AI Compiler and Performance Engineer
Department: Engineering
Location: Seattle
Employment Type: FullTime
Description
Job Title: Software Engineer, AI Inference Platform
Company: ElastixAI, Inc.
Location: Seattle, WA (Hybrid - 3 days/week in office)
About ElastixAI
ElastixAI is an early-stage startup on a mission to reinvent AI inference infrastructure from the ground up. We’re building a next-generation inference platform that delivers unprecedented efficiency by tightly integrating machine learning, software stack, and custom hardware. Our philosophy is simple: the best performance comes from holistic co-design, where every layer, from model architecture to kernels to silicon, works in harmony. If you’re excited about pushing AI performance to physical limits, and about shaping the future of large-scale inference, we’d love to meet you.
Role Summary
We are looking for a deeply technical AI Compiler & Performance Engineer who thrives at the intersection of ML, compilers, and hardware. In this role, you will design how LLM operations decompose into highly efficient proprietary kernel primitives, optimize execution pipelines, and co-develop abstractions with our hardware and ML teams. This is not a “typical” compiler role, it’s a chance to rethink the entire AI compute stack. At ElastixAI, if improving inference efficiency requires inventing new quantization schemes, rethinking graph-level optimizations, or modifying the hardware ISA, we do it. You’ll have end-to-end ownership to explore radically new ideas and make them real.
Key Responsibilities
Break down LLM and transformer workloads into fine-grained primitives tailored to our proprietary compute hardware.
Design and implement IR transformations, graph optimizations, kernel lowering, and code generation for novel hardware architectures.
Collaborate with ML researchers to co-design algorithmic optimizations that yield real end-to-end performance gains.
Work closely with hardware architects to refine microarchitectural features, instruction sets, memory hierarchies, and execution models.
Build performance models, profiling tools, and benchmarking frameworks to identify bottlenecks and guide design decisions.
Prototype and validate improvements across the entire stack — from PyTorch/XLA-level passes to custom kernel implementations.
Contribute to shaping the overall system architecture of a first-of-its-kind inference engine.
Required Qualifications
BS/MS/PhD in Computer Science, Software Engineering, or a related field.
Deep experience building compilers, optimizing kernels, or working with ML frameworks at a systems level.
Strong proficiency in one or more programming languages such as Python and C++.
Strong understanding of one or more of the following:
LLM architectures and transformer internals
MLIR, LLVM, XLA, TVM, Triton, or similar compiler infrastructures
GPU/TPU/FPGA/ASIC compute models, memory hierarchies, and parallel execution
Quantization, sparsity, or algorithmic optimization for deep learning
Deep expertise on ML frameworks (e.g., PyTorch, TensorFlow, JAX) and understanding of ML model deployment challenges.
Solid understanding of software engineering best practices, including data structures, algorithms, and testing.
Thinking in terms of latency, cycles, memory bandwidth, and arithmetic intensity, not just algorithms.
Excellent problem-solving abilities and a knack for tackling complex technical challenges.
Excited to collaborate across ML, hardware, and software boundaries to invent something fundamentally new.
Strong communication skills and a proven ability to collaborate effectively in a cross-functional team environment.
Ability to thrive in a fast-paced, dynamic startup environment.
Preferred / Bonus
PhD in Computer Science, Software Engineering, or a related field.
Experience with custom hardware accelerators for ML inference.
Contributions to open-source compiler or ML systems projects.
Prior startup experience or background building first-generation systems.
What We Offer:
A chance to be a foundational engineer in an innovative AI startup
A dynamic and collaborative work environment and the change to have a significant impact on new technology
The opportunity to work on challenging problems at the intersection of ML, software, and systems.
Competitive compensation and startup equity package
Comprehensive medical, dental, and vision coverage (100% paid by employer)
Life insurance and AD&D
Flexible Time Off (FTO)
12-paid holidays
Paid parental leave
Gym or fitness benefit
Commuter benefit
Weekly catered lunches in the office
Investment in employee learning & development
There are more than 50,000 engineering jobs:
Subscribe to membership and unlock all jobs
Engineering Jobs
60,000+ jobs from 4,500+ well-funded companies
Updated Daily
New jobs are added every day as companies post them
Refined Search
Use filters like skill, location, etc to narrow results
Become a member
🥳🥳🥳 452 happy customers and counting...
Overall, over 80% of customers chose to renew their subscriptions after the initial sign-up.
To try it out
For active job seekers
For those who are passive looking
Cancel anytime
Frequently Asked Questions
- We prioritize job seekers as our customers, unlike bigger job sites, by charging a small fee to provide them with curated access to the best companies and up-to-date jobs. This focus allows us to deliver a more personalized and effective job search experience.
- We've got over 200,000 jobs from 15,000+ vetted companies. No fake or sleazy jobs here!
- We aggregate jobs from 15,000+ companies' career pages, so you can be sure that you're getting the most up-to-date and relevant jobs.
- We're the only job board *for* software engineers, *by* software engineers… in case you needed a reminder! We add thousands of new jobs daily and offer powerful search filters just for you. 🛠️
- Every single hour! We add 2,000-3,000 new jobs daily, so you'll always have fresh opportunities. 🚀
- Typically, job searches take 3-6 months. EchoJobs helps you spend more time applying and less time hunting. 🎯
- Check daily! We're always updating with new jobs. Set up job alerts for even quicker access. 📅
What Fellow Engineers Say
