Overview
Build the AI infrastructure layer that determines whether modern models actually work in production.
Most AI roles sit at the application layer. This one does not.
At DDN , we’re hiring an AI Engineer to work on the hard part of AI: the systems, storage, and performance infrastructure behind real-world model serving and inference. This is the role for engineers who care about what happens under load, at scale, and in production — not just in demos.
If your background sits at the intersection of AI infrastructure, distributed systems, and performance engineering, this is the kind of role where your depth will matter.
Job Description
What you’ll do
- Build and optimize LLM serving and inference systems for production environments
- Improve performance across GPU and CPU pathways
- Work on KV cache, memory, storage, and throughput bottlenecks
- Design and scale systems that support RAG and retrieval-heavy AI workloads
- Contribute to infrastructure where storage architecture and systems efficiency materially affect AI performance
- Solve engineering problems at the intersection of AI, high-performance systems, and distributed infrastructure
What we’re looking for
- An engineer who has spent meaningful time building or optimizing production AI systems, not just experimenting with models
- Someone who understands how inference performance is shaped by the interaction between compute, memory, storage, and serving architecture
- Deep hands-on experience working close to the systems layer — for example, improving how workloads run across GPU and CPU resources, reducing bottlenecks, or tuning infrastructure for better throughput and latency
- Evidence of real ownership in areas like model serving, retrieval, caching, storage, or distributed performance, rather than purely application-layer AI work
- The ability to move comfortably between architecture decisions and hands-on implementation, especially in environments where efficiency and scale matter
- A background that suggests you can operate in technically demanding environments, whether that comes from AI infrastructure, high-performance systems, storage platforms, or adjacent distributed systems work
- PhD preferred, but far less important than having built serious systems in the real world
Why this role is compelling
- This is not a “prompt engineering” job.
- This is not an “AI wrapper” job.
- This is not a generic backend role with AI sprinkled on top.
- This is a chance to work on the infrastructure that determines whether modern AI systems are fast, scalable, efficient, and commercially viable.
- If you want to work on the real mechanics of AI performance — serving, retrieval, compute efficiency, memory behavior, storage archit