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Today, engineers are expected to operate increasingly wth AI systems. Image: AI generated
A decade ago, the core expectation from an engineer was pretty linear: Write solid code, ship features on predictable release cycles, and let separate teams worry about deployment, monitoring, and “keeping the lights on”.
Today, that boundary has collapsed. Engineers are expected to build and operate systems continuously, integrate across stacks via APIs, automate workflows, think security-first, and increasingly, work with AI systems that behave less like static software and more like moving parts.That churn shows up clearly in LinkedIn’s latest Skills on the Rise 2026 list for India. And within it sits a sharper cut: The function-specific Engineering Skills on the Rise 2026 ranking.
This is the top-10 list of the engineering skills Indian companies are increasingly hiring for right now.
Skills Indian engineers should invest in
According to LinkedIn, the ten engineering skills currently gaining the strongest hiring momentum are: Querying; Cybersecurity; Programming; Large Language Model Operations (LLMOps); Workflow Automation; Process Optimisation; Collaboration; Data Engineering; Automated Machine Learning (AutoML); and API (Application Programming Interface).
Taken together, these ten skills sketch the outline of a new engineering mandate. Querying and Data Engineering signal that data fluency are not niche capabilities anymore, they now underpin everything. Cybersecurity and APIs, on the other hand, reflect a world of interconnected systems where risk travels fast. One weak endpoint, one overlooked vulnerability, and reputations collapse overnight. Programming still remains the spine, but LLMOps and AutoML in that list show that building software increasingly requires deploying and managing AI in production.
Employers’ preference for Workflow Automation and Process Optimisation point to the fact that engineers are expected to spot waste instinctively and eliminate it to help businesses squeeze costs and trim inefficiencies. Then there is Collaboration, perhaps the quiet revolution, acknowledging that in an AI-shaped enterprise, technical brilliance alone no longer carries projects across the finish line.
The bottleneck has moved
If that list feels eclectic at first glance, it becomes coherent when read as a story about shifting constraints.
For years, engineers were rewarded for technical depth: How elegantly they could write code, how efficiently they could solve an algorithmic puzzle. Today, as AI tools accelerate development and compress traditional barriers to entry, depth alone no longer guarantees distinction.That tension is precisely what Malai Lakshmanan, Head of India Engineering at LinkedIn, points to. “For years, engineering advantage came from technical depth.
Today, AI is raising that baseline. While foundational skills like programming and cybersecurity continue to be important, workflow automation and LLMOps are accelerating what engineers can build in the age of AI,” he observes. It is a sharp diagnosis of how the ground beneath engineering has shifted. Then, he pushes the argument further away from machines and towards humans. “But as execution speeds up, the bottleneck has moved from ‘writing code’ to ‘aligning people,” says Lakshmanan.The argument, then, is less about smarter machines and more about smarter alignment.“Collaboration is emerging as one of the most critical skills for engineers today because AI systems now sit across functions and business lines. The ability to work across disciplines, challenge assumptions and build trust is what determines whether AI drives impact or stalls in silos. That’s why India’s most competitive engineers will be those who combine advanced AI knowledge with the ability to collaborate at scale and translate complexity into enterprise grade outcomes,” he adds.There are two signals embedded in that assessment. Firstly, it is making basic technical output easier to produce. When code can be assisted and models can be packaged into tools, “being good at writing” is no longer rare. The advantage shifts to the engineer who can stitch systems together and make them work reliably in the real world. Secondly, as delivery speeds up, confusion becomes expensive. If teams are not aligned, projects don’t fail loudly.
They just stall, drift, or ship the wrong thing faster.That is why Collaboration shows up on an engineering skills list. Not as a soft add-on, but as a survival skill. Modern engineering sits at the crossroads of product, security, compliance and business goals — especially when AI is involved. These systems run across departments, so engineers now have to, too.So LinkedIn’s ranking is not merely a forecast. It is a quiet reset of what “good engineering” looks like in India: less lone genius, more enterprise-grade execution — with data, risk, automation and people in the same frame.


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