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    SpicyMags.xyz

    The Data Science Course 2023: Complete Data Science Bootcamp

    Posted By: ELK1nG
    The Data Science Course 2023: Complete Data Science Bootcamp

    The Data Science Course 2023: Complete Data Science Bootcamp
    Last updated 12/2022
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
    Language: English | Size: 14.78 GB | Duration: 31h 51m

    Complete Data Science Training: Mathematics, Statistics, Python, Advanced Statistics in Python, Machine & Deep Learning

    What you'll learn

    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

    Requirements

    No prior experience is required. We will start from the very basics

    You’ll need to install Anaconda. We will show you how to do that step by step

    Microsoft Excel 2003, 2010, 2013, 2016, or 365

    Description

    The ProblemData 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 2023.   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 ScienceBig 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. PythonPython 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. TableauData 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.

       


    Overview

    Section 1: Part 1: Introduction

    Lecture 1 A Practical Example: What You Will Learn in This Course

    Lecture 2 What Does the Course Cover

    Lecture 3 Download All Resources and Important FAQ

    Section 2: The Field of Data Science - The Various Data Science Disciplines

    Lecture 4 Data Science and Business Buzzwords: Why are there so Many?

    Lecture 5 What is the difference between Analysis and Analytics

    Lecture 6 Business Analytics, Data Analytics, and Data Science: An Introduction

    Lecture 7 Continuing with BI, ML, and AI

    Lecture 8 A Breakdown of our Data Science Infographic

    Section 3: The Field of Data Science - Connecting the Data Science Disciplines

    Lecture 9 Applying Traditional Data, Big Data, BI, Traditional Data Science and ML

    Section 4: The Field of Data Science - The Benefits of Each Discipline

    Lecture 10 The Reason Behind These Disciplines

    Section 5: The Field of Data Science - Popular Data Science Techniques

    Lecture 11 Techniques for Working with Traditional Data

    Lecture 12 Real Life Examples of Traditional Data

    Lecture 13 Techniques for Working with Big Data

    Lecture 14 Real Life Examples of Big Data

    Lecture 15 Business Intelligence (BI) Techniques

    Lecture 16 Real Life Examples of Business Intelligence (BI)

    Lecture 17 Techniques for Working with Traditional Methods

    Lecture 18 Real Life Examples of Traditional Methods

    Lecture 19 Machine Learning (ML) Techniques

    Lecture 20 Types of Machine Learning

    Lecture 21 Real Life Examples of Machine Learning (ML)

