Loan Default Prediction using PySpark, with jobs scheduled by Apache Airflow and Integration with Spark using Apache Livy
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Updated
Dec 26, 2020 - Jupyter Notebook
Loan Default Prediction using PySpark, with jobs scheduled by Apache Airflow and Integration with Spark using Apache Livy
Chest X-ray screening research with explicit distribution shift evaluation, per-disease binary models and validated Grad-CAM localization.
A machine learning solution for churn prediction using CatBoost, achieving a 0.8464 AUC-ROC through feature engineering and hyperparameter optimization.
End-to-end credit risk ML pipeline — loan default prediction, FICO-style credit scorecard & threshold optimization on 117K+ applicants. Python · MySQL · Power BI. AUC-ROC 0.8428 · $6.6M projected net benefit.
Predicts telecom customer churn with machine learning and an interactive Streamlit app. Features include single/batch predictions, dashboards, and actionable insights for improved retention.
Binary classification pipeline predicting next-day stock direction using technical indicators
Parkinson's Disease Prediction using Machine Learning with a web-based interface built with React, Flask, and Node.js for real-time predictions and user history tracking.
Code to reproduce simulations for the article about AUC ROC viability in unbalanced binary classification problems
The final project finished 05-27-2026 as part of the TripleTen Data Science program using real-world data and mimicking real-world project requirements. Task was to train a machine learning model to predict which Interconnect customers are soon to terminate their contracts to offer special deals and reduce churn rate. Best AUC-ROC was 0.885.
A classification project using the Heart Disease UCI dataset
Credit card fraud detection with anomaly detection and deep learning.
Prediction Model, Bias and Uncertainty
End-to-end customer churn prediction using Logistic Regression and Random Forest — Telco dataset
End-to-end deep learning pipeline for multi-label chest X-ray disease classification using NIH ChestX-ray images. Implements medical image preprocessing, patient-level data splitting, class imbalance handling, transfer learning, multi-label prediction, and clinical evaluation using AUC-ROC, F1-score, precision, and recall.
Benchmarking 10+ ML algorithms to predict diabetes risk with 82% AUC featuring Snowflake and dbt
A project finished 01-22-2026 as part of the TripleTen Data Science program using real-world data and mimicking real-world project requirements. Task was to train an ML model to predict when BetaBank customers would terminate their contract in order to offer special deals and reduce churn rate. F1 score of 0.640 and AUC-ROC of 0.855. Req. F1>0.59.
Semantic coherence verification for distributed AI inference. Omega metric validated AUC 0.9539 on Wikipedia ES.
Эта работа - проект для сессии старшего курса.Но в ней сосредоточены основные требования работадателей
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