Program Overview

Take the next step in your professional journey with our comprehensive 12-month Master’s program in Data Science, designed to equip you with the skills employers are actively seeking. Learn through live, expert-led sessions, guided by experienced professionals from the data science industry. Build practical expertise with hands-on projects that reflect real-world challenges and master essential tools including Python, Power BI, SQL, and AI frameworks. Our flexible online format is tailored for working professionals—allowing you to upskill and grow without pausing your career. Whether you’re pivoting to a data-driven role or accelerating your current path, this program gives you the knowledge, tools, and confidence to thrive in a competitive landscape. Join Bennett Franklin and gain a future-ready education built for real-world impact. Enroll now and start transforming your career in just 12 months.

Why Data Science?

Global Talent Gap

Shortage of skilled data science professionals globally.

Career Versatility

Opens doors across tech, finance, healthcare & more.

High Salary Roles

One of the top-paying fields in the digital economy.

Top 5 Tech Skills

Ranked among top skills for future-ready jobs.

On Completion, You Will:

  • Master AI, ML, Deep Learning, and advanced data techniques.
  • Analyze, interpret, and visualize large data sets with ease.
  • Use Python, SQL, Power BI to build data-driven solutions.
  • Develop predictive models to solve business challenges.
  • Apply statistical and machine learning methods effectively.
  • Be job-ready for senior roles in data and analytics fields.

Program Highlights

See which benefits you can derive from joining this program.

12-Month Online Program
Live classes and recorded content for flexibility.
Hands-on training with real industry data sets.
Progress at your own pace with expert guidance.
Advanced Curriculum
Covers core to advanced data science concepts.
Includes AI, Deep Learning, NLP & Power BI.
Industry-validated content and certifications.

Mentorship & Support
Academic and technical help throughout the course.
Live sessions and mentor-led feedback loops.
Dedicated helpdesk for fast query resolution.
Real-World Projects
Capstones across healthcare, finance, retail.
Build a job-ready portfolio with practical work.
Gain experience using tools top companies value.

Program Curriculum

An overview of what you will learn from this program.

