Python Course For Data Science and Machine Learning
Become a professional Data Scientist and learn how to use Python, NumPy, Pandas, Machine Learning, and more!
Development ,Data Science,Machine Learning
Lectures -141
Resources -3
Duration -22.5 hours
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Course Description
Python For Data Science and Machine Learning From A-Z course will help you learn Python for Data Science & Machine Learning from end-to-end.
You will learn how to program using Python for Data Science and Machine Learning in this useful, hands-on course. This includes how to analyze and visualize data as well as how to use it in a useful way.
Our major goal is to provide you with the education needed to become a professional Data Scientist with Python, obtain your first job, and understand the ins and outs of Python programming for Data Science and Machine Learning.
Python For Data Science and Machine Learning Overview
In this course, we'll discuss some of the top and most crucial Python data science packages, including NumPy, Pandas, and Matplotlib.
Many mathematical and statistical processes are made simpler by the NumPy library, which also serves as the foundation for many pandas library features.
Pandas are the mainstay of a lot of Python data science work. It is a Python package designed expressly to deal with data easier.
For examining and experimenting with data, NumPy and Pandas are fantastic tools. A data visualization package called Matplotlib creates graphs similar to those in Google Sheets or Excel. We take you from the fundamentals of Python Programming for Data Science to expertise by fusing practical work with sound theoretical teaching.
The fundamentals of machine learning using Python are covered in this course. You'll study the differences between supervised and unsupervised learning, consider the connection between statistical modeling and machine learning, and compare the two.
We know that theory is necessary to lay a strong foundation, but theory by itself won't cut it, which is why this course is jam-packed with real-world, actionable examples that you can follow step by step. This course is for you whether you are new to programming or want to learn more about the sophisticated capabilities of the Python programming language.
Jobs for data scientists, machine learning engineers, big data engineers, IT specialists, database developers, and many more include Python coding skills as either a requirement or recommendation. You will gain a more competitive edge in any of these data specialties demanding knowledge of statistical methods if you add Python coding language abilities to your CV.
Together, we'll provide you with the fundamental knowledge you need to understand not just how to use machine learning algorithms, analyze and visualize data, and write Python code, but also how to get paid for your newly acquired programming talents.
What this course covers?
1: Python for Data Science + Machine Learning Course Intro
You will learn everything about the Python for Data Science and Machine Learning course, the data science market and industry, job openings and wages, and the numerous data science job roles in this introductory section.
Intro to Data Science + Machine Learning with Python
Data Science Industry and Marketplace
Data Science Job Opportunities
How To Get a Data Science Job
Machine Learning Concepts & Algorithms
2: Python Data Analysis/Visualization
You will receive a thorough introduction to data analysis and data visualization using Python in this section, along with practical, step-by-step training.
Python Crash Course
NumPy Data Analysis
Pandas Data Analysis
3: Mathematics for Data Science
You will receive a thorough introduction to the mathematics used in data science, including statistics and probability, in this section.
Descriptive Statistics
Measure of Variability
Inferential Statistics
Probability
Hypothesis Testing
4: Machine Learning
You will receive a thorough introduction to machine learning in this section, including instruction on both supervised and unsupervised ML techniques.
Intro to Machine Learning
Data Preprocessing
Linear Regression
Logistic Regression
K-Nearest Neighbors
Decision Trees
Ensemble Learning
Support Vector Machines
K-Means Clustering
PCA
5: Starting A Data Science Career
In-depth information about how to begin a career as a data scientist with practical, step-by-step training is provided in this part.
Creating a Resume
Creating a Cover Letter
Personal Branding
Freelancing + Freelance websites
Importance of Having a Website
Networking
By the end of the course, you'll be an experienced Python Data Scientist who can confidently apply for jobs and feel good about it because you have the qualifications to support it.
Who this course is for:
Students who want to learn about Python for Data Science and Machine Learning
Goals
Become a qualified data scientist, data engineer, data analyst, or accountant.
Study data wrangling, cleaning, processing, and manipulation.
Learn how to create a CV and get hired as a data scientist
Python for Data Science: How to use it
How to create sophisticated Python programs for use in real-world business situations
Python plotting tutorial (graphs, charts, plots, histograms, etc.)
Discover the different applications of NumPy for Numerical Data Machine Learning.
Machine learning: supervised vs. unsupervised
Learn about Machine Learning Concepts and Algorithms by studying Regression, Classification, Clustering, and Sci-kit.
Clustering with K-Means
Creating custom data solutions, using Python to clean, analyze, and visualize data
Probability and Testing of Hypotheses
Prerequisites
Students should have basic computer skills
Students would benefit from having prior Python Experience but not necessary
Curriculum
Check out the detailed breakdown of what’s inside the course
Introduction
7 Lectures
- Who is This Course For? 02:43 02:43
- Data Science + Machine Learning Marketplace 06:55 06:55
- Data Science Job Opportunities 04:24 04:24
- Data Science Job Roles 10:23 10:23
- What is a Data Scientist? 17:00 17:00
- How To Get a Data Science Job 18:39 18:39
- Data Science Projects Overview 11:52 11:52
Data Science & Machine Learning Concepts
6 Lectures
Python For Data Science
19 Lectures
Statistics for Data Science
8 Lectures
Probability & Hypothesis Testing
4 Lectures
NumPy Data Analysis
6 Lectures
Pandas Data Analysis
2 Lectures
Python Data Visualization
3 Lectures
Machine Learning
1 Lectures
Data Loading & Exploration
1 Lectures
Data Cleaning
2 Lectures
Feature Selecting and Engineering
1 Lectures
Linear and Logistic Regression
5 Lectures
K Nearest Neighbors
13 Lectures
Decision Trees
16 Lectures
Ensemble Learning and Random Forests
13 Lectures
Support Vector Machines
10 Lectures
K-means
3 Lectures
PCA
12 Lectures
Data Science Career
9 Lectures
Instructor Details
Juan Galvan
Hi I'm Juan. I've been an Entrepreneur since grade school. My background is in the tech space from Digital Marketing, E-commerce, Web Development to Programming. I believe in continuous education with the best of a University Degree without all the downsides of burdensome costs and inefficient methods. I look forward to helping you expand your skillsets.
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