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find-ai-consultancy

@nostrband · 收录于 1 周前

Use whenever the user wants to find, shortlist, vet, or enrich US AI/ML/data consulting firms (consultancies) — AI/ML development, MLOps, generative AI / LLM apps (RAG, chatbots, agents), computer vision, NLP, recommendation systems, data engineering, BI/analytics. Triggers on "find an AI/ML consulting firm to build our recommendation engine", "shortlist three RAG/LLM consultancies for an enterprise chatbot", "compare three AI/ML consulting firms with strong ratings", or "pull contact info for these 8 AI consultancy domains", even when described indirectly (we want to use AI for X, deploy ML to production). Drives the ServiceGraph API (api.servicegraph.co) — a 100k+ US firm catalog filterable by industry, services, location, size, ratings. Defer to find-software-developer for general app/backend work where AI is just a feature. Skip in-house ML/data hires, LLM/AI-tool comparisons (ChatGPT vs Claude), "how do I fine-tune X" DIY questions, AI courses for individuals, non-US firms, individual freelancers.

适合你,如果需要找美国AI/ML咨询公司来开发项目。

/ 下载安装
find-ai-consultancy.skill双击,或拖进 Claude 桌面版 / Cowork,即完成安装↓ .skill↓ .zip
用别的 agent?下载 .zip 解压,把文件夹放进它的技能目录
Claude Code~/.claude/skills/(项目级 .claude/skills/)
Codex CLI~/.codex/skills/
Cursor自动读取上面两处目录
其他工具见其文档的「skills」目录;两个下载是同一份文件,只是名字不同
/ 通过 npx 安装 校验哈希
npx oh-my-skill add nostrband/servicegraph/find-ai-consultancy
/ 通过 bash 安装
curl -fsSL https://oh-my-skill.com/install.sh | bash -s -- nostrband/servicegraph/find-ai-consultancy
/ 已经装过?验证本机副本,不用重装
npx oh-my-skill verify nostrband/servicegraph/find-ai-consultancy
安装目标可用 --agent / --scope 或 --to 明确指定;省略时只会在唯一已存在的 agent 目录上自动选择,零命中或多命中会停止并提示。content_hash 缺失或不一致均拒装。
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怎么用

技能原文 SKILL.md作者撰写 · MIT · 1ec908c

find-ai-consultancy

Drive the ServiceGraph API (https://api.servicegraph.co) to find, shortlist, and enrich US AI/ML and data consultancies via the pro_services dataset. The catalog tags firms with industry:data_ai_consulting and a 4-tag service sub-taxonomy: ai-ml-development (the largest at ~12k firms), data-analytics, cloud-services, and api-integration. There is no data-engineering or business-intelligence sub-tagdata-analytics covers both. Confirm exact tag names via /v1/datasets/pro_services/fields?include_values=1.

Always pin industry:data_ai_consulting. This skill exists to do that automatically — the user shouldn't have to think about catalog taxonomy.

Any HTTP client works (curl, fetch, requests). Examples below use curl.

Sibling skills — defer when scope is different
  • General application or backend dev that uses AI as a feature (e.g. "build us a SaaS with an AI chatbot tab") → find-software-developer.
  • Web/site projects that include some AIfind-web-developer.
  • AI-related marketing or contentfind-marketing-agency.

This skill is for engagements where the AI/ML/data work IS the deliverable.

When NOT to use this skill
  • Consumer AI courses or learning ("find me an online course to learn ML").
  • AI/LLM product comparisons ("ChatGPT vs Claude vs Gemini", "Cursor vs Copilot").
  • DIY/code tasks ("how do I fine-tune Llama", "review this PyTorch loop").
  • In-house ML/data hires (Machine Learning Engineer, Data Scientist).
  • Generic AI knowledge questions.
  • Non-US firms / individual freelance ML engineers.
MCP server (preferred for authed calls)

If your harness has the ServiceGraph MCP server loaded (tools containing servicegraph), prefer those — OAuth 2.1 + PKCE keeps the token in the harness sandbox. Otherwise use the REST flow below.

API surface (dataset id: pro_services)

Every endpoint requires the bearer (Authorization: Bearer vk_…). No anonymous tier.

| Endpoint | Cost | Use it for | |---|---|---| | GET /v1/datasets/pro_services/fields[?include_values=1] | free | Confirm data_ai_consulting industry value and sub-tag names. | | GET /v1/datasets/pro_services/check?filter=… | free | Validate filter. | | POST /v1/datasets/pro_services/translate-intent | free | {intent} → DSL filter + sanity count. | | GET /v1/datasets/pro_services/search?filter=…&limit= | free | Brief firm cards + per-row unlock hint + total. | | GET /v1/datasets/pro_services/:apex | free | One row brief; detail only if unlocked. | | POST /v1/datasets/pro_services/unlocks | 10 credits / firm | {apexes:[...]} ≤100; atomic; 30-day TTL on detail. | | GET /v1/me/credits | free | Balance. |

Cost model. Discovery / validation / search / brief reads are free. Detail (url, phone, email, social, address, full platforms map) costs 10 credits per firm and lasts 30 days.

