Solving Real-World Data Science Problems with LLMs - Historical Document Analysis

Solving Real-World Data Science Problems with LLMs - Historical Document Analysis

Keith Galli via YouTube Direct link

- Task #0: Configure LLM to use with Python OpenAI API

3 of 15

3 of 15

- Task #0: Configure LLM to use with Python OpenAI API

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Solving Real-World Data Science Problems with LLMs - Historical Document Analysis

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  1. 1 - Video Overview & Reference Material
  2. 2 - Data & Code Setup
  3. 3 - Task #0: Configure LLM to use with Python OpenAI API
  4. 4 - Task #0 continued: LLM Configuration with Open-Source Model LLama 2 via Ollama
  5. 5 - Task #1: Use LLM to Parse Simple Sentence Examples
  6. 6 - Sub-task #1: Convert string to Python Object
  7. 7 - Task #1 continued: Use Open-Source LLM to Parse Sentence Examples w/ LangChain
  8. 8 - Quick note on a benefit of using LangChain easily switching between models
  9. 9 - Task #2 warmup: Grab Apprenticeship Agreement rows from Dataframe
  10. 10 - Task #2: Connect Pages that Belong to the Same Documents
  11. 11 - Task #3: Parse out values from merged documents
  12. 12 - Task #4 setup: Analyze Results
  13. 13 - Fixing up our results from task #3 quickly
  14. 14 - Task #4: Find the average age of apprentices in our merged contract documents
  15. 15 - Other analysis, wlho had the most apprentices?

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