Foundations of Statistical Learning & Algorithms
Key Takeaways
Builds a RAG pipeline using LangChain, Pinecone, and GPT-4 to answer questions over PDF documents
Original Description
This course covers linear algebra, probability, and optimization. It begins with systems of equations, matrix operations, vector spaces, and eigenvalues. Advanced topics include Cholesky and singular value decomposition. Probability modules address Bayes' theorem, Gaussian distribution, and inference techniques. The course concludes with model selection methods and an introduction to optimization.
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