--- name: flowstudio-power-automate-debug description: >- Debug failing Power Automate cloud flows using the FlowStudio MCP server. The Graph API only shows top-level status codes. This skill gives your agent action-level inputs and outputs to find the actual root cause. Load this skill when asked to: debug a flow, investigate a failed run, why is this flow failing, inspect action outputs, find the root cause of a flow error, fix a broken Power Automate flow, diagnose a timeout, trace a DynamicOperationRequestFailure, check connector auth errors, read error details from a run, or troubleshoot expression failures. Requires a FlowStudio MCP subscription — see https://mcp.flowstudio.app metadata: openclaw: requires: env: - FLOWSTUDIO_MCP_TOKEN primaryEnv: FLOWSTUDIO_MCP_TOKEN homepage: https://mcp.flowstudio.app --- # Power Automate Debugging with FlowStudio MCP A step-by-step diagnostic process for investigating failing Power Automate cloud flows through the FlowStudio MCP server. > **Real debugging examples**: [Expression error in child flow](https://github.com/ninihen1/power-automate-mcp-skills/blob/main/examples/fix-expression-error.md) | > [Data entry, not a flow bug](https://github.com/ninihen1/power-automate-mcp-skills/blob/main/examples/data-not-flow.md) | > [Null value crashes child flow](https://github.com/ninihen1/power-automate-mcp-skills/blob/main/examples/null-child-flow.md) **Prerequisite**: A FlowStudio MCP server must be reachable with a valid JWT. See the `flowstudio-power-automate-mcp` skill for connection setup. Subscribe at https://mcp.flowstudio.app --- ## Source of Truth > **Always call `tools/list` first** to confirm available tool names and their > parameter schemas. Tool names and parameters may change between server versions. > This skill covers response shapes, behavioral notes, and diagnostic patterns — > things `tools/list` cannot tell you. If this document disagrees with `tools/list` > or a real API response, the API wins. --- ## Python Helper ```python import json, urllib.request MCP_URL = "https://mcp.flowstudio.app/mcp" MCP_TOKEN = "" def mcp(tool, **kwargs): payload = json.dumps({"jsonrpc": "2.0", "id": 1, "method": "tools/call", "params": {"name": tool, "arguments": kwargs}}).encode() req = urllib.request.Request(MCP_URL, data=payload, headers={"x-api-key": MCP_TOKEN, "Content-Type": "application/json", "User-Agent": "FlowStudio-MCP/1.0"}) try: resp = urllib.request.urlopen(req, timeout=120) except urllib.error.HTTPError as e: body = e.read().decode("utf-8", errors="replace") raise RuntimeError(f"MCP HTTP {e.code}: {body[:200]}") from e raw = json.loads(resp.read()) if "error" in raw: raise RuntimeError(f"MCP error: {json.dumps(raw['error'])}") return json.loads(raw["result"]["content"][0]["text"]) ENV = "" # e.g. Default-xxxxxxxx-xxxx-xxxx-xxxx-xxxxxxxxxxxx ``` --- ## Step 1 — Locate the Flow ```python result = mcp("list_live_flows", environmentName=ENV) # Returns a wrapper object: {mode, flows, totalCount, error} target = next(f for f in result["flows"] if "My Flow Name" in f["displayName"]) FLOW_ID = target["id"] # plain UUID — use directly as flowName print(FLOW_ID) ``` --- ## Step 2 — Find the Failing Run ```python runs = mcp("get_live_flow_runs", environmentName=ENV, flowName=FLOW_ID, top=5) # Returns direct array (newest first): # [{"name": "08584296068667933411438594643CU15", # "status": "Failed", # "startTime": "2026-02-25T06:13:38.6910688Z", # "endTime": "2026-02-25T06:15:24.1995008Z", # "triggerName": "manual", # "error": {"code": "ActionFailed", "message": "An action failed..."}}, # {"name": "...", "status": "Succeeded", "error": null, ...