4 essential skills for data analysts (2024)

Data—and the power to leverage it—is arguably the top strategic advantage of businesses today. And companies are understandably building up their data workforces and investing in the hiring and development of key roles like business intelligence and data analysts. These analysts must be adept at the suite of data tools available today, but especially Tableau, the dominant analytics platform for enterprises.

Accessing, synthesizing and sharing data as a modern data analyst specializing in Tableau requires technical, analytical and communication acumen. Rocking this linchpin role requires mastery of interdisciplinary domains ranging from statistics, to hands-on computer skills, color theory and facilitation. Here are the four essential skills you need to excel as an analyst.

1. Literacy in data analytics

Day-to-day, analysts are required to interrogate data sets, answer questions and provide direction based on interpretations. As such, you need a sound foundation of mathematical and statistical concepts. Summarization and aggregation are often required to synthesize and interpret data. As an example, wielding the median and quartiles opposed to the average with outlier-sensitive data can assist in obtaining an accurate picture.

Analysts are also well versed in techniques to test data: from simplistic A/B testing, to developing models that fit and describe your data, to ANOVA and hypothesis testing.

Beyond knowing the right statistical methods to apply, you should understand how data relates to itself. Analysts must be adept at understanding different data structures and storage methods and how to create robust data sets using concepts like primary keys, one-to-many relationships, dimensions and facts.

2. Querying data with ANSI SQL

To truly leverage data, analysts need a strong grasp of Structured Query Language (SQL). Commonly thought to be the most popular programming language, SQL is the key to accessing data inside of databases. Familiarity with how to retrieve data, create joins, develop stored procedures, create aggregations and work with data types will go a long way in getting your hands on the data you crave.

Additionally, the ability to effectively offload intensive computations and customize structure at the data model level can be critical in creating sophisticated visualizations. The proficient data analyst will have enough fluency in these concepts to partner with data engineers and architects to facilitate the creation of custom data models for analysis.

Lastly, Tableau uses VizQL to translate user actions to SQL, so depth in this skill aids in creating optimized, performant work that scales.

3. Tableau Desktop

Tableau Desktop has positioned itself as the predominant tool used by analysts to connect, interact and visualize data. It has the ability to access data from a wide range of data sources, easily work with and commingle multiple data sets and quickly create analytical content designed for mass consumption. Its responsive interface and drag-and-drop approach allows you to stay in the flow of analysis. Tableau Desktop is key to each phase of analysis: data exploration, curation, presentation and communication.

Analysts should know how to effectively create different views or visualizations and how to maximize Tableau Desktop’s built-in features. Highly skilled analysts put aside the “show me” menu to create bespoke content aimed directly at complex business questions. True mastery means you start with the marks card, are comfortable performing manipulations on top of views by using table calculations and adept at fine-tuning data granularity by using level of detail expressions. In the world of self-service analytics, you need a firm grasp on adding interactivity and using actions and sets to aid end users in drilling into their burning questions.

4. Literacy in data visualization

Communicating your insights and findings from data caps off the other skills you’ve built, and is possibly the most critical component. It’s important for every analyst to focus on how their findings are communicated. This means:

  • Effective usage of chart types based on the analysis
  • Understanding pre-attentive attributes like size and position
  • Simplifying solutions that maximize cognition and understanding.

These pillars of data visualization literacy build the bridge needed for others to extract important findings from your work. Today’s top analysts know the right chart to answer the most common business questions and are skilled enough to bend best practices to suit their audience. Concepts in color and how to apply to categorical vs. numerical data, layout, and the accompaniment of text will be top priorities as you push to continually refine and simplify your approach.

How do you measure up?

It’s safe to say there’s never been a better time to be an analyst; the demand for data experts in on the rise. Speed up your success in this booming sector by honing your essential skills and identifying what you need to work on to get to the next level.

Think you have what it takes? Get your Data Analyst Role IQ.

4 essential skills for data analysts (2024)

FAQs

What are the 4 aspects of data analytics? ›

There are four key types of data analytics: descriptive, diagnostic, predictive, and prescriptive. Together, these four types of data analytics can help an organization make data-driven decisions. At a glance, each of them tells us the following: Descriptive analytics tell us what happened.

