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Data Analytics Essentials

Data Analytics Essentials

Master data analytics applications and secure a future-ready career

Application closes 23rd Jan 2025

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Program Outcomes

Advance your career in Data Analytics

Become a data analytics expert

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    Understand data analytics from business, technical, and conceptual aspects

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    Analyze and visualize data using Excel, SQL, Python, and Tableau

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    Query and manage databases using SQL to generate insights and reports

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    Solve business problems with data storytelling and end-to-end Python analytics

Earn a certificate from UT Austin

  • U.S. News & World Report, 2024

    #7 Public University in the U.S.

    U.S. News & World Report, 2024

  • ranking 4

    #4 in MS - Business Analytics

    QS World University rankings, 2023

  • ranking 6

    #6 in Executive Education - Custom Programs

    Financial Times, 2022

  • U.S. News & World Report, 2022

    #7 Business Analytics (In USA)

    U.S. News & World Report, 2022

Key program highlights

Why choose the data analytics essentials program?

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    Alumni status from world’s top university

    Join UT Austin’s alumni network of over 51,000+ students, with many in key domains of science, business, technology, and social science

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    Industry-ready curriculum

    Learn the foundations of Python, GenAI, Data Visualization and more from top UT Austin faculty. Gain valuable insights and apply your skills.

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    Learn at your convenience

    Gain access to content online, including lectures, assignments, and live webinars which you can access anytime, anywhere

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    3 hands-on projects

    Work on projects alongside established data scientists and fellow learners worldwide

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    Get expert mentorship

    Interact with mentors specialised in Data Analytics and get guidance to complete and showcase your projects

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    Personalized program support

    Get 1:1 assistance from a Program Manager. Access GL Community, project discussion forums and peer groups

Skills you will learn

  • Data Analysis with Excel
  • Descriptive Statistics
  • Python Programming
  • Data Transformation with Pandas and Numpy
  • Exploratory Data Analysis (EDA)
  • Data Visualization with Seaborn and Tableau
  • Interactive Dashboard Creation
  • PowerBI
  • Generative AI and ChatGPT Applications
  • Storytelling with Data
  • SQL Querying and Data Management
  • Data Analysis with Excel
  • Descriptive Statistics
  • Python Programming
  • Data Transformation with Pandas and Numpy
  • Exploratory Data Analysis (EDA)
  • Data Visualization with Seaborn and Tableau
  • Interactive Dashboard Creation
  • PowerBI
  • Generative AI and ChatGPT Applications
  • Storytelling with Data
  • SQL Querying and Data Management

view more

Secure top data analytics jobs

  • 11.5 million

    new jobs by 2026

  • Up to $110K

    avg annual salary

  • $105 million

    mkt value by 2027

  • 92%

    orgs use data

Careers in Data Analytics

Here are the ideal job roles in Data Analytics:

  • Data Analyst

  • Product Analyst

  • Business Analyst

  • Analytics Engineer

  • BI Analyst

  • Data Architect

  • Data Engineer

  • Data Journalist

  • Research Analyst

  • Data Scientist

Our alumni work at top companies

  • Overview
  • Career Transitions
  • Why GL
  • Learning Journey
  • Curriculum
  • Projects
  • Tools
  • Certificate
  • Faculty
  • Reviews
  • Career support
  • Fees
  • FAQ
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This program is ideal for

The Data Analytics essential certificate program empowers you to transition to a career in data/business analytics, even without programming experience

  • Recent grads & young professionals

    Break into the world of data and leverage it to make analytical decisions across functions and industries.

  • Mid career & senior professionals

    Upskill and leverage data to make analytical decisions. This program prepares one for a role as a Data Analyst or a Business Analyst across industries.

Upskill with one of the best data analytics programs

  • UT Austin Programs

    Other Courses

  • Certification

    hands upCertificate from UT Austin

    hands downNo university certificate

  • Gen AI modules

    hands upExtensive coverage of Gen AI topics

    hands downLimited coverage

  • Live mentored learning

    hands upLive interactive online classes with industry professionals 

    hands downLimited to no live classes

  • Career support

    hands upYes, with ePortfolio and profile review

    hands downNo career support

  • Hands-on projects

    hands up3 industry projects

    hands downFewer projects

  • Dedicated Program support

    hands upDedicated support to complete your course

    hands downLimited support

Experience a unique learning journey

Our pedagogy is designed to ensure career growth and transformation

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    Learn with self-paced videos

    Learn critical concepts from video lectures by UT Austin faculty and data analytics experts

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    Engage with your mentors

    Clarify your doubts and gain practical skills during the weekend mentorship sessions

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    Work on hands-on projects

    Work on industry-guided projects and apply the concepts & tools to solve business problems

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    Get personalized assistance

    Our dedicated program managers will support you whenever you need

Get an exclusive free preview of the course

Explore faculty videos and mentorship sessions. Get insights into relevant case-studies and projects.

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Ace Power BI Certification

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Ace PL-300 certification*

Prepare for PL-300 Certification Exam with:

  • Live Virtual Classes with Microsoft Certified Instructors

  • Hands-on Learning and Academic Support

  • Exam Preparation Guide

  • Hands-on Projects

*Delivered by Great Learning in collaboration with Microsoft

Curriculum

Developed by a leading university, this core curriculum of the data analytics essentials course covers foundational concepts and major skills and tools required to excel as a data analyst.

Pre-work

Here, we will quickly learn all the prerequisites required to learn the fundamentals of data analytics, such as Excel, Python Programming, and Descriptive Statistics.

Introduction to Excel

The first module of this data analytics course for beginners will cover the basics of Microsoft Excel. Students will learn data analysis essentials using Excel to create and format spreadsheets, along with CSV, tables, formulae, sorting, filtering, and much more.

