Tag: corporate coaching

  • When Business Accounts Become Mules: The New Battlefield in Financial Fraud

    When Business Accounts Become Mules: The New Battlefield in Financial Fraud

    For some time now, the “money mule” typologies have largely involved vulnerable individuals who were persuaded or coerced into moving illicit funds. Today, that typology is shifting into exploiting legitimate business current accounts, especially those belonging to MSMEs, to layer and route illicit funds at scale. This evolution is not just tactical; rather, it represents a well thought out reconfiguration of how criminal networks exploit the trust fabric underpinning the financial system.

    Recent cases reported across Indian banks highlight how MSME accounts are being hijacked, rented, or compromised to facilitate fast-moving, high-velocity transfers. This trend is accelerating, and financial institutions must re-evaluate their fraud detection and prevention strategies before systemic trust erodes any further.


    Business Accounts – New Mule Infrastructure

    1. Higher Transaction Thresholds

    Business current accounts routinely handle large-value transactions. A ₹3-5 lakh credit in an MSME account appears routine, whereas the same amount would seem anomalous in a retail account. This gives fraudsters a degree of anonymity through normalcy.

    2. Legitimacy and Established History

    Contrary to newly opened personal bank accounts, corporate entities generally come with a certain level of banking history, GST filings, payroll patterns, and vendor relationships. This legitimacy provides the necessary camouflage for fraudsters to move funds through current accounts.

    Often attributed as “Rent-a-Current-Account” model, struggling businesses, especially those with credit stress, rent their accounts for commissions where funds are layered through vendors, wallets, and forex channels before exiting the system.

    3. Lower Behavioural Predictability

    MSME activities differ dramatically across sectors based on their seasonality, client mixes, and growth cycles. This diversity makes it difficult for traditional transaction monitoring systems to establish a baseline for what “good” account behavior looks like.

    4. Insider or Peripheral Collusion

    Fraudsters capitalize on dormant partners, distressed business owners, accountants, or even compromised vendor relationships. In other cases, attackers gain access through identity compromise, or invoice-manipulation attacks.

    Criminal networks now favor “fewer, high-trust mule accounts” over a network of small retail mules, allowing them to transfer larger volumes with reduced exposure.

    5. Account Takeover via Business Email Compromise

    Cybercriminals compromise corporate email systems, intercept invoices, alter payment instructions, and quietly redirect funds into compromised or rented business accounts.

    6. Shell Firms Masquerading as Genuine MSMEs

    Criminals create fully documented shell companies, complete with incorporation proofs, basic trade activity, and GST registrations, to simulate legitimacy while acting as laundering pipelines.

    The common thread across all three is the exploitation of blind spots within traditional bank surveillance and due diligence procedures.


    Why Traditional Controls Fail

    1. Static KYC cannot keep up with dynamic risk

    KYC establishes identity at the time of onboarding or during periodic refresh, but businesses often evolve faster than the KYC cycle, sometimes into riskier entities. Without dynamic risk-refresh mechanisms or perpetual KYC procedures, banks remain blind to behavioural drift.

    2. Typical transaction monitoring typologies not designed for MSME complexity

    Rule-based transaction monitoring engines falter with MSMEs whose cash flows are non-linear, seasonal, and shaped by sector dynamics. As a result, generic rules either flood systems with false positives or miss detecting targeted mule activity.

    3. Lack of entity-resolution across accounts & identities

    A business is not a single account, rather it is an ecosystem of promoters, directors, accountants, devices, IPs, and counterparties. Legacy systems struggle to connect these signals and form a unified risk picture, analyzing each data point in isolation which creates blind spots that delay detection and prevents banks from recognizing coordinated or evolving threats across the wider business ecosystem.

    4. Limited Visibility Beyond the Bank’s Perimeter

    Fraud patterns often spread across institutions, but without consortium-level intelligence or federated learning programs, these signals stay under the radar. Fraudsters take advantage of this fragmentation, moving quickly between institutions to stay ahead of detection.


    Building Models that work – Our Perspective

    The surge in business-account mule activity highlights a crucial industry lesson: fraud cannot be solved through transaction monitoring alone. Detecting mule behavior, particularly in corporate accounts, requires multi-dimensional intelligence that connects digital signals, human context, and behavioural narratives.

    Karmine’s perspective centers on four essential pillars.

    1. Customer 360° : Moving Beyond Fragmented Risk Views

    A robust Customer 360° framework brings together identity, device, and behavioural signals across both retail and corporate profiles and integrates fraud and AML so that indicators such as account-takeover attempts or suspicious logins strengthen AML risk scoring. It also incorporates network-level intelligence to reveal links to shell firms, risky beneficiaries, or high-velocity counterparty rings.

    Traditional systems often treat fraud and AML as separate domains, even though mule activity sits directly at their intersection. A single, entity-level view can uncover risk patterns that often get missed in siloed systems.

    Only when a bank views the business as a single, holistic entity, rather than as a collection of accounts, can mule activity be detected in time.

    2. Early Risk Signals Appear Long Before Transactions Do

    Documentation inconsistencies, KYB anomalies, and behavioural red flags often emerge months before any transactional anomalies surface. These early signals provide valuable insight into whether a business is stable, legitimate, and operating as declared.

    Examples include mismatches between the stated nature of business and actual financial flows, templated or recycled incorporation documents, unexplained changes in ownership or authorized signatories, and income lines or operational footprints that do not match the speed of fund inflows. These indicators often hold predictive value and can highlight elevated risk before money movement becomes suspicious.

    To use this intelligence effectively, banks must integrate these non-transactional signals into their ongoing monitoring processes. When onboarding and KYB data is treated as one-time paperwork instead of continuous risk input, institutions lose early warning capabilities that can prevent misuse long before transactional behavior deteriorates.

    3. Relationship Managers – crucial interpreters of customer behavior

    For corporate and MSME segments, Relationship Managers (RMs) are a primary source of contextual understanding. They know their clients’ operational realities, seasonality, and market cycles, yet in most banks the RM layer remains disconnected from fraud and AML signals.

    To be effective, RMs need the ability to spot deviations between expected business behavior and actual transaction flows, escalate sudden shifts in volume, beneficiaries, or geographies, and validate whether a company’s banking behavior aligns with the patterns observed. Digital intelligence can detect anomalies, but only human context can explain them.

    4. Strong, Continuous KYC/KYB – A Non-Negotiable

    The shift from a legitimate business to a mule entity is often gradual, which makes static KYC frameworks insufficient on their own. A more continuous, risk-based KYB approach is needed, where updates are prompted by behavioural changes rather than waiting for a scheduled refresh.

    In practice, this means keeping an eye on sector-specific cash-flow patterns, checking whether the business model still appears viable, and periodically validating key details such as income sources, counterparties, staffing, and day-to-day operations. Simple, contextual risk scoring can help highlight when a business begins to deviate from its usual activity. In this model, understanding how a business operates becomes just as important as confirming who owns it.


    How Karmine Consulting can help

    For banks dealing with MSME portfolios, the real challenge is not just detecting mule accounts but understanding where and why the current system is blind. As a boutique AFC consulting firm, we aid institutions across some of their core considerations:

    • Governance & Risk Profile: Build a sharper, enterprise-level view of their MSME mule risk profile by identifying which sectors, clusters, ownership patterns, and transaction behaviors create the highest exposure.
    • Data: We aid in mapping data landscape end-to-end, assessing where relevant signals sit across KYC, GST data, account behaviors, trade documents, RM logs and counterparty flows and how much of this can be orchestrated to strengthen detection without waiting for multi-year modernization.
    • Process: We help refine processes for faster identification and cleaner reporting, redesign accountability structures across the three lines of defense, and define the RM/analyst skill sets needed to distinguish legitimate MSME churn from mule activity.
    • Tech: Finally, we help banks pinpoint the exact tech investments that will move the needle across entity resolution, network-graph analytics, document forensics, or continuous-KYC triggers.

    Through our interventions, we help ensure institutions build a scalable, intelligence-led MSME mule-detection capability rather than repurposing retail-focused controls

  • From Resistance to Readiness: Shaping AI-Confident Workforces

    From Resistance to Readiness: Shaping AI-Confident Workforces

    Artificial Intelligence has moved from being a buzzword in boardrooms to a daily reality in workplaces, from streamlining operations and assisting with customer service to powering creative brainstorming. As generative and agentic AI integrate into workflows, the success of AI doesn’t hinge on having the most advanced model – it depends on people. Without readiness, even the slickest of tech can fall flat. The World Economic Forum highlights that while AI could create as many as 170 million jobs by 2030, around 92 million may be displaced in the same period. These shifts show that building AI-confident workforces isn’t just about technology – it’s a human capability and cultural priority essential for navigating both opportunity and disruption.

