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The Data Analyst Course Complete Data Analyst Bootcamp - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: The Data Analyst Course Complete Data Analyst Bootcamp (/Thread-The-Data-Analyst-Course-Complete-Data-Analyst-Bootcamp) |
The Data Analyst Course Complete Data Analyst Bootcamp - OneDDL - 08-21-2024 ![]() Free Download The Data Analyst Course Complete Data Analyst Bootcamp Last updated 7/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 8.90 GB | Duration: 20h 57m Complete Data Analyst Training: Python, NumPy, Pandas, Data Collection, Preprocessing, Data Types, Data Visualization What you'll learn The course provides the complete preparation you need to become a data analyst Fill up your resume with in-demand data skills: Python programming, NumPy, pandas, data preparation - data collection, data cleaning, data preprocessing, data visualization; data analysis, data analytics Acquire a big picture understanding of the data analyst role Learn beginner and advanced Python Study mathematics for Python We will teach you NumPy and pandas, basics and advanced Be able to work with text files Understand different data types and their memory usage Learn how to obtain interesting, real-time information from an API with a simple script Clean data with pandas Series and DataFrames Complete a data cleaning exercise on absenteeism rate Expand your knowledge of NumPy - statistics and preprocessing Go through a complete loan data case study and apply your NumPy skills Master data visualization Learn how to create pie, bar, line, area, histogram, scatter, regression, and combo charts Engage with coding exercises that will prepare you for the job Practice with real-world data Solve a final capstone project 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 Description The problemMost data analyst, data science, and coding courses miss a critical practical step. They don't teach you how to work with raw data, how to clean, and preprocess it. This creates a sizeable gap between the skills you need on the job and the abilities you have acquired in training. Truth be told, real-world data is messy, so you need to know how to overcome this obstacle to become an independent data professional.The bootcamps we have seen online and even live classes neglect this aspect and show you how to work with 'clean' data. But this isn't doing you a favour. In reality, it will set you back both when you are applying for jobs, and when you're on the job.The solutionOur goal is to provide you with complete preparation. And this course will turn you into a job-ready data analyst. To take you there, we will cover the following fundamental topics extensively.Theory about the field of data analyticsBasic PythonAdvanced PythonNumPyPandasWorking with text filesData collectionData cleaningData preprocessingData visualizationFinal practical exampleEach of these subjects builds on the previous ones. And this is precisely what makes our curriculum so valuable. Everything is shown in the right order and we guarantee that you are not going to get lost along the way, as we have provided all necessary steps in video (not a single one skipped). In other words, we are not going to teach you how to analyse data before you know how to gather and clean it.So, to prepare you for the entry-level job that leads to a data science position - data analyst - we created The Data Analyst Course.This is a rather unique training program because it teaches the fundamentals you need on the job. A frequently neglected aspect of vital importance.Moreover, our focus is to teach topics that flow smoothly and complement each other. The course provides complete preparation for someone who wants to become a data analyst at a fraction of the cost of traditional programs (not to mention the amount of time you will save). We believe that this resource will significantly boost your chances of landing a job, as it will prepare you for practical tasks and concepts that are frequently included in interviews.The topics we will cover1. Theory about the field of data analytics2. Basic Python3. Advanced Python4. NumPy5. Pandas6. Working with text files7. Data collection8. Data cleaning9. Data preprocessing10. Data visualization11. Final practical example1. Theory about the field