Puranam Revanth Kumar | Artificial Intelligence and Machine Learning | Best Researcher Award

Dr.Puranam Revanth Kumar | Artificial Intelligence and Machine Learning | Best Researcher Award

Assistant Professor Malla Reddy University, Hyderabad, India.Β 

Dr. Puranam Revanth Kumar is an Assistant Professor at Malla Reddy University, Hyderabad, specializing in Artificial Intelligence and Machine Learning. His research focuses on image processing, deep learning, and biomedical imaging, with significant contributions to neuroimaging. He holds a Ph.D. in Electronics and Communication Engineering from ICFAI University, Hyderabad.

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πŸ“š Education

  • Ph.D., Electronics and Communication Engineering, ICFAI University, Hyderabad, India, 2019-2024.
  • M.Tech, Control and Instrumentation, AMRITA University, Coimbatore, India, 2017-2019.
  • B.Tech, Electronics and Instrumentation, GITAM University, Hyderabad, India, 2012-2016.

πŸ‘¨β€πŸ’Ό Experience

  • Assistant Professor, Department of Artificial Intelligence and Machine Learning, Malla Reddy University, Hyderabad, India (2024-present).
  • LabVIEW Software Trainee, Optomech Engineers Pvt. Ltd., Hyderabad, India (2018-2019).

πŸ” Research Interests

Dr. Kumar’s research interests include image processing, deep learning, machine learning, neuroimaging, biomedical imaging, and artificial intelligence applications in healthcare.

πŸ† Award

  • Deep Learning Award, NPTEL.
  • Machine Learning Award, Coursera.
  • MATLAB on-ramp Award, MathWorks.

πŸ“„ Publications

Ms. Kumi Rani – Machine Learning – Best Researcher Award

Ms. Kumi Rani - Machine Learning - Best Researcher Award

Indian Institute of Technology BHU, Varanasi - India

Professional Profiles

Early Academic Pursuits:

Kumi Rani's academic journey began with a passion for Computer Science and Engineering at the prestigious Indian Institute of Technology (IIT) BHU, Varanasi. During her early academic pursuits, she immersed herself in a challenging curriculum, laying the foundation for a robust understanding of computational sciences. The rigorous coursework at IIT BHU introduced her to a diverse range of subjects, including Artificial Intelligence, Neural Networks, Computer Graphics, and Mathematical Modeling.

Professional Endeavors:

Post her academic journey, Kumi Rani transitioned into the realm of academia. She served as an Assistant Professor at Sharda University, Greater Noida, where she contributed to the Computer Science and Engineering department. Subsequently, she expanded her academic footprint to include the Mathematics department at Shree DKV Science and Arts College, Jamnagar. This versatility showcased her ability to navigate and contribute to different facets of academia.

Contributions and Research Focus:

Kumi Rani's contributions in academia extend to her technical skills and her research focus. Proficient in operating systems such as Windows Vista/XP/Linux and mathematical software like Matlab R2009a, she demonstrated a command over tools crucial for computational research. Her programming expertise in C, Python, C++, and Matlab reflected her commitment to staying at the forefront of technological advancements. At the heart of her research focus lies an intersection of Machine Learning, Deep Learning, and Applied Mathematics. Her Ph.D. thesis, "Handcrafted and Deep Learning Techniques for Classification of Medical and Hyperspectral Images," underscores her commitment to addressing critical challenges in medical image analysis. By amalgamating traditional handcrafted methods with cutting-edge deep learning architectures, she aimed to elevate the precision and efficiency of medical image diagnostics. Her M.Tech thesis, "A Study of Clustering Algorithms in Fuzzy Scenario," delves into the realms of unsupervised learning and statistical data analysis. The introduction of the Kernel Intuitionistic Fuzzy c-Means algorithm reflects her innovative approach to clustering, emphasizing improved performance and robustness.

Accolades and Recognition:

Kumi Rani's academic prowess has earned her notable accolades and recognition. She secured an impressive All India Rank of 199 in the National Eligibility Test (NET) for Lectureship, a joint initiative by the Council of Scientific and Industrial Research (CSIR) and University Grants Commission (UGC). Additionally, she secured an All India Rank of 83 in the Graduate Aptitude Test in Engineering (GATE), a testament to her excellence in the field. Her pursuit of continuous learning is evident through her completion of professional development programs and courses on platforms like Coursera and Oracle Academy. This commitment to staying abreast of industry-relevant skills showcases her dedication to both personal and professional growth.

Impact and Influence:

In her professional roles, Kumi Rani has not only shared her knowledge through teaching but has also left an impact on real-world projects. Her involvement in projects at ATC Labs, including the design of a real-time broadcast communicator on the Android platform, reflects her ability to apply computational skills to practical scenarios. Her guidance on B.Tech projects further extends her influence to shaping the next generation of computational professionals.

Legacy and Future Contributions:

As Kumi Rani continues her journey, her legacy at the Indian Institute of Technology BHU, Varanasi, is marked by her early academic pursuits, versatile contributions in academia, and impactful research focus. Her commitment to education, demonstrated through the diverse courses she has taught, and her ongoing research pursuits are likely to define her future contributions. In the interdisciplinary field of computational sciences and mathematics, Kumi Rani's legacy is shaped by a dedication to excellence and a vision for the continual advancement of knowledge and application.

Notable Publications:

Classification of wireless capsule endoscopy images for bleeding using deep features fusion 2022-11-16

Cyclic learning rate based HybridSN model for hyperspectral image classification 2022-09

Automated bleeding detection in wireless capsule endoscopy images based on sparse coding 2021-08