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    About

    Creates durable, resumable workflows using Vercel's Workflow DevKit...

    SKILL.md

    CRITICAL: Always Use Correct workflow Documentation

    Your knowledge of workflow is outdated.

    The workflow documentation outlined below matches the installed version of the Workflow SDK. Follow these instructions before starting on any workflow-related tasks:

    Search the bundled documentation in node_modules/workflow/docs/:

    1. Find docs: glob "node_modules/workflow/docs/**/*.mdx"
    2. Search content: grep "your query" node_modules/workflow/docs/

    Documentation structure in node_modules/workflow/docs/:

    • getting-started/ - Framework setup (next.mdx, express.mdx, hono.mdx, etc.)
    • foundations/ - Core concepts (workflows-and-steps.mdx, hooks.mdx, streaming.mdx, etc.)
    • api-reference/workflow/ - API docs (sleep.mdx, create-hook.mdx, fatal-error.mdx, etc.)
    • api-reference/workflow-api/ - Client API (start.mdx, get-run.mdx, resume-hook.mdx, etc.)
    • api-reference/workflow-runtime/ - Runtime API (get-world.mdx) and world/ World SDK (storage.mdx, streams.mdx, queue.mdx)
    • api-reference/workflow-observability/ - Hydration and name parsing utilities (hydrate-resource-io.mdx, parse-workflow-name.mdx, etc.)
    • ai/ - AI SDK integration docs
    • errors/ - Error code documentation

    Related packages also include bundled docs:

    • @workflow/ai: node_modules/@workflow/ai/docs/ - DurableAgent and AI integration
    • @workflow/core: node_modules/@workflow/core/docs/ - Core runtime (foundations, how-it-works)
    • @workflow/next: node_modules/@workflow/next/docs/ - Next.js integration

    When in doubt, update to the latest version of the Workflow SDK.

    Official Resources

    • Website: https://workflow-sdk.dev
    • GitHub: https://github.com/vercel/workflow

    Quick Reference

    Directives:

    "use workflow";  // First line - makes async function durable
    "use step";      // First line - makes function a cached, retryable unit
    

    Essential imports:

    // Workflow primitives
    import { sleep, fetch, createHook, createWebhook, getWritable } from "workflow";
    import { FatalError, RetryableError } from "workflow";
    import { getWorkflowMetadata, getStepMetadata } from "workflow";
    
    // API operations
    import { start, getRun, resumeHook, resumeWebhook } from "workflow/api";
    
    // Observability & data hydration
    import { hydrateResourceIO, observabilityRevivers, parseStepName, parseWorkflowName } from "workflow/observability";
    
    // Framework integrations
    import { withWorkflow } from "workflow/next";
    import { workflow } from "workflow/vite";
    import { workflow } from "workflow/astro";
    // Or use modules: ["workflow/nitro"] for Nitro/Nuxt
    
    // AI agent
    import { DurableAgent } from "@workflow/ai/agent";
    

    Prefer Step Functions to Avoid Sandbox Errors

    "use workflow" functions run in a sandboxed VM. "use step" functions have full Node.js access. Put your logic in steps and use the workflow function purely for orchestration.

    // Steps have full Node.js and npm access
    async function fetchUserData(userId: string) {
      "use step";
      const response = await fetch(`https://api.example.com/users/${userId}`);
      return response.json();
    }
    
    async function processWithAI(data: any) {
      "use step";
      // AI SDK works in steps without workarounds
      return await generateText({
        model: openai("gpt-4"),
        prompt: `Process: ${JSON.stringify(data)}`,
      });
    }
    
    // Workflow orchestrates steps - no sandbox issues
    export async function dataProcessingWorkflow(userId: string) {
      "use workflow";
      const data = await fetchUserData(userId);
      const processed = await processWithAI(data);
      return { success: true, processed };
    }
    

    Benefits: Steps have automatic retry, results are persisted for replay, and no sandbox restrictions.

