding agents working with Azure SDKs and Microsoft Foundry services. Use when creating new skills or updating existing skills.
> mcp-builder
Guide for creating high-quality MCP (Model Context Protocol) servers that enable LLMs to interact with external services through well-designed tools. Use when building MCP servers to integrate external APIs or services, whether in Python (FastMCP), Node/TypeScript (MCP SDK), or C#/.NET (Microsoft MCP SDK).
> copilot-sdk
Build applications powered by GitHub Copilot using the Copilot SDK. Use when creating programmatic integrations with Copilot across Node.js/TypeScript, Python, Go, or .NET. Covers session management, custom tools, streaming, hooks, MCP servers, BYOK providers, session persistence, custom agents, skills, and deployment patterns. Requires GitHub Copilot CLI installed and a GitHub Copilot subscription (unless using BYOK).
> azure-upgrade
Assess and upgrade Azure workloads between plans, tiers, or SKUs within Azure. Generates assessment reports and automates upgrade steps. WHEN: upgrade Consumption to Flex Consumption, upgrade Azure Functions plan, migrate hosting plan, upgrade Functions SKU, move to Flex Consumption, upgrade Azure service tier, change hosting plan, upgrade function app plan, migrate App Service to Container Apps.