    The Human Side of AI Adoption

    AI is already at scale. IBM’s Global AI Adoption Index 2023 reports that 42% of enterprises have implemented AI, and another 40% are experimenting. Yet many employees still approach AI with hesitation. An EY study found that 71% of U.S. employees worry about AI, nearly half reporting increased concern over the past year. Three-quarters fear job loss, and 65% doubt their current roles will survive. These concerns are widespread and cannot be ignored.

    Resistance stems from uncertainty and overwhelm – employees question whether AI might make their roles redundant, if they can master unfamiliar tools, or whether using AI will be seen as taking shortcuts. This reflects not just skill gaps, but a lack of confidence and cultural readiness. IBM’s AI Readiness Index shows less than half of companies feel prepared for widescale integration. Organisations ignoring this emotional layer risk stalled adoption and derailed transformation.

    Readiness is not about buying software licenses; it’s about building behavioural and cultural foundations that help employees feel capable and safe to use AI. With AI advancing rapidly – 44% of core skills expected to be disrupted within five years (WEF) – organisations must turn resistance into readiness, shifting the focus from “Can we implement AI?” to “Can our people embrace it?” By fostering curiosity, resilience, and behavioural competencies, employees to grow alongside AI, boosting adoption, and creating agile, innovative, and future ready workforce.

    Mindset Shift: From Resistance to Innovation

    Shaping an AI-confident workforce requires a deliberate mindset shift. Employees must be geared towards perceiving AI as an enabler, and not as a competitor. Storytelling plays a big role here, sharing examples of how AI has solved customer pain points, reduced tedious tasks, or unlocked creative potential. When employees experience tangible wins, their resistance gives way to curiosity.

    This cultural shift has been particularly visible in organisations like HCLTech, where large-scale reskilling efforts have been undertaken, with the premise that “AI is being introduced as a co-pilot to augment human capabilities, not replace them” This lays emphasis on upskilling employees to take on higher-value tasks. The framing of AI as a colleague at the workplace, rather than a rival helps employees embrace the technology more readily.

    Embedding Social & Experiential Learning

    Traditional training – static modules, one-off workshops, or lengthy e-learning courses – focuses on information transfer but rarely supports habit-building or real-world confidence. That’s why many employees end up tuning out. A study on Microsoft 365 Copilot found employees often skipped formal onboarding videos, preferring hands-on use and peer discussions. This highlights a broader truth: people build confidence with AI not by passively consuming information, but by experimenting, sharing insights, and reflecting together.

    Hands-on experience with AI, especially its limitations, fosters realistic expectations and trust, particularly when supported by peer networks and champions. Organisations that translate these insights into governance structures achieve more sustainable adoption. AI readiness evolves through cycles of individual understanding, social learning, and organisational adaptation. These insights suggest that organizations should approach AI adoption not as a one-time implementation but as an ongoing strategic learning process that balances innovation with practical constraints.

    For organisations, this means shifting from one-off training modules to a more dynamic approach: creating opportunities for collaborative experimentation, peer-to-peer learning, and coaching. When employees can practice, question, and learn from each other, AI adoption shifts from a top-down mandate to a shared journey of growth, making technology both accessible and meaningful.

    Building the Core Competencies

    So, what does it take to nurture an AI-confident workforce? The answer lies less in technical skills and more in behavioural competencies that prepare employees to work in dynamic, uncertain environments.

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    • Embracing Ambiguity and Change AI is evolving faster than any traditional business process. Employees who can handle ambiguity – who don’t freeze when outcomes are uncertain – are more likely to adapt successfully. When DHL introduced AI-enabled voicebots to handle customer instructions in Germany, employees who were open to change engaged with the technology as an assistant, while those resistant to ambiguity initially viewed it as an intrusion. Over time, the organisation supported the transition by framing AI as a tool to free up capacity rather than replace jobs.
    • Adaptability and Resilience Adaptability is the willingness to pivot, and resilience is the ability to bounce back after disruption. Together, they form the backbone of AI readiness. At Goldman Sachs, more than 10,000 employees began using the firm’s in-house AI assistant to streamline research, coding, and client communication. Rather than resisting, teams adapted quickly, experimenting with how AI could ease daily pressures while still validating outputs with their expertise. This balance of flexibility and discipline illustrates how adaptability and resilience help employees not just absorb new tools, but sustain performance during change.
    • Learning Agility Learning agility is the readiness to learn, unlearn, and relearn continuously. In environments where AI tools change every few months, this is essential. Microsoft’s developer study showed that over 75% of developers now use AI assistants regularly, and nearly 90% report feeling more productive. What drove adoption wasn’t formal training videos but the willingness to experiment, test, and learn in real time. Organisations that encourage small-scale experimentation and peer learning see faster adoption than those that rely on traditional classroom training alone.
    • Digital Confidence and Critical Thinking Confidence in using technology is about trusting oneself to explore, troubleshoot, and evaluate outputs critically. AI is powerful, but not always accurate. Employees with digital confidence and strong critical thinking skills are better at spotting errors, questioning biases, and deciding when human judgement must override machine recommendations. ANZ Bank conducted a six-week experiment with GitHub Copilot involving around 100 engineers, and the results showed a significant productivity increase-tasks were completed 42.36% faster by engineers using Copilot compared to those who did not. Alongside productivity, their ability to critically evaluate AI-generated code ensured quality didn’t suffer.
    • Creativity, Innovation and Growth Mindset Paradoxically, AI doesn’t diminish the importance of creativity – it amplifies it. With AI handling repetitive tasks, employees are freer to experiment and innovate. A growth mindset – the belief that skills can be developed through effort, helps employees view AI not as a threat but as an opportunity to push the boundaries of what’s possible. PwC Australia has shifted its recruitment criteria toward these human-centred qualities, such as curiosity, collaboration, and ethical judgment over traditional technical checklists. Their reasoning is simple: in a world where AI evolves daily, the best long-term asset is human adaptability, creativity and emotional intelligence.

    Collaborating with AI: Shaping New Working Models

    For AI to feel more approachable, it must weave into daily workflows in simple, meaningful ways – summarizing long reports, drafting emails, or assisting with research.

    Deloitte UK’s in-house AI chatbot, PairD, illustrates this: audit staff interacting with chatbot monthly rose from 25% to nearly 75% in a year, generating over 1.1 million prompts between April 2024 and February 2025. Employees use it not just for basic questions but to develop complex prompts, assisting with document summaries, coding, and data analysis. The focus is on freeing up time for deeper analytical work showing that AI’s value lies in hands-on, embedded collaboration.

    Agentic AI takes this further by acting semi-autonomously. Unlike reactive tools, it anticipates, flags errors, proposes next steps, and can carry out actions independently, like rescheduling shifts or managing interview schedule.

    McKinsey points out how agentic AI is reshaping talent workflows. Instead of waiting for recruiters to prompt each step, these systems can scan resumes, shortlist candidates, and even line up interview schedules on their own. What comes back to the recruiter isn’t raw data, but a refined set of options to review. This frees people to spend their energy where it matters most – making judgements, building connections, and applying empathy.

    Effective worker-AI coexistence depends on cultivating “agentic behaviours”: intentionality, proactivity, adaptability and collaboration. Embedding these behaviours ensures AI aligns with human values and business goals, turning technology from a tool into a true collaborator that amplifies productivity, innovation, and human judgment.

    Real-World Rewards of Building AI-Confident Workforces

    When employees embrace AI confidently, Worker-AI coexistence turns into more than faster work – it creates smarter, bolder, and more adaptable teams. The real gains appear in innovation, resilience, and a workforce ready for the future.

