Coimbatore
Undergraduate Program

Computer Science and Engineering with AI&ML

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Building strong foundations in Artificial Intelligence and Machine Learning for future-ready technology careers

B.E. Computer Science and Engineering (Artificial Intelligence and Machine Learning)

Engineering for Data-heavy Intelligence Models

KiTE’s B.E. program in Computer Science and Engineering with a specialization in Artificial Intelligence and Machine Learning is a transformative computing discipline that drives intelligent automation, autonomous systems, and advanced information processing across global industries. Built on Machine Learning models and data-driven algorithms, AI systems are designed to analyze large-scale data using modern computing infrastructure to solve complex, real-world problems and accelerate innovation.

This undergraduate program builds a strong foundation in core Computer Science concepts while integrating advanced AI and ML technologies. The program provides students with early exposure to hands-on AI and ML applications, preparing them to engage with one of the most competitive and rapidly evolving technology domains globally.

Program Overview

Program Type
Undergraduate
Duration
4 Years (8 Semesters)
Department
Department of Artificial Intelligence & Machine Learning
Program Status
Autonomous (Affiliated to Anna University)
Credits Required
169 (Choice-Based Credit System)
Core Courses:
14 Professional Core Papers
Elective Courses
11 Elective Papers

Why B.E. Computer Science and Engineering with AI&ML at KGiSL Institute of Technology?

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Industry-aligned autonomous curriculum
Future-ready curriculum designed by academic and industry experts with an emphasis on core tech skills, professional development, and career growth.
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Flipped classrooms with integrated labs
Innovative project-based experiential learning with School of Innovation labs for Cloud Computing, AI, Data Analytics, Blockchain, Web 3.0, Fullstack Development, and Cybersecurity.
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Active industry internships and projects
Opportunity to work alongside industry professionals through guest lectures, workshops, and real-time industry projects.
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KGiSL campus placement program
Direct interviews with industry partners and recruiters, supported by dedicated career counsellors, placement trainers, and coordinators.

Placements and Achievements

The Department of Artificial Intelligence & Machine Learning maintains a strong track record of placements in core IT, SAAS, banking, tech, automotive and AI-data companies. Graduates are consistently recruited by major multinational corporations and leading Indian IT services firms.

Top Placements - Campus Recruitment

No placements found.

Vision and Mission

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Vision

To evolve as a Prominent Department in producing Highly Competent Computer Science and Engineering Graduates contributing to the welfare of the Industry and Society at large.

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Mission

To empower future mechanical engineers through effective pedagogy, emphasizing problem-solving, innovation, and creativity in addressing engineering challenges.
To provide opportunities for faculty to engage in ongoing education, equipping them with the latest advancements in mechanical domain.
To establish a dynamic learning environment that contributes to the advancement of mechanical engineering.
To prepare industry-ready graduates, by promoting collaborative research via experiential learning, internships, and projects.
To promote lifelong learning, ethics, and societal engagement, by encouraging students' co-curricular and extra-curricular participation.

Objectives and Outcomes

Program Educational Objectives

PEO1

Graduates will become competent AI and ML professionals who apply strong foundations in computer science and modern AI technologies to design, develop, and deploy secure, efficient, and scalable software and intelligent systems for industry and society.

PEO2

Graduates will pursue higher studies, research, and continuous professional development, contributing innovative and ethical AI solutions through collaboration with academia, industry, and research organizations to address emerging global challenges.

PEO3

Graduates will demonstrate leadership, teamwork, communication, and soft skills while upholding human values, ethical responsibility, and social commitment, thereby driving the responsible and trustworthy adoption of AI in diverse domains.

Program Outcomes

PO1

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Engineering knowledge

Apply knowledge of mathematics, natural science, computing, engineering fundamentals, and an engineering specialization, as specified in WK1 to WK4 respectively, to develop solutions for complex engineering problems.

PO2

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Problem analysis

Identify, formulate, review research literature, and analyze complex engineering problems, reaching substantiated conclusions with consideration for sustainable development (WK1 to WK4).

PO3

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Design / development of solutions

Design creative solutions for complex engineering problems and design/develop systems, components, or processes to meet identified needs, considering public health and safety, whole-life cost, net zero carbon, culture, society, and environment as required (WK5).

PO4

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Conduct investigations of complex problems

Conduct investigations of complex engineering problems using research-based knowledge, including design of experiments, modelling, analysis, and interpretation of data, to provide valid conclusions (WK8).

PO5

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Engineering tool usage

Create, select, and apply appropriate techniques, resources, and modern engineering and IT tools, including prediction and modelling, recognizing their limitations to solve complex engineering problems (WK2 and WK6).

PO6

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The engineer and the world

Analyze and evaluate societal and environmental aspects while solving complex engineering problems, considering their impact on sustainability, economy, health, safety, legal framework, culture, and environment (WK1, WK5, and WK7).

PO7

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Ethics

Apply ethical principles and commit to professional ethics, human values, diversity, and inclusion; adhere to national and international laws (WK9).

PO8

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Individual and collaborative teamwork

Function effectively as an individual, and as a member or leader in diverse, multidisciplinary teams.

PO9

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Communication

Communicate effectively and inclusively within the engineering community and society at large, including comprehending and writing effective reports and design documentation, and making presentations while considering cultural, language, and learning differences.

PO10

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Project management and finance

Apply knowledge and understanding of engineering management principles and economic decision-making to one’s own work, as a member and leader in a team, and to manage projects in multidisciplinary environments.

PO11

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Life-long learning

Recognize the need for, and have the preparation and ability for:

independent and life-long learning,
adaptability to new and emerging technologies
critical thinking in the broadest context of technological change (WK8).

Program Specific Outcomes

PSO1

Apply fundamental concepts of computer science including data structures, algorithms, database systems, computer networks, and object-oriented design to develop robust and efficient software solutions.

PSO2

Design and develop AI-based solutions using techniques in Artificial Intelligence, Machine Learning, Deep Learning, and Data Science, with a focus on integrating security to solve real-world problems

PSO3

Demonstrate responsible AI practices by integrating ethical principles, human values, security awareness, and interdisciplinary knowledge to develop trustworthy and socially beneficial AI solutions.

How to Apply?

Candidates seeking admission to the B.E. CSE (AI&ML) degree course are required to submit the following certificates:

Transfer Certificate – original and 3 photocopies.
HSC / 12th Mark Statements – original and 3 attested photocopies.
SSLC / 10th Mark Statements – original and 3 attested photocopies.
TNEA Allotment Order and Counselling Call Letter – original and 3 attested photocopies.
Conduct Certificate – original and 3 attested photocopies.
Community Certificate – original and 3 attested photocopies.
Migration Certificate – original and 3 attested photocopies (for candidates from boards outside Tamil Nadu State).
Passport size Photograph – 6 Nos.