Description
Machine Learning is simply recognizing patterns in your data to be able to make improvements and intelligent decisions on its own.
Python
- Introduction to Python
- Python Introduction and IDE
- Basic Commands in Python
- Objects, Number and Strings
- Objects, List, Tuples and Dictionaries
- If_else and For_loop
- Functions and Packages
- Important Packages
- Python built-in libraries
- Python third party libraries
- Object oriented programming
- classes
Introduction to machine learning
- Introduction to analytics and machine learning
- Why machine learning ?
- Why Python ?
- Python stack for data science
Descriptive analytics
- Working with DataFrames in Python
- IPL dataset description using dataframe in python
- Loading Dataset into pandas dataframe
- Displaying first few records of the dataframe
- Finding summary of the dataframe
- Slicing and indexing of dataframe
- Value counts and cross tabulations
- Sorting dataframe by column values
- Creating new columns
- Grouping and aggregating
- Joining dataframes
- Renaming columns
- Apply operations to multiple columns
- Filtering Records based on conditions
- Removing a column or a row from a dataset
- Handling Missing values
- Exploration of Data using Visualization
- Drawing plots
- Bar chart
- Histogram
- Distribution or density Plot
- Box plot
- Comparing distribution
- Scatter plot
- Pair Plot
Probability distributions and hypothesis tests
- Overview
- Probability Theory – Terminology
- – Random Experiment
- –Â Sample space
- – Event
- Random Variables
- Binomial Distribution
- Poisson Distribution
- Exponential Distribution
- Normal Distribution
- Central Limit Theorem
- Hypothesis Test
- Analysis of Variance
Linear regression
- Simple linear Regression
- Steps in building a regression model
- Building a simple linear regression model
- Model diagnostics
- Multiple Linear regression
Classification problems
- Classification Overview
- Binary Logistic Regression
- Credit Classification
- Gain Chart and lift chart
- Classification Tree
Advanced machine learning
- Overview
- Gradient Descent Algorithm
- Advanced regression models
- Advanced machine learning algorithms
Clustering
- Overview
- How does clustering work ?
- K means clustering
- Creating product segments using clustering
- Hierarchical clustering
Forecasting
- Forecasting overview
- Components of time series data
- Moving Average
- Decomposing time series
Support Vector Machines
- Overview
- Kernel tricks
- Example
Recommender systems
- Overview
- Association Rules
- Collaborative filtering
- Using surprise Library
Text analytics ( NLTP)
- Overview
- Sentiment Classification
- Naïve-Bayer’s model for sentiment Classification
- Using TF-IDF victorizer
Neural Networks
- Neural Networks Introduction
- Activation functions
- Optimizers
- Loss functions
Deploying application in Azure
Deploying ML application in AWS
For more inputs on Machine Learning with Python you can connect here.
Contact the L&D Specialist at Locus IT.
Locus Academy has more than a decade experience in delivering the training/staffing on Machine Learning for corporates across the globe. The participants for the training/staffing on Machine Learning are extremely satisfied and are able to implement the learnings in their on going projects.
Reviews
There are no reviews yet.