Mastering Generative AI and LLM Deployment.
Proficiency on OpenAI,LangChain,MidJourney,LLama3,;Javascript Applications for 20X Fast Inference Prototypes.Get Hired

Mastering Generative AI and LLM Deployment. udemy course
Proficiency on OpenAI,LangChain,MidJourney,LLama3,;Javascript Applications for 20X Fast Inference Prototypes.Get Hired
This course is diving into Generative AI State-Of-Art Scientific Challenges. It helps to uncover ongoing problems and develop or customize your Own Large Models Applications. Course mainly is suitable for any candidates(students, engineers,experts) that have great motivation to Large Language Models with Todays-Ongoing Challenges as well as their deeployment with Python Based and Javascript Web Applications, as well as with C/C++ Programming Languages. Candidates will have deep knowledge on TensorFlow , Pytorch, Keras models, HuggingFace with Docker Service.
In addition, one will be able to optimize and quantize TensorRT frameworks for deployment in variety of sectors. Moreover, They will learn deployment of LLM quantized model to Web Pages developed with React, Javascript and FLASK
Here you will also learn how to integrate Reinforcement Learning(PPO) to Large Language Model, in order to fine them with Human Feedback based.
Candidates will learn how to code and debug in C/C++ Programming languages at least in intermediate level.
LLM Models used:
The Falcon,
LLAMA2,
BLOOM,
MPT,
Vicuna,
FLAN-T5,
GPT2/GPT3, GPT NEOX
BERT 101, Distil BERT
FINE-Tuning Small Models under supervision of BIG Models
Image Generation :
LLAMA models
Gemini
Dall-E OpenAI
Hugging face Models
Learning and Installation of Docker from scratch
Knowledge of Javscript, HTML ,CSS, Bootstrap
React Hook, DOM and Javacscript Web Development
Deep Dive on Deep Learning Transformer based Natural Language Processing
Python FLASK Rest API along with MySql
Preparation of DockerFiles, Docker Compose as well as Docker Compose Debug file
Configuration and Installation of Plugin packages in Visual Studio Code
Learning, Installation and Confguration of frameworks such as Tensorflow, Pytorch, Kears with docker images from scratch
Preprocessing and Preparation of Deep learning datasets for training and testing
OpenCV DNN with C++ Inference
Training, Testing and Validation of Deep Learning frameworks
Conversion of prebuilt models to Onnx and Onnx Inference on images with C++ Programming
Conversion of onnx model to TensorRT engine with C++ RunTime and Compile Time API
TensorRT engine Inference on images and videos
Comparison of achieved metrices and result between TensorRT and Onnx Inference
Prepare Yourself for C++ Object Oriented Programming Inference!
Ready to solve any programming challenge with C/C++
Read to tackle Deployment issues on Edge Devices as well as Cloud Areas
Large Language Models Fine Tunning
Large Language Models Hands-On-Practice: BLOOM, GPT3-GPT3.5, FLAN-T5 family
Large Language Models Training, Evaluation and User-Defined Prompt IN-Context Learning/On-Line Learning
Human FeedBack Alignment on LLM with Reinforcement Learning (PPO) with Large Language Model : BERT and FLAN-T5
How to Avoid Catastropich Forgetting Program on Large Multi-Task LLM Models.
How to prepare LLM for Multi-Task Problems such as Code Generation, Summarization, Content Analizer, Image Generation.
Quantization of Large Language Models with various existing state-of-art techniques
Importante Note:
In this course, there is not nothing to copy & paste, you will put your hands in every line of project to be successfully LLM and Web Application Developer!
You DO NOT need any Special Hardware component. You will be delivering project either on CLOUD or on Your Local Computer.