Module 1: Python Programming
Gain insight into the Python Programming language with this introductory course. An essential programming language for data analysis, Python, Programming is a fundamental key to becoming a successful Data Science professional. In this course, you will learn how to write python code, learn about Python’s data structures, and create your functions. After the completion of this course, you can represent yourself as an ideal candidate for python Developer
Module 2: Data Base Management System
In this course, students will learn how to manage the Data Effectively using My SQL Work Bench. Students will come to know how to Apply Certain Joins techniques, How to manipulate the data. Will be able comfortably design SQL queries to add data to the database, will be familiar with editing, deleting data from the database, and will be able to describe and develop Relational Algebra and Relational Calculus queries.
Module 3: R Programming
Gain insight into the R Programming language with this introductory course. An essential programming language for data analysis, R Programming is a fundamental key to becoming a successful Data Science professional. This course will teach you how to write R code, learn about R’s data structures, and create your functions. After the completion of this course, you will be fully able to begin your first data analysis
Module 4: Exploratory Data Analysis
This course includes the necessary exploratory techniques for summarizing data. These techniques are typically implemented before formal modeling begins and can help in informing the development of numerous complex statistical models. Exploratory techniques are also essential for eliminating or sharpening potential hypotheses about the world that the data can address. In this course, we will study the plotting systems and the basic principles of constructing data graphics. We will also cover some of the standard multivariate statistical techniques used to visualize high-dimensional data
Module 5: Machine Learning
Machine Learning course will make you an expert in Machine Learning, a form of Artificial Intelligence that automates data analysis to enable computers to learn and adapt through experience to do specific tasks without explicit programming. You will master Machine Learning concepts and techniques, including supervised and unsupervised learning, mathematical and heuristic aspects, and hands-on modeling to develop algorithms and prepare you for your role with advanced Machine Learning knowledge.
Module 6: Machine Learning Model Deployment
Implementing models such as support vector machines, kernel SVM, Naive Bayes, decision tree classifier, random forest classifier, logistic regression, K-means clustering, and more in Flask, Sending and receiving the requests from deployed machine learning models, Building machine learning model APls, and deploy models into the cloud, Design testable, version-controlled, and duplicate production code for model deployment.
Module 7: Artificial Intelligence
The Artificial Intelligence course will expand your technical function and become an expert in Artificial Intelligence that automates data analysis to enable computers to learn and adapt through experience to do specific tasks without explicit programming. You will master Al concepts and techniques, including, Deep Learning, mathematical and heuristic aspects, and hands-on modeling to develop algorithms and prepare you for your role with advanced Al knowledge. Also, it will help in understanding Convolution Neural Networks Convolution, Pooling and Generative Networks Adversarial Networks, and these skills will enable candidates to seek their career in their desired companies.
Data Visualization using Tableau – Tableau Course will help you master the various aspects of the program and gain skills such as building visualization, organizing data, and designing dashboards. You will also learn concepts of statistics, mapping, and data connection. It is an essential asset to those wishing to succeed in Data Science. After learning the tableau tool, one must be able to display and analyze data. Also, it enables the users to create various reports and presentations about data.
Data Visualization using Power Bi – In this course, you will master the various aspects of the program and gain skills such as building visualization, organizing data, and designing dashboards utilizing data visualization using Power Bi. You will also learn concepts of mapping, and data connection; users will be able to provide clear and actionable insights in less than a minute. It also enables the candidate to import the data from multiple sources. And learn how to transform the data. It is an essential asset to those wishing to succeed in Data Science.
Module 8: Data Visualization Using Tableau/Power BI
In this course, students will learn about Introduction to Visualization, Rules of Visualization, Data Types, Sources, Connections, Loading, Reshaping, Data Aggregation, Working with Continuous and Discrete Data, Using Filters, Using Calculated Fields and parameters, Creating Tables and Charts, Building Dash Boards and story boards, Sharing Your Work and Publishing for wider audience, Introduction to Microsoft Power BI, The key features of Power BI workflow, Desktop application, BI service, File data sources
Sourcing data from the web (OData and Azure), Building a dashboard, Data visualization, Publishing to the cloud, DAX data computation, Row context, Filter context, Analytics pane, Creating columns and measures, Data drill down and drill up, Creating tables, Binned tables, Data modeling and relationships Power BI components such as Power View, Map, Query, and Pivot.
Module 9: Capstone Project
The capstone project will allow you to implement the skills you learned throughout this program. Through dedicated mentoring sessions, you’ll learn how to solve a real-world, industry-aligned Data Science problem, from data processing and model building to reporting your business results and insights. The project is the final step in the learning path and will enable you to showcase your expertise in Data Science to future employers.

Capstone Projects

Explore real-world projects across diverse industries.

Healthcare

Predictive analytics for patient care

Retail

Market basket and loyalty analysis

Banking

Fraud detection and risk scoring

Insurance

Claims prediction using NLP

E-commerce

Text mining & customer prediction

Finance & Accounts

Credit scoring and risk modeling

Why Bennett Franklin?

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Global leader in online professional education

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Curriculum built by experienced industry experts.

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Mentorship and career services for job-readiness.

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Practical, hands-on approach to learning

Hiring Patners

Career Assistance

Career Support Services

Resume reviews and personalized interview

Career mentorship from industry experts and alumni

Placement support via global hiring partnerships

Alumni Highlights

  • 200+

    Worked at companies like Google, Amazon, etc.

  • $122K PA

    Over 200+ top global hiring partners.

  • $250K PA

    Highest CTC reported $250,000 per year.

  • 87%

    Average salary hike of 87% post-course.

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Application Process

How to Enroll Easily

Application Form

Frequently Asked Questions (FAQ)

This program blends foundational depth with real-world applications, mentorship, and a 12-month career-focused journey.

Yes, support is available via live sessions, mentor calls, and academic help throughout the course.

Yes, it's one of the fastest-growing and best-paid fields, with opportunities across all industries.

The Master’s in Data Science is a 12-month flexible online program designed for working professionals.

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