| Category | Subcategory | Tool / Framework | Type | Description | Typical Use Cases |
|---|---|---|---|---|---|
| Cloud AI Platforms | Full-stack AI Platform | Azure AI Foundry | Managed Platform | End-to-end AI development (models, agents, deployment) | Enterprise AI apps, copilots |
| Cloud AI Platforms | Foundation Model Platform | Amazon Bedrock | Managed API Platform | Access to multiple foundation models via API | GenAI apps, chatbots |
| Cloud AI Platforms | Agent SDK Platform | Google Agent Development Kit | SDK / Platform | Tools to build agentic apps in Google ecosystem | Multi-agent applications |
| Cloud AI Platforms | LLM Agent SDK | OpenAI Agents SDK | SDK | Build agent workflows using OpenAI models | Assistants, automation |
| Orchestration Frameworks | LLM App Framework | LangChain | Framework | Chains, tools, and memory for LLM apps | Chatbots, RAG systems |
| Orchestration Frameworks | Graph-based Orchestration | LangGraph | Framework | Stateful graph-based workflows | Complex agent systems |
| Orchestration Frameworks | Multi-agent Framework | CrewAI | Framework | Role-based agent collaboration | Task automation |
| Orchestration Frameworks | Multi-agent Framework | AutoGen | Framework | Conversational multi-agent workflows | Autonomous systems |
| Orchestration Frameworks | Agent Framework | Microsoft Agent Framework | Framework | Enterprise-grade agent tooling | Copilots, enterprise AI |
| Agent + RAG Frameworks | RAG Framework | Haystack | Framework | Search + retrieval pipelines | QA systems |
| Agent + RAG Frameworks | Agent Framework | Semantic Kernel | SDK / Framework | Planning, memory, tool integration | AI copilots |
| Model Runtime | Local LLM Runtime | Ollama | Runtime | Run LLMs locally | Offline AI, testing |
| Low-Code / No-Code | Visual Builder | Flowise | Low-code Tool | Drag-and-drop LangChain UI | Prototyping |
| Low-Code / No-Code | AI App Platform | Dify | Platform | Build & deploy AI apps visually | Internal tools |
| Low-Code / No-Code | Workflow Automation | n8n | Automation Tool | Connect APIs & workflows | Business automation |
| Data Layer | Data Modeling | Pydantic | Library | Data validation using Python types | Structured outputs |
Thursday, April 16, 2026
AI Ecosystem 2026
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