MBA in Data science & AI from Florida institute of science & management

Earn the most prestigious title in your career and develop leadership skills suited to today’s global business challenges. This online MBA program empowers you to innovate and lead at the highest levels.

Type

MBA

Start Date

Sep 06, 2025

Duration

18 Months

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About Program

This course was designed to empower experienced professionals with advanced knowledge and research skills to enable them to drive innovation. Upon completion, learners will be awarded an MBA degree from Florida Institute of Science & Management , FLISM Alumni Status.

Key Highlights

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MBA in Data Science & AI

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Course Curriculum

  • Statistics & Mathematics functions & conditional formatting
  • Statistics & mathematics for Data Analysis
  • Lookup, Index & Match, Logical, Text Functions, Pivot Tables
  • Data Cleaning for Data Analysis
  • Introduction to Power Query
  • Charts, Dashboards, Regression, and Forecasting
  • Macros & coding (Advanced Excel )
  • Introduction to Tableau, Charts and Maps, Fundamentals of Data Visualization and Reporting.
  • Introduction to Data Cleaning and Preparation using Power BI
  • Introduction to Calculated Fields, Table Calculations, Aggregations, Granularity and LOD Expressions.
  • Introduction to Feature Engineering and Data Modelling in Power
  • Introduction to Data Extracts, Filters, Tableau Dashboards, Tableau Storyboards, and Formatting.
  • Introduction to Charts, Maps, and Dashboards in Power
  • Variables, Operators, Strings, Datatypes, and Data Structures such as Lists, Tuples, Dictionaries, and Sets.
  • Introduction to Fundamentals of R Programming
  • Functions, Parameters, Arguments, Anonymous Functions, Strings, String Methods, Regular Expressions
  • Introduction to Statistical Analysis and Functions in R
  • Introduction to Loops, Conditionals, Break, Continue, Object Oriented Concepts, and Space-Time Complexity.
  • Introduction to Data Visualization using ggplot in R
  • Descriptive Statistics, Basic and Conditional Probability
  • EDA, and Data Preparation using SAS
  • Introduction to Inferential Statistics and Hypothesis Testing
  • Using SQL Queries in SAS
  • Introduction to Numpy and Pandas
  • Query Analysis using Pandas
  • Introduction to Matplotlib and Seaborn
  • Introduction to Plotly and Express
  • Dealing with Missing Values, Dealing with Outliers and Skewness, and Encoding Categorical Data
  • Introduction to Data Manipulation Functions, Statistical Transformations, and Feature Engineering.
  • Introduction to Sampling and Resampling Techniques, Introduction to Feature Scaling Techniques.

a.  Supervised Learning

  • Introduction to Linear and Logistic
  • Regularization Techniques such as Lasso, Ridge, Elastic
  • Introduction to KNN, SVM, and Naive Bayes
  • Implementation of Regression Algorithms in Real world
  • Introduction to Decision Trees and Random
  • Implementation of Classification Algorithms in Real-world
  • Introduction to Boosting Algorithms and Imbalanced Machine
  • Introduction to Advanced Modelling

b. Unsupervised Learning

  • Introduction and Implementation of K Means and Hierarchical
  • Evaluation Metrics for Unsupervised
  • Introduction and Implementation of PCA and
  • Case Study on Dimensionality

c.  Time Series and Recommender Systems

  • Time Series Fundamentals, AR, MA, ARMA, ARIMA, SARIMA, ARIMAX
  • Implementation of Time Series
  • Content & Collaborative-based
  • Implementation of Recommender

a.  SQL Databases and Big Data Analysis

  • Database Fundamentals, DDL, DML, DQL

 

