Staff Operations Engineer (MLOps)
Adobe2 Locations$208k – $302kPosted 7 April 2026
Tech Stack
Job Description
We are seeking an experienced Staff Operations Engineer with deep expertise in cloud infrastructure and a passion for building scalable, production‑grade ML systems. As part of the Applied Research and Technology Services organization, you will play a meaningful role crafting the operational backbone for high‑performance, reliable, and globally scaled machine learning services. In this role, you’ll work closely with multi-functional collaborators. These include Adobe Research, Adobe AI Platforms, and product engineering teams. Together, you will architect solutions that speed up innovation and improve service resilience. You will also provide technical leadership and define, document, and enforce guidelines adopted across teams. You will own technical direction for core service infrastructure and MLOps, influence architectural decisions across multiple teams, and raise the operational maturity of the organization through standards, reusable platforms, and mentorship. You will evaluate and introduce new infrastructure, optimization, and agentic technologies with clear value and adoption plans. This position is ideal for someone who thrives at the intersection of DevOps, MLOps, systems engineering, and automation.
Key Responsibilities
Build and automate cloud infrastructure provisioning, scaling, and deployments using industry‑standard tools and infrastructure‑as‑code practices.
Architect and implement end‑to‑end
MLOps
pipelines
for packaging, deploying, and
monitoring
large‑scale ML services.
Build and integrate telemetry agents
to capture operational, performance, and inference metrics across distributed ML services.
Build backend dashboards and observability workflows
that
surface quality, performance, traffic, and reliability insights for ML services.
Lead the development of
Agentic
Ops
solutions
to
optimize
large-scale ML production workflows, reduce MTTR, and increase service engineering productivity.
Develop and
maintain
robust CI/CD pipelines
(e.g., GitLab CI, GitHub Actions, Jenkins) enabling automated model conversion, optimization (PTQ/QAT), and artifact packaging.
Drive standards
in reliability, cost optimization, and operational readiness across service deployments.
Qualifications
8 years
of experience in DevOps, SRE, or cloud infrastructure engineering roles
Demonstrated experience designing and managing
MLOps
lifecycles , including model deployment, inference optimization, and production monitoring.
Strong knowledge of
CI/CD methodologies
and tools such as
GitOps , Docker, Terraform, GitHub Actions, GitLab CI, or Jenkins.
Hands-on
expertise
with
Kubernetes orchestration , including frameworks such as Kubeflow, Argo Workflows, or similar systems.
Strong programming skills in
Python , with experience building automation tooling for ML or DevOps workflows.
Proficiency
with
observability and monitoring platforms
(e.g., Prometheus, Grafana, Splunk, New Relic) for building reliable production systems.
Experience
optimizing
distributed architectures for
cost efficiency, reliability, and performance .
Familiarity with deep learning frameworks (e.g.,
PyTorch , TensorFlow ) and model optimization tools such as
ONNX,
TensorRT ,
TFLite , AOT , etc., is a strong plus.
About Adobe
Adobe empowers everyone to create through innovative platforms and tools that unleash creativity, productivity and personalized customer experiences. Adobe’s industry-leading offerings including Adobe Acrobat Studio, Adobe Express, Adobe Firefly, Creative Cloud, Adobe Experience Platform, Adobe Experience Manager, and GenStudio enable people and businesses to turn ideas into impact, powered by AI and driven by human ingenuity.
Our 30,000 employees worldwide are creating the future and raising the bar as we drive the next decade of growth. We’re on a mission to hire the very best and believe in creating a company culture where all employees are empowered to make an impact. At Adobe, we believe t ... (truncated, view full listing at source)
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