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Data Literacy in Practice
Data Literacy in Practice

Data Literacy in Practice: A complete guide to data literacy and making smarter decisions with data through intelligent actions

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Data Literacy in Practice

The Beginning – The Flow of Data

Data is the new gold of the 21st century, but what is it? Why is it important? Why should you know what data is and what you can do with it? More than ever, it’s important to have data and make decisions based on that data. Everyone uses information every day.

In this chapter, we’ll find out what data is, where it comes from, and how it’s used to make decisions today. We’ll also explain what data literacy is and why it’s so important for both our everyday lives and our business lives. We’ll show you some real-world examples and help you understand the basics of making decisions based on data or Data-Informed Decision Making (DIDM).

By the end of this chapter, you’ll recognize the most important parts of data and how we use it in our daily lives and at work. This will be explained with examples from the COVID-19 pandemic and stories from our own work lives.

In this chapter, we will cover the following topics:

  • Understanding data in our daily lives
  • Analyzing data
  • An introduction to data literacy
  • The organizational data flow

Understanding data in our daily lives

Data is a collection of observations or facts. Everything starts with data, and it’s all around us. We know that every person on the planet creates 1.7 MB of data every second. Yet, many people are not even aware of all the data around them in their daily lives.

When we talk to people in our everyday lives, they always say, We don’t work with data. We know nothing at all about data. But, let’s look at the facts: data is all around us in the form of numbers, words, pictures, videos, maps, audio files, sensors, music, our phones, and even our wearable devices such as smartwatches and so on. Everything around us gives off data, and we don’t even realize it most of the time. To give you an example, let’s have a look at what kind of data we use when we wake up, as we show in Figure 1.1.

Figure 1.1 – Data in our daily lives

Figure 1.1 – Data in our daily lives

Let’s think about this in terms of how we usually go about our workdays. We set an alarm, which is usually on our phones. When we pick up our phones, we create a movement, or event, and turn off the alarm. One of the next steps is to check the news and social media for information about the pandemic. This will help us get ready for the day to come. We’ll also check the weather to see what it looks like and make sure we’re wearing the right clothes for the day. We say good morning to Alexa or our Google home smart devices, and maybe we have a fancy coffeemaker that makes us a nice cup of coffee on its own. We might even be able to turn on the lights with an app on our phones. During coffee and breakfast, we check the traffic to decide whether to drive to work or take the bus or train.

Well, all these things or events are data. In fact, we have created a flow of data and don’t even know it, and the story goes on: on the way to work, we can use our phones to check all kinds of things (we are connected to the world). Your social media followers on LinkedIn or Twitter; it’s always fun to see how many people like your posts or replies. Let’s be honest, when a message we post on LinkedIn gets more than 100 likes or has been seen more than 5,000 times, we get excited. When we like something, read an article, or share something on social media, we give information to the companies that make the social media software.

Analyzing data

In the process of making decisions, everyone now uses data. Let’s look at an example for your next trip to Barcelona, which is a beautiful city in Spain. If you want to plan a summer trip to Spain and need a place to stay, you might look on Airbnb for a cool place to stay and set some parameters (called filters in the world of data and analytics).

Let’s see what these filters, or parameters, are:

  • The dates of our vacation period
  • The number of people that are joining you
  • Select a super host (we mostly do this because we have some experience)
  • The area that you want to go to
  • The type of accommodation
  • Maybe even some special things that you want (swimming pool, air conditioning, and so on)

The following is a screenshot of Airbnb and how we set our filters to find a place to stay in Barcelona, for example:

Figure 1.2 – DIDM for the summer vacation using Airbnb

Figure 1.2 – DIDM for the summer vacation using Airbnb

When the list has a lot of places you could go to, you might want to put the ones with the best prices or most reviews at the top, as shown in the following screenshot:

Figure 1.3 – DIDM reviews to make a choice

Figure 1.3 – DIDM reviews to make a choice

From there, we’ll read and think about some reviews, which will tell us a lot about the place we want to stay at. We will book a place to stay for our upcoming trip from there. In this case, we looked at data, sorted it, read about it, talked about it with the family, argued about it, and then decided where to stay during our vacation.

In this example, we’ve used data and the information that we found during our investigation (analysis) and created a decision together on where to go. In our line of work, we call this a data-informed decision.

To clarify the difference between data and information, data exists of data elements, and information is created from that data and put in context. We can’t perceive anything from data unless we give meaning to that data. When we look at information, that is not the case.