  • Fundamentals of Mongo DB: Documents and
  • SQL Joins, Sub-Queries, Set Operations, and Writing Complex
  • Introduction to Mongo DB Replica sets, Shading and
  • Accessing and Loading Databases and Performing Query Analysis in
  • Fundamentals of Web
  • Introduction to Py-Spark in Python and Spark for Big Data
  • Introduction to Beautiful Soup and

b.  Cloud

  • AWS
  • Usage of AWS in Data Science
  • AWS S3, and AWS
  • Deployment of a Machine Learning Classification Model

a. Introduction to Model Deployment

    • Overview of Model Deployment, ML System Architecture, Packaging ML Model for Production.
    • Fundamentals of REST
    • Serving and Deploying the Model via REST API, Continuous Integrations, and Deployment Pipelines
    • Fundamentals of AWS, AWS S3, and AWS
    • Deploying ML API with Containers, Differential Testing, Deploying to IaaS (AWS EC2).
    • Deployment of a Machine Learning Classification

b. Introduction to Natural Language Processing

    • Fundamentals of Natural Language Processing, Part of Speech Tagging, Named Entity Recognition
    • Fundamentals of Text Data Cleaning
    • Introduction to Text Classification, Semantics Rule, and Fundamentals of Sentimental Analysis.
    • Working on Real-world Text Classification problem
    • Understanding the Complex concepts of Topic Modeling and Text Summarization Techniques.
    • Working on Real-world Topic Modeling problem

c. Introduction to Deep Learning

    • Introduction to Artificial Neural Networks
    • Fundamentals of Tensor flow
    • Introduction to Convolutional Neural Networks and CNN Architectures
    • Fundamentals of PyTorch
    • Data Structured Algorithm and Generative AI
  • Diversity and Inclusion
  • Organisational behavior
  • Ethical practices
  • Team Dynamics
  • Organisational culture and structure
  • Foundations of Corporate Governance
  • Roles and Responsibilities
  • Corporate Ethics and Ethical Decision- Making
  • Risk Management and Internal Control
  • Corporate social Responsibility (CSR) and ESG
  • Regulatory and Legal Frameworks
  • Global Perspectives and Challenges
  • Contemporary Issues and Trends
  • Foundations of Operations Management
  • Supply Chain Strategy and Design
  • Supply Chain Analytics and Technology
  • Inventory and Logistics Management
  • Quality and Performance Management
  • Strategic Sourcing and Procurement
  • Research Methods and Theoretical Frameworks (DBA-specific)
  • Emerging Topics & Trends

3 Months: Case Studies, Blogs, Industry projects & capstone project.

a.   Banking, Finance, Insurance

  1. Customer Churn Analysis
  2. Risk and Reward Analysis
  3. Stock Market Analysis

b.   Healthcare

  1. Payer and Provider Analytics
  2. Pharmaceutical Analytics
  3. Health Expenses Analysis
  4. Drugs Prescription Analysis

c.    Ecommerce and Marketing

  1. Customer LTV Analysis
  2. Ad Campaigns Analysis
  3. Market Basket Analysis
  4. Dynamic Pricing Analysis

d.    HR & Operations

  1. Employee Attrition Analysis
  2. Employee Promotion Analysis
  3. Productivity Analysis
  4. Resources
  1. Keyword analysis and generation for google ads Optimize search engine marketing campaigns by identifying relevant keywords for Google Ads to improve ad targeting and increase visibility, clicks, and conversions
  2. Quora Insincere Questions Classification analysis Enhance content moderation on Quora by using ML algorithm to classify and filter out insincere questions to maintain the integrity of the platform and provide a better user experience.
  3.  Cabs Trip and Travelling duration Prediction Predict the duration of cab trips using machine learning to optimize route planning, improve customer satisfaction, and enhance operational efficiency in the transportation industry.
  1. Climate Change Impact on Global Food Supply Chain Frequent Climate change and irregularities are big challenging environmental issues. These irregularities in climate divisions are drastically affecting the human lives residing on the Earth.
  2. Product Prices Suggestions for Online Sellers Provide online sellers with data-driven price suggestions using machine learning to optimize pricing strategies, increase sales, and maximize profits in the competitive e- commerce market.
  3. Demand Forecasting for an Ecommerce Giant Forecast demand for a giant ecommerce, enabling effective inventory management, reducing stockouts and overstocks, customer satisfaction, and optimizing supply chain operations.
  4. Recommend products to most suitable customers Utilize personalized recommendations based on user behavior and preferences using ML to improve user experience, increase engagement, and drive sales.
  5.  Traffic Signs Classification using CNN Accurately classify traffic signs using ML to enhance road safety, assist in autonomous driving, and improve traffic management and enforcement in transportation systems.

