2020 prospectus - storyiq.com · any data visualization software package (e.g.excel, tableau,...
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storyiq.com
2020 Prospectus
CONTENTSABOUT
COURSES
DATA STORYTELLING FOR BUSINESS
DATA TO INSIGHTS
EXCEL ANALYTICS NINJA
ADVANCED VISUALIZATION & DASHBOARD DESIGN
DATA WRANGLING
Our Mission
Course Overview
Course Overview
Course Overview
Course Overview
Course Overview
Course Summary
Course Outline
Course Outline - Day 1
Course Outline - Day 1
Course Outline - Day 1
Course Outline - Day 1
Course Outline - Day 2
Course Outline - Day 2
Course Outline - Day 2
Course Outline - Day 2
Delivery OptionsOnline Delivery
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TRUSTED BYINDUSTRY
Data analytics and visualization is revolutionizing business across all industry verticals.
Since 2015, we’ve trained over 300 companies, government departments and NGOs in fundamental data science skills. From banking to telcos and retail to real estate: we’ve trained people in your field.
Our Mission
Course Summary
Delivery options at no extra cost:
Our mission is to prepare people to solve real business problems. Our courses put concepts first, and treat tools and technology as an enabler, not the core focus. We take the key concepts and best practices of analytics, visualization and design thinking based on the latest academic research, and present them in a clear, concise and actionable format.
We bring the concepts to life with realistic, business relevant examples based on our consulting experience. All our courses are hands on, and get participants applying the concepts to real problems right away. We ensure that all participants walk away at the end of each course with new outputs they have created themselves, which they can apply to real business problems the next day.
Our instructors will help your team makeover their existing reports and dashboards on the fly so that you can walk away with improved outputs that you can use with your teams immediately.
All our courses can be delivered by Webex virtual classroom, enabling you to roll the course out to staff in disparate locations with a full interactive experience.
Our 2-day courses can be summarized to 1-day to be even more targeted at learning concepts, with no need to open tools like Excel or Tableau at all. This option is designed for busy, senior staff who will not be implementing the best practices themselves, but rather need to learn the concepts so that they can direct more junior staff to implement. We replace the hands-on workshops in tools like Excel and Tableau with wire framing using old fashioned paper and post-it notes.
Ideal for onboarding new hires. We can deliver modules you select from any of our courses in a tailored program.
Course
Workshops using your own reports and data
Remote delivery
Executive courses
Analytics training bootcamp
Data to InsightsData Storytelling for BusinessExcel Analytics NinjaAdvanced Visualization& Dashboard DesignData Wrangling
2 - Day2 - Day2 - Day2 - Day
2 - Day
DataData, LeadershipData, DigitalData
Data, Leadership
Excel, PowerPointExcel, PowerPointExcelTableau or PowerBI
Excel, Azure (optional)
Full Length Schroders Pillars Tools Used
4 5
Customized Industry-Based Data Sets and Examples
Online Delivery
We can work with you to tailor the content for your organization, and to use your real business data in our examples. Of course, we are happy to sign a non-disclosure agreement and maintain absolute confidentiality.
Our team of analysts and consultants can provide a thorough make over your existing reports and dashboards in advance of the course, applying industry best practices. Our instructor will then walk your teams through the reasoning behind the changes, and how to implement similar improvements in the future.
A fully online version of our most popular course. It will include detailed instructional videos, and online knowledge check tests. This can also be integrated with face to face delivery or Webex to include a workshop with an instructor to consolidate the concepts.
Customized industry-based data sets and examples
In depth reporting and dashboard makeovers
Data Storytelling For Business Online (Q2 2020)
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OUR FACULTYLearn from the thought leaders in the field
Our Lead Data Storytelling Trainer and a TEDx speaker, Dom brings a wealth ofdata storytelling experience to StoryIQ from his career at QBE, one of Australia’slargest insurance companies. At QBE, he was a senior leader in analytics,procurement, and business improvemtent.
He has been responsible for negotiating multi-million dollar contracts withsuppliers, presenting data driven strategy recommendations to the company’ssenior executives, and producing reporting for the Group Board of Directors.
