{"id":28379,"date":"2026-02-18T07:31:40","date_gmt":"2026-02-18T07:31:40","guid":{"rendered":"https:\/\/tezgyan.com\/index.php\/2026\/02\/18\/ai-hype-vs-reality-why-companies-struggle-to-scale-and-workers-feel-the-pressure-explainers-news\/"},"modified":"2026-02-18T07:31:40","modified_gmt":"2026-02-18T07:31:40","slug":"ai-hype-vs-reality-why-companies-struggle-to-scale-and-workers-feel-the-pressure-explainers-news","status":"publish","type":"post","link":"https:\/\/tezgyan.com\/index.php\/2026\/02\/18\/ai-hype-vs-reality-why-companies-struggle-to-scale-and-workers-feel-the-pressure-explainers-news\/","title":{"rendered":"AI Hype vs Reality: Why Companies Struggle To Scale And Workers Feel The Pressure | Explainers News"},"content":{"rendered":"<p><br \/>\n<\/p>\n<div id=\"story-9911833\">\n<p><span class=\"jsx-395e0e0beb19cb6e jsx-3759419209\">Last Updated:<\/span><time class=\"jsx-395e0e0beb19cb6e jsx-3759419209\">February 18, 2026, 13:00 IST<\/time><\/p>\n<h2 id=\"asubttl-9911833\" class=\"jsx-c88456722e94b84d jsx-3230609546 asubttl-schema\">Most organisations approach AI as a technology experiment rather than an operational transformation. Scaling requires more than building accurate models<\/h2>\n<div id=\"artshare\" class=\"jsx-77f77059f24b3304 artshare\">\n<div class=\"jsx-77f77059f24b3304 stickdiv\">\n<div class=\"jsx-77f77059f24b3304 deskwrapstkdiv\">\n<div class=\"jsx-77f77059f24b3304 fontchange\"><img decoding=\"async\" src=\"https:\/\/images.news18.com\/dlxczavtqcctuei\/news18\/static\/images\/english\/font.svg\" height=\"30px\" width=\"30px\" alt=\"font\" title=\"font\" class=\"jsx-77f77059f24b3304 lazyload\"\/><\/div>\n<\/div>\n<\/div>\n<\/div>\n<div class=\"jsx-77f77059f24b3304 artsharwrp\"><a href=\"https:\/\/web.whatsapp.com\/send?text=AI%20Hype%20vs%20Reality%3A%20Why%20Companies%20Struggle%20To%20Scale%20And%20Workers%20Feel%20The%20Pressure - %0D%0Ahttps:\/\/www.news18.com\/explainers\/ai-hype-vs-reality-why-companies-struggle-to-scale-and-workers-feel-the-pressure-shil-ws-l-9911833.html%3Futm_source%3Dwhatsapp%26utm_medium%3Dsocial_share%26utm_campaign%3Dnw18english%0D%0A %0D%0A Get the latest news anytime, anywhere. Install News18 app for free! %0D%0Ahttps:\/\/onelink.to\/website-share-eng\" target=\"_blank\" rel=\"nofollow\" class=\"jsx-77f77059f24b3304 sclrnd wapp social_share\"><\/p>\n<div class=\"jsx-77f77059f24b3304 notifycnt social_share\"><img decoding=\"async\" src=\"https:\/\/images.news18.com\/dlxczavtqcctuei\/news18\/static\/images\/english\/new_share_icon.svg\" alt=\"new share icon\" title=\"new share icon\" width=\"8\" height=\"9\" class=\"jsx-77f77059f24b3304 social_share\"\/><\/div>\n<p><img decoding=\"async\" src=\"https:\/\/images.news18.com\/dlxczavtqcctuei\/news18\/static\/images\/english\/new_whatsapp_icon.svg\" alt=\"new whatsapp icon\" title=\"new whatsapp icon\" width=\"21\" height=\"22\" class=\"jsx-77f77059f24b3304 social_share\"\/><\/a><\/div>\n<div class=\"jsx-c88456722e94b84d jsx-3230609546\">\n<figure class=\"jsx-c88456722e94b84d jsx-3230609546 amimg\">\n<div class=\"jsx-c88456722e94b84d jsx-3230609546 amimgwrp\"><img decoding=\"async\" alt=\"In real-world settings, engineers must navigate cost constraints, compliance requirements, infrastructure dependencies, and stakeholder alignment, said an expert.\" title=\"In real-world settings, engineers must navigate cost constraints, compliance requirements, infrastructure dependencies, and stakeholder alignment, said an expert.\" src=\"https:\/\/images.news18.com\/ibnlive\/uploads\/2021\/07\/1627283897_news18_logo-1200x800.jpg?impolicy=website&amp;width=400&amp;height=225\" loading=\"eager\" fetchpriority=\"high\" class=\"jsx-c88456722e94b84d jsx-3230609546\"\/><i class=\"jsx-c88456722e94b84d jsx-3230609546 imgzoom\"><img decoding=\"async\" src=\"https:\/\/images.news18.com\/dlxczavtqcctuei\/news18\/static\/images\/english\/zoom-img.svg\" width=\"28\" height=\"28\" class=\"jsx-c88456722e94b84d jsx-3230609546 imgzoomicn tap_to_zoom\"\/><\/i><\/div>\n<p>In real-world settings, engineers must navigate cost constraints, compliance requirements, infrastructure dependencies, and stakeholder alignment, said an expert.