of data analyticsHere we will focus on the big picture. But don't imagine long boring pages with terms you'll have to check up in a dictionary every minute. Instead, this is where we want to define who a data analyst is, what they do, and how they create value for an organization.Why learn it?You need a general understanding to appreciate how every part of the course fits in with the rest of the content. As they say, if you know where you are going, chances are that you will eventually get there. And since data analyst and other data jobs are relatively new and constantly evolving, we want to provide you with a good grasp of the data analyst role specifically. Then, in the following chapters, we will teach you the actual tools you need to become a data analyst.2. Basic PythonThis course is centred around Python. So, we'll start from the very basics. Don't be afraid if you do not have prior programming experience.Why learn it?You need to learn a programming language to take full advantage of the data-rich world we live in. Unless you are equipped with such a skill, you will always be dependent on other people's ability to extract and manipulate data, and you want to be independent while doing analysis, right? Also, you don't necessarily need to learn many programming languages at once. It is enough to be very skilled at just one, and we've naturally chosen Python which has established itself as the number one language for data analysis and data science (thanks to its rich libraries and versatility).3. Advanced PythonWe will introduce advanced Python topics such as working with text data and using tools such as list comprehensions and anonymous functions.Why learn it?These lessons will turn you into a proficient Python user who is independent on the job. You will be able to use Python's core strengths to your advantage. So, here it is not just about the topics, it is also about the depth in which we explore the most relevant Python tools.4. NumPyNumPy is Python's fundamental package for scientific computing. It has established itself as the go-to tool when you need to compute mathematical and statical operations.Why learn it?A large portion of a data analyst's work is dedicated to preprocessing datasets. Unquestionably, this involves tons of mathematical and statistical techniques that NumPy is renowned for. In addition, the package introduces multi-dimensional array structures and provides a plethora of built-in functions and methods to use while working with them. In other words, NumPy can be described as a computationally stable state-of-the-art Python instrument that provides flexibility and can take your analysis to the next level.5. PandasThe pandas library is one of the most popular Python tools that facilitate data manipulation and analysis. It is very valuable because you can use it to manipulate all sorts of information - numerical tables and time series data, as well as text.Why learn it?Pandas is the other main tool an analyst needs to clean and preprocess the data they are working with. Its data manipulation features are second to none in Python because of the diversity and richness it provides in terms of methods and functions. The combined ability to work with both NumPy and pandas is extremely powerful as the two libraries complement each other. You need to be capable to operate with both to produce a complete and consistent analysis independently.6. Working with text filesExchanging information with text files is practically how we exchange information today. In this part of the course, we will use the Python, pandas, and NumPy tools learned earlier to give you the essentials you need when importing or saving data.Why learn it?In many courses, you are just given a dataset to practice your analytical and programming skills. However, we don't want to close our eyes to reality, where converting a raw dataset from an external file into a workable Python format can be a massive challenge.7. Data collectionIn the real world, you don't always have the data readily available for you. In this part of the course, you will learn how to retrieve data from an API.Why learn it?You need to know how to source your data, right? To be a well-rounded analyst you must be able to collect data from outside sources. This is rarely a one-click process. This section