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    Data Analytics Career Track

    Posted By: ELK1nG
    Data Analytics Career Track

    Data Analytics Career Track
    Published 4/2024
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 10.39 GB | Duration: 27h 14m

    Learn the Best Utilization of Excel, SQL, and Python for A-Z Data Analysis and Become a Successful Data Analyst in 2024.

    What you'll learn

    You will gain proficiency in Excel, SQL, and Python for data analysis. Prepare for a career as a data analyst with essential professional skills and knowledge.

    You will work on practical data analysis projects to apply learned skills. Enhance problem-solving abilities through hands-on data analysis exercises.

    You will learn facts and theories for data analysis, statistical analysis, hypothesis testing, and machine learning for foundations of data analytics.

    You will learn A-Z data cleaning and manipulation methods, sorting, sorting and conditional filtering, formulas, and functions, graphs and charts in Excel.

    You will learn advanced analysis in PIVOT tables and charts, Data Analysis ToolPak for statistical analysis and interactive dashboard in Excel.

    You will learn RDBMS fundamentals, covering key concepts such as primary and foreign keys, data types, and the various types of RDBMS and more.

    You will learn full stack manipulation of tables, columns, constraints, indices, null values, filtering, joining methods in MySQL or structured query language.

    You will learn the important Python programming basics such as variables naming, data types, lists, dictionaries, dataframes, sets, loops, functions etc.

    You will master a range of methods and techniques for data cleaning, sorting, filtering, data manipulation, transformation, and data preprocessing in Python.

    You will learn to use Python for data visualizations, exploratory data analysis, statistical analysis, hypothesis testing methods and machine learning models.

    You will pass 50+ practical assignments, 140+ coding exercises, 10 quizzes with 100+ questions, on all the topics over the entire career track.

    You will accomplish two capstone projects on Bank data analysis and Sport data analysis at the end to get the full view of data analysis workflow.

    Requirements

    Access to computer and internet

    Basic computer literacy

    No coding experience required

    Dedication, patience and perseverance

    Description

    Are you eager to embark on a rewarding journey into the world of data analytics? Welcome to the Data Analytics Career Track, where you'll gain a comprehensive skill set and invaluable knowledge to thrive as a data analyst.Course Overview: In this meticulously crafted course, you'll delve into the core tools and techniques of data analysis: Excel, SQL, and Python. From foundational concepts to advanced methodologies, each module is designed to equip you with the expertise needed to excel in the dynamic field of data analytics.Key Objectives:Proficiency in Essential Tools: Master Excel, SQL, and Python for data analysis, providing you with a versatile toolkit for tackling real-world challenges.Hands-on Experience: Engage in practical data analysis projects and coding exercises, honing your problem-solving skills through immersive learning experiences.Foundational Knowledge: Gain insights into data analysis theories, statistical methods, hypothesis testing, and machine learning fundamentals, laying a solid groundwork for your career.Data Manipulation Mastery: Learn A-Z data cleaning and manipulation techniques, including sorting, filtering, conditional formatting, and advanced analysis with pivot tables and charts.Database Fundamentals: Acquire a deep understanding of relational database management systems (RDBMS), covering key concepts such as primary keys, foreign keys, and SQL manipulation.Python Proficiency: Explore Python programming basics and advanced data analysis techniques, including data visualization, exploratory data analysis, and machine learning model implementation.Practical Assignments: Challenge yourself with over 50 practical assignments, 140 coding exercises, and 10 quizzes spanning the breadth of the course curriculum.Capstone Projects: Apply your newfound skills to real-world scenarios with two comprehensive capstone projects focused on bank data analysis and sports data analysis, providing a holistic view of the data analytics workflow.Benefits of the Course:Career Readiness: Prepare for a successful career as a data analyst with essential professional skills and practical knowledge.Versatility: Gain proficiency in multiple tools and techniques, making you adaptable to diverse data analysis scenarios and industry demands.Problem-solving Skills: Enhance your analytical and critical thinking abilities through hands-on data analysis exercises and coding challenges.Industry-Relevant Learning: Stay ahead of the curve with up-to-date insights into data analysis methodologies and best practices.Portfolio Enhancement: Build a robust portfolio showcasing your expertise through practical projects and assignments, demonstrating your readiness for the job market.Join us on the Data Analytics Career Track and unlock endless possibilities in the world of data analysis. Whether you're a seasoned professional or a novice enthusiast, this course is your gateway to a fulfilling and prosperous career in data analytics. Enroll today and embark on your journey to success!

