Shisrut S.
Data Scientist
Shisrut on datatutkija, jolla on seitsemän vuoden kaupallinen kokemus ja joka on erikoistunut koneoppimiseen, syväoppimiseen, aikasarjojen ennustamiseen ja optimointitekniikoihin.
Hän hallitsee Pythonin, TensorFlow'n, Scikit-learnin ja kehittyneet ML-kehykset ja integroi saumattomasti ennakoivan mallintamisen reaalimaailman päätöksentekoon. Hänen asiantuntemuksensa on ML-lähtöisen ennustamisen yhdistäminen optimointistrategioihin liiketoiminnan vaikutusten maksimoimiseksi.
Yksi hänen merkittävimmistä saavutuksistaan on kotisivujen laattajärjestelyjen optimointi kaksivaiheisen ML-kehyksen avulla. Hyödyntämällä aikasarjan ennustamista ja vahvistusoppimista hän lisäsi merkittävästi tuotesivun vierailuja ja Lisää laukkuun -toimintoja. Tämä itseään optimoiva järjestelmä mukautuu reaaliaikaisesti, mikä takaa skaalautuvuuden ja pitkän aikavälin menestyksen.
Tärkein asiantuntemus
- Python 7 vuotta
- SAS 5 vuotta
- SQL 7 vuotta
Muut taidot
- Matplotlib 3 vuotta
- BeautifulSoup 2 vuotta
- R (programming language) 1 vuotta
Valittu kokemus
Työllisyys
Lead Data Scientist
Apple - 3 years
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Designed and implemented a data-driven homepage tile optimization system, dynamically adjusting placements based on user engagement patterns;
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Aggregated and analyzed time-series data on impressions, clicks, and "Add to Bag" actions to uncover user behavior trends;
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Engineered advanced features (e.g., temporal trends, engagement metrics) to enhance the predictive accuracy of optimization models;
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Developed and validated an XGBoost model to predict "Add to Bag" rates, using Mean Absolute Error (MAE) and R-squared for performance assessment;
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Integrated Thompson Sampling (Multi-Armed Bandit) for real-time tile placement optimization, adapting dynamically to user interactions;
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Automated the optimization process, ensuring continuous improvements without manual intervention.
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Monitored and fine-tuned the model’s performance, achieving a 15% increase in "Add to Bag" actions and directly boosting revenue;
Tekniikat:
- Tekniikat:
Python
SQL
Pandas
NumPy
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Lead Data Scientitst
Apple - 2 years
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Led a team of data scientists to develop an unsupervised learning framework for visitor segmentation using Adobe Clickstream data;
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Designed and operationalized a bi-weekly MLOps pipeline to automate data ingestion, feature engineering, model retraining, and performance monitoring;
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Enhanced targeted marketing campaigns by implementing data-driven visitor segmentation, improving personalization and engagement;
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Optimized marketing budget allocation through intelligent resource distribution, maximizing ROI;
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Integrated segmentation insights into a conversational Tableau (ThoughtSpot) dashboard for real-time data accessibility, model governance, and strategic decision-making;
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Improved conversion rates, A/B testing effectiveness, and marketing efficiency by enabling data-driven decision-making.
Tekniikat:
- Tekniikat:
Python
Machine Learning
MySQL
-
Senior Data Scientist
CITI - 3 years
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Led cross-functional collaboration with model development, deployment, monitoring, risk, and fair lending teams to ensure seamless ML model lifecycle management;
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Managed a portfolio of 37 ML models in production, overseeing performance monitoring, recalibration, and compliance adherence;
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Developed and automated MLOps pipelines, significantly reducing turnaround time (TAT) for model updates and deployments;
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Conducted root cause analysis and model recalibration, improving performance transparency and regulatory compliance;
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Implemented workforce optimization strategies, minimizing redundancies and improving operational efficiency;
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Enhanced regulatory compliance and fair lending governance, ensuring model transparency and justifiable decision-making;
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Designed data-driven storytelling and documentation frameworks, providing clear insights into model decisions for stakeholders.
Tekniikat:
- Tekniikat:
Python
SAS
SQL
Machine Learning
-
Data Scientist
Ameriprise Financial - 2 years
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Developed and deployed an Auto Fraud Detection System using NLP techniques and pre-trained models (BERT, GloVe) to analyze First Notice of Loss (FNOL) data and detect fraudulent claims;
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Designed a multiclass claims triaging model to forecast claim urgency and litigation potential, optimizing resource allocation and response times;
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Implemented fraud classification models with high accuracy, reducing financial losses and manual investigation efforts;
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Predicted claim severity ($) to enable proactive fraud detection and investigation prioritization;
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Integrated the system into the claims workflow, enhancing operational efficiency and reducing litigation costs;
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Achieved quarterly savings of $250K by improving fraud detection and claims processing efficiency.
Tekniikat:
- Tekniikat:
Python
SAS
SQL
Machine Learning
-
Data Scientist
Ameriprise Financial - 2 years
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Developed classification models to predict customer responses to marketing campaigns and cross-selling initiatives, leveraging behavioral data, demographics, and engagement history;
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Applied advanced ML techniques to refine audience segmentation, improving conversion rates and customer engagement;
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Implemented MLOps pipelines to automate model development, deployment, monitoring, and recalibration for continuous optimization;
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Designed real-time monitoring reports, providing insights into campaign performance, model robustness, and profitability (PnL tracking);
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Optimized budget allocation strategies, ensuring marketing spend was maximized for ROI;
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Established a structured monitoring system to track long-term model performance and campaign effectiveness.
Tekniikat:
- Tekniikat:
Python
SAS
- Data Science
Machine Learning
MySQL
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Koulutus
MSc.Data Science
Birla Institute Of Technology · 2024 - 2025
BSc.Computer Science
Vellore Institute Of Technology · 2013 - 2017
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