- Perplexity
- San Francisco,
- 1 month ago
- $300K – $385K +Equity
Job Description
About the Role
We are looking for an Inference Engineering Manager to lead our AI Inference team. This is a unique opportunity to build and scale the infrastructure that powers Perplexity's products and APIs, serving millions of users with state-of-the-art AI capabilities.
You will own the technical direction and execution of our inference systems while building and leading a world-class team of inference engineers. Our current stack includes Python, PyTorch, Rust, C++, and Kubernetes. You will help architect and scale the large-scale deployment of machine learning models behind Perplexity's Comet, Sonar, Search, Deep Research products.
Why Perplexity?
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Build SOTA systems that are the fastest in the industry with cutting-edge technology
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High-impact work on a smaller team with significant ownership and autonomy
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Opportunity to build 0-to-1 infrastructure from scratch rather than maintaining legacy systems
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Work on the full spectrum: reducing cost, scaling traffic, and pushing the boundaries of inference
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Direct influence on technical roadmap and team culture at a rapidly growing company
Responsibilities
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Lead and grow a high-performing team of AI inference engineers
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Develop APIs for AI inference used by both internal and external customers
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Architect and scale our inference infrastructure for reliability and efficiency
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Benchmark and eliminate bottlenecks throughout our inference stack
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Drive large sparse/MoE model inference at rack scale, including sharding strategies for massive models
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Push the frontier with building inference systems to support sparse attention, disaggregated pre-fill/decoding serving, etc.
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Improve the reliability and observability of our systems and lead incident response
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Own technical decisions around batching, throughput, latency, and GPU utilization
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Partner with ML research teams on model optimization and deployment
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Recruit, mentor, and develop engineering talent
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Establish team processes, engineering standards, and operational excellence
Qualifications
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5+ years of engineering experience with 2+ years in a technical leadership or management role
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Deep experience with ML systems and inference frameworks (PyTorch, TensorFlow, ONNX, TensorRT, vLLM)
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Strong understanding of LLM architecture: Multi-Head Attention, Multi/Grouped-Query Attention, and common layers
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Experience with inference optimizations: batching, quantization, kernel fusion, FlashAttention
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Familiarity with GPU characteristics, roofline models, and performance analysis
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Experience deploying reliable, distributed, real-time systems at scale
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Track record of building and leading high-performing engineering teams
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Experience with parallelism strategies: tensor parallelism, pipeline parallelism, expert parallelism
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Strong technical communication and cross-functional collaboration skills
Nice to Have
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Experience with CUDA, Triton, or custom kernel development
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Background in training infrastructure and RL workloads
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Experience with Kubernetes and container orchestration at scale
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Published work or contributions to inference optimization research