  • Why Excel? What are the advantages of Excel?
    Here, students will learn why Excel is a powerful spreadsheet application for analyzing and manipulating data and the advantages of using Excel for business and personal use.
  • CSV File Format
    CSV files can be used with almost any spreadsheet program, such as Microsoft Excel, Apache Openoffice Calc, or Google Sheets. Here, students will learn how to use CSV for exchanging data between different applications.
  • Tools, Ribbons, Commands
    In this, students will learn how to add functionality to a workbook and make working with data easier using tools, ribbons, and commands available in Excel.
  • Cell Referencing
    This topic will teach students the process of cell referencing, a powerful feature in Excel that allows them to link data from multiple sheets and workbooks.
  • Tables
    This topic will teach students how to implement tables in Excel to organize data and make it easy to view and understand.
  • Basic Arithmetic Functions (+,-,*,/)
    This topic will make students familiar with implementing essential arithmetic functions to create more complex formulas that will unlock the power of Excel for data analysis needs.
  • Date Functions
    This topic will familiarize students with implementing date functions using different formats in Excel.
  • Sorting
    Here, students will learn how to sort data, where they can organize data in a way that makes it easier to find the information they need and to see relationships between different pieces of data
  • Filtering
    Here, students will learn how to filter data, a powerful way in data analysis where they can easily view subsets of their data by hiding the rows that don't meet their criteria.
  • IF ELSE
    The IF-ELSE function in Excel is a handy tool that allows us to perform different actions depending on whether a condition is met or not. This can be particularly useful when we have a large dataset and want to perform different analyses depending on specific criteria.

Descriptive Statistics

This module will cover the basic concepts of descriptive statistics, including measures of central tendency (mean, median, and mode) and measures of dispersion (range, variance, and standard deviation).

  • Seeing patterns in the data
    Here, students will learn how to identify and analyze patterns in the data with the assistance of descriptive statistics.
  • Sample and Population
    Here, students will gain an understanding of several concepts in probability, such as sample and population.
  • Central Tendency (Mean, Median, Mode)
    This topic will make students familiar with measures of central tendency (mean, median, and mode) to help them calculate the average, find the median value of a dataset, and find the most frequent value.
  • Dispersion (Range, Variance, Standard Deviation)
    This topic will make students familiar with measures of dispersion (range, variance, and standard deviation), which is essential for analyzing data sets because it can give us insights into the spread of the data.
  • Five point Summary
    In this topic, students will understand the five-point summary in descriptive statistics.

Data Analytics Foundations

Moving on to the next module of this data analytics essentials course, students will understand several fundamentals of data analysis, such as lifecycle, data pipeline, and insights generation using Excel, and apply these techniques to real-world data sets.

Analytics Life Cycle - An end to end use case

Industry 4.0 is the term used to describe the fourth industrial revolution, and data is the lifeblood of Industry 4.0. In this module, students will explore the world of data and how data is critical for the industrial revolution.

  • Introduction to Analytics Lifecycle
    In this chapter, students will go through the various phases involved in the data analytics lifecycle.
  • Datasources and Databases
    Datasources are the information repositories that hold the data sets that analysts utilize to perform their work.
  • A typical Data Pipeline
    This chapter will familiarize students with the data pipeline, a series of steps to ingest, transform and analyze raw data.
  • Insight generation and Recommendation
    Here, students will familiarize themselves with the process of analyzing data to discover trends and patterns that can be used to generate new insights and make recommendations.
  • End-to-end Business Case Study Demo
    Here, students will go through a hands-on demo of an end-to-end business case study.

Generating Insights using Excel

In this module, students will explore the process of generating insights in multiple ways using Excel, such as tables, tabs, charts, and descriptive statistics.

  • Pivot Tables
    This topic will make students understand pivot tables, which allow them to quickly summarize large amounts of data in a concise, easy-to-understand format.
  • Sorting Data in Pivot Tables
    Here, students will learn how to sort data in pivot tables, where they can sort by values, by column, by row, and by multiple columns and rows.
  • Filtering Data in Pivot Tables
    Here, students will learn how to filter data in pivot tables, where they can filter by date, product, customer, or any other entity.
  • Analyse Tab
    Here, students will learn how to work with the analyze tab in Excel, which allows them to perform various statistical analyses on their data, like calculating means, standard deviations, percentiles, etc. They can also use the tab to create charts and graphs to visualize their data.
  • Exploring charts
    In this topic, students will explore a variety of charts available in Excel to visualize data sets in multiple formats.
  • Descriptive Statistics
    This chapter will help students analyze and understand diverse data sets in Excel with the aid of descriptive statistics.

Data Analytics with SQL

Heading into the next chapter, students will learn everything they need to know about how to use SQL to perform data analysis effectively. By the end, they’ll be able to confidently query databases and make sense of data like a pro!

Querying data with SQL

Querying data with SQL allows us to find and manipulate data in our database quickly. In this module, students will learn how to write and understand SQL queries to retrieve data from any database.

  • Importing a Database
    Here, students will learn the process of importing a database into MySQL.
  • Introduction to RDBMS
    This topic will introduce students to RDBMS, a relational database management system to create, store, update, and delete data in a relational database.
  • Selecting data
    When working with data stored in a MySQL database, it is often necessary to select specific data in order to work with it. Here, students will learn how to select data in a variety of ways using the SELECT statement.
  • Filtering data
    When working with databases, it is often necessary to filter data to return only the rows that meet specific criteria. Here, students will learn how to filter data and make their queries more specific using the WHERE clause.

Advanced Querying to extract business insights

Advanced querying encompasses a variety of techniques that allow a user to manipulate data in order to answer complex business questions. In this module, students will learn the process of advanced querying to extract business insights.

  • Aggregating data
    Students will get familiar with data aggregation in SQL, a process of combining data from multiple tables into a single table, where a calculation is performed on a set of values and returns a single value.
  • Joining data
    Students will familiarize themselves with combining data from two or more tables into a single table using the JOIN command.
  • Window Functions
    Here, students will learn how to identify values in a collection of rows and provide a single result for each row, which is called the window function.
  • Order-of-Execution
    Students will be introduced to the order-of-execution technique, which defines the specific order in which the clauses, expressions, and operators in a statement are evaluated.
  • Extracting data to Excel to perform data analysis

Project Week

Once students are done with the fundamentals of data analytics, this data analysis course for beginners will provide students with the first hands-on project on the topics learned so far.

Data-driven Insights using Python

This chapter teaches students how to use Python to gain insights from data. The course will cover how to use Python to read data from a variety of sources, how to process that data to extract useful information, and how to visualize the data to enable decision-making.

Introduction to Python Programming

This module will give students a comprehensive introduction to the Python programming language, covering topics like Google Colab, variables, data types, data structures, conditional statements, loops, and functions.

