Deep Learning Compiler Engineer (New Grad)
Role details
Job location
Tech stack
Job description
As a new-grad Deep Learning Compiler Engineer, you will work on CGC, Quadric's neural network compiler that lowers ONNX models through Relay IR down to C++ targeting the Chimera GPNPU. You will own work in real compiler passes - layout selection, memory allocation, operator splitting, code generation - and your changes will ship into the code that runs on Quadric silicon. This is a hands-on engineering role on a small, senior team. You will design IR transformations, debug the C++ the compiler emits, and drive how efficiently neural networks map to our hardware. The ramp is steep, the codebase is large, and the feedback loop from your changes to running silicon is short. Note: We strongly prefer candidates willing to relocate to the California Bay Area and work from our Burlingame office. Responsibilities
- Own compiler passes. Design and implement IR transformations that lower neural network IR to GPNPU-targeted code. Take pieces of the pipeline as yours and maintain them.
- Debug end-to-end. Diagnose compilation issues by tracing problems from generated C++ back through the pipeline. Use IR dumps, static analyses, and the ISS to root-cause compilation failures and performance regressions.
- Improve compiler decisions. Work with senior engineers to reduce data movement, improve core utilization, and tighten the gap between what the hardware can do and what we currently emit.
- Collaborate across teams. Partner with the kernel, hardware, and data science teams to align compiler features with real model requirements and hardware constraints.
- Strengthen the toolchain. Contribute to test infrastructure, debugging utilities, and developer ergonomics across the CGC pipeline and runtime., Role Overview As a Machine Vision Engineer, you will leverage advanced computer vision techniques to tackle real-world challenges and enhance intelligent automation systems. This r…
- 4 days ago
- Apply easily
Requirements
- Bachelor's, Master's, or PhD in Computer Science, Electrical Engineering, or a related field, completed within the past year (or completing within the next six months).
- Strong proficiency in Python and C++.
- Solid grasp of compiler concepts: intermediate representations, dataflow analysis, transformation passes, and lowering.
- Comfort reading and reasoning about large, unfamiliar codebases.
- Strong debugging and problem-solving skills, with the ability to communicate findings clearly in writing and review.
Nice-to-Haves
- Coursework, research, or significant project experience in compilers, program analysis, or domain-specific languages.
- Hands-on exposure to ML compiler frameworks such as TVM, MLIR, XLA, Glow, or IREE - bonus if you have written a non-trivial pass.
- Familiarity with neural network quantization, fixed-point arithmetic, or numerical analysis for ML.
- Experience with hardware-aware code generation for accelerators (GPU, DSP, NPU).
- Some exposure to assembly, instruction scheduling, or low-level code generation.
- Prior internship experience in compilers, ML systems, or performance engineering.
- Published research or open-source contributions in compilers or ML systems.
Benefits & conditions
At Quadric, we value Integrity, Humility, and Happiness. What we expect from one another is simple and clear: Initiative, Collaboration, and Completion. We are a collaborative team focused on building something extraordinary in the edge computing space.
- Competitive salary and meaningful equity
- Medical, dental, and vision plan options starting on day one
- 401(k) retirement plan
- Flexible paid time off (unlimited, non-accrual) to support work-life balance
- When working in-office, enjoy company-provided lunches and a stocked kitchen
- Convenient office location within walking distance of the Caltrain station
- Support for commuting, including monthly parking or Caltrain passes
- Downtown Burlingame office location, close to shops, cafes, and local amenities
- A politics-free, highly collaborative environment where talented people can do their best work and make an immediate impact
- The opportunity to build long-term career relationships in a company that values strong personal connections alongside professional excellence