aims at providing you with all the necessary tools to do that on your own.8. Data cleaningThe next logical step is to clean your data. This is where you will apply the pandas skills acquired earlier in practice. All lessons throughout the course have a real-world perspective.Why learn it?A large part of a data analyst's job in the real world involves cleaning data and preparing it for the actual analysis. You can't expect that you'll deal with flawless data sources, right? So, it will be up to you to overcome this stage and clean your data.9. Data preprocessingEven when your dataset is clean and in an understandable shape, it isn't quite ready to be processed for visualizations and analysis just yet. There is a crucial step in between, and that's data preprocessing.Why learn it?Data preprocessing is where a data analyst can demonstrate how good or great they are at their job. This stage of the work requires the ability to choose the right statistical tool that will improve the quality of your dataset and the knowledge to implement it with advanced pandas and NumPy techniques. Only when you've completed this step can you say that your dataset is preprocessed and ready for the next part, which is data visualization.10. Data visualizationData visualization is the face of data. Many people look at the data and see nothing. The reason for that is that they are not creating good visualizations. Or even worse - they are creating nice graphs but cannot interpret them accurately.Why learn it?This part of the course will teach you how to use your data to produce meaningful insights. At the end of the day, data charts are what conveys the most information in the shortest amount of time. And nothing speaks better than a well crafted and meaningful data visualization.11. Practical exampleThe course contains plenty of exercises and practical cases. In the end, we have included a comprehensive practical example that will show you how everything you have learned along the way comes nicely together. This is where you will be able to appreciate how far you have come in your journey to becoming a data analyst and starting your data career.What you getA program worth $1,250Active Q&A supportAll the knowledge to become a data analystA community of aspiring data analystsA certificate of completionAccess to frequent future updatesReal-world trainingGet ready to become a data analyst from scratchWhy wait? Every day is a missed opportunity.Click the "Buy Now" button and become a part of our data analyst program today. Overview Section 1: Introduction to the Course Lecture 1 A Practical Example - What Will You Learn in This Course? Lecture 2 What Does the Course Cover? Lecture 3 Download All Resources Lecture 4 FAQ Section 2: Introduction to Data Analytics Lecture 5 Introduction to the World of Business and Data Lecture 6 Relevant Terms Explained Lecture 7 Data Analyst Compared to Other Data Jobs Lecture 8 Data Analyst Job Description Lecture 9 Why Python Section 3: Setting up the Environment Lecture 10 Introduction Lecture 11 Programming Explained in a Few Minutes Lecture 12 Jupyter - Introduction Lecture 13 Jupyter - Installing Anaconda Lecture 14 Jupyter - Intro to Using Jupyter Lecture 15 Jupyter - Working with Notebook Files Lecture 16 Jupyter - Using Shortcuts Lecture 17 Jupyter - Handling Error Messages Lecture 18 Jupyter - Restarting the Kernel Section 4: Python Basics Lecture 19 Python Variables Lecture 20 Types of Data - Numbers and Boolean Values Lecture 21 Types of Data - Strings Lecture 22 Basic Python Syntax - Arithmetic Operators Lecture 23 Basic Python Syntax - The Double Equality Sign Lecture 24 Basic Python Syntax - Reassign Values Lecture 25 Basic Python Syntax - Add Comments Lecture 26 Basic Python Syntax - Line Continuation Lecture 27 Basic Python Syntax - Indexing Elements Lecture 28 Basic Python Syntax - Indentation Lecture 29 Operators - Comparison Operators Lecture 30 Operators - Logical and Identity Operators Lecture 31 Conditional Statements - The IF Statement Lecture 32 Conditional Statements - The ELSE Statement Lecture 33 Conditional Statements - The ELIF Statement Lecture 34 Conditional Statements - A Note on Boolean Values Lecture 35 Functions - Defining a Function in Python Lecture 36 Functions - Creating a Function with a Parameter Lecture 37 