Founding ML Engineer
Indexed description
Founding ML Engineer
About Us
Base Compute is an AI inference lab. Our mission is to bring AGI on device. We believe in a world where everyone has access to intelligence: fast, private, and always available on your device.
We're building the infrastructure for the next generation of on-device AI, from silicon-level optimizations to distributed inference systems.
We're working on hard problems at the intersection of inference efficiency, model intelligence, and autonomous research.
The Role
We're looking for a Founding ML Engineer to work at the frontier of on-device AI. This role is for someone who lives at the intersection of systems engineering and machine learning, turning state-of-the-art research into hyper-optimized, production-ready infrastructure.
You'll have significant ownership over our entire inference stack and direct influence on the technical bets the company makes.
What You'll Work On
- Inference engine development: building and scaling our custom inference engine, handling everything from weight loading and KV-cache management to efficient request scheduling
- Cross-platform silicon optimization: writing and tuning custom kernels and leveraging hardware-specific instructions to squeeze maximum performance out of diverse architectures, including Apple Silicon, NVIDIA, AMD, Snapdragon, and other edge platforms
- Systems architecture: developing robust, low-latency serving runtimes in C++ to manage model routing, continuous batching, and novel decoding strategies under strict thermal and memory constraints
- Performance profiling: identifying and eliminating bottlenecks across the entire stack, from memory bandwidth ceilings to kernel interleaving
What We're Looking For
- 3+ years of experience in ML engineering or systems programming (Rust, C/C++), with a strong track record of building performance-critical software
- Expertise in GPU programming and hardware optimization across various platforms (CUDA, ROCm, Metal, Triton, or similar)
- Solid understanding of modern LLM architectures, including parsing formats and implementing optimization techniques (quantization, speculative decoding, etc.)
- A strong sense of ownership and autonomy: the ability to take ambiguous architectural challenges and drive them from research translation directly into production-ready infrastructure
- Good communication: the ability to explain complex architectural decisions simply, give honest feedback, and document systems cleanly
Nice to Have
- Familiarity with ML compilers (torch.compile, custom operators)
- Experience with low-precision inference (INT8/FP8/FP4)
- Knowledge of Edge LLMOps
What We Offer
- Founding team equity and strong base salary
- Direct influence on technical direction: your ideas will shape the roadmap
- Work on genuinely hard problems that haven't been solved yet
- Small team, fast iteration, low bureaucracy
Location
- The team is based in Melbourne and Berlin and works in-person from the office most days. We require strong written and spoken English, since the team collaborates across time zones.
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