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    • Productivity gains that go beyond efficiency At Microsoft, developers using GitHub Copilot reported completing tasks up to 55% faster, with some workflows showing 90% higher productivity. Beyond speed, employees felt empowered to tackle more creative and complex work, reflecting behaviours like curiosity, learning agility, and confidence in experimenting with AI. This shows how AI-ready behaviours amplify both efficiency and quality, not just output volume.
    • A stronger culture of innovation and adaptability At DHL, AI is embedded into logistics planning and warehouse operations, but the real transformation comes from employees. Staff trained to engage confidently with AI-driven tools are not only executing tasks more effectively they actively suggest improvements, experiment with new approaches and share insights on operational efficiencies. This behaviour reflects adaptability, curiosity and proactive problem-solving. As a result, the organisation benefits from a culture where innovation emerges bottom-up, employees feel empowered to influence processes, and adaptability becomes a shared competency, not just a technology-driven outcome.
    • Talent retention through future-proofing careers Employees increasingly look for employers who invest in reskilling and help them stay relevant. Business Insider highlighted that workers are more likely to stay loyal to companies that actively prepare them for an AI-enabled future. By cultivating behaviours like continuous learning, openness to new tools, and self-driven development, organisations signal commitment to people, boosting loyalty and trust.
    • Competitive edge through agility. At ANZ Bank, AI was embedded in fraud detection and customer support, but real advantage came from employees upskilled to understand, trust, and act on AI insights. By demonstrating behaviours like adaptability, critical thinking, and collaboration, teams responded faster to customer needs and mitigated risks effectively turning technology adoption into a tangible strategic advantage.
    • Risk Mitigation and Ethical Leadership AI-confident employees are trained to spot biases, misuse, and ethical risks. For example, Bank of America invests in programmes that teach staff responsible AI use in financial services. Employee behaviours like accountability, vigilance, and ethical reasoning ensure that AI is applied responsibly, building trust with customers, regulators, and the market.
    • Stronger organisational resilience During the pandemic, companies with AI-ready talent adapted faster. Unilever, for instance, leveraged AI-driven workforce planning to redeploy staff where demand shifted most. Employees trained to work with AI insights demonstrating adaptability, problem-solving, and proactive decision-making enabled the company to pivot quickly and maintain operational continuity. AI confidence here is as much about behavioural readiness as technological capability.

    Ethics and Trust: The Compass for AI Collaboration

    Ethics and trust are foundational for AI-readiness and effective Worker-AI coexistence. Organisations must foster behaviours prioritising fairness, transparency and accountability, not just implement technology. The Commonwealth Bank of Australia’s experience illustrates this: plans to cut 45 customer service jobs using AI chatbots were reversed after rising call volumes and union pressure, showing that efficiency cannot override responsibility toward employees and customers. Building these behaviours into everyday workflows is essential for sustainable adoption.

    Key considerations for ethical AI adoption:

    • Embed ethics into behaviour – Implement principles like fairness, privacy, explainability, and security from the start.
    • Build transparency tools – Explain why AI makes suggestions to foster safety and commitment.
    • Educate employees – Cover legal and ethical risks, including prompt handling and data privacy.
    • Proceed gradually – Implement AI thoughtfully rather than rushing replacement.

    IBM demonstrates the impact: by training employees in responsible AI use, bias detection, and explainability, the company fosters trust internally and externally, making AI adoption more sustainable and aligned with organisational values while protecting workforce confidence and brand reputation.

    Conclusion

    AI adoption succeeds when employees embrace it confidently, guided by behavioural competencies like curiosity, collaboration, ethical awareness, and digital confidence. Framing AI as a partner and embedding it into daily workflows fosters trust, experimentation, and proactive problem-solving. Worker-AI coexistence then becomes a driver of innovation, resilience, and sustainable advantage. Organisations that invest in people as much as technology unlock not just efficiency, but a future-ready workforce empowered to lead in an AI-driven world.

    References

  • Behavioural Analytics: The Next Frontier of Workforce Intelligence

    Behavioural Analytics: The Next Frontier of Workforce Intelligence

    Work today isn’t steady or predictable. Roles evolve, skills expire faster, and teams form and reform around shifting priorities. Technology keeps rewriting how we connect, while employees expect more relevance, flexibility, and purpose from their organisations. In such a fluid environment, the real differentiator isn’t just strategy or tools, but whether a company can truly keep pace with how its people work and grow.

    The way organisations measure people has come a long way. It started with counting heads and tracking costs, then moved into analysing skills, engagement, and HR processes. Each step gave leaders sharper insights, but the focus had mostly been on outcomes. Did employees meet targets? Did they complete the training? What do performance reviews say? What is the attrition rate? These are valuable, sure. But they’re lagging indicators that tell us what happened, not why, when, or how. The real shift begins when you start asking not just what the numbers show, but how people got there. Did someone overwork to hit a goal, collaborate effectively, or lean on old habits instead of learning?

    Hitting a target is the visible part of performance, but the drivers sit beneath the surface. The way people prioritise, solve problems, share knowledge and lean on each other is what shapes the end result. Once you see those patterns, you can shape them too. That’s where behavioural analytics enters the picture – uncovering real-time patterns in engagement, adaptability, collaboration, communication, leadership, and motivation. By paying attention to these signals early, leaders can move from reactive to proactive, using these insights as a springboard for action and growth. That’s potential.

    From Manpower to Behaviour

    HR analytics has been steadily growing, but most organisations are still at the early stages. The roadmap to analytics started with focus on the number and headcount, evolved to emphasising on engagement and performance and is now slowly transitioning to Behavioural Analytics which is the new order of workforce intelligence.

    • Manpower Analytics – includes workforce basics focusing on numbers like headcount, attrition, and cost-to-hire. It’s quantitative and operational, ensuring the right number of people at the right place and cost. According to ISG’s 2023 HR Tech Survey, only 36% of companies use predictive analytics in HR, and 43% say they’ve built a data-driven HR culture. Most remain stuck in descriptive reporting.
    • People Analytics – From manpower analytics, it matures into going beyond headcount, to analyse talent, HR processes, and connects with impact on business results, such as quality of hire, engagement, learning effectiveness, succession, and diversity. This is where companies begin predicting rather than just reporting. Deloitte found 70% of organisations were already using people analytics by 2022, with adoption expected to exceed 80% by 2025.
    • Behavioural Analytics – Today there is a need to take a deeper look to understand the human layer of work, how employees act, interact, and make decisions. It’s more qualitative, linking behaviour to competencies, culture, and performance. This data often comes from various sources which includes but is not limited to, collaboration tools, surveys, and assessments. Behaviour Analytics and its role in shaping organisation culture is reflected in an example; where a U.S bank adopted a platform called ‘Humanyze’, applied organizational network analysis to understand collaboration dynamics. They found that teams who shared more informal interactions, like overlapping lunch breaks, performed significantly better. By restructuring schedules to encourage this, the bank achieved a 27× return on investment, reduced turnover by 28%, and improved call resolution speed by 23%.

    These are small yet significant findings that behavioural analytics can bring to the forefront, bearing a significant impact on key business metrics in a positive manner. The maturity curve is less a steady climb and more a leap. Most organisations are comfortable counting, many are starting to predict, but only a few are bold enough to decode how people truly behave and connect.

    Dimensions of Employee Behavioural Analytics

    As HR moves from transactional to transformational, behavioural analytics steps in to go beyond basic metrics and answer questions such as:

    • How are time and effort being invested?
    • How are people interacting and collaborating?
    • How are employees pursuing development and feedback?
    • How are they contributing to shared intelligence?
    • How do employees feel and sustain performance?
    • How do leaders inspire, align, and govern responsibly?

    These questions anchor six key dimensions of behavioural analytics that bring the human side of organisational performance into focus:

    • Flow of Work: Captures how employees allocate energy, balance demands, adopt new ways of working, and uphold ethical behaviours – Time usage, adaptability, workload rhythms, ethical compliance
    • Web of Connections: Reveals the density, diversity, and responsiveness of professional networks – Communication quality, responsiveness, team cohesion, network health
    • Growth Mindset Signals: Shows proactive behaviours around learning, adapting, and seeking input – Learning behaviours, adaptability, feedback loops, change adoption
    • Knowledge Capital: Focuses on contribution, documentation, and thought leadership – Knowledge sharing, visibility, innovation contribution
    • Wellbeing & Sentiment Pulse: Adds the emotional and psychological layer to behavioural data – Emotional state, engagement, recognition, resilience
    • Leadership & Purpose Dynamics: Captures the clarity of purpose leaders provide, the ethical tone they set, and how effectively they align teams to shared goals and long-term vision – Leadership effectiveness, influence, purpose alignment, trust
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    Six Dimensional Behavioural Analytics Maturity Framework by Karmine

    The Organisational and Employee Value of Behavioural Analytics

    Benefits for Organisations

    • Early Warning Signals for Productivity and Engagement: Instead of waiting for quarterly engagement surveys, organisations can detect issues in real time. Microsoft saw a 16% rise in late-night meetings, 50+ messages sent outside hours, and 20% of staff working weekends. These patterns flagged risks of burnout and workload imbalance, prompting leadership to set clearer boundaries and prevent productivity collapse.
    • Strengthened Culture and Resilience During Change: Helps organisations spot morale dips and act quickly to protect culture. During an unsolicited takeover attempt, Unilever used automated listening tools and sentiment analysis to track employee engagement and internal communication. This helped detect early signs of falling morale and launch support programs. By acting swiftly, they maintained productivity and workforce resilience. Transparent communication and a strong culture focus enabled Unilever to withstand the takeover pressures and protect employee trust.
    • Data-Driven Management and Strategies: Instead of relying on assumptions, companies can test which behaviours drive performance and coach managers accordingly. Google’s Project Oxygen proved that effective managers aren’t born, they follow specific, observable behaviours. By analysing more than 10,000 data points, Google identified ten observable & coachable behaviours that reshaped manager training, recognition systems, and even promotion criteria. Within a year, 75% of underperforming managers had improved significantly, leading to stronger team performance, higher engagement, and measurable productivity gains.