  • Setting up Google Colab
    Google Colab is a free notebook environment for writing and executing code. Students will learn how to set up and work with Google Colab in this section.
  • Variables
    Here, students will learn how to work with variables in Python to store values and retrieve them later.
  • Data Types
    Here, students will understand data types, which define the type of data that a variable can hold. There are several built-in data types in Python, including integers, floats, and strings, among others.
  • Data Structures
    Python's standard library provides a wide range of data structures that can be used to store and efficiently organize data. The most commonly used data structures are lists, tuples, dictionaries, and sets.
  • Conditional Statements
    This topic will familiarize students with conditional statements that help them execute the code only if the specified condition is met.
  • Loops
    The concept of loops will be taught to the students in this chapter. Loops can execute a block of code continually until a specific condition is met, such as computing the sum of two integers or displaying multiplication or other tables, among other things.
  • Functions
    This chapter will help students understand and use Functions using Python programming so that they may reuse code.

Data Transformation using Numpy and Pandas

Numpy is a powerful library for performing numerical operations on arrays and matrices. At the same time, Pandas is a library for working with data frames, which are similar to tables in a relational database. In this module, we'll explore how to use these two libraries to perform various data transformation tasks.

  • Numpy Arrays
    A Numpy array is a multidimensional array of objects of the same type, and this topic will teach students how to perform numerical operations efficiently using Numpy arrays.
  • Numpy Functions
    This article will make students familiar with various Numpy functions that can assist them in speeding up their code.
  • Indexing
    Students will learn how to find and retrieve data from a given data structure using Indexing in this topic.
  • Accessing
    Here, students will learn how to access data from a Python project using the dot (.) operator.
  • Pandas Series
    In this topic, students will understand how to hold several data types, such as numbers, strings, etc., using a one-dimensional array-like object, i.e., the Pandas Series.
  • Pandas Dataframes
    Here, students will gain an understanding of Pandas Dataframes, which are two-dimensional, size-mutable, potentially heterogeneous tabular data structures with labeled axes (rows and columns).
  • Saving Loading
    Here, students will explore the process of saving and loading files in multiple formats using the Pandas library.
  • Merging dataframes
    This topic will familiarize students with the process of combining/merging two or more dataframes into a single dataframe with the help of specific methods.
  • Pandas Functions
    This topic will familiarize students with various Pandas functions that are widely implemented in numerous applications of data science and machine learning.

Exploratory Data Analysis

Exploratory Data Analysis, also known as EDA, uses visual techniques to help us find patterns and insights frequently inside specific data. This module will explain EDA using Python in-depth.

  • Data Sanity Checks
    This topic will make students understand the significance of performing sanity checks to ensure that the data is clean and ready for analysis while working with data.
  • Univariate Analysis
    The students in this topic will gain an understanding of how to perform statistical comparisons using univariate analysis.
  • Bivariate Analysis
    The students in this topic will gain an understanding of how to perform statistical comparisons using bivariate analysis.
  • Missing Value Treatment
    This topic will familiarize students with the number of ways to deal with missing values when performing exploratory data analysis.
  • Outlier Detection
    This topic will familiarize students with the number of ways to detect outliers that can help identify problems and patterns in data for further analysis.

Additional Content: Data Visualization with Seaborn

Seaborn is a powerful data visualization library that makes creating beautiful, informative visualizations easy. This module will teach students how to use Seaborn to create sophisticated visualizations, including histograms, line plots, joint charts, heatmaps, and more.

  • Histogram
    In this topic, students will learn how to represent the distribution of numerical data in a graphical format using histograms accurately.
  • Box Plot
    A box plot is a graph made up of a box and a whisker that shows the distribution of a data set. Here, students will get familiar with the process of showing the spread of the data and finding outliers.
  • Line Plot
    Line plots are an excellent way to visualize relationships between numeric variables. Seaborn makes it easy to create high-quality line plots with just a few lines of code.
  • Scatter Plot
    A scatter plot is used to indicate the data as a collection of points. Here, students will understand how Seaborn makes it easy to create a scatter plot for exploring and visualizing data.
  • Joint Plot
    A joint plot is an excellent way to visualize the relationship between two variables. Here, students will learn about Seaborn's jointplot() function, which makes it easy to create these plots.
  • Violin Plot
    Violin plots play the same roles as box plots and whisker plots. They show the distribution of a quantitative variable for several levels of a categorical variable and are beneficial for comparing distributions between different groups.
  • Strip Plot
    A strip plot is a graphical representation of categorical data where a separate strip on the plot represents each category. This topic will make students understand strip plots' implementation using Seaborn to visualize the distribution of categorical data.
  • Heatmap
    A heatmap is a graphical representation of data where the individual values contained in a matrix are represented as colors. This topic will make students understand the usage of seaborn.heatmap() function, which takes in a rectangular dataset and an optional argument for specifying the color palette.
  • Plotly
    Plotly is a powerful Python library that allows you to create interactive, publication-quality figures. This topic will teach students how to work with Plotly, which helps create line plots, bar plots, scatter plots, and more.
  • Customizing Plots
    This comprehensive guide will show students how to tweak every aspect of their Seaborn plots to create the perfect visualization for their data. By the end of this guide, students will be experts at creating beautiful, informative Seaborn plots that tell their data's story perfectly.

Project Week

Once students are done with the data analysis essentials, this data analyst course for beginners will provide students with the second hands-on project on the topics learned so far.

Creative Storytelling with Tableau (Self-Paced Module)

In this chapter, students will learn how to use Tableau to create impactful, interactive data visualizations that tell a story. Students will also learn how to use Tableau's visualization capabilities to tell compelling stories that engage their audience.

Storyboarding 101 with Tableau

This comprehensive guide will cover everything students need to know about storyboarding with Tableau, from the basics to advanced tips and tricks.

  • Tableau Public Installation
    Tableau Public is a free data visualization software that can be installed on any computer to create interactive visualizations of data. Here, students will explore the process of installing Tableau Public on their systems.
  • Dimensions & Measures
    In Tableau, dimensions are the qualitative data elements in your data set, while measures are the quantitative data elements. In this topic, we will discuss how to use both dimensions and measures in Tableau to perform various data analysis tasks.
  • Data Types
    This topic will cover the implementation of several data types available in Tableau, such as string, date, time, numerical, boolean, geographic, and clusters.
  • Choosing-charts w/ SHOW ME
    This topic will teach students to use the "SHOW ME" tool, which provides a quick way to create various charts based on their selected data.
  • Calculations
    Calculations in Tableau are an essential part of data analysis. Creating calculated fields allows us to analyze data in ways that would not be possible with the raw data alone. This topic will show us how to create and use calculated fields in Tableau.
  • Dates and Date Functions
    Here, students will learn about dates and date functions, which allow users to create visual representations of data over time, track changes in data over time, and identify trends.
  • Filtering
    Filtering data in Tableau is a way of isolating data points within a larger dataset that meet the specific criteria you define. There are a few different ways to filter data in Tableau, which we will discuss in this topic.
  • Dashboarding-101
    This topic covers everything from the basics of setting up your Tableau dashboard to more advanced topics like creating custom visualizations and using filters to manipulate your data.