Program Highlights

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1000+ Hours of Content

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600+ Live Sessions

500+ Doubt Sessions

100+ One-on-one Sessions

Mini Tasks

100+ Mini Tasks

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50+ Live Projects

50+ Technical Blogs

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50+ Research Paper Study

Mini Tasks

50+ Assignments

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50+ Case Studies

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20+ Group Discussions

10+ Specializations

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10+ Guest Lectures

10+ Industry Leader Sessions

Industry Projects

Industry

Keyword analysis and generation for google ads

Optimize search engine marketing campaigns by identifying relevant keywords for Google Ads to improve ad targeting and increase visibility, clicks, and conversions.

Skills: Data Analysis, Data Visualization, Data Cleaning, Feature Engineering

Classification

Quora Insincere Questions Classification analysis

Enhance content moderation on Quora by using ML algorithm to classify and filter out insincere questions to maintain the integrity of the platform and provide a better user experience.

Skills: Text Data Cleaning, Data Processing, Natural Language Processing, Deep Learning

Prediction

Cabs Trip and Travelling duration Prediction

Predict the duration of cab trips using machine learning to optimize route planning, improve customer satisfaction, and enhance operational efficiency in the transportation industry.

Skills: Exploratory Data Analysis, Feature Engineering, Machine Learning, Evaluation Metrics

Climate

Climate Change Impact on Global Food Supply Chain

 Understand the Impact of Climate Change on the Global Food Supply Chain. Frequent Climate change and irregularities are big challenging environmental issues.

Skills: Data Visualization, Statistical Analysis, Data Manipulation, Feature Engineering

Product Prices

Product Prices Suggestions for Online Sellers

Provide online sellers with data-driven price suggestions using machine learning to optimize pricing strategies, increase sales, and maximize profits in the competitive e-commerce market.

Skills: Statistical Analysis, Data Manipulation, Feature Engineering, Machine Learning

Demand Forecasting for an E-commerce Giant

Forecast demand for a giant ecommerce, enabling effective inventory management, reducing stockouts and overstocks, customer satisfaction, and optimizing supply chain operations.

Skills: Time Series, Statistical Analysis, Data Visualization, Machine Learning

Recommend products

Recommend products to most suitable customers

Utilize personalized recommendations based on user behavior and preferences using ML to improve user experience, increase engagement, and drive sales for retail and e-commerce.

Skills: Recommender Systems, Deep Learning, Content based filtering, collaborative based filtering

Classification cnn

Traffic Signs Classification using CNN

Accurately classify traffic signs using ML to enhance road safety, assist in autonomous driving, and improve traffic management and enforcement in transportation systems

Skills: Convolutional Neural Networks, CNN Architectures, Image Data Processing, Image Augmentation.

Hear from Our Students

Joining the dual MBA program was a turning point. The international exposure, diverse cohort, and re- al-world business simulations gave me the confidence to lead cross-cultural teams. I landed a strategic role within three months of graduating.

ABBY KOSS
ABBY KOSS

The curriculum was challenging, yet incredibly practical. Courses were taught by professors with real in- dustry experience, and the case-study approach made every concept come alive. I now think like a global business leader.

REANA PALKY
REANA PALKY

More than a degree, this MBA gave me a network I will value for life. I collaborated with classmates from over 20 countries, and each interaction expanded my worldview. It's more than education—it's transformation.

SCOTT TAKAC
SCOTT TAKAC

Coming from a technical background, I wanted to move into management. This program helped me bridge that gap. With the career coaching and internships, I successfully transitioned into a business consulting role.

VENKAT VARUN VAYARA

Pursuing my MBA was a transformative experience. The diversity in the classroom, global case studies, and cross-cultural collaboration gave me a whole new perspective on business. I walked away not only with sharper business acumen but also with a global network that continues to shape my career every day.

ANDREW HARPER

Career Services By Growth Skale

DBA Course
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100% Placement Assurance

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Career Oriented Sessions

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Mock Interview Preparation

1 on 1 Career Mentoring Sessions

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Resume & LinkedIn Profile Building

Exclusive access to Growth Skale Job portal

Case Studies

Strategic

Strategic Management & Business Transformation

  • Case Study Topic: How Amazon or Netflix adapted to changing market dynamics.
  • Focus: Long-term visioning, change management, innovation strategy.