    Overview

    Section 1: Phase 1 - Data Analytics Fundamentals

    Lecture 1 My instructions for this phase

    Lecture 2 Extra note on analytical world of data

    Section 2: All You Need to Know about Data Analysis

    Lecture 3 Data analysis definition, types and examples

    Lecture 4 Key components of data analysis

    Lecture 5 Tools and technologies for data analysis

    Lecture 6 Real-world application of data analysis

    Section 3: Data Collection: Methods and Considerations

    Lecture 7 Various sources of collecting data

    Lecture 8 Population v/s sample and its methods

    Lecture 9 Consideration for effective data collection

    Section 4: Understand Data Cleaning and Its Methods

    Lecture 10 Why you cannot ignore cleaning your data

    Lecture 11 Various aspects of data cleaning

    Lecture 12 Consideration for effective data cleaning

    Section 5: Explore Joining and Concatenating Methods

    Lecture 13 Various aspects of Joining datasets

    Lecture 14 Adding extra data with concatenation

    Section 6: Complete Picture of Exploratory Data Analysis

    Lecture 15 EDA for generating significant insights

    Lecture 16 Methods of exploratory data analysis Part 1

    Lecture 17 Methods of exploratory data analysis Part 2

    Lecture 18 Methods of exploratory data analysis Part 3

    Lecture 19 Consideration for effective EDA

    Section 7: Everything about Statistical Data Analysis

    Lecture 20 The application of statistical test

    Lecture 21 Types of statistical data analysis

    Lecture 22 Statistical test v/s Exploratory data analysis

    Lecture 23 A Recap on descriptive statistics methods

    Lecture 24 Inferential statistics Part 1 – T-tests and ANOVA

    Lecture 25 Inferential statistics Part 2 – Relationships measures

    Lecture 26 Inferential statistics Part 3 – Linear regression

    Lecture 27 Consideration for effective statistical analysis

    Section 8: Concepts of Probabilities in Data Analysis

    Lecture 28 Probability in data analysis

    Lecture 29 Classical probability

    Lecture 30 Empirical probability

    Lecture 31 Conditional probability

    Lecture 32 Joint probability

    Section 9: Hypothesis Testing in Statistical Analysis

    Lecture 33 Hypothesis testing for inferential statistics

    Lecture 34 Selecting statistical test and assumption testing

    Lecture 35 Confidence level, significance level, p-value

    Lecture 36 Making decision and conclusion on findings

    Lecture 37 Complete statistical analysis and hypothesis testing

    Section 10: Explore Data Transformation and Its Methods

    Lecture 38 Transforming data for improved analysis

    Lecture 39 Techniques for data transformation Part 1

    Lecture 40 Techniques for data transformation Part 2

    Lecture 41 Consideration for effective data transformation

    Section 11: Machine Learning for Predictive Efficiency

    Lecture 42 ML for data analysis and decision-making

    Lecture 43 Widely used ML methods in the data analytics

    Lecture 44 Steps in developing machine learning model

    Section 12: Explore Data Visualizations and Its Methods

    Lecture 45 Visualizing data for the best insight delivery

    Lecture 46 Several methods of data visualization Part 1

    Lecture 47 Several methods of data visualization Part 2