Tableau for building Interactive Dashboards

Students will learn how to create stunning visualizations that tell a story and engage their audience. We'll also show students how to use Tableau's powerful features to bring their data to life.

  • Parameters
    Here, students will learn how to filter data using parameters in Tableau.
  • Actions
    Here, students will learn how to work with an action, an interactive element that can be used to filter and highlight data on a dashboard.
  • Sorting
    This topic will familiarize students with a way to organize their data in a specific order with the aid of sorting.
  • Special Charts
    In this topic, we'll explore some of the special charts that Tableau can create to communicate information effectively.
  • What-if-analysis
    What-if-analysis in Tableau is the process of exploring data to find answers to questions you didn't know you had. Students will learn about this powerful process to gain insights into their data and make better decisions.
  • Reshaping Data
    In this topic, we'll show students how to reshape data in Tableau and how to use the various features and tools available to make the process as easy and efficient as possible.
  • Level-of-detail
    In this topic, we will learn about the level-of-detail in Tableau. Level-of-detail allows us to control the level of detail that is displayed in our charts and graphs.

Project Week

Once students are done with all the fundamentals of data analytics, this data analytics essentials program will provide students with the third hands-on project on the topics learned so far.

Self-paced Module

Gain an understanding of what ChatGPT is and how it works, as well as delve into the implications of ChatGPT for work, business, and education. Additionally, learn about prompt engineering and how it can be used to fine-tune outputs for specific use cases.

Demystifying ChatGPT and Applications

  • Overview of ChatGPT and OpenAI
  • Timeline of NLP and Generative AI
  • Frameworks for understanding ChatGPT and Generative AI
  • Implications for work, business, and education
  • Output modalities and limitations
  • Business roles to leverage ChatGPT
  • Prompt engineering for fine-tuning outputs
  • Practical demonstration and bonus section on RLHF

Career support: Portfolio review and interview preparation sessions

The Data Analytics Essentials program from University of Texas at Austin and Great Learning assists you to showcase your portfolio and be on top of employer preferences with resume and Linkedin portfolio review sessions and interview preparation guidance. You can also add the projects worked on during the program to your portfolio and enhance your skill competency.

Certificate of completion from the University of Texas at Austin and 5.0 Continuing Education Units (CEUs)

Upon completion of the program, earn a certificate of completion from the University of Texas at Austin McCombs School of Business.

End of Data Analytics Essentials Program by UT Austin

Start of PL-300 Certification Training

This curriculum is optimally designed with the outcome to prepare you for the Microsoft Power BI Data Analyst PL-300 certification exam.

Working with Data in Power BI

The outcome of this module is to learn how to navigate the Power BI interface, connect with data, prepare it, and create your first functional dashboard. Below are the topics covered in this week:

  • Understanding the Power BI Interface and Features

The first part of this module introduces learners to the Power BI interface and its comprehensive features. Learners will become familiar with the dashboard layout, the navigation pane, various menus, and options available in Power BI. This foundational understanding sets the stage for more advanced work within Power BI.

  • Why Power BI? Advantages of Power BI

Here, learners will understand why Power BI is a leading tool in data visualization and business intelligence. This section highlights the advantages of using Power BI, such as its seamless integration with various data sources, advanced analytics capabilities, interactive visualization, and compatibility across different platforms.

  • Creating Visualizations and Reports by Connecting to Data from Various Sources

This topic explores the process of creating visualizations and reports by connecting Power BI to data from multiple sources, such as Excel files, databases, and online services. Learners will gain hands-on experience in linking data, enabling diverse and robust reporting.

  • Basic Data Modeling Concepts and Techniques

Learners will delve into data modeling within Power BI, learning about the essential concepts and techniques such as tables, relationships, hierarchies, and measures. This foundational understanding of data modeling is critical to more effective analysis and reporting.

  • Data Preparation, Cleaning, and Transformation using Power Query

It focuses on preparing and cleaning data using Power Query within Power BI. Learners will discover the methods for extracting, transforming, and loading (ETL) data, including filtering, sorting, merging, and other data transformation techniques to ensure the quality and relevance of data.

  • Creating Relationships Between Data Tables

This section emphasizes the importance of creating and managing relationships between different data tables within Power BI. Learners will understand how to use relationships to create complex models and how it affects the way data is analyzed and reported.

  • Advanced Data Modeling Techniques

In the final part of this module, learners will be introduced to more advanced data modeling techniques in Power BI. They will explore complex functions, calculations, and expressions to create sophisticated data models for more nuanced analysis and visualization.

Creating Effective Visualizations

In the next module of this Microsoft Power BI certification, learners explore the best practices for creating visualizations, creating custom dashboards and visuals, and leveraging R and Python in PowerBI to develop advanced visualizations. Below are the topics covered this week:

  • Best Practices for Creating Compelling and Informative Visualizations

Learners will gain familiarity with the principles and best practices for creating visualizations that are not only visually appealing but also convey information effectively and accurately. Topics include choosing the right chart type, using color and layout wisely, and how to ensure that visuals align with the message they are intended to convey.

  • Using Custom Visuals and Formatting Options

This part of the module delves into customizing visuals in Power BI, using various formatting options to tailor the appearance and functionality of charts and graphs. Learners will explore how to use these tools to enhance the clarity and impact of their visualizations.

  • Creating Dashboards to Display Multiple Visualizations

Here, learners will gain hands-on experience in designing and creating dashboards with Power BI to display multiple visualizations cohesively. They learn how to organize, layout, and interact with various visuals on a dashboard to provide an integrated view of data.

  • Creating Custom Visuals Using the Power BI Developer Tools

This section introduces the Power BI Developer Tools, allowing learners to create custom visuals from scratch. They'll learn to use programming and design principles to build visuals that align precisely with their specific needs and data.

  • Using R and Python in Power BI for Advanced Visualizations and Analytics

Learners will explore how to integrate R and Python scripts with Power BI to create more advanced visualizations and analytics. They offer more flexibility and power in handling complex data analysis and visualization tasks, including machine learning models and specialized graphing.

  • Building Interactive, Drill-Down Visualizations

In the final part of this module, learners will gain an understanding of how to create interactive visualizations that enable a more profound exploration of data. They will understand how to build drill-down functionalities, allowing viewers to click on parts of the visual to see more detailed information. It enhances the user's understanding and interaction with the data, leading to more insightful discoveries.