Functions - Another Way to Define a Function Lecture 38 Functions - Using a Function in Another Function Lecture 39 Functions - Combining Conditional Statements and Functions Lecture 40 Functions - Creating Functions That Contain a Few Arguments Lecture 41 Functions - Notable Built-in Functions in Python Lecture 42 Sequences - Lists Lecture 43 Sequences - Using Methods Lecture 44 Sequences - List Slicing Lecture 45 Sequences - Tuples Lecture 46 Sequences - Dictionaries Lecture 47 Iteration - For Loops Lecture 48 Iteration - While Loops and Incrementing Lecture 49 Iteration - Create Lists with the range() Function Lecture 50 Iteration - Use Conditional Statements and Loops Together Lecture 51 Iteration - Conditional Statements, Functions, and Loops Lecture 52 Iteration - Iterating over Dictionaries Section 5: Fundamentals for Coding in Python Lecture 53 Object-Oriented Programming (OOP) Lecture 54 Modules, Packages, and the Python Standard Library Lecture 55 Importing Modules Lecture 56 Introduction to Using NumPy and pandas Lecture 57 What is Software Documentation? Lecture 58 The Python Documentation Section 6: Mathematics for Python Lecture 59 What Is а Matrix? Lecture 60 Scalars and Vectors Lecture 61 Linear Algebra and Geometry Lecture 62 Arrays in Python Lecture 63 What Is a Tensor? Lecture 64 Adding and Subtracting Matrices Lecture 65 Errors When Adding Matrices Lecture 66 Transpose Lecture 67 Dot Product of Vectors Lecture 68 Dot Product of Matrices Lecture 69 Why is Linear Algebra Useful Section 7: NumPy Basics Lecture 70 The NumPy Package and Why We Use It Lecture 71 Installing/Upgrading NumPy Lecture 72 Ndarray Lecture 73 The NumPy Documentation Lecture 74 NumPy Basics - Exercise Section 8: Pandas - Basics Lecture 75 Introduction to the pandas Library Lecture 76 Installing and Running pandas Lecture 77 A Note on Completing the Upcoming Coding Exercises Lecture 78 Introduction to pandas Series Lecture 79 Working with Attributes in Python Lecture 80 Using an Index in pandas Lecture 81 Label-based vs Position-based Indexing Lecture 82 More on Working with Indices in Python Lecture 83 Using Methods in Python - Part I Lecture 84 Using Methods in Python - Part II Lecture 85 Parameters vs Arguments Lecture 86 The pandas Documentation Lecture 87 Introduction to pandas DataFrames Lecture 88 Creating DataFrames from Scratch - Part I Lecture 89 Creating DataFrames from Scratch - Part II Lecture 90 Additional Notes on Using DataFrames Lecture 91 pandas Basics - Conclusion Section 9: Working with Text Files Lecture 92 Working with Files in Python - An Introduction Lecture 93 File vs File Object, Read vs Parse Lecture 94 Structured vs Semi-Structured and Unstructured Data Lecture 95 Data Connectivity through Text Files Lecture 96 Principles of Importing Data in Python Lecture 97 More on Text Files (*.txt vs *.csv) Lecture 98 Fixed-width Files Lecture 99 Common Naming Conventions Used in Programming Lecture 100 Importing Text Files in Python ( open() ) Lecture 101 Importing Text Files in Python ( with open() ) Lecture 102 Importing *.csv Files with pandas - Part I Lecture 103 Importing *.csv Files with pandas - Part II Lecture 104 Importing *.csv Files with pandas - Part III Lecture 105 Importing Data with the "index_col" Parameter Lecture 106 Importing Data with NumPy - .loadtxt() vs genfromtxt() Lecture 107 Importing Data with NumPy - Partial Cleaning While Importing Lecture 108 Importing Data with NumPy - Exercise Lecture 109 Importing *.json Files Lecture 110 Prelude to Working with Excel Files in Python Lecture 111 Working with Excel Data (the *.xlsx Format) Lecture 112 An Important Exercise on Importing Data in Python Lecture 113 Importing Data with the pandas' "Squeeze" Method Lecture 114 A Note on Importing Files in Jupyter Lecture 115 Saving Your Data with pandas Lecture 116 Saving Your Data with NumPy - np.save() Lecture 117 Saving Your Data with NumPy - np.savez() Lecture 118 Saving Your Data with NumPy - np.savetxt() Lecture 119 Saving Your Data with NumPy - Exercise Lecture 120 Working with Text Files - Conclusion Section 10: Working with Text Data Lecture 121 Working with Text Data and Argument Specifiers Lecture 122 Manipulating Python Strings Lecture 123 Using Various Python String Methods - Part I Lecture 124 Using Various Python String Methods - Part II Lecture 125 String Accessors Lecture 126 Using the .format() Method Section 11: Must-Know Python Tools Lecture 127 Iterating Over Range Objects Lecture 128 Nested For Loops - Introduction Lecture 129 Triple Nested For Loops Lecture 130 List Comprehensions Lecture 131 Anonymous (Lambda) Functions Section 12: Data Gathering/Data Collection Lecture 132 What is data gathering/data collection? Section 13: APIs (POST requests are not needed for this course) Lecture 133 Overview of APIs Lecture 134 GET and POST Requests Lecture 135 Data Exchange Format for APIs: JSON Lecture 136 Introducing the Exchange Rates API Lecture 137 Including Parameters in a GET Request Lecture 138 More Functionalities of the Exchange Rates API Lecture 139 Coding a Simple Currency Conversion Calculator Lecture 140 iTunes API Lecture 141 iTunes API: Homework Lecture 142 iTunes API: Structuring and Exporting the Data Lecture 143 Pagination: GitHub API Lecture 144 APIs: Exercise Section 14: Data Cleaning and Data Preprocessing Lecture 145 Data Cleaning and Data Preprocessing Section 15: pandas Series Lecture 146 .unique(), .nunique() Lecture 147 Converting Series into Arrays Lecture 148 .sort_values() Lecture 149 Attribute and Method Chaining Lecture 150 .sort_index() Section 16: pandas DataFrames Lecture 151 A Revision to pandas DataFrames Lecture 152 Common Attributes for Working with DataFrames Lecture 153 Data Selection in pandas DataFrames Lecture 154 Data Selection - Indexing with .iloc[] Lecture 155 Data Selection - Indexing with .loc[] Lecture 156 A Few Comments on Using .loc[] and .iloc[] Section 17: NumPy Fundamentals Lecture 157 Indexing in NumPy Lecture 158 Assigning Values in NumPy Lecture 159 Elementwise Properties of Arrays Lecture 160 Types of Data Supported by NumPy Lecture 161 Characteristics of NumPy Functions Part 1 Lecture 162 Characteristics of NumPy Functions Part 2 Lecture 163 NumPy Fundamentals - Exercise Section 18: NumPy DataTypes Lecture 164 ndarrays Lecture 165 Arrays vs Lists Lecture 166 Strings vs Object vs Number Lecture 167 NumPy DataTypes - Exercise Section 19: Working with Arrays Lecture 168 Basic Slicing in NumPy Lecture 169 Stepwise Slicing in NumPy Lecture 170 Conditional Slicing in NumPy Lecture 171 Dimensions and the Squeeze Function Lecture 172 Working with Arrays - Exercise Section 20: Generating Data with NumPy Lecture 173 Arrays of 0s and 1s Lecture 174 "_like" functions in NumPy Lecture 175 A Non-Random Sequence of Numbers Lecture 176 Random Generators and Seeds Lecture 177 Basic Random Functions in NumPy Lecture 178 Probability Distributions in NumPy Lecture 179 Applications of Random Data in NumPy Lecture 180 Generating Data with NumPy - Exercise Section 21: Statistics with NumPy Lecture 181 Using Statistical Functions in NumPy Lecture 182 Minimal and Maximal Values in NumPy Lecture 183 Statistical Order Functions in NumPy Lecture 184 Averages and Variance in NumPy Lecture 185 Covariance and Correlation in NumPy Lecture 186 Histograms in NumPy (Part 1) Lecture 187 Histograms in NumPy (Part 2) Lecture 188 NAN Equivalent Functions in NumPy Lecture 189 Statistics with NumPy - Exercise Section 22: NumPy - Preprocessing Lecture 190 Checking for Missing Values in Ndarrays Lecture 191 Substituting Missing Values in Ndarrays Lecture 192 Reshaping Ndarrays Lecture 193 Removing Values from Ndarrays Lecture 194 Sorting Ndarrays Lecture 195 Argument Sort in NumPy Lecture 196 Argument Where in NumPy Lecture 197 Shuffling Ndarrays Lecture 198 Casting Ndarrays Lecture 199 Striping Values from Ndarrays Lecture 200 Stacking Ndarrays Lecture 201 Concatenating Ndarrays Lecture 202 Finding Unique Values in Ndarrays Section 23: A Loan Data Example with NumPy Lecture 203 Setting Up: Introduction to the Practical Example Lecture 204 Setting Up: Importing the Data Set Lecture 205 Setting Up: Checking for Incomplete Data Lecture 206 Setting Up: Splitting the Dataset Lecture 207 Setting Up: Creating Checkpoints Lecture 208 Manipulating Text Data: Issue Date Lecture 209 Manipulating Text Data: Loan Status and Term Lecture 210 Manipulating Text Data: Grade and Sub Grade Lecture 211 Manipulating Text Data: Verification Status & URL Lecture 212 Manipulating Text Data: State Address Lecture 213 Manipulating Text Data: Converting Strings and Creating a Checkpoint