    Lecture 48 Several methods of data visualization Part 3

    Lecture 49 Considerations for effective data visualization

    Section 13: Phase 2 - Data Analytics in Microsoft Excel

    Lecture 50 My instructions for this phase

    Lecture 51 Extra note on functions and shortcuts

    Section 14: Excel - Data Cleaning and Formatting

    Lecture 52 Identifying and removing duplicates

    Lecture 53 Dealing with missing values

    Lecture 54 Dealing with outliers

    Lecture 55 Finding and imputing inconsistent values

    Lecture 56 Text-to-columns for data separation

    Section 15: Excel - Data Sorting and Filtering

    Lecture 57 Applying sorts & filters to narrow down data

    Lecture 58 Advanced filtering with custom criteria

    Section 16: Excel - Apply Conditional Formatting

    Lecture 59 Highlighting cells based on criteria

    Lecture 60 Findings top and bottom insights

    Lecture 61 Creating color scales and color bars

    Section 17: Excel - Formulas and Functions for Data Analysis

    Lecture 62 SUM, AVERAGE, MIN, and MAX functions

    Lecture 63 SUMIF, and AVERAGEIF functions

    Lecture 64 COUNT, COUNTA, and COUNTIF functions

    Lecture 65 YEAR, MONTH and DAY for date manipulation

    Lecture 66 IF STATEMENTs for conditional operation

    Lecture 67 VLOOKUP for column-wise insight search

    Lecture 68 HLOOKUP for row-wise insight search

    Lecture 69 XLOOKUP for robust & complex insight search

    Section 18: Excel - Graphs and Charts for Data Visualization

    Lecture 70 Analyze data with Stacked and cluster bar charts

    Lecture 71 Analyze data with Pie chart and line chart

    Lecture 72 Analyze data with Area chart and TreeMap

    Lecture 73 Analyze data with Boxplot and Histogram

    Lecture 74 Analyze data with Scatter plot and Combo chart

    Lecture 75 Adjusting and decorating graphs and charts

    Section 19: Excel - Data Analysis in PivotTables and PivotCharts

    Lecture 76 PivotTables for GROUP data analysis PART 1

    Lecture 77 PivotTables for CROSSTAB data analysis PART 2

    Lecture 78 PivotCharts and Slicers for interactivity

    Section 20: Excel - Data Analysis ToolPack for Statistical Analysis

    Lecture 79 Descriptive statistics and analysis

    Lecture 80 Independent sample t-test for two samples

    Lecture 81 Paired sample t-test for two samples

    Lecture 82 Analysis of variance – One way ANOVA

    Lecture 83 Correlation analysis for relationship

    Lecture 84 Multiple linear regression analysis

    Section 21: Excel - Creating Interactive Dashboard

    Lecture 85 Accumulating relevant information

    Lecture 86 Creating a canvas for dashboard

    Lecture 87 Developing the complete dashboard

    Lecture 88 Final touch up for dashboard decoration

    Section 22: Excel Project - Bank Churn Data Analysis

    Section 23: Phase 3 - Database Management in MySQL

    Lecture 89 My instructions for this phase

    Lecture 90 Extra note on functions of MySQL

    Section 24: Necessary Fundamentals of RDBMS

    Lecture 91 RDBMS: example and importance

    Lecture 92 Key features of RDBMS

    Lecture 93 Primary key v/s Foreign key

    Lecture 94 Types of relationship in RDBMS

    Lecture 95 Data types in RDBMS

    Section 25: Introduction to SQL for RDBMS

    Lecture 96 Introduction to SQL language

    Lecture 97 Various platforms of SQL

