(Senior) Chief Leading Expert / Lab Director – Next-Gen Storage Media & AI Data Infrastructure
Huawei Alle Jobs anzeigen
- Zürich
- Unbefristet
- Vollzeit
- Define the long-term technology roadmap for warm and cold storage systems, with explicit focus on AI data lifecycle (data ingest m feature/embedding generation, vector indexing , retrieval , inference).
- Lead industry insights to anticipate convergence of controller innovation and software-hardware co-design.Architectural Innovation:
- Research and develop next-generation storage architectures that reduce systemic bottlenecks in high-latency media through advanced data placement, IO scheduling, caching, and intelligent task orchestration.
- Translate media constraints (latency, endurance, streaming characteristics, cost curves) into system-level architecture decisions.AI-Driven Storage Optimization (Training + Inference + RAG):
- Bridge AI workloads and storage: optimize throughput, tail latency, and reliability for large-scale training and inference.
- Design storage-aware approaches for RAG pipelines (e.g., data tiering for embedding stores and vector indexes, prefetching, context/KV reuse, and “hot set” management across tiers).Ecosystem & Collaboration:
- Lead strategic technical cooperation with top-tier European universities and research institutes.
- Foster an open research environment to translate breakthroughs into prototypes and product-facing technologies.Requirements & Qualifications:15+ years of deep expertise in storage systems (SSD/NAND, distributed/cloud storage, or cold storage systems), with a track record of leading high-impact projects and delivering measurable outcomes.AI Infrastructure Insight:
- Strong understanding of AI infrastructure needs, including LLM inference, KV cache strategies, and RAG / vector search system considerations (performance, consistency, tiering, cost).Deep Media Expertise:
- Profound expertise in at least one storage medium domain: NAND/SSD, tape/cold storage, or emerging non-volatile media.
- Ability to design system-level solutions that leverage a medium's strengths while mitigating its physical limitations; working knowledge of additional media types is a plus.System Mastery:
- Expert command of storage algorithms and system techniques: data layout/arrangement, workload or application profiling, data classification/tiering, IO path optimization, scheduling, and orchestration.Visionary Thinking:
- Strong ability to reason about technology maturity cycles and translate industry trends into actionable research and product strategy.Leadership & Communication:
- Fluency in English; ability to influence cross-functional global teams and engage with senior academic/industry stakeholders.