The role of AI in creating – and maintaining – a skill framework

March 14, 2024
3 min read

AI is now a big part of our daily lives. From social media to online banking, even smart devices in the home. So it's no surprise that AI is also entering our workplaces, from automated workflows to managing the talent process or analysing learning and development outcomes. AI is transforming the way jobs are managed and will play a vital role in the future of work.

The rise of the skill-based system

Organisations are now adopting a skill-first approach. According to LinkedIn’s 2022 Workplace Learning Report, the organisations that shift to skills-based planning have a “unique chance to catalyse learning culture and capitalise on emerging trends — especially the convergence of learning, talent acquisition, talent development, and the red-hot rise of internal mobility”.

A skill framework is the foundation

To make this possible, you need a skill framework, built through skill data. This is collated from a variety of sources from HR systems to LXPs, LMSs, and project management systems such as Asana. For it to have a tangible impact on your business and to withstand the test of time, it needs to be tailored (to give you the right insights), comprehensive, and dynamic so it evolves with business and individual needs.

Therein lies the challenge — and the reason why only 10% of HR and business executives currently have a skills database.

Your organisation’s skills are ever changing

Skills change all the time. What we’ve learnt through building TechWolf over the last five years is that maintaining a skill framework manually is near impossible and incredibly time-consuming. You need AI to do much of the heavy lifting.

At TechWolf our AI works to automatically capture emerging skills within an organisation’s workforce so HR and business leaders always have an up-to-date view — freeing up time that can be used more efficiently elsewhere in the organisation.

With the right data being gathered from all areas of your company and then tracking and updating that skill data, you can get a complete overview of what your skills ecosystem looks like. AI can also augment internal skill data with public labour data to further enrich this data. It can also infer skills that someone may not have considered, for example completion of projects or make recommendations about development opportunities to build new skills.

High-quality data is key

AI is only as good as the data sources it works with. Give it inaccurate data, and you’ll get inaccurate results. AI, working at scale in your organisation, can drastically increase bias if it is modelled on biased or incomplete data. Before you even start giving your AI skill data to train on, you need to audit your data to ensure it’s as accurate and representative as possible.

At the same time, it’s essential to be mindful when choosing which data to collect — at TechWolf we mandate using non-invasive sources to avoid infringing on employee privacy, such as email, private chat or any other data sources that could be seen as prying. Of equal importance is being transparent with employees and other stakeholders on what data source is behind what insight.

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Statistics *Deloitte (2022) Building Tomorrow's Skills-based organization

Building trust in data

This builds trust in the skill data and the decisions it influences. Currently, 32% of business leaders don’t trust the information they have on their workers’ technical skills. This rises to 52% when looking at soft skills and human capabilities like emotional intelligence. Another aspect of building trust in your skill framework is to ensure your AI’s decisions are fully explainable and that you can clearly state where your data is coming from. Building trust is critical in order to encourage adoption and continual improvement.

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Using AI while interviewing at Techwolf

At TechWolf, we see generative AI as part of the modern toolkit — and we expect candidates to treat it that way too. We love it when people use AI to take their thinking to the next level, rather than to replace it.You are welcome to use tools like ChatGPT, Claude, or others during our interview process, especially in take-home assignments or technical exercises. We encourage you to bring your full toolkit — and that includes AI — as long as it reflects your own thinking, decisions and creativity.We don’t see AI as replacing your skills. Instead, we’re interested in how you use it: to brainstorm ideas, speed up iteration, validate your thinking, or unlock new ways of approaching a challenge. Great candidates show judgment in when to rely on AI, how to adapt its output, and where to go beyond it.

What we’re looking for:

Our interviews are designed to understand how you think, solve problems, and express ideas. Using AI in a way that amplifies those things — not masks them — is encouraged.

What to avoid:

We ask that you don’t submit AI-generated work without review, or present answers that you can’t fully explain. We’re not testing the model — we’re getting to know you, your skills, and your potential. If there are cases where we don’t want you to use AI for something, we’ll tell you ahead of the interview being booked.In short: use AI as you would on the job — as a smart assistant, not a stand-in.

Example: Programming with AI

In a coding challenge, you’re welcome to use generative AI to support your workflow — just like you might in a real development environment. For instance, you might use AI to quickly generate boilerplate code, look up syntax, or get a first-pass solution that you then adapt and debug collaboratively. What we’re interested in is your ability to reason through trade-offs, communicate clearly, think about complexity and iterate effectively — not whether you memorized the syntax perfectly. If using AI helps you stay in flow and focus on higher-level problem-solving, we consider that a strength. There could be some challenges where we won’t allow you to use AI - in that case we’ll tell you in advance, and will tell you why.

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