Searching and finding information

First, we’ll take a look at intentional or purposeful searching. Let’s go over some of the things we’ve talked about in the first part. We noticed that we could answer some questions with a purpose and some answers we found by accident, or as we say, unintentionally. When we wake up, one of our first thoughts is mostly set on, What should I wear today? So, we checked the weather. This was done to answer the question, What should I wear today? The other question we were trying to answer with the data was about our upcoming trip to Barcelona, Spain. Our question, Where should I stay in Barcelona? has been answered, and we’re going to a nice place with lots of good reviews and a price we can afford. Those two questions had a purpose, a goal, and we were able to decide what to wear today and we found a cool place to stay.

Reading our social media messages on Twitter or other social media platforms, the news, and stories about the pandemic gives us information that has no purpose; we were just scrolling and reading without any purpose or meaning. We could also look at ads for clothes or other shopping items without meaning to. Those actions are unintentional; there is no underlying specific question that we want to answer.

This is where data literacy comes in. Everyone on earth has some data literacy skills, even if they don’t know it. We all work with data, even if we don’t know it.

Let’s look at some of the apps we use every day to see what we mean. These apps use certain algorithms (using smart logic) to help organizations give us just the information they think we might be interested in:

Figure 1.4 – How we use data during our days

Figure 1.4 – How we use data during our days

Most of us use data and analytics every day in our personal lives. Here are some examples:

  • Personal health data: The health app collects data about your health from your iPhone, Apple Watch, and other apps you already use. This way, you can see all your progress in one place. Health apps keep track of how far you walk, run, and how many steps you take. And if you have an Apple Watch, it keeps track of your activity data automatically.
  • Financial transactions: A bank can tell you where you spend your money, but they can also use simple algorithms to check your credit card for any unusual charges. When a transaction is made and they think it might be a fraud because of their smart algorithms, they immediately block your credit card and send you a message telling you that someone tried to use your credit card in a fraudulent way. Also, don’t forget that on the stock market, people buy and sell stocks by using information gathered from data.
  • Amazon: When you shop on Amazon, it shows you products that it thinks you’ll be interested in based on a lot of complicated math. As an example, when we ordered a whiteboard, two suggestions about whiteboard markers and a special wiper for cleaning the whiteboard popped up on our screens right away. All of this was done because we asked for a whiteboard as our first order.
  • Spotify: It is used all over the world and it knows exactly what kind of music you like and gives you a list of your most played songs at the end of every year. It can even tell you what to listen to next and invite you to new podcasts based on what you’ve listened to in the past, among other things.
  • Netflix: It has more than 203.67 million subscribers around the world. Since it started, it have become the most popular platform for streaming content. It grew even more than usual during the COVID-19 pandemic.

How did it become so successful? It used sophisticated data and analytics, which helped in many ways, such as:

  • It was able to give users personalized suggestions for movies and TV shows
  • It was able to figure out how popular new content would be before it was approved (or not)
  • It could make marketing content such as trailers and thumbnail images to make the user experience more personal
  • It was able to improve its own production planning in-house
  • And, of course, it was able to improve business and technical decision making in general
  • Your Garmin watch: The Garmin watch tells us how many steps we’ve taken (we experience it as a significant motivator to reach the 10K steps every day). Even though they say it’s not 100% accurate, our nights of sleep are tracked. We can see when we’re in REM sleep, when we’re awake, or when we’re sleeping in a light state. It also keeps track of our heart rate, how many times we climbed stairs (or mountains), and so on. It gives us a full picture of what we do 24 hours a day, including our stress level, heart rate, and how we do sports, in a fancy way.

When we use it with an app such as My Fitness Pal, for example, we can link our data with the food we eat during the day, as shown in the following Figure 1.5:

Figure 1.5 – Tracking your sleep

Figure 1.5 – Tracking your sleep

As you can see, all the activities that are measured serve a purpose, such as shopping, keeping an eye on our health, listening to our favorite music (and making playlists that we can share), and last but not least, watching movies and TV shows that we like. In Chapter 9, Handling Data Responsibly, we will talk about how we work with data, what you need to watch out for, and the risks that can happen when we share our own data.

Then, we get unintentional data use unintentionally. We use platforms such as Facebook, Instagram, LinkedIn, and Twitter to share news about our work or even our personal lives. We love that people are reading, liking, and even sharing our messages. Let’s be honest, we get excited when people like something we’ve written.

However, reading the news through different apps on our devices (iPad, tablet, or laptop) to stay up to date on what’s going on in the world is also an unintentional way we use data, especially since the COVID-19 pandemic hit us in 2020.

