In this course you will learn how to deploy Machine Learning Deep Learning Models using various techniques. This course takes you beyond model development and explains how the model can be consumed by different applications with hands-on examples
Course Structure:
Creating a Classification Model using Scikit-learn
Saving the Model and the standard Scaler
Exporting the Model to another environment - Local and Google Colab
Creating a REST API using Python Flask and using it locally
Creating a Machine Learning REST API on a Cloud virtual server
Creating a Serverless Machine Learning REST API using Cloud Functions
Building and Deploying TensorFlow and Keras models using TensorFlow Serving
Building and Deploying PyTorch Models
Converting a PyTorch model to TensorFlow format using ONNX
Creating REST API for Pytorch and TensorFlow Models
Deploying tf-idf and text classifier models for Twitter sentiment analysis
Deploying models using TensorFlow.js and JavaScript
Tracking Model training experiments and deployment with MLFLow
Running MLFlow on Colab and Databricks
Appendix - Generative AI - Miscellaneous Topics.
OpenAI and the history of GPT models
Creating an OpenAI account and invoking a text-to-speech model from Python code
Invoking OpenAI Chat Completion, Text Generation, Image Generation models from Python code
Creating a Chatbot with OpenAI API and ChatGPT Model using Python on Google Colab
ChatGPT, Large Language Models (LLM) and prompt engineering
Python basics and Machine Learning model building with Scikit-learn will be covered in this course. This course is designed for beginners with no prior experience in Machine Learning and Deep Learning
You will also learn how to build and deploy a Neural Network using TensorFlow Keras and PyTorch. Google Cloud (GCP) free trial account is required to try out some of the labs designed for cloud environment.