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-haves:
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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