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Machine Learning & Shape the Future with Intelligent Systems

Master practical machine learning skills including data modeling, predictive analytics, algorithms, and automation to build intelligent, real-world solutions.

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Machine Learning That Powers Data-Driven Innovation

Our machine learning programs equip individuals and organizations with practical skills to build predictive models, analyze data patterns, automate decision-making, and deploy scalable intelligent solutions.

Duration

3 Months

Sessions

36

Classes Days

Mon, Wed, Fri

Summary Of The Course

This Advanced Machine Learning Professional course is designed for learners who want to achieve an industry-ready level and already possess a basic understanding of programming, data, or technical concepts. The course focuses on core machine learning foundations, data preparation, model training, evaluation techniques, deployment workflows, and real-world applications to build scalable, data-driven intelligent systems.

  • Machine Learning Model Design & Training

  • Data Analysis & Predictive Modeling Projects

  • End-to-End ML Pipelines & Automation

  • Client-Style, Portfolio-Ready ML Projects

Learners will complete hands-on projects covering dataset preparation, feature engineering, model development, evaluation, optimization, and deployment—resulting in practical, portfolio-ready machine learning solutions.

  • Machine Learning Fundamentals & Algorithms

  • Supervised & Unsupervised Learning Techniques

  • Data Preprocessing, Feature Engineering & Model Evaluation

  • Model Optimization, Validation & Performance Tuning

  • Real-World Machine Learning Use Cases

Learners will gain a strong foundation in machine learning concepts, understand how to select and train appropriate models, evaluate performance, and apply ML techniques to solve practical, data-driven problems.

  • Python for Machine Learning

  • NumPy, Pandas & Data Handling

  • Scikit-learn for Model Building

  • Data Visualization & Exploratory Analysis

  • Model Deployment Basics & ML Workflows

Learners will work hands-on with industry-standard tools and libraries used by machine learning professionals, developing practical skills required for real-world ML projects and deployment-ready solutions.

  • Automated Machine Learning (AutoML) Concepts

  • Model Training, Testing & Evaluation Automation

  • Data Pipelines & Workflow Automation

  • Model Monitoring & Continuous Improvement

  • Introduction to MLOps & Scalable ML Systems

Learners will understand how machine learning workflows can be automated to improve efficiency, consistency, and scalability. The course introduces automated pipelines, model lifecycle management, and continuous learning approaches used in modern ML-driven organizations.

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📚 Table of Contents

Orientation & Machine Learning Foundations

Session Subjects Discussed

  • Introduction to Machine Learning & Industry Trends

  • Difference Between AI, Machine Learning & Deep Learning

  • Types of Machine Learning (Supervised, Unsupervised, Reinforcement)

  • Real-World Machine Learning Applications

  • Data-Driven Decision Making

  • Ethics, Bias & Responsible Machine Learning

  • Machine Learning Career Paths

Python & Data Fundamentals for Machine Learning

Session Subjects Discussed

  • Python Essentials for Machine Learning

  • Working with NumPy & Pandas

  • Data Cleaning & Preprocessing Techniques

  • Exploratory Data Analysis (EDA)

  • Handling Missing Data & Outliers

Supervised Learning – Regression Models

Session Subjects Discussed

      • Linear & Multiple Regression

      • Model Assumptions & Evaluation Metrics

      • Feature Selection & Engineering

      • Overfitting & Underfitting

      • Real-World Regression Use Cases

Supervised Learning – Classification Models

Session Subjects Discussed

  • Logistic Regression

  • Decision Trees & Random Forest

  • K-Nearest Neighbors (KNN)

  • Support Vector Machines (SVM)

  • Classification Metrics & Confusion Matrix

Unsupervised Learning Techniques

Session Subjects Discussed

  • Clustering Concepts & Applications

  • K-Means & Hierarchical Clustering

  • Dimensionality Reduction (PCA)

