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Beyond Hiring Metrics: Developing a Holistic Approach to Measure Quality of Hire
CATALYST CENTER FOR WORK INNOVATION
5 hours ago
7 min read
Collaborating with People You Don't Like
RESEARCH BRIEFS
1 day ago
7 min read
HR's Vital Role in Advocating for and Protecting Employees in an Unhealthy Workplace
ADAPTIVE ORGANIZATION LAB
2 days ago
6 min read
Reaching Untapped Talent: Strategies for Identifying and Developing High Potential Employees
CATALYST CENTER FOR WORK INNOVATION
3 days ago
7 min read
Unlocking Human Potential: A Practitioner's Guide to Motivation Theory in Organizational Settings
RESEARCH BRIEFS
4 days ago
8 min read
Advancing Data Literacy for Better Problem-Solving
CATALYST CENTER FOR WORK INNOVATION
5 days ago
5 min read
Work-Related Factors and Cognitive Health: Evidence-Based Insights for Organizational Practice
CATALYST CENTER FOR WORK INNOVATION
6 days ago
31 min read
A Shorter Workweek as a Policy Response to AI-Driven Labor Displacement: Economic Stabilization in the Age of Automation
NEXUS INSTITUTE FOR WORK AND AI
Feb 9
26 min read
Design Thinking: An Essential Framework for Innovating in Uncertain Times
CATALYST CENTER FOR WORK INNOVATION
Feb 8
8 min read
Leaders Who Don't Listen: An Ongoing Organizational Struggle
CATALYST CENTER FOR WORK INNOVATION
Feb 7
7 min read
Human Capital Leadership Review
Beyond Hiring Metrics: Developing a Holistic Approach to Measure Quality of Hire
CATALYST CENTER FOR WORK INNOVATION
5 hours ago
7 min read
Collaborating with People You Don't Like
RESEARCH BRIEFS
1 day ago
7 min read
HR's Vital Role in Advocating for and Protecting Employees in an Unhealthy Workplace
ADAPTIVE ORGANIZATION LAB
2 days ago
6 min read
Reaching Untapped Talent: Strategies for Identifying and Developing High Potential Employees
CATALYST CENTER FOR WORK INNOVATION
3 days ago
7 min read
Building Olympic-Caliber Teams in the Age of AI
4 days ago
4 min read
Unlocking Human Potential: A Practitioner's Guide to Motivation Theory in Organizational Settings
RESEARCH BRIEFS
4 days ago
8 min read
How to Design a Benefits Package That Actually Attracts Gen Z Talent
5 days ago
4 min read
The Top U.S. States Where Work Stress Is Driving Early Aging, According to New Study
5 days ago
6 min read
Nearly 1 in 10 U.S. Workers Admit to a Workplace Affair in the Past Year, New Data Reveals
5 days ago
4 min read
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HCL Review Research Videos
Human Capital Innovations
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16:17
A Conversation about AI-Washing and the Phantom Productivity Paradox
This conversation explores the rising trend of AI-washing, a practice where executives falsely attribute workforce reductions to artificial intelligence to mask traditional cost-cutting motives. Research indicates a significant misalignment between the massive surge in AI-related layoffs and the actual, limited deployment of functional automation technology. These premature staff cuts often lead to institutional knowledge loss, diminished employee trust, and a long-term decline in innovation capacity. The conversation argues that organizations should instead view technology as a complement to human expertise through transparent communication and robust upskilling initiatives. Ultimately, sustainable success depends on evidence-based integration rather than using speculative automation as a convenient rhetorical shield for restructuring. See Privacy Policy at https://art19.com/privacy and California Privacy Notice at https://art19.com/privacy#do-not-sell-my-info.
