GenLearny

Machine Learning

Skill Programs

/

CSE -IT Programs

Machine Learning

Turn your data-driven ideas into impactful ML solutions with our comprehensive Machine Learning program.
Learn to build predictive, scalable, and high-performing ML systems that extract insights, solve problems, and power real-world applications.

 

With hands-on projects, interactive learning, and expert mentorship, you’ll gain the skills to preprocess data, implement ML algorithms, optimize models, and confidently deploy solutions using industry-leading tools.

Technologies You’ll Learn

Our Approach

At our EdTech-driven digital solutions hub, we follow a structured, practical, and career-focused approach to Machine Learning, ensuring every project is not just theoretical but also applicable in real-world industries. Here’s how we do it:

Discovery & Research

  • Understand ML foundations, types, and modern trends (AutoML, TinyML).

  • Analyze industry use cases in finance, healthcare, e-commerce, and more.

Data-Driven Design

  • Learn data preprocessing, cleaning, and feature engineering.

  • Apply ML algorithms for regression, classification, clustering, and forecasting.

Hands-On ML Development

  • Implement traditional ML models and deep learning techniques.

  • Work with real-world datasets to build prediction and recommendation systems.

  • Optimize models using hyperparameter tuning and evaluation metrics.

Deployment & Career-Readiness

  • Deploy ML models with Flask, Streamlit, and cloud platforms.

  • Learn basics of MLOps, scalability, and monitoring.

  • Develop a portfolio of ML projects to showcase skills to employers or clients.

Join the Program

Months Duration
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Hours Lectures
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Learning Students
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MNC Mentors
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Certifications

Professional achievements and credentials

Training Completion Certificate
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Certified

Training Completion Certificate

Issued by GenLearny

Internship Completion Certificate
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Certified

Internship Completion Certificate

Issued by GenLearny

Companies Hiring ML Engineers.

Program Curriculum

  1. What is Machine Learning vs AI

  2. Applications in real life (Finance, Healthcare, E-commerce)

  3. Types of ML: Supervised, Unsupervised, Reinforcement Learning
    Practical : Explore simple ML demos using online platforms (Google Colab, Kaggle)

  1. Python setup (Anaconda, Jupyter Notebook)

  2. Basics: Variables, loops, functions, data types

  3. Libraries: NumPy, Pandas
    Practical : Write Python scripts for data manipulation and basic operations

  1. Data cleaning: missing values, duplicates

  2. Feature scaling, normalization, and encoding categorical data

  3. Train-test split
    Practical : Prepare a dataset for ML modeling (e.g., Titanic or Iris dataset)

  1. Visualization with Matplotlib & Seaborn

  2. Plotting histograms, scatter plots, and box plots

  3. Understanding correlations and patterns
    Practical : Visualize a dataset to explore insights

  1. Linear Regression, Polynomial Regression

  2. Model evaluation: MSE, RMSE, R² score

  3. Use cases of regression
    Practical : Predict house prices or student scores using regression models

  1. Logistic Regression, K-Nearest Neighbors (KNN)

  2. Decision Trees, Random Forest

  3. Evaluation metrics: Accuracy, Precision, Recall, F1-score
    Practical : Build a classifier (e.g., iris dataset, spam detection)

  1. Clustering: K-Means, Hierarchical Clustering

  2. Dimensionality reduction: PCA

  3. Real-world applications of clustering
    Practical : Customer segmentation or grouping similar products

  1. Overfitting vs Underfitting

  2. Cross-validation techniques

  3. Grid Search and Random Search for tuning models
    Practical : Optimize models built in previous modules to improve accuracy

  1. Basics of neural networks, perceptron, and activation functions

  2. Forward propagation & backpropagation

  3. Intro to deep learning libraries: TensorFlow / Keras
    Practical : Build a simple neural network to classify MNIST digits

  1. Project planning and best practices

  2. Build a complete ML project (e.g., loan prediction, sales forecasting, or digit recognizer)

  3. Deploy ML model using Streamlit or Flask
    Final Project : Students showcase a working ML application online

Affordable and Student-Friendly Pricing

Gen-Edge

₹5,000

Gen-Pro

₹9,000

# FAQs

Answers to Your Most Common Questions

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We provide internship programs across CSE/IT, Management, ECE/EEE, Mechanical Engineering, and Digital Marketing, focusing on real-world projects and skill development.

Yes! Our internship programs are designed to accommodate beginners while also challenging advanced learners with hands-on tasks.

Yes, all our internship programs are designed in collaboration with industry requirements to provide practical, real-world experience.

Students, fresh graduates, and anyone looking to gain hands-on industry experience can apply, regardless of their prior knowledge.

You gain practical experience, work on real-time projects, build a strong portfolio, and improve employability in your chosen field.

Yes. Every participant is guided by industry professionals to ensure a meaningful learning experience.

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