    Section 6: The Field of Data Science - Popular Data Science Tools

    Lecture 22 Necessary Programming Languages and Software Used in Data Science

    Section 7: The Field of Data Science - Careers in Data Science

    Lecture 23 Finding the Job - What to Expect and What to Look for

    Section 8: The Field of Data Science - Debunking Common Misconceptions

    Lecture 24 Debunking Common Misconceptions

    Section 9: Part 2: Probability

    Lecture 25 The Basic Probability Formula

    Lecture 26 Computing Expected Values

    Lecture 27 Frequency

    Lecture 28 Events and Their Complements

    Section 10: Probability - Combinatorics

    Lecture 29 Fundamentals of Combinatorics

    Lecture 30 Permutations and How to Use Them

    Lecture 31 Simple Operations with Factorials

    Lecture 32 Solving Variations with Repetition

    Lecture 33 Solving Variations without Repetition

    Lecture 34 Solving Combinations

    Lecture 35 Symmetry of Combinations

    Lecture 36 Solving Combinations with Separate Sample Spaces

    Lecture 37 Combinatorics in Real-Life: The Lottery

    Lecture 38 A Recap of Combinatorics

    Lecture 39 A Practical Example of Combinatorics

    Section 11: Probability - Bayesian Inference

    Lecture 40 Sets and Events

    Lecture 41 Ways Sets Can Interact

    Lecture 42 Intersection of Sets

    Lecture 43 Union of Sets

    Lecture 44 Mutually Exclusive Sets

    Lecture 45 Dependence and Independence of Sets

    Lecture 46 The Conditional Probability Formula

    Lecture 47 The Law of Total Probability

    Lecture 48 The Additive Rule

    Lecture 49 The Multiplication Law

    Lecture 50 Bayes' Law

    Lecture 51 A Practical Example of Bayesian Inference

    Section 12: Probability - Distributions

    Lecture 52 Fundamentals of Probability Distributions

    Lecture 53 Types of Probability Distributions

    Lecture 54 Characteristics of Discrete Distributions

    Lecture 55 Discrete Distributions: The Uniform Distribution

    Lecture 56 Discrete Distributions: The Bernoulli Distribution

    Lecture 57 Discrete Distributions: The Binomial Distribution

    Lecture 58 Discrete Distributions: The Poisson Distribution

    Lecture 59 Characteristics of Continuous Distributions

    Lecture 60 Continuous Distributions: The Normal Distribution

    Lecture 61 Continuous Distributions: The Standard Normal Distribution

    Lecture 62 Continuous Distributions: The Students' T Distribution

    Lecture 63 Continuous Distributions: The Chi-Squared Distribution

    Lecture 64 Continuous Distributions: The Exponential Distribution

    Lecture 65 Continuous Distributions: The Logistic Distribution

    Lecture 66 A Practical Example of Probability Distributions

    Section 13: Probability - Probability in Other Fields

    Lecture 67 Probability in Finance

    Lecture 68 Probability in Statistics

    Lecture 69 Probability in Data Science

    Section 14: Part 3: Statistics

    Lecture 70 Population and Sample

    Section 15: Statistics - Descriptive Statistics

    Lecture 71 Types of Data

    Lecture 72 Levels of Measurement

    Lecture 73 Categorical Variables - Visualization Techniques

    Lecture 74 Categorical Variables Exercise

    Lecture 75 Numerical Variables - Frequency Distribution Table

    Lecture 76 Numerical Variables Exercise

    Lecture 77 The Histogram

    Lecture 78 Histogram Exercise

    Lecture 79 Cross Tables and Scatter Plots

    Lecture 80 Cross Tables and Scatter Plots Exercise

    Lecture 81 Mean, median and mode

    Lecture 82 Mean, Median and Mode Exercise

    Lecture 83 Skewness

    Lecture 84 Skewness Exercise

    Lecture 85 Variance

    Lecture 86 Variance Exercise

    Lecture 87 Standard Deviation and Coefficient of Variation

    Lecture 88 Standard Deviation and Coefficient of Variation Exercise

    Lecture 89 Covariance

    Lecture 90 Covariance Exercise

    Lecture 91 Correlation Coefficient

    Lecture 92 Correlation Coefficient Exercise

    Section 16: Statistics - Practical Example: Descriptive Statistics

    Lecture 93 Practical Example: Descriptive Statistics

    Lecture 94 Practical Example: Descriptive Statistics Exercise

    Section 17: Statistics - Inferential Statistics Fundamentals

    Lecture 95 Introduction

    Lecture 96 What is a Distribution

    Lecture 97 The Normal Distribution

    Lecture 98 The Standard Normal Distribution

    Lecture 99 The Standard Normal Distribution Exercise

    Lecture 100 Central Limit Theorem

    Lecture 101 Standard error

    Lecture 102 Estimators and Estimates

    Section 18: Statistics - Inferential Statistics: Confidence Intervals

    Lecture 103 What are Confidence Intervals?

    Lecture 104 Confidence Intervals; Population Variance Known; Z-score

    Lecture 105 Confidence Intervals; Population Variance Known; Z-score; Exercise

    Lecture 106 Confidence Interval Clarifications

    Lecture 107 Student's T Distribution

    Lecture 108 Confidence Intervals; Population Variance Unknown; T-score

    Lecture 109 Confidence Intervals; Population Variance Unknown; T-score; Exercise

    Lecture 110 Margin of Error

    Lecture 111 Confidence intervals. Two means. Dependent samples

    Lecture 112 Confidence intervals. Two means. Dependent samples Exercise

    Lecture 113 Confidence intervals. Two means. Independent Samples (Part 1)

    Lecture 114 Confidence intervals. Two means. Independent Samples (Part 1). Exercise

    Lecture 115 Confidence intervals. Two means. Independent Samples (Part 2)

    Lecture 116 Confidence intervals. Two means. Independent Samples (Part 2). Exercise

    Lecture 117 Confidence intervals. Two means. Independent Samples (Part 3)