    Section 26: Installing & Loading data in MySQL Interface

    Lecture 98 Installing MySQL in Windows and Mac

    Lecture 99 Loading CSV dataset in MySQL

    Section 27: SQL - Getting Started: Database Management

    Lecture 100 Creating database

    Lecture 101 Selecting database

    Lecture 102 Modifying database

    Lecture 103 Deleting database

    Lecture 104 SQL query for database management

    Section 28: SQL - Fundamental Queries in SQL

    Lecture 105 SELECT….FROM: select data from table

    Lecture 106 DISTINCT: selecting unique values for column

    Lecture 107 AS: selecting columns based on aliases

    Lecture 108 WHERE: selecting data based on condition

    Lecture 109 Basic SQL Queries

    Section 29: SQL - Managing Tables in Database System

    Lecture 110 CREATE: creating table

    Lecture 111 NOT NULL: limiting null values

    Lecture 112 UNIQUE: limiting duplicates

    Lecture 113 INSERT INTO: adding values in columns

    Lecture 114 UPDATE: updating values based on condition

    Lecture 115 DELETE: deleting values based on condition

    Lecture 116 TRUNCATE: deleting all the values except table

    Lecture 117 DROP: removing entire table

    Lecture 118 CHECK: limiting specific values in columns

    Lecture 119 Managing Tables in SQL

    Section 30: SQL - Working with Columns and Constraint

    Lecture 120 ADD COLUMN: adding new column

    Lecture 121 MODIFY COLUMN: replacing data types

    Lecture 122 RENAME COLUMN: changing column names

    Lecture 123 DROP COLUMN: deleting columns

    Lecture 124 ADD CONSTRAINT: adding primary key

    Lecture 125 ADD CONSTRAINT….REFERENCES: adding foreign key

    Lecture 126 DROP CONSTRAINT: deleting keys

    Lecture 127 Working with Columns and Constraint

    Section 31: SQL - Working with Indexing Operation

    Lecture 128 CREATE INDEX: creating new index

    Lecture 129 CREATE UNIQUE INDEX: creating index without duplicates

    Lecture 130 DROP INDEX: deleting existing index

    Lecture 131 Working with Indexing Operation

    Section 32: SQL - Dealing with NULL/MISSING values

    Lecture 132 IS NULL: filtering the actual values out

    Lecture 133 IS NOT NULL: filtering the missing values out

    Lecture 134 Dealing with NULL values

    Section 33: SQL - Various Aspects of Filtering Data

    Lecture 135 AND: combining two or more conditions

    Lecture 136 OR: flexible logical operator

    Lecture 137 NOT: excluding values from filteration

    Lecture 138 BETWEEN…AND: filtering ranges of values

    Lecture 139 LIKE: filtering based on pattern

    Lecture 140 IN: precise logic for multiple conditions

    Lecture 141 LIMIT: filtering with limited data

    Lecture 142 Various Aspects of Filtering Data

    Section 34: SQL - IMPORTANT MySQL String Functions

    Lecture 143 CHAR_LENGTH: finding the length of text

    Lecture 144 CONCAT: adding different strings together

    Lecture 145 LOWER: converting into lowercase

    Lecture 146 UPPER: converting into uppercase

    Lecture 147 TRIM: removing unnecessary gaps

    Lecture 148 REPLACE: replacing old value by new value

    Lecture 149 IMPORTANT MySQL String Functions

    Section 35: SQL - IMPORTANT MySQL Arithmetic Functions

    Lecture 150 ABS: negative to positive value

    Lecture 151 SUM: calculating the total value

    Lecture 152 AVG: calculating the average value

