Whatsapp

B. Tech. in Artificial Intelligence & Machine Learning

Overview

The rapid expansion of Artificial Intelligence across industries has created a fundamental shift in how software, data, and decision systems are built. However, most engineering graduates are still trained to treat AI as isolated model-building exercises, without understanding how these models behave once deployed in real, constrained, and continuously evolving environments. This program exists to address that gap by developing engineers who can build AI systems that function reliably in production on a scale.

To achieve this, the program is structured around the idea that true AI engineering requires more than algorithms, it requires mastery over data systems, distributed computation, model behavior under real-world constraints, and end-to-end deployment pipelines. Students are progressively trained through a tightly integrated pathway that begins with mathematical and computational foundations and advances into machine learning systems, deep learning architectures, and generative AI models that operate at industrial scale.

Learning is reinforced through continuous exposure to real infrastructure environments, including high-performance GPU systems, enabling students to work with large-scale models rather than simplified academic simulations. Alongside technical depth, the program emphasizes system thinking, where students learn to design AI solutions that balance accuracy, scalability, latency, cost, and ethical responsibility.

By the end of the program, learners are prepared not only to develop AI models, but to engineer complete AI systems that can be deployed, monitored, and improved in real-world production ecosystems across industries.

Duration

4 years (8 semesters), including elective projects, internships, and research components

Commence of the course


Course Duration

4 Years


Mode of Study

Eligibility


Passed 10+2 or equivalent from a recognized Board / Council with a minimum of 50% marks (45% for SC/ST) in Physics & Mathematics as compulsory subjects along with one of the Chemistry / Biotechnology / Biology / Technical Vocational Subjects.

Valid score in JEE (Main / Advanced), AUQET (Alliance University QUASAR Entrance Test) or Karnataka State-Level entrance examinations.


Key Features

Access to industrial-scale GPU infrastructure (NVIDIA DGX H200-class systems)

Training in billion-parameter model development and fine-tuning

End-to-end AI lifecycle: data engineering, modeling, deployment, monitoring

Hands-on experience with NLP, Computer Vision, and Generative AI

MLOps, distributed systems, and scalable AI engineering

Exposure to LLMs, transformers, and multimodal AI systems

Embedded responsible AI, ethics, and governance framework

Industry-aligned capstone projects and research exposure

Curriculum Architecture

Semester Stage Key Competencies
Semester 1-2 Foundation Calculus, statistics, Python, data structures, logic, biology for engineers, and cognitive science
Semester 3-4 Systems Core ML (supervised and unsupervised), deep learning and neural networks, embedded AI, design thinking, public policy and ethics
Semester 5-6 AI Specialisation NLP, computer vision, representation learning, MLOps, distributed computing, responsible AI, end-to-end AI pipeline
Semester 7-8 Generative AI and Capstone Transformer architectures, LLMs, multimodal GenAI, GenAI deployment, scalable AI systems, HPC, Grand Capstone

Program Structure

Career Pathways and Graduate Outcomes

Industry Roles
  • Robotics Engineer (Industrial / Medical / Service)
  • Autonomous Systems Developer
  • AI-Robotics Integration Specialist
  • R & D at aerospace, defence, or automotive firms
  • Startup founder in robotics and automation
Sectors and Applications
  • Smart manufacturing and Industry 4.0
  • Autonomous vehicles and urban mobility
  • Surgical and rehabilitation robotics
  • Drone systems and aerial logistics
  • Space and defence robotics

Contact for Admissions

ALLIANCE UNIVERSITY - QUANTUM AI SCHOOL FOR ADVANCED RESEARCH

SR. No. 2/1C, Near Infosys Drive Gate No.6, Electronic City Phase 1, Bangalore 560 100