    Section 19: Statistics - Practical Example: Inferential Statistics

    Lecture 118 Practical Example: Inferential Statistics

    Lecture 119 Practical Example: Inferential Statistics Exercise

    Section 20: Statistics - Hypothesis Testing

    Lecture 120 Null vs Alternative Hypothesis

    Lecture 121 Further Reading on Null and Alternative Hypothesis

    Lecture 122 Rejection Region and Significance Level

    Lecture 123 Type I Error and Type II Error

    Lecture 124 Test for the Mean. Population Variance Known

    Lecture 125 Test for the Mean. Population Variance Known Exercise

    Lecture 126 p-value

    Lecture 127 Test for the Mean. Population Variance Unknown

    Lecture 128 Test for the Mean. Population Variance Unknown Exercise

    Lecture 129 Test for the Mean. Dependent Samples

    Lecture 130 Test for the Mean. Dependent Samples Exercise

    Lecture 131 Test for the mean. Independent Samples (Part 1)

    Lecture 132 Test for the mean. Independent Samples (Part 1). Exercise

    Lecture 133 Test for the mean. Independent Samples (Part 2)

    Lecture 134 Test for the mean. Independent Samples (Part 2). Exercise

    Section 21: Statistics - Practical Example: Hypothesis Testing

    Lecture 135 Practical Example: Hypothesis Testing

    Lecture 136 Practical Example: Hypothesis Testing Exercise

    Section 22: Part 4: Introduction to Python

    Lecture 137 Introduction to Programming

    Lecture 138 Why Python?

    Lecture 139 Why Jupyter?

    Lecture 140 Installing Python and Jupyter

    Lecture 141 Understanding Jupyter's Interface - the Notebook Dashboard

    Lecture 142 Prerequisites for Coding in the Jupyter Notebooks

    Section 23: Python - Variables and Data Types

    Lecture 143 Variables

    Lecture 144 Numbers and Boolean Values in Python

    Lecture 145 Python Strings

    Section 24: Python - Basic Python Syntax

    Lecture 146 Using Arithmetic Operators in Python

    Lecture 147 The Double Equality Sign

    Lecture 148 How to Reassign Values

    Lecture 149 Add Comments

    Lecture 150 Understanding Line Continuation

    Lecture 151 Indexing Elements

    Lecture 152 Structuring with Indentation

    Section 25: Python - Other Python Operators

    Lecture 153 Comparison Operators

    Lecture 154 Logical and Identity Operators

    Section 26: Python - Conditional Statements

    Lecture 155 The IF Statement

    Lecture 156 The ELSE Statement

    Lecture 157 The ELIF Statement

    Lecture 158 A Note on Boolean Values

    Section 27: Python - Python Functions

    Lecture 159 Defining a Function in Python

    Lecture 160 How to Create a Function with a Parameter

    Lecture 161 Defining a Function in Python - Part II

    Lecture 162 How to Use a Function within a Function

    Lecture 163 Conditional Statements and Functions

    Lecture 164 Functions Containing a Few Arguments

    Lecture 165 Built-in Functions in Python

    Section 28: Python - Sequences

    Lecture 166 Lists

    Lecture 167 Using Methods

    Lecture 168 List Slicing

    Lecture 169 Tuples

    Lecture 170 Dictionaries

    Section 29: Python - Iterations

    Lecture 171 For Loops

    Lecture 172 While Loops and Incrementing

    Lecture 173 Lists with the range() Function

    Lecture 174 Conditional Statements and Loops

    Lecture 175 Conditional Statements, Functions, and Loops

    Lecture 176 How to Iterate over Dictionaries

    Section 30: Python - Advanced Python Tools

    Lecture 177 Object Oriented Programming

    Lecture 178 Modules and Packages

    Lecture 179 What is the Standard Library?

    Lecture 180 Importing Modules in Python

    Section 31: Part 5: Advanced Statistical Methods in Python

    Lecture 181 Introduction to Regression Analysis

    Section 32: Advanced Statistical Methods - Linear Regression with StatsModels

    Lecture 182 The Linear Regression Model

    Lecture 183 Correlation vs Regression

    Lecture 184 Geometrical Representation of the Linear Regression Model

    Lecture 185 Python Packages Installation

    Lecture 186 First Regression in Python

    Lecture 187 First Regression in Python Exercise

    Lecture 188 Using Seaborn for Graphs

    Lecture 189 How to Interpret the Regression Table

    Lecture 190 Decomposition of Variability

    Lecture 191 What is the OLS?

