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What Is a Skills Taxonomy? A Brief Guide

Written By April Bohnert | October 18, 2023

With the tech skills gap widening and the essence of “job readiness” being redefined, businesses are in a race — not just to keep up, but to stay ahead. No longer can companies solely rely on traditional indicators like degrees or previous job titles; the focus is veering toward tangible, applicable skills that align with present and future needs.

This embrace of skills-based hiring strategies has been a powerful shift. A recent survey found that, of the companies using skills-based hiring, 90% saw a reduction in cost-to-hire, 91% saw reduction in time-to-hire, and 91% experienced an increase in employee retention — among other benefits.

But realizing these benefits requires a robust, standardized skills strategy. And at the heart of this strategy lies the skills taxonomy. 

In this article, we’ll unpack what a skills taxonomy is, why it’s an essential tool in the modern hiring toolkit, and how it goes beyond just recruiting, playing a pivotal role in internal mobility and upskilling. 

Skills Taxonomy Defined

A skills taxonomy serves as the foundational framework for any skills-based hiring strategy, providing a clear, adaptable roadmap that helps organizations articulate and identify the competencies they seek. It’s a structured system that categorizes and defines the range of skills needed within an organization. Picture a library, but instead of cataloging books, you’re organizing skills. Just as a library has sections for fiction, non-fiction, science, and arts, a skills taxonomy classifies skills into distinct categories, such as “programming languages,” “project management,” or “data analysis.”

But the richness of a skills taxonomy doesn’t stop at mere categorization. It delves deep into the nuances of each skill. For example, within the “programming languages” category, the taxonomy doesn’t just list skills like “Python” or “JavaScript.” It goes further, detailing proficiency levels. From beginner stages, where one might write basic scripts, to advanced levels of building intricate applications or contributing to a language’s source code, each level is clearly outlined.

This granularity is essential for hiring. When a job description specifies a “Python Developer with intermediate proficiency,” there’s a clear understanding across the board. Everyone, from recruiters to interviewers, knows precisely what’s expected, leading to better alignment in evaluations and, ultimately, improved hires.

It’s important to note, however, that creating a skills taxonomy isn’t a one-time process. A skills taxonomy is dynamic, requiring periodic updates and refinements to stay attuned to industry shifts. What’s deemed an advanced skill today might be viewed as foundational tomorrow.

Skills Taxonomy vs. Skills Ontology

As organizations adopt more refined talent strategies, terms like “skills taxonomy” and “skills ontology” often emerge. While they might seem interchangeable at first glance, understanding their distinctions is important for developing an effective skills strategy.

A skills taxonomy, as we’ve discussed, offers a structured categorization of skills. It’s about defining and grouping skills, then specifying proficiency levels within those groups. For instance, in a tech firm’s skills taxonomy, “Java” might be listed under the broader category of “Programming Languages,” with levels ranging from “Beginner” to “Expert.”

A skills ontology goes a step further. It’s about understanding relationships and dependencies between different skills. In essence, while taxonomy lists and categorizes, ontology connects and contextualizes. Using our previous example, a skills ontology might detail how proficiency in “Java” interacts with skills in “Web Development” or “Android App Development.” It could highlight that an expert Java developer with skills in web frameworks might be well-suited for back-end web development roles.

The distinction matters, especially when designing talent strategies. While a skills taxonomy helps in crafting clear job descriptions and identifying skills gaps, a skills ontology aids in understanding how skills overlap, interrelate, or complement one another.

Key Elements Of A Skills Taxonomy

Understanding skills taxonomy requires a deep dive into its integral components. These elements not only structure the taxonomy but also ensure its comprehensiveness and adaptability.

  • Skill Name: This is the fundamental unit of a skills taxonomy. It identifies a specific ability or knowledge area. Examples include “Python,” “Data Visualization,” or “Agile Project Management.”
  • Skill Descriptions: These are clarifications or examples that define what competency at each proficiency level entails. For a skill like “Web Development,” an intermediate descriptor might state the ability to “create responsive sites using certain front-end frameworks.”
  • Skill Category: This groups related skills under a broader umbrella. For instance, “Docker” and “Kubernetes” might both be situated under “Container Orchestration.”
  • Proficiency Levels: This delineates the depth of expertise in a particular skill. Levels might be classified as “Beginner,” “Intermediate,” or “Expert.” In context, an intermediate proficiency in “Database Management” might mean the ability to design and implement databases of moderate complexity.
  • Skill Hierarchies: Certain skills naturally branch out into sub-skills or are encompassed within a larger skill cluster. Recognizing these hierarchies is essential. For example, under “Web Development,” you might find sub-skills like “Front-end Development” (with further breakdowns into “HTML,” “CSS,” “JavaScript”) and “Back-End Development” (branching into “Node.js,” “Ruby on Rails,” or “Django“).
  • Skill Mapping: This pertains to how a skill correlates with roles, responsibilities, or other skills. Knowing, for instance, that a full-stack developer role requires proficiency in both front-end development and back-end development is an example of skill mapping.

By grasping these foundational elements, anyone engaged in talent management is better equipped. Whether it’s in framing precise job descriptions, curating training initiatives, or assessing candidates, a well-articulated skills taxonomy becomes an indispensable tool. It ensures skills are both listed and contextualized, offering a comprehensive perspective on the competencies an organization values.

Benefits Of A Skills Taxonomy

A skills taxonomy isn’t just a tool; it’s a strategic asset. And implementing a skills taxonomy has tangible impacts that resonate across the hiring process and talent management strategy, including:

  • Efficient Hiring: With clear categorization and defined proficiency levels, organizations can not only elevate the quality of hires but also streamline the screening and hiring process. In fact, 93% of organizations that leverage skills-based hiring saw a reduction in mis-hires.
  • Optimized Technical Assessments: A skills taxonomy provides a robust foundation for creating and refining technical assessments. Whether evaluating coding capabilities, system design, or any other tech skill, assessments aligned with a well-defined taxonomy ensure that candidates are tested on relevant skills at appropriate proficiency levels. This results in a more objective and effective evaluation process.
  • Stronger Internal Mobility: A skills taxonomy offers a clear view of existing talent, making it easier to identify employees ready for new roles, promotions, or project transitions. This approach ensures optimal talent utilization and fosters a culture of growth and mobility within the organization.
  • Targeted Upskilling And Training: Recognizing skills gaps is pivotal for future-proofing any business. A skills taxonomy provides insights into areas that need bolstering, enabling the creation of data-driven upskilling programs. These initiatives ensure employees are prepared for both current and emerging industry challenges.
  • Future-Ready Strategy: By regularly refining the skills taxonomy in line with industry shifts, organizations can proactively adapt to changes, ensuring they remain competitive and innovative.
  • Fostering A Learning Culture: With a clear taxonomy, employees have a roadmap for their personal development. This clarity cultivates a culture of continuous learning, where individuals are motivated to expand their skill sets and grow within the organization.

Embracing the Future with Skills Taxonomy

Staying ahead in tech is not just about embracing the latest technologies or trends — it’s about harnessing the right talent with the right skills. As the boundaries of what’s possible expand, so do the skills required to navigate this frontier. Herein lies the undeniable value of a skills taxonomy.

In this skills-driven era, the message is clear: to truly thrive, organizations must see beyond degrees, titles, or experiences. They must delve into the tangible, applicable skills professionals actually need. And with a robust skills taxonomy in hand, that journey becomes not just feasible, but promising and transformative.

This article was written with the help of AI. Can you tell which parts?