This course was created with the
course builder. Create your online course today.
Start now
Create your course
with
Autoplay
Autocomplete
Previous Lesson
Complete and Continue
Complete Machine Learning, Business analytics & Data Science with R programming & Python
Complete machine learning & data science course Introduction
Course introduction (5:21)
How to get help for data science (4:19)
Data science & machine learning as career option (8:12)
How to make right decisions for your career in data science & machine learning (11:39)
Various Job options for aspiring data scientists & machine learning engineers (9:34)
AI Vs ML Vs DL with Types of machine learning (12:37)
Resources
Hands-on R programming for machine learning & data science
R Introduction with installation of rstudio (17:02)
Vectors, Matrix & Data frame (6:56)
Data Types in R (15:30)
Variables & Objects in R (9:57)
Comments & Vectors in R (8:51)
Data wrangling with R- Part 1 (9:26)
Data wrangling with R-Part 2 (14:20)
Operators in R-Part 1 (10:57)
Operators in R-Part 2 (3:13)
Loops in R (17:16)
If Else conditional blocks in R (9:48)
Functions in R (13:41)
Assignment for R (7:23)
Machine learning fundamentals
Reading various files with R (17:19)
Data pre-processing introduction- selection & manipulation (8:46)
Data selection & manipulation-Rows & Columns (6:26)
Data selection & manipulation with Dplyr (6:00)
Data selection & manipulation with Arrange & Mutate (7:47)
Data selection & manipulation with Subset & Merge (4:47)
Data selection & manipulation-Handling missing data (15:09)
Data manipulation & selection assignment (2:27)
Machine learning fundamentals Quiz
Data visualization with R
Data visualization with R- introduction (5:16)
Histogram vs bar plot with plotting missing values (6:16)
Bar plots and Histograms with R (5:59)
Horizontal bar plots and Plot function (5:59)
More on Plot function with heat map (5:01)
Boxplot with Pair & Par commands (10:19)
Line graphs & maps (5:47)
GGPlot2 introduction (9:30)
Data visualization with GGPlot2 (3:14)
Lattice and Scatter3d plot libraries (10:33)
Assignment (1:59)
Data Visualizations Quiz
Applied Statistics for Machine learning
Introduction to applied statistics with Variables and Sample Size (10:53)
Descriptive vs Inferential analysis (5:32)
Mean, Median, Mode and Range (9:14)
Variance and Standard deviation (5:54)
Standard Error- Skewness with Kurtosis (4:24)
P value with confidence interval (7:45)
T test and F ratio (6:36)
Hypothesis testing (6:34)
Quiz
Machine learning fundamentals
Machine learning fundamentals (13:58)
Regression fundamentals (3:03)
Classification fundamentals (2:36)
Fundamentals of dimension reduction and data reduction models (5:01)
Evaluation Metrics for Regression & Classification Algorithms
MAE Vs MSE Vs RMSE vs RMSLE (14:37)
ANOVA with R
ANOVA introduction & fundamentals (12:19)
ANOVA in R (16:27)
ANOVA project (3:07)
Linear Regression with R
Fundamentals of Linear regression (21:33)
Implementation of linear regression in R (21:44)
Linear regression project (1:22)
Logistic Regression with R
Fundamentals of Logistic regression (5:23)
Logistic Regression with R- Part 1- Data Wrangling (14:42)
Logistic regression with R-Part 2 Data Wrangling and visualization (10:35)
Logistic regression with R-Part 3 Conclusion with Prediction (18:24)
Logistic regression project (2:17)
Dimension reduction technique with Principal component analysis
Fundamentals of Dimension reduction technique with principal component analysis (13:53)
PCA implementation in r with princomp (17:03)
PCA project (1:18)
Clustering with K-Means
Fundamentals of clustering with K-Means (15:08)
K-Means implementation in r (26:08)
K-Means Project (0:30)
Tree based models- CART technique & Random Forest
Fundamentals of Decision tree and CART technique (12:29)
CART Implementation in R (22:59)
Fundamentals of Ensemble techniques with Random Forest machine learning model (12:01)
Random Forest with R (17:13)
Random Forest Project (3:28)
KNN with R
Fundamentals of KNN (4:03)
Implementation of KNN in R (8:25)
KNN Project (1:01)
Naive Bayes
Naive bayes fundamentals and implementation in r (11:35)
Naive bayes project (2:40)
Neural Networks with R
Fundamentals of Neural Networks (9:14)
Implementation of Neural networks with R (15:54)
Neural Network Project (2:31)
Machine learning & Data science with Python
Introduction of Machine learning with Python (3:00)
Python Tool box for Machine learning (4:28)
Anaconda distribution's walk through & environment (7:37)
Jupyter notebook's walk through (6:51)
Virtual Environment introduction & setup (4:52)
Environment setup with Anaconda Prompt (13:37)
Environment setup with Anaconda navigator (8:17)
Numpy Introduction (11:42)
Operations with Numpy Objects (9:17)
Data selection with Numpy (15:23)
Pandas Overview (11:49)
Data analysis with Python & Pandas (21:38)
Data Visualization with Python-Pandas, Matplotlib & Seaborn
Data Visualization with Pandas (9:07)
Data visualization with Matplotlib (8:40)
Data Visualization with Seaborn (11:07)
Multi class Linear regression with Python & Scikit learn
Linear Regression with Python- Part 1 (23:05)
Linear Regression with Python- Part 2 (20:58)
Logistic regression with Python
Introduction of Logistic regression with Python (7:50)
How to use label encoding & one hot encoding in Logistic regression (13:15)
How to handle multicollinearity in logistic regression (8:24)
How to optimize performance with regularization & grid search (12:23)
Deep learning with Image recognition+Python+Keras+MLP
Introduction to Deep learning (7:10)
Fundamentals of deep learning (6:33)
Deep learning methodology (10:01)
Deep learning architecture (7:48)
Why Activation function in deep learning (8:08)
Relu & Softmax activation functions with Keras introduction (9:14)
Image recognition with Python, Keras & MLP- Part 1 (6:12)
Image recognition with Python, Keras & MLP- Part 2 (9:08)
Image recognition with Python, Keras & MLP- Part 3 (8:30)
Image recognition with Python, Keras & MLP- Part 4 (14:12)
K-Means Project
Lesson content locked
If you're already enrolled,
you'll need to login
.
Enroll in Course to Unlock