スキルでエージェントを構築する:専門作業のためのエージェントの装備
Anthropic は、ドメイン固有の専門知識をパッケージ化した「Skills」機能を発表し、汎用エージェントから実務に特化した専門家へ進化させる新たなパラダイムを提示した。
キーポイント
Skills パッケージの導入
ワークフロー、ベストプラクティス、スクリプトなどのドメイン固有知識をファイル形式でパッケージ化し、エージェントがアクセス・適用可能にする機能。
特化型エージェントから汎用型への転換
各ドメインごとに個別のエージェントを開発する従来のアプローチを見直し、コードをインターフェースとする汎用エージェントに専門知識を追加する方向へシフト。
推論能力と実務経験のギャップ解消
数学的推論に長けた「天才」的な能力だけでなく、ベテラン専門家のような蓄積された文脈や組織固有のノウハウを欠く課題を Skills で解決。
MCP と Claude Agent SDK の進化
エージェント接続の標準である MCP の急速な普及と、Claude Code や SDK を活用した生産環境向けの実装基盤が整ったことを背景にこの発表が行われた。
スキルによる専門性のパッケージ化と民主化
ドメイン知識をファイル形式でパッケージ化し、Git や Google Drive で管理可能にすることで、エンジニア以外の製品マネージャーやドメイン専門家も手軽にワークフローをコード化できる。
プログレッシブ・ディスクロージャによるコンテキスト最適化
メタデータのみでモデルに提示し、必要に応じて詳細ファイルや参照資料を読み込む階層型アプローチにより、数百のスキルを保持しつつコンテキストウィンドウを圧迫せずに済む。
スクリプトをツールとして活用する利点
コードは自己文書化可能で修正が容易なため、従来のツール定義よりもコンテキストウィンドウの肥大化を防ぎ、モデルがスクリプトを保存・再利用できる。
影響分析・編集コメントを表示
影響分析
この発表は、AI エージェント開発における「特化型モデルの構築」から「汎用モデルへの知識付与」という設計思想の転換点を示しています。これにより、企業は個別のエージェントを維持管理するコストを削減しつつ、組織固有のナレッジを即座に反映できる柔軟なシステムを構築できるようになります。実務レベルでのエージェント活用が加速し、産業全体のパフォーマンス向上に寄与すると予想されます。
編集コメント
「天才だが経験不足な推論者」から「熟練の専門家」への進化を、モデル自体の変更ではなく知識パッケージ(Skills)で実現するアプローチは、実務導入における最大の課題である「ドメイン適応性」に対する賢明な解決策です。
バイオインフォマティクススキルバンドル: scVI-toolsとNextflowデプロイメントのためのスキルにより、ゲノムパイプラインとシングルセルRNAシークエンシングの管理を効率化
臨床試験プロトコル生成: 臨床研究のプロトコル開発を加速
科学的問題選択: 研究者が影響力のある研究課題を特定し、枠組みを設定するのを支援
FHIR開発: ヘルスケアデータの相互運用性のためにより正確なコードを記述するのを開発者に支援し、エラーを減らしてヘルスケアシステムを迅速に接続
事前承認レビュー: カバレッジ要件、臨床ガイドライン、患者記録を相互参照することで、管理負担を削減し、必要なケアへの患者アクセスを加速
エージェントスキルの標準化
このビジョンを実現するため、私たちはエージェントスキルをオープンスタンダードとして公開しています。MCPと同様に、スキルはツールやプラットフォームを越えて移植可能であるべきだと考えています。同じスキルが、Claudeを使用している場合でも他のAIプラットフォームを使用している場合でも機能するべきです。私たちはエコシステムのメンバーとこの標準について協力しており、早期の採用を見ることを楽しみにしています。
誰かが初めてAIエージェントを使い始めるとき、それはあなたとあなたのチームが何を重要視しているかをすでに知っているべきです。なぜならスキルがその専門知識を捕捉し、受け渡すからです。このエコシステムが成長するにつれて、コミュニティの他の誰かが構築したスキルは、どのAIプラットフォームを使用しているかに関わらず、あなたのエージェントをより有用で、信頼性が高く、能力のあるものにすることができます。
始め方
私たちは汎用エージェントのためのアーキテクチャに収束しつつあり、スキルは新しい能力を提供・共有するためのパラダイムを提供します。真の価値は、私たちが共に構築する集合的な知識ベースから生まれます:専門知識を捕捉し、チーム間で受け渡し、すべてのエージェントを前のものよりも能力の高いものにすることです。
エージェントを構築するのではなく、代わりにスキルを構築せよ(YouTube動画)
スキルドキュメント
GitHubリポジトリ
スキルクックブック
Claudeでのスキル使用
スキルAPIクイックスタート
スキルベストプラクティスドキュメント
謝辞:
Barry Zhang, Mahesh Murag, Keith Lazuka, Ryan Whitehead
PrevPrev0/5NextNexteBook
Claudeで構築するチームのための製品ニュースとベストプラクティスをもっと探る。
金融のためのコワークとプラグイン
エンタープライズAI金融のためのコワークとプラグイン 金融のためのコワークとプラグイン 金融のためのコワークとプラグイン 金融のためのコワークとプラグイン 2026年2月24日エンタープライズ全体のチームのためのコワークとプラグイン
エージェントエンタープライズ全体のチームのためのコワークとプラグインエンタープライズ全体のチームのためのコワークとプラグインエンタープライズ全体のチームのためのコワークとプラグインエンタープライズ全体のチームのためのコワークとプラグイン 2026年2月23日AIがCOBOL近代化のコスト障壁を打破するのをどのように助けるか
Claude CodeAIがCOBOL近代化のコスト障壁を打破するのをどのように助けるかAIがCOBOL近代化のコスト障壁を打破するのをどのように助けるかAIがCOBOL近代化のコスト障壁を打破するのをどのように助けるかAIがCOBOL近代化のコスト障壁を打破するのをどのように助けるか 2026年2月20日デスクトップのClaude Codeに自動プレビュー、レビュー、マージをもたらす
Claude CodeデスクトップのClaude Codeに自動プレビュー、レビュー、マージをもたらすデスクトップのClaude Codeに自動プレビュー、レビュー、マージをもたらすデスクトップのClaude Codeに自動プレビュー、レビュー、マージをもたらすデスクトップのClaude Codeに自動プレビュー、レビュー、マージをもたらすClaudeで組織の運営方法を変革する
