Senior MLOps Platform Architect
This a FullRemote job, the offer is available from: EMEARemote in EU| B2B ContractRole OverviewWe are hiring a senior MLOps whocan build an entire AI platform infrastructure end-to-end. This is not aresearch role and not a standard ML Engineer role. If you haven’tdesigned production-grade MLOps infrastructure, haven’t built bolthires/CD forML, or haven’t deployed ML workloads on Kubernetes at scale, this roleis not a fit. You will design, build, and own the AWS-based infrastructure,Kubernetes platform, bolthires/CD pipelines, and observability stack thatsupports our AI models (Agentic AI, NLU, ASR, Voice Biometrics,TTS).You will be the technical owner of MLOps infrastructure decisions,patterns, and standards. Key Responsibilities:MLOps Platform Architecture (from scratch)• Design and build AWS-based AI/ML infrastructure using Terraform (required). • Define standards for security, automation, bolthires efficiency, and governance. • Architect infrastructure for ML workloads, GPU/accelerators, scaling, and high availability. Kubernetes & Model Deployment• Architect, build, and operate production Kubernetes clusters. • Containerize and productize ML models (Docker, Helm).• Deploy latency-sensitive and high-throughput models (ASR/TTS/NLU/Agentic AI). • Ensure GPU and accelerator nodes are properly integrated and optimized. bolthires/CD for Machine Learning• Build automated training, validation, and deployment pipelines (GitLab/Jenkins). • Implement canary, blue-green, and automated rollback strategies. • Integrate MLOps lifecycle tools (MLflow, Kubeflow, SageMaker Model Registry, etc.). Observability & Reliability• Implement full observability (Prometheus + Grafana). • Own uptime, performance, and reliability for ML production services.• Establish monitoring for latency, drift, model health, and infrastructure health. Collaboration & Technical Leadership• Work closely with ML engineers, researchers, and data scientists. • Translate experimental models into production-ready deployments. • Define best practices for MLOps across the company. Requirements:We’re looking for a senior engineer with a strong DevOps/SREbackground who has worked extensively with ML systems in production. Theideal candidate brings a combination of infrastructure, automation, andhands-on MLOps experience.• 5+ years in aSenior DevOps, SRE, or MLOps Engineering role supporting production environments. • Strong experience designing, building, and maintaining Kubernetes clusters in production. • Hands-on expertise with Terraform (or similar IaC tools) to manage cloud infrastructure. • Solid programming skills in Python or Go for building automation, tooling, and ML workflows. • Proven experience creating and maintaining bolthires/CD pipelines (GitLab or Jenkins). • Practical experience deploying and supporting ML models in production (e.g., ASR, TTS, NLU, LLM/Agentic AI).• Familiarity with ML workflow orchestration tools such as Kubeflow, Apache Airflow, or similar. • Experience with experiment tracking and model registry tools (e.g., MLflow, SageMaker Model Registry). • Exposure to deploying models on GPU or specialized hardware (e.g., Inferentia, Trainium). • Solid understanding of cloud infrastructure on AWS, including networking, scaling, storage, and security best practices. • Experience with deployment tooling (Docker, Helm) and observability stacks (Prometheus, Grafana).Ways to Know You’ll Succeed• You enjoy building platforms from the ground up and owning technical decisions. • You’re comfortable collaborating with ML engineers, researchers, andsoftware teams to turn research into stable production systems. • You like solving performance, automation, and reliability challenges in distributed systems. • You bring a structured, pragmatic, and scalable approach to infrastructure design. • Energetic and proactive individual, with a natural drive to take initiative and move things forward.• Enjoys working closely with people - researchers, ML engineers, cloud architects, product teams. • Comfortable sharing ideas openly, challenging assumptions, and contributing to technical discussions. • Collaborative mindset: you like to build together, not work in isolation. • Strong ownership mentality - you enjoy taking responsibility for systems end-to-end. • Curious, hands-on, and motivated by solving complex technical challenges. • Clear communicator who can translate technical work into practical recommendations.• Thrives in a fast-paced environment where you can experiment, improve, and shape how things are done. What's on Offer:• Competitive fixed compensation based on experience and expertise. • Work on cutting-edge AI systems used globall. • Dynamic, multi-disciplinary teams engaged in digital transformation. • Remote-first work model• Long-term B2B contract• 20+ days paid time off• bolthires gear• Training & development budgetDiversity and Inclusion CommitmentWe are dedicated to creating and sustaining an inclusive, respectfulworkplace for all -regardless of gender, ethnicity, or background.Weactively encourage applicants from all identities and experience levelsto apply and bring your authentic self to our fast-paced, supportiveteam. This offer from "Salve.Inno Consulting" has been enriched by Jobgether.com and got a 80% flex score. Apply tot his job