DowningOur Lead Data Storytelling Trainer, Diedre is a former Wall St trader, college lecturer and NYC Department of Education program leader. Prior to StoryIQ, she oversaw the operation, curation and data driven strategy of WeTeachNYC.org-the NYC Department of Education’s online space for curricular and professional learning materials supporting over 76,000 professional educators.
She is currently an Adjunct Lecturer at the City University of New York and holds a Master’s in Mathematics from Pace University.
Isaac Reyes, Co-Founder at StoryIQ, is a TEDx speaker and international keynotepresenter in data science and machine learning. He was the keynote speaker atthe 2019 Open Data Science Conference in Brazil and over 2018-2019, hisspeaking tour visited 26 cities across 5 continents. His ultimate goal is toempower every organization to derive value from data.
Dominic Bohan
Diedre Downing
Isaac Reyes
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data to insightscourse 1
Course duration:Laptop Specs:
Required Software:
2 DaysMinimum required specs of Intel i3 processor, 4GB RAM.Either Mac or Windows operating system
Any data visualization software package (e.g.Excel, Tableau, PowerBI, Qlik,) and Powerpoint
Learning Objectives
- Determine great business questions that can be answered with data
- Clean and prepare your data for analysis
- Learn the fundamentals of descriptive analytics
- Communicate your outputs effectively through data storytelling
Suitable forAny professional who works with data.
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• Existing data sources – external vs internal• Generating new data• Data types• Data linkage, data dimensionality, data aggregation, data transformation, data reduction, data aggregation, metadata• Data cleaning and wrangling• All data is biased• Data doesn’t equal insights
III. Collect Data – Gather and Prepare Data to Answer the Question
COURSE OUTLINE - DAY 1
I. How Data Drives Value
II. Hypothesize – Determine a Good Business Question
• Data has been around forever – why is it so important now? •• The perfect storm – lower storage costs, higher computing power •• The 4 V’s of big data• What is data analytics? What is data science? What is machine learning?• The ‘analytics value chain’• What does a data analyst do? What does a data scientist do? What does an analytics team look like? What does a data science team look like?• What is a data evangelist? How do they interact with analytics teams, data science teams and the business?• Why do 60% of big data projects fail?• Introduction to the scientific method• Introduction to the data analytics process •• Hypothesize •• Collect data •• Analyze the data •• Report on the results and take action
• Is the question answerable?• Is answering the question feasible? Is it feasible right now?• Does the answer to the question drive business value?• Is the answer to the question actionable?• Ranking project opportunities• Getting to an answer •• Descriptive analytics and basic data visualization •• Hypothesis testing •• Machine learning and optimization methods •• vWhen to put the brakes on the data science team
DATA TO INSIGHTS
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• Exploratory data analysis for business• Exploratory metrics •• Measures of the middle (average, median, mode) •• Measures of spread (standard deviation, range) •• Business metrics ••• Metrics based on $ amounts, metrics based on totals, metrics based on counts, metrics based on percentages ••• Ranking metric importance for reporting and data storytelling ••• Tracking metrics (The 4 T’s) ••• Today, Target, Trend, Tomorrow ••• Combining metrics (case study: CommetComm churn) ••• Metrics - caveats ••• Anscombe’s quartet and the ‘datasaurus’ ••• Comparing apples with apples ••• Going beyond the dataset• Using Excel Pivot Tables to analyze data (demo) •• Calculating totals, counts, percentages and averages •• Grouping data in pivot tables •• Creating a customer spend distribution using pivot tables and a histogram •• Why Excel is so loved and yet so hated and when to use it
IV. Analyze the Data - Exploratory Data Analysis – Exploratory Metrics
Workshop 1In this workshop, participants will perform hands on exploratory data analysis (focusing on metric selection) on an invoice dataset using Excel and pivot tables
V. Analyze the Data - Exploratory Data Analysis – Exploratory Visualization
• Exploratory visualization •• Exploring vs explaining: two types of data visualization •• Visuals for informing pre-existing hypotheses •• Visuals for enabling the generation of new hypotheses •• Caveats ••• Correlation isn’t causation ••• Data aggregation ••• Missing data ••• Time cuts• Performing exploratory visualization in practice (demo in Excel) •• A framework for exploratory chart selection• Tools for fast tracking the EDA process (including Python or R EDA demo)
Workshop 2In this workshop, participants will perform hands on exploratory data analysis, focusingon exploratory visualization on an invoice dataset using Excel and pivot tables.
