It's about my analysis on large and real life problem based competitions @kaggle and Applied Data analysis, machine learning and Deep learning techniques to build necessary model. Follow me on @Kaggle : https://www.kaggle.com/harshkothari21
Predict House-Price on DataSet that conatins 81 features and 3000 Rows(1460 for Train and 1459 for Test).
Skills Applied:
- Data Cleaning
- EDA
- Feature Selection
- Feature Engineering
- Random Forest Model and XgBoost
- Hyperparameter tuning
- Deep Learning using Keras
Classification problem to predict weather the person survived or not during the famous titanic Accident.
Skills Applied:
- Data Cleaning
- EDA
- Feature Engineering
- Scaling
- Cross Validation
- Hyperparameter tuning
- Logistic Regression | SVM | SVC | KNN | Decision Tree |Random Forest Model
This competition contains dataset from https://www.careervillage.org/ , We need to be able to send the right questions to the right volunteers and get the insights of the data.
Skills Appied:
- Data Cleaning
- EDA
- Data Visualization
- Build WordCloud
A binary classification task to train a model with 300 features and only 250 training examples and 79times more samples on test data.