    Benefits for Employees

    • Stronger Voice and Sense of Belonging: Empowers employees by ensuring their experiences are heard and acted upon. Mercer launched “Your Voice Matters” initiative after discovering that their staff felt disconnected at work, encouraging encouraged open communication and feedback through regular surveys and focus groups. This raised engagement from 50% to 75% in two years. Employees felt genuinely listened to, which boosted motivation, reduced turnover, built trust and increasing overall productivity.
    • Smarter Workload Distribution Through Real Insights: Uncovers patterns of overwork or underutilisation, enabling leaders to spread tasks more evenly across teams. Microsoft’s after-hours analysis helped leaders set clearer boundaries and expectations, ensuring teams stayed productive without burning out.
    • Fairer Development and Growth: When leadership behaviours and performance drivers are grounded in real data, employees benefit from more transparent and fair growth pathways. Google’s Project Oxygen gave employees tangible benefits by vague ideals of “good leadership” to clear coachable actions. Instead of hoping their manager was supportive, employees could expect consistent practices – like regular check-ins, meaningful feedback, and visible support for career growth. This improved trust in leadership and created fairer career paths.

    Simply put, behavioural analytics empowers organizations get sharper decision-making, and employees gain a healthier, more supportive workplace.

    AI-Powered Employee Behavioural Analytics

    AI-powered behavioural analytics is transforming how organisations understand and support their workforce by moving beyond quarterly reviews and annual surveys to real-time insights drawn from collaboration tools, communication channels, and learning systems. Imagine a system that detects a 30% drop in team engagement over two weeks or flags when a top performer’s response time slows by half. AI interprets tone, collaboration patterns, and learning engagement to provide context-rich alerts that allow leaders to act quickly and strategically. The benefits are clear: speed, with instant notifications instead of delayed feedback; context, with cues that highlight root causes rather than raw data; and focus, with precise signals on risks like engagement dips or collaboration breakdowns. As companies adopt these tools, they create more adaptive and personalised workplaces where employees gain tailored career recommendations and learning paths while HR benefits from ethical, explainable analytics that build trust.

    Microsoft 365 Copilot is embedded in Teams and Outlook to summarise meetings, detect communication overload, and suggest more efficient collaboration patterns. Similarly, Workday’s AI capabilities analyse sentiment and skills data to provide managers with ethical, explainable insights for talent planning.

    Why Behavioural Analytics in HR Is Still Underleveraged

    Behavioural analytics has long been used for understanding consumer behaviour. Retail giants, streaming services, digital platforms have refined how they capture customer clicks, preferences, choices, and loyalty. All of this fuel personalisation, retention, and revenue growth. But when it comes to human capital, that kind of behavioural insight remains under-leveraged with the following key challenges holding back adoption:

    • Privacy, Ethics, and Trust Employees expect far higher privacy and dignity at work than consumers do in markets. Tracking collaboration, keystrokes, or sentiment can easily cross ethical lines without clear consent or transparency. Unlike consumers who trade data for discounts or personalisation, employees value autonomy, fairness, and legal protection.
    • Fragmented and Inconsistent Data Employee data is scattered across emails, chat logs, meetings, surveys, and HR systems. Only 40% of HR professionals say their organization is ‘good or very good’ at analysing people data, and just 48% rate their data generation capabilities highly. This fragmentation makes insights unreliable and scaling difficult.
    • Capability and readiness gaps Even when the will is there, most companies lack the systems and skills needed for advanced behavioural analytics compared to digital customer-facing functions. Companies need mature analytics capabilities, reliable data, and sophisticated technology infrastructure. Many are still building maturity in workforce and people analytics before they can dive deeper.
    • Unclear ROI compared with consumer use cases Marketing analytics delivers clear returns in sales and conversion, but HR outcomes – engagement, collaboration, or well-being – are harder to link directly to financial impact. This makes budget holders hesitant to invest, even though the long-term value is significant.

    Until such issues are addressed, behavioural analytics will remain underused in HR, despite its clear potential to strengthen both employee growth and organisational performance.

    Building the Foundation for Behavioural Analytics

    Behavioural analytics sits at the advanced end of the HR analytics maturity curve. Most organisations begin with descriptive reports, move into diagnostic dashboards, and then step into predictive & prescriptive models. Behavioural analytics relies on multiple layers of technology, data and culture being in place.

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    Laying the Foundation for Behvioural Analytics

    Ethical Considerations: Watchful but Respectful

    Here’s where a bit of nuance matters. Behavioural analytics only works if emSample metrics for 6-dimension behavioural analytics pyramid across maturity levelsSample metrics for 6-dimension behavioural analytics pyramid across maturity levelsployees trust it. Done openly, it strengthens collaboration, development, and opportunity. Done poorly, it risks undermining culture. The goal should always be support, not surveillance. Here are ethical considerations that companies should apply:

    • Transparency: Clearly explain what data is collected and why. Position it as development-focused, not surveillance
    • Privacy: Use aggregate or anonymised data where possible. If individual behaviour is analysed, do so with consent and for growth, not punishment.
    • Opt-In Choices: Make participation voluntary where you can, with clear benefits such as tailored support.
    • Empathy-Driven Use: Interpret behaviour data with context – late responses may reflect deep work or personal matters, not disengagement. Data should start conversation, not drive judgement.
    • Clear Boundaries: Define what will not be measured (e.g., private chats, personal devices) to build trust.
    • Shared Value: Show how insights help employees grow in their careers and learning, not just how they benefit the organisation.
    • Human Oversight: Algorithms can flag patterns, but people should interpret and act with care
    • Feedback Loops: Give employees a voice to question or clarify how their data is read, making it a two-way process.
    • Cultural Sensitivity: Behaviours vary by culture and role; avoid one-size-fits-all interpretations.
    • Positive Reinforcement: Use analytics to encourage constructive behaviours, not just detect risks.

    Linking Behavioural Analytics to Learning & Development

    Behavioural analytics provides a data-driven foundation for modern L&D. By measuring signals such as collaboration patterns, feedback-seeking, or adaptability to change, organisations can identify the precise learning needs that hold teams back. Instead of rolling out generic programs, analytics enables the sharper and personalized learning journeys across technical skills, soft skills, leadership development, or competency training.

    This enables employees to engage with learning that feels relevant to their roles, while leaders can track measurable progress through the same behavioural indicators that highlighted the need. This creates a closed loop between insight and action – analytics identifies gaps, L&D addresses them, and follow-up analytics measures the impact. Done well, this approach not only builds stronger skills but also nurtures a culture of continuous learning, adaptability, and high performance.

