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    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Data Analysis

    Birla Institute Of Applied Sciences
    Duration
    4 Years
    Data Analysis UG OFFLINE

    Duration

    4 Years

    Data Analysis

    Birla Institute Of Applied Sciences
    Duration
    Apply

    Fees

    ₹8,00,000

    Placement

    95.0%

    Avg Package

    ₹12,00,000

    Highest Package

    ₹25,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Data Analysis
    UG
    OFFLINE

    Fees

    ₹8,00,000

    Placement

    95.0%

    Avg Package

    ₹12,00,000

    Highest Package

    ₹25,00,000

    Seats

    250

    Students

    250

    ApplyCollege

    Seats

    250

    Students

    250

    Curriculum

    Curriculum Overview

    The Data Analysis program at Birla Institute Of Applied Sciences is structured over eight semesters, with a balanced mix of core foundational courses, departmental electives, science electives, and laboratory sessions. The curriculum is designed to ensure students acquire both theoretical knowledge and practical skills essential for modern data analysis roles.

    Course Structure by Semester

    SemesterCourse CodeCourse TitleCredit Structure (L-T-P-C)Prerequisites
    1MATH101Calculus I3-0-0-3-
    1MATH102Linear Algebra3-0-0-3-
    1STAT101Probability Theory3-0-0-3-
    1CS101Introduction to Programming2-0-2-3-
    1ENGG101Engineering Fundamentals2-0-0-2-
    2MATH201Calculus II3-0-0-3MATH101
    2STAT201Statistical Inference3-0-0-3STAT101
    2CS201Data Structures and Algorithms2-0-2-3CS101
    2DBMS101Database Systems2-0-2-3-
    2ENG102Communication Skills2-0-0-2-
    3MATH301Advanced Calculus3-0-0-3MATH201
    3STAT301Time Series Analysis3-0-0-3STAT201
    3ML101Machine Learning Fundamentals3-0-0-3STAT201, CS201
    3CS301Web Technologies2-0-2-3CS101
    3DS101Data Science Lab0-0-4-2-
    4MATH401Differential Equations3-0-0-3MATH301
    4STAT401Bayesian Statistics3-0-0-3STAT201
    4ML201Deep Learning3-0-0-3ML101
    4CS401Software Engineering2-0-2-3CS201
    4DS201Advanced Data Science Lab0-0-4-2DS101
    5STAT501Natural Language Processing3-0-0-3ML101
    5ML301Computer Vision3-0-0-3ML201
    5CS501Big Data Technologies2-0-2-3DBMS101
    5DS301Specialized Analytics Lab0-0-4-2DS201
    6STAT601Financial Modeling3-0-0-3STAT401
    6ML401Reinforcement Learning3-0-0-3ML201
    6CS601Cybersecurity2-0-2-3CS401
    6DS401Capstone Project Lab0-0-4-2DS301
    7STAT701Healthcare Analytics3-0-0-3STAT501
    7ML501Advanced Deep Learning3-0-0-3ML401
    7CS701Cloud Computing2-0-2-3CS601
    7DS501Industry Collaboration Project0-0-4-2DS401
    8STAT801Research Methodology3-0-0-3-
    8ML601Capstone Thesis3-0-0-3ML501
    8DS601Final Project Presentation0-0-4-2DS501

    Advanced Departmental Electives

    The department offers a wide range of advanced departmental elective courses designed to provide specialized knowledge in various domains of data analysis. These courses are intended to deepen students' expertise and prepare them for advanced roles in specific industries or research areas.

    Natural Language Processing

    This course explores the intersection of linguistics, computer science, and artificial intelligence. Students learn to build systems that can understand, interpret, and generate human language. Topics include sentiment analysis, named entity recognition, machine translation, and dialogue systems. The course uses frameworks like spaCy, NLTK, and Hugging Face Transformers.

    Computer Vision

    Focused on teaching students how computers can interpret and understand visual information from the world, this course covers image classification, object detection, segmentation, and tracking. It delves into convolutional neural networks (CNNs), transfer learning, and applications in robotics, medical imaging, and autonomous vehicles.

    Time Series Analysis

    This course focuses on analyzing temporal data, including forecasting, anomaly detection, and modeling seasonal patterns. Students work with datasets from finance, climate science, and economics to develop models that predict future trends using historical observations.

    Financial Modeling

    Designed for students interested in quantitative finance, this course introduces mathematical models used to evaluate financial assets and markets. It covers derivatives pricing, portfolio optimization, risk management, and algorithmic trading strategies.

    Big Data Technologies

    This course provides hands-on experience with distributed computing frameworks like Apache Hadoop, Spark, Kafka, and Flink. Students learn how to process large volumes of data efficiently using cluster computing and implement scalable analytics pipelines.

    Reinforcement Learning

    Exploring the theory and practice of reinforcement learning algorithms, this course teaches students to build agents that learn optimal behaviors through trial and error. Applications include robotics, game AI, autonomous navigation, and recommendation systems.

    Geospatial Analytics

    This elective focuses on analyzing spatial data using GIS tools and geospatial databases. Students explore mapping techniques, spatial statistics, location-based services, and urban planning applications in smart cities.

    Cybersecurity Analytics

    Combining cybersecurity principles with data analysis techniques, this course teaches students to detect and respond to threats using network logs, user behavior analytics, and intrusion detection systems. It includes real-time incident response simulations and forensic investigations.

    Deep Learning

    This advanced course covers modern architectures in deep learning including recurrent networks, transformers, attention mechanisms, and generative adversarial networks (GANs). Students implement models using TensorFlow and PyTorch for image recognition, text generation, and speech synthesis tasks.

    Data Visualization & Communication

    Teaching students how to effectively present complex data insights through charts, dashboards, and interactive visualizations, this course emphasizes storytelling with data. Tools like Tableau, Power BI, D3.js, and Plotly are introduced for creating compelling narratives from datasets.

    Ethics in Data Science

    This interdisciplinary course explores ethical considerations in data science, including bias in algorithms, privacy concerns, transparency, fairness, and governance. Students examine case studies involving real-world dilemmas such as facial recognition technology, social media manipulation, and predictive policing.

    Project-Based Learning Philosophy

    The Data Analysis program at Birla Institute Of Applied Sciences places significant emphasis on project-based learning to ensure students gain practical experience while applying theoretical concepts. The philosophy centers around fostering innovation, collaboration, and problem-solving abilities through hands-on engagement with real-world datasets.

    Mini-projects are introduced in the third year, where students work individually or in small teams to solve specific analytical challenges. These projects involve defining research questions, gathering and cleaning data, applying appropriate models, interpreting results, and presenting findings to peers and faculty members.

    The final-year capstone project is a comprehensive endeavor that requires students to tackle a complex, open-ended problem in their chosen specialization track. Projects often originate from industry partnerships or faculty research initiatives and may result in publishable papers, patent applications, or startup ventures.

    Faculty mentors play a crucial role in guiding students throughout the project lifecycle. Each student is assigned a mentor based on their interests, background, and career goals. Regular meetings, feedback sessions, and progress reviews ensure that projects stay aligned with academic standards and industry expectations.