    Workflow Sandbox Limitations

    When you need logic directly in a workflow function (not in a step), these restrictions apply:

    Limitation Workaround
    No fetch() import { fetch } from "workflow" then globalThis.fetch = fetch
    No setTimeout/setInterval Use sleep("5s") from "workflow"
    No Node.js modules (fs, crypto, etc.) Move to a step function

    Example - Using fetch in workflow context:

    import { fetch } from "workflow";
    
    export async function myWorkflow() {
      "use workflow";
      globalThis.fetch = fetch;  // Required for AI SDK and HTTP libraries
      // Now generateText() and other libraries work
    }
    

    Note: DurableAgent from @workflow/ai handles the fetch assignment automatically.

    DurableAgent — AI Agents in Workflows

    Use DurableAgent to build AI agents that maintain state and survive interruptions. It handles the workflow sandbox automatically (no manual globalThis.fetch needed).

    import { DurableAgent } from "@workflow/ai/agent";
    import { getWritable } from "workflow";
    import { z } from "zod";
    import type { UIMessageChunk } from "ai";
    
    async function lookupData({ query }: { query: string }) {
      "use step";
      // Step functions have full Node.js access
      return `Results for "${query}"`;
    }
    
    export async function myAgentWorkflow(userMessage: string) {
      "use workflow";
    
      const agent = new DurableAgent({
        model: "anthropic/claude-sonnet-4-5",
        system: "You are a helpful assistant.",
        tools: {
          lookupData: {
            description: "Search for information",
            inputSchema: z.object({ query: z.string() }),
            execute: lookupData,
          },
        },
      });
    
      const result = await agent.stream({
        messages: [{ role: "user", content: userMessage }],
        writable: getWritable<UIMessageChunk>(),
        maxSteps: 10,
      });
    
      return result.messages;
    }
    

    Key points:

    • getWritable<UIMessageChunk>() streams output to the workflow run's default stream
    • Tool execute functions that need Node.js/npm access should use "use step"
    • Tool execute functions that use workflow primitives (sleep(), createHook()) should NOT use "use step" — they run at the workflow level
    • maxSteps limits the number of LLM calls (default is unlimited)
    • Multi-turn: pass result.messages plus new user messages to subsequent agent.stream() calls

    For more details on DurableAgent, check the AI docs in node_modules/@workflow/ai/docs/.

    Starting Workflows & Child Workflows

    Use start() to launch workflows from API routes. start() cannot be called directly in workflow context — wrap it in a step function.

    import { start } from "workflow/api";
    
    // From an API route — works directly
    export async function POST() {
      const run = await start(myWorkflow, [arg1, arg2]);
      return Response.json({ runId: run.runId });
    }
    
    // No-args workflow
    const run = await start(noArgWorkflow);
    

    Starting child workflows from inside a workflow — must use a step:

    import { start } from "workflow/api";
    
    // Wrap start() in a step function
    async function triggerChild(data: string) {
      "use step";
      const run = await start(childWorkflow, [data]);
      return run.runId;
    }
    
    export async function parentWorkflow() {
      "use workflow";
      const childRunId = await triggerChild("some data");  // Fire-and-forget via step
      await sleep("1h");
    }
    

    start() returns immediately — it doesn't wait for the workflow to complete. Use run.returnValue to await completion.

    Hooks — Pause & Resume with External Events

    Hooks let workflows wait for external data. Use createHook() inside a workflow and resumeHook() from API routes. Deterministic tokens are for createHook() + resumeHook() (server-side) only. createWebhook() always generates random tokens — do not pass a token option to createWebhook().

    Single event

    import { createHook } from "workflow";
    
    export async function approvalWorkflow() {
      "use workflow";
    
      const hook = createHook<{ approved: boolean }>({
        token: "approval-123",  // deterministic token for external systems
      });
    
      const result = await hook;  // Workflow suspends here
      return result.approved;
    }
    

    Multiple events (iterable hooks)

    Hooks implement AsyncIterable — use for await...of to receive multiple events:

    import { createHook } from "workflow";
    
    export async function chatWorkflow(channelId: string) {
      "use workflow";
    
      const hook = createHook<{ text: string; done?: boolean }>({
        token: `chat-${channelId}`,
      });
    
      for await (const event of hook) {
        await processMessage(event.text);
        if (event.done) break;
      }
    }
    

    Each resumeHook(token, payload) call delivers the next value to the loop.

