Lead generation for credit card
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Updated
Jul 21, 2022 - Jupyter Notebook
Lead generation for credit card
Clustering validation with ROC Curves
Scrapped tweets using twitter API (for keyword ‘Netflix’) on an AWS EC2 instance, ingested data into S3 via kinesis firehose. Used Spark ML on databricks to build a pipeline for sentiment classification model and Athena & QuickSight to build a dashboard
credit card lead prediction
Develop and train image classification models using advanced deep learning techniques to identify diseases specific to apples.
Assignment-06-Logistic-Regression. Output variable -> y y -> Whether the client has subscribed a term deposit or not Binomial ("yes" or "no") Attribute information For bank dataset Input variables: # bank client data: 1 - age (numeric) 2 - job : type of job (categorical: "admin.","unknown","unemployed","management","housemaid","entrepreneur","st…
The goal is to eliminate manual work in identifying faulty wafers. Opening and handling suspected wafers disrupts the entire process. False negatives result in wasted time, manpower, and costs.
The goal is to eliminate manual work in identifying faulty wafers. Opening and handling suspected wafers disrupts the entire process. False negatives result in wasted time, manpower, and costs.
A Kaggle competition project predicting customer responses to insurance offers using XGBoost, focusing on feature engineering, visualization, and robust evaluation metrics.
A Portuguese hotel group seeks to understand reasons for its excessive cancellation rates.
Used libraries and functions as follows:
OilyGiant mining company finding the best place for 200 new well points, As an Data Scientist we're creating a model who can choose the best 200 point by profit and risk.
It is a Hackathon problem statement solution, which is arranged by Analytics Vidhya.
Bank Beta Company focus on retain existing customers, our task is to create a model that predicts whether or not a customer will leave the bank soon.
Exoplanet Hunting in Deep Space.
Perform Dimensionality Reduction using AutoEncoder.
Increased the ROC AUC score by 2.14% of predicting the churn of users in telecommunication company using hypertuning parameter and feature engineering.
ROC, AUC, and Z-score functions for anomaly detection
Beta Bank is losing customers monthly. Employees want to focus on client retention. As a Data Scientist, I created a model to predict the chance of a customer leaving, based on past behavior and contract terminations.
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