KNOWLEDGE BASE FOR AGENTIC AI

The Agentic Wiki

Patterns, architectures, and implementation strategies for building AI agent systems.

Begin with the fundamentals →

Prompt Chaining

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Decompose a task into a sequence of LLM calls with gate checks between steps for validation and control.

Routing

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Classify incoming requests and direct them to specialized handlers for optimized, domain-specific processing.

Parallelization

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Run multiple LLM calls simultaneously via sectioning or voting to reduce latency and improve reliability.

Orchestrator-Worker

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A central LLM dynamically decomposes tasks, delegates to worker LLMs, and synthesizes results for complex open-ended problems.

Evaluator-Optimizer

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A generator-evaluator feedback loop that iteratively refines output until quality thresholds are met.

Reflection

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An LLM reviews its own output to identify errors and improvements through self-critique and revision cycles.

Handoffs

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Delegate work agent-to-agent with an explicit context transfer contract.

Human-in-the-Loop

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Pause execution for review and approval at explicit checkpoints.

Plan-and-Execute

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Generate a multi-step plan as an artifact, then execute steps with tools.

Iterative Refinement

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Separate generator, critic, and refiner roles and iterate until convergence.

Multi-Agent Debate

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Multiple peer agents collaborate (or argue) in a shared conversation.

Adaptive Orchestration

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Learned orchestrators that dynamically route and control agents based on task state.

Workflow Search

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Automatically discover and optimize workflow structures via search (MCTS, evolutionary).

Composite Patterns

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Guidance for combining patterns without creating brittle systems.

Autonomous Task Generation

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Agents create, prioritize, and execute their own task queues.

Collaborative Scaling

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Multi-agent networks organized as DAGs with scaling behaviors across topologies.

Latent Communication

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Agents exchange compressed latent representations instead of natural language.

All patterns & documentation →