<\/p>\n<\/figure>\n<\/div>\n<div class=\"jsx-c88456722e94b84d jsx-3230609546 flscrnimgwrp \"><img class=\"jsx-c88456722e94b84d jsx-3230609546 flscrnimg\"\/><span class=\"jsx-c88456722e94b84d jsx-3230609546\"><svg xmlns=\"http:\/\/www.w3.org\/2000\/svg\" width=\"44\" height=\"44\" viewbox=\"0 0 44 44\" fill=\"none\" class=\"jsx-c88456722e94b84d jsx-3230609546 flscrncls\"><circle cx=\"22\" cy=\"22\" r=\"22\" transform=\"rotate(-90 22 22)\" fill=\"#111111\" fill-opacity=\"0.9\" class=\"jsx-c88456722e94b84d jsx-3230609546\"\/><path d=\"M29.7757 16.8142L23.9651 22.6248L29.7757 28.4355L28.3108 29.9004L22.5002 24.0897L16.6896 29.9004L15.2247 28.4355L21.0353 22.6248L15.2247 16.8142L16.6896 15.3493L22.5002 21.16L28.3108 15.3493L29.7757 16.8142Z\" fill=\"white\" class=\"jsx-c88456722e94b84d jsx-3230609546\"\/><\/svg><\/span><\/div>\n<div class=\"z-0 flex min-h-[46px] justify-start\">\n<p id=\"0\" class=\"story_para_0\">From banking and retail to healthcare, companies are pouring resources into AI pilots, chatbots and predictive tools to streamline operations, enhance customer engagement and sharpen internal decision-making. Yet, despite the enthusiasm and investment, a critical question persists: why do so many AI successes struggle to move beyond the pilot stage?<\/p>\n<p id=\"1\" class=\"story_para_1\">Globally, industry surveys consistently show that a majority of AI initiatives stall before full-scale deployment. The issue is rarely that the algorithms fail to deliver results in controlled settings. Instead, organisations often find themselves grappling with the far more complex challenge of maintaining, updating and integrating these systems into real-world business environments.<\/p>\n<\/div>\n<div class=\"flex flex-col text-sm pb-25\">\n<article class=\"text-token-text-primary w-full focus:outline-none [--shadow-height:45px] has-data-writing-block:pointer-events-none has-data-writing-block:-mt-(--shadow-height) has-data-writing-block:pt-(--shadow-height) [&amp;:has([data-writing-block])&gt;*]:pointer-events-auto scroll-mt-[calc(var(--header-height)+min(200px,max(70px,20svh)))]\" dir=\"auto\" tabindex=\"-1\" data-turn-id=\"request-698b332f-87d4-83a3-95b0-df0987eb6ccf-125\" data-testid=\"conversation-turn-390\" data-scroll-anchor=\"true\" data-turn=\"assistant\">\n<div class=\"text-base my-auto mx-auto pb-10 [--thread-content-margin:--spacing(4)] @w-sm\/main:[--thread-content-margin:--spacing(6)] @w-lg\/main:[--thread-content-margin:--spacing(16)] px-(--thread-content-margin)\">\n<div class=\"[--thread-content-max-width:40rem] @w-lg\/main:[--thread-content-max-width:48rem] mx-auto max-w-(--thread-content-max-width) flex-1 group\/turn-messages focus-visible:outline-hidden relative flex w-full min-w-0 flex-col agent-turn\" tabindex=\"-1\">\n<div class=\"mt-3 w-full empty:hidden\">\n<p>\u201cMost organisations approach AI as a technology experiment rather than an operational transformation. Scaling requires more than building accurate models. It demands robust data pipelines, infrastructure readiness, governance frameworks, and clear cross-functional ownership. Many enterprises succeed at proof-of-concept stages but encounter friction when models must integrate with legacy systems and real workflows. The constraint is rarely intelligence. It is the absence of disciplined deployment practices and sustained accountability once systems move into production,&#8221; says Raghav Gupta, Founder &amp; CEO, Futurense \u2013 an AI skilling company.<\/p>\n<\/div>\n<\/div>\n<\/div>\n<\/article>\n<\/div>\n<p id=\"9\" class=\"story_para_9\"><strong>What Is The Skills Gap That Nobody Is Talking About?<\/strong><\/p>\n<p id=\"10\" class=\"story_para_10\">India produces close to 1.5 million engineering graduates every year, one of the highest in the world. Yet the availability of engineers does not automatically translate into readiness for AI deployment. Building a machine-learning model and running it in a production system requires fundamentally different skill sets.