What does this intentional and unintentional data use mean? And how does it pertain to data literacy? Is data literacy the same for everyone? Well to be honest that depends what your role is within the Data and Analytics field of work. For a data analyst it would mean understanding the data related to a certain process, or transactional system, the tools that an organization uses and so on. For a data scientist, it would mean understanding the algorithms and data that is needed to create their models. For a marketing professional or a company that wants to grow, it is again different. The marketeer needs to understand how to read the created information from the data used from the website, social media platforms, and so on. But for someone who wants to take a vacation in Spain, the information they need is completely different. So, it depends on the role, the position that you are in when it comes to the understanding and level of Data Literacy.

An introduction to data literacy

So what is data literacy, and what does it mean to know how to use data? If we type data literacy into Google’s search box, we will get a lot of results.

Figure 1.6 – Google search for data literacy

Figure 1.6 – Google search for data literacy

We and others think that the definition of data literacy is: The ability to work with, analyze & argue with data…

From our point of view, we’d like to add that it means how a person uses data and understands the world around him (or her). It’s also a matter of behavior, that people can work with data not because they must, but because they want to!

In his article The Art of Questioning, Kevin Hanegan explains the vital role questions play in data literacy:

“Asking the right questions of your data and knowing what you want to find is a key part of getting insights from your data that lead to specific actions.”

Data isn’t just black and white; you can do a lot with it. So, two people who look at the same data can come to very different conclusions. This is because a lot depends on the problem you’re trying to solve and how you go about solving it. This is where communication comes in as a key soft skill. For that decision-making process, we need both technical skills (hard skills) and soft skills such as collaboration, organizational sensitivity, communication, and so on.

We’ll use the pandemic, the news, the data, and the choices we and others had to make as examples in the next section and the later chapters.

The COVID-19 pandemic

To start learning about data literacy, we could look at some examples we’ve gathered from the news and different government organizations around the world.

When we look at the headlines in this picture, we might be surprised to see that only 2,000 of the 550,000 NHS workers were tested. And the headline next to it: “As two more brave doctors die, the same headline tells a story that only 0.16% of NHS staff have been tested for the virus and that the testing station is empty.”

At first, we were all scared about what was going on in our world. There was no information about the topic, and there were no tests available. We saw every day, sad and horrifying news and stories told of people dying and being taken to the hospital, and that hospitals were full of people suffering from COVID-19.

Figure 1.7 – COVID-19 headlines

If we read those headlines without questioning them, it paints a scary picture. But what if you asked questions such as:

  • Why are these numbers like this?
  • What does being tested mean?
  • What is a positive or a negative test?
  • What does the 0.16% mean?
  • Compared with what?
  • Can I trust this message?
  • Which sources did they use? And so on.

All of this is based on the idea that we need to think carefully about what we think and how we should act on that. When we look at some news stories about the COVID-19 pandemic, we can see that there are many kinds of articles. Some are loud (with big headlines) and others are written in a calm way. It depends on which newspaper you read.

A basic understanding of data literacy

We’ll walk through how to read a news story so we can start to understand how to use data to better understand the world around us. In this made-up example, we see how we can interact with data when we read the news online or in a paper news magazine.

Note that this news article is a mix of fact and fiction.

Figure 1.8 – News article about the COVID-19 pandemic

Figure 1.8 – News article about the COVID-19 pandemic

From what we can see and read, this article seems to be written for a wide range of people. If you look a little closer, the article also has data elements. These facts and figures can be hard to understand, and someone who doesn’t have the right skills to do so might miss some important points in this news story. They might get the news wrong, and some people might even be scared by what they read. In all honesty, the same thing has happened all over the world. Most likely, everyone who reads this kind of article could have some questions such as:

  • Am I safe?
  • Should I stay in my house and not go outside?
  • Shall I order my groceries online?
  • Can I visit my mom and dad?
  • Shall we invite people to our houses or not? And so on.

If we take out the information such as the figures we see in this news story, it might make more sense.

Figure 1.9 – News article removing data elements

Figure 1.9 – News article removing data elements

We would understand more if we read the news article carefully and paid more attention to the facts.

We can read that the “new positive cases are increasing.” But as stated in the article, that “could be the result of the expansion of test locations.” We can draw the first conclusion that the increase in people who tested positive could be the result of expanding the test capacity.

Figure 1.10 – Questioning the news article to understand the message better.

Figure 1.10 – Questioning the news article to understand the message better.

But there’s more to read in this article. If we keep reading, we’ll see that there’s more clutter and noise. Let’s talk about the mess and noise in the next section.