    Lecture 192 R-Squared

    Section 33: Advanced Statistical Methods - Multiple Linear Regression with StatsModels

    Lecture 193 Multiple Linear Regression

    Lecture 194 Adjusted R-Squared

    Lecture 195 Multiple Linear Regression Exercise

    Lecture 196 Test for Significance of the Model (F-Test)

    Lecture 197 OLS Assumptions

    Lecture 198 A1: Linearity

    Lecture 199 A2: No Endogeneity

    Lecture 200 A3: Normality and Homoscedasticity

    Lecture 201 A4: No Autocorrelation

    Lecture 202 A5: No Multicollinearity

    Lecture 203 Dealing with Categorical Data - Dummy Variables

    Lecture 204 Dealing with Categorical Data - Dummy Variables

    Lecture 205 Making Predictions with the Linear Regression

    Section 34: Advanced Statistical Methods - Linear Regression with sklearn

    Lecture 206 What is sklearn and How is it Different from Other Packages

    Lecture 207 How are we Going to Approach this Section?

    Lecture 208 Simple Linear Regression with sklearn

    Lecture 209 Simple Linear Regression with sklearn - A StatsModels-like Summary Table

    Lecture 210 A Note on Normalization

    Lecture 211 Simple Linear Regression with sklearn - Exercise

    Lecture 212 Multiple Linear Regression with sklearn

    Lecture 213 Calculating the Adjusted R-Squared in sklearn

    Lecture 214 Calculating the Adjusted R-Squared in sklearn - Exercise

    Lecture 215 Feature Selection (F-regression)

    Lecture 216 A Note on Calculation of P-values with sklearn

    Lecture 217 Creating a Summary Table with P-values

    Lecture 218 Multiple Linear Regression - Exercise

    Lecture 219 Feature Scaling (Standardization)

    Lecture 220 Feature Selection through Standardization of Weights

    Lecture 221 Predicting with the Standardized Coefficients

    Lecture 222 Feature Scaling (Standardization) - Exercise

    Lecture 223 Underfitting and Overfitting

    Lecture 224 Train - Test Split Explained

    Section 35: Advanced Statistical Methods - Practical Example: Linear Regression

    Lecture 225 Practical Example: Linear Regression (Part 1)

    Lecture 226 Practical Example: Linear Regression (Part 2)

    Lecture 227 A Note on Multicollinearity

    Lecture 228 Practical Example: Linear Regression (Part 3)

    Lecture 229 Dummies and Variance Inflation Factor - Exercise

    Lecture 230 Practical Example: Linear Regression (Part 4)

    Lecture 231 Dummy Variables - Exercise

    Lecture 232 Practical Example: Linear Regression (Part 5)

    Lecture 233 Linear Regression - Exercise

    Section 36: Advanced Statistical Methods - Logistic Regression

    Lecture 234 Introduction to Logistic Regression

    Lecture 235 A Simple Example in Python

    Lecture 236 Logistic vs Logit Function

    Lecture 237 Building a Logistic Regression

    Lecture 238 Building a Logistic Regression - Exercise

    Lecture 239 An Invaluable Coding Tip

    Lecture 240 Understanding Logistic Regression Tables

    Lecture 241 Understanding Logistic Regression Tables - Exercise

    Lecture 242 What do the Odds Actually Mean

    Lecture 243 Binary Predictors in a Logistic Regression

    Lecture 244 Binary Predictors in a Logistic Regression - Exercise

    Lecture 245 Calculating the Accuracy of the Model

    Lecture 246 Calculating the Accuracy of the Model

    Lecture 247 Underfitting and Overfitting

    Lecture 248 Testing the Model

    Lecture 249 Testing the Model - Exercise

    Section 37: Advanced Statistical Methods - Cluster Analysis

    Lecture 250 Introduction to Cluster Analysis

    Lecture 251 Some Examples of Clusters

    Lecture 252 Difference between Classification and Clustering

    Lecture 253 Math Prerequisites

    Section 38: Advanced Statistical Methods - K-Means Clustering

    Lecture 254 K-Means Clustering

    Lecture 255 A Simple Example of Clustering

    Lecture 256 A Simple Example of Clustering - Exercise

    Lecture 257 Clustering Categorical Data

    Lecture 258 Clustering Categorical Data - Exercise

    Lecture 259 How to Choose the Number of Clusters

    Lecture 260 How to Choose the Number of Clusters - Exercise

    Lecture 261 Pros and Cons of K-Means Clustering

    Lecture 262 To Standardize or not to Standardize

    Lecture 263 Relationship between Clustering and Regression

    Lecture 264 Market Segmentation with Cluster Analysis (Part 1)

    Lecture 265 Market Segmentation with Cluster Analysis (Part 2)

    Lecture 266 How is Clustering Useful?

