The Magic of Multilingual Search with Pinecone Serverless and Inference

The Magic of Multilingual Search with Pinecone Serverless and Inference

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- A Crash Course in LLMs

6 of 37

6 of 37

- A Crash Course in LLMs

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Classroom Contents

The Magic of Multilingual Search with Pinecone Serverless and Inference

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  1. 1 - Introduction
  2. 2 - Tatoeba and Multilingual Semantic Search
  3. 3 - What is Multilingual Semantic Search?
  4. 4 - Applications of Multilingual Semantic Search
  5. 5 - How do we achieve multilingual semantic search?
  6. 6 - A Crash Course in LLMs
  7. 7 - What are Vectors and Vector Embeddings?
  8. 8 - Distributional Hypothesis
  9. 9 - What are LLMs anyway?
  10. 10 - How does XLM-RoBERTA work?
  11. 11 - XLM-R: Big Multilingual Datasets
  12. 12 - XLM-R: Tokenization
  13. 13 - XLM-R: Masked Language Modeling
  14. 14 - Getting Doc embeddings
  15. 15 - Why XLM-R Isn't Enough
  16. 16 - Multilingual E5 for Multilingual Search Embeddings
  17. 17 - mE5: Training Data
  18. 18 - mE5: Weakly Supervised Contrastive Pretraining
  19. 19 - mE5: Supervised Finetuning and Dataset Distribution
  20. 20 - Basics of Vector Search with Pinecone
  21. 21 - Using Pinecone Inference
  22. 22 - Querying with Pinecone
  23. 23 - Demo Time: Language Learning with Multilingual Semantic Search
  24. 24 - Demo Architecture
  25. 25 - Live walkthrough of Notebook
  26. 26 - Embedding with Pinecone Inference
  27. 27 - Batch Embedding and Upsertion
  28. 28 - Query Embeddings, and cross-lingual search
  29. 29 - Tips and Tricks for Multilingual Semantic Search
  30. 30 - QA Time
  31. 31 - Evaluating Semantic Search
  32. 32 - Language Embedding Theory
  33. 33 - What happens for Out of Domain Languages? Transfer Theory
  34. 34 - Why isn't Translation Sufficient?
  35. 35 - Handling Negation in Queries
  36. 36 - Handling Cultural Nuance
  37. 37 - Low Resource Languages

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