<\/p>\n<p id=\"11\" class=\"story_para_11\">AI deployment means embedding models into live enterprise systems where they operate reliably and deliver measurable value. It involves integrating models with data infrastructure, ensuring performance under real traffic conditions, implementing monitoring frameworks, and maintaining governance standards, explains Gupta. \u201cDeployment also requires clarity of ownership and defined accountability. A model in isolation is experimentation. A model embedded within workflows, influencing decisions and sustaining operational impact, represents true deployment.&#8221;<\/p>\n<p id=\"12\" class=\"story_para_12\">When asked about what skills are lacking in graduates, Gupta pointed to \u201cexposure to live production environments&#8221;. \u201cIn real-world settings, engineers must navigate cost constraints, compliance requirements, infrastructure dependencies, and stakeholder alignment. What is often missing is lifecycle fluency. Enterprises require professionals who understand how early design decisions influence scalability, reliability, and measurable business outcomes. The gap is not technical potential. It is a structured experience operating within business-critical systems after launch,&#8221; he said.<\/p>\n<p id=\"13\" class=\"story_para_13\">Model building is often academic and experimental. Deployment demands expertise in data engineering, cloud infrastructure, cybersecurity, software architecture, performance monitoring and governance frameworks. It involves designing pipelines that continuously feed data, updating models without disrupting services, and ensuring systems remain secure and compliant. These are not skills that emerge from theory-heavy curricula alone.<\/p>\n<p id=\"14\" class=\"story_para_14\">Another, Krishna Khandelwal, Founder &amp; CEO of Hunar.AI \u2013 an HR-tech start-up based out of Gurugram and Bengaluru \u2013 said, \u201cGraduates understand theory, but struggle with workflows. They don\u2019t grasp well how businesses actually operate day to day, what processes drive revenue, what tasks are repetitive, and where AI can truly augment output. They rarely think in terms of KPIs. Knowing which metrics to track and how to measure incremental gains from AI adoption is the missing muscle today.&#8221;<\/p>\n<p id=\"15\" class=\"story_para_15\"><strong>What Are Enterprise Blind Spots?<\/strong><\/p>\n<p id=\"16\" class=\"story_para_16\">The responsibility for stalled AI projects does not rest solely with the workforce. Many enterprises approach AI as a plug-and-play solution rather than a long-term organisational capability. The expectation of quick returns often collides with the reality that AI deployment is iterative, resource-intensive, and dependent on cross-departmental collaboration.<\/p>\n<p id=\"17\" class=\"story_para_17\">\u201cFear and uncertainty are the biggest blind spots. The employee asked to \u2018implement AI\u2019 often does not know if they are augmenting their performance or automating themselves out. Without clarity, adoption becomes defensive. Enterprises must clearly communicate intent and ringfence teams driving AI transformation. AI should feel like leverage, not a threat. When employees understand the strategic impact and their role in it, adoption will accelerate,&#8221; stresses Khandelwal.<\/p>\n<p id=\"18\" class=\"story_para_18\">One of the most common blind spots is unclear business objectives. Companies frequently initiate AI pilots driven by competitive pressure or fear of missing out rather than by clearly defined problems. Without a strong link to measurable outcomes such as cost reduction, efficiency gains or revenue growth projects lose momentum once the initial excitement fades. Another persistent issue is data quality. AI systems are only as reliable as the information they consume, yet many organisations underestimate the effort required to clean, standardise, and secure their data.