aroushtech.in

Course Details

Home - Course Details

GENERATIVE AI WITH LANGCHAIN AND HUGGING FACE

Description

COURSE OUTLINE 

  1. Introduction
  2. Python control flow
  3. Data structure using python
  4. Functions in python
  5. Importing, creating modules and packages
  6. File handling in python
  7. Exception handling
  8. Oops classes and objects
  9. Streamlet with python
  10. Machine learning for NLP(prerequisites)
  11. Deep learning for NLP(prerequisites)
  12. Simple RNN in-depth intuition
  13. ANN Project implementation
  14. End to end deep learning project with simple RNN
  15. LSTM and GRU end to end deep learning project-predicting next word
  16. bidirerctional RNN indepth intuition
  17. encoder and decoder | sequence to sequence architecture
  18. attention machanisem-seq2seq networks
  19. transformers
  20. introduction to generative AI and LLM models
  21. getting started with langchain and OpenAI
  22. important components and modules in langchain
  23. getting started with Open AI and Ollama
  24. building basic LLM application using LCEL(Langchain expression Language)
  25. building chatbot with conversation history
  26. end to end Q & A chatbot GEN AI app with
  27. RAG document Q & A with GROQ API and Llama3
  28. Conversational Q & A chatbot – chat with PDF along with chat history
  29. Search engine with langchain tools and agents
  30. Gen AI project-chat with SQL DB with Langchain SQL Toolkit and Agentype
  31. Text summarization with longchain
  32. Gen AI project -Youtube video and Website URl content summarization
  33. Text to math problem solver using google Gemma 2
  34. Huggingface and langchain integration
  35. Pdf query RAG with langchain and astraDB
  36. Multilanguage code assistant using codelama
  37. Deployment of Gen AI apps in streamlet and huggingspace
  38. Generative AI with Aws(bonus)
  39. Getting started with Nvidia NIM and Langchain
  40. Creating multi AI agents using crewAI for real world usecases
  41. Hybrid search RAG with Vector Database and Langchin
  42. Introduction to Graph Database and cypher query language with langchain
  43. Practical implementation with graphdb with langchain
  44. Detail intuition and implementation of finetuning LLM models
  45. End to end finetuning LLM models with lamini platform
  46. Building stateful, multi-actor applications using Lang graph
  47.  

Zac Livingston

Am if number no up period regard sudden better. Decisively surrounded all admiration and not you. Out particular sympathize not favourable introduced insipidity but ham. Rather number can and set praise. Distrusts an it contented perceived attending oh. Thoroughly estimating.

Course Details:

Course Price:

₹ 19,000

Instructor

Zac Livingston

Lesson Duration

12 Weeks

Language:

English, Hindi

Certifications

Scroll to Top