I'm a Data Scientist with a strong background in machine learning engineering, specializing in recommendation systems and pricing models.
๐ I recently completed a MSc in Computer Science (Machine Learning) at University of Texas at Austin and I'm looking forward to applying machine learning techniques in future projects.
๐ซ How to reach me: Email | LinkedIn
- Programming Languages: Python, SQL, Go, Bash
- Frameworks: Pandas, NumPy, Scikit-learn, Statsmodels, TensorFlow, Keras, PyTorch, Hugging Face, Spark, Docker, GitLab, Google Cloud Platform (GCP), Google BigQuery, dbt, Streamlit, Apache Airflow, Apache Kafka, Apache Flink, Tableau, Redis, Git, Excel
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- 3 research projects conducted during my masters
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Improving Lexical Reasoning of NLI Models
- Enhanced Natural Language Inference (NLI) models' ability to discern lexical relationships using data augmentation and adversarial training
- Technologies: Hugging Face (Transformers), Pandas
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AI Agent for Ice Hockey in SuperTuxKart
- Developed an image-based AI agent with hand-tuned controllers for playing ice hockey in SuperTuxKart, leveraging Fully Convolutional Networks (FCN)
- Technologies: PyTorch
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Real Estate Investment Recommendations
- Explored machine learning and financial models to provide real estate investment recommendations
- Technologies: ARIMA, Prophet, PyTorch
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- 3 research projects conducted during my masters
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Side Projects
- Fact Finder Streamlit App
- An interactive app that leverages OpenAI API to display facts based on user-selected topics and personas
- You can test the app here: https://fact-finder.streamlit.app/
Feel free to check out the repositories for more detailed information on each project.
- Fact Finder Streamlit App
- MSc in Computer Science (Machine Learning), University of Texas at Austin
- BA in Economics, Stanford University
- Specialized in Recommendation Systems, Contextual Bandits, and Linear Programming.
- Senior Data Scientist, Pricing, Gojek (Jan 2020 - Sep 2021)
- Engineered data and model training pipeline for TensorFlow-based pricing algorithm and linear programming-based price reconciliation, leading to 10% performance uplift in gross profit
- Developed ML pricing web service in Go that performed experimentation, feature retrieval, model prediction, and price presentation with < 50 ms SLA
- Applied linear programming techniques to translate government regulations and business constraints into linear constraints within pricing models
- Lead Data Scientist, Recommendations, Gojek (April 2018 - Jan 2020)
- Led a team of 3 data scientists and data analysts that optimized a food delivery recommendation system
- Built recommendation model driving 2 million incremental bookings every month and leading to 15% performance uplift versus existing models (Patent No. 10201912472U).
Traveling, hiking, photography, electronic music, meditation.