Personal details

Gopal C. - Remote data scientist

Gopal C.

Machine Learning Engineer
Based in: 🇺🇸 United States
Timezone: Indiana (East) (UTC-4)

Summary

I am Gopal Chitalia, a graduate student at Purdue University and working with Prof. Jan Anders Mansson on fault detection in motors using deep learning in a joint project with Wistron. Additionally, I'm working with Prof. Junjie Qin on transfer learning application using LLMs for optimizing power networks.

I have had the privilege of working at Center for Building Science Lab under the supervision of Prof. Vishal Garg. I have previously been a Research Assistant/Visiting ML Scholar at the Smart Grid Research Unit (SGRU) under Manisa Pipattanasomporn (Adjunct Faculty, Virginia Tech).

In addition to my academic pursuits, I have also contributed to the industry in the domains of Energy Efficiency, IoT, and Machine Learning. I have worked at ClevAir (Norway) as a Data Scientist and Growthworks.ai (CA, USA) as an ML Scientist/Energy Demand Expert.

My research work on predicting short/long-term energy prediction in office/residential buildings using machine learning is published in Applied Energy. The results improve the state-of-the-art results by 20-40%. I am also an active reviewer at Applied Energy. Furthermore, I have collaborated on a building-level dataset paper which has been published in Nature Scientific Data.

Previously, I have also worked with Prof. Jyotirmay Mathur at the Centre for Energy & Environment, MNIT Jaipur on Predicting time ahead heating/cooling energy demand HVAC systems. Moreover, as an independent research student, I also collaborated with Prof. Praveen Paruchuri of Machine Learning Lab, IIIT-H for Reinforcement Learning (RL) applications for controlling HVAC systems.

Work Experience

Graduate Research Assistant
MD Lab, Purdue University | Sep 2024 - Present
Python
Django
Selenium
Machine Learning
Deep Learning
TensorFlow
Performance Optimization
PyTorch
Large Language Models
  • Research Guide: Prof. Jan Anders Mansson.
  • Working on transfer learning based approach for fault detection in induction motors (Project with Wistron).
  • Working on location selection analysis for establishing a manufacturing industry in USA using advanced technical cost models to analyze and compare various locations
Machine Learning Engineer
Growthworks.ai | Apr 2022 - Jul 2023
Python
C++
SQL
Bash
Pandas
Machine Learning
Data Science
Deep Learning
Airflow
AWS (Amazon Web Services)
  • Managed a proof-of-concept project utilizing different data analytics, ML methods to do real-time electricity market prediction at California-ISO region.
  • Implemented deep learning techniques, including auto encoders for better feature representation, achieving an accuracy improvement of 15%.
  • Utilized Apache Spark and Python to design and construct a scalable data pipeline, reducing data processing latency by 20%

Education

Purdue University
Master's degreeComputer Science
Aug 2023 - Dec 2024
International Institute of Information Technology, Hyderabad
Dual Degree (B.Tech + MS by Research)Computer Science
Aug 2015 - Jun 2021

Personal Projects

Robust short-term electrical load forecasting framework for commercial buildings using deep recurrent neural networksIconOpenNewWindows
2020
Python
Machine Learning
Web Scraping
Data Science
Deep Learning
TensorFlow
Keras
This paper presents a robust short-term electrical load forecasting framework that can capture variations in building operation, regardless of building type and location. Nine different hybrids of recurrent neural networks and clustering are explored. The test cases involve five commercial buildings of five different building types, i.e., academic, research laboratory, office, school and grocery store, located at five different locations in Bangkok-Thailand, Hyderabad-India, Virginia-USA, New York-USA, and Massachusetts-USA. Load forecasting results indicate that the deep learning algorithms implemented in this paper deliver 20–45% improvement in load forecasting performance as compared to the current state-of-the-art results for both hour-ahead and 24-ahead load forecasting. With respect to sensitivity analysis, it is found that: (i) the use of hybrid deep learning algorithms can take as less as one month of data to deliver satisfactory hour-ahead load prediction, (ii) similar to the clustering technique, 15-min resolution data, if available, delivers 30% improvement in hour-ahead load forecasting, and (iii) the formulated methods are found to be robust against weather forecasting errors. Lastly, the forecasting results across all five buildings validate the robustness of the proposed deep learning framework for the short-term building-level electrical load forecasting tasks.
Variational Autoencoder (VAE)IconOpenNewWindows
2018
Computer Vision
Deep Learning
The project aimed to construct a Variational Auto-Encoder(VAE) based neural network for image generation. A comparative analysis of this architecture with various parameter tweaks was done on MNIST, CIFAR10 and CALTECH101 dataset.

Certifications & Awards

Applied Energy Reviewer
Dean's List Awardee
Dean | May 2019