Python Refresher
                                                        
                                                - Basic Syntax
- Lists
- Tuples
                                                                - Lambda Functions
- Map, Filter Reduce
 
- Introduction
- Pricing
- Supported Regions
- Machine Learning Editions
                                                                - Standard Edition
- Enterprise Edition
- Business Critical Edition
- Virtual Private Machine Learning (VPS)
 - Introduction to Pandas
- Pandas Series Vs Data Frames
- Loading Data with Pandas (csv, xlsx, json etc.)
- Creating series and data frames
- Data pre-processing techniques with pandas
 - Introduction to Data Visualization
- Line Plots
- Dist plots
- Join Plot
- Scatter Plot
- Count plot
- Heatmap
- 3d plotting
- Label title and grid
 - What is web scraping
- Accessing Web Data
- Introduction to Beautiful Soup
- Using Beautiful Soup, Requests etc to Scrape data
- Converting Scraped Data to a Dataset
 - Introduction To EDA
- Data collection
- Understanding the Data
- Filling Missing Values
- Feature Engineering Techniques
- Working with text data
- Preparing Data to be fed into Machine Learning Algorithm
- Shortlisting Algorithms to apply.
 - Supervised Learning
- Regression (To predict recurring values)
- Simple Linear Regression
- Multiple Linear Regression
- Polynomial and Non-Linear Regression
- Random forest regressor/ Decision Tree Regressor/ SVM Regressor
- Classification (To predict class labels)
- Logistic Regression with Log loss
- Naïve Bayes theorem and classifier
- Support Vector Machines and Support Vector Classifiers
- K-Nearest Neighbours Algorithm with Euclidean Distance
- Decision Tree and Decision Tree Classifiers (Both in Gini and Entropy)
- Bagging or Random Forest Classifiers
- Boosting
- AdaBoost
- Gradient Boosting
- XGBOOST
- Unsupervised Learning
- Clustering (To identify similar type of data)
- K-means Clustering (With mean find the centroids)
- K-medoid Clustering
- Hierarchical/Agglomerative Clustering
- Density Based Clustering (DBSCAN)
- PCA (Principal Component Analysis)
- Recommendation Systems
- Collaborative Recommendation Systems
- Content Based Recommendation Systems
 - Introduction to ML Workflow
- Model Selection
- Overfitting
- Underfitting
- Bias-Variance Trade-off
- Optimization
- Hyperparameter Optimization Using Randomized search CV
 - Introduction To Pipelining
- Setting Up Machine Learning Pipelines
- Implementing Pipeline
 - R Squared
- RMSE
- Accuracy Score
- K Fold Cross Validation
 - Basic
- Breast Cancer Prediction
- Spam Mail Detection
- Diabetes Detection
- Intermediate
- Movie Recommendation System
- Realtime Face Detection Using OpenCV
- Customer Segmentation
- Advanced
- Churn Prediction
- California Houses Price Detection
- Emotion Recognition Using Open C
 
- Duration 35 Hours
- Students 21
- Days 40 Days
- Resume Preparation Yes
- Interview Guidance Yes
 
                 
                                         
                                         
                 
                                    