DAX Basics & Advanced DAX

In the third module of this Microsoft Power BI Data Analyst certification online, learners gain an understanding of how to use DAX functions in PowerBI for various applications, work with tables and filters in DAX, and optimize DAX performance. Below are the topics covered this week:

  • Introduction to the Data Analysis Expressions (DAX) Language

This topic serves as an introduction to DAX, the formula language used in Power BI. Learners will gain familiarity with the basic syntax, structure, and applications of DAX, allowing them to create custom calculations and expressions tailored to their specific data analysis needs.

  • Using DAX Functions to Create Calculated Columns and Measures

Learners will explore using DAX functions to create calculated columns and measures, which can be used for more advanced analysis. Defining and applying these functions will enhance your ability to model data effectively within Power BI.

  • Understanding and Using Context in DAX Calculations

Understanding context is crucial for working with DAX. In this topic, learners will understand how to manage and use different contexts (such as row context and filter context) in DAX calculations, enabling them to create more complex and dynamic expressions.

  • Using Advanced DAX Functions for Time Intelligence, Ranking, and More

This section dives into more advanced applications of DAX, including time intelligence functions and ranking. Learners will gain an understanding of how to apply these powerful functions to analyze time series data, rank items, and perform other sophisticated analytical tasks.

  • Working with Tables and Filters in DAX Expressions

Learners will understand how to work with tables and filters in DAX, a crucial skill for shaping data and creating targeted calculations. They include understanding how to apply filters to tables and use table functions within DAX to control and guide data analysis.

  • Optimizing DAX Performance

Learners will understand how to optimize the performance of DAX calculations. The techniques include enhancing calculation speed, minimizing resource consumption, and ensuring that DAX expressions run as efficiently as possible

Productionizing Power BI reports

The fourth module of this Power BI online course with certification familiarizes learners with the process of deploying to PowerBI service, facilitating collaboration between individuals and groups, optimizing data models and queries, and handling large datasets. Below are the topics covered this week: 

  • Deploying Power BI Reports and Dashboards to the Power BI Service

In this section, learners will understand how to deploy Power BI reports and dashboards to the Power BI Service. This process allows them to publish their visualizations and analyses online, making them accessible to a broader audience within an organization.

  • Sharing Reports and Dashboards with Other Users and Groups

Learners will explore the methods for sharing Power BI reports and dashboards with other users and groups within their organization. These methods facilitate collaboration and ensure that the right people have access to the insights they need to make informed decisions.

  • Using Collaboration Features like Comments and Notifications

This topic introduces the collaboration features within Power BI, such as comments and notifications. Learners will explore how these features enable interactive communication between users and foster a more dynamic and engaged analytics community.

  • Best Practices for Creating Optimized Data Models in Power BI

Learners will discover the best practices for creating optimized data models within Power BI. They include techniques for efficient structuring, indexing, and design, ensuring that data models are effective and performant.

  • Understanding Query Folding and Optimizing Queries for Performance

Here, learners will delve into query folding and learn how to optimize queries for performance within Power BI. They will gain an understanding of how to write efficient queries that can leverage the capabilities of the underlying data source, reducing unnecessary computations and enhancing speed.

  • Using DirectQuery and Live Connection for Large Datasets

In this final section, learners will explore how to handle large datasets in Power BI using DirectQuery and Live Connection. These features allow them to connect directly to the data source, bypassing the need to load all data into Power BI, thus enabling real-time analysis of substantial amounts of data.

Power BI Administration and Security

The fifth module of this PL-300 Microsoft Power BI certification familiarizes learners with managing PowerBI entities, configuring settings and permissions, and leveraging PowerBI API for automation. Below are the topics covered in this week: 

  • Managing Power BI Workspaces, Reports, and Data Sources

In this topic, learners will acquire the skills to manage Power BI workspaces, reports, and data sources. They will learn to organize and maintain these key components, including creating and managing workspaces, controlling access to reports, and handling the underlying data sources. This knowledge is fundamental to ensure the efficiency and effectiveness of Power BI within an organization.

  • Configuring Security Settings and Permissions in Power BI

Learners will delve into the critical area of security within Power BI. This topic covers how to configure security settings and permissions, ensuring that data is accessed and managed in a secure and controlled manner. They will learn about roles, access levels, and how to apply these settings to different entities within Power BI, providing a robust framework for data protection and compliance.

  • Using the Power BI API for Automation and Integration

The final topic introduces learners to the Power BI API, a powerful tool for automation and integration within Power BI. They will learn to leverage the API to automate various tasks, such as deploying reports, managing workspaces, or integrating Power BI with other systems and tools. This understanding opens up a wide range of possibilities for streamlining processes and enhancing the capabilities of Power BI within an organization’s broader IT ecosystem

Project Week

Work on a real-world project to apply the concepts studied and comprehend the applications of Power BI.

 

Hands-on learning & projects

Work on projects and implement your skills with established data experts and fellow learners from around the world

  • 20

    learners group

  • 2-way

    audio-video interaction

  • 3

    real-world projects

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Retail

Improving customer experience with EDA

Analyze customer order data to understand restaurant demand and enhance user experience through exploratory data analysis.

Skills you will learn

  • Python basics
  • Data manipulation with Pandas and NumPy
  • Data visualization using Seaborn/Matplotlib
  • Exploratory Data Analysis
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Automobile

Analyzing after-sales feedback with SQL

Query and manipulate SQL database to generate business insights and create a quarterly report for decision-making.

Skills you will learn

  • SQL querying and filtering
  • Aggregation and joins
  • Subqueries and window functions
  • Report generation for business insights
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Entertainment

Creating personalized dashboard with PowerBI

Analyze viewer preferences and promote classic movies to expand the customer base for an online entertainment database

Skills you will learn

  • Data Visualization
  • PowerBI Filters and DAX Commands
  • PowerBI Calculations
  • PowerBI Slicer and Navigator Actions
  • PowerBI Filter Actions

Master in-demand data analytics tools

Learn relevant skills, tools, and concepts

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    Python

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    Excel

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    RDBMS

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    Business statistics

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    Tableau

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    powerBI

  • tools-icon

    SQL

  • And More...

Earn a Professional Certificate from UT Austin

Get a certificate from one of the top universities in USA and showcase it to your network

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* Image for illustration only. Certificate subject to change.

