Introduction to Machine Learning for Data Science
Introduction to Machine Learning for Data Science, available at $84.99, has an average rating of 4.5, with 64 lectures, 3 quizzes, based on 14906 reviews, and has 67771 subscribers.
You will learn about Genuinely understand what Computer Science, Algorithms, Programming, Data, Big Data, Artificial Intelligence, Machine Learning, and Data Science is. To understand how these different domains fit together, how they are different, and how to avoid the marketing fluff. The Impacts Machine Learning and Data Science is having on society. To really understand computer technology has changed the world, with an appreciation of scale. To know what problems Machine Learning can solve, and how the Machine Learning Process works. How to avoid problems with Machine Learning, to successfully implement it without losing your mind! This course is ideal for individuals who are Before you load Python, Before you start R – you need this course. This introductory course will introduce you to the Fundamentals, that you need before you start getting "Hands on". or Anyone interested in understanding how Machine Learning is used for Data Science. or Including business leaders, managers, app developers, consumers – you! or Adventurous folks, whom are ready to strap themselves into the exotic world of Data Science and Machine Learning. It is particularly useful for Before you load Python, Before you start R – you need this course. This introductory course will introduce you to the Fundamentals, that you need before you start getting "Hands on". or Anyone interested in understanding how Machine Learning is used for Data Science. or Including business leaders, managers, app developers, consumers – you! or Adventurous folks, whom are ready to strap themselves into the exotic world of Data Science and Machine Learning.
Enroll now: Introduction to Machine Learning for Data Science
Summary
Title: Introduction to Machine Learning for Data Science
Price: $84.99
Average Rating: 4.5
Number of Lectures: 64
Number of Quizzes: 3
Number of Published Lectures: 62
Number of Published Quizzes: 3
Number of Curriculum Items: 67
Number of Published Curriculum Objects: 65
Original Price: $199.99
Quality Status: approved
Status: Live
What You Will Learn
- Genuinely understand what Computer Science, Algorithms, Programming, Data, Big Data, Artificial Intelligence, Machine Learning, and Data Science is.
- To understand how these different domains fit together, how they are different, and how to avoid the marketing fluff.
- The Impacts Machine Learning and Data Science is having on society.
- To really understand computer technology has changed the world, with an appreciation of scale.
- To know what problems Machine Learning can solve, and how the Machine Learning Process works.
- How to avoid problems with Machine Learning, to successfully implement it without losing your mind!
Who Should Attend
- Before you load Python, Before you start R – you need this course. This introductory course will introduce you to the Fundamentals, that you need before you start getting "Hands on".
- Anyone interested in understanding how Machine Learning is used for Data Science.
- Including business leaders, managers, app developers, consumers – you!
- Adventurous folks, whom are ready to strap themselves into the exotic world of Data Science and Machine Learning.
Target Audiences
- Before you load Python, Before you start R – you need this course. This introductory course will introduce you to the Fundamentals, that you need before you start getting "Hands on".
- Anyone interested in understanding how Machine Learning is used for Data Science.
- Including business leaders, managers, app developers, consumers – you!
- Adventurous folks, whom are ready to strap themselves into the exotic world of Data Science and Machine Learning.
Course Most Recently Updated Nov/2018!
Thank you all for the huge response to this emerging course! We are delighted to have over 20,000 students in over 160 different countries. I’m genuinely touched by the overwhelmingly positive and thoughtful reviews. It’s such a privilege to share and introduce this important topic with everyday people in a clear and understandable way.
I’m also excited to announce that I have created real closed captions for all course material, so weather you need them due to a hearing impairment, or find it easier to follow long (great for ESL students!)… I’ve got you covered.
Most importantly:
To make this course “real”, we’ve expanded. In November of 2018, the course went from 41 lectures and 8 sections, to 62 lectures and 15 sections! We hope you enjoy the new content!
Unlock the secrets of understanding Machine Learning for Data Science!
In this introductory course, the “Backyard Data Scientist” will guide you through wilderness of Machine Learning for Data Science. Accessible to everyone, this introductory course not only explains Machine Learning, but where it fits in the “techno sphere around us”, why it’s important now, and how it will dramatically change our world today and for days to come.
Our exotic journey will include the core concepts of:
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The train wreck definition of computer science and one that will actually instead make sense.
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An explanation of data that will have you seeing data everywhere that you look!
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One of the “greatest lies” ever sold about the future computer science.
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A genuine explanation of Big Data, and how to avoid falling into the marketing hype.
