Skip to main content

Master Vector Database with Python for AI & LLM Use Cases

Master Vector Database with Python for AI & LLM Use Cases

 Master Vector Database with Python for AI & LLM Use Cases - 
Learn Vector Database using Python, Pinecone, LangChain, Open AI, Hugging Face and build out AI, ML , Chat applications


What you'll learn

  • Pinecone Vector Database, LangChain, Transformer Models for vector embedding, Generative AI, Open AI API Usage, Hugging Face Models
  • Master the essential techniques for vector data embedding, indexing, and retrieval.
  • A Practical Code Along with Semantic Search Use Case in Detail with Named Entity Recognition
  • Developing an AI Chat Bot for Cognitive Search on Private Data Using LangChain
  • Understand the fundamentals of vector databases and their role in AI, generative AI, and LLM (Language Model Models).
  • Explore various vector database technologies, including Pinecone, and learn how to set up and configure a vector database environment.
  • Learn how vector databases enhance AI workflows by enabling efficient similarity search and nearest neighbor retrieval.
  • Gain practical knowledge on integrating vector databases with Python, utilizing popular libraries like NumPy, Pandas, and scikit-learn.
  • Implement code along exercises to build and optimize vector indexing systems for real-world applications.
  • Explore practical use cases of vector databases in AI, generative AI, and LLM, such as recommendation systems, content generation, and language translation.
  • Understand how vector databases can handle large-scale datasets and support real-time inference.
  • Gain insights into performance optimization techniques, scalability considerations, and best practices for vector database implementation.



Preview this Course

Comment Policy: Please write your comments according to the topic of this page's post. Comments containing links will not be displayed until approved.
Buka Komentar
Tutup Komentar
-->