  • Anomaly Detection

  • Business & Industry Use Cases

Model Optimization & Evaluation

Session Subjects Discussed

  • Model Validation Techniques

  • Hyperparameter Tuning

  • Cross-Validation

  • Performance Optimization

  • Model Comparison & Selection

ML Automation, Pipelines & MLOps Basics

Session Subjects Discussed

  • Automated ML Workflows

  • Data & Model Pipelines

  • Introduction to MLOps

  • Model Versioning & Monitoring

  • Continuous Learning Systems

Capstone Projects & Deployment

Session Subjects Discussed

  • End-to-End Machine Learning Project

  • Real-World Dataset Handling

  • Model Deployment Basics

  • Client-Style ML Assignments

  • Portfolio-Ready Final Project

📚 Table of Contents

Orientation & Machine Learning Foundations

Session Subjects Discussed

  • Introduction to Machine Learning & Industry Trends

  • Difference Between AI, Machine Learning & Deep Learning

  • Types of Machine Learning (Supervised, Unsupervised, Reinforcement)

  • Real-World Machine Learning Applications

  • Data-Driven Decision Making

  • Ethics, Bias & Responsible Machine Learning

  • Machine Learning Career Paths

Python & Data Fundamentals for Machine Learning

Session Subjects Discussed

  • Python Essentials for Machine Learning

  • Working with NumPy & Pandas

  • Data Cleaning & Preprocessing Techniques

  • Exploratory Data Analysis (EDA)

  • Handling Missing Data & Outliers

Supervised Learning – Regression Models

Session Subjects Discussed

      • Linear & Multiple Regression

      • Model Assumptions & Evaluation Metrics

      • Feature Selection & Engineering

      • Overfitting & Underfitting

      • Real-World Regression Use Cases

Supervised Learning – Classification Models

Session Subjects Discussed

  • Logistic Regression

  • Decision Trees & Random Forest

  • K-Nearest Neighbors (KNN)

  • Support Vector Machines (SVM)

  • Classification Metrics & Confusion Matrix

Unsupervised Learning Techniques

Session Subjects Discussed

  • Clustering Concepts & Applications

  • K-Means & Hierarchical Clustering

  • Dimensionality Reduction (PCA)

  • Anomaly Detection

  • Business & Industry Use Cases

Model Optimization & Evaluation

Session Subjects Discussed

  • Model Validation Techniques

  • Hyperparameter Tuning

  • Cross-Validation

  • Performance Optimization

  • Model Comparison & Selection

ML Automation, Pipelines & MLOps Basics

Session Subjects Discussed

  • Automated ML Workflows

  • Data & Model Pipelines

  • Introduction to MLOps

  • Model Versioning & Monitoring

  • Continuous Learning Systems

Capstone Projects & Deployment

Session Subjects Discussed

  • End-to-End Machine Learning Project

  • Real-World Dataset Handling

  • Model Deployment Basics

  • Client-Style ML Assignments

  • Portfolio-Ready Final Project

Why Learn Machine Learning?

Build in-demand machine learning skills, transform data into predictive insights, and develop intelligent models that power automation, innovation, and high-growth career opportunities across industries.

High-Demand & Future-Proof Career

Machine learning skills are in strong global demand across industries like IT, healthcare, finance, manufacturing, and AI startups—opening doors to high-paying and long-term career opportunities.

Data-Driven Problem Solving Skills

Machine learning enables you to analyze data, build predictive models, and automate decision-making—helping organizations make smarter, faster, and more accurate decisions.

Innovation, Automation & Growth

With machine learning, you can create intelligent systems that automate processes, improve efficiency, and drive innovation—making you a valuable asset in the future digital economy.

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FAQ About Techverse

Get answers about our NAVTTC, PSDF & TEVTA approved courses, job placement support, and career transformation programs

What is the Machine Learning program at TechVerse by BGMC?

The Machine Learning program at TechVerse by BGMC is a career-focused training designed to equip learners with practical skills in data analysis, predictive modeling, algorithm development, and real-world machine learning applications.

The Machine Learning training is offered through flexible learning modes, including online and instructor-led sessions, making it accessible to learners locally and internationally.

This course is suitable for students, fresh graduates, IT professionals, engineers, analysts, and anyone with a basic understanding of programming or data who wants to build a career in machine learning.

Learners gain in-demand ML skills, hands-on project experience, exposure to real datasets, portfolio-ready projects, and career-oriented training aligned with modern industry requirements.

Yes. The Machine Learning program is delivered under TechVerse by BGMC and follows globally accepted industry practices, frameworks, and skill standards relevant to the AI and data science domain.

TechVerse focuses on practical learning, real-world projects, expert mentorship, modern tools, and job-oriented skill development—ensuring learners are industry-ready, not just theory-trained.

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