Experience

Meta, Data Scientist – Facebook for Commerce/ Monetization   – 

New York City, NY        May 2022 – Present

Reconsideration – Help engaged users reconsider purchases to drive advertiser value

Lead experimentation and measurement strategy for a 0🡪1 product. Helped successfully launch notifications for ads, multi ads and real time reconsideration units

Upleveled team’s measurement strategy and feature launches by conducting multiple types of AB tests

Identified long-term opportunities for ~$2Bn product investments and enhancements. Guided headcount decisions

Designed data-driven product strategy through multiple sizing analyses to prioritise engg resources, recommending goal metrics and team success criteria

Built feature engineering for a deep learning notification targeting model to target high intent users with shopping notifications

Amazon, Data Scientist 2 – Trans Initiatives

Seattle, WA

Aug 2020 – May 2022

Volume and Capacity Planning

Built an optimization model to determine feasible network allocations subject to capacities and constraints to improve coordination between different warehouses and connections.

Built and deployed machine learning Gradient boosted Tree (GBT) model to predict potential errors in planned volumes.

Developed a risk mitigation tool to evaluate feasibility of proposed warehouse and transport plans. This helped optimise transportation capacity during peak volume events

Designed and deployed a forecasting model to predict the ratio of processed packages to shipped packages

Visa inc, Data Scientist – Digital Products, Credit Modeling, Consumer Behavior – Predictive Products

San Francisco, CA Feb 2018 – Jan 2019

Global Travel Destination Prediction

Built a deep learning neural network using Keras to predict the likelihood of a cardholder travelling to a given city

Built a feature selection and importance algorithm to better understand how complex features affect predicted outcome

Deployed and productionalized using Scala Spark to score 1.2 Billion cards globally

E-commerce propensity

Developed a PCA based approach to identify merchant groups with similar e-commerce behaviours

Designed an RNN-based deep learning architecture to predict growth propensities for e-commerce behaviours

Built an opportunity sizing framework to estimate the incremental impact of the model on banks and merchants

Credit Risk – Small Businesses

Predict enterprise credit worthiness by leveraging visa transaction and customer data

Built regression-based modelling with extensive feature engineering and data efforts to link diverse sources and account for regulatory requirements

Implemented a normalisation algorithm to control for industry – geography effects for scalable deployment

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