Skills Architecture is the key to SBO – and AI is the tech enabler

Talent acquisition specialists are continuously challenged to match candidates with the right skills to positions that feed evolving business needs. Technology and data are the one-two punch that empowers HRs to do so effectively.

Skills Architecture: Building the SBO Foundation

A comprehensive skills architecture helps HR leaders start the process with a clear understanding of what skills are already within their talent pool and where the skills gaps lie so they can target the right candidates more quickly. 

As such, skills architecture acts as the blueprint that defines and structures the skills within an organization, unifying skills language and moving beyond traditional job descriptions to establish an agreed-upon nomenclature. It’s the foundation on which a centralized Skills-Based Organization is built, pulling together skills data across teams to form a larger, more strategically malleable view.

“We’ve always historically said that this system doesn’t talk to this system, and this system doesn’t talk to this system, and the spaghetti plate of systems is what disables us from getting data or from making informed decisions that are embedded and rooted in true data and analytics,” says Sadia Ayaz, VP of Talent Management for Veolia. “Here we are today, capable of doing that. AI can take all of that unstructured data and make sense of it.” 

AI: The SBO Tech Enabler

AI’s machine learning algorithms and expedited data analytics are the technological backbone of a sophisticated skills architecture. This is due to its ability to: 

  • Ingest vast datasets to identify both existing and emerging skills within an organization 
  • Detect patterns and trends, allowing HRs to stay ahead of critical skill gaps or areas that require upskilling
  • Reveal hidden talent within an existing workforce, uncovering internal job candidates for consideration

Beyond talent acquisition, AI-driven technologies also fortify talent management strategies in a Skills Based Organization. Through personalized learning paths and recommendations, AI enables employees to acquire new skills in alignment with organizational goals, while also benefiting from individualized professional development. 

By harnessing the power of AI to construct a detailed and dynamic skills architecture, and engaging AI as the tech enabler for a successful Skills-Based Organization, HRs can hire and retain the right talent to fuel an SBO workforce model. Synergy between skills architecture and AI is the cornerstone of shaping the future of talent acquisition and organizational success.

Learn more about the power of retrain.ai’s Talent Intelligence platform here.

Navigating The Promise And Peril Of Generative AI In HR

This article originally appeared in Forbes.

Language has long been the bedrock of our human world; it’s the collective operating system that powers the way we think, feel, interact and make sense of our surroundings. But with the rapid advancements in artificial intelligence (AI), language has also become a crucial interface bridging the gap between humans and machines. Particularly in the HR sector, this evolution comes with both significant opportunities and challenges.

Generative AI, designed to create content that mirrors humanlike patterns of speech and writing, is already beginning to transform HR operations. Leveraged responsibly, it has the power to augment the employee and candidate experience significantly, specifically enabling organizations to identify, attract and retain the best talent effectively while also supporting diverse workforce growth. Conversely, misuse or misunderstanding of these tools can lead to significant pitfalls, from spreading misinformation to challenging trust, authenticity and identity altogether.

The Promise Of Generative AI In HR

Firstly, let’s consider the potential benefits. Generative AI offers unprecedented efficiency and accuracy and can enable the automation of routine HR tasks like screening résumés, answering frequently asked questions and scheduling interviews. This automation not only saves HR professionals’ valuable time but also minimizes the risk of human error, enhancing the fairness and accuracy of these processes.

Organizations are increasingly taking advantage of generative AI for these specific action items in the pre-employment phase. In a recent Littler study, among respondents whose organizations said they are deploying AI and data analytics in workforce management, nearly 70% reported using AI and analytics tools in the recruiting and hiring process.

Secondly, generative AI is a potent tool for improved decision-making. By analyzing patterns and predicting trends, it can generate actionable insights to empower more informed HR decisions. For instance, a generative AI solution could help identify which candidates are most likely to excel in specific roles or flag employees who might be on the verge of seeking new opportunities.

Lastly, generative AI can personalize the HR experience. By understanding individual preferences and needs, it can tailor communications and recommendations, offering a more customized, engaging experience for employees and candidates alike.

The Perils Of Generative AI In HR

However, the advent of generative AI in HR is not without its hazards, most notably the significant risk of misinformation. So concerning is this risk that according to Gartner, by 2027, 80% of enterprise marketers will establish a dedicated content authenticity function to combat misinformation and fake material.