    Lecture 267 EXERCISE: Species Segmentation with Cluster Analysis (Part 1)

    Lecture 268 EXERCISE: Species Segmentation with Cluster Analysis (Part 2)

    Section 39: Advanced Statistical Methods - Other Types of Clustering

    Lecture 269 Types of Clustering

    Lecture 270 Dendrogram

    Lecture 271 Heatmaps

    Section 40: Part 6: Mathematics

    Lecture 272 What is a Matrix?

    Lecture 273 Scalars and Vectors

    Lecture 274 Linear Algebra and Geometry

    Lecture 275 Arrays in Python - A Convenient Way To Represent Matrices

    Lecture 276 What is a Tensor?

    Lecture 277 Addition and Subtraction of Matrices

    Lecture 278 Errors when Adding Matrices

    Lecture 279 Transpose of a Matrix

    Lecture 280 Dot Product

    Lecture 281 Dot Product of Matrices

    Lecture 282 Why is Linear Algebra Useful?

    Section 41: Part 7: Deep Learning

    Lecture 283 What to Expect from this Part?

    Section 42: Deep Learning - Introduction to Neural Networks

    Lecture 284 Introduction to Neural Networks

    Lecture 285 Training the Model

    Lecture 286 Types of Machine Learning

    Lecture 287 The Linear Model (Linear Algebraic Version)

    Lecture 288 The Linear Model with Multiple Inputs

    Lecture 289 The Linear model with Multiple Inputs and Multiple Outputs

    Lecture 290 Graphical Representation of Simple Neural Networks

    Lecture 291 What is the Objective Function?

    Lecture 292 Common Objective Functions: L2-norm Loss

    Lecture 293 Common Objective Functions: Cross-Entropy Loss

    Lecture 294 Optimization Algorithm: 1-Parameter Gradient Descent

    Lecture 295 Optimization Algorithm: n-Parameter Gradient Descent

    Section 43: Deep Learning - How to Build a Neural Network from Scratch with NumPy

    Lecture 296 Basic NN Example (Part 1)

    Lecture 297 Basic NN Example (Part 2)

    Lecture 298 Basic NN Example (Part 3)

    Lecture 299 Basic NN Example (Part 4)

    Lecture 300 Basic NN Example Exercises

    Section 44: Deep Learning - TensorFlow 2.0: Introduction

    Lecture 301 How to Install TensorFlow 2.0

    Lecture 302 TensorFlow Outline and Comparison with Other Libraries

    Lecture 303 TensorFlow 1 vs TensorFlow 2

    Lecture 304 A Note on TensorFlow 2 Syntax

    Lecture 305 Types of File Formats Supporting TensorFlow

    Lecture 306 Outlining the Model with TensorFlow 2

    Lecture 307 Interpreting the Result and Extracting the Weights and Bias

    Lecture 308 Customizing a TensorFlow 2 Model

    Lecture 309 Basic NN with TensorFlow: Exercises

    Section 45: Deep Learning - Digging Deeper into NNs: Introducing Deep Neural Networks

    Lecture 310 What is a Layer?

    Lecture 311 What is a Deep Net?

    Lecture 312 Digging into a Deep Net

    Lecture 313 Non-Linearities and their Purpose

    Lecture 314 Activation Functions

    Lecture 315 Activation Functions: Softmax Activation

    Lecture 316 Backpropagation

    Lecture 317 Backpropagation Picture

    Lecture 318 Backpropagation - A Peek into the Mathematics of Optimization

    Section 46: Deep Learning - Overfitting

    Lecture 319 What is Overfitting?

    Lecture 320 Underfitting and Overfitting for Classification

    Lecture 321 What is Validation?

    Lecture 322 Training, Validation, and Test Datasets

    Lecture 323 N-Fold Cross Validation

    Lecture 324 Early Stopping or When to Stop Training

    Section 47: Deep Learning - Initialization

    Lecture 325 What is Initialization?

