Defining the 'Silent Layoff'
Forget mass emails and public announcements. The current churn in India's IT sector is happening through quieter, less direct methods. Industry experts and employees describe a trend of 'silent layoffs' or 'quiet firing'. Instead of large-scale termination
events, companies are increasingly using performance improvement plans (PIPs), once a tool for development, as a path to the exit. Other methods include forced resignations, restructuring that eliminates roles, and not replacing employees who leave, all of which contribute to a shrinking workforce without formal layoff declarations. This allows companies to reduce headcount and manage costs, often avoiding severance pay, while publicly maintaining a narrative of stability. Staffing firms estimate that tens of thousands of tech jobs could be cut this year through these subtle means.
The AI Productivity Mandate
The pressure to trim the workforce is directly linked to the rise of generative AI. Companies are no longer just experimenting with AI; they are embedding it into core processes to boost productivity, automate routine tasks like coding and testing, and get more output from fewer people. This has created an intense focus on efficiency, where every role is being evaluated for its necessity in an AI-augmented workflow. For employees, this translates into a new kind of pressure. They are being monitored by AI-powered tools that measure output and effectiveness, creating a culture of constant performance anxiety. While many companies publicly state AI is for augmenting, not replacing, staff, the reality is a structural shift where roles are being redesigned or eliminated as AI handles more work.
A Perfect Storm of Factors
The current situation is not the result of a single cause but a convergence of factors. The aggressive hiring surge during the pandemic created a bloated workforce that companies are now rationalizing. This correction is compounded by weaker business conditions and cautious client spending on discretionary tech projects. Superimposed on this is the AI revolution. The push for AI adoption isn't just about long-term strategy; it's a near-term tool for clients to negotiate lower prices and for companies to defend their profit margins. The combination of a post-pandemic headcount correction, a softer global market, and the disruptive power of AI has created a perfect storm, forcing a fundamental restructuring of the Indian IT workforce.
The Great Skill Reset
The message from the industry is clear: the jobs are changing, not just disappearing. While roles involving repetitive tasks and basic coding are under immense pressure, there is a simultaneous surge in demand for professionals with skills in AI, machine learning, data engineering, and cybersecurity. This has created a significant skills gap. India could face a shortage of over a million AI professionals by the end of 2026 if workers don't upskill rapidly. For the individual employee, this means the challenge is no longer just about surviving a layoff cycle but about adapting to an industry where value is measured by the ability to work with and leverage AI. Companies are also shifting their hiring focus, prioritizing specialized skills over generalist programming roles, which is disproportionately affecting the hiring of fresh graduates.
The View From the Top
Publicly, major IT firms are framing this transition as one of realignment and investment in the future. For example, while the top five Indian IT firms saw a combined net reduction in employees in FY26, some are showing signs of renewed hiring in specific areas. TCS, after three quarters of headcount reduction, added over 9,200 employees in the first quarter of FY27, signaling a rebound. However, the company's chairman has also noted that AI agents will increasingly augment the workforce, leading to a moderation in overall hiring. These companies are also investing heavily in training, with firms like TCS training over 300,000 employees in AI and machine learning. The narrative is one of evolution, focusing on building an 'AI-ready' workforce rather than admitting to AI-driven job cuts.
















