AI Systems Thinking: How to Design Workflows That Scale
Applying systems thinking principles to AI workflow design for scalable, maintainable solutions. Covers systems theory for AI, feedback loop design, emergent behavior in AI pipelines, bottleneck analysis, resilience patterns, multi-agent coordination, workflow orchestration architecture, observability and debugging, and designing AI systems that improve themselves over time.
| 负责人 | OdooBot |
|---|---|
| 最后更新 | 2026/03/22 |
| 成员 | 1 |
-
Introduction to Systems Thinking in AI10课程 。
-
What is Systems Thinking?
-
What is Systems Thinking? - Quiz10 经验值
-
Components of AI Systems
-
Components of AI Systems - Quiz10 经验值
-
Designing Workflows
-
Designing Workflows - Quiz10 经验值
-
Feedback Loops in AI
-
Feedback Loops in AI - Quiz10 经验值
-
Implementing Systems Thinking
-
Implementing Systems Thinking - Quiz10 经验值
-
-
Feedback Loop Design8课程 。
-
Types of Feedback Loops
-
Types of Feedback Loops - Quiz10 经验值
-
Designing Feedback Mechanisms
-
Designing Feedback Mechanisms - Quiz10 经验值
-
Evaluating Feedback Effectiveness
-
Evaluating Feedback Effectiveness - Quiz10 经验值
-
Iterative Improvement Using Feedback
-
Project: Implementing Feedback in Workflows
-
-
Emergent Behavior in AI Systems5课程 。
-
What is Emergent Behavior?
-
Case Studies of Emergent Behavior
-
Designing for Emergent Behavior
-
Strategies for Managing Emergence
-
Project: Designing for Emergence
-
-
Resilience Patterns in AI Systems5课程 。
-
Understanding Resilience in AI
-
Resilience Patterns Overview
-
Designing Resilient Workflows
-
Testing for Resilience
-
Project: Implementing Resilience Patterns
-
-
Workflow Orchestration and Observability6课程 。
-
Principles of Workflow Orchestration
-
Principles of Workflow Orchestration - Quiz10 经验值
-
Designing Observability into Workflows
-
Monitoring and Debugging Strategies
-
Project: Orchestrating AI Workflows
-
Final Project: Building a Self-Improving AI Workflow
-