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13:57
The Missing Piece Org Design for Scalable Agentic AI
This video explores the innovative approach of agentic AI, where multiple specialized AI agents collaborate as a team to accomplish complex tasks more efficiently than a single large AI system. This method draws inspiration from human organizational structures, emphasizing the importance of coordination and communication among agents. However, as the number of agents increases, the system faces challenges such as communication breakdowns, duplicated efforts, confusion, and rising costs. These issues mirror long-standing problems in human organizations as they scale. The key to overcoming these problems lies not in making individual AI agents smarter but in designing better organizational structures for their interactions. Highlights 🤖 Agentic AI uses many specialized AI agents working together instead of one large AI. 🧩 Coordination breaks down as agent numbers grow, causing inefficiency and errors. 🏢 Organizational design, not just smarter agents, is key to scaling AI systems. 📊 Span of control principle limits how many agents a single manager can effectively oversee. 📄 Boundary objects serve as structured, shared tools for clear communication between agents. 🔗 Managing task coupling balances communication needs and autonomy for efficiency. 🚀 Hierarchical AI teams with middle managers improve scalability, reduce costs, and boost reliability. Key Insights 🤝 Agentic AI draws directly from human organizational principles: The challenges faced by growing teams of AI agents mirror those long known in human organizations, such as communication overhead, coordination problems, and managerial bottlenecks. This parallel suggests that effective AI system design should leverage established management theories rather than solely focusing on technological advancement. Understanding this connection provides a roadmap for building scalable AI teams by adapting proven organizational structures. 🧠 Intelligence of individual agents is insufficient without smart team design: Simply improving the capabilities of each AI agent does not solve systemic issues arising from poor interaction design. The intelligence of the collective depends heavily on how agents communicate, delegate, and coordinate their work. This shifts the focus from isolated AI research to interdisciplinary approaches involving organizational behavior, systems engineering, and human factors. 📏 Span of control limits are critical for AI team performance: Research in human organizations shows that managers can effectively oversee only about five to seven direct reports. Applying this to AI means no single orchestrator should manage dozens or hundreds of agents directly. Ignoring this leads to overwhelmed orchestrators, excessive communication costs, and fragile systems prone to failure. Designing hierarchical layers with middle managers empowers better focus, delegation, and error containment. 🗂 Boundary objects reduce ambiguity and improve communication efficiency: By replacing unstructured chat with structured, shared artifacts, AI agents gain a common reference point that streamlines information exchange. This approach makes handoffs explicit, reduces misunderstandings, and creates an auditable workflow. It also respects AI context window limitations by distilling only relevant data, mitigating hallucinations and costly errors. 🔄 Calibrating coupling between tasks optimizes collaboration: Recognizing when tasks require tight integration versus independent parallel work prevents communication bottlenecks and integration failures. Highly coupled tasks demand frequent, synchronous interactions, while loosely coupled tasks benefit from autonomy and asynchronous checkpoints. This nuanced management of dependencies enhances system responsiveness and throughput. 🧩 Hierarchical team structures enhance robustness and scalability: Introducing middle manager agents creates manageable clusters of worker agents, simplifying communication pathways and enabling the top-level orchestrator to focus on strategic goals. This structure distributes coordination duties and localizes failures, making the system more resilient and cost-effective. If you found this useful, please like and share to spread the ideas. #AgenticAI #OrganizationalTheory #MultiAgentSystems #AIorgDesign #SpanOfControl OUTLINE: 00:00:00 - Why Large AI Teams Fail 00:01:20 - Lessons From Organizations 00:02:42 - Managing Agent Span of Control 00:04:02 - Build Hierarchies That Scale 00:05:06 - The Power of Boundary Objects 00:06:40 - Boundary Objects in Action 00:07:56 - Calibrating Agent Interdependence 00:09:29 - Designing Checkpoints and Memory 00:11:01 - A Practical Guide for Leaders 00:13:03 - Review, Results, and Leader Playbook
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03:49
Organizational Design for Agentic AI
This research explores how organizational theory can solve the coordination failures currently hindering multi-agent AI systems. While modern AI agents are technically advanced, they often struggle with information degradation and excessive overhead when working in large groups. The research argues that developers should apply human management principles, such as span of control and structured communication protocols, to design more reliable hierarchies. By using boundary objects and calibrated coupling mechanisms, organizations can prevent the "telephone game" effect and improve token efficiency. Ultimately, the research suggests that the future of scalable AI depends on viewing these systems through the lens of organizational design rather than just technical capability. This shift in perspective aims to move agentic workflows from unreliable prototypes to stable, economically viable enterprise solutions.
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19:09
A Conversation about Organizational Theory as the Foundation for Agentic AI Systems
This conversation argues that the success of agentic AI systems depends more on organizational theory than on technical model improvements. As these systems expand to include multiple AI agents, they frequently suffer from coordination failures, information degradation, and excessive costs. To solve these issues, they suggest applying established human management principles, such as maintaining a limited span of control through hierarchical structures and using structured boundary objects for clearer communication. Calibrating how tightly these agents are linked and managing their information processing limits can prevent the "telephone game" effect that often ruins complex workflows. Ultimately, they posit that treating AI orchestration as an organizational design challenge is essential for building scalable, reliable, and economically viable automation. Transitioning from ad hoc prototypes to mature governance frameworks will allow enterprises to transform unpredictable agent swarms into high-performing digital teams. See Privacy Policy at https://art19.com/privacy and California Privacy Notice at https://art19.com/privacy#do-not-sell-my-info.