開発者ニュースレターを購読する
製品アップデート、ハウツー、コミュニティスポットライトなど。毎月メールボックスにお届けします。
購読購読月次の開発者ニュースレターの配信をご希望の場合は、メールアドレスをご提供ください。いつでも購読を解除できます。



原文を表示
Building agents with Skills: Equipping agents for specialized work
Skills package domain expertise in files agents can access and apply—turning general-purpose agents into knowledgeable specialists for real work.
CategoryAgentsClaude Code
ProductClaude Code
DateJanuary 22, 2026
Reading time5min
ShareCopy linkhttps://claude.com/blog/building-agents-with-skills-equipping-agents-for-specialized-work
A lot has changed in the past year. MCP became the standard for agent connectivity with rapid adoption from industry leaders and the developer community. Claude Code launched as a general-purpose coding agent. And we launched the Claude Agent SDK, which now provides a production-ready agent out of the box.
But as we've built and deployed these agents, we keep running into the same gap: agents have intelligence and capabilities, but not always the expertise to effectively tackle real work. This led us to create Agent Skills. Skills are organized collections of files that package domain expertise - workflows, best practices, scripts - in a format agents can access and apply. They turn a capable generalist into a knowledgeable specialist.
In this post, we'll explain why we stopped building specialized agents and started building skills instead, and how this shift is changing how we think about extending agent capabilities.
The new paradigm: code is all you need
We used to think agents in different domains would look very different. A coding agent, a research agent, one for finance, one for marketing—each seemed to need its own tools and scaffolding. The industry initially embraced this model of domain-specific agents. But as models improved in intelligence and agent capabilities progressed, we converged on a different approach.
We came to see code less as just a use case and more as an interface for agents to do almost any digital work. Claude Code is a coding agent, but also a general-purpose agent that happens to work through code.
Consider working with Claude Code to generate a financial report. It can call APIs for research, store data in the filesystem, analyze it with Python, and synthesize insights. All of that happens through code. The scaffolding becomes as simple as bash and a filesystem.
But general capability isn't the same as expertise. When we started using Claude Code for real work, a gap emerged.
The missing piece: domain expertise
Who would you want filing your taxes: a math genius figuring it out from first principles, or an experienced tax professional who's filed thousands of returns? Most people would choose the tax professional. Not because they're smarter, but because they have the right expertise.
