skills/azure-ai-document-intelligence-ts/SKILL.md
Extract text, tables, and structured data from documents using prebuilt and custom models.
npx skillsauth add LucasRomanzin/skills-mcp azure-ai-document-intelligence-tsInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
3 of 9 scanners reported clean
Some scanners were skipped, did not run, or reported a non-clean status. Review each row below.
Extract text, tables, and structured data from documents using prebuilt and custom models.
npm install @azure-rest/ai-document-intelligence @azure/identity
DOCUMENT_INTELLIGENCE_ENDPOINT=https://<resource>.cognitiveservices.azure.com
DOCUMENT_INTELLIGENCE_API_KEY=<api-key>
Important: This is a REST client. DocumentIntelligence is a function, not a class.
import DocumentIntelligence from "@azure-rest/ai-document-intelligence";
import { DefaultAzureCredential } from "@azure/identity";
const client = DocumentIntelligence(
process.env.DOCUMENT_INTELLIGENCE_ENDPOINT!,
new DefaultAzureCredential()
);
import DocumentIntelligence from "@azure-rest/ai-document-intelligence";
const client = DocumentIntelligence(
process.env.DOCUMENT_INTELLIGENCE_ENDPOINT!,
{ key: process.env.DOCUMENT_INTELLIGENCE_API_KEY! }
);
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);
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;
| 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 |
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);
}
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);
}
}
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);
}
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);
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);
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);
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);
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;
import DocumentIntelligence, {
isUnexpected,
getLongRunningPoller,
paginate,
parseResultIdFromResponse,
AnalyzeOperationOutput,
DocumentClassifierBuildOperationDetailsOutput
} from "@azure-rest/ai-document-intelligence";
paginate() helper for listing modelsThis skill is applicable to execute the workflow or actions described in the overview.
development
Azure Key Vault Keys Java SDK for cryptographic key management. Use when creating, managing, or using RSA/EC keys, performing encrypt/decrypt/sign/verify operations, or working with HSM-backed keys.
tools
Azure Key Vault Keys SDK for .NET. Client library for managing cryptographic keys in Azure Key Vault and Managed HSM. Use for key creation, rotation, encryption, decryption, signing, and verification.
development
Build search applications with vector, hybrid, and semantic search capabilities.
development
Azure AI Search SDK for Python. Use for vector search, hybrid search, semantic ranking, indexing, and skillsets.