Was Sie vorher wissen sollten
bevor Sie beginnen

Beginnt 5 June 2026 03:41

Endet 5 June 2026

00 Tage
00 Stunden
00 Minuten
00 Sekunden
course image

Local LLMs via Ollama & LM Studio - The Practical Guide

Explore the world of open large language models such as Gemma, Llama, and DeepSeek, and learn how to run them locally for AI inference on consumer-level hardware. This practical guide, offered by Udemy, provides an in-depth understanding of using Ollama and LM Studio to harness the power of AI models right from your own device. Perfect for en.
via Udemy

4160 Kurse


3 hours 54 minutes

Optionales Upgrade verfügbar

Not Specified

Lernen Sie in Ihrem eigenen Tempo

Paid Course

Optionales Upgrade verfügbar

Übersicht

Unlock the Power of Private, Powerful AI on Your Own PC!

Lehrplan

  • Introduction to Local LLMs
  • Overview of Large Language Models
    Benefits of Running LLMs Locally vs. in the Cloud
    Introduction to Ollama and LM Studio
  • Setting Up Your Environment
  • System Requirements for Running Local LLMs
    Installing and Configuring Ollama
    Installing and Configuring LM Studio
  • Understanding LLM Architecture
  • Core Components of LLMs
    Training vs. Inference
    Fine-Tuning vs. Pre-trained Models
  • Getting Started with Ollama
  • Overview of the Ollama Interface
    Loading and Managing Models
    Performing Basic Inference Tasks
  • Exploring LM Studio
  • Navigating the LM Studio Interface
    Utilizing Built-in Tools and Features
    Integrating LM Studio with Other Applications
  • Practical Applications of Local LLMs
  • Natural Language Processing Tasks
    Automating Repetitive Tasks with LLMs
    Creating Custom Applications
  • Best Practices for Optimizing Performance
  • Resource Management and Optimization Techniques
    Troubleshooting Common Issues
    Security and Privacy Considerations
  • Advanced Techniques in Local LLM Usage
  • Customizing Models for Specific Use-Cases
    Combining Multiple LLMs for Enhanced Performance
    Exploring Cutting-Edge Developments in LLMs
  • Case Studies and Real-World Examples
  • Successful Implementation of Local LLMs in Different Industries
    Lessons Learned and Best Practices from Case Studies
  • Conclusion
  • Recap of Key Learning Points
    Future Trends in Local LLMs
    Final Q&A and Wrap-up Session
  • Optional: Capstone Project
  • Designing and Implementing a Local LLM-based Application
    Peer Review and Feedback Session

Unterrichtet von

Maximilian Schwarzmüller


Fachgebiete

Computer Science