parallel-data-enrichment

Bulk data enrichment. Adds web-sourced fields (CEO names, funding, contact info) to lists of companies, people, or products. Use for enriching CSV files or…

npx skills add https://github.com/parallel-web/parallel-cursor-plugin --skill parallel-data-enrichment

Data Enrichment

Enrich: $ARGUMENTS

Before starting

Inform the user that enrichment may take several minutes depending on the number of rows and fields requested.

Optional: Suggest output columns

If the user gave a vague intent ("enrich these companies with useful info") and you're not sure what columns to add, ask the API for a suggestion before kicking off the run:

parallel-cli enrich suggest "Find CEO and recent funding info" --json

The response is an envelope: {title, processor, enriched_columns, warnings}. Extract just the enriched_columns array (not the whole envelope) and pass it as the value of --enriched-columns on enrich run, in place of --intent — the two flags are alternative ways to specify what to enrich, not combined. If suggest returned a processor, pass it through explicitly via --processor on the run call (it's a tuned recommendation for the schema). Skip this whole section if the user already specified the fields they want.

enrich suggest requires parallel-cli ≥ 0.3.0. If it errors with anything resembling no such command / No such command / unknown command, do not bail — skip the suggestion step, fall through to step 1 with --intent, complete the run, and mention parallel-cli update (or pipx upgrade parallel-web-tools) in the final response so the user picks up the feature next time.

Step 1: Start the enrichment

Use ONE of these command patterns (substitute user's actual data):

For inline data:

parallel-cli enrich run --data '[{"company": "Google"}, {"company": "Microsoft"}]' --intent "CEO name and founding year" --target "output.csv" --no-wait --json

For CSV file:

parallel-cli enrich run --source-type csv --source "input.csv" --target "output.csv" --source-columns '[{"name": "company", "description": "Company name"}]' --intent "CEO name and founding year" --no-wait --json

If this is a follow-up to a previous research task and you have its interaction_id, add context chaining:

parallel-cli enrich run --data '...' --intent "..." --target "output.csv" --no-wait --json --previous-interaction-id "$INTERACTION_ID"

The enrichment will run with the full context of that prior research — so you can enrich entities discovered earlier without restating what was already found. Note: enrichment does not itself produce a new interaction_id, so you cannot chain a further follow-up off of an enrichment.

IMPORTANT: Always include --no-wait so the command returns immediately instead of blocking.

Parse the --json output to extract taskgroup_id and url. The output is {taskgroup_id, url, num_runs} — there is no interaction_id field, do not look for one. Immediately tell the user:

  • Enrichment has been kicked off
  • The monitoring URL where they can track progress

Tell them they can background the polling step to continue working while it runs.

Step 2: Poll for results

Pick a concrete output path (e.g., /tmp/enrichment-acme.json). Note: the file is JSON regardless of the extension you choose — it's an array of {input, output} objects, not a CSV. Name it .json to avoid confusing yourself or the user.

parallel-cli enrich poll "$TASKGROUP_ID" --timeout 540 --output "/tmp/enrichment-<descriptive-name>.json"

Important:

  • Use --timeout 540 (9 minutes) to stay within tool execution limits
  • The --target from step 1 is unused in --no-wait mode — only --output here determines where results are saved, and the file is always JSON

If the poll times out

Enrichment of large datasets can take longer than 9 minutes. If the poll exits without completing:

  1. Tell the user the enrichment is still running server-side
  2. Re-run the same parallel-cli enrich poll command to continue waiting

Response format

After step 1: Share the monitoring URL (for tracking progress).

After step 2:

  1. Report number of rows enriched
  2. Preview first few rows from the output file (it's a JSON array of {input, output} objects)
  3. Tell the user the full path to the output file

Do NOT re-share the monitoring URL after completion — the results are in the output file.

If the parallel-cli binary is not installed

If the shell reports command not found: parallel-cli (i.e. the binary itself is missing — distinct from a No such command error from a stale CLI, which the in-body guidance above covers), stop immediately. Do NOT search the web yourself, do NOT use any built-in search tools, and do NOT try to answer the query from your own knowledge. Instead, tell the user:

  1. parallel-cli is not installed
  2. Run /parallel-setup to install it
  3. Then retry their request

Mehr Skills von parallel-web

parallel-cli-setup
parallel-web
Set up and maintain the Parallel CLI (install, auth, balance, skills install)
official
parallel-data-enrichment
parallel-web
Bulk enrichment of company, people, or product data with web-sourced fields like CEO names, funding, and contact info. Accepts inline JSON data or CSV files; outputs enriched results to CSV Runs asynchronously with progress tracking via monitoring URL and polling commands Requires parallel-cli tool and internet access; handles large datasets with configurable timeouts Supports flexible field requests through natural language intent descriptions (e.g., "CEO name and founding year")
official
parallel-deep-research
parallel-web
Exhaustive research with configurable depth, latency, and cost trade-offs for complex topics. Three processor tiers (pro-fast, ultra-fast, ultra) ranging from 30 seconds to 25 minutes, with cost scaling from 1x to 3x baseline Asynchronous execution with polling: kick off research instantly, monitor progress via URL, retrieve results when ready without blocking Outputs formatted markdown report and JSON metadata; executive summary printed to stdout for quick overview Designed for explicit...
official
parallel-findall
parallel-web
Entdecken Sie Entitäten (Unternehmen, Personen, Produkte usw.), die einer natürlichsprachlichen Beschreibung entsprechen. Verwenden Sie dies, wenn der Benutzer darum bittet, „alle X zu finden“ oder „jedes Y aufzulisten, das …“ —…
official
parallel-monitor
parallel-web
Kontinuierlich das Web auf Änderungen in einem wiederkehrenden Rhythmus überwachen. Verwenden, wenn der Benutzer darum bittet, etwas zu 'überwachen', 'Änderungen an ... zu verfolgen', 'zu beobachten' oder 'mich zu benachrichtigen, wenn' ...
official
parallel-web-extract
parallel-web
Extract content from multiple URLs in parallel, token-efficiently. Handles webpages, articles, PDFs, and JavaScript-heavy sites with a single command Runs in a forked context to minimize token overhead compared to built-in WebFetch Supports batch extraction of multiple URLs with optional focus objectives Requires parallel-cli installation and authentication; outputs extracted content as markdown to a local file for follow-up queries
official
parallel-web-search
parallel-web
Schnelle Websuche nach aktuellen Informationen, Recherche und Faktenfindung im Internet. Führt einzelne objektbasierte Abfragen oder mehrere Stichwortsuche parallel aus und gibt bis zu 10 Ergebnisse mit Auszügen und Metadaten zurück. Unterstützt zeitkritische Filterung über --after-date und domänenspezifische Suchen mit --include-domains. Gibt strukturiertes JSON mit Titeln, URLs, Veröffentlichungsdaten und Auszügen für einfache Analyse und Folgeabfragen aus. Erfordert Inline-Zitate für jede Behauptung unter Verwendung von Markdown...
official
result
parallel-web
Holen Sie das Ergebnis der abgeschlossenen Forschungsaufgabe anhand der Ausführungs-ID ab.
official