Rodeo
ResourcesPartnersSign in

Era4

AI Infrastructure Validation Engineer - Interim

England
Posted about 15 hours ago
Sign up to applySee more jobs like this

How your CV stacks up

1Upload CV
2Analyse CV
3Improve CV

Upload your CV to see how well it fits this job role

?%

Era4

Era4 develops, owns, and operates AI infrastructure across the UK, powered by renewable energy. Converting legacy industrial and energy sites into modern data-centre facilities, Era4 is combining brownfield regeneration opportunities with cleaner, efficient, scalable compute capacity for healthcare, research, finance, enterprise, and public-sector organisations.

Initial 6 month contract.

Start date - 13th/20th July.

Competitive day rate.

If you are a contractor open to perm, please include salary expectations in application.

Role Summary

We are seeking an AI Infrastructure Validation Engineer to join our fast-scaling team. This role sits within Product but works across Product, Engineering, and Operations. You will design, build, and orchestrate the automated preflight validation suites and performance benchmarks that continuously verify our bare-metal APIs, Kubernetes environments, and multi-node GPU clusters under enterprise-scale workloads.

You will ensure that every platform release, infrastructure change, or hardware deployment is tested, validated, and production-ready before reaching customers. This is an opportunity to join a mission-led AI business that is redefining infrastructure, intelligence, and impact for enterprise customers.

Key Responsibilities

Software-Defined Infrastructure Validation & Preflight Automation

  • Design and build zero-dependency, Python-based "preflight" verification tools to validate multi-node distributed initialization, master-to-worker rendezvous routing, and correct GPU-to-CPU process affinity prior to launching massive model-training workloads.
  • Write and maintain Infrastructure as Code to provision, configure, test, and teardown complex bare-metal and containerized compute environments.
  • Implement Resilient Execution: Construct adaptive, intelligent test orchestration harnesses that can autonomously detect environment drifts and analyse platform changes.

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.

P

Graduate Consultant — 2026 Scheme

PwC·London, UK
£35,000/yr

Why you're a good match

Strong

Your 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 breakdown
Save jobNot relevant
View details

It 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.

See breakdown
Strong

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.

See breakdown
Strong

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.

GPU Platform & Low-Latency Network Validation

  • Automate the execution and results aggregation of cluster-level benchmarking suites and high-performance storage benchmarks to validate node-to-node throughput limits.
  • Build validation routines to monitor high-throughput network fabrics, evaluating traffic patterns, congestion control parameters.
  • Script low-level automated checks to validate server-node topology, PCIe link speeds, HBM memory status, secure boot parameters, and firmware performance via BMC, IPMI, or Redfish interfaces.

Continuous Integration & Observability

  • Integrate automated infrastructure validation suites directly into CI/CD pipelines.
  • Configure and maintain observability pipelines to route real-time diagnostic logs and hardware execution metrics to quickly isolate slow, misconfigured, or degrading compute nodes.
  • Partner with the Platform team, Network Engineers, and Datacentre Operations to lead root-cause analysis on complex platform regressions, hardware-software boundaries, and distributed interconnect bottlenecks.

Essential Experience

  • Strong proficiency in Python for building zero-dependency verification tools, automated test orchestration harnesses, and low-level system checks.
  • Deep hands-on experience writing and maintaining Infrastructure as Code to provision, configure, and teardown complex bare-metal and containerized compute environments.
  • Proven experience working within Kubernetes environments and validating enterprise-scale, multi-node distributed systems.
  • Scripting automated checks for server-node topology, PCIe link speeds, HBM memory status, firmware performance, and interfacing with hardware via BMC, IPMI, or Redfish.
  • Demonstrated capability integrating automated infrastructure validation suites into CI/CD pipelines.
  • Configuring observability pipelines for real-time diagnostic logs and hardware metrics.
  • History of partnering across Engineering, Product, and Datacentre Operations to conduct root-cause analysis on complex platform regressions and hardware-software boundaries.

Get help with your application

Your very own career expert that helps elevate your application to the next level.

Get help applying for this job

Preferred Experience

  • Prior experience validating infrastructure specifically optimized for massive model-training workloads, including a solid understanding of GPU-to-CPU process affinity and master-to-worker rendezvous routing.
  • Deep understanding of high-throughput network fabrics, traffic patterns, and congestion control parameters in multi-node GPU clusters.
  • Background in building and executing cluster-level benchmarking suites and high-performance storage benchmarks to isolate node-to-node throughput limits.
  • Experience designing intelligent test systems capable of autonomously detecting environment drifts and analysing large-scale platform changes.

Why Join Era4

You’ll be joining a mission-driven start-up building critical national infrastructure, where operational excellence directly enables growth. This role offers high visibility with leadership, real autonomy, and the chance to shape how a next-generation company operates at scale.

Diversity & Inclusion

Era4 is an equal opportunity employer. We celebrate diversity and are committed to creating an inclusive environment for all employees.

Trusted by 25,000+ job seekers

“It took my CV and asked me questions relevant to understanding what kind of jobs to suggest for me. Suggestions were almost perfect. Jobs were exactly what I’ve been looking for.”

Jessica, London

Get help applying for this job

Skills

Python
Infrastructure as Code
Kubernetes
Automated Testing
GPU Clusters
CI/CD Pipelines
Observability
Root-Cause Analysis
Network Validation
Benchmarking
Data-Centre Operations
Performance Metrics
Test Automation
Distributed Systems
Low-Latency Networks
Model-Training Workloads

Location

England, United Kingdom

Sign up to applySee more jobs like this