| name | troubleshooting-flows |
| description | Diagnose and resolve Celigo flow failures -- total failures, partial errors, stuck jobs, empty runs, and performance issues. Use when a flow is failing, producing errors, returning no data, or running slowly. |
Troubleshooting Flows
A flow is broken when it fails to move data correctly. This skill covers systematic diagnosis: identifying the problem type, isolating the failing step, inspecting errors, and resolving them.
Troubleshooting concerns:
- Job status -- understanding what
completed, failed, canceled, and retrying mean for the flow
- Error analysis -- grouping errors by pattern to find root causes instead of reading them one-by-one
- Request/response inspection -- seeing exactly what was sent and returned at each step
- Execution logs -- record-level tracing through every stage of the pipeline
- Retry and resolution -- fixing error data and retrying vs bulk resolving
- Delta/state issues --
lastExportDateTime drift, stuck deltas, re-processing windows
Problem Categories
Total Failure
Job status is failed with 0 successful records. The entire run collapsed before processing any data. Typically numPagesGenerated: 0 (export-level failure) or pages generated but numPagesProcessed: 0 (import-level failure on the first page).
Common causes: connection failure (credentials expired, endpoint down), export query error (invalid SQL, bad saved search ID), missing/deleted resource, permission denied.
Partial Failure
Job status is completed but numError > 0 alongside successful records. Some records failed while others processed normally. Real-world data shows wide variance -- from 2 errors in 8000 successes to 500+ errors in 8000 successes.
Common causes: validation errors on the destination (required fields missing, type mismatches), duplicate key violations, record-level lookup failures, rate limiting on specific batches, data-dependent issues (specific records have bad data).
Empty Run
Job completes successfully with 0 errors AND 0 records processed.
Common causes: wrong resourcePath on the export (extracts from wrong JSON path), delta export with no changes since last run (legitimate), output filter too restrictive (all records filtered out), source query returns no results, webhook export with no inbound events.
Stuck or Long-Running
Job stays in running or retrying status longer than expected.
Common causes: large dataset with no pagination limits, destination system slow to respond, script hook with long-running logic, on-premise agent connectivity issues, rate limiting causing backoff.
Intermittent Failures
Flow sometimes succeeds and sometimes fails with the same configuration.
Common causes: token/session expiry mid-run (long-running flows), rate limiting (varies with concurrent flows), transient network errors, source system maintenance windows.
Error Diagnosis Framework
Classification
When an error occurs, classify it into one of three categories to determine the right action:
| Category | HTTP status codes | Meaning | Action |
|---|
| Needs investigation | 400, 401, 403, 404, 405, 409, 422 | Missing info, wrong IDs, permission denied, validation errors | Stop and investigate -- check resource config, connection status, permissions |
| Transient | 408, 429, 500, 502, 503, 504 | Timeouts, rate limits, server errors | Retry once. If it fails again, escalate -- the external system may be down |
| Configuration error | varies | Preconditions not met but fixable | Follow the error message guidance to fix the config, then retry |
A 5xx error not in the transient list (e.g., 501) is still likely transient. A 4xx error not in the investigation list warrants manual review.
Root Cause: Configuration vs Data
Every flow error has one of two root causes:
- Static configuration -- a hardcoded value in the step config is wrong (mapping expression, filter rule, hardcoded field, URI, query, SQL statement). Fix: change the resource configuration via
celigo <type> set
- Dynamic data -- the upstream source sent unexpected data (missing required field, wrong type, null where a value is expected, unexpected array/object shape). Fix: add input filtering or validation upstream, or fix the source system
To distinguish: check if the error reproduces with different input records. If the same error occurs for every record, it's configuration. If only some records fail, it's data.
celigo flows error-summary <flowId>
celigo flows errors <flowId> <stepId>
Which Step Failed?
Error location determines which resource and skill to investigate:
| Error location | Resource to check | Skill |
|---|
| Export / page generator | Export config (connection, query, resourcePath) | configuring-exports |
| Import / page processor | Import config (mapping, destination fields, operation) | configuring-imports |
| Script hook | Script code (preSavePage, preMap, postMap, postSubmit) | writing-scripts |
| Mapping | Mapping expression (field paths, lookups, hardcoded values) | writing-mappings |
| Filter | Filter expression (s-expression syntax, field references) | configuring-filters |
| Connection | Connection config (auth, URL, credentials) | configuring-connections |
Quick Reference
Symptom --> First Command
| Symptom | Run first | Then |
|---|
| Flow totally failed | celigo jobs list --flow <flowId> --limit 1 | Check numPagesGenerated -- if 0, export failed; check connection and query |
| Partial errors | celigo flows error-summary <flowId> | celigo flows error-analysis <flowId> <stepId> to find root cause pattern |
| Empty run (0 records) | celigo jobs list --flow <flowId> --limit 1 | Check export config (resourcePath, delta state, output filter) |
| Stuck / long-running | celigo jobs current --flow <flowId> | Check job status; if retrying, inspect rate limiting or connection issues |
| Intermittent failures | celigo jobs run-stats --flow <flowId> | Compare failing vs passing runs; check token expiry and rate limits |
| Silent logic bug (no errors, wrong output) | celigo flows test-run <flowId> --export <genId> | If test-run can't reach it, enable execution logging (§6) and run for real |
| Production incident (real traffic matters) | celigo flows enable-execution-logs <flowId> then run | Read per-record I/O with query-execution-logs / execution-log-detail; the failing stage names the problem |
Key Diagnostic Commands
celigo jobs list --flow <flowId> --limit 1
celigo jobs current --flow <flowId>
celigo jobs diagnostics <jobId>
celigo flows error-summary <flowId>
celigo flows error-analysis <flowId> <id>
celigo flows errors <flowId> <id>
celigo flows error <flowId> <id> <errorId> --request-detail
celigo flows test-run <flowId> --export <genId>
celigo flows enable-execution-logs <flowId>
celigo flows execution-logs <flowId> <jobId>
celigo flows debug-requests <flowId> <id>
Related Skills
Diagnostic Workflow
1. Check the job status
Start with the most recent job to understand what happened.