}] for r in runs: print(r["name"], r["status"], r["startTime"]) RUN_ID = next(r["name"] for r in runs if r["status"] == "Failed") ``` --- ## Step 3 — Get the Top-Level Error > **CRITICAL**: `get_live_flow_run_error` tells you **which** action failed. > `get_live_flow_run_action_outputs` tells you **why**. You must call BOTH. > Never stop at the error alone — error codes like `ActionFailed`, > `NotSpecified`, and `InternalServerError` are generic wrappers. The actual > root cause (wrong field, null value, HTTP 500 body, stack trace) is only > visible in the action's inputs and outputs. ```python err = mcp("get_live_flow_run_error", environmentName=ENV, flowName=FLOW_ID, runName=RUN_ID) # Returns: # { # "runName": "08584296068667933411438594643CU15", # "failedActions": [ # {"actionName": "Apply_to_each_prepare_workers", "status": "Failed", # "error": {"code": "ActionFailed", "message": "An action failed..."}, # "startTime": "...", "endTime": "..."}, # {"actionName": "HTTP_find_AD_User_by_Name", "status": "Failed", # "code": "NotSpecified", "startTime": "...", "endTime": "..."} # ], # "allActions": [ # {"actionName": "Apply_to_each", "status": "Skipped"}, # {"actionName": "Compose_WeekEnd", "status": "Succeeded"}, # ... # ] # } # failedActions is ordered outer-to-inner. The ROOT cause is the LAST entry: root = err["failedActions"][-1] print(f"Root action: {root['actionName']} → code: {root.get('code')}") # allActions shows every action's status — useful for spotting what was Skipped # See common-errors.md to decode the error code. ``` --- ## Step 4 — Inspect the Failing Action's Inputs and Outputs > **This is the most important step.** `get_live_flow_run_error` only gives > you a generic error code. The actual error detail — HTTP status codes, > response bodies, stack traces, null values — lives in the action's runtime > inputs and outputs. **Always inspect the failing action immediately after > identifying it.** ```python # Get the root failing action's full inputs and outputs root_action = err["failedActions"][-1]["actionName"] detail = mcp("get_live_flow_run_action_outputs", environmentName=ENV, flowName=FLOW_ID, runName=RUN_ID, actionName=root_action) out = detail[0] if detail else {} print(f"Action: {out.get('actionName')}") print(f"Status: {out.get('status')}") # For HTTP actions, the real error is in outputs.body if isinstance(out.get("outputs"), dict): status_code = out["outputs"].get("statusCode") body = out["outputs"].get("body", {}) print(f"HTTP {status_code}") print(json.dumps(body, indent=2)[:500]) # Error bodies are often nested JSON strings — parse them if isinstance(body, dict) and "error" in body: err_detail = body["error"] if isinstance(err_detail, str): err_detail = json.loads(err_detail) print(f"Error: {err_detail.get('message', err_detail)}") # For expression errors, the error is in the error field if out.get("error"): print(f"Error: {out['error']}") # Also check inputs — they show what expression/URL/body was used if out.get("inputs"): print(f"Inputs: {json.dumps(out['inputs'], indent=2)[:500]}") ``` ### What the action outputs reveal (that error codes don't) | Error code from `get_live_flow_run_error` | What `get_live_flow_run_action_outputs` reveals | |---|---| | `ActionFailed` | Which nested action actually failed and its HTTP response | | `NotSpecified` | The HTTP status code + response body with the real error | | `InternalServerError` | The server's error message, stack trace, or API error JSON | | `InvalidTemplate` | The exact expression that failed and the null/wrong-type value | | `BadRequest` | The request body that was sent and why the server rejected it | ### Example: HTTP action returning 500 ``` Error code: "InternalServerError" ← this tells you nothing Action outputs reveal: HTTP 500 body: {"error": "Cannot read properties of undefined (reading 'toLowerCase') at getClientParamsFromConnectionString (storage.js:20)"} ← THIS tells you the Azure Function crashed because a connection string is undefined ``` ### Example: Expression error on null ``` Error code: "BadRequest" ← generic Action outputs reveal: inputs: "body('HTTP_GetTokenFromStore')?['token']?