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03:52
The Gen Z ‘Work Ethic’ Myth
This video explores the growing narrative in many organizations about the apparent differences and challenges posed by the youngest generation of workers, primarily Generation Z. Leaders often perceive Gen Z employees as disengaged, entitled, and lacking a strong work ethic, which leads to frustration and quick turnover. However, the transcript argues that this narrative is overly simplistic and misguided. Instead of blaming individuals, organizations must recognize that the traditional workplace models, designed for a stable, predictable past, no longer fit the dynamic, fast-paced modern work environment shaped by technology, economic shifts, and the global pandemic. Highlights 🔍 Leaders often blame Gen Z workers for engagement issues without examining outdated management systems. ⚙️ Traditional workplace models no longer fit the rapidly changing, tech-driven work environment. 🔄 Younger employees expect nonlinear career paths, transparency, flexibility, and recognition. 🚪 High turnover among young workers leads to talent loss, increased hiring costs, and leadership gaps. 🔑 Radical transparency in communication builds trust and empowers employees. 📈 Career development should focus on skills and lateral moves, not just promotions. 🗓 Frequent, lightweight feedback replaces old annual review systems, emphasizing growth and coaching. Key Insights 🧩 Mismatch Between Workforce and Systems: The core issue is not the younger workers themselves but the friction between outdated organizational frameworks and modern workforce expectations. Traditional models emphasizing stability, hierarchy, and rigid career ladders fail to accommodate the dynamic, skill-centric approach that younger generations seek. This insight calls organizations to critically evaluate and redesign their systems to remain relevant and effective. 🔄 Nonlinear Career Expectations: Unlike previous generations who valued linear career progression, Gen Z prioritizes a nonlinear trajectory that includes lateral moves, skill acquisition, and varied experiences. Organizations that continue to reward only upward mobility risk alienating their youngest talent. Embracing this shift requires redefining success and advancement criteria to include diverse developmental pathways. 💬 Radical Transparency as a Trust Builder: Transparency is positioned not merely as openness but as a strategic tool to build trust and enhance performance. Sharing the rationale behind decisions, making data and progress visible, and creating safe avenues for feedback transform employee engagement. This approach empowers workers to feel valued and involved, which directly counters feelings of disengagement. 🚪 Talent Attrition and Organizational Cost: The revolving door phenomenon among young employees has significant repercussions. Beyond the obvious recruitment and onboarding expenses, losing early-career talent erodes the leadership pipeline. This creates a vacuum of skilled leaders familiar with company culture and processes, which may lead to instability and reactive management. Preventing attrition is thus a critical strategic priority. 📊 Skills-Based Career Development: Moving away from seniority-based growth to frameworks centered on skills, capabilities, and demonstrated performance allows organizations to align more closely with contemporary workforce values. Co-creating skills matrices and offering multiple ways to demonstrate competence (projects, simulations) make career progression more transparent and attainable, enhancing motivation and retention. 🛠 Frequent, Lightweight Feedback Mechanisms: Annual performance reviews are increasingly outdated, especially for younger workers who seek continuous development and immediate recognition. Implementing regular check-ins focused on short-term goals and separating coaching from compensation discussions fosters a growth mindset and more agile professional development, leading to higher engagement and productivity. 🎯 Designing Flexibility by Default: Rather than enforcing rigid schedules or processes, focusing on outcomes allows for flexibility in how work is performed, which aligns well with younger generations’ preferences for autonomy and work-life balance. This shift can improve job satisfaction, reduce burnout, and attract talent looking for adaptable environments. If this helped, please like and share! #GenZ #Workplace #Leadership #HR #FutureOfWork #EmployeeEngagement OUTLINE: 00:00:00 - The Question We Keep Asking 00:00:35 - Old Systems, New Workers 00:01:17 - The Real Cost of Doing Nothing 00:02:06 - Fixes 1–3 00:02:59 - Fixes 4–5 and A Path Forward
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03:02
Structural Evolution - Redesigning Work for All Generations
This research explores the generational friction occurring as Generation Z enters a workforce still governed by legacy organizational structures. Rather than viewing the perceived lack of commitment from younger staff as a personal defect, the analysis suggests these tensions stem from a structural misalignment between outdated corporate systems and the needs of modern knowledge work. To address issues like high turnover and leadership shortages, this research advocates for an evolution toward transparency, competency-based progression, and flexible work designs. Implementing these evidence-based interventions allows organizations to transition from control-oriented models to dynamic environments that prioritize skill development and meaningful contribution. Ultimately, this research argues that modernizing the psychological contract between employers and employees fosters long-term innovation and stability for all generations.
