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B.Tech in Artificial Intelligence And Machine Learning
Overview
The Artificial Intelligence and Machine Learning program at Anurag University is designed to provide students with a comprehensive understanding of the principles, algorithms, and applications of artificial intelligence and machine learning. The program curriculum covers various topics, including data mining, pattern recognition, natural language processing, deep learning, computer vision, and more. The aim is to equip students with the knowledge and skills needed to develop intelligent systems and algorithms to solve complex real-world problems.
Outcome Based Education
PEO (Programme Educational Objectives)
PEO-1: Graduates will be employable as Artificial Intelligence and Machine Learning professionals in leading industries.
PEO-2: Graduates will analyze and solve real world problems using Artificial Intelligence and Machine Learning knowledge.
PEO-3: Graduates will develop smart sustainable solutions for global and societal challenges.
PEO-4: Graduates will collaborate in multidisciplinary teams with ethics, professionalism, entrepreneurial perspective and lifelong learning.
PO (Program Outcome)
- Engineering Knowledge: Apply knowledge of mathematics, natural science, computing, engineering fundamentals and an engineering specialization as specified in WK1 to WK4 respectively to develop to the solution of complex engineering problems.
- Problem Analysis: Identify, formulate, review research literature and analyze complex engineering problems reaching substantiated conclusions with consideration for sustainable development. (WK1 to WK4)
- Design/Development of Solutions: Design creative solutions for complex engineering problems and design/develop systems/components/processes to meet identified needs with consideration for the public health and safety, whole-life cost, net zero carbon, culture, society and environment as required. (WK5)
- Conduct Investigations of Complex Problems: Conduct investigations of complex engineering problems using research-based knowledge including design of experiments, modelling, analysis & interpretation of data to provide valid conclusions. (WK8).
- Engineering Tool Usage: Create, select and apply appropriate techniques, resources and modern engineering & IT tools, including prediction and modelling recognizing their limitations to solve complex engineering problems. (WK2 and WK6)
- The Engineer and The World: Analyze and evaluate societal and environmental aspects while solving complex engineering problems for its impact on sustainability with reference to economy, health, safety, legal framework, culture and environment. (WK1, WK5, and WK7).
- Ethics: Apply ethical principles and commit to professional ethics, human values, diversity and inclusion; adhere to national & international laws. (WK9)
- Individual and Collaborative Team work: Function effectively as an individual, and as a member or leader in diverse/multi-disciplinary teams.
- Communication: Communicate effectively and inclusively within the engineering community and society at large, such as being able to comprehend and write effective reports and design documentation, make effective presentations considering cultural, language, and learning differences
- Project Management and Finance: Apply knowledge and understanding of engineering management principles and economic decision-making and apply these to one’s own work, as a member and leader in a team, and to manage projects and in multidisciplinary environments.
- Life-Long Learning: Recognize the need for, and have the preparation and ability for i) independent and life-long learning ii) adaptability to new and emerging technologies and iii) critical thinking in the broadest context of technological change. (WK8)
PSO (Program Specific Outcome)
PSO-1: Apply fundamentals of mathematics, statistics and algorithms to analyze and develop Artificial Intelligence and machine learning models.
PSO-2: Design, implement and deploy intelligent systems using machine learning, deep learning, NLP and data analytics for real-world applications.
PSO-3: Demonstrate research and innovation skills to develop Artificial Intelligence and Machine Learning based products, supporting entrepreneurship and technological advancement.
Faculty List
| S.NO | Name of the Faculty | Highest Qualification | Designation |
| 1 | Prof. V. V. S. S. S. Balaram | Ph.D | Professor |
| 2 | Dr. K. Basava Raju | Ph.D | Professor |
| 3 | Dr. Abdul Ahad | Ph.D | Associate Professor |
| 4 | Dr. M. Trupthi | Ph.D | Associate Professor |
| 5 | Dr. L. Sridhara Rao | Ph.D | Associate Professor |
| 6 | Dr.Chenchu Sreedhar Kakarla | Ph.D | Associate Professor |
| 7 | Dr Udaya Kumar Addanki | Ph.D | Assistant Professor |
| 8 | Dr. Bhallamudi Ravikrishna | Ph.D | Assistant Professor |
| 11 | Mr G Victor Daniel | M.Tech | Assistant Professor |
| 18 | Mr. N. Raghu | M.Tech | Assistant Professor |
| 12 | Mrs T. Neetha | M.Tech | Assistant Professor |
| 10 | Mr. A. Ram Babu | M.Tech | Assistant Professor |
| 9 | Mr. Sridhar Reddy Gogu | M.Tech | Assistant Professor |
| 14 | Mrs. P.Archana | M.Tech | Assistant Professor |
| 13 | Mrs. Srilatha Puli | M.Tech | Assistant Professor |
| 16 | Mr. M. Naga Raju | M.Tech | Assistant Professor |
| 15 | Mr. Rajesh Myakala | M.Tech | Assistant Professor |
| 17 | Mrs. P Vandana | M.Tech | Assistant Professor |