    Resuming from API routes

    import { resumeHook } from "workflow/api";
    
    export async function POST(req: Request) {
      const { token, data } = await req.json();
      await resumeHook(token, data);
      return new Response("ok");
    }
    

    Error Handling

    Use FatalError for permanent failures (no retry), RetryableError for transient failures:

    import { FatalError, RetryableError } from "workflow";
    
    if (res.status >= 400 && res.status < 500) {
      throw new FatalError(`Client error: ${res.status}`);
    }
    if (res.status === 429) {
      throw new RetryableError("Rate limited", { retryAfter: "5m" });
    }
    

    Serialization

    All data passed to/from workflows and steps must be serializable.

    Supported built-in types: string, number, boolean, null, undefined, bigint, plain objects, arrays, Date, RegExp, URL, URLSearchParams, Map, Set, Headers, ArrayBuffer, typed arrays, Request, Response, ReadableStream, WritableStream.

    Not supported: Functions, Symbols, WeakMap/WeakSet. Pass data, not callbacks.

    Custom Class Serialization

    Class instances can be serialized across workflow/step boundaries by implementing the @workflow/serde protocol. This is essential when a class has instance methods with "use step" or when you want to pass class instances between steps.

    Install: @workflow/serde must be a dependency of the package containing the class.

    Pattern: Add two static methods inside the class body using computed property syntax:

    import { WORKFLOW_SERIALIZE, WORKFLOW_DESERIALIZE } from "@workflow/serde";
    
    export class Point {
      x: number;
      y: number;
    
      constructor(x: number, y: number) {
        this.x = x;
        this.y = y;
      }
    
      // Serialize: return plain data (must be devalue-compatible types only)
      static [WORKFLOW_SERIALIZE](instance: Point) {
        return { x: instance.x, y: instance.y };
      }
    
      // Deserialize: reconstruct from plain data
      static [WORKFLOW_DESERIALIZE](data: { x: number; y: number }) {
        return new Point(data.x, data.y);
      }
    
      async computeDistance(other: Point) {
        "use step";
        return Math.sqrt((this.x - other.x) ** 2 + (this.y - other.y) ** 2);
      }
    }
    

    Critical rules:

    1. Define serde methods INSIDE the class body as static methods with computed property syntax (static [WORKFLOW_SERIALIZE](...)). The SWC plugin detects them by scanning the class. Do NOT assign them externally (e.g., (MyClass as any)[WORKFLOW_SERIALIZE] = ...) -- the compiler will not detect this.
    2. Serde methods must return only devalue-compatible types (plain objects, arrays, primitives, Date, Map, Set, Uint8Array, etc.). No functions, no class instances, no Node.js-specific objects.
    3. Add "use step" to Node.js-dependent instance methods. The SWC plugin strips "use step" method bodies from the workflow bundle. This is how you keep Node.js imports (fs, crypto, child_process, etc.) out of the workflow sandbox. The class shell with its serde methods remains in the workflow bundle; only the step method bodies are removed.
    4. Do NOT manually register classes. The SWC plugin automatically generates registration code (an IIFE that sets classId and adds the class to the global registry). Manual calls to registerSerializationClass() are unnecessary and error-prone.
    5. Do NOT use dynamic imports to work around sandbox restrictions. If a class method needs Node.js APIs, the correct solution is "use step", not /* @vite-ignore */ import(...).

    When serde works well: Pure data classes, domain models, configuration objects, and classes where Node.js-dependent methods can be marked with "use step".

    When to avoid serde: If a class is fundamentally inseparable from Node.js APIs (every method needs fs, net, etc.) and cannot meaningfully exist as a shell in the workflow sandbox, keep it entirely in step functions and pass plain data objects across boundaries instead.