Auth

vk_* API keys minted in the dashboard. Keep the token out of the LLM context — never read .env* into your context; dispatch via shell.

  1. Try the call first through a shell wrapper that sources .env.local:

``bash ( set -a; [ -f .env.local ] && . ./.env.local; set +a; curl -sS -H "Authorization: Bearer $SERVICEGRAPH_API_KEY" \ 'https://api.servicegraph.co/v1/datasets/pro_services/fields' ) ``

  1. On 401 prompt the user (don't accept the key in chat):
"Open https://servicegraph.co/profile/api-keys, create a key, and add SERVICEGRAPH_API_KEY=vk_… to .env.local here (or export it). Tell me when done. Please don't paste the key into chat."
  1. Retry after the user signals ready.
Filter DSL

GitHub-search-style.

filter   := orExpr
orExpr   := andExpr ("OR" andExpr)*
andExpr  := notExpr (("AND")? notExpr)*    # whitespace = implicit AND
notExpr  := ("NOT" | "-") notExpr | atom
atom     := "(" filter ")" | predicate
predicate:= IDENT op valueOrList | bareword
op       := ":" | "=" | ">=" | "<=" | ">" | "<"
valueOrList := value ("," value)*
value    := IDENT | NUMBER | tagAtEvidence
tagAtEvidence := IDENT "@" ("low"|"medium"|"high")
bareword := IDENT | NUMBER          # → keyword:<bareword>

Four rules that bite: AND binds tighter than OR (use parens); comma list = OR within one predicate; negation is -x or NOT x; bareword = keyword search (quote multi-word phrases).

AI-flavored examples (validate yours with /check):

industry:data_ai_consulting service_provided:ai-ml-development
industry:data_ai_consulting service_provided:ai-ml-development@high state:CA
industry:data_ai_consulting service_provided:data-analytics pipelines
industry:data_ai_consulting llm rag
industry:data_ai_consulting "computer vision" healthcare
industry:data_ai_consulting mlops
industry:data_ai_consulting (service_provided:ai-ml-development OR service_provided:data-analytics)
industry:data_ai_consulting service_provided:ai-ml-development@high rating>=4 has:clutch

Sub-niche → keyword/tag mapping:

| User asks for | Use | |---|---| | AI/ML model building | service_provided:ai-ml-development | | Data engineering / pipelines | service_provided:data-analytics + keywords pipelines / engineering (no data-engineering tag) | | BI / analytics | service_provided:data-analytics (covers BI too — no separate business-intelligence tag) | | Cloud architecture for data/ML | service_provided:cloud-services | | API / data integration | service_provided:api-integration | | LLM apps / RAG / agents | llm, rag, agent (keywords) | | Generative AI | "generative ai", genai | | Computer vision | "computer vision", cv | | NLP / IDP / document understanding | nlp, idp, "document understanding" | | MLOps / model deployment | mlops, deployment | | Recommendation systems | recommendation, recsys | | Predictive analytics / churn / forecasting | predictive, forecasting, churn |

Identifying firms — apex

Firms are identified by their apex domain (scaleai.com, not www.scaleai.com/about).

Recipes
A. AI/ML consultancy for a recommendation engine

User: "AI/ML consultancy to build our recommendation engine for an ecommerce site."

GET /v1/datasets/pro_services/search?filter=industry:data_ai_consulting+service_provided:ai-ml-development+recommendation+ecommerce&limit=10

# Present, get pick of 3. "Unlocking 3 = 30 credits, 30-day TTL."
POST /v1/datasets/pro_services/unlocks
  { "apexes": ["firm-a.com", "firm-b.com", "firm-c.com"] }
B. RAG / LLM consultancies for a chatbot

User: "Three RAG/LLM consultancies for an enterprise chatbot."

GET /v1/datasets/pro_services/search?filter=industry:data_ai_consulting+(rag OR llm)+chatbot+enterprise&limit=10

If thin, drop enterprise and surface client-tier signals from the unlocked detail later.

C. Data engineering partner

User: "Data-engineering partner to build our analytics pipelines."

