Forward Deployed Engineer
Adobe ·
senior
Salary Range (USD)
$208k - $302k
Location
San Jose, USA
Visa Support
Not mentioned
Funding Stage
seed
Job Responsibilities
- • Hands-on engineering
- • Direct collaboration with customer engineering teams
Required Skills
AI/MLPythonCloud skillsAPIsData analysisObservability
Engineering Culture & Tech Stack
PythonJavaScalaPyTorchTensorFlowJAXAWSGCPAzureDockerCI/CDGit
Build-first approach
Strong communicator
Ability to work directly with customers
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Adobe | Forward Deployment Engineering (AI/ML)| SJ| Hybrid | Full-Time
Location: San Jose, CA (Hybrid/Onsite).
As a Forward Deployed Engineer, you’ll act as a technical ambassador for Adobe—splitting your time between:
•Hands-on engineering (building AI-powered systems, APIs, and integrations)
•Direct collaboration with customer engineering teams
The Stack:
•Languages: Python, Java, Scala
•ML/AI Frameworks: PyTorch, TensorFlow, JAX
•LLM Systems: RAG pipelines, agents, prompt orchestration, evaluation frameworks
•Cloud & DevOps: AWS, GCP, Azure, Docker, CI/CD, Git
•MLOps / LLMOps: Evaluation pipelines, prompt/version management, feature flags, canary releases
What we’re looking for:
We’re looking for a senior engineer (9+ years) with hands-on AI/ML and LLM experience who takes a build-first approach. You bring strong Python and cloud skills, experience with APIs, data analysis, and observability, and can take systems from prototype to production.
You understand modern AI architectures (RAG, agents, evaluation), have a track record of shipping and iterating in real-world environments, and can turn data into action. You’re also a strong communicator who can work directly with customers, guide implementations, and drive measurable impact.
Comp: $208,300 - $301,600 base + Equity + Adobe’s notoriously good benefits.
How to Apply: Email me directly at skatkar@adobe.com with "HN: [Your Name]" in the subject line.
Official Link: https://careers.adobe.com/us/en/job/ADOBUSR163356EXTERNALENU...
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