    Validating Serde Compliance

    Use these tools to verify classes are correctly set up:

    • workflow transform <file> --check-serde -- Shows the SWC transform output for a file and checks if serde classes are compliant (no Node.js imports remaining in the workflow bundle).
    • workflow validate -- Scans all workflow files and reports serde compliance issues. Use --json for machine-readable output.
    • SWC Playground -- The web playground at workbench/swc-playground shows a Serde Analysis panel when serde patterns are detected.
    • Build-time warnings -- The builder automatically warns when serde classes have Node.js built-in imports remaining in the workflow bundle.

    Streaming

    Use getWritable() to stream data from workflows. getWritable() can be called in both workflow and step contexts, but you cannot interact with the stream (call getWriter(), write(), close()) directly in a workflow function. The stream must be passed to step functions for actual I/O, or steps can call getWritable() themselves.

    Get the stream in a workflow, pass it to a step:

    import { getWritable } from "workflow";
    
    export async function myWorkflow() {
      "use workflow";
      const writable = getWritable();
      await writeData(writable, "hello world");
    }
    
    async function writeData(writable: WritableStream, chunk: string) {
      "use step";
      const writer = writable.getWriter();
      try {
        await writer.write(chunk);
      } finally {
        writer.releaseLock();
      }
    }
    

    Call getWritable() directly inside a step (no need to pass it):

    import { getWritable } from "workflow";
    
    async function streamData(chunk: string) {
      "use step";
      const writer = getWritable().getWriter();
      try {
        await writer.write(chunk);
      } finally {
        writer.releaseLock();
      }
    }
    

    Namespaced Streams

    Use getWritable({ namespace: 'name' }) to create multiple independent streams for different types of data. This is useful for separating logs from primary output, different log levels, agent outputs, metrics, or any distinct data channels. Long-running workflows benefit from namespaced streams because you can replay only the important events (e.g., final results) while keeping verbose logs in a separate stream.

    Example: Log levels and agent output separation:

    import { getWritable } from "workflow";
    
    type LogEntry = { level: "debug" | "info" | "warn" | "error"; message: string; timestamp: number };
    type AgentOutput = { type: "thought" | "action" | "result"; content: string };
    
    async function logDebug(message: string) {
      "use step";
      const writer = getWritable<LogEntry>({ namespace: "logs:debug" }).getWriter();
      try {
        await writer.write({ level: "debug", message, timestamp: Date.now() });
      } finally {
        writer.releaseLock();
      }
    }
    
    async function logInfo(message: string) {
      "use step";
      const writer = getWritable<LogEntry>({ namespace: "logs:info" }).getWriter();
      try {
        await writer.write({ level: "info", message, timestamp: Date.now() });
      } finally {
        writer.releaseLock();
      }
    }
    
    async function emitAgentThought(thought: string) {
      "use step";
      const writer = getWritable<AgentOutput>({ namespace: "agent:thoughts" }).getWriter();
      try {
        await writer.write({ type: "thought", content: thought });
      } finally {
        writer.releaseLock();
      }
    }
    
    async function emitAgentResult(result: string) {
      "use step";
      // Important results go to the default stream for easy replay
      const writer = getWritable<AgentOutput>().getWriter();
      try {
        await writer.write({ type: "result", content: result });
      } finally {
        writer.releaseLock();
      }
    }
    
    export async function agentWorkflow(task: string) {
      "use workflow";
      
      await logInfo(`Starting task: ${task}`);
      await logDebug("Initializing agent context");
      await emitAgentThought("Analyzing the task requirements...");
      
      // ... agent processing ...
      
      await emitAgentResult("Task completed successfully");
      await logInfo("Workflow finished");
    }
    

    Consuming namespaced streams:

    import { start, getRun } from "workflow/api";
    import { agentWorkflow } from "./workflows/agent";
    
    export async function POST(request: Request) {
      const run = await start(agentWorkflow, ["process data"]);
    
      // Access specific streams by namespace
      const results = run.getReadable({ namespace: undefined }); // Default stream (important results)
      const infoLogs = run.getReadable({ namespace: "logs:info" });
      const debugLogs = run.getReadable({ namespace: "logs:debug" });
      const thoughts = run.getReadable({ namespace: "agent:thoughts" });
    