In HR, for example, this could mean an AI system inadvertently disseminates incorrect or outdated information about a company’s policies or job roles, leading to a ripple effect of confusion and potentially serious legal complications.

In addition, bias remains a thorny issue. AI models learn from existing data, which may unintentionally reflect historical biases. Without careful management, these AI systems have the potential to perpetuate these biases, leading to skewed hiring or promotional decisions.

Moreover, privacy and trust are critical concerns. The use of AI in HR often involves collecting and analyzing personal data, which raises privacy questions. As has been emphasized by increasing AI regulations, organizations need to be transparent about their AI usage and take robust measures to protect employee and candidate data.

Lastly, the issue of authenticity and identity cannot be ignored. The line between human and machine interactions becomes blurry with AI. If a candidate interacts with a generative AI system during the recruitment process, they may question whether their responses are genuinely understood or valued. Again, the onus is on the organization to quell these concerns as part of transparent candidate communications.

Navigating The AI Landscape In HR

As we traverse this new landscape, it’s essential to use generative AI tools in HR responsibly. Transparency, fairness and privacy should be the cornerstones of any AI implementation strategy. It’s also crucial to recognize that AI does not make for a “set it and forget it” scenario. Organizations must continually monitor and adjust AI systems to prevent the potential spread of misinformation and the unintended perpetuation of bias.

The future of HR is undeniably intertwined with generative AI. Despite its many benefits, there is still no substitute for the human touch, especially in a field as people-centric as HR.

As we integrate these powerful tools into our HR practices, we must do so with our eyes wide open, keeping in mind that AI should augment human capabilities, not replace them. Maintaining this balance is key to harnessing the promise of AI while avoiding its perils.

 

retrain.ai is a Talent Intelligence Platform designed to help enterprises hire, retain, and develop their workforce, intelligently. Leveraging Responsible AI and the industry’s largest skills taxonomy, enterprises unlock talent insights and optimize their workforce effectively to hire the right people, keep them longer and cultivate a successful skills-based organization. retrain.ai fuels Talent Acquisition, Talent Management and Skills Architecture all in one, data-driven solution. To see retrain.ai in action, book a demo.

What are the steps to become a Skills-Based Organization?

Our previous post discussed the key benefits of transformation into a skills-based organization, including agility, adaptability, talent optimization, employee engagement and DEI support. So how does an enterprise make the shift to an SBO model?

Here are five key steps:

  1. Skills Assessment. An enterprise’s first step is determining which skills are already in its workforce. A comprehensive skills inventory can be built using skills assessment tools, self-assessment questionnaires, and feedback mechanisms to capture the diverse skill sets present within the organization.
  2. Skills Mapping. Next, HR leaders need to identify the critical skills required for each role and project within the organization, mapping the existing employee skills against these requirements to identify skill gaps and potential opportunities for upskilling or reskilling.
  3. Skills Development. To engage employees in the process, enterprises need to create a culture of continuous learning and skill development, offering training programs, mentoring opportunities, and access to relevant resources. HR leaders can then encourage employees to take ownership of their skills development and provide avenues for them to showcase their skills within the organization.
  4. Skills-Based Hiring and Talent Mobility. Transitioning to an SBO model needs buy-in across the board, meaning hiring practices must focus on skills rather than traditional job titles, skills-based assessments and interviews are used to identify best-fit candidates, and employees are empowered to move across teams and projects based on their skill sets and interests.
  5. Technology Enablement. Leveraging Responsible AI-driven HR technologies can facilitate skills tracking, mapping, and matching at scale. Enterprises must invest in tools that allow employees to showcase their skills, create skill-based profiles, and connect with others via an internal talent marketplace.

retrain.ai is a Talent Intelligence Platform designed to help enterprises hire, retain, and develop their workforce, intelligently. Leveraging Responsible AI and the industry’s largest skills taxonomy, enterprises unlock talent insights and optimize their workforce effectively to lower attrition, win the war for talent and the great resignation. retrain.ai fuels Talent Acquisition, Talent Management and Skills Architecture, all in one, data-driven solution. To see it in action, request a demo.