<\/p>\n<p id=\"19\" class=\"story_para_19\">Gupta highlights that companies \u201cassume&#8221; that successful pilots will naturally scale. \u201cOrganisations often underinvest in data quality, monitoring mechanisms, governance processes, and post-deployment optimisation. Another gap is unclear ownership once AI systems go live. Without defined accountability, performance deteriorates, and adoption slows. Enterprises must treat AI as infrastructure rather than innovation theatre. That shift requires disciplined execution, deployment-ready talent, and long-term commitment to continuous improvement,&#8221; he said.<\/p>\n<p id=\"20\" class=\"story_para_20\">Cultural resistance within organisations also plays a role. Employees may view AI tools as threats rather than enablers, slowing adoption and integration. Leadership, meanwhile, may underestimate the change-management aspect, assuming technology alone will drive transformation. In reality, successful deployment demands continuous training, communication, and alignment across technical and non-technical teams.<\/p>\n<p id=\"21\" class=\"story_para_21\"><strong>What Skills Are Companies Seeking Today<\/strong><\/p>\n<p id=\"22\" class=\"story_para_22\">\u201cEnterprises increasingly seek professionals who combine technical depth with execution maturity. This includes systems integration, data engineering, cloud infrastructure awareness, monitoring frameworks, and security compliance, along with the ability to collaborate across product and business teams. Building accurate models is no longer sufficient. Organisations need engineers who can take ownership once systems move into production and remain accountable for performance and measurable outcomes. In many AI-native companies, these responsibilities are formalised under roles such as Forward Deployed Engineers, who bridge experimentation and sustained enterprise impact,&#8221; explains Gupta.<\/p>\n<p id=\"23\" class=\"story_para_23\">Every function, whether it is sales, marketing, HR, or finance, now requires subject-matter expertise and fluency in AI, highlights Khandelwal. \u201cEmployees should use tools like Zapier and n8n to create lightweight workflows, set up basic agents, and write effective prompts. We are seeing the rise of hybrid roles: Sales Engineers, Marketing Engineers, and HR Engineers. The gap is not in intelligence; it is about applied capability. Talent today finds it difficult to operationalize AI into day-to-day tasks,&#8221; he said.<\/p>\n<p id=\"24\" class=\"story_para_24\">He further said AI projects are frequently viewed as tactical trials. \u201cWhen leaders portray AI as an afterthought, teams follow suit. It takes a backseat to their real work. A clear top-down strategic mandate is necessary for scaling AI. AI must be proclaimed a directional lever rather than a pilot by leadership. What transforms experiments into infrastructure is ownership, ringfenced teams, and clearly defined outcomes.&#8221;<\/p>\n<p id=\"25\" class=\"story_para_25\">Beyond skills and strategy lies another layer of complexity: infrastructure and regulation. Deploying AI at scale requires robust computing resources, cloud integration, and secure networks capable of handling vast volumes of data. For many Indian enterprises, especially mid-sized firms, the cost and technical complexity of building such infrastructure can be daunting.<\/p>\n<p id=\"26\" class=\"story_para_26\"><strong>The Economic Stakes For India<\/strong><\/p>\n<p id=\"27\" class=\"story_para_27\">The implications of stalled AI projects extend beyond individual companies. India may be seen as a nation that excels at experimentation but struggles with execution.<\/p>\n<p id=\"28\" class=\"story_para_28\">Conversely, bridging the deployment gap presents a significant opportunity. The demand for professionals skilled in AI operations, cloud engineering, and enterprise technology management is growing rapidly. These roles command higher value than entry-level coding jobs and have the potential to create a new tier of specialised employment. Productivity gains from successful AI deployment can also enhance competitiveness across industries, from manufacturing and agriculture to finance and public services.