    Lecture 326 Types of Simple Initializations

    Lecture 327 State-of-the-Art Method - (Xavier) Glorot Initialization

    Section 48: Deep Learning - Digging into Gradient Descent and Learning Rate Schedules

    Lecture 328 Stochastic Gradient Descent

    Lecture 329 Problems with Gradient Descent

    Lecture 330 Momentum

    Lecture 331 Learning Rate Schedules, or How to Choose the Optimal Learning Rate

    Lecture 332 Learning Rate Schedules Visualized

    Lecture 333 Adaptive Learning Rate Schedules (AdaGrad and RMSprop )

    Lecture 334 Adam (Adaptive Moment Estimation)

    Section 49: Deep Learning - Preprocessing

    Lecture 335 Preprocessing Introduction

    Lecture 336 Types of Basic Preprocessing

    Lecture 337 Standardization

    Lecture 338 Preprocessing Categorical Data

    Lecture 339 Binary and One-Hot Encoding

    Section 50: Deep Learning - Classifying on the MNIST Dataset

    Lecture 340 MNIST: The Dataset

    Lecture 341 MNIST: How to Tackle the MNIST

    Lecture 342 MNIST: Importing the Relevant Packages and Loading the Data

    Lecture 343 MNIST: Preprocess the Data - Create a Validation Set and Scale It

    Lecture 344 MNIST: Preprocess the Data - Scale the Test Data - Exercise

    Lecture 345 MNIST: Preprocess the Data - Shuffle and Batch

    Lecture 346 MNIST: Preprocess the Data - Shuffle and Batch - Exercise

    Lecture 347 MNIST: Outline the Model

    Lecture 348 MNIST: Select the Loss and the Optimizer

    Lecture 349 MNIST: Learning

    Lecture 350 MNIST - Exercises

    Lecture 351 MNIST: Testing the Model

    Section 51: Deep Learning - Business Case Example

    Lecture 352 Business Case: Exploring the Dataset and Identifying Predictors

    Lecture 353 Business Case: Outlining the Solution

    Lecture 354 Business Case: Balancing the Dataset

    Lecture 355 Business Case: Preprocessing the Data

    Lecture 356 Business Case: Preprocessing the Data - Exercise

    Lecture 357 Business Case: Load the Preprocessed Data

    Lecture 358 Business Case: Load the Preprocessed Data - Exercise

    Lecture 359 Business Case: Learning and Interpreting the Result

    Lecture 360 Business Case: Setting an Early Stopping Mechanism

    Lecture 361 Setting an Early Stopping Mechanism - Exercise

    Lecture 362 Business Case: Testing the Model

    Lecture 363 Business Case: Final Exercise

    Section 52: Deep Learning - Conclusion

    Lecture 364 Summary on What You've Learned

    Lecture 365 What's Further out there in terms of Machine Learning

    Lecture 366 DeepMind and Deep Learning

    Lecture 367 An overview of CNNs

    Lecture 368 An Overview of RNNs

    Lecture 369 An Overview of non-NN Approaches

    Section 53: Appendix: Deep Learning - TensorFlow 1: Introduction

    Lecture 370 READ ME!!!!

    Lecture 371 How to Install TensorFlow 1

    Lecture 372 A Note on Installing Packages in Anaconda

    Lecture 373 TensorFlow Intro

    Lecture 374 Actual Introduction to TensorFlow

    Lecture 375 Types of File Formats, supporting Tensors

    Lecture 376 Basic NN Example with TF: Inputs, Outputs, Targets, Weights, Biases

    Lecture 377 Basic NN Example with TF: Loss Function and Gradient Descent

    Lecture 378 Basic NN Example with TF: Model Output

    Lecture 379 Basic NN Example with TF Exercises

    Section 54: Appendix: Deep Learning - TensorFlow 1: Classifying on the MNIST Dataset

    Lecture 380 MNIST: What is the MNIST Dataset?

