parallel-findall

tarafından parallel-web

Discover entities (companies, people, products, etc.) matching a natural-language description. Use when the user asks to 'find all X' or 'list every Y that…' —…

npx skills add https://github.com/parallel-web/parallel-agent-skills --skill parallel-findall

FindAll: Entity Discovery

Find: $ARGUMENTS

Requires parallel-cli ≥ 0.6.0 (the findall entity-search command was added in 0.6.0; the broader findall command was added in 0.3.0). If either errors with no such command or similar, tell the user to run parallel-cli update (or pipx upgrade parallel-web-tools if installed via pipx), then retry.

When to use this skill

Use FindAll when the user wants a structured list of entities matching a description, not webpages or a narrative answer.

User asks for…Use
"Find all X that…" / "List every Y…"parallel-findall (this skill)
Webpage results / quick answers / current infoparallel-web-search
Narrative report / analysis / "research X"parallel-deep-research
Add fields to a list you already haveparallel-data-enrichment

If the user already has a list and just wants to add fields, this is the wrong skill — use parallel-data-enrichment.

FindAll has two paths: the comprehensive, asynchronous findall run (Steps 1–2) and the fast, synchronous entity-search (final section).

  • entity-search — very fast (few seconds), only supports people or company search. Supports a more limited set of query arguments. Optimized for recall over precision; results are not individually verified.
  • findall run — Provides comprehensive coverage, complex, match conditions, exclusions, enrichment, citations, or a type other than people/companies.

If it's ambiguous, ask the user which they'd prefer and offer a default. Remember entity search limits: companies/people only, no exclusions/generator/enrichment, and entity_set_id can't be used with enrich/extend (re-run via findall run if needed).

Switch to entity-search only when the user explicitly signals they want a fast, throwaway list. entity-search is also strictly more limited: it only supports companies or people entity types, no exclusions, no generator choice, no enrichment, and the returned entity_set_id is not usable with findall enrich/extend. If you start there and the user later asks to enrich or extend, you'll have to re-run via findall run.

Step 1: Start the run

parallel-cli findall run "$ARGUMENTS" --no-wait --json

Defaults: generator core, match limit 10. Stick with core unless the user has a reason to escalate:

  • -g pro — most thorough generator (slower, costlier). Use when the user asks for "comprehensive" coverage or matches are sparse on core
  • -g base — fastest, but markedly lower quality. Often returns query-echo entities (e.g., directory pages, the literal query string), entries with no URL, or category placeholders. Only use if the user explicitly asks for a quick scan and accepts noise; otherwise prefer core
  • -n 50 — return up to 50 matched entities (5–1000 allowed)

If the user wants to exclude known entities (e.g., "find competitors but not Google or OpenAI"):

parallel-cli findall run "$ARGUMENTS" --no-wait --json \
    --exclude '[{"name":"Google","url":"google.com"},{"name":"OpenAI","url":"openai.com"}]'

Tip — preview the schema first if the objective is ambiguous: parallel-cli findall ingest "$ARGUMENTS" --json shows the entity type and match conditions the API inferred, so you can refine wording before paying for a run.

Parse the JSON output to extract the findall_id and any monitoring URL. Tell the user:

  • A FindAll run has been started
  • Approximate cadence (minutes for core, longer for pro)
  • They can keep working while it runs

Step 2: Poll for results

Choose a descriptive filename (e.g., series-a-ai-2026, charlotte-roofers). Use lowercase with hyphens, no spaces.

parallel-cli findall poll "$FINDALL_ID" -o "/tmp/$FILENAME.json" --timeout 540

Important:

  • Use --timeout 540 (9 minutes) to stay within tool execution limits
  • Do NOT pass --json for large result sets — it will flood context. -o saves the full results to disk

If the poll times out

Re-run the same parallel-cli findall poll command to continue waiting. Server-side the run continues regardless.

Response format

Before presenting matches, filter the results for obvious noise:

  • Drop entries with empty/missing url
  • Drop entries whose name echoes the user's query (e.g., literal "YC W25 batch companies in developer tools") — those are search-result placeholders, not real entities
  • Drop entries whose url is a third-party directory or profile page rather than the entity's own domain. The URL should be something the entity itself owns (its product site, docs, or marketing site)

If filtering removes a meaningful share of matches, mention this to the user and suggest re-running with -g pro or a higher -n.

