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The Data Science Course 2020: Complete Data Science Bootcamp

Complete Data Science Training: Mathematics, Statistics, Python, Advanced Statistics in Python, Machine & Deep Learning
Instructor:
365 Careers
308,270 students enrolled
English [Auto] More
The course provides the entire toolbox you need to become a data scientist
Fill up your resume with in demand data science skills: Statistical analysis, Python programming with NumPy, pandas, matplotlib, and Seaborn, Advanced statistical analysis, Tableau, Machine Learning with stats models and scikit-learn, Deep learning with TensorFlow
Impress interviewers by showing an understanding of the data science field
Learn how to pre-process data
Understand the mathematics behind Machine Learning (an absolute must which other courses don’t teach!)
Start coding in Python and learn how to use it for statistical analysis
Perform linear and logistic regressions in Python
Carry out cluster and factor analysis
Be able to create Machine Learning algorithms in Python, using NumPy, statsmodels and scikit-learn
Apply your skills to real-life business cases
Use state-of-the-art Deep Learning frameworks such as Google’s TensorFlowDevelop a business intuition while coding and solving tasks with big data
Unfold the power of deep neural networks
Improve Machine Learning algorithms by studying underfitting, overfitting, training, validation, n-fold cross validation, testing, and how hyperparameters could improve performance
Warm up your fingers as you will be eager to apply everything you have learned here to more and more real-life situations

The Problem

Data scientist is one of the best suited professions to thrive this century. It is digital, programming-oriented, and analytical. Therefore, it comes as no surprise that the demand for data scientists has been surging in the job marketplace.     

However, supply has been very limited. It is difficult to acquire the skills necessary to be hired as a data scientist.

 

And how can you do that?

 

Universities have been slow at creating specialized data science programs. (not to mention that the ones that exist are very expensive and time consuming)

 

Most online courses focus on a specific topic and it is difficult to understand how the skill they teach fit in the complete picture

 

The Solution

 

Data science is a multidisciplinary field. It encompasses a wide range of topics.

 

  • Understanding of the data science field and the type of analysis carried out

     

  • Mathematics

     

  • Statistics

     

  • Python

     

  • Applying advanced statistical techniques in Python

     

  • Data Visualization

     

  • Machine Learning

     

  • Deep Learning

     

Each of these topics builds on the previous ones. And you risk getting lost along the way if you don’t acquire these skills in the right order. For example, one would struggle in the application of Machine Learning techniques before understanding the underlying Mathematics. Or, it can be overwhelming to study regression analysis in Python before knowing what a regression is.

 

So, in an effort to create the most effective, time-efficient, and structured data science training available online, we created The Data Science Course 2020.

 

We believe this is the first training program that solves the biggest challenge to entering the data science field – having all the necessary resources in one place.

 

Moreover, our focus is to teach topics that flow smoothly and complement each other. The course teaches you everything you need to know to become a data scientist at a fraction of the cost of traditional programs (not to mention the amount of time you will save).

 

The Skills

   1. Intro to Data and Data Science

Big data, business intelligence, business analytics, machine learning and artificial intelligence. We know these buzzwords belong to the field of data science but what do they all mean?     

Why learn it?
As a candidate data scientist, you must understand the ins and outs of each of these areas and recognise the appropriate approach to solving a problem. This ‘Intro to data and data science’ will give you a comprehensive look at all these buzzwords and where they fit in the realm of data science.
 

   2. Mathematics 

Learning the tools is the first step to doing data science. You must first see the big picture to then examine the parts in detail.

 

We take a detailed look specifically at calculus and linear algebra as they are the subfields data science relies on.

 

Why learn it?

 

Calculus and linear algebra are essential for programming in data science. If you want to understand advanced machine learning algorithms, then you need these skills in your arsenal.

   3. Statistics 

You need to think like a scientist before you can become a scientist. Statistics trains your mind to frame problems as hypotheses and gives you techniques to test these hypotheses, just like a scientist.

 

Why learn it?

 

This course doesn’t just give you the tools you need but teaches you how to use them. Statistics trains you to think like a scientist.

   4. Python

Python is a relatively new programming language and, unlike R, it is a general-purpose programming language. You can do anything with it! Web applications, computer games and data science are among many of its capabilities. That’s why, in a short space of time, it has managed to disrupt many disciplines. Extremely powerful libraries have been developed to enable data manipulation, transformation, and visualisation. Where Python really shines however, is when it deals with machine and deep learning.

Why learn it?

 

When it comes to developing, implementing, and deploying machine learning models through powerful frameworks such as scikit-learn, TensorFlow, etc, Python is a must have programming language.

 

   5. Tableau

Data scientists don’t just need to deal with data and solve data driven problems. They also need to convince company executives of the right decisions to make. These executives may not be well versed in data science, so the data scientist must but be able to present and visualise the data’s story in a way they will understand. That’s where Tableau comes in – and we will help you become an expert story teller using the leading visualisation software in business intelligence and data science.

Why learn it?

 

A data scientist relies on business intelligence tools like Tableau to communicate complex results to non-technical decision makers.

 

   6. Advanced Statistics 

Regressions, clustering, and factor analysis are all disciplines that were invented before machine learning. However, now these statistical methods are all performed through machine learning to provide predictions with unparalleled accuracy. This section will look at these techniques in detail.

