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    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Data Science

    Plaksha University, Mohali
    Duration
    4 Years
    Data Science UG OFFLINE

    Duration

    4 Years

    Data Science

    Plaksha University, Mohali
    Duration
    Apply

    Fees

    ₹30,00,000

    Placement

    93.0%

    Avg Package

    ₹5,20,000

    Highest Package

    ₹8,50,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Data Science
    UG
    OFFLINE

    Fees

    ₹30,00,000

    Placement

    93.0%

    Avg Package

    ₹5,20,000

    Highest Package

    ₹8,50,000

    Seats

    100

    Students

    1,200

    ApplyCollege

    Seats

    100

    Students

    1,200

    Curriculum

    Comprehensive Course Structure

    The Data Science curriculum at Plaksha University Mohali is meticulously designed to provide a balanced blend of foundational knowledge and advanced specialization. The program spans eight semesters, with each semester structured around core courses, departmental electives, science electives, and laboratory sessions.

    SemesterCourse CodeCourse TitleCredits (L-T-P-C)Prerequisites
    1DS101Introduction to Programming3-1-0-4-
    1DS102Calculus I3-1-0-4-
    1DS103Statistics for Data Science3-1-0-4-
    1DS104Data Structures and Algorithms3-1-0-4DS101
    2DS201Linear Algebra and Probability Theory3-1-0-4DS102
    2DS202Database Systems3-1-0-4DS101
    2DS203Operating Systems3-1-0-4DS101
    2DS204Computer Architecture3-1-0-4DS101
    3DS301Machine Learning Fundamentals3-1-0-4DS201
    3DS302Data Mining Techniques3-1-0-4DS202
    3DS303Statistical Inference and Modeling3-1-0-4DS103
    3DS304Deep Learning3-1-0-4DS301
    4DS401Advanced Machine Learning3-1-0-4DS301
    4DS402Natural Language Processing3-1-0-4DS301
    4DS403Computer Vision3-1-0-4DS301
    4DS404Time Series Analysis3-1-0-4DS303
    5DS501Reinforcement Learning3-1-0-4DS401
    5DS502Big Data Analytics3-1-0-4DS202
    5DS503Data Visualization and Storytelling3-1-0-4DS103
    5DS504Privacy and Security in Data Science3-1-0-4DS202
    6DS601Quantitative Finance3-1-0-4DS303
    6DS602Healthcare Analytics3-1-0-4DS503
    6DS603Sustainability Analytics3-1-0-4DS502
    6DS604Entrepreneurship in Data Science3-1-0-4-
    7DS701Capstone Project I3-1-0-4DS501
    7DS702Capstone Project II3-1-0-4DS701
    8DS801Research Internship3-1-0-4-

    Advanced Departmental Electives

    The department offers a range of advanced elective courses that allow students to specialize in emerging areas within data science. These courses are taught by leading faculty members and reflect the latest developments in the field.

    Deep Learning with TensorFlow

    This course delves into neural network architectures, convolutional networks, recurrent networks, and transformer models using TensorFlow. Students learn how to implement complex deep learning pipelines from scratch and optimize performance on GPUs.

    Natural Language Processing

    Students explore text processing techniques, sentiment analysis, language modeling, and machine translation. The course includes hands-on labs with tools like spaCy, NLTK, and Hugging Face Transformers.

    Computer Vision

    This advanced course covers image classification, object detection, segmentation, and generative adversarial networks (GANs). Students gain practical experience working with datasets like ImageNet and COCO using PyTorch and OpenCV.

    Time Series Analysis

    Focusing on forecasting methods for temporal data, this course explores ARIMA models, exponential smoothing, and state-space models. Students apply these techniques to real-world financial and environmental datasets.

    Reinforcement Learning

    This course introduces Markov decision processes, Q-learning, policy gradients, and actor-critic methods. Practical applications include robotics control, game AI, and autonomous vehicle navigation.

    Big Data Analytics

    Students learn to process large-scale datasets using Hadoop ecosystem, Spark, Kafka, and Databricks. The course emphasizes distributed computing principles and scalable analytics solutions.

    Data Visualization and Storytelling

    This course teaches students how to create compelling visualizations using Tableau, Power BI, and D3.js. Emphasis is placed on effective communication of insights to diverse audiences through interactive dashboards and reports.

    Privacy and Security in Data Science

    Students examine data anonymization techniques, differential privacy, secure multi-party computation, and ethical considerations in AI development. Case studies from healthcare and finance sectors illustrate real-world challenges.

    Quantitative Finance

    This course applies mathematical modeling to financial markets, covering derivatives pricing, portfolio optimization, risk management, and algorithmic trading strategies. Students use Python libraries like QuantLib and Bloomberg terminals.

    Healthcare Analytics

    Students study applications of data science in clinical research, drug discovery, electronic health records analysis, and patient outcome prediction. Collaborations with hospitals provide real-world context for learning.

    Sustainability Analytics

    This interdisciplinary course combines environmental science with data analytics to tackle sustainability challenges such as carbon footprint tracking, renewable energy forecasting, and climate impact modeling.

    Project-Based Learning Philosophy

    The department believes that project-based learning is essential for developing practical skills and deepening conceptual understanding. Students begin working on individual projects from their second year, building upon foundational knowledge gained in core courses.

    Mini-projects are assigned at the end of each semester, focusing on specific aspects of data science methodologies such as exploratory data analysis, model selection, and evaluation metrics. These projects are assessed through peer review processes and faculty feedback.

    The final-year capstone project represents the culmination of a student's academic journey. Working in teams or individually, students select real-world problems from industry partners or self-initiated research questions. Projects are supervised by faculty mentors who guide students through data collection, modeling, implementation, and presentation stages.

    Each project must demonstrate proficiency in statistical reasoning, computational methods, domain-specific knowledge, and ethical considerations. Students present their findings to an external panel comprising industry experts and academic faculty, ensuring alignment with professional standards.