No data-engineering tag — data-analytics is the closest and covers both BI and engineering. Pin the tag plus keyword:

GET /v1/datasets/pro_services/search?filter=industry:data_ai_consulting+service_provided:data-analytics+(pipelines OR engineering)&limit=10
D. MLOps for model deployment
GET /v1/datasets/pro_services/search?filter=industry:data_ai_consulting+mlops&limit=10
E. Indirect intent — "use AI to predict customer churn"

User: "We want to use AI to predict customer churn — who can help us build that?"

GET /v1/datasets/pro_services/search?filter=industry:data_ai_consulting+service_provided:ai-ml-development+(churn OR predictive)&limit=10

Or let the translator do the mapping:

POST /v1/datasets/pro_services/translate-intent
  { "intent": "AI consultancy to build customer churn prediction" }
F. Computer vision + healthcare vertical
GET /v1/datasets/pro_services/search?filter=industry:data_ai_consulting+"computer vision"+healthcare&limit=10
G. Quality threshold + Fortune 500 clients
GET /v1/datasets/pro_services/search?filter=industry:data_ai_consulting+service_provided:ai-ml-development@high+rating>=4+fortune&limit=10

"Fortune 500" as a structured filter isn't a thing — surface from briefs or treat it as a keyword.

H. Custom LLM agent for customer service
GET /v1/datasets/pro_services/search?filter=industry:data_ai_consulting+(llm OR agent)+("customer service" OR support)&limit=10
I. BYO apex list — enrich domains

User pastes 8–20 AI consultancy domains:

  1. GET /v1/datasets/pro_services/:apex per domain — free brief (404 = not in catalog, no charge).
  2. User picks N to fully enrich. POST /unlocks = 10×N credits, atomic, detail returned.
  3. Re-runs within 30-day TTL are free.

A 404 here often means the firm is actually a SaaS product company (many AI vendors brand as "AI services" but operate as a product) — filtered out of the catalog.

Gotchas
  • Always pin industry:data_ai_consulting. Without it, ai-ml-development as a service tag surfaces IT firms that list AI as a sub-service.
  • Defer to find-software-developer for general dev that uses AI as a feature. When the deliverable is a SaaS product or app and AI is one of several features, that's software-dev work; this skill is for engagements where AI/ML/data work IS the deliverable.
  • Catalog audit notes: AI/ML-tagged firms have a higher historical rate of misclassification (some are SaaS products, some are B2C ed-tech). If an unlock returns a SaaS product, flag and skip rather than recommend.
  • Many sub-niches are keyword-only. Multi-word sub-niches split into ANDed barewords unless quoted (computer visioncomputer AND vision; "computer vision" → one phrase).
  • LLM-product comparisons (ChatGPT vs Claude vs Gemini) are NOT procurement — refuse.
  • AI courses for individuals (Coursera, fast.ai) are NOT in the catalog — refuse.
  • Briefs DO include apex, name, industry, service_provided, location, ratings. They DON'T include url, phone_primary, email_primary, legal_name, address_full, full platforms — those require an unlock.
  • not_found / not_in_dataset 404 = not in pro_services. Not charged. Skip.
  • Unlock is atomic. N apexes either all charge (up to 10×N credits) or none on 402.
  • Within-TTL re-views are free (was_cached:true).
Errors

JSON envelope: {"error": {"code": "...", "message": "..."}}.

| Status | Code | What to do | |---|---|---| | 400 | filter_parse_error | position included; fix and re-validate with /check. | | 400 | kind_in_filter | Strip any kind: from filter — URL is authoritative. | | 400 | field_not_in_dataset | Drop the disallowed field. | | 400 | invalid_apex | Re-normalize to apex domain. | | 401 | unauthorized / invalid_audience | Re-prompt for fresh vk_…. | | 402 | insufficient_credits | needed and balance in payload; nothing charged. | | 404 | not_found / not_in_dataset | Skip; not charged. | | 429 | rate_limited | Honor Retry-After. |

End-to-end example

User: "Three AI/ML consultancies to build a recommendation engine for an ecommerce site, ideally with 4-star ratings and Fortune 500 clients."

GET /v1/datasets/pro_services/fields?include_values=1
GET /v1/datasets/pro_services/check?filter=industry:data_ai_consulting+service_provided:ai-ml-development@high+recommendation+ecommerce+rating>=4
GET /v1/datasets/pro_services/search?filter=...&limit=10
# Present briefs. "Unlocking 3 = 30 credits, 30-day TTL."
POST /v1/datasets/pro_services/unlocks
  { "apexes": ["firm-a.com", "firm-b.com", "firm-c.com"] }
GET /v1/me/credits
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