100DaysofMLCode
100DaysofMLCode copied to clipboard
My journey to learn and grow in the domain of Machine Learning and Artificial Intelligence by performing the #100DaysofMLCode Challenge. Now supported by bright developers adding their learnings :+1:
#100DaysofMLCode
Table of Contents
1. Data Pre-processing
- Importing Libraries
- Importing Data sets
- Handling the missing data values
- Encoding categorical data
- Split Data into Train data and Test data
- Feature Scaling
2. Regression
- Simple Linear Regression
- Multi Linear Regression
- Polynomial Regression
- Support Vector Regression
- Decision Tree Regression
- Random Forest Regression
3. Classification
- Logistic Regression
- K Nearest Neighbors Classification
- Support Vector Machine
- Kernel SVM
- Naive Bayes
- Decision Tree Classification
- Random Forest Classification
4. Clustering
- K-Means Clustering
- Hierarchical Clustering
5. Association Rule
- Apriori
- Eclat
6. Reinforcement Learning
- Upper Confidence Bounds
- Thompson Sampling
7. Natural Language Processing
- AWS Comprehend
8. Deep Learning
- Artificial Neural Networks (ANN)
- 2. Convolutional Neural Networks (CNN)
9. Dimensionality Reduction
- Principal Component Analysis
- Linear Discriminant Analysis
- Kernel PCA
10. Model Selection
- Grid Search
- K-fold Cross Validation
- XGBoost
11. Data Visualization
- Matplotlib library in Python
- Tableau
- Power BI
- Grafana
Log of my Day-to-Day Activities
Track my daily activities here
How to Contribute
This is an open project and contribution in all forms are welcomed. Please follow these Contribution Guidelines
Code of Conduct
Adhere to the GitHub specified community code.
License
Check the official MIT License here.