Agents today are like that math genius: brilliant at reasoning through novel situations, but often lacking the accumulated expertise of a seasoned professional. They can do amazing things with proper guidance. However, they're often missing important context, can't easily absorb your organization's expertise, and don't automatically learn from repeated tasks.
Skills bridge this gap by packaging domain expertise in a format that agents can progressively access and apply.
What are Agent Skills?
Skills package domain expertise and procedural knowledge for agents.
anthropic_brand/ ├── SKILL.md ├── docs.md ├── slide-decks.md └── apply_template.py
The simplicity of skills is deliberate. Files are a universal primitive that works with what you already have. You can version them with Git, store them in Google Drive, and share them with your team. This simplicity also means skill creation isn't limited to engineers. Product managers, analysts, and domain experts are already building skills to codify their workflows.
Progressive disclosure
Skills can contain extensive information. To protect the context window and make skills composable, they use progressive disclosure: at runtime, only the metadata (name and description from the YAML frontmatter) is shown to the model.
--- name: Anthropic Brand Style Guidelines description: Anthropic's official brand colors and typography… ---
If Claude determines a skill is needed, it reads the full SKILL.md file. For additional detail, skills can include a references/ directory with supporting documentation loaded only on demand.
This three-tier approach means you can equip an agent with hundreds of skills without overwhelming its context window—metadata uses ~50 tokens, full SKILL.md files ~500 tokens, and reference files 2,000+ tokens and only when specifically needed.
Skills can include scripts as tools
Traditional tools have problems: some have poorly written instructions, the model can't always modify or extend them, and they often bloat the context window. Code, on the other hand, is self-documenting, modifiable, and doesn't need to be in context at all times.
Here's a real example: we kept seeing Claude write the same script to apply Anthropic styling to slides. So we asked Claude to save it as a tool for itself:
anthropic/brand_styling/apply_template.py import sys from pptx import Presentation if len(sys.argv) != 2: print("USAGE: apply_template.py <pptx>") sys.exit(1) prs = Presentation(sys.argv[1]) for slide in prs.slides: ...
The corresponding documentation in slide-decks.md simply references this script:
Anthropic Slide Decks - Intro/outro slides - background color: #141413 - foreground color: oat - Section slides: - background color: #da7857 - foreground color: #141413 Use the ./apply_template.py script to update a pptx file in-place.
The skills ecosystem
The skills ecosystem has emerged quickly, and so far we've seen three major types of skills being built:
Foundational skills
These provide core capabilities everyone needs: working with documents, spreadsheets, presentations, etc. They encode best practices for document generation and manipulation. You can see what this looks like in practice by exploring the foundational skills in our public repository.
As skills standardize how agents interact with specialized capabilities, companies are building skills to make their services agent-accessible. K-Dense, Browserbase, Notion, and many others are creating skills that integrate their services directly, extending Claude's capabilities in specific domains while maintaining the simplicity of the skills format.
Enterprise skills
Organizations build proprietary skills encoding their internal processes and domain expertise. Skills help capture the specific workflows, compliance requirements, and institutional knowledge that make an agent useful for enterprise work.
As skills adoption grows, several patterns are emerging that point to where this paradigm may be heading. These trends shape how we think about skill design and the tooling we're building to support skill developers.
Increasing complexity
Early skills were simple documentation references. Now we're seeing sophisticated multi-step workflows that coordinate data retrieval, complex calculations, and formatted output across multiple tools.
Simple: "Status report writer" (~100 lines) - Templates and formatting
Intermediate: "Financial model builder" (~800 lines) - Data retrieval, Excel modeling with Python
Complex: "RNA sequencing pipeline" (2,500+ lines) - Coordinates HISAT2, StringTie, DESeq2 analysis
Skills and MCP servers work together naturally. A competitive analysis skill might coordinate web search, internal databases via MCP, Slack message history, and Notion pages to synthesize a comprehensive report.
Non-developer adoption
Skill creation is expanding beyond engineers to product managers, analysts, and domain experts across disciplines. They can create and test their first skill in under 30 minutes using the skill-creator tool, which guides them through the process interactively. We're working to make skill creation even more accessible, with improved tooling and templates that let anyone capture and share expertise.