<\/p>\n<p id=\"29\" class=\"story_para_29\">On a macroeconomic level, widespread adoption of production-ready AI systems can improve efficiency, reduce operational costs, and stimulate innovation. The challenge lies not in access to technology but in the readiness to integrate and sustain it. India\u2019s digital ambitions depend as much on operational maturity as on technological invention.<\/p>\n<p id=\"30\" class=\"story_para_30\">At the ongoing AI Summit in New Delhi, Prime Minister Narendra Modi highlighted on February 18 India\u2019s transformative potential and the role the country can play in the AI revolution. \u201cWe are not just nurturing talent, but we are building the infrastructure, policy ecosystem, and skills base required for India to move from participating in the AI revolution to shaping it.&#8221;<\/p>\n<p id=\"31\" class=\"story_para_31\">\u201cMy vision for AI in Aatmanirbhar Bharat rests on three pillars: sovereignty, inclusivity, and innovation. My vision is that India should be among the top three AI superpowers globally, not just in the consumption of AI but in the creation of models,&#8221; he added.<\/p>\n<div class=\"jsx-18814a1d8226d353 artnws newsletter\">\n<p>Handpicked stories, in your inbox<\/p>\n<p>A newsletter with the best of our journalism<\/p>\n<p><input type=\"text\" placeholder=\"Enter Your Email\" class=\"jsx-18814a1d8226d353 artnwinpt\" value=\"\"\/><button class=\"jsx-18814a1d8226d353 subscrbe newsletter\">submit<\/button><\/p>\n<\/div>\n<div class=\"jsx-c88456722e94b84d jsx-3230609546 atbtlink fp\"><span>First Published:<\/span><\/p>\n<div class=\"rs\">\n<p>February 18, 2026, 11:47 IST<\/p>\n<\/div>\n<\/div>\n<div class=\"jsx-c88456722e94b84d jsx-3230609546 brdcrmb\"><a href=\"https:\/\/www.news18.com\/\">News<\/a>  <a href=\"https:\/\/www.news18.com\/explainers\/\">explainers<\/a>  <span class=\"brdout\"> AI Hype vs Reality: Why Companies Struggle To Scale And Workers Feel The Pressure<\/span><\/div>\n<div id=\"coral-wrap\" class=\"jsx-ba4d8f086a12294f \">\n<div class=\"jsx-ba4d8f086a12294f coral-cont\">\n<div class=\"jsx-ba4d8f086a12294f coltoptxt\">Disclaimer: Comments reflect users\u2019 views, not News18\u2019s. Please keep discussions respectful and constructive. Abusive, defamatory, or illegal comments will be removed. News18 may disable any comment at its discretion. By posting, you agree to our <a href=\"https:\/\/www.news18.com\/disclaimer\/\" class=\"jsx-ba4d8f086a12294f\">Terms of Use<\/a> and <a href=\"https:\/\/www.news18.com\/privacy_policy\/\" class=\"jsx-ba4d8f086a12294f\">Privacy Policy<\/a>.<\/div>\n<\/div>\n<\/div>\n<section class=\"jsx-2248194255 qrsect\">\n<div style=\"display:none\" class=\"jsx-2248194255 paywall\">\n<p>Globally, industry surveys consistently show that a majority of AI initiatives stall before full-scale deployment. The issue is rarely that the algorithms fail to deliver results in controlled settings. Instead, organisations often find themselves grappling with the far more complex challenge of maintaining, updating and integrating these systems into real-world business environments.<\/p>\n<\/div>\n<div class=\"flex flex-col text-sm pb-25\">\n<article class=\"text-token-text-primary w-full focus:outline-none [--shadow-height:45px] has-data-writing-block:pointer-events-none has-data-writing-block:-mt-(--shadow-height) has-data-writing-block:pt-(--shadow-height) [&amp;:has([data-writing-block])&gt;*]:pointer-events-auto scroll-mt-[calc(var(--header-height)+min(200px,max(70px,20svh)))]\" dir=\"auto\" tabindex=\"-1\" data-turn-id=\"request-698b332f-87d4-83a3-95b0-df0987eb6ccf-125\" data-testid=\"conversation-turn-390\" data-scroll-anchor=\"true\" data-turn=\"assistant\">\n<div class=\"text-base my-auto mx-auto pb-10 [--thread-content-margin:--spacing(4)] @w-sm\/main:[--thread-content-margin:--spacing(6)] @w-lg\/main:[--thread-content-margin:--spacing(16)] px-(--thread-content-margin)\">\n<div