    Lecture 381 MNIST: How to Tackle the MNIST

    Lecture 382 MNIST: Relevant Packages

    Lecture 383 MNIST: Model Outline

    Lecture 384 MNIST: Loss and Optimization Algorithm

    Lecture 385 Calculating the Accuracy of the Model

    Lecture 386 MNIST: Batching and Early Stopping

    Lecture 387 MNIST: Learning

    Lecture 388 MNIST: Results and Testing

    Lecture 389 MNIST: Exercises

    Lecture 390 MNIST: Solutions

    Section 55: Appendix: Deep Learning - TensorFlow 1: Business Case

    Lecture 391 Business Case: Getting Acquainted with the Dataset

    Lecture 392 Business Case: Outlining the Solution

    Lecture 393 The Importance of Working with a Balanced Dataset

    Lecture 394 Business Case: Preprocessing

    Lecture 395 Business Case: Preprocessing Exercise

    Lecture 396 Creating a Data Provider

    Lecture 397 Business Case: Model Outline

    Lecture 398 Business Case: Optimization

    Lecture 399 Business Case: Interpretation

    Lecture 400 Business Case: Testing the Model

    Lecture 401 Business Case: A Comment on the Homework

    Lecture 402 Business Case: Final Exercise

    Section 56: Software Integration

    Lecture 403 What are Data, Servers, Clients, Requests, and Responses

    Lecture 404 What are Data Connectivity, APIs, and Endpoints?

    Lecture 405 Taking a Closer Look at APIs

    Lecture 406 Communication between Software Products through Text Files

    Lecture 407 Software Integration - Explained

    Section 57: Case Study - What's Next in the Course?

    Lecture 408 Game Plan for this Python, SQL, and Tableau Business Exercise

    Lecture 409 The Business Task

    Lecture 410 Introducing the Data Set

    Section 58: Case Study - Preprocessing the 'Absenteeism_data'

    Lecture 411 What to Expect from the Following Sections?

    Lecture 412 Importing the Absenteeism Data in Python

    Lecture 413 Checking the Content of the Data Set

    Lecture 414 Introduction to Terms with Multiple Meanings

    Lecture 415 What's Regression Analysis - a Quick Refresher

    Lecture 416 Using a Statistical Approach towards the Solution to the Exercise

    Lecture 417 Dropping a Column from a DataFrame in Python

    Lecture 418 EXERCISE - Dropping a Column from a DataFrame in Python

    Lecture 419 SOLUTION - Dropping a Column from a DataFrame in Python

    Lecture 420 Analyzing the Reasons for Absence

    Lecture 421 Obtaining Dummies from a Single Feature

    Lecture 422 EXERCISE - Obtaining Dummies from a Single Feature

    Lecture 423 SOLUTION - Obtaining Dummies from a Single Feature

    Lecture 424 Dropping a Dummy Variable from the Data Set

    Lecture 425 More on Dummy Variables: A Statistical Perspective

    Lecture 426 Classifying the Various Reasons for Absence

    Lecture 427 Using .concat() in Python

    Lecture 428 EXERCISE - Using .concat() in Python

    Lecture 429 SOLUTION - Using .concat() in Python

    Lecture 430 Reordering Columns in a Pandas DataFrame in Python

    Lecture 431 EXERCISE - Reordering Columns in a Pandas DataFrame in Python

    Lecture 432 SOLUTION - Reordering Columns in a Pandas DataFrame in Python

    Lecture 433 Creating Checkpoints while Coding in Jupyter

    Lecture 434 EXERCISE - Creating Checkpoints while Coding in Jupyter

    Lecture 435 SOLUTION - Creating Checkpoints while Coding in Jupyter

    Lecture 436 Analyzing the Dates from the Initial Data Set

    Lecture 437 Extracting the Month Value from the "Date" Column

    Lecture 438 Extracting the Day of the Week from the "Date" Column

    Lecture 439 EXERCISE - Removing the "Date" Column

    Lecture 440 Analyzing Several "Straightforward" Columns for this Exercise

    Lecture 441 Working on "Education", "Children", and "Pets"

    Lecture 442 Final Remarks of this Section

    Lecture 443 A Note on Exporting Your Data as a *.csv File

    Section 59: Case Study - Applying Machine Learning to Create the 'absenteeism_module'

    Lecture 444 Exploring the Problem with a Machine Learning Mindset

    Lecture 445 Creating the Targets for the Logistic Regression

    Lecture 446 Selecting the Inputs for the Logistic Regression

    Lecture 447 Standardizing the Data

    Lecture 448 Splitting the Data for Training and Testing

    Lecture 449 Fitting the Model and Assessing its Accuracy

    Lecture 450 Creating a Summary Table with the Coefficients and Intercept

    Lecture 451 Interpreting the Coefficients for Our Problem

    Lecture 452 Standardizing only the Numerical Variables (Creating a Custom Scaler)

    Lecture 453 Interpreting the Coefficients of the Logistic Regression

    Lecture 454 Backward Elimination or How to Simplify Your Model

    Lecture 455 Testing the Model We Created

    Lecture 456 Saving the Model and Preparing it for Deployment

    Lecture 457 ARTICLE - A Note on 'pickling'

    Lecture 458 EXERCISE - Saving the Model (and Scaler)

    Lecture 459 Preparing the Deployment of the Model through a Module

    Section 60: Case Study - Loading the 'absenteeism_module'

    Lecture 460 Are You Sure You're All Set?