    Lecture 153 COUNT: counting total items

    Lecture 154 DIV: dividing numeric data

    Lecture 155 MIN: finding the lowest value

    Lecture 156 MAX: finding the highest value

    Lecture 157 MySQL Arithmetic Functions

    Section 36: SQL - IMPORTANT MySQL Transformation Functions

    Lecture 158 POWER: multiple multiplications

    Lecture 159 ROUND: decreasing the decimals

    Lecture 160 SQRT and LOG: transformation functions

    Lecture 161 MySQL Transformation Functions

    Section 37: SQL - IMPORTANT MySQL Datetime Functions

    Lecture 162 DATEFORMAT: formatting the date shape

    Lecture 163 DATEDIFF: finding the date difference

    Lecture 164 DAY/MONTH/YEAR: extracting parts of dates

    Lecture 165 MySQL Datetime Functions

    Section 38: SQL - Grouping and Sorting data in SQL

    Lecture 166 ORDER BY: sorting data based on a column

    Lecture 167 GROUP BY: group data analysis with functions

    Lecture 168 Grouping and Sorting data

    Section 39: SQL - JOINS for Data Retrievals in SQL

    Lecture 169 INNER JOIN: joining on common values

    Lecture 170 LEFT JOIN: joining on left table values

    Lecture 171 RIGHT JOIN: joining on right table values

    Lecture 172 CROSS JOIN: joining all values from tables

    Lecture 173 JOINS for Data Retrievals

    Section 40: SQL - Advanced Functions and Operations

    Lecture 174 HAVING: advanced conditional format

    Lecture 175 EXISTS: nested filtering between tables

    Lecture 176 ANY: nested filtering between tables

    Lecture 177 CASE: finding the conditional outcomes

    Lecture 178 Advanced Functions and Operations

    Section 41: SQL - Stored Procedure and Comments

    Lecture 179 SQL comments systems

    Lecture 180 Storing and executing procedures

    Lecture 181 Stored Procedure and Comments

    Section 42: Phase 4 - Data Analytics A-Z in Python

    Lecture 182 My instructions for this phase

    Lecture 183 Extra note on python data analysis

    Lecture 184 Resources used in the course

    Section 43: Setting Up Python and Jupyter Notebook

    Lecture 185 Installing Python and Jupyter Notebook – Mac

    Lecture 186 Installing Python and Jupyter Notebook – Windows

    Lecture 187 More alternative methods – Check the article

    Section 44: Python - Starting with Variables to Data Types

    Lecture 188 Getting started with first python code

    Lecture 189 Assigning variable names correctly

    Lecture 190 Various data types and data structures

    Lecture 191 Converting and casting data types

    Lecture 192 Starting with Variables to Data Types

    Section 45: Python - Operators in Python Programming

    Lecture 193 Arithmetic operators (+, -, *, /, %, **)

    Lecture 194 Comparison operators (>, <, >=, <=, ==, !=)

    Lecture 195 Logical operators (and, or, not)

    Lecture 196 Operators in Python Programming

    Section 46: Python - Dealing with Data Structures

    Lecture 197 Lists: creation, indexing, slicing, modifying

    Lecture 198 Sets: unique elements, operations

    Lecture 199 Dictionaries: key-value pairs, methods

    Lecture 200 Several data structures

    Section 47: Python - Conditionals Looping and Functions

    Lecture 201 Conditional statements (if, elif, else)

    Lecture 202 Nested logical expressions in conditions

    Lecture 203 Looping structures (for loops, while loops)

