Python For Datascience :
This introduction to Python will kickstart your learning of Python for data science, as well as programming in general. This beginner-friendly Python course will take you from zero to programming in Python in a matter of hours.
Upon its completion, you’ll be able to write your own Python scripts and perform basic hands-on data analysis using our Jupyter-based lab environment. If you want to learn Python from scratch, this course is for you.
COURSE SYLLABUS
- Your first program
- Types
- Expressions and Variables
- String Operations
- Lists and Tuples
- Sets
- Dictionaries
- Conditions and Branching
- Loops
- Functions
- Objects and Classes
- Reading files with open
- Writing files with open
- Loading data with Pandas
- Working with and Saving data with Pandas
- Numpy 1D Arrays
- Numpy 2D Arrays
- Simple APIs
- API Setup
GENERAL INFORMATION
- This course is self-paced.
- It can be taken at any time.
- It can be audited as many times as you wish.
Python Free Course and Certificate Link :Click HereSQL Free Course :
About This Course
This isn’t your typical textbook introduction. You’re not just learning through lectures. At the end of each module there are assignments, hands-on exercises, review questions, and also a final exam. Successfully completing this course earns you a certificate. So let’s get started!
Course Syllabus
- Module 1 -SQL and Relational Databases 101
- Introduction to SQL and Relational Databases
- Information and Data Models
- Types of Relationships
- Mapping Entities to Tables
- Relational Model Concepts
- Module 2 – Relational Model Constraints and Data Objects
- Relational Model Constraints Introduction
- Relational Model Constraints Advanced
- Module 3 – Data Definition Language (DDL) and Data Manipulation Language (DML)
- CREATE TABLE statement
- INSERT statement
- SELECT statement
- UPDATE and DELETE statements
- Module 4 – Advanced SQL
- String Patterns, Ranges, and Sets
- Sorting Result Sets
- Grouping Result Sets
- Module 5 – Working with multiple tables
- Join Overview
- Inner Join
Outer Join
SQL Free Course and Certificate : Click Here
Machine Learning :
About This Course
ook into how Statistical Modeling relates to Machine Learning, and do a comparison of each.
Course Syllabus
Module 5 – Dimensionality Reduction & Collaborative Filtering
Machine Learning Free Course and certificate : Click Here
Datascience with Python
Data Analysis with Python
Data Analysis has always been a very important field and a highly demanded skill. Until recently, it has been practiced using mostly closed, expensive, and limited tools like Excel or Tableau. Python, pandas, and other open-source libraries have changed Data Analysis forever and have become must-have tools for anyone looking to build a career as a Data Analyst.
Python for Data Science
This introduction to Python will kickstart your learning of Python for data science, as well as programming in general. This beginner-friendly Python course will take you from zero to programming in Python in a matter of hours. Upon its completion, you’ll be able to write your own Python scripts. If you want to learn Python from scratch, this course is for you.
Free Datascience with python : Click Here
Learn how to analyze data using Python. This course will take you from the basics of Python to exploring many different types of data. You will learn how to prepare data for analysis, perform simple statistical analyses, create meaningful data visualizations, predict future trends from data, and more!
- Import data sets
- Clean and prepare data for analysis
- Manipulate pandas DataFrame
- Summarize data
- Build machine learning models using scikit-learn
- Build data pipelines
Data Analysis with Python
is delivered through lectures, hands-on labs, and assignments. It includes the following parts:
- Data Analysis libraries: will learn to use Pandas DataFrames, Numpy multi-dimensional arrays, and SciPy libraries to work with various datasets. We will introduce you to pandas, an open-source library, and we will use it to load, manipulate, analyze, and visualize cool datasets. Then we will introduce you to another open-source library, scikit-learn, and we will use some of its machine learning algorithms to build smart models and make cool predictions.
- Learning Objectives
- Understanding the Domain
- Understanding the Dataset
- Python package for data science
- Importing and Exporting Data in Python
- Basic Insights from Datasets
Module 2 – Cleaning and Preparing the Data
- Identify and Handle Missing Values
- Data Formatting
- Data Normalization Sets
- Binning
- Indicator variables
Module 3 – Summarizing the Data Frame
Descriptive Statistics
- Basic of Grouping
- ANOVA
- Correlation
- More on Correlation
Module 4 – Model Development
Simple and Multiple Linear Regression
Model Evaluation Using Visualization
Polynomial Regression and Pipelines
R-squared and MSE for In-Sample Evaluation
Prediction and Decision Making
Module 5 – Model Evaluation
- Model Evaluation
- Over-fitting, Under-fitting, and Model Selection
- Ridge Regression
- Grid Search
- Model Refinement
- GENERAL INFORMATION
- This course is self-paced.
- It can be taken at any time.
- It can be audited as many times as you wish.
- Python programming, Statistics
- REQUIREMENTS
- Some Python experience is expected
- Python for Data Science
Free Data Analysis course with Python :Click Here