Meet your faculty

Learn new data analytics skills each week from esteemed UT Austin faculty and expert business analysts

  • Dr. Daniel A Mitchell - Faculty Director

    Dr. Daniel A Mitchell

    Clinical Assistant Professor, Department of Information, Risk & Operations Management, McCombs School of Business, The University of Texas at Austin

    Research Director, Center for Analytics and Transformative Technologies

    15+ years of experience in financial engineering and quantitative finance.

    Know More
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  • Dr. Kumar Muthuraman - Faculty Director

    Dr. Kumar Muthuraman

    Professor, McCombs School of Business, UT Austin

    Faculty Director, Center for Analytics and Transformative Technologies

    21+ years' experience in AI, ML, Deep Learning, and NLP.

    Know More
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  • Mr. R Vivekanand - Faculty Director

    Mr. R Vivekanand

    Co-Founder and Director

    Expert in data visualization and marketing econometrics with 10+ years

    Qualified Tableau trainer passionate about teaching business analytics

    Know More
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  • Denver Dias - Faculty Director

    Denver Dias

    Senior Data Science Consultant

    Holds 8+ yrs exp. & delivered AI solutions for Fortune 500 firms

    Expert in A/B testing, ML models, and predictive analytics

    Know More
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  • Mr. Udit Mehrotra - Faculty Director

    Mr. Udit Mehrotra

    Data Scientist, Stripe

    10+ years of experience in data science

    Former Data Scientist at Mc.Kinsey & Company, Dell

    Know More
    Stripe Logo

Watch inspiring success stories

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    Watch story

    "The SQL and Python course enhanced my ability to extract practical insights from data"

    The program offered practical exercises in data analysis and programming. Professors were highly skilled, and the focus on SQL and Python greatly improved my technical abilities.

    Ashenafi Terefe

    Medical Technologist , USF

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    Watch story

    "Hands-on projects and 1:1 sessions helped me build confidence in SQL, Python, and data visualization"

    The program offered a solid foundation in SQL, Python, and data visualization. The hands-on projects were highly effective in reinforcing learning, and the 1:1 sessions ensured I had the support I needed.

    Alexa Martin

    Senior HR DOT Compliance Analyst , DHL

Get dedicated career support

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    1:1 career sessions

    Interact personally with industry professionals to get valuable insights and guidance

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    Interview preparation

    Get an insiders perspective to understand what recruiters are looking for

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    Resume & Profile review

    Get your resume and LinkedIn profile reviewed by our experts to highlight your skills & projects

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    E-portfolio

    Build an industry-ready portfolio to showcase your mastery of skills and tools

Course fees

The program fee is 2,900 USD

Invest in your career

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    Understand data analytics from business, technical, and conceptual aspects

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    Analyze and visualize data using Excel, SQL, Python, and Tableau

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    Query and manage databases using SQL to generate insights and reports

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    Solve business problems with data storytelling and end-to-end Python analytics

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Easy payment plans

Avail our flexible payment options & get financial assistance

  • INSTALLMENT PLANS

    Upto 3 months Installment plans

    Explore our flexible payment plans

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Unlock exclusive course sneak peek

Application Closes: 23rd Jan 2025

Application Closes: 23rd Jan 2025

Talk to our advisor for offers & course details

Admission Process

Admissions close once the required number of participants enroll. Apply early to secure your spot

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    1. Fill application form

    Apply by filling a simple online application form.

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    2. Interview Process

    Go through a screening call with the Admission Director’s office.

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    3. Join program

    Selected candidates will receive an offer letter. Secure your seat by paying the admission fee.

Batch Start Date

Frequently asked questions

Program Details
Eligibility Criteria
Fee Related Queries
Admission Queries

Who can enroll in this Microsoft Power BI Certification Program?


All the learners who are currently pursuing this Data Analytics course for beginners, looking to advance their careers, and seeking the Microsoft Power BI certification. With a focus on Power BI, the program caters to a broad audience interested in Power BI Data Analytics.

Does the program include the PL-300 Microsoft Power BI Data Analyst certification course?


Yes, this program includes the PL-300 Microsoft Power BI Data Analyst certification course, recognized as a valuable asset in the field of data science. This certification, a part of the best online data science certificate offerings, equips students with advanced data visualization and analytics skills using Power BI.

Is this program a data science certificate or certification?


This program is a comprehensive Data Analytics Essentials that awards learners with a certificate. It also includes the PL-300 Microsoft Power BI Data Analyst certification as an optional component.

How does completing the Microsoft Power BI certification enhance my data analytics skills within this program?


Completing the Microsoft Power BI certification significantly bolsters data analytics skills. It provides in-depth knowledge of Power BI, a key tool in data science, making it an integral part of the best online certificate course for data science

What steps do I need to follow to earn the Microsoft Power BI certification in this course?


To earn the Microsoft Power BI certification, students engage in dedicated training as part of the program. This involves in-depth study of Power BI, completion of practical projects, and preparation for the certification exam, aligning with top online data science certification standards.

Is the Microsoft Power BI certification recognized globally in the data science and analytics field?


The Microsoft Power BI certification is globally recognized in the data science and analytics field. It is considered a significant credential, comparable to the best online data science certifications, valued across industries for its emphasis on practical data analytics skills.

While the program focuses on data science, how does the Microsoft Power BI certification add value to my learning experience?

 

The Microsoft Power BI certification adds considerable value to the data science learning experience. It complements the program's focus, providing practical, tool-specific skills essential in the realm of business analyst certification courses.

 

Can the Microsoft Power BI certification in this program be considered among the best online certification courses for data science in terms of career advancement?


The Microsoft Power BI certification within this program is considered among the best online data science certification courses, especially for career advancement. It offers specialized training in Power BI, enhancing career opportunities in data science and analytics.

What is the PL-300 - Microsoft Power BI Data Analyst Certification Program?


It is a specialized module to empower learners with the essential skills required in data analysis and visualization. As part of the Microsoft Power BI certification, learners will get hands-on experience with Power BI tools to extract insights from data.

What is the ranking of the University of Texas at Austin McCombs School of Business?


The university is ranked in the 6th position globally in Business Analytics according to the QS World University Rankings 2021. With 40+ postgraduate programs and 15 undergraduate programs listed in the top 10 nationwide, the U.S. News & World Report has consistently placed UT Austin among the top 20 public universities.

How can I become a Microsoft Certified Power BI Data Analyst Associate?


By completing the Microsoft Power BI Certification Program and successfully passing the PL-300 exam, learners will be awarded the Microsoft Power BI Data Analyst certification.