    Lecture 204 Defining, creating, and calling functions

    Lecture 205 Conditionals Looping and Functions

    Section 48: Python - Sequential Cleaning and Modifying Data

    Lecture 206 Preparing notebook and loading data

    Lecture 207 Identifying missing or null values

    Lecture 208 Method of missing value imputation

    Lecture 209 Exploring data types in a dataframe

    Lecture 210 Dealing with inconsistent values

    Lecture 211 Assigning correct data types

    Lecture 212 Dealing with duplicated values

    Lecture 213 Sequential data cleaning and modifying

    Section 49: Python - Various Methods of Data Manipulation

    Lecture 214 Sorting data by column and order

    Lecture 215 Filtering data with boolean indexing

    Lecture 216 Query method for precise filtering

    Lecture 217 Filtering data with isin method

    Lecture 218 Slicing dataframe with loc and iloc

    Lecture 219 Filtering data for many conditions

    Lecture 220 Various methods of data manipulation

    Section 50: Python - Merging and Concatenating Dataframes

    Lecture 221 Joining dataframes horizontally

    Lecture 222 Concatenate dataframes vertically

    Lecture 223 Merging and joining dataframes

    Section 51: Python - Applied Exploratory Data Analysis Methods

    Lecture 224 Frequency and percentage analysis

    Lecture 225 Descriptive statistics and analysis

    Lecture 226 Group by data analysis method

    Lecture 227 Pivot table analysis - all in one

    Lecture 228 Cross-tabulation analysis method

    Lecture 229 Correlation analysis for numeric data

    Lecture 230 Applied exploratory data analysis

    Section 52: Python - Exploring Data Visualisations Methods

    Lecture 231 Understanding visualisation tools

    Lecture 232 Getting started with bar charts

    Lecture 233 Stacked and clustered bar charts

    Lecture 234 Pie chart for percentage analysis

    Lecture 235 Line chart for grouping data analysis

    Lecture 236 Exploring distribution with histogram

    Lecture 237 Correlation analysis via scatterplot

    Lecture 238 Matrix visualisation with heatmap

    Lecture 239 Boxplot statistical visualisation method

    Lecture 240 Exploring data visualisations methods

    Section 53: Python - Practical Data Transformation Methods

    Lecture 241 Investigating distribution of numeric data

    Lecture 242 Shapiro Wilk test of normality

    Lecture 243 Starting with square root transformation

    Lecture 244 Logarithmic transformation method

    Lecture 245 Box-cox power transformation method

    Lecture 246 Yeo-Johnson power transformation method

    Lecture 247 Practical data transformation methods

    Section 54: Python - Statistical Tests and Hypothesis Testing

    Lecture 248 One sample t-test

    Lecture 249 Independent sample t-test

    Lecture 250 One way Analysis of Variance

    Lecture 251 Chi square test for independence

    Lecture 252 Pearson correlation analysis

    Lecture 253 Linear regression analysis

    Lecture 254 Statistical tests and hypothesis testing

    Section 55: Python - Exploring Feature Engineering Methods

    Lecture 255 Generating new features

    Lecture 256 Extracting day, month and year

    Lecture 257 Encoding features - LabelEncoder

    Lecture 258 Categorizing numeric feature

    Lecture 259 Manual feature encoding

    Lecture 260 Converting features into dummy

    Lecture 261 Feature engineering methods

    Section 56: Python - Data Preprocessing for Machine Learning

    Lecture 262 Selecting features and target

    Lecture 263 Scaling features - StandardScaler

    Lecture 264 Scaling features - MinMaxScaler

    Lecture 265 Dimensionality reduction with PCA

    Lecture 266 Splitting into train and test set

    Lecture 267 Preprocessing for machine learning

    Section 57: Python - Supervised Regression ML Models

    Lecture 268 Linear regression ML model

    Lecture 269 Decision tree regressor ML model

    Lecture 270 Random forest regressor ML model

    Lecture 271 Supervised regression ML models

    Section 58: Python - Supervised Classification ML Models

    Lecture 272 Logistic regression ML model

    Lecture 273 Decision tree classification ML model

    Lecture 274 Random forest classification ML model

    Lecture 275 Supervised classification ML models

    Section 59: Python - Segmentation with KMeans Clustering

    Lecture 276 Calculating within cluster sum of squares

    Lecture 277 Selecting optimal number of clusters

    Lecture 278 Application of KMeans machine learning

    Lecture 279 Data segmentation with KMeans clustering

    Section 60: Final Project - Sports Data Analytics

    Section 61: What's Next?

    Lecture 280 Your next steps - Portfolios

    Lecture 281 Your next steps - LinkedIn

    Section 62: Extra - Python Error Message

    Lecture 282 ModuleNotFound error

    Lecture 283 Syntax error

    Lecture 284 Key error

    Lecture 285 Index error

    Lecture 286 Attribute error

    Lecture 287 Value error

    Lecture 288 Type error

    Lecture 289 Resource

    Section 63: Extra - Fasten Your Coding

    Lecture 290 Diagnosing errors

    Lecture 291 Debugging errors

    Lecture 292 Enhancing codes

    Lecture 293 ChatGPT prompt

    Those who are interested in entering the field of data analytics and want to learn the complete tools and techniques used in the industry.,Those who are highly interested in learning complete data analytics using Excel, SQL and Python.,This course is NOT for those who are interested to learn data science or advanced machine learning application.