Was Sie vorher wissen sollten
bevor Sie beginnen
Beginnt 6 June 2026 09:30
Endet 6 June 2026
00
Tage
00
Stunden
00
Minuten
00
Sekunden
1 hour 8 minutes
Optionales Upgrade verfügbar
Not Specified
Lernen Sie in Ihrem eigenen Tempo
Free Video
Optionales Upgrade verfügbar
Übersicht
Lehrplan
- Introduction to Inference Scaling
- Understanding Coverage and Sample Numbers
- Frameworks for Optimizing LLM Systems
- Challenges in Inference Scaling
- Future Directions in Inference Scaling
- Practical Applications and Case Studies
- Conclusion and Future Outlook
Overview of LLMs (Large Language Models)
Significance of Inference Compute in AI
Definition and importance of coverage in AI
How scaling sample numbers improves inference
Case studies/examples
Introduction to Archon
Techniques for optimizing LLMs without automated verifiers
Implementing and adapting frameworks in existing systems
Limitations and potential pitfalls
Addressing scalability and efficiency issues
Emerging technologies and methodologies
Impact on AI capabilities and applications
Real-world examples of scalable inference in AI
Discussing successful implementations and lessons learned
Summarizing key insights from the course
Exploring the broader impact of inference scaling on AI development
Fachgebiete
Computer Science