Jobgether
Principal ML Ops Engineer

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Principal ML Ops Engineer
This position is listed on behalf of a partner company, who manages all applications and next steps. Our partner is looking for a Principal ML Ops Engineer based in United Kingdom.
This is a highly technical leadership opportunity to build and scale the infrastructure powering next-generation AI applications.
The role focuses on designing reliable, efficient, and production-grade machine learning platforms capable of supporting large-scale AI workloads.
You will take ownership of model serving systems, GPU-powered infrastructure, deployment pipelines, and operational excellence.
Working closely with infrastructure, platform, and AI teams, you will help shape the foundations of a modern AI-native cloud ecosystem.
This position offers the chance to solve complex distributed systems challenges while improving performance, scalability, and cost efficiency.
You will play a key role in defining engineering standards and building critical ML infrastructure from the ground up.
Accountabilities
- Design, build, and operate production-grade ML inference infrastructure using modern model serving frameworks such as vLLM, TGI, Triton, or equivalent solutions.
- Develop scalable deployment pipelines supporting reliable model releases through strategies such as blue/green deployments and canary rollouts.
- Build and maintain auto-scaling systems, multi-model serving architectures, and intelligent request routing mechanisms.
- Optimize GPU utilization, memory efficiency, network performance, and model artifact storage to improve system reliability and cost effectiveness.
- Implement observability solutions to monitor inference latency, throughput, GPU usage, operational health, and infrastructure costs.
- Manage model registries, CI/CD workflows, and automation processes to enable reproducible and efficient model deployments.
- Own the complete lifecycle of ML systems, from development and deployment through production operations and ongoing support.
- Establish engineering best practices and contribute to platform architecture decisions in a fast-moving, remote-first environment.
- Collaborate with infrastructure, platform, and applied AI teams to deliver scalable and reliable AI systems.
Reasons to use Rodeo
I’m in my final year doing Economics and I don’t know whether to apply for grad schemes now or do a masters first. What do you think?
Honest answer — it depends on where you want to end up. A lot of top grad schemes (Big 4, civil service, banking) don’t need a masters. Let’s look at the ones you’d be competitive for now, and we can decide if a masters actually adds anything.
Also worth knowing: most autumn 2026 applications are open now. Timing matters more than you think.
Start with a chat, not a search bar
Grad scheme, placement, apprenticeship? Not sure what you want yet — that's fine. Your agent talks it through with you and turns "I have no idea" into a shortlist.
Graduate Consultant — 2026 Scheme
Why you're a good match
StrongYour economics background and your summer at a regional bank line up with what PwC looks for on the consulting scheme. Applications close in four weeks.
See breakdownIt searches the market for you
Every day your agent scans the market matching roles against what actually matters to you, not just keywords on a CV.
Why you're a good match
You’ve got the grades and the economics background, and your bank internship is exactly the experience this scheme looks for. Apply soon — deadlines close within the month.
Experience fit
Your summer at the bank plus your econometrics coursework map directly to the day-one responsibilities on this scheme — client modelling, market briefings, and deal support.
Only hits
No noise. No "maybe this fits." Just roles with a clear explanation of why they're right — and where to focus when applying.
Requirements
- 4+ years of experience in ML Ops, Platform Engineering, SRE, or similar infrastructure-focused roles supporting machine learning systems.
- Strong hands-on experience with production model serving frameworks such as vLLM, TGI, Triton, or comparable technologies.
- Proven experience operating GPU-based workloads and managing containerized environments in production.
- Strong understanding of MLOps practices, including model registries, experiment tracking, automated deployment pipelines, and lifecycle management.
- Proficiency in Python and infrastructure-as-code tools such as Terraform, Helm, or similar technologies.
- Solid knowledge of distributed systems, performance optimization, scalability, and reliability engineering principles.
- Experience using AI coding assistants to accelerate software development, troubleshooting, and debugging workflows.
- Ability to work independently with strong ownership and accountability in a remote-first environment.
- Experience with ML platforms such as Kubeflow, MLflow, or KubeAI is a plus.
- Knowledge of GPU scheduling, CUDA/ROCm optimization, multi-tenant inference systems, and infrastructure cost optimization is advantageous.
- Previous experience building greenfield infrastructure projects or working in early-stage technology environments is highly valued.
Benefits
- Opportunity to own and shape critical ML infrastructure for a rapidly scaling AI-focused technology platform.
- Fully remote working environment with flexibility to work from Romania.
- Chance to build foundational systems from the ground up rather than maintaining legacy infrastructure.
- Exposure to cutting-edge technologies across distributed systems, GPU computing, and large-scale AI model serving.
- High level of ownership and influence over technical decisions and engineering practices.
- Opportunity to work with experienced professionals solving complex AI infrastructure challenges.
- Dynamic startup environment with strong growth opportunities and meaningful technical impact.


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How Jobgether Works
We use an AI-powered matching process to ensure your application is reviewed quickly, objectively, and fairly against the role's core requirements. Our system identifies the top-fitting candidates, and this shortlist is then shared directly with the hiring company. The final decision and next steps (interviews, assessments) are managed by their internal team.
We appreciate your interest and wish you the best!
Why Apply Through Jobgether?
Data Privacy Notice: By submitting your application, you acknowledge that Jobgether will process your personal data to evaluate your candidacy and share relevant information with the hiring employer. This processing is based on legitimate interest and pre-contractual measures under applicable data protection laws (including GDPR). You may exercise your rights (access, rectification, erasure, objection) at any time.
We may use artificial intelligence (AI) tools to support parts of the hiring process, such as reviewing applications, analyzing resumes, or assessing responses and identifying potential inconsistencies or verification signals in application materials based on available information. These tools assist our recruitment team but do not replace human judgment. Final hiring decisions are ultimately made by humans. If you would like more information about how your data is processed, please contact us.
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