celigo jobs list --flow <flowId> --limit 1
celigo jobs get <jobId>
celigo jobs current --flow <flowId>
Key fields: status, numError, numSuccess, numIgnore, numPagesGenerated, numPagesProcessed, startedAt, endedAt. A failed status with numPagesGenerated: 0 means the export itself failed -- don't look at import errors. completed with numError > 0 means partial failure at the record level.
2. Get the error summary
See which steps have errors and how many.
celigo flows error-summary <flowId>
This returns per-step error counts. Focus on the step with the most errors first.
3. Analyze error patterns
Group errors by message pattern to find the root cause instead of reading them one-by-one.
celigo flows error-analysis <flowId> <exportOrImportId> [--limit 200]
If most errors share the same message, that's your root cause. Multiple distinct patterns may indicate multiple issues.
4. Inspect individual errors
Once you know the pattern, look at specific records and the HTTP request/response that produced the error.
celigo flows errors <flowId> <exportOrImportId>
celigo flows error <flowId> <exportOrImportId> <errorId> --retry-data
celigo flows error <flowId> <exportOrImportId> <errorId> --request-detail
flows error --request-detail is the most powerful diagnostic -- it resolves the error's reqAndResKey for you and shows exactly what HTTP request was sent and what the destination responded with. (If you already hold a reqAndResKey from debug-requests, use debug-request-detail instead.)
5. Use test runs for safe iteration (try this first)
Test runs process a single page without affecting production data or delta state. Fast, safe, no arming, no side effects -- answers most logic questions.
celigo flows test-run <flowId> --export <exportId>
celigo flows test-run-step-results <flowId> <runId> <exportOrImportId>
celigo flows test-run-step-logs <flowId> <runId> <exportOrImportId>
test-run returns {metadata, flowJob, childJobs} -- metadata lists stage names per bubble. Follow with test-run-step-results to get stages[] = [{name, input, output, errors}] per bubble. Errors include retryData inline.
Test runs don't advance the delta timestamp -- you can repeat them safely against the same data.
Limitations: imports don't actually submit, mock data is shared across lookups/imports, and some adaptors don't run in test mode. When these bite, escalate to §6.
6. End-to-end debugging with execution logs (silent/logic bugs, production incidents)
When test-run can't answer it -- imports must actually submit, destination behavior matters, or it's a production incident -- arm execution logging, run the flow for real, then read the per-record I/O the run captured. Disable debug when you're done.
celigo flows enable-execution-logs <flowId> [--duration <minutes>]
celigo flows run <flowId> -y
celigo flows execution-logs <flowId> <jobId>
celigo flows query-execution-logs <flowId> <jobId> --export-or-import-id <id> --group-id <gid> --record-id <rid>
celigo flows execution-log-detail <flowId> <jobId> --export-or-import-id <id> --stage <stage> --group-id <gid> --record-id <rid>
celigo flows disable-execution-logs <flowId>
Each per-record log entry names the stage that produced it (matching the test-run-step-results stage shape: { name, input, output, errors }), so the failing stage tells you where the record broke. For raw HTTP at a bubble, use debug-requests / debug-request-detail (§7). Errors carry retryData inline -- see §8 to fix and retry.
7. Low-level debug primitives (surgical control)
These are the debug primitives the §6 workflow builds on -- use them directly when you want manual control over arming, clearing, or probing:
celigo flows enable-execution-logs <flowId> [--duration <minutes>]
celigo flows disable-execution-logs <flowId>
celigo flows execution-logs <flowId> <jobId>
celigo flows query-execution-logs <flowId> <jobId> --export-or-import-id <id> --group-id <gid> --record-id <rid>
celigo flows execution-log-detail <flowId> <jobId> --export-or-import-id <id> --stage <stage> --group-id <gid> --record-id <rid>
celigo flows debug-requests <flowId> <exportOrImportId> [--since 60]
celigo flows debug-request-detail <flowId> <exportOrImportId> <key>
celigo exports enable-debug <id>
celigo imports enable-debug <id>
celigo scripts enable-debug <id>
celigo connections enable-debug <id>
Stage names (for execution-log-detail --stage):
- Built-in:
apiCall, transformation, mapping, inputFilter, outputFilter, responseMapping, responseTransformation, routing
- Script hooks: the function name wired on the bubble (e.g.,
preMapHook, postSubmitHook, branchingHook, preSavePageHook, postResponseMapHook)
Test-run uses a different stage vocabulary than live /logs/data/query: request/response/parse (three stages) instead of live's merged apiCall; transformTwoDotZero instead of transformation; responseMap instead of responseMapping; router instead of routing. Everything else matches. The live execution-log commands (§6) use the live vocabulary.
