GenAI Orchestration and Agent Patterns
Multi-step reasoning, multi-agent collaboration, tool chaining, error recovery and orchestration best practices.
Comprehensive guide on orchestration and generative AI agent patterns. Key IT and AI terms are kept in English.
Single-step reasoning works well for simple, well-defined questions, but fails quickly when tasks become complex or ambiguous. Without planning or reflection capability, an agent has no mechanism to detect errors, adapt its approach or correct incorrect assumptions during execution.
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What's inside
7 sections- 1 Table of Contents
- 2 Module 1 — Multi-step Reasoning and Planning for LLM Agents
- 3 Module 2 — Multi-agent Architectures and Collaboration
- 4 Module 3 — Tool Integration and Chaining
- 5 Module 4 — Error Handling and Recovery in Agent Systems
- 6 Module 5 — Agent Orchestration and Best Practices
- 7 General Summary
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