COURSE OUTLINE - DAY 1
DATA TO INSIGHTS
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• The Analytics Value Chain •• Descriptive Analytics •• Predictive Analytics •• Machine Learning• Introduction to Machine Learning •• Supervised Learning •• Unsupervised Learning• Training and test datasets• Building a supervised machine learning model in Excel• Building a supervised machine learning model in the cloud (Azure ML Studio)• Productionizing machine learning models• Auto ML overview (featuring DataRobot)
• Presentation medium selection framework• Storyboarding• Data storytelling •• The Four Keys to Data Storytelling •• The Audience •• The Data •• The Visuals ••• Tables ••• Charts ••• Impact Metrics •• The Narrative
• Being an analytics champion and evangelist• Arm yourself with domain relevant case studies• Next steps for continued learning
COURSE OUTLINE - DAY 2
I. Analyze the Data – Explanatory Data Analysis
II. Report on the Results and Take Action
III. Go Forth and Evangelize, Course Wrap Up
Workshop 3In this workshop, participants will take the results from yesterday’s analysis and usedata storytelling skills to weave their results into a story that compels stakeholders totake action. The participants will present this data story at the conclusion of theworkshop.
DATA TO INSIGHTS
10
DATA STORYTELLINGFOR BUSINESSCourse duration:Laptop Specs:
Required Software:
2 Days
Minimum required specs of Intel i3 processor, 4GB RAM.Either Mac or Windows operating system
Any data visualization software package (e.g.Excel, Tableau, PowerBI, Qlik,) and Powerpoint.
Predicted to be the top business skill of the next 5 years.
Suitable for
Well told data stories are change drivers within the modern organisation. But how do we find the most important insights in our business data and communicate them in a compelling way? How do we connect the data that we have to the key underlying business issue?
This course takes students from the fundamentals (what should we be measuring and why?) through to the elements of good visualisation design (what does a good chart look like?) through to proficiency in datastorytelling.
By the end of the course, participants will know how to produce engaging, cohesive and memorable data stories using Excel and PowerPoint. The course also teaches attendees the importance of producing statistically robustvisualisations and insights.
This is our most popular course. It’s suited towards any professional who works with data and charts. If you need to tell better stories with your data, then this course is for you.
course 2
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COURSE OUTLINE
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Introductions, Ice Breaker (9:00am - 9:15am)
(9:15am - 10:15am)
(10:30am - 11:30am)
(11:30am - 12:00nn)
(12:00nn - 1:00pm)
(1:00pm - 4:00pm)
(4:00pm - 5:00pm)
(10:15am -10:30am)
Audience
Visuals
Narrative
Lunch
Interactive workshop task
Workshop presentations and judging
Break
• Making your audience the ‘hero’ of your data story• Chart Junk• Data Ink Ratio• Pre-attentive attributes• The Cleveland McGill Scale• Gestalt Principles of Visual Perception
• Bar chart best practices • Pie Chart Best Practices • Line Chart Best Practices • Slope graphs and Staged Line Charts • Enclosures • Scatterplots
• Presentation Medium Selection Framework • Storyboarding • Deck Transformation
• Instructor will consult with groups and provide personalized assistance
DATA STORYTELLING FOR BUSINESS
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Excel analyTicsninjaCourse duration:Laptop Specs:Required Software:
2 DaysIntel i3 processor, 4GB RAM. Either Mac or Windows OS.Excel and Powerpoint 2013 or later.
Learn the fundamentals of business analytics in this two day intensive program.
