Join the team as our new MLOps / Platform Engineer (IC3)
India
We are looking for a talented engineer to join our India team - someone who has worked in ML, MLOps, platform engineering and is excited to help build the infrastructure and tooling that empowers our AI transformation. In this role, you will help design, build, and operate systems that support GenAI and ML solutions across the full lifecycle - from data ingestion and model training through to deployment in our self-hosted AI platform.
You will work closely with ML engineers, backend engineers, and platform stakeholders to build systems that are reliable, observable, and built to scale.
What You'll Do:
- Architect and maintain cloud-native ML & GenAI infrastructure on AWS, including managed services such as SageMaker, Bedrock, EKS, EC2, S3, Lambda, API Gateway, RDS, CloudTrail, and CloudWatch.
- Help your team deploy solutions to Kubernetes clusters across cloud and on-premises environments.
- Develop and maintain Infrastructure-as-Code (IaC) using tools such as Terraform and Helm.
- Design, build, and manage multi-stage ETL pipelines to support model training and real-time inference workloads.
- Support model development workflows, including experiment tracking, model versioning, and reproducible training runs.
- Collaborate with ML engineers on fine-tuning, evaluation, and deployment of models, including LLMs and GenAI components.
- Implement observability solutions for ML training and inference pipelines (e.g., Weights & Biases or equivalent tooling).
- Establish and enforce platform patterns and engineering best practices across teams.
Cloud & ML Infrastructure
Data & Model Pipelines
Platform Reliability & Practices
What It Takes:
- Proven experience with AWS managed services: SageMaker, Bedrock, EKS, EC2, S3, Lambda, API Gateway, RDS, CloudTrail, and CloudWatch.
- Proven experience with Kubernetes, both on cloud and on-premises.
- Proven experience designing and operating multi-stage ETL pipelines for ML training and inference.
- Proven experience setting up observability for ML models (training and inference), such as with Weights & Biases (W&B).
- Solid understanding of platform engineering best practices and patterns.
- Hands-on experience with Infrastructure-as-Code tools (Terraform, Helm, or similar).
- Ability to work closely with ML engineers, backend engineers, and platform stakeholders on shared, cross-functional systems.
- Comfortable establishing and enforcing platform patterns and best practices across teams.
- Clear communicator, able to align infrastructure decisions with the needs of model development and deployment workflows.
- Reliability-minded: builds systems that are observable, scalable, and built to last, not just functional.
- Curious about the full ML lifecycle, from data ingestion and training through to production deployment, rather than infrastructure in isolation.
- Pragmatic and standards-driven, with a bias toward reusable platform patterns over one-off solutions.
- Experience securing managed and self-hosted AI platforms, including ChatUI integrations, MCP servers, and backend services.
- Familiarity with Apache Kafka and event-driven architectures.
- Hands-on experience with Snowflake integrations.
- Experience with ETL-as-Code frameworks such as dbt.
- Hands-on experience with workflow orchestrators such as Prefect or equivalent (e.g., Airflow, Dagster).
- Proven experience with AWS IAM and account management.
- Familiarity with ML frameworks such as PyTorch, Hugging Face, or scikit-learn.
- This is not a pure DevOps or SRE role. You will work directly with ML systems, training pipelines, and model deployment - not just maintain cloud infrastructure.
- This is not a data engineering role. While you will build and operate data pipelines, the focus is enabling ML training and inference workflows, not analytics or business reporting.
Technical
Leadership & Collaboration
Mindset
Nice to Have
What This Role Is Not:
Skills Required
- Experience working in Machine Learning
- Experience in MLOps and platform engineering
- Experience designing, building, and operating infrastructure and tooling for GenAI/ML
- Experience across ML lifecycle: data ingestion, model training, and model deployment
- Ability to build reliable, observable, and scalable systems
- Strong collaboration with ML engineers, backend engineers, and platform stakeholders
Protolabs Compensation & Benefits Highlights
The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about Protolabs and has not been reviewed or approved by Protolabs.
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Healthcare Strength — Medical, dental, and vision options are broadly available and described as good to excellent. Additional protections like short- and long-term disability and life insurance bolster the overall package.
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Leave & Time Off Breadth — A starting PTO allotment plus paid holidays, along with added wellness and volunteer time, is emphasized, with some roles noting PTO growth over tenure. Paid caregiver leave appears in postings and supports flexibility for life events.
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Retirement Support — A 401(k) with company match and immediate vesting is offered, supporting long-term savings. This foundation is frequently cited alongside core financial benefits as a strong element of total rewards.
Protolabs Insights
What We Do
Protolabs is the world's fastest digital manufacturing source for rapid prototyping and on-demand production. The technology-enabled company produces custom parts and assemblies in as fast as 1 day with automated 3D printing, CNC machining, sheet metal fabrication, and injection molding processes. Our digital approach to manufacturing enables accelerated time to market, reduces development and production costs, and minimizes risk throughout the product life cycle. 3D Printing Our 3D printing service offers a wide selection of materials and technologies to create prototypes and end-use parts with complex geometries and detailed features. With tight process controls, careful design reviews, and extensive quality monitoring, we ensure precise and repeatable 3D-printed parts, every time. CNC Machining We use 3- and 5-axis milling along with turning to machine parts from commercial-grade plastics and metals. Our online quoting system and automated manufacturing process enable us to ship parts within 24 hours, helping customers accelerate development and reduce time to market. Sheet Metal Fabrication Protolabs is an industry leader in quick-turn sheet metal parts for both prototyping and low-volume production. Our digital approach to manufacturing enables us to fabricate sheet metal parts in as fast as 5 days. Additionally, we can support our customers’ development efforts with component assemblies, several finish options, and screen printing. Injection Molding Our injection molding service offers two options—prototyping and on-demand manufacturing—which provide customers a tooling solution that aligns with their project’s requirements. It’s used for quick-turn prototyping, bridge tooling, and low-volume production of up to 10,000+ parts in 15 days or less.

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