Removing emotions and asking questions

Some of the things in the article being shown are emotional. Words such as staggering, dramatic, dramatically, and highest level ever can make us feel scared, but they also make us biased. By being able to get rid of these parts, we can read the article again and get rid of the clutter and feelings.

Most of the time, we start by coming up with questions and then looking for answers (or feedback) that will help us make decisions. Knowing which data is useful for answering our questions is also an important part of our data literacy skills. In this situation, we could ask things such as the following:

  • How does the pandemic affect me?
  • Can I go and visit my parents or my family?
  • What do I have to take care of?
  • Will our business survive?
  • What are some areas and is this here in my hometown?
  • What is a test, and what does being positive or negative mean? And so on.

As questions are an amazingly important aspect of our data literacy skill set, you will find more information in Chapter 8, Questioning the Data.

We use and see a lot of data in our everyday lives. Everyone needs to know how to read and understand data. Even during a pandemic and while reading the news, we need to be able to tell what information is useful and what is not. This is what we call critical thinking. Critical thinking is part of data literacy; it is the ability to question the logic of arguments or assumptions and examine evidence in order to determine whether a claim is true, false, or uncertain. In Chapter 8, Questioning the Data, we talk more about questioning. When COVID-19 hit us, at first, we mostly felt fear, hopelessness, and uncertainty, and we had many questions. As soon as the first cases came in, the first people were taken to the hospital or even the ICU. During the pandemic, we realized that we really needed to understand what data was and how we could use it to decide what to do or how to respond to the crisis. During this global crisis, we felt like we had to find out what was going on right away.

We needed to know and understand what was going on around the world. For example, we needed to know how many tests were being done, how many people were losing their jobs, and so on.

During the crisis, it was hard because some people also gave us false information. Some said all sorts of things that didn’t make sense. In the following figure, you can see a picture that our friend Joe Warbington took of his TV.

Figure 1.11 – Misleading graphs on TV

Figure 1.11 – Misleading graphs on TV

You may have noticed that the graph is a little strange, with high numbers and a small bar and low numbers and a bigger bar. We don’t see any other information or context on the axes. People take the graph for granted instead of being critical and asking questions, which is a worry.

Noticing the problems with the graph and identifying that there are things wrong with it are an important part of your data literacy skills.

From here, we can learn the basics of data and how we can use it in our daily lives. Organizations also need data, and they need to know how to use data and be literate in data. So, let’s look at the organizational data flow next to better understand this.

The organizational data flow

All beginnings are hard, and this is equally true when a company wants to start with data-informed decision making (DIDM). There are sometimes reports that give a general idea of how well the organization is doing financially. People often think, We have some Excel reports, that’s enough. But when reality hits, they realize they need more information (for example, not only information about financial matters).

When new data projects start or new plans are made to add more information to existing reports, the projects take too long, the people who wrote the hard macros are no longer available, or the project methods are no longer good. With a big bang scenario, projects will take too long and more parts will be added as the project goes on. This is called scope creep.

Another common way organizations limit the effectiveness of their data is when business users in organizations just use the numbers on the Key Performance Indicators (KPI) reports as they are. In Chapter 6, Aligning with Organizational Goals, we help you understand the KPIs and how they should align with the strategic objectives. These business users do things such as hear, see, and be quiet. They seem to think, Oh no, that’s too bad. Let’s hope the numbers are better tomorrow, next week, or next month. To be honest, this is still a very serious problem in organizations. Most of the time, it’s because business users can’t make decisions that are based on facts. Many times, it is even worse when we don’t know how to answer business questions even when we are in business and can’t make a decision as simple as how to read graphs and reports or how to analyze. Still, it’s important to keep track of your organization’s goals and help people understand the insights that can be drawn from data. This will help them make decisions based on the data and not get lost in the data-insights jungle.

As mentioned at the beginning of this chapter, we have so much data in this digital age. Our data mountain is growing every day (1.7 MB per second per person on this planet), and data can help us be successful in what we do. So, we need to look at how information moves through an organization and what kind of knowledge and processes need to be taken care of. The following diagram represents a visualization of how the data grows, covering the flow of data and which disciplines are involved.

Figure 1.12 – The flow of data

Figure 1.12 – The flow of data

If we look at how data-informed decision making works, we can see that it all starts with signals. There are a lot of signals around us right now. These signals are turned into data, and then that data becomes information (something we can do something with), and finally, knowledge. We’ll use the following simple example of a traffic light to show how this works:

  1. Signal: We are receiving light waves in our eyes.
  2. Data: The data that we receive or see is that the light is red.
  3. Information: The information that we have is that we know it’s a traffic light.
  4. Knowledge: The knowledge that we have is that we know we must stop.
  5. Action: The action is that we will stop in front of the traffic light as we don’t want to have an accident or get fined for passing the red traffic light.

