Activez les alertes d’offres d’emploi par e-mail !

Senior DevOps Engineer – Remote

Replika

Paris

À distance

EUR 60 000 - 90 000

Plein temps

Il y a 5 jours
Soyez parmi les premiers à postuler

Mulipliez les invitations à des entretiens

Créez un CV sur mesure et personnalisé en fonction du poste pour multiplier vos chances.

Résumé du poste

A leading company is seeking a Senior DevOps Engineer to enhance its AI platform infrastructure. In this role, you'll build and maintain robust cloud services, ensuring high availability and security while collaborating closely with AI teams. This position offers the chance to shape technology that impacts millions globally and work with a talented, distributed team.

Prestations

Competitive compensation
Opportunity to impact millions
Remote work flexibility
Team offsites
Creative work environment

Qualifications

  • 5+ years of hands-on experience in DevOps or site reliability engineering.
  • Strong expertise in multi-cloud infrastructure including AWS and GCP.
  • Experience with MLOps tooling like MLFlow or Kubeflow.

Responsabilités

  • Design and maintain scalable infrastructure for AI applications.
  • Automate deployment using modern DevOps practices.
  • Collaborate with engineering teams to optimize CI / CD pipelines.

Connaissances

Cloud infrastructure
DevOps tools
Containerization
Monitoring tools
CI / CD pipelines

Description du poste

An AI companion who is eager to learn and would love to see the world through your eyes. Replika is always ready to chat when you need an empathetic friend.

About Replika

Replika is an AI companion loved by 35M+ users worldwide. We're redefining what it means to connect with technology - emotionally, intelligently, and personally. From mobile to VR, we're building an experience that feels less like software and more like someone who gets you. Our team is mission-first, future-facing, and here to create something wonderful. We value agency, room for magic, and a relentless pursuit of good.

About the Role

We're looking for a Senior DevOps Engineer to join our globally distributed, remote-first team. This is a hands-on, high-impact role for someone who thrives in a fast-paced environment and is passionate about building scalable, reliable, and secure infrastructure for cutting-edge AI applications. You'll work closely with engineering, AI, and analytics teams to ensure our platform is robust, performant, and ready to support millions of users around the world.

What You'll Be Doing

  • Design, build, and maintain scalable infrastructure across cloud, on-premises, and hybrid environments to support our rapidly growing AI platform.
  • Support AI teams and MLOps workflows by implementing specialized tooling, monitoring, and deployment pipelines for machine learning models.
  • Automate deployment, monitoring, and scaling of services using modern DevOps tools and practices across diverse infrastructure environments.
  • Ensure high availability, reliability, and security of production and staging environments in multi-cloud and hybrid setups.
  • Collaborate with AI and backend engineers to streamline CI / CD pipelines optimized for ML workflows and bring new features to production.
  • Monitor system performance and troubleshoot issues proactively, implementing solutions to prevent downtime across distributed infrastructure.
  • Drive infrastructure as code (IaC) initiatives to improve repeatability and reduce manual intervention across all deployment environments.
  • Implement and maintain monitoring, logging, and alerting systems specifically designed for AI workloads and model performance tracking.
  • Participate in on-call rotations and respond to production incidents with deep understanding of AI system requirements.

Who You Are

  • 5+ years of hands-on experience in DevOps, cloud infrastructure, or site reliability engineering.
  • Strong expertise in multi-cloud and hybrid infrastructure including AWS, GCP, and on-premises environments.
  • Experience with MLOps tooling such as MLFlow, Kubeflow, DataRobot, or similar platforms for ML lifecycle management.
  • Experience with containerization and orchestration (Docker, Kubernetes) specifically for ML workloads and GPU clusters.
  • Deep understanding of CI / CD pipelines for machine learning applications and model deployment automation.
  • Experience with specialized monitoring tools for AI systems including model performance tracking, data drift detection, and ML-specific alerting.
  • Understanding of GPU clusters, HPC environments, and specialized AI hardware deployment and management.
  • Excellent communication skills in English (B2 or higher preferred) with ability to translate technical concepts to stakeholders.
  • Passion for AI and technology , with deep curiosity about machine learning infrastructure and emerging AI technologies.

Bonus Points

  • Background in supporting data science teams and understanding of ML experimentation workflows.
  • Experience with edge computing and distributed AI inference infrastructure.
  • Previous startup experience building and scaling AI infrastructure from the ground up.
  • Knowledge of AI compliance and governance frameworks for production AI systems.

What You’ll Get

  • Competitive compensation
  • A chance to build a product that actually matters to millions of people
  • Freedom to work remotely with a globally distributed team
  • Offsites in different countries with people who actually like each other
  • A trustworthy, high-responsibility environment where your ideas really matter
Obtenez votre examen gratuit et confidentiel de votre CV.
ou faites glisser et déposez un fichier PDF, DOC, DOCX, ODT ou PAGES jusqu’à 5 Mo.