    Conclusion

    Behavioural analytics is moving fast to becoming a core part of how organisations understand and support their people by using real behavioural signals to shape smarter learning, more relevant development, and stronger team performance. The real win is that it helps HR step out of the back office and drive resilience, adaptability, and culture at scale. And with AI in the mix, the future goes further than just analysing behaviour, by simulating outcomes, personalising growth, and creating workplaces that continuously learn and improve. It is not just a tool, it is the next frontier in data-driven talent intelligence that provides strategic, corporate-focused insights

    References

    1. Deloitte. (2023). Global Human Capital Trends 2023 Report. Deloitte Insights.
    2. Deloitte. (2025). Global Human Capital Trends 2025 Report. Deloitte Insights.
    3. ISG. (2023). Survey on Industry Trends in HR Technology and Service Delivery 2023. ISG Research.
    4. Bersin, J. (2018). People Analytics Maturity Model. Bersin by Deloitte
    5. Humanyze. (2023). Moving toward a people analytics world. No Jitter. https://www.nojitter.com/data-management/moving-toward-a-people-analytics-world
    6. Microsoft. (2023, March 16). Introducing Microsoft 365 Copilot: Your copilot for work. Microsoft Blog. https://blogs.microsoft.com/blog/2023/03/16/introducing-microsoft-365-copilot-your-copilot-for-work/
    7. Workday. (2023, September 27). Workday unveils new generative AI capabilities to amplify human performance at work. Workday Investor Relations. https://investor.workday.com/2023-09-27-Workday-Unveils-New-Generative-AI-Capabilities-to-Amplify-Human-Performance-at-Work
    8. Unilever. (2017). Annual Report and Accounts 2017. https://www.unilever.com/files/origin/6be0d0dbe8c5088374b7f3ff903ef4995a1a6a62.pdf
    9. George, W. W., & Migdal, A. (2017). Battle for the Soul of Capitalism: Unilever and the $143 Billion Takeover Bid. Harvard Business School Case 317-127.
    10. Google Re:Work. (n.d.). Managers – Identify what makes a great manager. Google Re:Work. https://rework.withgoogle.com/intl/en/guides/managers-identify-what-makes-a-great-manager
    11. Garvin, D. A. (2013, December). How Google sold its engineers on management. Harvard Business Review.
    12. Schneider, M. (2018, December 13). Analysis of 10,000 reports told Google to train new managers in 6 areas. Inc. https://www.inc.com/michael-schneider/analysis-10000-reports-told-google-to-train-new-managers-6-areas
    13. Mercer. (2022–2025). Your Voice Matters: Employee listening and engagement. Mercer Employee Experience Solutions. https://www.mercer.com/en-in/solutions/talent-and-rewards/employee-experience/employee-listening/
    14. HR.com. (2024). State of People Analytics 2023–2024 Research Report. HR.com.
    15. Insight222. (2024). People Analytics Trends Report 2024. Insight222
    16. MyHRFuture. (2023, May 10). Harnessing data for growth: The impact of people analytics. myHRfuture
    17. Davenport, T. H., Harris, J., & Shapiro, J. (2018, November). Better people analytics. Harvard Business Review
    18. Scribd. (2019). 9 HR Analytics Case Studies. Scribd. https://www.scribd.com/document/432107816/9-HR-Analytics-Case-Studies-1569541778
    19. Emerald. (2024). The power of peer recognition points: Does it work? Strategic HR Review, 24(1), 2–6. https://www.emerald.com/shr/article/24/1/2/1245460/The-power-of-peer-recognition-points-does-it
    20. SHRM. (2024). State of the Workplace Study 2023–2024. SHRM Research
    21. Amplitude. (2025, July 6). What Is Behavioral Analytics? Definition, Examples, & Tools. Amplitude Blog. https://amplitude.com/blog/behavioral-analytics-definition
  • Unleashing Internal Employee HEROs: The ROI of Positive Psychological Capital

    Unleashing Internal Employee HEROs: The ROI of Positive Psychological Capital

    In the world of constant uncertainty, skills are becoming obsolete at unprecedented rates, employees are getting burnt out, disengaged, or disconnected. Traditional resources like compensation, perks, or well-being programs are not enough. So how do organisations build a workforce that’s adaptive, engaged, and future-ready?

    A workforce that doesn’t just cope but thrives? The answer isn’t more skills or smarter systems, but stronger inner foundations. The key is to build Psychological Capital (PsyCap)  by empowering Internal Employee HEROs. For organisations, PsyCap is a behavioural asset that enhances how people think, feel, and act at work.

    Psychological Capital ‘HERO’ Model

    The HERO Model, conceptualised by Luthans, Youssef, and Avolio in 2007 serves as an extension of positive organisational behaviour, comprising of four key elements:

    Article content
    Key Elements of the HERO Model

    The HERO elements independently contribute to workplace effectiveness. Together, they multiply into a powerful psychological engine that fuels proactive behaviour and adaptive performance.

    Organisational Payoff of Building Psychological Capital

    Organisations that invest in building PsyCap look for more than just morale boosts, they aim to influence productivity, engagement, and performance, yielding strategic returns.

    • Direct Impact on Performance and Productivity: Higher PsyCap is significantly correlated with job performance and job satisfaction. This translates into employees who not only deliver more consistent results, but also take greater ownership of their work, adapt faster to change, and sustain high output even in challenging conditions. Organisations that invest in building PsyCap, have shown productivity increases of up to 20%.

    Google’s Employee Mindfulness Program includes tools such as guided meditation, apps and workshops, all integrated into its culture to boost employee well-being, focus, and resilience. The offering helps employees manage stress and improve emotional regulation. This positively impacts organisational performance by fostering a more engaged, adaptive, and productive workforce, reducing burnout, and supporting sustained innovation.

    • Enhanced Employee Engagement and Retention: Employees high in PsyCap tend to be more emotionally invested in their organisations, less likely to burn out, and more likely to stay and thrive, highlighting how inner psychological resources can stabilise employee retention under pressure. Organisations that invest in positive organisational behaviour, including PsyCap, have shown retention improvements of 25%.

    Salesforce’s “Ohana Culture” includes mental health and wellness programs, resilience-building workshops, and opportunities for employees to contribute to social impact work. This fosters a sense of purpose and hope among its workforce. Salesforce focuses on family, trust, and community, creating a supportive work environment, and emphasized high levels of job satisfaction among employees. Creating a positive work environment and strong sense of community contributed to low turnover rates, helping Salesforce retain top talent

    • Business Outcomes that Compound Over Time: Companies that cultivate PsyCap report improved customer satisfaction, innovation rates, and operational efficiency. It is proven that organisations implementing targeted PsyCap interventions saw performance improvements of 2-3% which, when applied to large workforces, represented millions of dollars in productivity gains.

    Microsoft’s leadership encourages a growth mindset that embraces learning from failure and continuous development. The approach enhances individual capabilities and drives team collaboration, creativity, fuelling innovation. Over time, these cumulative improvements lead to stronger business outcomes – higher productivity, sustained competitive advantage, and accelerated innovation – that compound, positioning Microsoft for long-term success in a fast-evolving technology landscape.

    • Resilience as a Strategic Risk Buffer: Resilient employees form the backbone of crisis-readiness. High PsyCap teams recover faster from setbacks, collaborate effectively under pressure, and are more likely to find creative solutions instead of defaulting to risk-aversion techniques. This behavioural agility reduces downtime and accelerates recovery from disruptions.

    IBM emphasizes building employee resilience and self-efficacy through wellness programs and leadership training focused on emotional intelligence and adaptability, equipping employees with tools to take ownership of their career growth and maintain optimism in the face of challenges. Leadership programs that enhance self-awareness further reinforce personal resilience, enabling leaders and teams to navigate uncertainty more effectively. This focus on resilience acts as a strategic risk buffer for IBM, reducing the impact of workplace stressors and disruptions while sustaining productivity and long-term organizational stability.

    • Culture and Reputation Dividend: Intentional modelling of PsyCap leads to reduced change resistance, shortening transformation timelines, influencing organisational culture. An optimistic, hopeful, and confident workforce not only drives results internally but also signals to customers, investors, and prospective hires that the company is forward-thinking and people-centric.

    Ben & Jerry’s commitment to building empathy and compassion in its workforce through values-based hiring and culture-building efforts aligned with its social and environmental mission. This strong culture enhances internal collaboration and morale and also boosts their reputation as a purpose-driven brand, creating a significant culture and reputation dividend that attracts customers, talent, and partners who share these values.

    Building the Foundations of a High-PsyCap Culture

    • Go Beyond Wellbeing by Embedding PsyCap into Organisational DNA: Most employee wellness programs today are reactive and step in only after burnout, attrition, or disengagement have already happened. PsyCap offers a proactive mindset shift that helps build the mental and emotional infrastructure needed for sustainable engagement, empowering individuals to become self-renewing assets who regulate stress, adapt quickly and maintain a solution-oriented mindset.