['access_token']" outputs: "" ← empty string, the path resolved to null ← THIS tells you the response shape changed — token is at body.access_token, not body.token.access_token ``` --- ## Step 5 — Read the Flow Definition ```python defn = mcp("get_live_flow", environmentName=ENV, flowName=FLOW_ID) actions = defn["properties"]["definition"]["actions"] print(list(actions.keys())) ``` Find the failing action in the definition. Inspect its `inputs` expression to understand what data it expects. --- ## Step 6 — Walk Back from the Failure When the failing action's inputs reference upstream actions, inspect those too. Walk backward through the chain until you find the source of the bad data: ```python # Inspect multiple actions leading up to the failure for action_name in [root_action, "Compose_WeekEnd", "HTTP_Get_Data"]: result = mcp("get_live_flow_run_action_outputs", environmentName=ENV, flowName=FLOW_ID, runName=RUN_ID, actionName=action_name) out = result[0] if result else {} print(f"\n--- {action_name} ({out.get('status')}) ---") print(f"Inputs: {json.dumps(out.get('inputs', ''), indent=2)[:300]}") print(f"Outputs: {json.dumps(out.get('outputs', ''), indent=2)[:300]}") ``` > ⚠️ Output payloads from array-processing actions can be very large. > Always slice (e.g. `[:500]`) before printing. > **Tip**: Omit `actionName` to get ALL actions in a single call. > This returns every action's inputs/outputs — useful when you're not sure > which upstream action produced the bad data. But use 120s+ timeout as > the response can be very large. --- ## Step 7 — Pinpoint the Root Cause ### Expression Errors (e.g. `split` on null) If the error mentions `InvalidTemplate` or a function name: 1. Find the action in the definition 2. Check what upstream action/expression it reads 3. **Inspect that upstream action's output** for null / missing fields ```python # Example: action uses split(item()?['Name'], ' ') # → null Name in the source data result = mcp("get_live_flow_run_action_outputs", ..., actionName="Compose_Names") if not result: print("No outputs returned for Compose_Names") names = [] else: names = result[0].get("outputs", {}).get("body") or [] nulls = [x for x in names if x.get("Name") is None] print(f"{len(nulls)} records with null Name") ``` ### Wrong Field Path Expression `triggerBody()?['fieldName']` returns null → `fieldName` is wrong. **Inspect the trigger output** to see the actual field names: ```python result = mcp("get_live_flow_run_action_outputs", ..., actionName="") print(json.dumps(result[0].get("outputs"), indent=2)[:500]) ``` ### HTTP Actions Returning Errors The error code says `InternalServerError` or `NotSpecified` — **always inspect the action outputs** to get the actual HTTP status and response body: ```python result = mcp("get_live_flow_run_action_outputs", ..., actionName="HTTP_Get_Data") out = result[0] print(f"HTTP {out['outputs']['statusCode']}") print(json.dumps(out['outputs']['body'], indent=2)[:500]) ``` ### Connection / Auth Failures Look for `ConnectionAuthorizationFailed` — the connection owner must match the service account running the flow. Cannot fix via API; fix in PA designer. --- ## Step 8 — Apply the Fix **For expression/data issues**: ```python defn = mcp("get_live_flow", environmentName=ENV, flowName=FLOW_ID) acts = defn["properties"]["definition"]["actions"] # Example: fix split on potentially-null Name acts["Compose_Names"]["inputs"] = \ "@coalesce(item()?['Name'], 'Unknown')" conn_refs = defn["properties"]["connectionReferences"] result = mcp("update_live_flow", environmentName=ENV, flowName=FLOW_ID, definition=defn["properties"]["definition"], connectionReferences=conn_refs) print(result.get("error")) # None = success ``` > ⚠️ `update_live_flow` always returns an `error` key. > A value of `null` (Python `None`) means success. --- ## Step 9 — Verify the Fix > **Use `resubmit_live_flow_run` to test ANY flow — not just HTTP triggers.