Sanity-check -g base results. The base generator can hallucinate categorical attributes (e.g., return a YC S22 company as a YC W25 match). The filter rules above only catch URL/name shape, not factual correctness. If the user's query has a falsifiable attribute (a specific batch, year, geography, etc.), spot-check the kept entries against the source URL and flag any that don't fit. Recommend re-running with -g core (or higher) if either multiple kept entries fail the spot-check or noise filtering dropped a meaningful share of the matched set (say, ≥40%) — both indicate base isn't producing reliable results for this query.

Present the remaining (real) entities as a markdown table or list. Lead with the count, then list each entity with its name, URL, and a one-line description if available. Cite each entity with its source URL.

Tell the user:

  • How many entities were matched (and how many were filtered as noise, if any)
  • The full results path (/tmp/$FILENAME.json)
  • That they can:
    • Add fields to these results, e.g.:

      parallel-cli findall enrich $FINDALL_ID '{"properties":{"ceo":{"type":"string"},"employee_count":{"type":"number"}}}'
      

      The schema is a JSON Schema-style object with properties mapping field names → {type, description?}.

    • Get more matches: parallel-cli findall extend $FINDALL_ID 50

Fast entity search

Use this path only when the user explicitly signals they want a quick/rough/preview list — do not pick it just because the entity type happens to be companies or people.

Synchronous call. No polling, no findall_id. Pick a descriptive $FILENAME (lowercase, hyphens, no spaces), as in Step 2.

parallel-cli findall entity-search "$ARGUMENTS" -t companies -n 100 -o "/tmp/$FILENAME.json"

Flags:

  • -t companies|people — entity type (required). The endpoint only supports these two; for anything else, use findall run
  • -n 5..1000 — match limit (default 10). When possible, request more than the user needs (e.g. -n 100) and select after filtering — results are ranked but not individually verified, and a low limit can omit relevant entities
  • Do NOT pass --json for large result sets — it will flood context. -o saves the full results to disk

Avoid highly restrictive objectives on this path: the API fills toward the limit, so relevance declines toward the tail. Keep the core criterion in the objective and filter the rest downstream, or use findall run.

Response shape:

{ "entity_set_id": "entity_set_…", "entities": [ {"name": "...", "url": "...", "description": "..."},
… ] }

Unlike the full path, the url returned by entity-search is usually a directory/profile link — expected, not noise. Don't drop them; only filter out entries with an empty url or a name that echoes the query.

Present the kept entities as a markdown table or list, lead with the count, and cite each with its source URL. Tell the user:

  • How many entities came back (and how many were filtered as noise)
  • The full results path (/tmp/$FILENAME.json) if -o was used

Setup

Requires parallel-cli (installed and authenticated). If parallel-cli --version fails, or if a later command fails with an authentication error, tell the user to see https://docs.parallel.ai/integrations/cli and stop.

parallel-web tarafından daha fazla skill

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-monitor
parallel-web
Continuously track the web for changes on a recurring cadence. Use when the user asks to 'monitor', 'track changes to', 'watch', or 'alert me when' something…
official
parallel-web-extract
parallel-web
Birden çok URL'den içerikleri paralel olarak, token verimli şekilde çıkarır. Tek bir komutla web sayfaları, makaleler, PDF'ler ve JavaScript ağırlıklı siteleri işler. Yerleşik WebFetch'e kıyasla token yükünü azaltmak için çatallanmış bir bağlamda çalışır. İsteğe bağlı odak hedefleriyle birden çok URL'nin toplu çıkarımını destekler. parallel-cli kurulumu ve kimlik doğrulaması gerektirir; çıkarılan içerikleri takip sorguları için yerel bir dosyaya markdown olarak çıktılar.
official
parallel-web-search
parallel-web
İnternet genelinde güncel bilgi, araştırma ve doğrulama için hızlı web araması. Tek bir hedefe yönelik sorguları veya birden fazla anahtar kelime aramasını paralel olarak yürütür, alıntılar ve meta verilerle birlikte en fazla 10 sonuç döndürür. --after-date ile zamana duyarlı filtreleme ve --include-domains ile alana özgü aramaları destekler. Kolay ayrıştırma ve takip sorguları için başlıklar, URL'ler, yayın tarihleri ve alıntılar içeren yapılandırılmış JSON çıktısı verir. Her iddia için markdown kullanarak satır içi alıntı gerektirir...
official
result
parallel-web
Get completed research task result by run ID
official
setup
parallel-web
Set up the Parallel plugin (install CLI)
official