The complete architecture
Putting it all together, the emerging agent architecture looks like a combination of:
Agent loop: The core reasoning system that decides what to do next
Agent runtime: Execution environment (code, filesystem)
MCP servers: Connections to external tools and data sources
Skills library: Domain expertise and procedural knowledge
Each layer has a clear purpose: the loop reasons, the runtime executes, MCP connects, and skills guide. This separation makes the system comprehensible and allows each piece to evolve independently.
Consider what happens when you add a single skill to this architecture. The frontend design skill transforms Claude's frontend capabilities instantly. It provides specialized guidance on typography, color theory, and animation, activating only when building web interfaces. Progressive disclosure means it loads only when relevant. Adding new capabilities is straightforward.
Deploying skills to new verticals
This emerging pattern of general agents equipped with MCP servers and skills is already helping us deploy Claude to new verticals.
Financial Services
Just after launching skills, we enhanced Claude for the financial services sector with skills that make Claude more useful for finance professionals:
DCF model builder: Constructs discounted cash flow models with proper WACC calculations and sensitivity analysis
Comparable company analysis: Generates comps tables with relevant multiples and benchmarking
Earnings analysis: Processes quarterly results and creates investment update reports
Initiation coverage: Builds comprehensive research reports with financial models
Due diligence: Structures M&A analysis with standardized frameworks
Pitch materials: Creates client presentations following industry standards
Healthcare & Life Sciences
We've also enhanced our healthcare and life sciences offerings with skills that make Claude more useful for researchers, clinicians, and healthcare developers:
Bioinformatics bundles: Skills for scVI-tools and Nextflow deployments, essential for managing genomic pipelines and single-cell RNA sequencing
Clinical trial protocol generation: Accelerates protocol development for clinical research
Scientific problem selection: Helps researchers identify and frame impactful research questions
FHIR development: Helps developers write more accurate code for health data interoperability, connecting healthcare systems faster with fewer errors
Prior authorization review: Cuts administrative burden and accelerates patient access to needed care by cross-referencing coverage requirements, clinical guidelines, and patient records
Standardizing Agent Skills
To enable this vision, we're publishing Agent Skills as an open standard. Like MCP, we believe skills should be portable across tools and platforms. The same skill should work whether you're using Claude or other AI platforms. We've been collaborating with members of the ecosystem on the standard, and we're excited to see early adoption.
When someone starts using an AI agent for the first time, it should already know what you and your team care about because skills capture and transfer that expertise. As this ecosystem grows, a skill built by someone else in the community can make your agent more useful, reliable, and capable - regardless of which AI platform they're using.
Getting started
We're converging on an architecture for general agents, and skills provide a paradigm for shipping and sharing new capabilities. The real value emerges from the collective knowledge base we build together: capturing expertise, transferring it across teams, and making every agent more capable than the last.
Don’t Build Agents, Build Skills Instead (YouTube Video)
Skills documentation
GitHub repository
Skills cookbook
Using skills in Claude
Skills API quickstart
Skills best practices documentation
Acknowledgments:
Barry Zhang, Mahesh Murag, Keith Lazuka, Ryan Whitehead
PrevPrev0/5NextNexteBook
Explore more product news and best practices for teams building with Claude.
Cowork and plugins for finance
Enterprise AICowork and plugins for finance Cowork and plugins for finance Cowork and plugins for finance Cowork and plugins for finance Feb 24, 2026Cowork and plugins for teams across the enterprise
AgentsCowork and plugins for teams across the enterpriseCowork and plugins for teams across the enterpriseCowork and plugins for teams across the enterpriseCowork and plugins for teams across the enterprise Feb 23, 2026How AI helps break the cost barrier to COBOL modernization
Claude CodeHow AI helps break the cost barrier to COBOL modernizationHow AI helps break the cost barrier to COBOL modernizationHow AI helps break the cost barrier to COBOL modernizationHow AI helps break the cost barrier to COBOL modernization Feb 20, 2026Bringing automated preview, review, and merge to Claude Code on desktop
Claude CodeBringing automated preview, review, and merge to Claude Code on desktopBringing automated preview, review, and merge to Claude Code on desktopBringing automated preview, review, and merge to Claude Code on desktopBringing automated preview, review, and merge to Claude Code on desktopTransform how your organization operates with Claude
Get the developer newsletter
Product updates, how-tos, community spotlights, and more. Delivered monthly to your inbox.
SubscribeSubscribePlease provide your email address if you'd like to receive our monthly developer newsletter. You can unsubscribe at any time.



関連記事
今日のまとめ
AI日報で今日の重要ニュースをまとめ読み