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Machine Learning IIOT4 Homework

This repository contains my homework and practice tasks for the Machine Learning and IIOT4 training program. All assignments provided by my trainer are uploaded here as Jupyter Notebook files.

The purpose of this repository is to maintain a record of my learning progress and practical implementation of different Machine Learning concepts.

About the Repository

This repository includes various Machine Learning tasks such as:

  • Data preprocessing and cleaning
  • Exploratory Data Analysis (EDA)
  • Feature engineering
  • Machine Learning model implementation
  • Model evaluation and testing

Each task is implemented using Python and executed in Jupyter Notebook.

Repository Content

The repository mainly contains Jupyter Notebook (.ipynb) files for different tasks assigned during the training.

Some of the Machine Learning tasks included in this repository are:

House Price Prediction

Accident Prediction

More tasks will be added as part of my ongoing training.

Each task may include:

  • Problem statement
  • Data loading
  • Data preprocessing
  • Model building
  • Model evaluation
  • Results and observations

Tools and Technologies Used

The following tools and libraries are used in the implementation:

  • Python
  • Jupyter Notebook
  • Pandas
  • NumPy
  • Scikit-learn
  • Matplotlib / Seaborn (for data visualization)

Objective

The main objective of this repository is to:

  • Practice Machine Learning concepts
  • Implement algorithms using real datasets
  • Track progress during the Machine Learning and IIOT4 training program
  • Maintain a structured collection of assignments

Learning Outcome

Through these tasks, I aim to improve my understanding of:

  • Data analysis techniques
  • Machine Learning model development
  • Data preprocessing methods
  • Model evaluation strategies

Author

Ayush Kumar

Machine Learning Trainee

About

This repository contains my machine learning homework tasks and their implementations. It includes data preprocessing, feature engineering, model training, evaluation, and prediction pipelines using Python and popular ML libraries.

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