8. Fix and retry (or resolve)
Fix the configuration, then retry:
celigo flows retry-errors <flowId> <exportOrImportId> -y
celigo flows retry-errors <flowId> <exportOrImportId> key1,key2,key3
Fix the data when specific records have bad values:
celigo flows error <flowId> <exportOrImportId> <errorId> --retry-data > data.json
celigo flows update-error-data <flowId> <exportOrImportId> <errorId> < data.json
celigo flows retry-errors <flowId> <exportOrImportId> <retryDataKey>
Resolve without retry when errors are expected or not worth reprocessing:
celigo flows resolve-errors <flowId> <exportOrImportId> errorId1,errorId2
celigo flows resolve-errors <flowId> <exportOrImportId> -y
9. Verify the fix
Run the flow again and confirm clean execution.
celigo flows run <flowId> -y
celigo jobs list --flow <flowId> --limit 1
celigo flows error-summary <flowId>
CLI Commands
All commands shown in the Diagnostic Workflow above, plus these additional commands:
celigo jobs cancel <jobId> [-y]
celigo jobs diagnostics <jobId>
celigo jobs download-files <jobId>
celigo jobs get <jobId>
celigo jobs errors <jobId>
celigo jobs run-stats [--flow <flowId>] [--status <status>]
celigo flows resolved-errors <flowId> <exportOrImportId>
celigo flows assign-errors <flowId> <exportOrImportId> <email> [errorIds] [-y]
celigo flows delete-resolved-errors <flowId> <exportOrImportId> [errorIds] [-y]
celigo flows tag-errors <flowId> <exportOrImportId>
celigo flows query-execution-logs <flowId> <jobId> --export-or-import-id <id> --group-id <gid> --record-id <rid>
celigo flows last-export-date <flowId>
celigo flows run <flowId> [--start-date <ISO8601>] [--end-date <ISO8601>] [-y]
Diagnostic Checklist
Before escalating or concluding investigation:
Gotchas
- A
completed job can still have errors. completed means the job finished, not that every record succeeded. Always check numError alongside status.
error-analysis only samples up to --limit errors. Default is 100. For flows with thousands of errors, increase the limit to get an accurate pattern distribution.
flows error takes the errorId (the _id from flows errors), not a reqAndResKey or retryDataKey. It resolves those internal keys for you: --request-detail follows the error's reqAndResKey, --retry-data follows its retryDataKey. Use debug-request-detail only when you already hold a raw reqAndResKey from debug-requests.
- Debug execution logs auto-disable after
--duration minutes. Default is 60. If your flow runs after the window expires, you get no logs. Enable, then run promptly.
- Test runs don't advance delta state. This is intentional -- you can test repeatedly with the same data. But it means test runs always re-fetch the same records.
- Retrying resolved errors is not possible. Once resolved, an error cannot be retried. Only resolve errors you're certain don't need reprocessing.
lastExportDateTime drift causes re-processing or gaps. If a delta export's timestamp is wrong, use flows run --start-date to override and reprocess a specific window.
- Empty
numPagesGenerated: 0 on a failed job means the export itself failed. The problem is the source step -- check the connection, query, or endpoint, not the import.
- Execution log data is ephemeral. Logs are retained for a limited time. Enable logging and run the flow promptly.
jobs diagnostics produces a diagnostic bundle. Use this when Celigo support asks for details -- it includes internal execution context not visible through other commands.
Common Errors
| Symptom | Likely Cause | Diagnostic Steps |
|---|
failed with numPagesGenerated: 0 | Export-level failure (connection, query, endpoint) | Check connection status (celigo connections ping); review export config |
completed with high numError | Destination validation or data issues | error-analysis to find pattern; flows error --request-detail for HTTP detail |
completed with 0 records, 0 errors | Wrong resourcePath, empty delta, or filter too restrictive | Verify resourcePath; check lastExportDateTime; review output filter |
retrying for extended period | Rate limiting, slow destination, or large dataset | Check destination rate limits; review concurrency on connection |
| Errors only on specific records | Data-dependent issue (missing fields, bad types, duplicates) | flows error --retry-data to inspect failing records; compare with successful records |
Intermittent failed on same flow | Token expiry mid-run, transient network, or rate limits | Compare timestamps of failures; check connection token refresh config |
401/403 errors in flows error --request-detail | Expired credentials or insufficient permissions | celigo connections ping; re-authorize if OAuth; check API permissions |
| Timeout errors | Slow destination or oversized payload | Reduce batch size; check destination system performance |