Steps By Step Tutorial To Fine Tune LLAMA 2 With Custom Dataset Using LoRA And QLoRA Techniques
Krish Naik Krish Naik
1.05M subscribers
118,353 views
2.6K

 Published On Feb 11, 2024

In thsi video we will be dicussing about how we can fien tune LLAMA 2 model with custom dataset using parameter efficient Transfer Learning using LoRA :Low-Rank Adaptation of Large Language Models.
Code: https://drive.google.com/file/d/1Bd7c...
-------------------------------------------------------------------------------------------------
Support me by joining membership so that I can upload these kind of videos
   / @krishnaik06  
-----------------------------------------------------------------------------------
►AWS Bedrock Playlist:    • Generative AI In AWS-AWS Bedrock Cras...  
►Llamindex Playlist:    • Announcing LlamaIndex Gen AI Playlist...  

►Google Gemini Playlist:    • Google Is On Another Level- Check Out...  
►Langchain Playlist:    • Amazing Langchain Series With End To ...  
►Data Science Projects:
   • Now you Can Crack Any ML Interviews- ...  

►Learn In One Tutorials

Statistics in 6 hours:    • Complete Statistics For Data Science ...  

End To End RAG LLM APP Using LlamaIndex And OpenAI- Indexing And Querying Multiple Pdf's

Machine Learning In 6 Hours:    • Complete Machine Learning In 6 Hours|...  

Deep Learning 5 hours :    • Deep Learning Indepth Tutorials In 5 ...  

►Learn In a Week Playlist

Statistics:   • Live Day 1- Introduction To statistic...  

Machine Learning :    • Announcing 7 Days Live Sessions On Ma...  

Deep Learning:   • 5 Days Live Deep Learning Community S...  

NLP :    • Announcing NLP Live community Sessions  
---------------------------------------------------------------------------------------------------
My Recording Gear
Laptop: https://amzn.to/4886inY
Office Desk : https://amzn.to/48nAWcO
Camera: https://amzn.to/3vcEIHS
Writing Pad:https://amzn.to/3OuXq41
Monitor: https://amzn.to/3vcEIHS
Audio Accessories: https://amzn.to/48nbgxD
Audio Mic: https://amzn.to/48nbgxD

show more

Share/Embed