ラングフロー
8.0

ラングフロー

  • ビルドとデプロイ AI インフラストラクチャの煩わしさなしにエージェントとワークフローを実現
  • Agentic 用のオープンソースのビジュアルビルダー AI およびRAGアプリケーション

Langflow Key Insights

価格モデル: Open Source, Cloud
無料利用枠: あり
マーク: ローコード AI Agent and Workflow Builder
価格: $0 
ビジュアルフロービルダー:
マルチエージェントオーケストレーション:
MCP Client and Server Support:
RAGパイプラインビルダー:
Graph RAG Support:
音声モード:
デスクトップアプリケーション:
API のデプロイメント:
Custom Python Components:
Flow Versioning:
Built in LLM Provider:
Prebuilt Workflow Templates:
GitHub Stars: 49,000件以上

Langflowとは何ですか?

ラングフロー

ラングフロー is an open source, low code platform built for developers and AI engineers to design, prototype, and deploy AI agents and retrieval augmented generation (RAG) applications. Originally created as a visual interface for ラングチェーン, it has grown into a standalone product now owned by DataStax (with IBM’s planned acquisition underway). 

The platform provides a drag and drop flow builder backed by full Python extensibility, allowing teams to wire up LLMs, vector databases, API tools, and custom logic into production ready workflows. Langflow supports all major model providers and ships with built in MCP client and server capabilities, making it a strong fit for teams building agentic AI applications. It removes the need to write boilerplate pipeline code while still giving engineers full source code access when they need it.

Key Features of Langflow
ビジュアルドラッグアンドドロップフロービルダー
Drag and Drop Flow Builder Langflow

Langflow’s canvas lets you construct AI workflows by connecting pre-built components in a browser. You drag LLM nodes, vector store connectors, prompt templates, and tool nodes into place. Every connection is validated in real time. This alone saves hours of boilerplate coding, especially during prototyping sprints where speed matters more than polish.

MCP Client and Server Integration
MCP Client and Server Integration Langflow

Starting with version 1.3 and refined through version 1.9, Langflow acts as both an MCP client and an MCP server. As a client, your flows can call external MCP tools. As a server, any flow you build becomes a tool that external agents, IDEs like VS Code, or even クロード Code can invoke programmatically. This makes every Langflow workflow instantly reusable across your AI スタック。

マルチエージェントオーケストレーション

Langflow supports building multi-agent systems with conversation management and shared retrieval layers. You can assign distinct roles to different agents, pass context between them, and manage tool access at the agent level. For teams building complex エージェントパイプライン where one model routes tasks to others, this is a core capability.

Graph RAG Pipeline Support

Beyond standard vector search RAG, Langflow introduced Graph RAG components that incorporate data relationships directly into retrieval. This improves accuracy for knowledge heavy applications where simple similarity search misses important connections between entities.

Langflow Assistant (AI Assisted Building)

Introduced in version 1.9, the Langflow Assistant is an embedded AI that helps you generate custom components from plain English, troubleshoot broken flows, and surface relevant documentation. It turns the builder itself into a conversational development environment.

Desktop Application for Local Development

Langflow Desktop ships as a native application for Mac and Windows. All dependencies are bundled, so there is no need to manage Python environments or install packages. For developers who want to build and test locally before pushing to production, this is the fastest way to get started.

Langflow Pricing Plans


プラン名
費用主な制限と機能
オープンソース $0Full feature access. You manage hosting, APIs, and databases
Langflow Cloud $0Hosted on DataStax Astra. Free account with usage limits. Bring your own API keys
Self Hosted (Cloud VM)月額約20ドル~100ドルInfrastructure costs only. Suitable for solo developers and prototypes
エンタープライズ展開月額2,000ドル以上High availability clusters, managed databases, compliance tooling

Langflow for Enterprise AI 開発

Langflow is gaining serious traction in enterprise environments, especially after IBM announced its planned acquisition of DataStax. For organisations that need to build proprietary AI agents on their own infrastructure, Langflow provides full データレジデンシー control with no vendor lock-in on model providers. 

Version 1.9 introduced environment variables to block custom component execution, adding a critical security layer for governed deployments. The Flow DevOps Toolkit SDK also allows teams to version, test, and deploy flows from the terminal, fitting neatly into existing CI/CD pipelines.

長所と短所

メリット
  • Excellent visual flow building experience.
  • Full MCP client and server support.
  • Supports all major LLM providers.
  • Python extensibility for custom components.
  • Active community with 49,000+ GitHub stars.
  • Desktop app for local development.
デメリット
  • Requires technical skills to deploy.
  • No built in LLM credits included.
  • Cloud costs can be unpredictable.
  • Limited prebuilt templates for beginners.

Best Langflow Alternatives

ローコード AI Agent and Workflow Builderオープンソースの柔軟性AI エージェントの能力
フローワイズ✅ Open source, simpler UIBasic chatbot and RAG flows
n8n✅ Fair code, self hostableBroad automation, limited AI ネイティブ機能
CrewAI✅ Open source, Python basedStrong multi agent orchestration, no visual builder
メーカー❌ Proprietary SaaSExcellent SaaS integration, weak on custom AI パイプライン
評決: Langflow wins with its visual builder plus full code access combo.
  • Build once. Deploy as API, MCP server, or both.
  • Free
  • あなたの AI agent before you ship it.
8.0
プラットフォームのセキュリティ
9.0
リスクフリー&返金
8.0
サービスと機能
7.0
顧客サービス
8.0 総合的な評価

コメント送信

あなたのメールアドレスは公開されません。 必須項目は、マークされています *

このサイトでは、スパムを減らすためにAkismetを使用しています。 コメントデータの処理方法を学びます。

ラングフロー
8.0/10
© 著作権 2023 - 2026 | 登録する AI プロ | ♥で作られました