Suitable for
Some executives mistakenly believe that the majority of value in business datasets is only unlocked by applying advanced statistical and machine learning techniques. In practice, most of the value in business data is derived by asking relatively simple questions that can be answered using basic data manipulation and common metrics (e.g. averages, totals, counts and percentages).
That said, the ability to ask the right business questions and answer them with the right metrics is a fundamental anlytics skill that is sorely lacking in the skillset of most data analysts and managers. Why? University statistics and math programs don’t prepare graduates for the challenges and pace of the business setting.
In this Excel based course, participants will learn how to progress through the full data driven decisionmaking process, from identifying the business question through to hypothesis development, data manipula-tion and presenting of results.
This is our second most popular course. It’s suited to any professional who needs to make decisions using business data.
course 3
13
(9:00am - 9:05am)
(9:05am - 9:15am)
(9:15am - 9:45am)
(9:45am - 10:15am)
(10:15am - 10:30am)
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What is the end goal of this course?
Keys to Effective Analytics: Exploratory Data Analysis (EDA)
Context and Variables: Understanding the Data
Q&A / Break
Wrangling: Using Formulae, Filtering, and Sorting to Manipulate Data
• What is EDA?• Context: understanding the data and its source• Variables: knowing and classifying data into various data types• Wrangling: performing basic data munging to address missing values, outliers, input errors• Analysis: discovering univariate and bivariate relationships in the data
• Questions to ask of your dataset• What are the different types of data?• Fancy statistics terms vs. their common business meanings• Classifying the variables of the course dataset• Numeric variables: continuous and discrete •• Date variables• Categorical variables •• Categorical variables that appear numeric and vice-versa •• Continuous variables that appear discreet and vice-versa• Dummified data: what they look like and why they exist• Formatting data according to their variable types
• Querying your data• Sorting data according to various dimensions and multiple levels• Identifying and extracting metrics needed to generate or prove certain insights• Manipulating text or string data• Working with dates• Wrangling data through arrays• Optional wrangling: •• Performing a sanity check on the data •• Addressing missing values, outliers, and input errors •• List-wise deletion and case-wise deletion
COURSE OUTLINE - DAY 1
EXCEL ANALYTICS NINJA
14
(10:30am - 12:00nn)
(12:00nn - 1:00pm)
(1:00pm - 4:00pm)
(4:00pm - 4:15pm)
(4:15pm – 5:00pm)
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Univariate and Multivirate Analysis: Leveraging Excel Features for Analyzing Data
Lunch
Workshop
Group Work Submission Deadline
Group Presentations, Feedback and Wrap
• Querying your data to make relevant analysis - e.g. top x%, above/below average, between x and y, contains x• Choosing the right metrics, according to the insight to be supported - Apples-to-apples metrics: proportions or averages - Absolute size metrics: counts or totals• Calculating percentages and understanding their meanings - rates, % breakdowns or % contributions, growth rates• Summarizing your data into logical groupings• Other ways to summarize your data - Increases/decreases - Running totals - Rankings
COURSE OUTLINE - DAY 1
EXCEL ANALYTICS NINJA
15
(9:00am - 10:15am)
(10:30am - 12:00nn)
(10:15am - 10:30am)
(12:00nn - 1:00pm)
(1:00pm - 4:00pm)
(4:00pm - 4:15pm)
(4:15pm - 5:00pm)
COURSE OUTLINE - DAY 2
Day 1 Recap
Using Elegant Data Visualization for Reporting
Q&A / Break
Lunch
Workshop
Group Work Submission Deadline
Group Presentations, Feedback and Wrap
• Lessons from Day 1 workshop• Apples-to-apples metrics, absolute size metrics, trends• Using data visualization for analysis – Multi-metric relationships via data bars – Multi-metric relationships via scatterplots, bubble charts – Trends via sparklines – Spotting patterns using color scales
• When to use and how to create non-standard data visualizations• Reference lines to support your insight• Funnel Charts to show sequential steps and subsets• Tornado / Divergent Bar / Bi-Directional Bar Charts to show comparisons• Optional charts for advanced audiences – Burndown Charts to show usage of depleting resources – Bullet graphs to show targets vs. actuals
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EXCEL ANALYTICS NINJA
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Advanced ViZ& dashboard designCourse duration:Laptop Specs:
Required Software:
2 Days
Windows 7/8/10 or MacOS El Capitan/Sierra.At least 4GB RAM.Minimum 2GB free disk space.
