Machine Learning, Business analytics with R Programming & Py
Machine learning, data science & business analytics with R & Python. Build models with rstudio, jupyter notebook & keras
Description
Learn complete Machine learning, Deep learning, business analytics & Data Science with R & Python covering applied statistics, R programming, data visualization & machine learning models like pca, neural network, CART, Logistic regression & more.
You will build models using real data and learn how to handle machine learning and deep learning projects like image recognition.
You will have lots of projects, code files, assignments and we will use R programming language as well as python.
Release notes- 01 March
Deep learning with Image recognition & Keras
Fundamentals of deep learning
Methodology of deep learning
Architecture of deep learning models
What is activation function & why we need them
Relu & Softmax activation function
Introduction to Keras
Build a Multi-layer perceptron model with Python & Keras for Image recognition
Release notes- 30 November 2019 Updates;
Machine learning & Data science with Python
Introduction to machine learning with python
Walk through of anaconda distribution & Jupyter notebook
Numpy
Pandas
Data analysis with Python & Pandas
Data Visualization with Python
Data Visualization with Pandas
Data visualization with Matplotlib
Data visualization with Seaborn
Multi class linear regression with Python
Logistic regression with Python
I am avoiding repeating same models with Python but included linear regression & logistic regression for continuation purpose.
Going forward, I will cover other techniques with Python like image recognition, sentiment analysis etc.
Image recognition is in progress & course will be updated soon with it.
Unlike most machine learning courses out there, the Complete Machine Learning & Data Science with R-2019 is comprehensive. We are not only covering popular machine learning techniques but also additional techniques like ANOVA & CART techniques.
Course is structured into various parts like R programming, data selection & manipulation, applied statistics & data visualization. This will help you with the structure of data science and machine learning.
Here are some highlights of the program:
Visualization with R for machine learning
Applied statistics for machine learning
Machine learning fundamentals
ANOVA Implementation with R
Linear regression with R
Logistic Regression
Dimension Reduction Technique
Tree-based machine learning techniques
KNN Implementation
Naïve Bayes
Neural network machine learning technique
When you sign up for the course, you also:
Get career guidance to help you get into data science
Learn how to build your portfolio
Create over 10 projects to add to your portfolio
Carry out the course at your own pace with lifetime access
What You Will Learn!
- Machine learning & Data science with R & Python
- Fundamentals of Machine learning
- Data science
- Deep learning models
- Image recognition
- Keras
- R programming
- Anaconda distribution & jupyter notebook
- Numpy & pandas
- Multi-layer perceptron
- Data visualization with pandas, seaborn & matplotlib
- Data visualization with base R & libraries like ggplot2, lattice, scatter3d plot & more
- Applied statistics for machine learning covering important topics like standard error, variance, p value, t-test etc.
- Machine learning models like Neural network, linear regression, logistic regression & more.
- Handle advance concepts like dimension reduction & data reduction techniques with PCA & K-Means
- Classification & Regression Tree with Random Forest machine learning model
- Real life projects to help you understand industry application
- Tips & Tools to create your online portfolio to promote your skills
- Tutorial on job searching strategy to find appropriate jobs in machine learning, data science or any other industry.
- Learn business analytics
- Tips to improve your resume and linkedin profile
Who Should Attend!
- Students
- Working professionals looking to move into data science & machine learning career
- Statisticians interested in machine learning