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    Scholarships & exams

    support@collegese.com
    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Bachelor Of Science

    Sri Subbaiah Degree College Anantapur
    Duration
    4 Years
    Bachelor Of Science UG OFFLINE

    Duration

    4 Years

    Bachelor Of Science

    Sri Subbaiah Degree College Anantapur
    Duration
    Apply

    Fees

    ₹1,50,000

    Placement

    92.0%

    Avg Package

    ₹6,50,000

    Highest Package

    ₹12,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Bachelor Of Science
    UG
    OFFLINE

    Fees

    ₹1,50,000

    Placement

    92.0%

    Avg Package

    ₹6,50,000

    Highest Package

    ₹12,00,000

    Seats

    120

    Students

    300

    ApplyCollege

    Seats

    120

    Students

    300

    Curriculum

    Comprehensive Course Listing

    SemesterCourse CodeCourse TitleCredit Structure (L-T-P-C)Pre-requisites
    1SC101General Chemistry3-1-0-4-
    1SC102General Physics3-1-0-4-
    1SC103General Biology3-1-0-4-
    1SC104Mathematics I3-1-0-4-
    1SC105Chemistry Lab0-0-3-1-
    1SC106Physics Lab0-0-3-1-
    1SC107Biology Lab0-0-3-1-
    1SC108Mathematics Lab0-0-3-1-
    2SC201Organic Chemistry3-1-0-4SC101
    2SC202Cell Biology3-1-0-4SC103
    2SC203Thermodynamics3-1-0-4SC102
    2SC204Calculus3-1-0-4SC104
    2SC205Organic Chemistry Lab0-0-3-1SC101
    2SC206Cell Biology Lab0-0-3-1SC103
    2SC207Thermodynamics Lab0-0-3-1SC102
    2SC208Calculus Lab0-0-3-1SC104
    3SC301Protein Chemistry3-1-0-4SC201
    3SC302Environmental Impact Assessment3-1-0-4SC203
    3SC303Quantum Physics3-1-0-4SC203
    3SC304Data Analytics3-1-0-4SC204
    3SC305Protein Chemistry Lab0-0-3-1SC201
    3SC306Environmental Lab0-0-3-1SC203
    3SC307Quantum Physics Lab0-0-3-1SC203
    3SC308Data Analytics Lab0-0-3-1SC204
    4SC401Bioinformatics3-1-0-4SC301
    4SC402Marine Ecology3-1-0-4SC302
    4SC403Nanotechnology3-1-0-4SC303
    4SC404Scientific Writing3-1-0-4SC304
    4SC405Bioinformatics Lab0-0-3-1SC301
    4SC406Marine Ecology Lab0-0-3-1SC302
    4SC407Nanotechnology Lab0-0-3-1SC303
    4SC408Scientific Writing Lab0-0-3-1SC304
    5SC501Advanced Biochemistry3-1-0-4SC401
    5SC502Climate Change and Sustainability3-1-0-4SC402
    5SC503Computational Physics3-1-0-4SC403
    5SC504Statistical Modeling3-1-0-4SC404
    5SC505Advanced Biochemistry Lab0-0-3-1SC401
    5SC506Climate Change Lab0-0-3-1SC402
    5SC507Computational Physics Lab0-0-3-1SC403
    5SC508Statistical Modeling Lab0-0-3-1SC404
    6SC601Drug Design3-1-0-4SC501
    6SC602Conservation Biology3-1-0-4SC502
    6SC603Quantum Computing3-1-0-4SC503
    6SC604Machine Learning3-1-0-4SC504
    6SC605Drug Design Lab0-0-3-1SC501
    6SC606Conservation Biology Lab0-0-3-1SC502
    6SC607Quantum Computing Lab0-0-3-1SC503
    6SC608Machine Learning Lab0-0-3-1SC504
    7SC701Advanced Materials3-1-0-4SC601
    7SC702Marine Conservation3-1-0-4SC602
    7SC703Neural Networks3-1-0-4SC603
    7SC704Scientific Research Methods3-1-0-4SC604
    7SC705Advanced Materials Lab0-0-3-1SC601
    7SC706Marine Conservation Lab0-0-3-1SC602
    7SC707Neural Networks Lab0-0-3-1SC603
    7SC708Scientific Research Lab0-0-3-1SC604
    8SC801Capstone Project3-1-0-4SC701
    8SC802Research Thesis3-1-0-4SC702
    8SC803Scientific Communication3-1-0-4SC703
    8SC804Professional Development3-1-0-4SC704
    8SC805Capstone Project Lab0-0-3-1SC701
    8SC806Research Thesis Lab0-0-3-1SC702
    8SC807Scientific Communication Lab0-0-3-1SC703
    8SC808Professional Development Lab0-0-3-1SC704

    Advanced Departmental Elective Courses

    Advanced departmental elective courses in the Bachelor of Science program at Sri Subbaiah Degree College Anantapur are designed to provide students with specialized knowledge and practical skills in their chosen fields. These courses are offered in the later semesters and are tailored to meet the needs of students who wish to pursue advanced research or professional careers in specific areas of science.

