Domäne
Machine Learning & AI
Skill-Profil
LangGraph, CrewAI, AutoGen, tool use, multi-agent systems
Rollen
2
wo dieser Skill vorkommt
Stufen
5
strukturierter Entwicklungspfad
Pflichtanforderungen
6
die anderen 4 optional
Machine Learning & AI
LLM & Generative AI
17.3.2026
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Die Tabelle zeigt, wie die Tiefe von Junior bis Principal wächst.
| Rolle | Pflicht | Beschreibung |
|---|---|---|
| AI Product Engineer | Understands basic concepts of agent frameworks like LangChain, LlamaIndex, and CrewAI for building AI-powered product features. Follows team patterns for configuring pre-built agent chains, connecting tools to agents, and testing agent interactions in development environments. Uses framework documentation to implement simple conversational and retrieval-augmented agents for product prototypes. | |
| LLM Engineer | Understands basic agent framework concepts including tool-use patterns, chain composition, and memory types in LangChain and LlamaIndex. Follows team examples for building simple agents with predefined tools, structured output parsing, and basic conversation memory. Uses framework debugging tools to trace agent reasoning steps and identify issues in tool selection and response generation. |
| Rolle | Pflicht | Beschreibung |
|---|---|---|
| AI Product Engineer | Independently builds product features using agent frameworks with custom tool integration, memory management, and multi-step reasoning chains. Implements agent architectures for product use cases including ReAct agents, plan-and-execute patterns, and multi-agent collaboration with role-based prompting. Evaluates framework trade-offs for product requirements — latency, cost, reliability — and implements fallback strategies for agent failures. | |
| LLM Engineer | Independently builds agent systems using LangChain, LangGraph, and custom orchestration code with advanced tool integration and state management. Implements agent architectures including ReAct, plan-and-execute, and reflection patterns with configurable retry logic and error recovery. Evaluates and benchmarks framework performance for specific tasks — comparing agent strategies by accuracy, token usage, latency, and reliability under diverse input distributions. |
| Rolle | Pflicht | Beschreibung |
|---|---|---|
| AI Product Engineer | Pflicht | Designs agent-based product architectures using frameworks like LangGraph, AutoGen, and custom orchestration layers for complex user-facing workflows. Implements advanced patterns including hierarchical agent systems, human-in-the-loop approval flows, and streaming agent responses with real-time tool execution feedback. Optimizes agent performance for production products through prompt caching, parallel tool execution, and intelligent routing between agent strategies based on task complexity. |
| LLM Engineer | Pflicht | Designs production-grade agent architectures using framework-agnostic patterns with pluggable LLM backends, tool registries, and observability integration. Implements advanced multi-agent systems with supervisor agents, specialized worker agents, and shared memory stores using LangGraph or custom state machines. Optimizes agent systems for production scale through intelligent caching, streaming execution, parallel tool calls, and cost-aware model routing strategies. |
| Rolle | Pflicht | Beschreibung |
|---|---|---|
| AI Product Engineer | Pflicht | Defines agent framework strategy and architectural standards for AI-powered product development across the organization. Establishes evaluation criteria for framework selection, agent testing methodologies, and production readiness requirements for agent-based features. Drives adoption of agent design patterns and mentors product engineering teams on building reliable, cost-effective agent systems for user-facing applications. |
| LLM Engineer | Pflicht | Defines agent framework architecture standards and evaluation methodologies for the organization's LLM engineering teams. Establishes best practices for agent testing, safety guardrails, cost management, and production monitoring across agent-based systems. Drives architectural decisions on framework selection, custom versus off-the-shelf agent infrastructure, and integration patterns with existing ML platform services. |
| Rolle | Pflicht | Beschreibung |
|---|---|---|
| AI Product Engineer | Pflicht | Shapes the organization's AI product architecture vision with agent frameworks as a core capability for autonomous product experiences. Drives innovation in agent orchestration patterns including self-improving agent loops, cross-product agent ecosystems, and novel human-AI collaboration paradigms. Influences the agent framework community through contributions to open-source projects and thought leadership on production-grade agent system design. |
| LLM Engineer | Pflicht | Shapes the organization's agent infrastructure strategy, defining how agent frameworks integrate with the broader AI/ML platform. Drives research and innovation in agent architectures including self-evolving tool ecosystems, meta-learning agent strategies, and novel approaches to agent safety and alignment. Influences the LLM agent framework ecosystem through open-source contributions, research publications, and community leadership on production agent system design patterns. |