Analyze how Amazon or Netflix navigated shifting market conditions through strategic foresight, innovative thinking, and effective change management. Examine key decisions, adaptations to technology and consumer behavior, and leadership in driving transformation. Highlight lessons in resilience, long-term vision, and innovation that enabled sustained competitive advantage.

Corporate

Corporate Governance & Ethics

  • Case Study Topic: The Volkswagen emissions scandal.
  • Focus: Ethical decision-making, compliance, board effectiveness.

Analyze the Volkswagen emissions scandal by examining the ethical lapses, failures in compliance, and the role of the board. Evaluate how decisions were made, who was responsible, and how stronger governance could have prevented it. Recommend strategies to enhance ethical decision-making, regulatory compliance, and board accountability in corporate settings.

Leader

Leadership & Organizational Behavior

  • Case Study Topic: Transformational leadership in Microsoft under Satya Nadella.
  • Focus: Leadership styles, employee motivation, cultural change.

Analyze Satya Nadella’s transformational leadership at Microsoft, focusing on how his leadership style influenced employee motivation and drove cultural change. Examine key initiatives, communication strategies, and leadership behaviors that reshaped the company’s vision, collaboration, and innovation. Evaluate outcomes through performance improvements, employee engagement, and organizational culture transformation.

Operations

Operations & Supply Chain Management

  • Case Study Topic: Apple’s global supply chain resilience during COVID.
  • Focus: Logistics optimization, risk management, supplier relationships.

Analyze how Apple maintained supply chain resilience during COVID-19, focusing on logistics optimization, risk management strategies, and supplier relationship management. Examine disruptions faced, Apple’s response, and lessons learned. Highlight how Apple adapted operations, diversified suppliers, and leveraged technology to ensure continuity and meet global demand during the pandemic.

Entrepreneurship

Entrepreneurship & Innovation

  • Case Study Topic: Airbnb’s growth through disruptive innovation.
  • Focus: Business model innovation, scaling, funding.

In this case study, analyze how Airbnb achieved rapid growth through disruptive innovation. Focus on its unique business model, how it scaled operations globally, and secured funding to fuel expansion. Examine key strategies, challenges faced, and the impact of innovation on the hospitality industry’s traditional dynamics.

Frequently Asked Questions

Most Frequently or Commonly asked Questions and Doubts by Enquiries

This MBA trains individuals to work across cross-functional teams—translating technical outputs into strategic decisions.
It empowers students to lead projects in AI product development, big data consulting, and business intelligence.
Soft skills like ethical decision-making and data governance are also emphasized.

Yes, absolutely. It's built with your schedule in mind. You can pursue this Program alongside your
job, with flexible study hours and a structure that respects your work-life balance.

This is a blended program, primarily conducted online. You'll learn through a mix of live virtual
sessions, recorded lectures, guided mentorship, and independent research. No campus visits
required—unless you choose to attend optional events.

You’ll learn from globally recognized faculty—experienced researchers, tenured professors, and
industry experts. They’ll not only teach you but guide your project journey with real insight and
personalized attention.

Florida Institute of Science and Management worlwide accreditated and recognised institution. It holds academic value globally

Fresh Graduates ,Working Professionals in IT, Analytics, or Software Development,Professionals working in operations, marketing, finance, or consulting who want to leverage AI and data to drive better outcomes and gain a competitive edge,Individuals aiming to build data-driven businesses or AI-based products who need both the technical understanding and business strategy to scale effectively.,Individuals from domains like HR, healthcare, retail, or logistics seeking to transition into tech-focused roles or become AI-aware leaders in their industry.

An MBA in Data Science & AI can significantly boost your career trajectory. It opens doors to leadership roles such as Analytics Manager, AI Project Lead, or Business Intelligence Head. With the rising demand for AI-savvy leaders, salary potential increases by 60-80% compared to traditional MBA roles. The program enables cross-industry mobility, allowing you to work in finance, healthcare, retail, tech, and more. It also supports career switches into high-growth fields like AI product management and digital transformation. Long-term, you can aim for strategic positions like Chief Data Officer or Head of AI, driving innovation at the executive level.

The application is simple. Share your academic and professional background, express your
interests, and have a short conversation with our admissions team. From there, we’ll
guide you through every step

Get in touch.

Our advisors are available around the clock to answer questions and support your educational journey. Connect with us today to explore how upGrad can help you meet your career goals.

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