Microsoft Excel 2013 or later.Tableau Public or Power BI
Take your visualization and dashboardskills to the next level
Suitable for
Advanced Visualization and Dashboard Design is aimed at the professional who already possesses funda-mental data visualization and data storytelling skills. A natural continuation point from our Data Storytelling for Business and Excel Analytics Ninja courses, this course provides participants with the skills needed to produce stunning, understandable business dashboards and graphs.
Taught using a variety of visualization tools including PowerBI and Tableau, the course covers the keys to designing for interactivity and drill down effects. The course also covers less commonly used but valuable visualization methods, including methods for visualizing networks and flows. Dashboard design is covered in detail, with participants creating a dashboard ‘makeover’ during the class practical workshop.
This course is suitable for any professional who wants to analyze and extract value from business data using sophisticated data visualization and interactive dashboards that convey insights with clarity.
course 4
17
(9:00am - 9:15am)
(10:15am - 10:30am)
(12:00nn - 1:00pm)
(1:00pm - 4:00pm)
(4:00pm - 4:15pm)
(4:15pm - 5:00pm)
(9:15am - 9:30am)
(9:15am - 9:30am)
(10:30am - 11:00am)
(11:00am - 11:20am)
(11:20am - 12:00nn)
COURSE OUTLINE - DAY 1
Introductions
Q&A/Break
Lunch
Workshop
Group Work Submission Deadline
Group Presentations, Feedback and Wrap
Grammar of Graphics
Visualizing Comparisons
Visualizing Comparisons (cont’d)
Visualizing Parts
Visualizing Trends
• Think like a graph• Look at bars, lines, and scatter plots from new perspective• Learn the intuition of visualization software
• Expand your visual vocabulary beyond bar charts• Compare more than one metric simultaneously – Trellis displays / small multiples – Scatterplots – Bubble charts
• Expand your visual vocabulary beyond bar charts• Compare more than one metric simultaneously – Trellis displays / small multiples – Scatterplots – Bubble charts
• Treemaps
• Calendar heatmap• Optional: seasonality plot
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ADVANCED VIZ & DASHBOARD DESIGN
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(4:00pm - 4:15pm)
(4:15pm - 5:00pm)
(9:00am - 9:30am)
(9:30am - 10:15pm)
(10:30am - 11:00am)
(11:00am - 11:45am)
(10:15am - 10:30am)
(12:00pm - 1:00pm)
(11:45am - 12:00pm)
(1:00pm - 4:00pm)Workshop
Group Work Submission Deadline
Group Presentations, Feedback and Wrap Up
• Examples of Good vs. Bad Dashboards• Keys to Effective Dashboards: UX & Interactivity, Metrics, Visuals & Design
• Overview of Interactivity: tooltips, sorting, filtering, highlights, zoom, force• Hands-On: building interactivity in Tableau and Power BI• Tooltips and Visual Tooltips
• Sorting• Filtering• Highlights• Overriding default filtering and highlight actions
• Layout and positioning• Focusing attention in dashboards – Size – Color – Big numbers – Human forms• The Bullet Graph
• What is a good metric? – Action & Accountability – Context: via goals, via time period comparisons, via relatable units – Comprehensibility
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COURSE OUTLINE - DAY 2
Intro: What is a Dashboard?
User Experience and Interactivity
User Experience and Interactivity (cont’d)
Visuals and Design
Q&A / Break
Lunch
Metrics
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ADVANCED VIZ & DASHBOARD DESIGN
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Data wranglingCourse duration:Laptop Specs:
Required Software:
2 Days
Windows 7/8/10 or MacOS El Capitan/Sierra.At least 4GB RAM.Minimum 2GB free disk space.
Microsoft Excel 2013 or later with Power Query and Power Pivot.Power BI Desktop or Tableau.
