
Prakash Chandra Chhipa
Postdoktor
Forskningsämne: Maskininlärning
Avdelning: EISLAB
Institutionen för system- och rymdteknik
-
Luleå, A3568
About me
Prakash Chandra Chhipa is a Postdoctoral Research Scientist with Ph.D. in Machine Learning.
Prakash shares spectrum of 13+ years of machine learning R&D experience in the field of computer vision with recent advances in self-supervised representation learning, multi-modality and generative AI—from training large-scale models to leading teams, from idea to research publications, from prototypes to patents—enables him to drive high-impact AI research and build tangible, scalable products. His combined industrial R&D and academic research journey makes him uniquely positioned to lead innovation where scientific depth meets product relevance.
He received PhD in Machine Learning in 2025 focusing Computer Vision from Luleå Tekniska Universitet, Sweden in 2025, advised by Prof. Marcus Liwicki, where worked on making self-supervised representation learning robust, domain-aware, and ready for the real world. From distorted camera views to unseen adversarial threats, his research aimed to make self-supervised AI more resilient, adaptable, and aware of the domains it serves—from hospitals to mines. He authored dozens of research works—within and beyond his thesis—with many publications in top-tier conferences including ECCV, ICLR, ACCV, WACV, and more. During this journey, he served as a reviewer, delivered invited talks across continents -MBZUAI UAE and EMBL‑EBI Cambridge United Kingdom, and held a visiting researcher position at UCF under Prof. Mubarak Shah. He supervised four master’s theses, participated in prestigious summer schools, received multiple grants and fellowships, and featured on credible platforms—all while collaborating with inspiring researchers across the globe.
Before PhD, Prakash spent around decade in industrial R&D, building machine learning and computer vision systems from concept to real-world deployment. At Samsung Research (2012–2018), he worked across roles—from individual contributor to senior staff—on large-scale content recognition for Samsung TVs (Samsung ACR in the US, EU, and Korea), video/music domain applications in computer vision, and contextual ad recommendations using reinforcement learning. He contributed multiple invention disclosures and 11 international patent applications, including 5 granted patents with multimillion-dollar valuation and some are cited by Google, Meta, Apple, Boeing, Sony.
At Arkray R&D (2018–2020), he built and led the machine learning team, significantly contributing in computer vision method development in delivering products world's first vision-AI powered urinalysis (Aution eye AI 4510, launched in 2019) and many other projects. He bridged clinical needs and machine learning innovation—contributing to multiple patent filings and pushing AI into real-world healthcare diagnostics.
Academic Milestone:
Doctoral thesis - Towards Robust and Domain-aware Self-supervised Representation Learning (2020 - April 2025) (link)
Licentiate thesis - Self-supervised Representation Learning for Visual Domains Beyond Natural Scenes (2020 - March 2023) (link )
For specific details, please visit following (external) pages.
Portfolio (prakashchhipa.github.io)
Publications of Prakash Chandra Chhipa (Google Scholar)
Open-Source Code Repositories at GitHub