One thing that can hinder the ideal flow of data in an organization is where data is stored and how it is managed. Data is kept in many places, for example, POS systems, CRM systems, and Excel documents, which keep track of sales data, marketing data, and financial data respectively. Multiple source systems are usually not a problem in smaller organizations, but in larger ones, they could be a problem and a potential risk.

When organizations don’t pay attention to data management for simple things, such as different types of addresses or different definitions of fields, this could cause problems in how data flows through the organization. Data governance needs a place as well within your processes when we think of the usage of data. Do not confuse data governance with data management. Data management is about the day-to-day business when we use data in a company, whereas data governance looks at how the company can make more money using data in the future. The earlier Figure 1.12 shows the different disciplines that an organization could use to set up a data and analytics environment, not just from a technical point of view, but also from a business point of view. To ensure data is managed effectively, businesses need the right skills and processes in place:

  • Data management: Businesses deal with a lot of data. That data needs to be managed well so everyone can use it effectively. It is necessary to take care of things such as data entry, data registers, data quality, and so on. Today, we call this the data office, and a chief data officer usually runs it.
  • Privacy management: Keeping personal, customer, or proprietary information safe and secure is vital. Privacy laws exist in many countries, covering things such as the right way to handle data. Most of the time, a data protection officer takes care of this. Later in this book, there will be more about privacy and how to handle data in an ethical and secure way.
  • Information management: Information management is an important part of turning data into the insights that are needed. There are many ways to describe information management, but we think this is the best one: information management is the process that ensures that the information needs arising from various processes of an organization are translated into insights necessary for measuring and achieving the organizational objectives.
  • Knowledge management: Businesses need to manage their information and knowledge effectively to avoid wasting people’s time searching for the right information. Too much knowledge is stored in our (collective) brains, so we need to register and collect knowledge and plan for the future.

On a small side note, some organizations in the Netherlands have a staff with an average age of 48. That means that information about processes, systems, designs, and other things needs to be kept for the future.

  • Change management: Change management is a systemic approach to dealing with changes in a business. Every new dashboard, report, or change to an existing dashboard or report is overall a change, and we need to help the management and business stakeholders accept the change and work with the new dashboards and reports. There is more in this book about this subject.
  • Strategic management: Strategic management is how an organization manages and achieves its overall goals. Data and analytics need to be embraced by the management or board of directors, and they need to set an example for the whole staff. If the people in charge don’t take part in data and analytics projects, the idea will fail.

As you read through this book, there may be many concepts that are new to you. We’ll help you gain a better understanding through case studies, such as the next one.

Intermezzo 1 – Is data management necessary?

This first story is from an organization that has a lot of complex systems. This organization wanted to set up a new source system for their registrations. Moreover, it was necessary to build connections between other systems. Of course, one of them was the connection to the data warehouse system.

Because no data management or data governance was in place, or no register for data elements was available in conversations that were held about common things such as how we arrange the connections, which protocols we need, and so on.

It would have been much better if we would have talked about the definition of attributes, formats of date fields, or other elementary data fields.

In fact (and this is something we say a lot during lectures and presentations), we all should speak the same data language! When one source system is in a different language than another system, we will run into problems when we want to extract data (or even connect data) or use data for dashboards and reports. You will get into problems if data management or data governance is not in place.

P.S. All the stories that are written in this book are real-life stories, and out of respect for the organizations, we will sometimes not mention any names.

The DIDM journey

Anyway, if we have data and are willing to use any tool, and we want to work with it, the data becomes information. Information management is an important part of the process because of this. In the end, information will become knowledge if we are willing to take in the information and go on that journey to understand the insights. The ideal flow of data or data journey will eventually look like this:

Figure 1.13 – The data-informed decision-making journey

Figure 1.13 – The data-informed decision-making journey

The hardest part is to act on and make decisions based on what you’ve learned. This happens a lot in the places where we work or have worked. As we’ve already said, when the insights are actionable but we forget to deal with the change or forget to put them into action in our projects, we tend to take the insights for granted.

But how do you move forward? You can do this by analyzing the insights in small steps and slowly learning that data literacy and taking action go hand in hand.

