Dipkumar Patel
Experienced senior data scientist with strong publications and research history in field of AI
Research Expertise
About
Publications
Deep Learning for Unmanned Autonomous Vehicles: A Comprehensive Review
Deep Learning for Unmanned Systems / Jan 01, 2021
Khamis, A., Patel, D., & Elgazzar, K. (2021). Deep Learning for Unmanned Autonomous Vehicles: A Comprehensive Review. In Studies in Computational Intelligence (pp. 1–24). Springer International Publishing. https://doi.org/10.1007/978-3-030-77939-9_1
Road Boundary Detection using Camera and mmwave Radar
2022 5th International Conference on Communications, Signal Processing, and their Applications (ICCSPA) / Dec 27, 2022
Patel, D., & Elgazzar, K. (2022, December 27). Road Boundary Detection using Camera and mmwave Radar. 2022 5th International Conference on Communications, Signal Processing, and Their Applications (ICCSPA). https://doi.org/10.1109/iccspa55860.2022.10019159
Education
University of Ontario Institute of Technology
Masters of Applied Science (MASc), Electrical and Computer Engineering / February, 2022
Gujarat Technological University
Bachelors of Engineering, Electronics and Communication engineering / June, 2015
Experience
Sanofi
Senior Data Scientist / July, 2022 — Present
Led collaborations with industry giants like Amazon, Microsoft, Nvidia, and HuggingFace to enhance sales team efficiency and BOI. Implemented cutting-edge techniques from top publications in AI, focusing on transformer models and RLHF. Directed a team to optimize LLM models for GenAI project, enabling solutions like content tagging and workflow automation. Developed RAG pipelines and a vector database to bolster generative AI accuracy. Implemented RLHF pipeline and data preprocessing for sensitive content filtering. Evaluated tokenizers' impact on model performance and devised Bayesian MMM, optimizing promotional budgets by 3% and boosting revenue by ~2%. Utilized microsegment enrichment for personalized HCP engagement and developed A/B testing and causal inference tools for model monitoring across commercial AI projects.
ReiPower
Machine Learning Engineer / December, 2021 — June, 2022
ReiPower, a government-funded startup, targets carbon footprint reduction in buildings. Leveraged BERT to create a conversational agent, offering stakeholders insights on energy usage. Employed multi-modal deep learning and transformer-based embeddings to predict plant failures and optimize energy consumption, yielding a remarkable ~60% reduction in energy usage during pilot phase. Implemented a real-time ETL solution to handle streaming and storage of multimedia and sensor data from energy plant actuators.
Infosys
senior system engineer / July, 2015 — July, 2018
Streebo
senior technical consultant / July, 2018 — November, 2019
University of Ontario Institute of Technology
Teaching Assistant / January, 2020 — April, 2022
Research Assistant / January, 2020 — February, 2022
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