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What is Artificial intelligence? Can a computer actually think? How do computers do things like navigate like a GPS or play games anyway?
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What is Machine Learning? And if a computer can think – can it learn?
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What is Data Science, and how it relates to magical unicorns!
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How Computer Science, Artificial Intelligence, Machine Learning, Big Data and Data Science interrelate to one another.
We’ll then explore the past and the future while touching on the importance, impacts and examples of Machine Learning for Data Science:
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How a perfect storm of data, computer and Machine Learning algorithms have combined together to make this important right now.
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We’ll actually make sense of how computer technology has changed over time while covering off a journey from 1956 to 2014. Do you have a super computer in your home? You might be surprised to learn the truth.
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We’ll discuss the kinds of problems Machine Learning solves, and visually explain regression, clustering and classification in a way that will intuitively make sense.
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Most importantly we’ll show how this is changing our lives. Not just the lives of business leaders, but most importantly…you too!
To make sense of the Machine part of Machine Learning, we’ll explore the Machine Learning process:
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How do you solve problems with Machine Learning and what are five things you must do to be successful?
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How to ask the right question, to be solved by Machine Learning.
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Identifying, obtaining and preparing the right data … and dealing with dirty data!
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How every mess is “unique” but that tidy data is like families!
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How to identify and apply Machine Learning algorithms, with exotic names like “Decision Trees”, “Neural Networks” “K’s Nearest Neighbors” and “Naive Bayesian Classifiers”
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And the biggest pitfalls to avoid and how to tune your Machine Learning models to help ensure a successful result for Data Science.
Our final section of the course will prepare you to begin your future journey into Machine Learning for Data Science after the course is complete. We’ll explore:
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How to start applying Machine Learning without losing your mind.
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What equipment Data Scientists use, (the answer might surprise you!)
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The top five tools Used for data science, including some surprising ones.
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And for each of the top five tools – we’ll explain what they are, and how to get started using them.
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And we’ll close off with some cautionary tales, so you can be the most successful you can be in applying Machine Learning to Data Science problems.
Bonus Course! To make this “really real”, I’ve included a bonus course!
Most importantly in the bonus course I’ll include information at the end of every section titled “Further Magic to Explore” which will help you to continue your learning experience.
In this bonus course we’ll explore:
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Creating a real live Machine Learning Example of Titanic proportions. That’s right – we are going to predict survivability onboard the Titanic!
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Use Anaconda Jupyter and python 3.x
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A crash course in python – covering all the core concepts of Python you need to make sense of code examples that follow. See the included free cheat sheet!
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Hands on running Python! (Interactively, with scripts, and with Jupyter)
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Basics of how to use Jupyter Notebooks
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Reviewing and reinforcing core concepts of Machine Learning (that we’ll soon apply!)
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Foundations of essential Machine Learning and Data Science modules:
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NumPy – An Array Implementation
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Pandas – The Python Data Analysis Library
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Matplotlib – A plotting library which produces quality figures in a variety of formats
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SciPy – The fundamental Package for scientific computing in Python
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Scikit-Learn – Simple and efficient tools data mining, data analysis, and Machine Learning
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In the titanic hands on example we’ll follow all the steps of the Machine Learning workflow throughout:
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1. Asking the right question.
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2. Identifying, obtaining, and preparing the right data
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3. Identifying and applying a Machine Learning algorithm
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4. Evaluating the performance of the model and adjusting
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5. Using and presenting the model
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We’ll also see a real world example of problems in Machine learning, including underfit and overfit.
The bonus course finishes with a conclusion and further resources to continue your Machine Learning journey.
So I invite you to join me, the Backyard Data Scientist on an exquisite journey into unlocking the secrets of Machine Learning for Data Science…. for you know – everyday people… like you!
Sign up right now, and we’ll see you – on the other side!
Course Curriculum
Chapter 1: Introduction
Lecture 1: Course Promotion Video
Lecture 2: A special message for hard of hearing and ESL students
Lecture 3: Thank you for investing in this Course!
Lecture 4: Course Overview
Lecture 5: Secret sauce inside!: How to get the most out of this course.
Lecture 6: Course Links Reference Guide and Lecture Resources
Lecture 7: Course Survey
Chapter 2: Core Concepts
Lecture 1: Core Concepts Overview
Lecture 2: Computer Science – the `Train Wreck' Definition
Lecture 3: What's Data / "I can see data everywhere!"