      // Return only important results for most clients
      return new Response(results, { headers: { "Content-Type": "application/json" } });
    }
    
    // Resume from a specific point (useful for long sessions)
    export async function GET(request: Request) {
      const { searchParams } = new URL(request.url);
      const runId = searchParams.get("runId")!;
      const startIndex = parseInt(searchParams.get("startIndex") || "0", 10);
      
      const run = getRun(runId);
      // Resume only the important stream, skip verbose debug logs
      const stream = run.getReadable({ startIndex });
      
      return new Response(stream);
    }
    

    Pro tip: For very long-running sessions (50+ minutes), namespaced streams help manage replay performance. Put verbose/debug output in separate namespaces so you can replay just the important events quickly.

    Debugging

    # Check workflow endpoints are reachable
    npx workflow health
    npx workflow health --port 3001  # Non-default port
    
    # Visual dashboard for runs
    npx workflow web
    npx workflow web <run_id>
    
    # CLI inspection (use --json for machine-readable output, --help for full usage)
    npx workflow inspect runs
    npx workflow inspect run <run_id>
    
    # For Vercel-deployed projects, specify backend and project
    npx workflow inspect runs --backend vercel --project <project-name> --team <team-slug>
    npx workflow inspect run <run_id> --backend vercel --project <project-name> --team <team-slug>
    
    # Open Vercel dashboard in browser for a specific run
    npx workflow inspect run <run_id> --web
    npx workflow web <run_id> --backend vercel --project <project-name> --team <team-slug>
    
    # Cancel a running workflow
    npx workflow cancel <run_id>
    npx workflow cancel <run_id> --backend vercel --project <project-name> --team <team-slug>
    # --env defaults to "production"; use --env preview for preview deployments
    

    Deep-linking to a run (share a URL, no browser)

    Use --url to print the dashboard deep link and exit — no browser opens and no local server starts. This is the right tool when you need to hand a user a clickable link (PR comment, Slack message, debugging summary) rather than open a UI. (--web opens the dashboard; --url only prints the link.)

    # Vercel run — prints the Vercel dashboard URL for the run
    npx workflow inspect run <run_id> --backend vercel --project <project> --team <team> --url
    npx workflow web <run_id> --backend vercel --project <project> --team <team> --env preview --url
    
    # Local run — prints the local web UI deep link
    npx workflow inspect run <run_id> --url
    
    # Machine-readable: --url --json prints { "url": "..." } to stdout
    npx workflow inspect run <run_id> --backend vercel --url --json
    

    URL formats produced:

    • Vercel: https://vercel.com/<team-slug>/<project-slug>/workflows/runs/<run_id>?environment=<production|preview> (--env selects the environment; defaults to production. Resolving the team slug requires being logged in via vercel login with the project linked.)
    • Local: http://localhost:<port>?resource=run&id=<run_id> (port defaults to 3456; the link works while the npx workflow web server is running).

    stdout contains only the URL (or the JSON object) — all other output goes to stderr — so you can capture it directly, e.g. URL=$(npx workflow web <run_id> --backend vercel --url).

    Debugging tips:

    • Use --json (-j) on any command for machine-readable output
    • Use --web to open the Vercel Observability dashboard in your browser, or --url to just print the deep link
    • Use --help on any command for full usage details
    • Only import workflow APIs you actually use. Unused imports can cause 500 errors.

    Testing Workflows

    Workflow SDK provides a Vitest plugin for testing workflows in-process — no running server required.