In this book, we’ll show you how to work with data, how to read and evaluate insights (be critical and ask questions), and how to make decisions based on what you learn. You must go on a journey, which starts with figuring out your (data) strategy, working with that data and gaining insights, and eventually starting to think about hypothetical questions and using more complex ways to show data. Put that dot on the horizon, start small, and grow quickly.

In the next section, we’ll tell the story of The Oakland As who did a great job of using data and analytics.

The success story of The Oakland A’s

Let’s go through the success story of The Oakland A’s where we describe their journey when they started working with data-informed decision making. This story is a true, real-life story and they even created a movie about this success story, named Moneyball.

Billy Beane, general manager of the Oakland Athletics, is devastated by the team’s loss to the New York Yankees in the 2001 American League Division Series. Some of the star players left the team and Beane needed to assemble a new competitive team for the 2002 competition with a limited budget.

During a scouting visit to the Cleveland Indians, Beane meets Peter Brand, a young Yale economics graduate with some amazing ideas about evaluating players.

Using Brand’s method, Beane signed up undervalued players and traded another player.

Figure 1.14 – The Oakland A’s

People are biased, and one of the things said in the movie was about Chad Bradford, who is one of the best pitchers. Bradford was not chosen by any big team, but with the analysis that Brand performed, they found out that he was highly underestimated; why? Because he threw the ball in a funny way (as they say in the movie, because he throws funny). Based on the analysis, they hired Bradford and he became a successful player for the team. This is a big reason why we’re telling this story. He didn’t get picked because of bias. But if you looked at his batting scores, he did well, so he was one of the most undervalued players.

The scouts for the Athletics didn’t like the plan Beane had made, and in the end, Beane fired the head scout. Beane stuck with the new plan, and even though they lost the first 10 games, critics wrote of the new way of working with data.

As Brand says, math and statistics get rid of bias, and to be successful, you need to get things back to one number (one fact, one measure). They traded some players again, and then the team started to win.

The Athletics broke a record by winning 20 games in a row. Hatteberg’s walk-off home run helped them do this. Beane tells Brand that he won’t be happy until they win the World Series with their system and change baseball.

Fun fact

Billy Beane has helped a Dutch soccer team improve its statistical approach and use data to make decisions about players. He even bought some shares in the Dutch soccer team AZ Alkmaar.

Summary

After reading this chapter, we know more about data literacy and how we can use it in our everyday lives. With this skill set, we can do a better job of responding to the things we read and see around us, such as the pandemic; it also helps us decide how to respond in these conditions. We used an example to talk about how to get rid of noise, mess, and feelings.

Then, we talked about how data moves through an organization and which disciplines should be looked at. We talked about how these different fields can help make data and analytics projects successful.

We ended with a story about a baseball team in the United States. You learned that they became a successful team by using data, letting the insights speak for themselves, and taking bias out of decision making.

In the next chapter, we’ll talk about the journey an organization can take. In practice, a journey doesn’t always go as planned. Most of the time, we start with plain business intelligence (or performance management), but some organizations start with data science or advanced analytics. The problem is that these kinds of organizations don’t even measure how well they’re meeting their goals.

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Key benefits

  • Get a solid grasp of data literacy fundamentals to support your next steps in your career
  • Learn how to work with data and extract meaningful insights to take the right actions
  • Apply your knowledge to real-world business intelligence projects

Description

Data is more than a mere commodity in our digital world. It is the ebb and flow of our modern existence. Individuals, teams, and enterprises working with data can unlock a new realm of possibilities. And the resultant agility, growth, and inevitable success have one origin—data literacy. This comprehensive guide is written by two data literacy pioneers, each with a thorough footprint within the data and analytics commercial world and lectures at top universities in the US and the Netherlands. Complete with best practices, practical models, and real-world examples, Data Literacy in Practice will help you start making your data work for you by building your understanding of data literacy basics and accelerating your journey to independently uncovering insights. You’ll learn the four-pillar model that underpins all data and analytics and explore concepts such as measuring data quality, setting up a pragmatic data management environment, choosing the right graphs for your readers, and questioning your insights. By the end of the book, you'll be equipped with a combination of skills and mindset as well as with tools and frameworks that will allow you to find insights and meaning within your data for data-informed decision making.

Who is this book for?

This book is for data analysts, data professionals, and data teams starting or wanting to accelerate their data literacy journey. If you’re looking to develop the skills and mindset you need to work independently with data, as well as a solid knowledge base of the tools and frameworks, you’ll find this book useful.

