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Master of Business Administration with specialization in Data Science: Admission, Eligibility, Courses, Fees, Syllabus

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The MBA in data science course is rapidly becoming a highly coveted specialization in management to leverage data effectively in a business context. As industries increasingly adopt technology and scientific methods for their operations, the ability to assess and manage data has become crucial. This professional program equips individuals with the skills to drive business innovations through data. Data science merges various disciplines, including Statistics, Mathematics, Information Science, Computer Science, Artificial Intelligence, and Machine Learning. This makes the MBA in Data Science particularly suitable for those with an Engineering or Technical background.
By 2025, it’s projected that the world will generate 463 exabytes of data daily, highlighting the growing demand for skilled data science experts and managers. Key sectors offering career opportunities in Data Science include IT, e-commerce, Healthcare, Manufacturing, and BFSI (Banking, Financial Services, and Insurance). This article provides comprehensive details about the MBA in Data Science, including eligibility criteria, admission processes, course content, syllabus, top MBA in data science colleges, career prospects, potential salaries, and recruiters.

What is Data Science?

Data science transforms vast amounts of data into actionable insights and informed predictions. It’s the art of deciphering complex data sets to guide decision-making and forecast future trends.
Imagine data science as a form of investigative work. Data scientists gather, scrutinize, and interpret data to uncover answers to critical questions. Their analyses range from identifying consumer purchasing trends to detecting health-related patterns that could aid in disease prevention.
At its core, data science aims to mine data for valuable insights, enabling informed decisions based on predictive analysis. This rapidly evolving field is pivotal across various sectors.
Data science encompasses several key activities, including:

  • Define the Problem
  • Collect and Clean Data
  • Explore and Visualize Data
  • Model and Analyze Data
  • Communicate Result
  • Implement and Evaluate the Result

MBA in Data Science Highlights

Given below are the key highlights of the MBA in Data Science course:

Features

MBA in Data Science Details

Degree Name

MBA in Data Science

Degree Type

Postgraduate

Course duration

2 years

Education modes

Full-time, part-time, distance learning modes, and online MBA in data science

MBA in data science eligibility criteria

Bachelor’s degree in any stream

Admission process

Entrance exam

+

GD/PI

Course fee

INR 1 lakh to INR 15 lakh and above

Average MBA in data science salary

INR 8 Lakh Per Annum (LPA)

Job profiles

Risk Analyst, Business Analyst, Data Analyst, Data Scientist, Stock Analyst, Project Manager

MBA in Data Science Eligibility Criteria

  • The basic eligibility criteria to pursue an MBA in Data Science is graduation. However, since Data Science is all about data crunching, having an academic background in Mathematics, Statistics, Information Science, Computer Science, Artificial Intelligence and Machine Learning will be valuable.
  • Some of the MBA programs in data science colleges have minimum score criteria of 50 percent aggregate in graduation.

MBA in Data Science Syllabus

The MBA in Data Science syllabus includes general management subjects, business analytics and technical topics such as Machine Learning, Spreadsheet Modelling, Data Visualization, etc. Given below are the topics commonly included in the MBA in data science course:

Semester 1: Core Management and Data Science Fundamentals

Subject

Topics

Subtopics

Management Concepts

Business Environment

Business Functions, External Environment, SWOT Analysis

 

Organizational Behavior

Motivation, Leadership, Team Dynamics

 

Strategic Management

Corporate Strategy, Competitive Advantage, Strategy Formulation

Mathematics for Data Science

Linear Algebra

Vectors, Matrices, Eigenvalues and Eigenvectors

 

Probability & Statistics

Probability Distributions, Hypothesis Testing, Statistical Inference

Data Science Basics

Introduction to Data Science

Data Collection, Data Types, Data Wrangling

 

Data Preprocessing

Data Cleaning, Handling Missing Data, Data Transformation

Semester 2: Data Analysis and Machine Learning

Subject

Topics

Subtopics

Data Analysis Techniques

Exploratory Data Analysis (EDA)

Descriptive Statistics, Identifying Patterns

 

