Machine Learning Engineer
All the best with your application!
Want more jobs like this straight to your inbox?
Get Job Alerts
Get a curated list of the top robotics roles delivered straight to your inbox each week. We sift through hundreds of postings to find the high-salary positions, leading companies, and remote opportunities you actually want.
Unsubscribe anytime. We respect your privacy.
Summary
Hyderabad, India
Full-time
7+ years
About this Job
About Gradera — Digital Twin & Physical AI Platform
At Gradera, we are building a next-generation Digital Twin and Physical AI platform that enables enterprises to model, simulate, and optimize complex real-world systems. Our work brings together strategy, architecture, data, simulation, and experience design to power decision-making across large-scale operational environments such as manufacturing, logistics, and supply chain networks.
This platform-led initiative applies AI-native execution, advanced simulation, and governed orchestration to help organizations test scenarios, predict outcomes, and continuously improve performance. We operate with an enterprise-first mindset prioritizing reliability, transparency, and measurable business impact as we build intelligent systems that scale beyond a single industry or use case.
Machine Learning (ML) Engineer
Overview
We are seeking skilled ML Engineers to join our Simulation & Scenario Enablement team. This is a specialized role at the intersection of machine learning engineering and physics-based simulation. You will design and implement production-grade ML pipelines, build physics-informed neural networks (PINNs) that respect physical constraints, and develop neural architectures that accelerate simulation workloads. You will own the full MLOps lifecycle — from feature engineering and model training to deployment, monitoring, and continuous improvement — ensuring ML models reliably power real-time scenario evaluation and digital twin intelligence.
Our core ML engineering stack includes:
ML Frameworks & Development
PyTorch and TensorFlow for neural network development
Physics-Informed Neural Networks (PINNs) for constraint-aware modeling
Neural ODE solvers (torchdiffeq, diffrax) for continuous-time dynamics
Python (NumPy, SciPy, pandas) for numerical computing
MLOps & Platform
Databricks ML for scalable model training and pipelines
MLflow for experiment tracking, model registry, and deployment
Unity Catalog for ML asset governance and lineage
Delta Lake for feature storage and versioned training data
Feature Store for feature management and serving
Production & Monitoring
Model serving and inference optimization
Model monitoring, drift detection, and alerting
CI/CD for ML pipelines
Containerized model deployment (Docker, Kubernetes/OpenShift) |
Key Responsibilities
Design and implement Physics-Informed Neural Networks (PINNs) with domain constraints
Develop neural ODE solvers and surrogate models for physics simulations
Build hybrid ML architectures combining data-driven learning with physics-based priors
Optimize neural models for accuracy, inference speed, and resource efficiency
Design scalable feature engineering pipelines using Databricks and PySpark
Manage features in Feature Store and build Delta Lake training pipelines
Build end-to-end ML pipelines on Databricks ML
Track experiments, version models, and deploy using MLflow
Implement model monitoring for drift, performance, and prediction quality
Build CI/CD for ML and ensure governance via Unity Catalog
Preferred Qualifications
7+ years of experience in ML engineering, applied ML, or scientific computing roles
Master’s or PhD in Computer Science, Machine Learning, Computational Science, Physics, or related field
Track record of deploying ML models in production at scale
Experience with physics-based or scientific ML applications
Experience working in agile, cross-functional teams
Highly Desirable
Experience with ML for digital twin or simulation platforms
Background in computational physics, numerical methods, or scientific computing
Experience with differentiable programming and automatic differentiation frameworks
Familiarity with discrete event simulation or agent-based modeling integration
Experience with GPU-accelerated training and inference optimization
Publications or patents in physics-informed ML, neural ODEs, or surrogate modeling
Contributions to open-source ML/scientific computing projects
Exposure to industrial domains such as Manufacturing, Logistics, or Transportation is a plus
Location: Hyderabad, Telangana Department: Engineering Employment Type: Full-Time
Location
Hyderabad, Telangana
Department
Engineering
Employment Type
Full-Time
Minimum Experience
Experienced
About the Company