What you will learn

  • Start your data literacy journey with simple and actionable steps
  • Apply the four-pillar model for organizations to transform data into insights
  • Discover which skills you need to work confidently with data
  • Visualize data and create compelling visual data stories
  • Measure, improve, and leverage your data to meet organizational goals
  • Master the process of drawing insights, ask critical questions and action your insights
  • Discover the right steps to take when you analyze insights

Product Details

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Publication date : Nov 30, 2022
Length: 396 pages
Edition : 1st
Language : English
ISBN-13 : 9781803246758
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Product Details

Publication date : Nov 30, 2022
Length: 396 pages
Edition : 1st
Language : English
ISBN-13 : 9781803246758
Category :
Concepts :

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Table of Contents

20 Chapters
Part 1: Understanding the Data Literacy Concepts Chevron down icon Chevron up icon
Chapter 1: The Beginning – The Flow of Data Chevron down icon Chevron up icon
Chapter 2: Unfolding Your Data Journey Chevron down icon Chevron up icon
Chapter 3: Understanding the Four-Pillar Model Chevron down icon Chevron up icon
Chapter 4: Implementing Organizational Data Literacy Chevron down icon Chevron up icon
Chapter 5: Managing Your Data Environment Chevron down icon Chevron up icon
Part 2: Understanding How to Measure the Why, What, and How Chevron down icon Chevron up icon
Chapter 6: Aligning with Organizational Goals Chevron down icon Chevron up icon
Chapter 7: Designing Dashboards and Reports Chevron down icon Chevron up icon
Chapter 8: Questioning the Data Chevron down icon Chevron up icon
Chapter 9: Handling Data Responsibly Chevron down icon Chevron up icon
Part 3: Understanding the Change and How to Assess Activities Chevron down icon Chevron up icon
Chapter 10: Turning Insights into Decisions Chevron down icon Chevron up icon
Chapter 11: Defining a Data Literacy Competency Framework Chevron down icon Chevron up icon
Chapter 12: Assessing Your Data Literacy Maturity Chevron down icon Chevron up icon
Chapter 13: Managing Data and Analytics Projects Chevron down icon Chevron up icon
Chapter 14: Appendix A – Templates Chevron down icon Chevron up icon
Chapter 15: Appendix B – References Chevron down icon Chevron up icon
Index Chevron down icon Chevron up icon
Other Books You May Enjoy Chevron down icon Chevron up icon

