Machine Learning Engineer
ShiaanX
2 - 5 years
Delhi
Posted: 10/03/2026
Job Description
About ShiaanX
ShiaanX is an AI driven Industrial startup building the software and physical infrastructure for the next generation of precision manufacturing. We combine AI-native engineering tools with real factory operations creating a closed loop between design intent, intelligent process planning, and the physical production of complex parts. The vision is to create a manufacturing system where a part comes in as a CAD model and the system handles everything downstream quoting, process plan generation, execution tracking, inspection, shipping with humans in the loop for exceptions only. We are in a High Mix Low Volume (HMLV) business and our Industries include advanced manufacturing sectors viz. Aerospace, Drones, Defence, Medical and Electronics.
The Role
We are looking for an Engineering Manager who will own the technical architecture and execution of our core platform from intelligent process automation to real-time factory intelligence. This is a founding-team-level role. You will shape how the system is built, who builds it, and how it evolves as we scale.
You will work directly with the founders across machine learning, geometric computing, systems integration and manufacturing software. You will be expected to go deep technically while maintaining clarity on the full product vision.
What You Will Do
Own end-to-end technical architecture across our AI and software platform
Work directly with manufacturing operations to ensure software delivers measurable outcomes on the shop floor
Drive the design and development of AI models for geometric reasoning, process planning, and real-time machine intelligence
Build and maintain the data infrastructure that powers our AI systems ingestion, labeling, training pipelines, and feedback loops
Collaborate with external partners, job shops, and tool rooms to integrate and validate our platform in real production environments
Define engineering roadmap in close coordination with founders and operations leadership
Integrate with CNC Machines and design feedback loops between machining operations, machine telemetry and inspection data to continuously improve process planning and quoting accuracy
Who We Are Looking For
Background
Degree in Mechanical Engineering, Aerospace Engineering, Computer Science, or related field IIT / NIT / BITS or equivalent
23 years of engineering experience with a strong track record in reinforcement learning, physics based AI models.
Prior experience in manufacturing technology, CAD/CAM systems, industrial automation, or robotics is a significant advantage
Hands-on background in ML/AI systems not just familiarity, but actual model development and deployment experience
Technical Depth
Strong foundation in machine learning supervised learning, reinforcement learning, geometric deep learning
Experience with 3D geometry, computational design, or simulation environments is highly valued
Comfortable with the full stack data pipelines, model training, APIs, edge compute, and system integration
Familiarity with industrial protocols, CAM systems, CNC machining workflows or real-time systems is a plus
Others
Ability to operate in ambiguity we are building something new and the roadmap will evolve
Strong communication skills able to translate between shop-floor realities and engineering abstractions
High ownership mentality you define the problem as much as you solve it
Comfortable working directly with manufacturing teams on the shop floor
What We Offer
Founding-team-level equity and compensation benchmarked to top Indian deep tech startups
Direct collaboration with founders no layers, no committees
Access to real manufacturing infrastructure from day one your models run on real machines
A problem space that is genuinely unsolved at the level we are attacking it
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