Skip to content

Glareone/OpenAI-ChatGPT-best-practices

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

OpenAI and ChatGPT repo

Theoretical Part. Table of Content

  1. Six Principles of responsible AI
  2. Responsible AI. Trusted AI Framework. Content Filters. Harmful Content. Prerelease Reviews
  3. What is ChatGPT Doing. and why does it work
  4. LLM UseCase in Google. Sorting Optimization
  5. Embeddings. Words to Vector. Useful in Search Scenarios and for Cognitive Search
  6. Cognitive Search. Video
  7. Cognitive Search. From Zero to Hero
  8. Cognitive Search. Indexers. AI Enrichment. Build-in Skills
  9. Transformers. Embeddings. Foundational Model
  10. Computer Vision. Cognitive. AI Face. Custom Vision
  11. Document Intelligence
  12. Azure AI Speech. Speech To Text. Text To Speech. Azure Services
  13. Natural Language Processing(NLP). Text Meaning and analysis. General ways how to
  14. Azure Language Service. Commands interpretation
  15. Azure Language Service. Question-Answer Knowledge base for bots. Question Answering service.
  16. Regression. Logistic and Linear Regression. Multiclass regression

Azure Learn Useful Materials

  1. Composed Document Intelligense Models. Case if you need to analyze several doc types
  2. Vision. Train a Custom Model using COCO
  3. Deploy AI Services in Containers, in AKS, ACI, or even locally
  4. Analyze Video Indexer. Widgets Integration and API
  5. Semantic Ranking configuration in AI Search Index
  6. Knowledge Store & Knowledge Mining with AI Search

Machine Learning Materials

  1. Machine Learning
    a. Machine Learning lab by Microsoft
  2. How Deep Learning Works

My LinkedIn Posts & Presentations

  1. GenAI. Where could be applied. Post 1.pdf
  2. GenAI in Application Refactoring field, Slides.pdf
  3. Legal problems with AI.pdf
  4. Paradigms: Rag, Self-RAG, Re-Ranking RAG, FLARE v.2.pdf
  5. Working with opinionated requests. S2A, RLHF, RLAIF.pdf
  6. Multi-Modal RAG and its features.pdf
  7. Measuring the GenAI Quality.pdf
  8. LLM leveraging RLHF in code review
  9. Everything of Thoughts (XoT). All modern techniques in one place
  10. Non deterministic embedding results
  11. AI Search vs PostgreSQL with pgvector in PROD
  12. Prod-Ready LLM Solutions. Cook Book.
  13. Crew.AI. Agents in LLM Applications (In Progress)

My Workshops

  1. June 2023. My Workshop Presentation. Run 1.pptx
  2. Online Workshop. ChatGPT -> Azure Function -> PowerAutomate. Run 2.pptx
  3. Online Workshop. Run 3. Deep Learning -> Prompting -> ChatGPT -> Azure Function -> PowerAutomate
  4. Online+Offline Workshop for EHU University
  5. Talk #3. RAG, FLARE, S2A, RLHF, RLAIF, Self-RAG, Re-Ranking. Common approaches and their pros & cons

Extra materials

  1. Vector Database selection & comparison. VectorDB

Practical Part. Table of Content

  1. Example:ConsoleApp CommandGuess
  2. Example: Azure Function with ChatGPT (completion and chat-completion)
  3. Example: Integration with PowerAutomate
  4. Example: Integration with PowerApp
  5. Integration with Outlook (In progress)
  6. OpenAI + PowerAutomate Workshop by me.pptx
  7. Example: OpenAI + Redis
  8. BMW Dealer assistant. ChatGPT Chat + Startup + Redis + Context
  9. Get Embedding
  10. Form Recognizer Cognitive Service
  11. Content Filters (in progress)
  12. OpenAI straightforward examples
  13. Bot using Chatbot Framework SDK (in progress) https://learn.microsoft.com/en-us/azure/bot-service/bot-service-quickstart-create-bot?view=azure-bot-service-4.0&branch=Ignite2018&tabs=csharp%2Cvs

Semantic Kernel. Knowledge base

  1. Semantic kernel and AI Assistant

SemanticKernel. Practical part

  1. Initial Example
  2. Interactive Chat with Chat History
  3. Model Switching. Hugging Face
  4. Semantic Function for Conversational Chat
  5. Semantic Kernel Pipeline

Azure Search & Document Intelligence. Theoretical Part

  1. Cognitive Search. Video
  2. Cognitive Search. From Zero to Hero
  3. Cognitive Search. Indexers. AI Enrichment. Build-in Skills
  4. Document Intelligence

Azure Cognitive Search & Document Intelligence. Practical Part

  1. Semantic Search (in progress)
  2. Document Intelligence (in progress)
  3. Semantic Search vs Document Intelligence (in progress)

General Information

0: RAG. Cheatsheet

image

1: PowerAutomate. React on manual trigger

image

2: PowerAutomate. React on keyword mentioned

image

.Net OpenAI SDK

.Net SDK (unofficial): https://github.com/Glareone/openai

OpenAI integration ideas

OpenAI

ChatGPT. GPT3.5 vs GPT4

image image

LLM Orchestration. LangChain & Semantic Kernel

Lang Chain

image

Semantic Kernel

image
image