What are the 4 types of data analyst? ›

  • Understanding the different types of data analytics.
  • Descriptive analytics.
  • Predictive analytics.
  • Prescriptive analytics.
  • Diagnostic analytics.
  • Make in-the-moment decisions faster with the right BI tool.
Mar 14, 2024

What are data analytical skills? ›

Data analysis is the process of collecting, interpreting, evaluating, analysing and visualising a dataset to find meaningful insights that help in taking effective business decisions. It can help businesses improve specific aspects of their products and services and positively affect their productivity.

How to stand out as a data analyst? ›

Here are the 8 pointers every analyst should strive to develop:
  1. Be able to tell a story, but keep it Simple. ...
  2. Pay attention to Detail. ...
  3. Be Commercially Savvy. ...
  4. Be Creative with Data. ...
  5. Be a People Person. ...
  6. Keep Learning new Tools and Skills. ...
  7. Don't be Afraid to make Mistakes, Learn from Them. ...
  8. Know when to Stop.

What soft skills are required to be a successful data analyst? ›

A fundamental soft skill that a data analyst should have is effective communication skills. Communication and good interpersonal relationships with colleagues and other members of the data team in the company they work for are essential for the smooth operation of a business.

What are the 4 pillars of data analysis? ›

But it's not just access to data that helps you make smarter decisions, it's the way you analyze it. That's why it's important to understand the four levels of analytics: descriptive, diagnostic, predictive and prescriptive.

What are the 4 Ps of data analytics? ›

The Eras map well to what I see as the 4 P's of data – pinpoint, pronounce, predict, and prescribe. The 4 P's of data can be used by an organization to assess how they are using their data; they can also be used to track the evolution of tools and techniques for managing data with an organization.

What are the 5 W's of data analytics? ›

The point is, the way we look at data has changed significantly, going from bar charts and graphs to digital tools that enable us to record and track data unlike ever before. In this blog, we look at the 5Ws of analytics – the who, what, when, where, and why (and a little bit of the how).

What are the 4 stages of data analysis? ›

Analytics is a broad term covering four different pillars in the modern analytics model: descriptive, diagnostic, predictive, and prescriptive. Each type of analytics plays a role in how your business can better understand what your data reveals and how you can use those insights to drive business objectives.

What are the four basic functions of data analysis? ›

Key Takeaways

Various approaches to data analytics include descriptive analytics, diagnostic analytics, predictive analytics, and prescriptive analytics. Data analytics relies on a variety of software tools including spreadsheets, data visualization, reporting tools, data mining programs, and open-source languages.

What is 4 big data analytics? ›

There are four main types of big data analytics: diagnostic, descriptive, prescriptive, and predictive analytics.

Is SQL required for data analysts? ›

Knowing SQL lets you update, organise, and query data stored in relational databases and modify data structures (schema). Since almost all data analysts will need to use SQL to access data from a company's database, it's arguably the most important skill to learn to get a job.

What are the 5 data analytics? ›

Discover how descriptive, diagnostic, predictive, prescriptive, and cognitive analytics can transform your business decision-making process with our comprehensive guide.

What are analysis skills? ›

Analytical skills, or analysis skills, are the ones you use to research and interpret information. Although you might associate them with data analysis, they help you think critically about an issue, make decisions, and solve problems in any context.

Is Python required for data analysts? ›

Despite the vast range of programming languages, most data analysts choose to work with Python. While some data analysts use other programming languages like Javascript, Scala, and MATLAB; Python remains the popular choice due to its flexibility, scalability, and impressive range of libraries.

Is coding required for data analytics? ›

Coding is essential for Data Analysts to manipulate, clean, and analyse data efficiently. Programming languages such as Python, R, SQL, and others are widely used in Data Analytics. With coding skills, Data Analysts can automate repetitive tasks, develop custom algorithms, and implement complex statistical analyses.

Is data analysis a hard skill? ›

Data analysts rely on skills like programming in R or Python, querying databases with SQL, and performing statistical analysis. While these skills can be challenging, it's totally possible to learn them (and land a data analyst job) with the right mentality and plan of action.

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