class=\"[--thread-content-max-width:40rem] @w-lg\/main:[--thread-content-max-width:48rem] mx-auto max-w-(--thread-content-max-width) flex-1 group\/turn-messages focus-visible:outline-hidden relative flex w-full min-w-0 flex-col agent-turn\" tabindex=\"-1\">\n<div class=\"mt-3 w-full empty:hidden\">\n<p>\u201cMost organisations approach AI as a technology experiment rather than an operational transformation. Scaling requires more than building accurate models. It demands robust data pipelines, infrastructure readiness, governance frameworks, and clear cross-functional ownership. Many enterprises succeed at proof-of-concept stages but encounter friction when models must integrate with legacy systems and real workflows. The constraint is rarely intelligence. It is the absence of disciplined deployment practices and sustained accountability once systems move into production,\u201d says Raghav Gupta, Founder &amp; CEO, Futurense \u2013 an AI skilling company.<\/p>\n<\/div>\n<\/div>\n<\/div>\n<\/article>\n<\/div>\n<p><strong>What Is The Skills Gap That Nobody Is Talking About?<\/strong><\/p>\n<p>India produces close to 1.5 million engineering graduates every year, one of the highest in the world. Yet the availability of engineers does not automatically translate into readiness for AI deployment. Building a machine-learning model and running it in a production system requires fundamentally different skill sets.<\/p>\n<p>AI deployment means embedding models into live enterprise systems where they operate reliably and deliver measurable value. It involves integrating models with data infrastructure, ensuring performance under real traffic conditions, implementing monitoring frameworks, and maintaining governance standards, explains Gupta. \u201cDeployment also requires clarity of ownership and defined accountability. A model in isolation is experimentation. A model embedded within workflows, influencing decisions and sustaining operational impact, represents true deployment.\u201d<\/p>\n<p>When asked about what skills are lacking in graduates, Gupta pointed to \u201cexposure to live production environments\u201d. \u201cIn real-world settings, engineers must navigate cost constraints, compliance requirements, infrastructure dependencies, and stakeholder alignment. What is often missing is lifecycle fluency. Enterprises require professionals who understand how early design decisions influence scalability, reliability, and measurable business outcomes. The gap is not technical potential. It is a structured experience operating within business-critical systems after launch,\u201d he said.<\/p>\n<p>Model building is often academic and experimental. Deployment demands expertise in data engineering, cloud infrastructure, cybersecurity, software architecture, performance monitoring and governance frameworks. It involves designing pipelines that continuously feed data, updating models without disrupting services, and ensuring systems remain secure and compliant. These are not skills that emerge from theory-heavy curricula alone.<\/p>\n<p>Another, Krishna Khandelwal, Founder &amp; CEO of Hunar.AI \u2013 an HR-tech start-up based out of Gurugram and Bengaluru \u2013 said, \u201cGraduates understand theory, but struggle with workflows. They don\u2019t grasp well how businesses actually operate day to day, what processes drive revenue, what tasks are repetitive, and where AI can truly augment output. They rarely think in terms of KPIs. Knowing which metrics to track and how to measure incremental gains from AI adoption is the missing muscle today.\u201d<\/p>\n<p><strong>What Are Enterprise Blind Spots?<\/strong><\/p>\n<p>The responsibility for stalled AI projects does not rest solely with the workforce. Many enterprises approach AI as a plug-and-play solution rather than a long-term organisational capability. The expectation of quick returns often collides with the reality that AI deployment is iterative, resource-intensive, and dependent on cross-departmental collaboration.