Real data is messy.
Suitable for
Learn how to create order from chaos, and to clean, prepare and structure your data so that your team can unlock its full potential. Using little-known but powerful tools such as Power Query and Power Pivot, as well as Tableau or Power BI, this course teaches participants how to prepare data for reporting, as well as munge data for more advanced analysis and for an efficient and more responsive dashboard. You will learn concepts such as data modeling, normalization, unions, joins, schema relationships, data blending, and data hierarchies.
Analysts and business professionals who work closely with complex data sets.
course 5
20
(9:00am - 9:15am)
(9:15am - 9:30am)
(9:30am - 10:15am)
(10:15am - 10:30am)
(10:30am - 12:00nn)
• What are the differences among Data Wrangling, ETL, and Data Analysis?• Purpose, audience, use cases, tools used
• Unnormalized form (UNF)• First normal form (1NF)• What is a Key?• What is Composite Key?• Second normal form (2NF)• Database - Foreign Key• What are transitive functional dependencies?• Third normal form (3NF) • Boyce-Codd Normal Form (BCNF)• Importing CSV and XLS files into Power Query and Tableau• Normalizing a poorly designed table to 3NF using Power Query (unpivot) and Tableau (pivot) – Power Query: fill down, transpose, merge columns, split columns• Exporting data into CSV and XLS files from Power Query and Tableau
• Crafting a master dataset from separate tables via Joins and Unions• Unions – Combining multiple data sources with the same variables/ fields – Combining multiple data sources with different variables/fields• Joins – Understanding star schema – Joining normalized tables using Power Query and Tableau – Understanding fact tables vs. dimension tables – Knowing what type of join to use | Types of joins and how they work | Cardinality – Consolidating one-to-one joined tables | Merging queries in Power Query
COURSE OUTLINE - DAY 1
Introductions, Ice Breaker
What is Data Wrangling
Database Design, Normalization, and Pivot/Unpivot
Q&A/Break
Data Preparation for Reporting
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DATA WRANGLING
21
(12:00nn - 1:00pm)
(1:00pm - 4:00pm)
(4:15pm)
(4:15pm - 5:00pm)
• Normalize a poorly designed table; create and join fact tables and dimension tables; filter, group, and summarize into a report. Bonus: visualize the report in an interactive dashboard
Lunch
Workshop
Group Work Submission Deadline
Group Presentations, Feedback and Wrap Up
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– Tidying messy data in Power Query (Column from Examples) – Understanding the quirks of joining when dealing with messy data | Problems of many-to-many relationships (i.e. using factless fact tables) – Understanding referential integrity – Creating date tables: why and how – Filtering, sorting, selecting variables by name, summarizing, group by variable via Power Query (M), Power Pivot (DAX), and Tableau
COURSE OUTLINE - DAY 1
DATA WRANGLING
22
COURSE OUTLINE - DAY 2
(9:00am - 9:30am)
(9:30am - 10:15am)
(10:15am - 10:30am)
(10:30am - 12:00pm)
(12:00nn - 1:00pm)
(1:00pm - 4:00pm)
(4:15pm)
(4:15pm - 5:00pm)
• What is data blending? Why blend data?• What is the difference between relationships (data blending) and joins?• Demo: how to blend data in Tableau
• Table calculations – running total, difference from, percent different from, percent of, moving calculation, percent of total, percentile, rank• Window calculations• Level of Detail (LOD) expressions• Understanding calculated fields in blended data
• Avoiding snowflake dimensions / snowflake schemas• Creating data hierarchies in Power Query and Tableau
• Avoiding snowflake dimensions / snowflake schemas• Creating data hierarchies in Power Query and Tableau
Data Blending in Tableau
Data Wrangling for Analysis in Tableau
Q&A/Break
Data Hierarchies
Lunch
Workshop
Group Work Submission Deadline
Group Presentations, Feedback and Wrap Up
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VIII.
DATA WRANGLING
23
storyiq.com
info@storyiq.com
157 13th StreetBrooklyn, NY 11215
1 (646) 768 0885
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