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03:59
AI Isn’t Replacing You—It’s Rewriting Your Job
Artificial intelligence (AI) is profoundly reshaping the world of work, simultaneously automating certain tasks and augmenting others. This dual nature means that AI is neither simply a job killer nor an outright job creator, but rather a force that transforms job roles by eliminating some tasks while creating new, more valuable ones. For instance, an office assistant’s role might see scheduling meetings fully automated, but tasks involving data interpretation and strategic decisions still rely on human judgment. Research analyzing millions of job postings from 2020 to 2025 reveals that skills associated with automation, such as basic data entry and routine scheduling, are declining sharply, while skills linked to augmentation, like critical thinking, problem-solving, and relationship management, are on the rise. Highlights 🤖 AI acts as a dual force in the workplace, both automating and augmenting tasks simultaneously. 📉 Demand for skills tied to routine, automatable tasks is declining sharply. 📈 Skills related to critical thinking, problem-solving, and interpersonal management are increasing in demand. 👥 AI impacts workers unevenly, creating opportunities for some while increasing vulnerability for others. 🧑💼 26.5 million workers have high AI exposure but strong capacity to adapt and thrive. ⚠️ 6.1 million workers face high exposure but low capacity to adapt, risking widening inequalities. 🛠️ Companies must go beyond AI adoption to redesign jobs, invest in training, and enable humans to work effectively alongside AI. Key Insights 🤖 AI’s Dual Impact Requires a Balanced Perspective: AI does not simply replace human labor nor does it only enhance it. Instead, it transforms job roles by automating routine tasks and augmenting complex, human-centered activities. This nuanced understanding helps organizations and workers prepare for a blended future of collaboration with AI, rather than fearing outright job loss or assuming guaranteed job creation. 📊 Labor Market Data Confirms Skill Polarization: Analysis of millions of job postings highlights a clear trend: skills exposed to automation are rapidly losing demand, while those tied to augmentation are increasing. This polarization signals a need for workforce development strategies centered on critical thinking, emotional intelligence, and adaptability—skills that AI cannot easily replicate. 🔄 Jobs Are Being Rewritten, Not Erased: The example of an office assistant demonstrates that jobs evolve rather than vanish. Automation takes over predictable tasks like scheduling, while humans focus on interpreting AI outputs, making strategic decisions, and managing relationships—activities requiring judgment and emotional intelligence. This redefinition of job roles is crucial for workers’ continued relevance. ⚖️ Unequal Exposure and Adaptability Create Workforce Divides: The labor force is divided into groups with markedly different risks and opportunities regarding AI. Workers with transferable skills and economic buffers can adapt and benefit, while those with fewer resources and skills are vulnerable. This divide risks exacerbating existing social inequalities, especially among older workers and women in clerical roles. 💼 Strategic Workforce Planning Is Essential: Companies must move beyond viewing AI as a mere cost-cutting tool. Instead, they should leverage AI to enhance productivity and elevate human contribution. This involves transparent communication about AI’s role, fostering fairness and employee input, and emphasizing skill development and job redesign that complement AI capabilities. 🎯 Training Must Be Task-Specific and Forward-Looking: Investing in targeted, task-specific training that builds durable human skills like communication, leadership, and critical thinking is vital. These skills not only complement AI but also provide workers with adaptability in a rapidly changing labor market, ensuring resilience against future technological disruptions. 🤝 Human-AI Collaboration Is the Future: The evolving work landscape requires humans to adopt a mindset of curiosity and collaboration with AI tools. By embracing AI as an augmenting partner rather than a threat, workers can unlock greater productivity and creativity, making work more meaningful and impactful. Organizations and individuals alike must cultivate this synergy to thrive in the AI-augmented economy. #AI #FutureOfWork #Automation #Augmentation #WorkforceResilience OUTLINE: 00:00:00 - The Dual Nature of AI in the Workplace 00:00:41 - Inside One Role — How Tasks Get Rewritten 00:01:23 - Evidence — Automation and Augmentation in Data 00:02:13 - Who Is Most Affected? — A Tale of Two Workforces 00:02:59 - Redesigning Work and How Workers Can Thrive
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04:16
The Dual Transformation of Work
This research explores how artificial intelligence is simultaneously automating routine tasks and augmenting complex human capabilities within the same occupations. While many high-income professionals possess the financial resources and transferable skills to adapt to these shifts, a significant group of administrative and clerical workers faces high exposure with limited support. This bifurcation of vulnerability suggests that AI is not simply replacing jobs but is fundamentally reconfiguring work content and skill requirements. Organizations can manage this transition by implementing transparent communication, work redesign, and targeted training programs. Ultimately, this research argues for proactive policy and organizational strategies to build long-term resilience as AI reshapes the labor market.
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Apr 29, 2025
6 min read
NEXUS INSTITUTE FOR WORK AND AI
Power Skills in the Age of AI
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