Lecture 4: Structured vs Unstructured Data
Lecture 5: Computer Science – Definition Revisited & The Greatest "lie" ever SOLD….
Lecture 6: What's big data?
Lecture 7: What is Artificial Intelligence (AI)
Lecture 8: What is Machine Learning? – Part 1 – The ideas
Lecture 9: What is Machine Learning? – Part 2 – An Example
Lecture 10: What is data science?
Lecture 11: Recap & How do these relate to each other?
Chapter 3: Impacts, Importance and examples
Lecture 1: Impacts, Importance and examples – Overview
Lecture 2: Why is this important now?
Lecture 3: Computers exploding! – The explosive growth of computer power explained.
Lecture 4: What problems does Machine Learning Solve?
Lecture 5: Where it's transforming our lives
Chapter 4: The Machine Learning Process
Lecture 1: The Machine Learning Process – Overview
Lecture 2: 5 Step Machine Learning Process Overview
Lecture 3: 1 – Asking the right question
Lecture 4: 2 – Identifying, obtaining, and preparing the right data
Lecture 5: 3 – Identifying and applying a ML Algorithm
Lecture 6: 4 – Evaluating the performance of the model and adjusting
Lecture 7: 5 – Using and presenting the model
Chapter 5: How to apply Machine Learning for Data Science
Lecture 1: How to apply Machine Learning for Data Science – Overview
Lecture 2: Where to begin your journey
Lecture 3: Common platforms and tools for Data Science
Lecture 4: Data Science using – R
Lecture 5: Data Science using – Python
Lecture 6: Data Science using SQL
Lecture 7: Data Science using Excel
Lecture 8: Data Science using RapidMiner
Lecture 9: Cautionary Tales
Chapter 6: Conclusion
Lecture 1: All done! What's next?
Chapter 7: Section 1 -Bonus course – Machine Learning in Python and Jupyter for Beginners
Lecture 1: Introduction and Anaconda Installation
Lecture 2: What will we cover!
Lecture 3: Introduction and Setup
Chapter 8: Section 2 -Bonus course – Machine Learning in Python and Jupyter for Beginners
Lecture 1: Crash course in Python – Beginning concepts
Lecture 2: Crash course in Python – Strings, Slices and Lists!
Lecture 3: Crash course in Python – Expressions, Operators, Conditions and Loops
Lecture 4: Crash course in Python – Functions, Scope, Dictionaries and more!
Chapter 9: Section 3 – Bonus course – Machine Learning in Python and Jupyter for Beginners
Lecture 1: Hands on Running Python
Chapter 10: Section 4 – Bonus course – Machine Learning in Python and Jupyter for Beginners
Lecture 1: Foundations of Machine Learning and Data Science – Definitions and concepts.
Lecture 2: Foundations of Machine Learning and Data Science – Machine Learning Workflow
Lecture 3: Foundations of Machine Learning and Data Science – Algorithms, concepts and more
Chapter 11: Section 5 -Bonus course – Machine Learning in Python and Jupyter for Beginners
Lecture 1: Introducing the essential modules for Machine Learning, and NumPy Basics
Lecture 2: Pandas and Matplotlib
Lecture 3: Analysis using Pandas, plotting in Matplotlib, intro to SciPy and Scikit-learn
Chapter 12: Section 6 – Bonus course – Machine Learning in Python and Jupyter for Beginners
Lecture 1: A Titanic Example – Getting our start.
Lecture 2: A Titanic Example – Understanding the data set.
Lecture 3: A Titanic Example – Understanding the data set in regards to survival
Lecture 4: A Titanic Example – Preparing the right data and applying a basic algorithm
Lecture 5: A Titanic Example – Applying regression algorithms.
Lecture 6: A Titanic Example – Applying Decision Trees (example of overfit and underfit)
Chapter 13: Section 7 -Bonus course – Machine Learning in Python and Jupyter for Beginners
Lecture 1: Conclusions – for our Titanic Example, important concepts and where to go next!
Chapter 14: Bonus Content
Lecture 1: Bonus Article – The startling breakthrough in Machine Learning from 2016.
Instructors
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David Valentine
The Backyard Data Scientist
Rating Distribution
- 1 stars: 125 votes
- 2 stars: 240 votes
- 3 stars: 1860 votes
- 4 stars: 5951 votes
- 5 stars: 6735 votes
Frequently Asked Questions
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You can view and review the lecture materials indefinitely, like an on-demand channel.
Can I take my courses with me wherever I go?
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