    Lecture 461 Deploying the 'absenteeism_module' - Part I

    Lecture 462 Deploying the 'absenteeism_module' - Part II

    Lecture 463 Exporting the Obtained Data Set as a *.csv

    Section 61: Case Study - Analyzing the Predicted Outputs in Tableau

    Lecture 464 EXERCISE - Age vs Probability

    Lecture 465 Analyzing Age vs Probability in Tableau

    Lecture 466 EXERCISE - Reasons vs Probability

    Lecture 467 Analyzing Reasons vs Probability in Tableau

    Lecture 468 EXERCISE - Transportation Expense vs Probability

    Lecture 469 Analyzing Transportation Expense vs Probability in Tableau

    Section 62: Appendix - Additional Python Tools

    Lecture 470 Using the .format() Method

    Lecture 471 Iterating Over Range Objects

    Lecture 472 Introduction to Nested For Loops

    Lecture 473 Triple Nested For Loops

    Lecture 474 List Comprehensions

    Lecture 475 Anonymous (Lambda) Functions

    Section 63: Appendix - pandas Fundamentals

    Lecture 476 Introduction to pandas Series

    Lecture 477 Working with Methods in Python - Part I

    Lecture 478 Working with Methods in Python - Part II

    Lecture 479 Parameters and Arguments in pandas

    Lecture 480 Using .unique() and .nunique()

    Lecture 481 Using .sort_values()

    Lecture 482 Introduction to pandas DataFrames - Part I

    Lecture 483 Introduction to pandas DataFrames - Part II

    Lecture 484 pandas DataFrames - Common Attributes

    Lecture 485 Data Selection in pandas DataFrames

    Lecture 486 pandas DataFrames - Indexing with .iloc[]

    Lecture 487 pandas DataFrames - Indexing with .loc[]

    Section 64: Appendix - Working with Text Files in Python

    Lecture 488 An Introduction to Working with Files in Python

    Lecture 489 File vs File Object, Reading vs Parsing Data

    Lecture 490 Structured, Semi-Structured and Unstructured Data

    Lecture 491 Text Files and Data Connectivity

    Lecture 492 Importing Data in Python - Principles

    Lecture 493 Plain Text Files, Flat Files and More

    Lecture 494 Text Files of Fixed Width

    Lecture 495 Common Naming Conventions

    Lecture 496 Importing Text Files - open()

    Lecture 497 Importing Text Files - with open()

    Lecture 498 Importing *.csv Files - Part I

    Lecture 499 Importing *.csv Files - Part II

    Lecture 500 Importing *.csv Files - Part III

    Lecture 501 Importing Data with index_col

    Lecture 502 Importing Data with .loadtxt() and .genfromtxt()

    Lecture 503 Importing Data - Partial Cleaning While Importing Data

    Lecture 504 Importing Data with NumPy - Exercise

    Lecture 505 Importing Data from *.json Files

    Lecture 506 An Introduction to Working with Excel Files in Python

    Lecture 507 Working with Excel (*.xlsx) Data

    Lecture 508 Importing Data in Python - an Important Exercise

    Lecture 509 Importing Data with the .squeeze() Method

    Lecture 510 Importing Files in Jupyter

    Lecture 511 Saving Your Data with pandas

    Lecture 512 Saving Your Data with NumPy - Part I - *.npy

    Lecture 513 Saving Your Data with NumPy - Part II - *.npz

    Lecture 514 Saving Your Data with NumPy - Part III - *.csv

    Lecture 515 Saving Data with Numpy - Exercise

    Lecture 516 Working with Text Files in Python - Conclusion

    Section 65: Bonus Lecture

    Lecture 517 Bonus Lecture: Next Steps

    You should take this course if you want to become a Data Scientist or if you want to learn about the field,This course is for you if you want a great career,The course is also ideal for beginners, as it starts from the fundamentals and gradually builds up your skills