Data Visualization

Tools (Matplotlib, Seaborn, Tableau), Graphical Representations

Machine Learning I

Supervised Learning

Linear Regression, Logistic Regression, Decision Trees

 

Unsupervised Learning

K-Means ClusteringPrincipal Component Analysis, Hierarchical Clustering

 

Model Evaluation

Cross-validation, Bias-Variance Tradeoff, Performance Metrics

Business Analytics

Predictive Analytics

Forecasting, Time Series Analysis, Demand Forecasting

 

Data-driven Decision Making

KPIs, Data Interpretation, Decision Support Systems

Semester 3: Advanced Data Science and Big Data

Subject

Topics

Subtopics

Machine Learning II

Advanced Supervised Learning

SVM, Random Forest, Gradient Boosting, XGBoost

 

Neural Networks and Deep Learning

ANN, CNN, RNN, Backpropagation

 

Reinforcement Learning

Q-Learning, Policy Gradients, Applications in Business

Big Data Technologies

Hadoop Ecosystem

HDFS, MapReduce, YARN, Pig, Hive

 

Apache Spark

Spark RDDs, DataFrames, Spark MLlib

 

NoSQL Databases

MongoDB, Cassandra, Data Modeling in NoSQL

Advanced Business Analytics

Prescriptive Analytics

Optimization Models, Simulation Techniques

 

Business Intelligence 

BI Tools (Power BI, Tableau), Data Warehousing

Semester 4: Data Science in Business and Emerging Trends

Subject

Topics

Subtopics

Natural Language Processing

Text Mining and Sentiment Analysis

Tokenization, NLP Tools (NLTK, spaCy), Text Classification, Sentiment Analysis

 

Speech Recognition

Voice Data, Acoustic Models, Deep Learning for Speech Recognition

AI and Data Science in Business

AI for Business Solutions

Chatbots, Personalization, Recommendation Systems

 

Ethical AI and Data Science

Bias in AI, Fairness in Machine Learning, Ethical Implications

Data Science Capstone Project

Project Development & Presentation

Data Collection, Model Building, Final Report, Presentation to Stakeholders

Electives (Optional)

Blockchain and Data Science

Blockchain Fundamentals, Smart Contracts, Cryptography

 

Cloud Computing for Data Science

AWS, Azure, Google Cloud, Cloud-based Data Solutions

MBA in Data Science: Top Recruiters

The demand for MBA in data science graduates is high in sectors such as e-commerce, manufacturing, healthcare, banking and finance, transport and information technology. Some of the top recruiters are listed below:

Top MBA in Data Science Recruiters

1.       Amazon

2.       IBM

3.       Deloitte

4.       Accenture

5.       Fractal Analytics

6.       Citrix

7.       LinkedIn

8.       Myntra

9.       MuSigma

10.   Dexlock

11.   Flipkart

12.   Rudder Analytics

MBA in Data Science FAQs

Q: Which are the top B-Schools for MBA in Data Science?

A: The MBA in Data Science colleges in India include Amity University, Kirloskar Institute of Advanced Management Studies, Symbiosis Centre for Information Technology-Pune, KJ Somaiya Institute of Management, Indian Statistical Institute-Kolkata, Fore School of Management-Delhi, Christ University, IIM Calcutta, MET Institute of Software Development and Research and Goa Institute of Management.

Q: What is the eligibility criteria for MBA in Data Science?

A: The basic eligibility criteria for MBA in Data Science is graduation with 50 per cent aggregate or equivalent from a recognised university. The academic background should preferably be Mathematics, Statistics, Computer Science, Machine Learning, etc.

Q: What is taught in MBA in Data Science?

A: The MBA in Data Science course curriculum includes general business management subjects and Data Science topics such as Machine Learning, Statistical Modelling Advanced Machine Learning, Supply Chain Analytics, Natural Language Processing, Web & Social Media Analytics, Marketing Analytics, Finance and Risk Analytics and Spreadsheet Modelling, etc.

 

Instructors
Joshua Hamilton

Web Developer

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