Learn IT Niche Skills from IT Professionals and Academicians
Python, Machine Learning, Artificial Intelligence,IoT, Web Development, Full Stack Development,Test Automation and much more
Kaushalya Technical Training and Consltancy Services
Datasciences using Python
Duration : 80 hours
Datasciences with python has become the hot skill in the industry. It is essential for the graduates and professionals to learn and master these skills. One has to be well versed with python, statistics, mathematics and algorithm to become a data scientist.
Objectives of Training
Provide minds-on and hands-on training
Understand Python and its applications
Understand Data science and how to use python to solve data science problem
Learn python libraries such as Numpy, Pandas,Matlablib, Scikit learn,Web scraping, OpenCV and NLTK to build
Learn machine learning algorithmst
Build sample datascience project to solve real life problems
Outcome of Training
Trainees are expected to be well versed with python and its libraries to solve data science problem
Trainees should be able to independently identify data science problem and build model to solve the problem
To develop ability to convert algorithm to python code
Training on Python Data science should enable trainees to solve objective and programming type questions. This would help them to prepare for placements/switch career.
Course Content
Data Science Overview
Data Science
Data Scientists
Examples of Data Science
Python for Data Science
Introduction to Python and its usage in the industry
Introduction to Anaconda
Installation of Anaconda Python Distribution
Jupyter Notebook Installation
Jupyter Notebook Introduction
Variable Assignment
Basic Data Types: Integer, Float, String, None, and Boolean; Typecasting
Creating, accessing, and slicing tuples
Creating, accessing, and slicing lists
Creating, viewing, accessing, and modifying dicts
Creating and using operations on sets
Basic Operators: 'in', '+', '*'
Functions
Lambda functions
Object Oriented Programming
Regular expression
Database programming
Sample programs and assignment
Introduction to Data Visualization
Processes in Data Science
Data Wrangling, Data Exploration, and Model Selection
Exploratory Data Analysis or EDA
Data Visualization
Plotting
Hypothesis Building and Testing
Introduction to Statistics
Statistical and Non-Statistical Analysis
Some Common Terms Used in Statistics
Data Distribution: Central Tendency, Percentiles, Dispersion
Histogram
Bell Curve
Hypothesis Testing
Chi-Square Test
Correlation Matrix
Inferential Statistics
NumPy Overview
Properties, Purpose, and Types of ndarray
Class and Attributes of ndarray Object
Basic Operations: Concept and Examples
Accessing Array Elements: Indexing, Slicing, Iteration, Indexing with Boolean Arrays
Copy and Views
Universal Functions (ufunc)
Shape Manipulation
Broadcasting
Linear Algebra
Data Structures
Series
DataFrame
Missing Values
Data Operations
Data Standardization
Pandas File Read and Write Support
SQL Operation
Introduction to Data Visualization
Python Libraries
Matplotlib Features:
Plots
Line Properties Plot with (x, y)
Controlling Line Patterns and Colors
Set Axis, Labels, and Legend Properties
Alpha and Annotation
Multiple Plots
Subplots
Types of Plots and Seaborn
Introduction to Machine Learning
Machine Learning Approach
How Supervised and Unsupervised Learning Models Work