About Us
Shaping future professionals in Electrical Engineering
The Department of Electrical Engineering at SHEAT Polytechnic is committed to providing quality technical education and practical training to prepare students for successful careers in the electrical industry. The department focuses on developing strong fundamentals in electrical systems, power generation, transmission and distribution, electrical machines, control systems, and industrial applications. Through a combination of theoretical learning and hands-on experience, students gain the skills required to meet the demands of modern industries and technological advancements. Currently, the sanctioned intake stands at 30 students for Diploma in Electrical Engineering.
Faculty Excellence
The department is supported by qualified and dedicated faculty members who guide students in academic learning, practical training, and professional development. The faculty continuously updates teaching methodologies through workshops, Faculty Development Programs (FDPs), seminars, and industry interactions to ensure students receive contemporary technical knowledge and industry-relevant skills.
Infrastructure & Facilities
- Smart classrooms equipped with modern teaching and learning tools.
- Well-equipped Electrical Machines Laboratory.
- Basic Electrical Engineering Laboratory.
- Power Systems and Control Systems Laboratory.
- Measurement and Instrumentation Laboratory.
- Computer facilities for simulation and technical applications.
Industry Interaction & Career Building
The Department of Electrical Engineering emphasizes practical exposure and industry engagement to bridge the gap between classroom learning and professional practice. Through industrial interactions and skill development initiatives, students gain valuable insights into current technologies and workplace requirements.
- Industry-Institute Collaborations: Partnerships with electrical utilities, manufacturing industries, power distribution companies, and automation firms for technical exposure and knowledge sharing.
- Guest Lectures & Expert Talks: Industry experts and professionals regularly interact with students to discuss emerging technologies, industry trends, and career opportunities.
- Industrial Visits & Training: Educational visits to power plants, substations, manufacturing units, and industrial facilities provide practical understanding of electrical systems and operations.
- Internships & Skill Development: Opportunities for industrial training and practical exposure help students develop technical competencies and workplace readiness.
Career Building Initiatives
- Placement Preparation: Training programs focused on aptitude, technical skills, communication, and interview preparation.
- Higher Education Guidance: Support and counseling for students interested in pursuing advanced diploma or engineering degree programs.
- Technical Skill Enhancement: Workshops and certification programs in emerging fields such as renewable energy, industrial automation, electrical maintenance, and smart power systems.
The department's commitment to academic excellence, practical training, and industry engagement ensures that graduates emerge as competent diploma engineers capable of contributing effectively to the electrical and allied industries while pursuing lifelong learning and professional growth.
Vision & Mission
Guiding principles of the Department of Computer Science & Engineering (Data Science)
Vision
To emerge as a center of excellence in Data Science education and research, producing innovative, ethical, and industry-ready professionals who contribute effectively to the advancement of technology and society.
Mission
- M1: To impart high-quality education in Data Science and related technologies with a focus on analytics, artificial intelligence, and big data applications.
- M2: To promote innovation, interdisciplinary research, and problem-solving skills through practical exposure and project-based learning.
- M3: To foster ethical values, leadership qualities, and lifelong learning in students to meet global professional challenges.
PEOs, POs & PSOs
Defining goals and outcomes for the Department of Computer Science & Engineering (Data Science)
Program Educational Objectives (PEOs)
- PEO1: To equip students with a solid foundation in Data Science principles, programming, and statistical analysis for solving real-world problems.
- PEO2: To develop skilled professionals capable of analyzing, interpreting, and managing large-scale datasets for data-driven decision-making.
- PEO3: To encourage innovation and entrepreneurship in emerging areas of Artificial Intelligence, Machine Learning, and Big Data.
- PEO4: To instill professional ethics, teamwork, communication, and leadership skills essential for global collaboration.
- PEO5: To promote lifelong learning and adaptability to evolving technologies and industrial trends.
Program Outcomes (POs)
- PO1: Apply the knowledge of mathematics, science, and computing fundamentals to solve complex engineering problems.
- PO2: Identify, formulate, and analyze data-driven problems using statistical and machine learning methods.
- PO3: Design and develop effective data models, algorithms, and systems to meet real-world requirements.
- PO4: Conduct experiments, analyze data, and draw valid conclusions using modern tools and techniques.
- PO5: Use modern software tools, programming frameworks, and cloud platforms for intelligent data analysis.