    Unit testing steps: Steps are just functions; without the compiler, "use step" is a no-op. Test them directly:

    import { describe, it, expect } from "vitest";
    import { createUser } from "./user-signup";
    
    describe("createUser step", () => {
      it("should create a user", async () => {
        const user = await createUser("test@example.com");
        expect(user.email).toBe("test@example.com");
      });
    });
    

    Integration testing: Use @workflow/vitest for workflows using sleep(), hooks, webhooks, or retries:

    // vitest.integration.config.ts
    import { defineConfig } from "vitest/config";
    import { workflow } from "@workflow/vitest";
    
    export default defineConfig({
      plugins: [workflow()],
      test: {
        include: ["**/*.integration.test.ts"],
        testTimeout: 60_000,
      },
    });
    
    // approval.integration.test.ts
    import { describe, it, expect } from "vitest";
    import { start, getRun, resumeHook } from "workflow/api";
    import { waitForHook, waitForSleep } from "@workflow/vitest";
    import { approvalWorkflow } from "./approval";
    
    describe("approvalWorkflow", () => {
      it("should publish when approved", async () => {
        const run = await start(approvalWorkflow, ["doc-123"]);
    
        // Wait for the hook, then resume it
        await waitForHook(run, { token: "approval:doc-123" });
        await resumeHook("approval:doc-123", { approved: true, reviewer: "alice" });
    
        // Wait for sleep, then wake it up
        const sleepId = await waitForSleep(run);
        await getRun(run.runId).wakeUp({ correlationIds: [sleepId] });
    
        const result = await run.returnValue;
        expect(result).toEqual({ status: "published", reviewer: "alice" });
      });
    });
    

    Testing webhooks: Use resumeWebhook() with a Request object — no HTTP server needed:

    import { start, resumeWebhook } from "workflow/api";
    import { waitForHook } from "@workflow/vitest";
    
    const run = await start(ingestWorkflow, ["ep-1"]);
    const hook = await waitForHook(run);  // Discovers the random webhook token
    await resumeWebhook(hook.token, new Request("https://example.com/webhook", {
      method: "POST",
      body: JSON.stringify({ event: "order.created" }),
    }));
    

    Key APIs:

    • start() — trigger a workflow
    • run.returnValue — await workflow completion
    • waitForHook(run, { token? }) / waitForSleep(run) — wait for workflow to reach a pause point
    • resumeHook(token, data) / resumeWebhook(token, request) — resume paused workflows
    • getRun(runId).wakeUp({ correlationIds }) — skip sleep() calls

    Best practices:

    • Keep unit tests (no plugin) and integration tests (workflow() plugin) in separate configs
    • Use deterministic hook tokens based on test data for easier resumption
    • Set generous testTimeout — workflows may run longer than typical unit tests
    • vi.mock() does not work in integration tests — step dependencies are bundled by esbuild

    Observability & World SDK

    Use await getWorld() to build observability dashboards, admin panels, and inspect workflow state. getWorld() is asynchronous and returns Promise<World> (dynamic import / env-based setup).

    Key imports:

    import { getWorld } from "workflow/runtime";
    import { hydrateResourceIO, observabilityRevivers, parseStepName, parseWorkflowName } from "workflow/observability";
    

    Key docs (grep node_modules/workflow/docs/ for full details):

    • api-reference/workflow-runtime/world/storage.mdx — events, runs, steps, hooks (events are source of truth; others are materialized views)
    • api-reference/workflow-observability/ — hydration and name parsing

    World SDK Method Signatures

    ⚠️ Pagination is nested: { pagination: { cursor } } — NOT { cursor } directly.

    const world = await getWorld();
    
    // Runs
    const { data, cursor } = await world.runs.list({ pagination: { cursor }, resolveData: 'all' | 'none' });
    const run = await world.runs.get(runId, { resolveData: 'all' | 'none' });
    // Cancel via event creation (no cancel() method on runs)
    await world.events.create(runId, { eventType: 'run_cancelled' });
    
    // Steps — runId is top-level, NOT inside pagination
    const { data, cursor } = await world.steps.list({ runId, pagination: { cursor }, resolveData: 'all' | 'none' });
    const step = await world.steps.get(runId, stepId, { resolveData: 'all' | 'none' });
    
    // Events
    const { data, cursor } = await world.events.list({ runId, pagination: { cursor } });
    await world.events.create(runId, { eventType: 'run_cancelled' });
    
    // Hooks
    const hook = await world.hooks.get(hookId);
    const hook = await world.hooks.getByToken(token);
    
    // Streams (methods on world.streams)
    await world.streams.write(runId, name, chunk);
    await world.streams.writeMulti?.(runId, name, chunks);
    const readable = await world.streams.get(runId, name, startIndex);
    await world.streams.close(runId, name);
    const streamNames = await world.streams.list(runId);
    const chunks = await world.streams.getChunks(runId, name, { limit, cursor });
    const info = await world.streams.getInfo(runId, name);
    
    // Queue (methods live directly on world — internal SDK infrastructure)
    await world.queue(queueName, payload, opts);
    const deploymentId = await world.getDeploymentId();
    

    resolveData Parameter

    Controls whether input/output data is included in the response. Accepts 'all' (default) or 'none'.