<\/p>\n<p>\u201cFear and uncertainty are the biggest blind spots. The employee asked to \u2018implement AI\u2019 often does not know if they are augmenting their performance or automating themselves out. Without clarity, adoption becomes defensive. Enterprises must clearly communicate intent and ringfence teams driving AI transformation. AI should feel like leverage, not a threat. When employees understand the strategic impact and their role in it, adoption will accelerate,\u201d stresses Khandelwal.<\/p>\n<p>One of the most common blind spots is unclear business objectives. Companies frequently initiate AI pilots driven by competitive pressure or fear of missing out rather than by clearly defined problems. Without a strong link to measurable outcomes such as cost reduction, efficiency gains or revenue growth projects lose momentum once the initial excitement fades. Another persistent issue is data quality. AI systems are only as reliable as the information they consume, yet many organisations underestimate the effort required to clean, standardise, and secure their data.<\/p>\n<p>Gupta highlights that companies \u201cassume\u201d that successful pilots will naturally scale. \u201cOrganisations often underinvest in data quality, monitoring mechanisms, governance processes, and post-deployment optimisation. Another gap is unclear ownership once AI systems go live. Without defined accountability, performance deteriorates, and adoption slows. Enterprises must treat AI as infrastructure rather than innovation theatre. That shift requires disciplined execution, deployment-ready talent, and long-term commitment to continuous improvement,\u201d he said.<\/p>\n<p>Cultural resistance within organisations also plays a role. Employees may view AI tools as threats rather than enablers, slowing adoption and integration. Leadership, meanwhile, may underestimate the change-management aspect, assuming technology alone will drive transformation. In reality, successful deployment demands continuous training, communication, and alignment across technical and non-technical teams.<\/p>\n<p><strong>What Skills Are Companies Seeking Today<\/strong><\/p>\n<p>\u201cEnterprises increasingly seek professionals who combine technical depth with execution maturity. This includes systems integration, data engineering, cloud infrastructure awareness, monitoring frameworks, and security compliance, along with the ability to collaborate across product and business teams. Building accurate models is no longer sufficient. Organisations need engineers who can take ownership once systems move into production and remain accountable for performance and measurable outcomes. In many AI-native companies, these responsibilities are formalised under roles such as Forward Deployed Engineers, who bridge experimentation and sustained enterprise impact,\u201d explains Gupta.<\/p>\n<p>Every function, whether it is sales, marketing, HR, or finance, now requires subject-matter expertise and fluency in AI, highlights Khandelwal. \u201cEmployees should use tools like Zapier and n8n to create lightweight workflows, set up basic agents, and write effective prompts. We are seeing the rise of hybrid roles: Sales Engineers, Marketing Engineers, and HR Engineers. The gap is not in intelligence; it is about applied capability. Talent today finds it difficult to operationalize AI into day-to-day tasks,\u201d he said.<\/p>\n<p>He further said AI projects are frequently viewed as tactical trials. \u201cWhen leaders portray AI as an afterthought, teams follow suit. It takes a backseat to their real work. A clear top-down strategic mandate is necessary for scaling AI. AI must be proclaimed a directional lever rather than a pilot by leadership. What transforms experiments into infrastructure is ownership, ringfenced teams, and clearly defined outcomes.