Is the PL-300 Microsoft Power BI Data Analyst Certification suitable for beginners?


Absolutely! This Data Analyst course for beginners has modules specifically designed to build foundational skills, leading toward a more advanced understanding of Microsoft Power BI Data Analyst tools.

How does the addition of the Microsoft PL-300 course differ from other generic Data Analytics certification courses?


The PL-300 Microsoft Power BI Certification focuses specifically on Power BI tools, preparing learners for the PL-300 Microsoft Power BI Data Analyst exam. This concentration sets it apart from other generic Data Analytics certification courses.

What career prospects will the Microsoft PL-300 Exam and Certification open?


Completing the Microsoft PL-300 course and certification adds value by enhancing your profile and prepares you for roles as a Data Analyst, Power BI Developer, Business Intelligence Analyst, and more.

How do I prepare for the PL-300 Microsoft Power BI Certification Exam?


The Data Analytics Essentials course offers extensive preparation for the Microsoft PL-300 exam. Learners will be well-prepared for the Microsoft Power BI Data Analyst certification with guided online sessions, hands-on practice, and dedicated support.

Are there any practice exams included in the PL-300 Microsoft Power BI Data Analyst course?


Yes. The course includes practice exams designed to resemble the actual PL-300 Microsoft Power BI certification test. These practice exams are instrumental in preparing learners for the actual Microsoft PL-300 certification exam.

What tools and techniques will I learn in the PL-300 Microsoft Power BI certification course?


The course covers Power BI Desktop, Power Query, Data Modeling, Visualizations, DAX functions, and more. You'll also learn best practices in Power BI Data Analytics, preparing you for the PL-300 Microsoft Power BI Data Analyst exam.

Will I receive any career support after completing the course?

Yes, the students will receive career support from Great Learning, a part of BYJU’s group and India's reputed ed-tech platform for higher education and professional development.

 

The career support services are as follows:

 

  • Career Sessions: Students will engage in direct communication with industry experts to gain insightful advice.

  • Resume and LinkedIn Profile Review: The course will assist students in creating a top-notch resume that highlights their skills and prior work experience.

  • Interview Preparation: With our interview preparation classes, students can get a behind-the-scenes look at what hiring managers are looking for and learn how to ace interviews.

  • E-Portfolio: Students will discover how to create an industry-ready portfolio to demonstrate their proficiency with tools and skills.

What is the Data Analytics Essentials course from the University of Texas at Austin (UT Austin)?


The renowned experts from the McCombs School of Business at the University of Texas have carefully curated this course. Over the period of three months, students will grasp the essential foundational knowledge and skills needed to enter the modern analytical world.

Why should I choose this Data Analytics course for beginners from UT Austin?

The McCombs School of Business at the University of Texas at Austin is a reputed business school at a renowned public research university. Through excellent instruction, hands-on learning, and the pursuit of pertinent, ground-breaking research, UT Austin develops ideas and cultivates principled leaders, preparing those who will mold tomorrow and address the most challenging issues.


With a proven track record of many successes, cutting-edge research, and teaching methods, students can be confident that they are learning from the best of the best.

What is unique about this Data Analysis course for beginners?

The Data Analysis beginners course is unique in the following aspects:

 

  • Students will obtain knowledge from professional data analysts with a variety of backgrounds, weekly one-on-one mentoring sessions, and frequent real-world case studies.

  • Through expert-led sessions, self-paced videos, three hands-on projects, and in-depth mentoring sessions, the course brings concepts related to dynamic data analytics to life.

  • Students will develop analytical skills through the curriculum that are in demand not just in data-related disciplines but also in a variety of other fields, including communication, business, management, healthcare, and many more.

What concepts and tools are covered in the course?

Students will get familiar with several in-demand concepts and tools in this course, including:

 

  • Excel

  • Python

  • RDBMS

  • Querying Data with SQL

  • Business Statistics

  • NumPy

  • Pandas

  • Seaborn

  • Data Visualization using Tableau

  • Exploratory Data Analysis

Who would be the faculty to teach this Data Analytics beginners course?

 

The renowned and highly esteemed faculty members of UT Austin and highly skilled business analysts across the globe will teach this program and guide students through the fundamentals of data analytics.

 

What exactly does mentored learning entail?


Students are instructed through a unique mentored learning approach that takes place in a micro-class of 20-25 students. These live sessions feature two-way voice and video communication.

Will the sessions be live or recorded?

 

The students will go through live and interactive sessions. But in addition to being live sessions, these sessions will also be recorded and uploaded on the LMS (Learning Management System) so that students who are unable to attend a session or who wish to study it later can do so by viewing the video.

 

Will I be awarded any certificate after completing the course?


Upon successfully finishing the course, students will receive a completion certificate in Data Analytics Essentials from the University of Texas at Austin.

Will I still have access to the learning materials after completing the course?


Yes. Since we think learning should be ongoing, we will make all the lectures and learning materials available to students for three years after they have finished the Data Analytics Essentials course.

How will I be assessed during the program?


The Data Analytics Essentials program is comprehensive, demanding, and follows a continual evaluation process. We assess a candidate's comprehension of the topics acquired through quizzes, assignments, and projects that involve experiential learning.

What is the duration of this Data Analytics online course for beginners?


The course duration is 16 weeks, which is held in micro classes and taught by highly experienced faculty members.

What are the eligibility criteria for this Data Analysis for beginners course?

The eligibility criteria for this course are as follows:

 

  • Recent graduates and early career professionals looking to acquire job-ready skills in the fields of business intelligence and data analytics can enroll in this course. The course trains and prepares students for a job role as a business analyst or data analyst.

  • Candidates who are looking to enter the world of data and leverage it to make analytical decisions across several industries.

  • Candidates who want to develop the fundamentals of data analysis over a condensed timeframe with a realistic resource investment.

What is the refund policy?

Please note that submitting the admission fee does constitute enrolling in the program and the below cancellation penalties will be applied:

1) Full refund can only be issued within 48 hours of enrollment

 

2) Admission Fee - If cancellation is requested after 48 hours of enrollment, the admission fee will not be refunded. 

 

3) Fee paid in excess of the admission fee: 

  1. Refund or dropout requests requested more than 4 weeks before the Commencement Date are eligible for a full refund of the amount paid in excess of the admission fee

  2. Refund or dropout requests requested more than 2 weeks before the Commencement Date are eligible for a 75% refund of the amount paid in excess of the admission fee

  3. Refund or dropout requests requested more than 24 hours before the Commencement Date are eligible for a 50% refund of the amount paid in excess of the admission fee

  4. Requests received after the Commencement Date are not eligible for a refund. 

  5. Cancellation must be requested in writing to the program office.

What is the course fee to pursue this Data Analytics Essentials program from UT Austin?

