Senior MLOps Engineer - Large-Scale AdTech Platform

adjoe • Germany
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AI Summary

Architect and maintain ML pipelines for 2 billion+ daily requests across 770 million users. Design continuous training systems, observability frameworks, and low-latency serving infrastructure using Tensorflow, PyTorch, and NVIDIA Triton. Collaborate with data scientists and infrastructure teams to build automated ML platforms on Kubernetes and Airflow.

Key Highlights
Scale of 770 million users and 100,000+ predictions per second
Full ML lifecycle ownership from research to A/B experimentation
Sub-100ms inference serving with NVIDIA Triton
Continuous Training pipelines for model freshness
Observability with Evidently for data skew and distribution shifts
Global relocation support to Hamburg, Germany
Key Responsibilities
Deploy and maintain models in high-traffic environments
Design and manage continuous training pipelines
Build monitoring systems for data skew and distribution shifts
Wrap deep learning models into production APIs
Lead load testing to validate performance at scale
Architect ML platform with Kubernetes and Docker
Collaborate with infrastructure teams for automated cluster access
Technical Skills Required
Tensorflow PyTorch NVIDIA Triton ONNX Runtime TF Serving Kubernetes Docker Airflow Kubeflow Evidently
Benefits & Perks
Relocation support to Hamburg, Germany
Worldwide talent welcome
Impact on 770M users and billions of daily decisions

Job Description


adjoe builds the technologies behind mobile apps growth and monetization. With our core product Playtime Arcade, we've become the global leader in rewarded advertising, an ad unit built on a simple premise: users earn real in-app rewards for engaging with new apps. The result is one of the most effective value exchanges in adtech, connecting advertisers and publishers with over 770 million users annually.

Architecting Intelligence to Optimize 200M+ Daily Decisions

As the intelligence core of our engineering organization, our Data Science team doesn't just deploy models, we engineer the fundamental decision engine that powers our platform. At a scale of 770 million users and 100,000+ predictions per second, we are solving a multi-objective optimization problem that balances user incentives, advertiser ROI, and long-term platform health in real time.

Our architecture is built on a 1PB+ behavioral data lake, providing the high-fidelity input necessary to train deep learning models that predict individual user engagement with precision. We aren't just optimizing clicks, we are dynamically calculating optimal reward structures to sustain a global value exchange.

Engineered for performance, our stack leverages Tensorflow and PyTorch for model training, NVIDIA Triton to achieve sub-100ms inference. We own the full ML lifecycle from high-level research and feature engineering to deployment and A/B experimentation. Here, you will find the autonomy, the data depth, and the massive scale required to solve the most complex optimization challenges in the adtech ecosystem.

Your Mission & Who We Are Looking For:

  • MLOps at production scale. You have 5+ years in MLOps or ML Engineering with a track record of deploying and maintaining models in high-traffic environments. At adjoe, that means keeping models fresh and performant across 2 billion+ daily requests, where decay in model quality directly impacts user experience and advertiser KPIs.
  • Continuous Training & Automation. You design and manage CT pipelines and scheduling logic to ensure models stay current as new data flows in. You understand the end-to-end ML lifecycle well enough to know when a model needs retraining.
  • Observability is part of the system, not an afterthought. You build monitoring systems that catch data skew, distribution shifts, and performance decay in production, using frameworks like Evidently, with alerts integrated directly into production pipelines.
  • Low-latency serving under heavy load. You wrap deep learning models into production APIs and lead load testing to validate performance at scale. You're proficient in serving frameworks like Triton, ONNX Runtime, or TF Serving, and use deep-dive resource profiling to guide efficiency and optimization.
  • ML platform ownership. You work with infrastructure teams to architect the ML platform, automated access to CPU/GPU clusters via Kubernetes, Docker, and orchestration tools like Airflow or Kubeflow, so data scientists can focus on models, not infrastructure.
  • Plus: AdTech industry background. You understand how ad delivery systems work and the business logic underneath.

What’s in It for You?

  • 🌎 We welcome applications from talent worldwide and provide relocation support to Hamburg, Germany for those ready to join our team.

What’s in It for You?

At adjoe, you’re not here to just close JIRA tickets, you’re helping build the infrastructure behind one of the most impactful platforms in adtech. The systems you work on will reach hundreds of millions of users and power billions of decisions every day.

  • Go Big. Own projects with impact on 770M users and push adtech boundaries.
  • Move Fast. Ship solutions multiple times a day, learn from results, and keep momentum.
  • Be Direct. Solve problems openly and collaborate across teams.
  • Thrive Together. Grow with a diverse, global team of people from over 40 different countries that learn from each other.
  • Have Fun. Celebrate wins, enjoy daily victories, and bring your energy.

Skip writing cover letters. Tell us about your most passionate personal project, your desired salary and your earliest possible start date. We are looking forward to your application!

We welcome applications from people who will contribute to the diversity of our company.


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