    How can this be applied:

    • Performance reviews can include focus on how employees demonstrated persistence in setbacks, optimism in uncertain conditions, or creative problem-solving under pressure.
    • Leaders must strive to consistently model these traits in their own conduct, publicly sharing how they navigate challenges to make them aspirational and normalised across the workforce.
    • Deconstructing into Observable Daily Habits: The key to making PsyCap truly impactful lies in consistency – small, observable micro-behaviours practiced daily – how conflict is resolved, how failure is treated, how listening happens. These micro-habits are easy to apply, stack onto existing routines, and create repeatable patterns that build long-term behavioural change.

    How can this be applied:

    • You don’t train efficacy – you train the micro-behaviours of efficacy.
    • Starting meetings with a clear plan, summarising and sharing learnings after completing a task, actively seeking peer input on work in progress, and volunteering for small stretch assignments that push skills beyond current comfort zones.
    • Equip Leaders and Managers as PsyCap Multipliers: Leaders and Managers are the primary translators of organisational intent into daily employee experience. By equipping them with targeted training on coaching conversations, cognitive reframing techniques, and resilience storytelling, companies turn them into catalysts for PsyCap development. Managers must model behaviours to signal their importance, and feedback should focus on behaviours, not just outcomes

    How can this be applied:

    • Managers can be taught how to help team members visualise success, break daunting challenges into manageable steps, and identify resources that increase their likelihood of success.
    • Regular manager roundtables or peer coaching circles can help them share what works, troubleshoot roadblocks, and stay aligned in reinforcing PsyCap behaviours.
    • Performance & Learning Systems that Reward PsyCap Behaviours: Integrating recognition for PsyCap behaviours into performance & learning systems means moving beyond measuring only outcomes to valuing the underlying mindsets and actions that drive sustainable success. This combined approach of incorporating competencies into performance and learning systems, organisations can emphasize on the importance of ‘how’ results are achieved and create a continuous loop of reinforcement and skill-building.

    How can this be applied:

    • By embedding markers for persistence, learning agility, solution-oriented thinking, and collaborative problem-solving into performance reviews, peer-feedback platforms and real-time recognition tools
    • Learning programs can be designed to develop these traits through workshops, simulations, and on-the-job projects, while performance and recognition systems validate and reward their application.
    • Managers can consistently highlight these traits in feedback discussions and link them to career progression, bonuses, or development opportunities.
    • Feedback Loops & Storytelling: Feedback loops and storytelling can be powerful levers for building PsyCap when they move beyond standard performance reviews to become an ongoing exchange of insights, recognition, and shared experiences. These stories, when told authentically and linked to the organisation’s values, make abstract competencies tangible and aspirational, showing peers how PsyCap works in practice.

    How can this be applied:

    • Organisations can intentionally capture real employee stories, instances where HERO helped navigate challenges, and share them through team huddles, internal newsletters, learning sessions, or digital platforms.
    • Timely, constructive feedback that reinforces desired behaviours and celebrates small wins.

    From HERO to Habit: Behavioural Competencies as the True Capital

    The true strength of positive PsyCap is exhibited through individual behavioural competencies. Self-awareness, emotional regulation, resilience, active listening, conflict handling, assertiveness are core capabilities that shape how people work, lead, and grow. Teams with higher PsyCap are more collaborative, creative, and resilient to change, leading to faster decision cycles and better problem-solving under pressure. Embedding specific behavioural competencies into job roles, leadership, and feedback systems can amplify PsyCap organically creating a scalable, culture-wide impact.

    Article content
    Source: WEF Future of Jobs Report 2025

    Behavioural competencies are now as vital as technical skills. The WEF Future of Jobs Report 2025 highlights critical human skills like analytical thinking, creative thinking, resilience, flexibility, agility, curiosity, lifelong learning, leadership and social influence as among the fastest-growing capabilities needed through 2030. These competencies are strategic differentiators that, when rooted early in career, can turn potential into progress compounding into a long-term competitive advantage for both employees and organisations.

    Key Behavioural Competencies for an Evolving Workforce

    While the modern workplace demands a wide range of human capabilities, below are foundational competencies that drive meaningful performance and growth.

    • Self-Awareness – It is the ability to consciously recognise, understand, and reflect on your own thoughts, emotions, motives, values, and behaviours — and how they affect both yourself and others. Self-aware employees make better decisions, communicate more effectively, are more promotable and coachable. According to research by Tasha Eurich (2018), only 10–15% of people are truly self-aware, despite 95% thinking they are. When cultivated early self-awareness becomes the bedrock of personal and professional development.
    • Emotional Regulation: It focuses on the constructive management of emotions in real time. It is what allows a person to stay composed in conflict, navigate stress productively, and avoid reactive behaviour. This competency is crucial in high-pressure situations like appraisals, leadership roles, or navigating ambiguity. For leaders, it supports presence, patience, and clarity in crisis.
    • Resilience: Resilience is about bouncing back from setbacks and bouncing forward with learning. Resilience involves flexible problem-solving, reframing adversity, and regulating negative self-talk. Unlike ‘grit’ which sometimes can romanticise endurance, resilience includes flexibility, emotional agility and social support. According to a study in the Journal of Occupational and Environmental Medicine, individuals with higher resilience experienced 10 – 20% lower rates of absence, depression, and productivity loss, including in high stress environments compared to those with lower resilience. Teams with high resilience collective scores respond faster to disruption and require less emotional labour from managers during uncertainty.
    • Constructive Communication: Constructive communication is a combination of what we say, how we say it, and the way we interpret others’ words. It holds teams together, the bridges the gap between leadership and employees and is the catalyst for productivity and innovation. It fosters clarity, boosts morale, minimises misunderstandings – creating a sense of belonging and engagement, and driving sustained success. It focuses on how to ask questions, offer or receive feedback, resolve tensions without avoidance, speak with clarity and respect, actively listen with empathy.

    Behavioural Competencies as Catalysts for Career Milestones

    In every stage of the career, it’s the right mix of mindset and skill that drives progress. These competencies show how we turn individual strengths into collective success.

    Article content
    Impact on employees across layers in the organisation

    Conclusion

    In the rush to automate, upskill, and optimize, companies often overlook their most renewable resource: the human potential. PsyCap reminds us that ‘being more’ is often more powerful than ‘doing more’. The real differentiator isn’t just skill, it is behavioural fluency – the ability to regulate, adapt, empathise, and communicate across situations and stages – with which employees become self-renewing contributors to organisational growth.

    When organisations invest in HEROs from the beginning of employee’s career journey, the return isn’t just financial; it is cultural, human, and long lasting. With structured development around awareness, communication, and resilience, employers create a feedback loop of confidence, competence, and clarity. Think of it as compound interest, just as starting early to save yields exponential returns, starting to build behavioural agility early creates career-long ROI.

    It is time to treat behavioural competencies as the foundation of every successful, sustainable organisation and not as afterthoughts. With 59% of global workers needing reskilling by 2030 and employers planning significant investment in workforce transformation, there’s an opportunity to embed behavioural development from entry-level through the executive suite which will produce not just high performers – but Human Advantage: adaptable, engaged, collaborative, and future-ready.