Lecture 214 Manipulating Numeric Data: Substitute Filler Values Lecture 215 Manipulating Numeric Data: Currency Change - The Exchange Rate Lecture 216 Manipulating Numeric Data: Currency Change - From USD to EUR Lecture 217 Completing the Dataset Section 24: The "Absenteeism" Exercise - Introduction Lecture 218 An Introduction to the "Absenteeism" Exercise Lecture 219 The "Absenteeism" Exercise from a Business Perspective Lecture 220 The Dataset Section 25: Solution to the "Absenteeism" Exercise Lecture 221 How to Complete the Absenteeism Exercise Lecture 222 Eyeball Your Data First Lecture 223 Note: Programming vs the Rest of the World Lecture 224 Using a Statistical Approach to Solve Our Exercise Lecture 225 Dropping the 'ID' Column Lecture 226 Analysis of the 'Reason for Absence' Column Lecture 227 Splitting the Reasons for Absence into Multiple Dummy Variables Lecture 228 Working with Dummy Variables - A Statistical Perspective Lecture 229 Grouping the Reason for Absence Columns Lecture 230 Concatenating Columns in a pandas DataFrame Lecture 231 Reordering Columns in a DataFrame Lecture 232 Creating Checkpoints Lecture 233 Working on the 'Date' Column Lecture 234 Extracting the Month Value from the 'Date' Column Lecture 235 Creating the 'Day of the Week' Column Lecture 236 Understanding the Meaning of 5 More Columns Lecture 237 Modifying the 'Education' Column Lecture 238 Final Remarks on the Absenteeism Exercise Section 26: Data Visualization Lecture 239 What Is Data Visualization and Why Is It Important? Lecture 240 Why Learn Data Visualization? Lecture 241 Choosing the Right Visualization - What Are Some Popular Approaches and Framewor Lecture 242 Introduction into Colors and Color Theory Lecture 243 Bar Chart - Introduction - General Theory and Getting to Know the Dataset Lecture 244 Bar Chart - How to Create a Bar Chart Using Python Lecture 245 Bar Chart - Interpreting the Bar Graph. How to Make a Good Bar Graph Lecture 246 Pie Chart - Introduction - General Theory and Dataset Lecture 247 Pie Chart - How to Create a Pie Chart Using Python Lecture 248 Pie Chart - Interpreting the Pie Chart Lecture 249 Pie Chart - Why You Should Never Create a Pie Graph Lecture 250 Stacked Area Chart - Introduction - General Theory. Getting to Know the Dataset Lecture 251 Stacked Area Chart - How to Create a Stacked Area Chart Using Python Lecture 252 Stacked Area Chart - Interpreting the Stacked Area Graph Lecture 253 Stacked Area Chart - How to Make a Good Stacked Area Chart Lecture 254 Line Chart - Introduction - General Theory. Getting to Know the Dataset Lecture 255 Line Chart - How to Create a Line Chart in Python Lecture 256 Line Chart - Interpretation Lecture 257 Line Chart - How to Make a Good Line Chart Lecture 258 Histogram - Introduction - General Theory. Getting to Know the Dataset Lecture 259 Histogram - How to Create a Histogram Using Python Lecture 260 Histogram - Interpreting the Histogram Lecture 261 Histogram - Choosing the Number of Bins in a Histogram Lecture 262 Histogram - How to Make a Good Histogram Lecture 263 Scatter Plot - Introduction - General Theory. Getting to Know the Dataset Lecture 264 Scatter Plot - How to Create a Scatter Plot Using Python Lecture 265 Scatter Plot - Interpreting the Scatter Plot Lecture 266 Scatter Plot - How to Make a Good Scatter Plot Lecture 267 Regression Plot - Introduction - General Theory. Getting to Know the Dataset Lecture 268 Regression Plot - How to Create a Regression Scatter Plot Using Python Lecture 269 Regression Plot - Interpreting the Regression Scatter Plot Lecture 270 Regression Plot - How to Make a Good Regression Plot Lecture 271 Bar and Line Chart - Introduction - General Theory. Getting to Know the Dataset Lecture 272 Bar and Line Chart - How to Create a Combination Bar and Line Graph Using Python Lecture 273 Bar and Line Chart - Interpreting the Combination Bar and Line Graph Lecture 274 Bar and Line Chart - How to Make a Good Bar and Line Graph Lecture 275 Data Visualization - Exercise Section 27: Conclusion Lecture 276 Conclusion Lecture 277 Bonus You should take this course if you want to become a Data Analyst and Data Scientist,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 Homepage Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live No Password - Links are Interchangeable |