Posted on: 17/03/2026
Description :
We are looking for an MLOps Engineer to join our team. In this role, you will bridge the gap between Data Science and Operations.
We are not looking for a generalist software engineer; we need someone who has specifically applied DevOps principles to Machine Learningbuilding CI/CD pipelines for models, managing Kubernetes clusters for training/inference, and who speaks the language of Data Scientists (PyTorch, Tensors, GPUs).
About SatSure. SatSure is a deep tech, decision Intelligence company that works primarily at the nexus of agriculture, infrastructure, and climate action, creating an impact for the other millions, focusing on the developing world. We want to make insights from Earth observation data accessible to all.
Join us to be at the forefront of building a deep tech company from India that solves problems for the globe.
Roles & Responsibilities :
- 1- 3 years of relevant experience as MLEngineer, MLOps, or Platform Engineering roles.
- Mandatory : Functional understanding of Machine Learning/Deep Learning concepts and the PyTorchframework.
- Mandatory : Prior experience working with Kubernetes and CI/CD in a production environment.
- Bachelors degree in Computer Science, IT, or a related field; non-IT degrees with relevant experience are also acceptable.
Must-have Skills :
- Experience with ML workflow tools like KServe, Triton Inference Server and MLflow.
- Experience profiling and optimizing PyTorch models for production inference on accelerator platforms such as NVIDIA GPUs, TPUs, and AWS Inferentia.
- Background in processing Geospatial or Remote Sensing data.
Competencies :
- Technical Translator : Ability to understand requirements from Data Scientists and translate them into robust infrastructure components.
- Debugging : Excellent troubleshooting skills for complex distributed systems (e.g., debugging why a pod crashed during inference).
- Collaboration : Strong communication skills to work effectively within a cross-functional team.
Benefits :
- Intro call.
- Assessment (Focus on Kubernetes/Docker/ML Deployment).
- Interview rounds (ideally up to 3 rounds).
- Culture Round / HR round.
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Posted in
DevOps / SRE
Functional Area
DevOps / Cloud
Job Code
1621339