** > `resubmit_live_flow_run` replays a previous run using its original trigger > payload. This works for **every trigger type**: Recurrence, SharePoint > "When an item is created", connector webhooks, Button triggers, and HTTP > triggers. You do NOT need to ask the user to manually trigger the flow or > wait for the next scheduled run. > > The only case where `resubmit` is not available is a **brand-new flow that > has never run** — it has no prior run to replay. ```python # Resubmit the failed run — works for ANY trigger type resubmit = mcp("resubmit_live_flow_run", environmentName=ENV, flowName=FLOW_ID, runName=RUN_ID) print(resubmit) # {"resubmitted": true, "triggerName": "..."} # Wait ~30 s then check import time; time.sleep(30) new_runs = mcp("get_live_flow_runs", environmentName=ENV, flowName=FLOW_ID, top=3) print(new_runs[0]["status"]) # Succeeded = done ``` ### When to use resubmit vs trigger | Scenario | Use | Why | |---|---|---| | **Testing a fix** on any flow | `resubmit_live_flow_run` | Replays the exact trigger payload that caused the failure — best way to verify | | Recurrence / scheduled flow | `resubmit_live_flow_run` | Cannot be triggered on demand any other way | | SharePoint / connector trigger | `resubmit_live_flow_run` | Cannot be triggered without creating a real SP item | | HTTP trigger with **custom** test payload | `trigger_live_flow` | When you need to send different data than the original run | | Brand-new flow, never run | `trigger_live_flow` (HTTP only) | No prior run exists to resubmit | ### Testing HTTP-Triggered Flows with custom payloads For flows with a `Request` (HTTP) trigger, use `trigger_live_flow` when you need to send a **different** payload than the original run: ```python # First inspect what the trigger expects schema = mcp("get_live_flow_http_schema", environmentName=ENV, flowName=FLOW_ID) print("Expected body schema:", schema.get("requestSchema")) print("Response schemas:", schema.get("responseSchemas")) # Trigger with a test payload result = mcp("trigger_live_flow", environmentName=ENV, flowName=FLOW_ID, body={"name": "Test User", "value": 42}) print(f"Status: {result['responseStatus']}, Body: {result.get('responseBody')}") ``` > `trigger_live_flow` handles AAD-authenticated triggers automatically. > Only works for flows with a `Request` (HTTP) trigger type. --- ## Quick-Reference Diagnostic Decision Tree | Symptom | First Tool | Then ALWAYS Call | What to Look For | |---|---|---|---| | Flow shows as Failed | `get_live_flow_run_error` | `get_live_flow_run_action_outputs` on the failing action | HTTP status + response body in `outputs` | | Error code is generic (`ActionFailed`, `NotSpecified`) | — | `get_live_flow_run_action_outputs` | The `outputs.body` contains the real error message, stack trace, or API error | | HTTP action returns 500 | — | `get_live_flow_run_action_outputs` | `outputs.statusCode` + `outputs.body` with server error detail | | Expression crash | — | `get_live_flow_run_action_outputs` on prior action | null / wrong-type fields in output body | | Flow never starts | `get_live_flow` | — | check `properties.state` = "Started" | | Action returns wrong data | `get_live_flow_run_action_outputs` | — | actual output body vs expected | | Fix applied but still fails | `get_live_flow_runs` after resubmit | — | new run `status` field | > **Rule: never diagnose from error codes alone.** `get_live_flow_run_error` > identifies the failing action. `get_live_flow_run_action_outputs` reveals > the actual cause. Always call both. --- ## Reference Files - [common-errors.md](references/common-errors.md) — Error codes, likely causes, and fixes - [debug-workflow.md](references/debug-workflow.md) — Full decision tree for complex failures ## Related Skills - `flowstudio-power-automate-mcp` — Core connection setup and operation reference - `flowstudio-power-automate-build` — Build and deploy new flows