Principal Engineer, AI System Architect; Hardware
Listed on 2026-03-01
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IT/Tech
Systems Engineer, AI Engineer -
Engineering
Systems Engineer, AI Engineer
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Job Title:Principal Engineer, AI System Architect (Hardware)
What You’ll Do
The Architecture Research Lab (ARL) focuses on addressing fundamental system-level bottlenecks in modern AI, particularly in memory capacity/bandwidth and system-scale communication. By leveraging Samsung’s world-class memory technologies, ARL explores and defines next-generation AI system architectures that deliver step-function improvements in performance, efficiency, and scalability.
We are seeking a Senior Staff AI System Architect who will play a key role in bridging AI workloads, system architecture, and hardware design. In this role, you will develop system-level performance models, drive architecture-level design decisions, and propose forward-looking AI system architectures that shape Samsung’s long-term AI platform strategy.
Location
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Daily onsite presence at our San Jose office in alignment with our Flexible Work policy
Job : 42852
- Conduct system-level architectural research for next-generation AI systems, spanning compute, memory, and interconnect/network subsystems.
- Develop and maintain analytical and simulation-based system modeling frameworks to evaluate AI workloads and identify performance, scalability, and efficiency bottlenecks at rack- and system-scale.
- Analyze representative and emerging AI workloads (e.g., LLMs, DLRMs, and future AI models) to derive architecture requirements and trade-offs across compute, memory, networking, and power.
- Drive architecture-level design decisions through quantitative modeling, design-space exploration, and performance/power projections.
- Perform comparative studies of alternative system architectures, reporting performance and performance-per-watt metrics to guide strategic technology choices.
- Lead the architecture team with strong technical direction, shaping system‑architecture strategy and advancing key innovations
- Collaborate closely with cross-functional teams in hardware architecture, memory, interconnect, and system engineering to align modeling insights with implementation realities.
- Communicate architectural insights and recommendations through clear technical presentations and documentation.
- Occasional domestic and international travel.
- Ph.D. in Computer Science, Electrical Engineering, or a related field, with 15+ years of experience in system architecture for large-scale computing platforms, with a strong focus on AI workloads.
- Proven hands-on experience developing analytical and event-driven simulation models for system-level performance evaluation.
- Deep understanding of AI system hardware architectures, including compute, memory hierarchies, and high-performance interconnects.
- Strong knowledge of modern and emerging AI workloads, including LLMs, DLRMs, and large-scale training and inference systems.
- Demonstrated ability to translate workload characteristics and modeling results into actionable architectural design decisions.
- Proficiency in Python, C++, and PyTorch for modeling, analysis, and experimentation.
- Excellent written, verbal, and presentation communication skills, with the ability to influence technical direction across teams.
- A collaborative mindset, intellectual curiosity, and resilience in tackling complex, open-ended system-level challenges.
- You’re inclusive, adapting your style to the situation and diverse global norms of our people.
- You approach challenges with…
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