YoVDO

Building LLM-Powered Apps: Best Practices for Vector Databases and LLMOps

Offered By: LLMOps Space via YouTube

Tags

LLMOps Courses Vector Databases Courses Application Design Courses Model Selection Courses Data Privacy Courses Fine-Tuning Courses Qdrant Courses

Course Description

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Explore best practices for building LLM-powered applications in this informative talk by Kacper Ɓukawski from Qdrant. Gain valuable insights into key considerations for designing, implementing, and scaling applications that leverage Large Language Models. Discover essential aspects such as model selection, computational requirements, and data privacy measures. Delve into the technical intricacies of training and fine-tuning LLMs for specific application needs. Learn about effective deployment strategies, including model versioning and A/B testing, to ensure optimal performance and scalability. This 45-minute presentation, hosted by LLMOps Space, a global community for LLM practitioners, offers practical knowledge for overcoming technical challenges and maximizing the potential of LLM-based systems in production environments.

Syllabus

Building LLM Powered Apps: Best Practices | Qdrant | Vector Databases | LLMOps


Taught by

LLMOps Space

Related Courses

Qdrant - A Vector Search Engine in Rust
Rust via YouTube
Introduction to Retrieval Augmented Generation (RAG)
Duke University via Coursera
Advanced RAG with Llama 3 in LangChain - Building a PDF Chat System
Venelin Valkov via YouTube
Hands-On AI: RAG using LlamaIndex
LinkedIn Learning
Local RAG with Llama 3.1 for PDFs - Private Chat with Documents using LangChain and Streamlit
Venelin Valkov via YouTube