    The course 'Advanced Biochemistry' delves into the molecular mechanisms of biological processes, focusing on enzyme kinetics, protein structure-function relationships, and metabolic pathways. Students engage in laboratory experiments that involve protein purification, enzyme assay techniques, and structural analysis using advanced spectroscopic methods. The course emphasizes the application of biochemistry in drug design and biotechnology, preparing students for careers in pharmaceutical and biotech industries.

    'Climate Change and Sustainability' explores the scientific, social, and economic dimensions of climate change. Students analyze climate data, assess environmental impacts, and develop strategies for sustainable development. The course includes fieldwork and research projects that address real-world challenges such as carbon emissions, renewable energy, and ecosystem conservation. This course is particularly relevant for students interested in environmental science, policy development, and sustainability consulting.

    'Computational Physics' introduces students to numerical methods and computational modeling in physics. The course covers topics such as numerical integration, Monte Carlo simulations, and finite element methods. Students use programming languages such as Python and MATLAB to solve complex physics problems and simulate physical phenomena. This course is ideal for students who wish to pursue careers in computational research, data analysis, or engineering.

    'Statistical Modeling' focuses on the application of statistical techniques in scientific research. Students learn to design experiments, analyze data, and interpret results using statistical software such as R and SPSS. The course covers probability distributions, hypothesis testing, regression analysis, and time series modeling. This course is essential for students interested in data science, research, and analytics.

    'Drug Design' explores the principles and techniques of rational drug design and development. Students study molecular docking, structure-based drug design, and pharmacophore modeling. The course includes laboratory sessions where students synthesize and test potential drug compounds. This course is ideal for students who wish to pursue careers in pharmaceutical research, drug development, or medicinal chemistry.

    'Conservation Biology' examines the principles and practices of biodiversity conservation and ecosystem management. Students learn about endangered species, habitat restoration, and conservation policies. The course includes fieldwork and research projects that address issues such as deforestation, wildlife protection, and sustainable agriculture. This course is relevant for students interested in environmental conservation, wildlife management, and policy development.

    'Quantum Computing' introduces students to the principles and applications of quantum computing. The course covers quantum algorithms, quantum error correction, and quantum information theory. Students gain hands-on experience with quantum computing platforms and programming languages such as Qiskit and Cirq. This course is ideal for students who wish to pursue careers in quantum research, cybersecurity, or advanced computing.

    'Machine Learning' explores the algorithms and techniques used in artificial intelligence and data science. Students learn about supervised and unsupervised learning, neural networks, and deep learning. The course includes practical projects where students develop machine learning models using Python and TensorFlow. This course is essential for students interested in AI research, data science, or software development.

    'Advanced Materials' focuses on the structure, properties, and applications of advanced materials. Students study nanomaterials, composite materials, and smart materials. The course includes laboratory sessions where students synthesize and characterize materials using advanced techniques such as X-ray diffraction and electron microscopy. This course is ideal for students who wish to pursue careers in materials science, engineering, or research.

    'Neural Networks' explores the architecture and applications of artificial neural networks in scientific computing. Students learn about deep learning, convolutional neural networks, and recurrent neural networks. The course includes practical projects where students implement neural network models using Python and TensorFlow. This course is relevant for students interested in AI research, data science, or computational biology.

    Project-Based Learning Philosophy

    The department's philosophy on project-based learning is rooted in the belief that real-world problem-solving is essential for developing scientific expertise and innovation. Project-based learning is integrated throughout the curriculum to provide students with opportunities to apply theoretical knowledge to practical challenges.

    Mini-projects are mandatory components of the program, beginning in the second year. These projects are designed to be interdisciplinary, allowing students to explore connections between different scientific disciplines. Students work in teams to investigate a specific problem, conduct research, and develop solutions. The projects are evaluated based on criteria such as scientific rigor, creativity, presentation skills, and teamwork.

    The final-year thesis/capstone project is a significant component of the program. Students select a research topic in consultation with a faculty mentor and conduct an in-depth investigation. The project involves literature review, experimental design, data collection, and analysis. Students present their findings in a written thesis and an oral presentation. The capstone project is evaluated by a panel of faculty members and is a requirement for graduation.

    Project selection is guided by student interests, faculty expertise, and industry needs. Students are encouraged to propose their own research ideas or to work on projects suggested by faculty members. The department provides resources and support for project development, including access to laboratories, equipment, and research databases.

    Faculty mentors play a crucial role in guiding students through the project process. They provide expertise, feedback, and encouragement throughout the project lifecycle. The department maintains a mentorship program that pairs students with faculty members based on their research interests and career aspirations.