    Sources

    1. Luthans, F., Youssef, C. M., & Avolio, B. J. (2007). Psychological Capital: Developing the Human Competitive Edge. Oxford University Press.
    2. Eurich, T. (2018). What Self-Awareness Really Is (and How to Cultivate It). Harvard Business Review.
    3. World Economic Forum. (2025). The Future of Jobs Report 2025. https://www.weforum.org/publications/the-future-of-jobs-report-2025
    4. Walumbwa, F. O., Luthans, F., Avey, J. B., & Oke, A. (2009). Authentically leading groups: The mediating role of collective psychological capital. Journal of Organizational Behavior, 30(3), 377–396.
    5. Avey, J. B., Reichard, R. J., Luthans, F., & Mhatre, K. H. (2011). Meta-analysis of the impact of positive psychological capital on employee attitudes, behaviors, and performance. Human Resource Development Quarterly, 22(2), 127–152
    6. Luthans, F., Avey, J. B., & Patera, J. L. (2008). Experimental analysis of a web-based training intervention to develop positive psychological capital. Academy of Management Learning & Education, 7(2), 209–221
    7. Shatté A, Perlman A, Smith B, Lynch WD. The Positive Effect of Resilience on Stress and Business Outcomes in Difficult Work Environments. Journal of Occupational and Environmental Medicine. 2017 Feb
    8. Journal of Occupational and Environmental Medicine. (2010). The relationship between resilience and workplace outcomes in a large sample of employees. Journal of Occupational and Environmental Medicine, 52(7), 698–706.
    9. Gallup State of the Global Workplace 2025 https://www.gallup.com/workplace/349484/state-of-the-global-workplace.aspx
    10. Employee Benefit News article covering Ben & Jerry’s employee programs: https://www.benefitnews.com/news/ben-jerrys-serves-up-online-curriculum-to-employees
    11. Official Ben & Jerry’s website detailing their values and hiring philosophy: Ben & Jerry’s Values
    12. Harvard Business School case study Ben & Jerry’s Homemade Ice Cream, Inc.: Keeping the Mission(s) Alive https://www.hbs.edu/faculty/Pages/item.aspx?num=12290
    13. Salesforce Ohana Culture blog: https://www.salesforce.com/blog/salesforce-and-hawaii/
    14. Dr Shabana Azami, “Fostering Employee Engagement and Retention through Ohana Culture: A Case Study of Salesforce”, Kronika Journal(Issn No-0023:4923) Volume 24 Issue 7 2024
    15. How Google Uses Mindfulness For Success by Upstack: https://upstackhq.com/blog/engineering-management/how-google-uses-mindfulness-for-success
    16. Google re:Work https://rework.withgoogle.com/intl/en/guides/understanding-team-effectiveness#foster-effective-team-behaviors
    17. Podcast by Capacity Interactive: Inside Google’s Employee Mindfulness Program https://capacityinteractive.com/podcast/inside-googles-employee-mindfulness-program/
    18. IBM Building resiliency: Keeping skills at the core https://mediacenter.ibm.com/media/Building+resiliency%3A+Keeping+skills+at+the+core/1_tn7zz3hp/22694252
    19. IBM analysis https://www.ibm.com/think/insights/how-to-improve-employee-experience-and-your-bottom-line
    20. Article by i4CP on Microsoft’s Growth Mindset: https://www.i4cp.com/productivity-blog/growth-mindset-kathleen-hogan-on-how-microsofts-culture-continues-to-drive-innovation-and-high-performance
    21. Microsoft on Growth Mindset: https://www.microsoft.com/en-us/microsoft-365/business-insights-ideas/resources/grow-your-business-with-a-growth-mindset
    22. How Adopting a Growth Mindset Transformed Microsoft https://neuroleadership.com/podcast/growth-mindset-microsoft
  • Legacy Systems, Modern Risks

    Legacy Systems, Modern Risks

    Introduction

    Mid-sized listed companies often continue to rely on the same legacy systems that once supported their early growth. Over time, however, these aging platforms become a burden. Excessive customizations and patchwork integrations accumulate into ‘tech bloat’, a complex tangle of outdated software and add-ons that slow the business down.

    One analysis noted that redundant systems could inflate operating costs by 20% and delay decision-making by 30% due to fragmented data. These hidden costs accumulate over time, eroding competitiveness.

    This article explores how legacy systems and ERP customizations constrain mid-sized firms drawing on examples from manufacturing and financial services, and why adopting nimble, easily orchestrated tools is the way forward. We also outline how companies can transition from legacy baggage to a future-proof tech stack.

    The Weight of Legacy: How Tech Bloat Occurs

    Tech bloat refers to the proliferation of redundant or antiquated technologies within an organization’s IT landscape. Companies in growth stage often over-customize their enterprise software to meet unique needs, especially when newer, scalable solutions seem unwarranted or too costly. Over years though, these ad-hoc adaptations create what is typically a clutter around the system.

    Common symptoms of tech bloat include outdated processes, redundant / overlapping applications or modules (often kept “just in case”) that duplicate functions, fragmented data and a company culture clinging to familiarity which only reinforces the cycle. Individually, each workaround or customization may have solved a short-term problem. But collectively, they begin to form a convoluted junction of systems that is hard to maintain or scale.

    For example, many mid-sized manufacturers still run on legacy ERP or production management systems implemented more than a decade ago. These might handle core functions like inventory or basic scheduling, but they struggle to support Industry 4.0 initiatives such as IoT-enabled machines, advanced analytics, or AI-driven automation.

    When legacy software can’t easily interface with sensors on the shop floor or can’t process the volume of real-time data modern equipment produces, it becomes a bottleneck.

    Data Quality and Integration Constraints

    A major pain point tied to legacy systems is poor data quality and integration. Older systems were not designed with modern data needs in mind. Information gets trapped in silos, and companies struggle to obtain a “single source of truth” across functions.

    Data might be incomplete, inconsistent, or not available in real time, undermining both strategic and day-to-day decisions. In fact, reliance on outdated legacy systems itself is listed as a common cause of data integrity problems. Older platforms often lack features to ensure data quality, and integrating them with modern applications can introduce inconsistencies. Analytics thus often remains unsupported due to quality constraints.

    Customizations layered on top of baseline systems further complicate data flows. Often, quick fixes or departmental databases are introduced to compensate for what the main ERP cannot do. For instance, finance might maintain a separate spreadsheet model because the legacy ERP’s reporting isn’t flexible enough, or a manufacturing plant might have a standalone quality tracking system not fully integrated with the core production software.

    These patches create data orchestration challenges and it becomes difficult to aggregate and reconcile information across the enterprise. Without large IT teams, such integration gaps are sometimes bridged with manual work, which introduces opportunities for inefficiencies.

    Many mid-sized banks and insurers grew on top of legacy core systems and have since layered on digital products without modernizing the core. This has led to situations of struggles of data integration which isn’t just an IT headache; but often a serious compliance liability.

    Migration of data from legacy systems is often a great challenge. Product design in legacy systems capture data in different formats that don’t support easy migration to the new systems.

    Industry-wide, banks lost an estimated $485.6 billion to fraud in 2023, much of it due to increasingly sophisticated schemes that exploit any lag in oversight. For mid-sized institutions with tight margins, such losses along with potential regulatory penalties for late reporting can be devastating. As a 2025 banking technology report highlights, outdated batch-based systems leave customers waiting for yesterday’s information and give fraud a head start – “a liability no mid-sized bank can afford in the instant economy”.

    From a risk management perspective, the key is to recognize tech bloat as an enterprise risk, not just an IT problem. It should be raised in risk registers and board discussions, the same way one would discuss financial, operational, or market risks. Once understood, the mitigation is to modernize and streamline the tech environment deliberately and proactively, before a crisis forces the issue.

    Transitioning to a Future-Proof Tech Stack – Key Pillars

    The good news is that today there are more options than ever to right-size a tech stack for scalability, flexibility, and integration. A “future-proof” tech stack for a mid-sized firm would typically have the following characteristics:

    A. Modular Architecture

    Instead of one monolithic system doing most things, the stack is composed of smaller, specialized applications or services that can be connected. This could mean using a core ERP for finance and inventory, but a separate best-of-breed system for, say, CRM or e-commerce, with seamless integration between them. The benefit is greater flexibility to upgrade or swap out one component without a full upheaval and usually better functional depth in each area.

    B. Ease of Integration

    A nimble tech stack is one where data can flow readily across systems. Modern tools achieve this with API-driven designs and integration middleware. The ability to orchestrate workflows that span multiple applications would be crucial. For example, an order entry in the CRM should automatically create a demand signal in the manufacturing system and an invoice in the finance system, without manual intervention.

    Scalability and Cloud Infrastructure: To enable ease of scale, many mid-sized enterprises are migrating from on-premises servers to cloud-based solutions. Cloud infrastructure (whether public cloud or private/hybrid clouds) offers on-demand scalability to can ramp up capacity during peak periods or as the business grows, without having to overhaul hardware. Cloud-based SaaS applications also relieve the burden of software patching and upgrades, as the vendor handles that. New market entrants often go cloud-native from the start, building on scalable platforms to “avoid vendor lock-in and technical bloat”

    C. Security and Compliance by Design

    Modern systems tend to have stronger security frameworks and compliance features out-of-the-box. A good tech stack will include up-to-date identity and access management, encryption of data in transit and at rest, audit logging, and compliance modules for relevant regulations (be it GDPR for data privacy or SOX controls for financial systems).

    Today’s products also have external stakeholder portals that allow for limited access but enable the consolidation of data from all sources in one place such as a customer portal, Vendor Portal or a Partner Portal.

    Leading practices to ensure clinical transition

    Transitioning from legacy to future oriented systems is a journey that involves careful planning and execution. Here are some leading practices for mid-sized firms embarking on this journey:

    1. Audit and Rationalize

    Start with a ruthless audit of your current IT landscape. Inventory all systems, custom scripts, and data stores. Identify which ones are redundant, outdated, or low-value. It’s common to find multiple tools performing similar functions (for example, two reporting tools being used by different departments).

