top of page
Data Science
Workflows
  • Predicting Wine Quality Using MultiLayer Perceptron Classifier

  • Building H20 DRF Model for Bike Sharing

  • Saving RF Model on Type of Fault in Steel Plates

  • Spam Detection Using TFIDF

  • Building Linear Regression Model for Farmers Market

  • Building GBT Regression Model for Bike Sharing

  • Profiling Telco Churn Data

  • Building Model Using Decision Tree Classifier for Telco Churn

  • Analyzing Correlation and Summary Statistics for Housing Data

  • Building Model Using RFC for Telco Churn

  • Developing H20 RFC Model for Telco Churn

  • Building H20 K-means Cluster for Bike Sharing Data

  • Analyzing Telco Churn Data

  • Building K-means Cluster for Housing Data

  • Predicting Click-through with GBT Boosting

  • Building Spark-ML Pipeline Model on Spam Data

  • Predicting Acceleration Of Car Models Using Linear Regression

  • Predicting Spam and Evaluating Model

  • Training XGBoost Model on IRIS Data

  • Building Neural Network Regression Model for Bike Sharing Data

  • Building GBT Regression Model for Car Data

  • Performing Feature Selection and Importance in WHO Data Analysis

  • Building Decision Tree Regression Model on Car Data

  • Building K-means Cluster Model on Housing Data

  • Demonstrating Parameter Passing Process on Employment Data

  • Performing Chi-Square Test for Feature Selection

  • Building RFC & Logistic Regression Model for Churn Prediction

  • Performing Comprehensive Sales Data Analysis with Various Models

  • Generating Covariance and Correlation Matrix on Housing Data

  • Generating Cross Tab Matrix on Housing Data

  • Performing Dimensionality Reduction Using PCA on Housing Data

  • Exploring Housing Data

  • Analysing and Decomposition of Bike Sharing Features

  • Building H20 DRF Models on Bike Sharing Data

  • Building H2O GBM Model on Bike Sharing Data

  • Building H20 GLM Model

  • Building H2O GLRM Model on Credit Card Fraud Data

  • Building H20 Isolation Forest Model on Credit Card Fraud Data

  • Building H20 K-means Model on Bike Sharing Data

  • Building H20 Neural Network Model

  • Buidling H20 XGBoost Model on UCI Credit Card Data

  • Building Linear Regression Model on Household Power Consumption Data

  • Building K-means Cluster Model on Housing Data

  • Building RFC Model for Predicting House Price

  • Building Logistic Regression Model for SMS Spam Detection

  • Building H20 Isolation Forest Model for Anomaly Detection

  • Buidling Linear Regression Model for Storewise Retail Stock Prediction

  • Building Logistic Regression Model for Credit Card Fraud Prediction

  • Imputing Null Values with Mean, Median & Constant

  • Reading CSV and JSON File

  • Detecting Outlier for Housing Data

  • Detecting Diabetes Using Logistic Regression Model

  • Detecting Diabetes Using Logistic Regression Model

  • Processing Housing Data

  • Scaling Features Using Standard And Min Max Scaler

  • Identifying Skewness in Housing Data

  • Splitting Dataset Using Stratified Sampling

  • Handling Categorical Data with String Indexer and OneHotEncoder

  • Sampling Housing Data Using Standard Split Method

  • Performing Data Profiling on Bike Sharing Data

  • Validating Data Using Cross Validator

  • Cleaning and Generating Features in NFL Data

  • Implementing Sagemaker XGBoost

  • Applying SMOTE Oversampling to Address Imbalanced Data

  • Implementing SparkML Pipeline

  • Improving Spam Detection with Hyperparameter Tuning

  • Predicting House Price Using XGBoost Regression Model

  • Predicting Defects in Steel Plates Using Random Forest Classifier

  • Predicting Weekly Sales Using Random Forest Regression Model

  • Selecting Churn Prediction Model Using Grid Search & Cross-Validation

  • Normalizing Housing Data

  • Building Perceptorn Network on Iris Data

Reports
  • Telco Churn Model Evaluation

Visualization
Workflows
  • Analyzing Housing Data Using Boxplot and Subplots

  • Exploring Yearly Monthly and Weekly Distribution Graphs

  • Creating Subplots Graph on Housing Data

  • Analyzing Telco Customer Churn

  • Documenting Using Print Rich Text Node

  • Printing Output Using PrintNrows Node

  • Analyzing Housing Data Using Line Graph

  • Analyzing Housing Data Using Graph Group by Column

  • Plotting Gauge Graph on Product Data

  • Plotting Bubble Graph on Product Data

  • Plotting Boxplot on Housing Data

  • Plotting Subplots on Housing Data

  • Plotting Boxplot on Housing Data

  • Plotting Graph Column Values by Count

  • Exploring NYC Taxi Average Speed

  • Plotting Graph Values on Train Data

  • Plotting Gauge & Bubble Graph on NYC Taxi Data

Data Profile Explore
Workflows
  • Performing Data Exploration on Housing Data

  • Performing Data Profiling on Loan Data

  • Performing Data Profiling on Sales Data

  • Generating Correlation Matrix on Sales Data

  • Detecting Outliers on WHO Data

  • Cleaning WHO Data

  • Performing Data Profiling on Loan Data Part-01

  • Performing Data Profiling on Loan Data Part-02

Reports
  • Data Profiling Report

  • Data Profiling Report Part 1

  • Data Profiling Report Part 2

  • Data Profiling Report Example

  • Loan Data Profile

  • Statistical Analysis on Housing Data

Timeseries
Workflows
  • Analyzing Monthly Passengers Distribution

  • Analyzing Product Stock Data

  • Forecasting Air Passengers Using Prophet Model

  • Forecasting Air Passengers with Seasonality Using Prophet Model

  • Forecasting Air Passengers Using SARIMAX Model

  • Forecasting Air Passengers Using Multivariate Prophet Model

  • Forecasting Safety Stock for Inventory Using Prophet Model

  • Forecasting US Quaterly GDP using Multivariate VAR Model

  • Generating Stock Forecasts

  • Forecasting Daily Temperature

  • Performing Feature Engineering for Time Series Data

  • Predicting Earthquake Using Random Forest

  • Forecasting Air Passengers Using ARIMA Model

  • Forecasting Air Passengers Using Multivariate SARIMAX Model

Recommendations
Workflows
  • Predicting Movie Rating

  • Performing Data Profiling on Movie Ratings Dataset

  • Performing Data Exploration on Movie Ratings Dataset

Price Elasticity
Workflows
  • Predicting Volume on New Product Prices and Creating Profit Parabola

  • Creating Product Wise Linear Model and Calculating Profit

  • Performing Data Profiling on Transactional Data

NLP
Workflows
  • Fetching Name Using OpenNLP

bottom of page