 

Why learn it?

 

Data science is all about predictive modelling and you can become an expert in these methods through this ‘advance statistics’ section.

 

   7. Machine Learning 

The final part of the program and what every section has been leading up to is deep learning. Being able to employ machine and deep learning in their work is what often separates a data scientist from a data analyst. This section covers all common machine learning techniques and deep learning methods with TensorFlow.

 

Why learn it?

 

Machine learning is everywhere. Companies like Facebook, Google, and Amazon have been using machines that can learn on their own for years. Now is the time for you to control the machines.

 

***What you get***

  • A $1250 data science training program

     

  • Active Q&A support

     

  • All the knowledge to get hired as a data scientist

     

  • A community of data science learners

     

  • A certificate of completion

     

  • Access to future updates

     

  • Solve real-life business cases that will get you the job   

You will become a data scientist from scratch

 

We are happy to offer an unconditional 30-day money back in full guarantee. No risk for you. The content of the course is excellent, and this is a no-brainer for us, as we are certain you will love it.

Why wait? Every day is a missed opportunity.

Click the “Buy Now” button and become a part of our data scientist program today.

 

 

Part 1: Introduction

1
A Practical Example: What You Will Learn in This Course
2
What Does the Course Cover
3
Download All Resources and Important FAQ

The Field of Data Science - The Various Data Science Disciplines

1
Data Science and Business Buzzwords: Why are there so Many?
2
Data Science and Business Buzzwords: Why are there so Many?
3
What is the difference between Analysis and Analytics
4
What is the difference between Analysis and Analytics
5
Business Analytics, Data Analytics, and Data Science: An Introduction
6
Business Analytics, Data Analytics, and Data Science: An Introduction
7
Continuing with BI, ML, and AI
8
Continuing with BI, ML, and AI
9
A Breakdown of our Data Science Infographic
10
A Breakdown of our Data Science Infographic

The Field of Data Science - Connecting the Data Science Disciplines

1
Applying Traditional Data, Big Data, BI, Traditional Data Science and ML
2
Applying Traditional Data, Big Data, BI, Traditional Data Science and ML

The Field of Data Science - The Benefits of Each Discipline

1
The Reason Behind These Disciplines
2
The Reason Behind These Disciplines

The Field of Data Science - Popular Data Science Techniques

1
Techniques for Working with Traditional Data
2
Techniques for Working with Traditional Data
3
Real Life Examples of Traditional Data
4
Techniques for Working with Big Data
5
Techniques for Working with Big Data
6
Real Life Examples of Big Data
7
Business Intelligence (BI) Techniques
8
Business Intelligence (BI) Techniques
9
Real Life Examples of Business Intelligence (BI)
10
Techniques for Working with Traditional Methods
11
Techniques for Working with Traditional Methods
12
Real Life Examples of Traditional Methods
13
Machine Learning (ML) Techniques
14
Machine Learning (ML) Techniques
15
Types of Machine Learning
16
Types of Machine Learning
17
Real Life Examples of Machine Learning (ML)
18
Real Life Examples of Machine Learning (ML)

The Field of Data Science - Popular Data Science Tools

1
Necessary Programming Languages and Software Used in Data Science
2
Necessary Programming Languages and Software Used in Data Science

The Field of Data Science - Careers in Data Science

1
Finding the Job - What to Expect and What to Look for
2
Finding the Job - What to Expect and What to Look for

The Field of Data Science - Debunking Common Misconceptions

1
Debunking Common Misconceptions
2
Debunking Common Misconceptions

Part 2: Probability

1
The Basic Probability Formula
2
The Basic Probability Formula
3
Computing Expected Values
4
Computing Expected Values
5
Frequency
6
Frequency
7
Events and Their Complements
8
Events and Their Complements

Probability - Combinatorics

1
Fundamentals of Combinatorics
2
Fundamentals of Combinatorics
3
Permutations and How to Use Them
4
Permutations and How to Use Them
5
Simple Operations with Factorials
6
Simple Operations with Factorials
7
Solving Variations with Repetition
8
Solving Variations with Repetition
9
Solving Variations without Repetition
10
Solving Variations without Repetition
11
Solving Combinations
12
Solving Combinations
13
Symmetry of Combinations
14
Symmetry of Combinations
15
Solving Combinations with Separate Sample Spaces
16
Solving Combinations with Separate Sample Spaces
17
Combinatorics in Real-Life: The Lottery
18
Combinatorics in Real-Life: The Lottery
19
A Recap of Combinatorics
20
A Practical Example of Combinatorics

Probability - Bayesian Inference

1
Sets and Events
2
Sets and Events
3
Ways Sets Can Interact
4
Ways Sets Can Interact
5
Intersection of Sets
6
Intersection of Sets
7
Union of Sets
8
Union of Sets
9
Mutually Exclusive Sets
10
Mutually Exclusive Sets
11
Dependence and Independence of Sets
12
Dependence and Independence of Sets
13
The Conditional Probability Formula
14
The Conditional Probability Formula
15
The Law of Total Probability
16
The Additive Rule
17
The Additive Rule
18
The Multiplication Law
19
The Multiplication Law
20
Bayes' Law
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Includes

28 hours on-demand video
90 articles
Full lifetime access
Access on mobile and TV
Certificate of Completion