    IMPORTANT: Even with 'all', data is still devalue-serialized. You MUST call hydrateResourceIO() to get usable JS values.

    • Use 'none' for status polling, progress dashboards, run listings
    • Use 'all' (or omit) when you need to inspect actual step I/O data — then always hydrate
    // Lightweight status check — no I/O loaded
    const run = await world.runs.get(runId, { resolveData: 'none' });
    console.log(run.status); // 'running' | 'completed' | 'failed' | 'cancelled'
    
    // Full inspection — resolveData includes data, hydrateResourceIO deserializes it
    const step = await world.steps.get(runId, stepId); // defaults to 'all'
    const hydrated = hydrateResourceIO(step, observabilityRevivers);
    

    Common mistake: Checking step.input !== undefined after resolveData: 'all' and assuming the data is ready to use. The data exists but is serialized — always hydrate first.

    Data Hydration (Devalue Format)

    Step I/O is serialized via devalue with a 4-byte format prefix (devl). Without hydration, input/output are Uint8Array-like objects with numeric keys: {"0":100,"1":101,"2":118,"3":108,...} — these are NOT usable values.

    Always hydrate before using I/O data:

    import { hydrateResourceIO, observabilityRevivers } from "workflow/observability";
    
    const { data: steps } = await world.steps.list({ runId, resolveData: 'all' });
    const hydrated = steps.map(s => hydrateResourceIO(s, observabilityRevivers));
    // hydrated[0].input → [123, 2] (actual function arguments)
    // hydrated[0].output → 125 (actual return value)
    

    hydrateResourceIO works on both Step and WorkflowRun objects. For encrypted workflows, use getEncryptionKeyForRun() + hydrateResourceIOWithKey().

    Name Parsing

    parseWorkflowName(), parseStepName(), and parseClassName() return { shortName: string, moduleSpecifier: string } | null. Always use optional chaining:

    const parsed = parseWorkflowName("workflow//./src/workflows/order//processOrder");
    // parsed?.shortName → "processOrder"
    // parsed?.moduleSpecifier → "./src/workflows/order"
    // ⚠️ Returns null if format doesn't match
    

    Event Types

    Events are the append-only source of truth. Runs/Steps/Hooks are materialized views.

    Category Types
    Run run_created, run_started, run_completed, run_failed, run_cancelled
    Step step_created, step_started, step_completed, step_failed, step_retrying
    Hook hook_created, hook_received, hook_disposed, hook_conflict
    Wait wait_created, wait_completed

    Error Handling Patterns

    Three error strategies for different failure modes:

    Error Type Use When Behavior
    FatalError Permanent failure (bad input, auth denied) Terminates workflow immediately, no retry
    RetryableError Transient failure (rate limit, timeout) Retries with optional retryAfter delay
    Promise.allSettled Parallel steps with mixed criticality Continues even if some steps fail
    import { FatalError, RetryableError } from "workflow";
    
    // Permanent failure — workflow terminates
    throw new FatalError("Invalid input: missing required field");
    
    // Transient failure — will retry
    throw new RetryableError("API rate limited", { retryAfter: "5m" });
    
    // Mixed criticality parallel execution
    const results = await Promise.allSettled([
      criticalStep(data),    // Must succeed
      optionalStep(data),    // OK to fail
      enrichmentStep(data),  // OK to fail
    ]);
    const [critical, optional, enrichment] = results;
    if (critical.status === "rejected") throw new FatalError(critical.reason);
    
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    Repository
    vercel/workflow
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