Dhurba Baral
Graduate Student, MS in Computer Science
University of Cincinnati
Cincinnati, OH, USA
I am a Computer Science student with more than two years of industrial experience in Machine Learning/Deep Learning. I am skilled in data analysis, designing and developing data processing pipelines, and building deep learning-based applications. I am passionately curious about how things work, which bolsters my passion for Science, AI, and Mathematics.
Education
MS in Computer Science
University of Cincinnati
Bechelor's in Computer Engineering
Tribhuvan University
Experience
Machine Learning Engineer
TAI, Inc.
Responsibilities:
- Fine-tuned BERT for document processing and implemented Neo4j to model data as a graph for representing and querying complex relationships between data entities.
- Fine-tuned Large Language Models (e.g., Llama and GPT) using Low-Rank Adaptation (LoRA) and quantization, and implemented Retrieval Augmented Generation (RAG) for building customer-facing chat bots.
- Implemented ML solutions using AWS SageMaker for end-to-end model training and deployment.
- Implemented CI/CD pipelines using Jenkins, writing Groovy scripts to automate build, test, and deployment workflows. Leveraged container-based technologies such as Docker to enable simplified, scalable, and reproducible production deployments.
AI Fellow
AI Fellowship 2023, Fusemachines, Nepal
Coursework: Regression, Classification, Clustering, and Arttificial Neural Networks, Recurrent Neural Networks, Transformers, and more.
Python and AI/ML Mentor
iCES (Innovative Computer Engineering Students’ Society), Pashchimanchal Campus, Tribhuvan University
Participated as Python and AI/ML Mentor in a month-long workshop on Machine Learning and Deep Learning forbachelor students.
Modules taught: Linear Regression, Logistic Regression, Naïve Bayes Classifier, Natural Language Processing (RNN, GRU, LSTM)
Hackathon Winner
Deltathon, Delta 3.0, Purwanchal Campus, Tribhuvan University
Built an AI-based system for detecting bees, monitoring their behavior and health status, and suggesting possible solutions to the detected problems directly to farmers.
Won the Best Hardware Project Award in the hackathon.
Tech Used: YOLOv5 for object detection module integrated with Raspberry Pi and Pi Camera, Convolutional Neural Networks (CNNs) for image classification
Machine Learning Instructor
iCES (Innovative Computer Engineering Students’ Society), Pashchimanchal Campus, Tribhuvan University
Participated as an ML instructor in a three-day workshop on Machine Learning and NLP.
Modules taught: Regression (Linear, Polynomial, Random Forest Regressor), Natural Language Processing (RNN, GRU, LSTM)
Participant: Jenesys 2016 Japan (Theme: Energy)
Japan International Cooperation Center (JICE)
Participated in JENESYS 2016 program and studied cutting-edge technologies used in Japan for harnessing energy from various sources.