    Evaluate which systems are truly critical vs. which could be phased out or consolidated. This process often uncovers “quick wins,” such as shutting down an old server or eliminating duplicate software licenses to save cost. More importantly, it gives you a map of dependencies highlighting where fragile integrations might break during modernization.

    An independent technology assessment explores the audit of inventory and provides a comprehensive priority order and roadmap for implementation.

    2. Prioritize Incremental Modernization

    Prioritize areas where modernization yields the highest benefit and manageable risk. This could mean decoupling a piece of the monolith into a microservice or selecting one function (say, CRM or HR management) to migrate to a modern SaaS first.

    By adopting microservices or a two-speed architecture, you can gradually migrate workloads to newer systems while keeping the business running on the old system in parallel.

    Many companies start with less critical modules as pilots, learn from those migrations, and then tackle core systems. Re-architect in steps by carving out modules from the legacy core and rebuilding them.

    3. Strengthen Data Foundation

    As part of the transition, invest in data cleansing and integration early. It’s futile to implement a shiny new platform on top of dirty or siloed data. Growing firms should consider setting up a central data repository or using data integration tools to pull together key information from legacy systems.

    This could run in parallel to legacy systems initially, for example, building a cloud data warehouse that aggregates data from the old ERP, CRM, and other sources. Such a project not only improves reporting in the short term, but also prepares the ground for new systems (which can plug into the centralized data store).

    Ensuring data integrity and consistency will make the eventual cut-over to new applications much smoother. Additionally, define data governance practices so that as new systems come online, they adhere to common data standards and quality checks.

    4. Foster a Culture of Change and Upskilling

    One often underestimated aspect of modernization is the human factor. Employees comfortable with legacy tools may resist the change or fear that new systems will complicate their jobs.

    This could be tackled by communicating the vision for the new system, involving end-users in design and testing, and providing robust training. Organizations could also consider encouraging a culture that rewards innovation, perhaps by running internal hackathons or pilot programs to get teams excited about new ways of working.

    At the same time, an aspect to consider is addressing the skills gap. Need to upskill staff or hire new talent fluent in modern architectures could be imperative. Bringing in a “digital native” leader or two can also help drive the transformation from within. A robust change management framework aids such transitions in a holistic manner.

    By following these steps, growing companies can navigate the modernization journey in a controlled, risk-aware manner. The key is to view tech stack improvement as an ongoing program rather than a one-off project. The external environment, from cyber threats to compliance requirements will continue evolving, so building an adaptable technology core is itself a risk management strategy.

    Conclusion

    Whether it’s adopting a modular ERP approach, leveraging cloud services, or deploying integration platforms, mid-sized firms have pathways to shed legacy detritus and become more data-driven and responsive. The transition needs to be handled with care though. With incremental steps, solid change management, and an eye on risk mitigation it is very much achievable.

    Those that act decisively now, auditing their systems and steadily modernizing, will not only reduce the risks of today but also position themselves to capture the opportunities of tomorrow. The time to break free from the constraints of legacy tech bloat is now. Future growth and resilience depend on it.

    Sources:

    • Graham, Paul (2025). Beyond Technical Debt: Overcoming The Burden of Legacy Systems (LinkedIn).
    • backbase.com Pleiter, Jouk (2023). Legacy banking tech is a dead-end. Here’s why progressive modernization is the way forward. (Backbase Blog).
    • erpadvisorsgroup.com ERP Advisors Group (2023). ERP Implementation Case Study Series: Mid-Sized Food & Beverage Companies.
    • ibm.com IBM (2023). Data Integrity Issues: Examples, Impact, and 5 Preventive Measures.
    • whatfix.com Whatfix (2025). 9 Critical Digital Transformation Challenges to Overcome.
    • online.flippingbook.com TKO Miller (2024). Packaging Industry Report – Year-End 2024.
    • lumenalta.com Lumenalta (2025). Real-time data is no longer optional for mid-market banks.
    • simplelegal.com SimpleLegal (2022). Why legacy tech is a legal risk management nightmare.
    • sikich.com Sikich (2025). Why Acting Now Matters: Overcoming the Risks of Legacy Systems.
    • priority-software.com Priority Software (2022). Postmodern ERP for Old-School Manufacturers.
  • Inner Game of Tennis

    Inner Game of Tennis

    Duration: 2-4 hours

    Writing Style: Conversational & Reflective

    What is the main hook of this book?

    Gallwey wrote a book about tennis that transcended sport, landing on desks of CEOs, coaches, and therapists alike. Part of its cult status may stem from fans like Bill Gates, but its staying power lies in a deceptively simple idea: performance is an inner game – the one we play against ourselves.

    The opponent within one’s own head is more formidable than the one across the net.

    Premise / Core Idea

    Gallwey splits the self into two players:

    Self-1: The voice in our head. judgmental, anxious, controlling. In the author’s view, Self-1 doesn’t trust the Self- 2 and constantly tries to override its natural instincts.

    At workplace, Self-1 often appears in the form of overthinking, micromanagement, perfectionism, and fear of failure.

    Self-2: The natural, intuitive doer (the body). instinctive, capable, and fluid when left alone.

    This is our intuitive, subconscious self, the part that knows how to do things once it has learned. Classic example being, children learn to walk, catch, and run. Self-2 doesn’t talk or ruminate. It simply acts and most often, effortlessly.

    Peak performance, he argues, comes not from trying harder but from silencing Self-1 and trusting Self-2. The body knows what to do and thinking often gets in the way. This principle applies far beyond sport: whether in boardrooms, negotiations, or bedtime parenting routines.

    The inner game according to the author is about reducing the interference of Self 1 so Self 2 can do its thing. In practice, it is the difference between ‘thinking about the shot’ and ‘letting your body remember it.’ Self-2 the author maintains, knows how to swing once it’s seen and felt it. But Self-1 disrupts the flow by overanalyzing the motion mid-swing.

    Trying Hard ≠ Performing Well

    One of Gallwey’s sharpest provocations is this: ‘Trying too hard is often the very thing that gets in the way.’

    In a world obsessed with hustle, this feels refreshingly subversive. He suggests that when we grip tighter, we lose fluidity. There’s liberation in realizing that peak performance isn’t about doing more, but interfering less.

    Formulaically speaking, Performance = Potential – Interference. Observation over judgment is recommended. Instead of critiquing every move, simply notice. Leaders, coaches, and professionals can benefit from this lens thus fostering awareness without anxiety.

    Application

    The book’s principles align surprisingly well with modern business dynamics. Take risk management:

    · Self 1- driven cultures rely on control, checklists, and fear of failure.

    · Self 2- enabled cultures emphasize trust, intuition, and clarity within structured boundaries.

    Instead of endlessly adding tools, the smarter approach might be asking: What’s interfering with what we already have? In high-stakes environments, from VC funding calls to talent selection, gut instinct often leads the charge. Harnessing Self-2 effectively can be the difference between overthinking and insight.

    Our Take

    Gallwey’s core idea parallels Kahneman’s Thinking, Fast and Slow, yet reaches different conclusions. Kahneman warns us of intuition’s flaws. Gallwey wants us to lean into it, especially in performance-driven arenas.

    We think the principles of Inner Game of Tennis are best leveraged in activities that require performance, creative flow, presence and coaching. The principles might somewhat leave us deluded if we apply it to say, building robust strategy, hiring, risk management and judgement calls. Those are the spaces where we need a healthy mix of both, Self-1 & Self-2, to optimize results.

    One standout concept: Your opponent is your ally. The book redefines competition in a very interesting manner. We will let a quote do the talking:

    The book offers a manual for uncluttering the mental court, a fresh lens that confidence is often quiet trust and a toolbox to manage performance anxiety by quietening inner critic.

    Challenger thoughts

    • Most Cognitive Behavioral Approach (CBTs) suggest reshaping and not ignoring / silencing our inner dialogue. We think inner critic is not always noise. It is our in-house risk manager.
    • Gallwey perhaps underplays the role of structured, conscious practice. Intuition / flow needs training. Trusting intuition before that may not be fruitful.
    • The Self-1 vs Self-2 model might be too binary. Human behavior is more complex and layered.
    • Structure, systems and cadence are crucial to enabling successful utilization of Self-2.