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In diesem Kurs gibt es 3 Module
Ever wondered why your AI app sometimes “sounds smart” but fails when it matters? This course teaches you how to turn unpredictable Large Language Model (LLM) behavior into reliable, production-ready performance.This course is a fast, hands-on journey from prompt to production. You’ll learn to transform vague model outputs into precise, structured responses using advanced prompt engineering including role prompting, JSON-formatted replies, and self-critique loops. Then, you’ll build a robust API layer with caching, rate-limit handling, retries, and token budgeting for stability and cost efficiency. Finally, you’ll design an interface that gathers real user feedback ratings, flags, and clarifications turning every interaction into a learning loop. You’ll work with real tools like OpenAI API, FastAPI, React, Vercel AI SDK, and Postman, completing guided labs and an end-to-end project.
This course is for Developers, AI engineers, and UX designers seeking to optimize and integrate Large Language Model (LLM) applications for scalable, reliable, and user-centered solutions.
Basic Python or JavaScript skills, familiarity with APIs, and a general understanding of Large Language Model (LLM) concepts and their practical applications.
By the end, you’ll have built and optimized your own mini LLM app structured, reliable, and user-centered ready for real-world deployment.
This module explores how to transform vague or inconsistent LLM behavior into precise, controllable reasoning through advanced prompt design. Learners will uncover why even well-trained models “fail silently” - producing fluent but unreliable outputs - and learn how to diagnose and fix these issues systematically. By applying structured prompting methods such as chain-of-thought reasoning, JSON formatting, and role-based context setup, students will gain practical skills to optimize LLM performance without retraining the model. The module ends with a live demo in the ChatGPT API playground, showing how a few strategic prompt refinements can significantly improve factual accuracy and response consistency.
Das ist alles enthalten
4 Videos2 Lektüren1 peer review
Infos zu Modulinhalt anzeigen
4 Videos•Insgesamt 26 Minuten
Welcome to LLM Optimization & Reasoning Control•4 Minuten
Live Prompt Optimization Demo in ChatGPT Playground•9 Minuten
2 Lektüren•Insgesamt 10 Minuten
Welcome to the Course: Course Overview•5 Minuten
OpenAI Prompt Engineering Guide: Best Practices for Factuality and Reliability•5 Minuten
1 peer review•Insgesamt 25 Minuten
Hands-On-Learning: Prompt Optimization Challenge: Make It Right and Tight•25 Minuten
API Integration & Middleware Design
Modul 2•1 Stunde abzuschließen
Moduldetails
This module dives into the engineering backbone of reliable LLM-powered applications - the API and middleware layer. Learners will understand how to interface effectively with LLM APIs by implementing rate limits, request retries, caching, and token cost control. Emphasis is placed on making LLM calls stable, scalable, and cost-efficient under production-like conditions. Real-world patterns are illustrated through examples in Python or Node.js, and the module concludes with a hands-on demo building a backend service that interacts robustly with the OpenAI API, ensuring consistent performance and predictable costs even under heavy user load.
Das ist alles enthalten
3 Videos1 Lektüre1 peer review
Infos zu Modulinhalt anzeigen
3 Videos•Insgesamt 21 Minuten
Designing Reliable API Calls for LLM Apps•7 Minuten
Rate Limits, Caching & Token Budgeting•8 Minuten
Building a Resilient Backend for LLM APIs•6 Minuten
1 Lektüre•Insgesamt 5 Minuten
OpenAI API Reference: Error Handling & Rate Limits•5 Minuten
1 peer review•Insgesamt 25 Minuten
Hands-On-Learning: Backend Reliability Challenge: Handle It Smart•25 Minuten
User Interface & Feedback Loops
Modul 3•2 Stunden abzuschließen
Moduldetails
This module bridges technical design and user experience - showing how the interface directly shapes model effectiveness. Learners will discover how thoughtful UI elements such as clarification prompts, feedback sliders, and reasoning displays turn a static LLM into an adaptive, user-centered system. The lesson explores best UX patterns for chatbots, text generation tools, and intelligent search assistants, highlighting how human-in-the-loop feedback improves both model accuracy and trustworthiness. The demo guides learners through building a minimal React-based frontend that connects to the backend created earlier, visualizes responses dynamically, and incorporates live user feedback for iterative model improvement. This module emphasizes human-centered interaction design and adaptive UI patterns that enable continuous model learning and improved user trust.
Das ist alles enthalten
4 Videos1 Lektüre1 Aufgabe2 peer reviews
Infos zu Modulinhalt anzeigen
4 Videos•Insgesamt 24 Minuten
Why UX Defines Model Performance•7 Minuten
Designing Feedback Loops for Continuous Learning•7 Minuten
Building a Minimal React UI for Feedback Integration•7 Minuten
Course Wrap-Up•4 Minuten
1 Lektüre•Insgesamt 9 Minuten
Google PAIR Guidebook: Human-Centered Design for AI•9 Minuten
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