- PO6: Apply reasoning informed by contextual knowledge to assess societal, legal, and ethical issues in data use.
- PO7: Understand the impact of technology and data-driven decisions on the environment and society.
- PO8: Demonstrate ethical responsibility and data integrity in professional practice.
- PO9: Function effectively as an individual, leader, and team member in multidisciplinary environments.
- PO10: Communicate effectively through technical documentation, reports, and presentations.
- PO11: Apply management principles to projects involving data analytics and research initiatives.
- PO12: Engage in lifelong learning to keep pace with advances in AI, ML, and Data Science technologies.
Program Specific Outcomes (PSOs)
- PSO1: Ability to apply data analytics, statistical, and computational methods to extract meaningful insights from large datasets.
- PSO2: Ability to design intelligent systems and predictive models using machine learning and deep learning techniques.
- PSO3: Ability to use emerging tools and technologies to solve interdisciplinary data-driven challenges effectively.
Course Curriculum
Comprehensive and future-ready curriculum aligned with AKTU
The curriculum of the Department of Computer Science & Engineering (Data Science) is designed to blend computer science fundamentals with data analytics, artificial intelligence, and machine learning. Aligned with Dr. A.P.J. Abdul Kalam Technical University (AKTU), the curriculum prepares students for careers in data analysis, AI-based applications, and research.
Curriculum Details
The B.Tech in Data Science program provides:
- Comprehensive coverage of programming, statistics, and mathematics for data science.
- Courses in AI, ML, Big Data, Cloud Computing, and Business Intelligence.
- Hands-on projects using Python, R, TensorFlow, and data visualization tools.
- Mandatory internships and research-oriented projects for real-world exposure.
| S.No | Course | Branch | Year | Download |
|---|---|---|---|---|
| 1 | B.Tech | Data Science | 1st Year | Syllabus of 1st Year |
| 2 | B.Tech | Data Science | 2nd Year | Syllabus of 2nd Year |
| 3 | B.Tech | Data Science | 3rd Year | Syllabus of 3rd Year |
| 4 | B.Tech | Data Science | 4th Year | Syllabus of 4th Year |
Faculty
Experienced faculty leading innovation in Data Science
The Department of Computer Science & Engineering (Data Science) boasts highly qualified faculty members committed to delivering quality education and research in emerging areas of Data Science, AI, and Analytics. Faculty members actively contribute to academic research, projects, and professional development programs.
Faculty Details
| S.No | Name | Designation | Qualification |
|---|---|---|---|
| 1 | Mr. Gunjan Mishra | Head of Department | M.Tech |
| 2 | Mr. Alok Singh | Assistant Professor | M.Tech |
| 3 | Mr. Gaurav Choubey | Assistant Professor | M.Tech |
Laboratories
Hands-on data-driven learning with advanced labs
The Department of Computer Science & Engineering (Data Science) provides modern laboratories designed to enhance students’ practical skills and analytical thinking. Each lab supports a wide range of experiments, simulations, and data analysis activities.
Data Science Laboratories
1. Data Analytics & Visualization Lab
- Equipped with R, Python, Power BI, and Tableau tools.
- Students learn data cleaning, statistical modeling, and visualization techniques.
2. Machine Learning & Artificial Intelligence Lab
- Supports TensorFlow, PyTorch, Keras, and Scikit-learn frameworks.
- Focus on supervised, unsupervised, and deep learning model development.
3. Big Data & Cloud Computing Lab
- Hands-on training with Hadoop, Spark, and cloud platforms like AWS and Google Cloud.
- Students gain skills in scalable data storage, processing, and analytics.
4. Programming & Database Systems Lab
- Equipped with SQL, NoSQL, and Python-based database tools.
- Focus on backend data management, query optimization, and application integration.
5. Research & Innovation Lab
- Encourages student projects, innovation challenges, and startup incubation.
- Facilitates interdisciplinary research in AI, IoT, and automation.
Academic Calendar
Stay updated with academic schedules and timelines
Stay updated with the official academic schedules. Download the AKTU Academic Calendar 2025-26 and SHEAT Academic Calendar 2025-26 below.
Academic Calendar Details
| S.No | Calendar | Session | Download |
|---|---|---|---|
| 1 | AKTU Academic Calendar | 2025-26 | Download |
| 2 | SHEAT Academic Calendar | 2025-26 | Download |