 

The fee to pursue this program is USD 2700. Interested candidates can pay through 3 interest-free installments.

 

[Contact our admissions office at +1 512 877 8310 for more details.]

 

What is the admission process to pursue this Data Analysis course for beginners?

To enroll in this course, the applicants must meet the eligibility criteria mentioned earlier. The admission process for the eligible candidates is provided below:

 

  • Step-1: Register through an easy online application form.

  • Step-2: Take a quick screening call to ensure the course fits your goals.

  • Step-3: Once finalized, you can reserve your seat by paying the registration fee.

 

Note: Document verification is required prior to admission to the program.

 

What is the deadline to enrol in this Data Analytics course for beginners?


The admissions are closed after the required number of participants has registered for the upcoming batch. The few seats available for this course are subject to the first-come, first-served rule. Apply before time to secure your seats.

Got more questions? Talk to us

Connect with a program advisor and get your queries resolved

Speak with our expert +1 512 877 8310 or email to dae.utaustin@mygreatlearning.com

career guidance

Best Data Analytics Course for Beginners - The University of Texas at Austin (UT Austin)
 

Faculty at the University of Texas at Austin (McCombs School of Business) have designed the Data Analytics Essentials program to facilitate a comprehensive understanding of the field in 16 weeks. Learners will gain the critical skills and expertise required to thrive in the contemporary analytical world.

 

The program is crafted to enable data analytics enthusiasts to interact and learn from highly skilled data analysts with diverse backgrounds in weekly one-on-one mentorship sessions and work on industry-relevant real-world case studies. It brings potent data analytics concepts to life through expert-led sessions, self-paced videos, three hands-on projects, and in-depth mentorship sessions. Learners will acquire the most in-demand analytical skills across various industries, including communication, business, management, healthcare, and several other sectors.

 

The program also comprises a 6-week PL-300 - Microsoft Power BI Data Analyst Certification Program. This module is designed to provide learners with the necessary data analysis and visualization skills. As part of the Microsoft Power BI certification, the module offers practical experience using Power BI tools for deriving insights from data.

 

The UT Austin Advantage in this Data Analytics Program for Beginners

The University of Texas at Austin was founded in 1883 and now enrolls more than 51,000 students and 3,000 teaching faculty. UT Austin is known across the world as a pioneer in the fields of social science, business, technology, and science.

 

According to the QS World University Rankings 2023, the university is ranked 8th across the globe in business analytics. UT Austin has also continuously been ranked among the top 20 public universities by U.S. News & World Report, thanks to its 40+ postgraduate programs and 15 undergraduate programs that are among the top 10 in the United States.

 

Benefits of Learning the Fundamentals of Data Analytics from UT Austin

The curriculum combines coursework directed by expert Faculty in collaboration with professional data analysts to ensure that learners succeed in this program and are job-ready. 

 

  1. Recorded Lectures by World-Class Faculty

Learn from world-renowned faculty from UT Austin and a team of international data analytics experts.

 

  1. Mentorship Sessions with Industry Experts

Through weekly sessions, the program allows learners to interact with highly knowledgeable mentors who can assist them in gaining practical experience.

 

  1. Portfolio-Building Projects

Learners will work on hands-on projects, tests, and case studies that are pertinent to their industries and showcase their abilities to potential employers.

 

Key Learning Outcomes of the Data Analytics Program for Beginners

When learners complete this program, they will be able to:

 

  • Understand the technical, conceptual, and business aspects of the data analytics landscape.

  • Conduct exploratory data analysis using Excel, Python, SQL, and Tableau.

  • Query data in an SQL database to produce analytical data, business reports, and insights.

  • Acquire the fundamentals of databases and learn how to use them for managing, extracting, and manipulating data with SQL.

  • Learn how to use data visualizations for storytelling to enlighten business issues.

  • Gain familiarity with Python for analyzing data to implement in a variety of business problems.

  • Ace the Microsoft PL-300 Certification exam.

 

More on PL-300 - Microsoft Power BI Data Analyst Certification Training Program

Power BI enables professionals to transform intricate data into visually stunning representations, enabling clear and impactful communication of insights. This training program equips learners with all the necessary skills to clear Microsoft’s PL-300 certification exam.

 

Highlights of the Microsoft Power BI Certification Program

 

  • 6-Week Online Program

  • Hands-on Learning and Academic Support

  • Live Virtual Classes with Microsoft Certified Instructors

  • Dedicated Program Manager

  • Exam Preparation Guide + Mock Exams

  • 50% Off on Exam Fee

 

Microsoft Power BI Certification

Learners will also be awarded a PL-300 - Microsoft Power BI Data Analyst Certification from Microsoft and Great Learning.

 

Job Opportunities After Mastering Data Analytics Essentials

Upon completing the course, learners may be eligible for several entry-level technical job roles, including:

 

  • Data Analyst: Data Analysts collect, analyze, and interpret data by identifying trends, patterns, and relationships in data sets and gain insights to help businesses make better decisions.

 

  • Product Analyst: Product Analysts work closely with product managers and other stakeholders to support the product development process by performing analysis of product requirements and market data.

 

  • Business Analyst: Business Analysts analyze the data and procedures of a company to help streamline its operations, develop reports, and make recommendations to the administration on how the company can improve its overall efficiency.

 

  • Analytics Engineer: Analytics Engineers work with data scientists to understand the business problems that need to be solved and identify the best ways to collect and analyze data for businesses.

 

  • Business Intelligence Analyst: Business Intelligence Analysts help companies make informed decisions by developing business intelligence models and plans that can lead to increased profits and growth.

 

  • Data Architect: Data Architects design and implement an organization’s data architecture, including the development and maintenance of data models, data management processes, and data governance policies.

 

  • Data Journalist: Data Journalists use various data analysis techniques, such as statistical analysis, data visualization, etc., to uncover and report stories they discover.

 

  • Data Engineer: Data Engineers are responsible for the reliable and efficient movement of data within an organization. A data engineer works with data architects to design data models and build ETL (extract, transform, load) processes for moving data between systems.

 

  • Research Analyst: Research Analysts conduct primary and secondary research, analyze data, and develop insights to support decision-making. A research analyst works closely with data scientists and business analysts to understand business needs and design research plans.

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