| 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 |
Data entry, not a flow bug |
Null value crashes child flow
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
import json, urllib.request
MCP_URL = "https://mcp.flowstudio.app/mcp"
MCP_TOKEN = "<YOUR_JWT_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 = "<environment-id>"
Step 1 — Locate the Flow
result = mcp("list_live_flows", environmentName=ENV)
target = next(f for f in result["flows"] if "My Flow Name" in f["displayName"])
FLOW_ID = target["id"]
print(FLOW_ID)
Step 2 — Find the Failing Run
runs = mcp("get_live_flow_runs", environmentName=ENV, flowName=FLOW_ID, top=5)
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.
err = mcp("get_live_flow_run_error",
environmentName=ENV, flowName=FLOW_ID, runName=RUN_ID)
root = err["failedActions"][-1]
print(f"Root action: {root['actionName']} → code: {root.get('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.
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')}")
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])
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)}")
if out.get("error"):
print(f"Error: {out['error']}")
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
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:
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:
- Find the action in the definition
- Check what upstream action/expression it reads
- Inspect that upstream action's output for null / missing fields
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:
result = mcp("get_live_flow_run_action_outputs", ..., actionName="<trigger-action-name>")
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:
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:
defn = mcp("get_live_flow", environmentName=ENV, flowName=FLOW_ID)
acts = defn["properties"]["definition"]["actions"]
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"))
⚠️ 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.
resubmit = mcp("resubmit_live_flow_run",
environmentName=ENV, flowName=FLOW_ID, runName=RUN_ID)
print(resubmit)
import time; time.sleep(30)
new_runs = mcp("get_live_flow_runs", environmentName=ENV, flowName=FLOW_ID, top=3)
print(new_runs[0]["status"])
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:
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"))
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
Related Skills
flowstudio-power-automate-mcp — Core connection setup and operation reference
flowstudio-power-automate-build — Build and deploy new flows