Back to all jobs
Architect logo

Member of Technical Staff - ML Research

Architect
Palo AltoOn-site4mo ago
Employment
Full-time
Seniority
Staff

About the role

About Architect

Architect is a frontier AI lab for chip design. We build AI models and tools for on-demand custom ASICs at scale. Our goal is to co-design custom ASICs alongside evolving ML workloads, and enable a new era of domain-specific chips that unlock capabilities impossible with current hardware paradigms. Born out of Stanford Research, our team blends AI with Silicon with a founding team from Anthropic, Google DeepMind, Meta SuperIntelligence, xAI, Apple and Intel.

What You'll Do

As a Founding Member of the Technical Staff at Architect, you'll be at the forefront of training AI models for chip design, verification and exploration tasks. You will be doing fundamental research and applying that to industry-grade chips going into production at leading foundry technologies like TSMC.

  • Responsible for co-designing and implementing the Reinforcement Learning environments and algorithms, Reward Models trainings and reward signal experiments.

  • You will work at the intersection of cutting-edge research and production engineering for chip designs, implementing, scaling, and improving post-training techniques to enhance model capabilities and usability .

  • Design, build, and run robust, efficient pipelines for model fine-tuning and evaluation, ensuring that theoretical performance translates into production-ready implementations.

  • This is a hands-on, 0→1 role where you'll own the end-to-end RL workflow—from reward modeling and environment design to test-time optimization and scaling.

  • Collaborate with research teams to translate emerging techniques into production-ready implementations and debug complex issues in training pipelines and model behavior.

What We'd Like to See

Qualifications & Skills:

  • Degree: PhD in Computer Science, Computer Engineering, EECS, Mathematics, or a closely related field. Preferably, specialization in Machine Learning, Deep Learning, or Artificial Intelligence. Or BS/MS with a strong research engineering background.

  • RL & Post-Training Expertise: Deep expertise in reinforcement learning and post-training, with a proven track record of taking models from research to real-world deployment.

  • Model Training: Strong industry or research background building end-to-end ML pipelines. Experience RL and fine-tuning LLMs and code models for reasoning, tool use, and structured coding tasks.

  • Systems Engineering: Strong software engineering skills with experience building complex ML systems. Comfortable working with large-scale distributed systems, high-performance computing, and distributed training frameworks (e.g., PyTorch, CUDA, QLoRA, ZeRO).

  • Engineering Rigor: Adept at analyzing and debugging model training processes. Capable of balancing research exploration with engineering rigor and operational reliability.

  • Execution: Fast-moving builder who can prototype, benchmark, and productionize training pipelines with tight feedback loops.

Bonus:

  • Worked on the post-training team at frontier labs like OpenAI, Anthropic, DeepMind, Mistral, MSL, Cohere, etc.

  • Foundation in Electrical/Computer Engineering, Computer Architecture, and chip-design or verification processes (not required, but a plus).

  • Publications in top ML (NeurIPS, ICLR, ICML) or EDA (DAC, ICCAD, DVCon) venues.

  • Experience as a Founding ML Engineer/Researcher or early hire at an AI deeptech startup.

What We Offer

  • Competitive salary and meaningful equity stake

  • Fast-paced startup with autonomy and visible impact

  • Cutting-edge AI-driven chip design challenges

Perks & benefits

  • Equity Compensation

755,000+ hidden jobs like this

Architect and thousands of companies post here first — often days before LinkedIn or Indeed. Your first 5 applications are free; go Pro to apply without limits.

Everything Pro unlocks:

  • Unlimited applications — free stops at 5
  • Track every application in one place
  • Apply straight to the source, one click
  • Save & organize roles you love
  • Roles pulled from company boards before the big sites

Weekly

$9.99
$4.99/week

For an active search. Cancel anytime.

Most popular

Monthly

$24.99
$12.99/month

The smart pick. Save 35% vs weekly.

Lifetime

$99
$49.99once

Pay once. Every future feature, forever.