Disruption That’s Here to Stay: Skills Language & Talent Intelligence 

Across industries, the state of workforce management has been rocked by perpetual change over the last three years. If one truth has arisen from trends like the war for talent and the great resignation, it’s this: People are an organization’s greatest asset. 

Without the right people in best-fit roles, businesses risk obsolescence in a competitive landscape driven by new and evolving in-demand skills. So real is the challenge, a majority of CEOs have reported that the ability to hire and retain skilled talent is their most critical barrier to achieving growth.

Unified Language: The Importance of Skills

For HR leaders, the new world of work demands that talent have the specific capabilities needed in order to succeed in their role. Gone are the days of impressive titles or degrees; in-demand skills are what make or break recruiting efforts. Internal mobility is forever changed as well, with the upward professional ladder climb giving way to a more agile rock wall where skills-based opportunities can come from any direction in a myriad of forms. Roles, projects, gigs, mentorships, learning pathways–all are integral parts of today’s professional development spectrum.

AI: The Rise of Talent Intelligence

To break down every open role and job description into skills needed, or to scan every CV into skills language, would take a traditional HR team more hours than are even close to possible. Yet having a clear understanding of what skills they already have in their workforce, where the skill gaps are located, and which internal or external candidates can bring those skills to the table is critical to future-proofing their organization.

To both expedite the process, and to do so with granular precision, HR innovators are increasingly implementing talent intelligence solutions

What is Talent Intelligence?

Talent intelligence is AI-driven technology that unifies, organizes and interprets a company’s internal data, and combines it with external data on market trends,  emerging skills and labor statistics  in a way that informs and empowers HR leaders to make better workforce planning business decisions. Similar to the groundbreaking capabilities demonstrated by ChatGPT, talent intelligence uses generative AI with similar language processing technology, but expands on the model to provide a fully explainable enterprise-level solution. Built on ethical, Responsible AI means such solutions actively mitigate the risk of unintended bias seeping into machine learning cycles, which can derail DEI hiring practices. 

AI-driven Talent Intelligence and Skills Matching

Using talent intelligence to synthesize the combination of AI capabilities and skills-focused workforce development empowers HR leaders to make faster, better business decisions.

Skills Architecture

Making the best decisions around hiring and internal mobility means HR leaders need to have a clear, granular view of what capabilities their employees have, where the skills gaps lie, and how to future-proof their workforce through developing talent.

Using AI-driven talent intelligence to skills-map an enterprise workforce, HRs can establish unified skills language and an agreed-upon skills framework. Matching it with data insights, they can then align talent decisions with organizational goals.

Talent Acquisition

It’s estimated that in the U.S., it takes more than a month to fill an open position–and that on average, an HR leader must review more than 150 CVs for a single role. Multiply that across a large hiring initiative and there’s a very real cost to an enterprise, including recruiting expenses, time invested by departmental leaders and managers in supporting the hiring process, and the productivity disruption of a prolonged vacancy.

AI-driven talent intelligence helps HRs zero in on best-fit candidates more quickly by analyzing applicants at an atomic level, breaking down their talents into individual skills. Matching applicants with open opportunities, roles or projects based solely on skills means HR leaders can link candidates to best-fit roles with room to grow; and they support DEI goals by eliminating demographic or other information that can introduce unintended bias into the equation.

Talent Management 

As millions of workers quit their jobs during the Great Resignation, one reason continually showed up in the research: Lack of opportunity for advancement. Put simply, at a time when there are more open roles than there are candidates going after them, HR leaders must strategize how to provide employees with a vision for future opportunities that will utilize, challenge and develop a worker’s skills.

AI-driven talent intelligence gives HRs a watchtower view of their workforce, including a granular understanding of employees’ strengths, skills gaps, potential capabilities and hidden talents. Fueled by these insights, HR leaders can provide their talent with personalized career pathing, internal mobility opportunities including roles, projects, gigs and mentorships–providing the kind of positive, proactive employee engagement that’s more likely to retain valuable talent. 

 

retrain.ai is a talent intelligence platform designed to help enterprises hire, retain, and develop their workforce, intelligently. Leveraging Responsible AI and the industry’s largest skills taxonomy, enterprises unlock talent insights and optimize their workforce effectively to lower attrition, win the war for talent and the great resignation in one, data-driven solution. To see it in action, request a demo