Customer reviews

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Donald M. Farmer Dec 14, 2022
Full star icon Full star icon Full star icon Full star icon Full star icon 5
In their new book, Angelika Klidas and Kevin Hanegan explore the increasingly ubiquitous role of data in our lives and the implications it has on our daily practices. From descriptive analytics to diagnostic analytics, the authors offer a comprehensive overview of how analytics have evolved and been adopted by modern organizations.The authors introduce a model of an enterprise data culture built on four key pillars: "organizational data literacy," "data management," "data analytics," and "education. This is particularly noteworthy for its emphasis on the importance of "organizational data literacy" rather than just on individual skills.This book provides readers with a thorough understanding of how to improve their dashboard design and communication with data, as well as how to measure the success of data and analytics projects. Detailed instructions, checklists, templates, and examples are included which help to illustrate and clarify complex concepts, reducing confusion around terminology and jargon.This comprehensive and practical guide to data literacy, "Data Literacy in Practice," is highly recommended for both experienced data analysts and newcomers alike. Detailed and well-balanced, it offers something of value for everyone.
Amazon Verified review Amazon
Douglas B Apr 30, 2023
Full star icon Full star icon Full star icon Full star icon Full star icon 5
"Congratulations to Angelika Klidas and Kevin Hanegan for this reference on how organizations can manage and leverage data & analytics from a cultural aspect. The book details an ideal organizational data journey--especially going beyond simple yet ubiquitous hindsight-only analytics to the promised land of diagnostic, predictive and prescriptive analytics, and how to structure and organize for analytic success. It includes guidance on culture, measuring and managing to success, explaining the importance of data management/quality/governance in business terminology, aligning analytics with organizational objectives, choosing ideal visuals, responsible data handling, and an overall framework for data literacy.The book is a great read and reference, as it includes stories, tools & techniques, illustrations, and frameworks--everything you'd expect and want from such a book. Highly recommended for any and all data & analytics leaders.The major areas the book falls short is in helping data & analytics leaders make the financial and economic business case for managing data as an actual asset, identifying the various ways organizations should be thinking about how to monetize their (and others') data assets, and measuring the potential and realized value of their data assets. The book entirely fails to acknowledge prior work, ideas, and best practices on these increasingly critical topics. Also, it's not all about identifying and solving *problems* as their Data Literacy Competency Framework indicates, but rather organizations should be trained on how to look at data opportunistically as well. And I would have liked to see treatment of the increasingly important topics of data literacy within an AI context and how legal teams should ensure that technology-related contracts should address data-related rights & responsibilities beyond privacy (e.g. sovereignty, residency, localization, etc.)"--Doug Laney, Innovation Fellow, Data & Analytics Strategy, West Monroe, and author of "Infonomics: How to Monetize, Manage, and Measure Information as an Asset for Competitive Advantage" and "Data Juice: 101 Real-World Stories of How Organizations Are Squeezing Value From Available Data Assets."
Amazon Verified review Amazon
Marc Wintjen Jan 02, 2023
Full star icon Full star icon Full star icon Full star icon Full star icon 5
I've bene fortunate enough to be an early adaptor of the Data Literacy movement and benefited from Kevin's contributions to its foundation. Whether its from his leadership on the Advisory board of the Data Literacy Project or continuous content contributions as the Chief Learning Officer at Qlik, Inc., Mr. Hanegan has been a champion for careers in all things data.In his latest collaboration with Angelika Klidas, the "Data Literacy in Practice" book offers a thoughtfully defined approach for anyone looking to upskill working with data. I found the book to be easy to understand for many different audiences. Regardless if you are a neophyte looking for a new career working with data or an advanced technology practitioner looking to invest in their techniques to effectively communicate working with data.The book serves as a blueprint for success in effectively adopting data literacy within yourself and with others. I found the examples throughout the book serve as a roadmap for maturing how to answer complex business questions with data. The end result helps the reader better articulate the value of data and avoid the pitfalls that occur when the focus is on the technology tool versus the quality of the data.I especially enjoyed the many "intermezzo" examples showcasing the common pitfalls that exist in many data projects. These are intended to serve as best practices without calling out any organization by name so the audience can focus on the lessons learned.By the end of the book, the reader should feel confident having the right insights and a framework to help adopt data literacy within any organization. The combined experience of Angelika and Kevin shine throughout the book with meaningful guidance.In the Digital Age where everyone is bombarded with facts, opinions, disinformation and misinformation daily, having the skills to effectively question and validate data is vitally important. Now more than ever, data literacy is integral part of daily life which is why I would highly recommend this book.
Amazon Verified review Amazon
Jennifer Danckaert Dec 16, 2022
Full star icon Full star icon Full star icon Full star icon Full star icon 5
This book starts out discussing how data is being collected and created all of the time. Data is everywhere. But understanding that data and knowing what to do with it, is the key. As the book says “Having a large amount of data to use is not a goal in and of itself; the ultimate goal is to use that data and get that information from the data mountain to make data-informed decisions.”This book helps the reader understand what data literacy is, why it is important, and how to implement data literacy within an organization. It explains the difference between descriptive analysis, diagnostic analysis, predictive analysis and prescriptive analysis. This book covers topics like turning insights into decisions, learning to ask questions of data (and why that is important – something I use often in my job and even in my daily life), and looking at the ethical side of data. There is also a chapter that covers dashboards and reports, how to choose and build the right visualization, and the DAR(S) principle. All of these topics and more show you how to utilize data to ultimately arrive at and make data-informed decisions.No matter where you are in your data journey, or where your organization is in its data journey, I highly recommend this book. The preface and the overview for the book states that this book is for data analysts, data professionals, and data teams. But I would modify that to say it is for anyone who utilizes data in their jobs and in their everyday lives…and, let’s face it, nowadays most of us do.
Amazon Verified review Amazon
ave Dec 15, 2022
Full star icon Full star icon Full star icon Full star icon Full star icon 5
Data Literacy can seem intimidating, but it is not a science; it is a life skill anyone can develop.Angelika Klidas and Kevin Hanegan's Data Literacy in Practice is an essential resource for anyonelooking to improve their data literacy skills while exploring advanced data analysis techniques.Throughout the book the authors provide step-by-step instructions for working with common data analysis tools, as well as tips and tricks for overcoming common challenges and pitfalls.The standout feature of the book is its focus on real-world applications of data literacy.Throughout the book case studies are provided to demonstrate how data literacy can be used to solve problems, communicate effectively, and make informed decisions.Complex concepts are presented in an accessible and engaging way and are intertwined with real world examples which makes it easy to apply in everyday situations.This practical approach makes the book an invaluable resource for anyone lookingto improve the applications of data literacy to their work and beyond.
Amazon Verified review Amazon
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