\u201d<\/p>\n<p>Beyond skills and strategy lies another layer of complexity: infrastructure and regulation. Deploying AI at scale requires robust computing resources, cloud integration, and secure networks capable of handling vast volumes of data. For many Indian enterprises, especially mid-sized firms, the cost and technical complexity of building such infrastructure can be daunting.<\/p>\n<p><strong>The Economic Stakes For India<\/strong><\/p>\n<p>The implications of stalled AI projects extend beyond individual companies. India may be seen as a nation that excels at experimentation but struggles with execution.<\/p>\n<p>Conversely, bridging the deployment gap presents a significant opportunity. The demand for professionals skilled in AI operations, cloud engineering, and enterprise technology management is growing rapidly. These roles command higher value than entry-level coding jobs and have the potential to create a new tier of specialised employment. Productivity gains from successful AI deployment can also enhance competitiveness across industries, from manufacturing and agriculture to finance and public services.<\/p>\n<p>On a macroeconomic level, widespread adoption of production-ready AI systems can improve efficiency, reduce operational costs, and stimulate innovation. The challenge lies not in access to technology but in the readiness to integrate and sustain it. India\u2019s digital ambitions depend as much on operational maturity as on technological invention.<\/p>\n<p>At the ongoing AI Summit in New Delhi, Prime Minister Narendra Modi highlighted on February 18 India\u2019s transformative potential and the role the country can play in the AI revolution. \u201cWe are not just nurturing talent, but we are building the infrastructure, policy ecosystem, and skills base required for India to move from participating in the AI revolution to shaping it.\u201d<\/p>\n<p>\u201cMy vision for AI in Aatmanirbhar Bharat rests on three pillars: sovereignty, inclusivity, and innovation. My vision is that India should be among the top three AI superpowers globally, not just in the consumption of AI but in the creation of models,\u201d he added.<\/p>\n<\/section>\n<\/div>\n<p><br \/>\n<br \/><a href=\"https:\/\/www.news18.com\/explainers\/ai-hype-vs-reality-why-companies-struggle-to-scale-and-workers-feel-the-pressure-shil-ws-l-9911833.html\">Source link <\/a><\/p>\n","protected":false},"excerpt":{"rendered":"<p>Last Updated:February 18, 2026, 13:00 IST Most organisations approach AI as a technology experiment rather than an operational transformation. Scaling requires more than building accurate models In real-world settings, engineers must navigate cost constraints, compliance requirements, infrastructure dependencies, and stakeholder alignment, said an expert. From banking and retail to healthcare, companies are pouring resources into&#8230;<\/p>\n","protected":false},"author":1,"featured_media":28380,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[49],"tags":[],"class_list":["post-28379","post","type-post","status-publish","format-standard","has-post-thumbnail","hentry","category-tech"],"_links":{"self":[{"href":"https:\/\/tezgyan.com\/index.php\/wp-json\/wp\/v2\/posts\/28379","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/tezgyan.com\/index.php\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/tezgyan.com\/index.php\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/tezgyan.com\/index.php\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/tezgyan.com\/index.php\/wp-json\/wp\/v2\/comments?post=28379"}],"version-history":[{"count":0,"href":"https:\/\/tezgyan.com\/index.php\/wp-json\/wp\/v2\/posts\/28379\/revisions"}],"wp:featuredmedia":[{"embeddable":true,"href":"https:\/\/tezgyan.com\/index.php\/wp-json\/wp\/v2\/media\/28380"}],"wp:attachment":[{"href":"https:\/\/tezgyan.com\/index.php\/wp-json\/wp\/v2\/media?parent=28379"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/tezgyan.com\/index.php\/wp-json\/wp\/v2\/categories?post=28379"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/tezgyan.com\/index.php\/wp-json\/wp\/v2\/tags?post=28379"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}