Machine Learning Engineer - Distributed ML Systems

pluralis-researchยท Engineering
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๐Ÿ“ Melbourne๐Ÿ“ SydneyFullTime

About this role

Overview

Pluralis Research carries out foundational research on Protocol Learning: multi-participant training of foundation models where no single participant has, or can ever obtain, a full copy of the model. The purpose of Protocol Learning is to facilitate the creation of community-trained and community-owned frontier models with self-sustaining economics.

We're looking for Senior/Staff engineers with 5+ years of experience in distributed systems and ML large-scale training. You'll be implementing a novel substrate for training distributed ML models that work under consumer grade internet connection.

Responsibilities

Distributed Training Architecture & Optimization

  • Design and implement large-scale distributed training systems optimized for heterogeneous hardware operating under low-bandwidth, high-latency conditions.

  • Develop and optimize model-parallel training strategies (data, tensor, pipeline parallelism) with custom sharding techniques that minimize communication overhead.

  • Optimize GPU utilization, memory efficiency, and compute performance across distributed nodes.

  • Implement robust checkpointing, state synchronization, and recovery mechanisms for long-running, fault-prone training jobs.

  • Build monitoring and metrics systems to track training progress, model quality, and system bottlenecks.

Decentralized Networking & Resilience

  • Architect resilient training systems where nodes can fail, networks can partition, and participants can dynamically join or leave.

  • Design and optimize peer-to-peer topologies for decentralized coordination across non-co-located nodes.

  • Implement NAT traversal, peer discovery, dynamic routing, and connection lifecycle management.

  • Profile and optimize communication patterns to reduce latency and bandwidth overhead in multi-participant environments.

What Youโ€™ll Bring

  • Strong experience building and operating distributed systems in production.

  • Hands-on expertise with distributed training frameworks (FSDP, DeepSpeed, Megatron, or similar).

  • Deep understanding of model parallelism (data, tensor, pipeline parallelism).

  • Expert-level Python with production experience (concurrency, error handling, retry logic, clean architecture).

  • Strong networking fundamentals: P2P systems, gRPC, routing, NAT traversal, distributed coordination.

  • Experience optimizing GPU workloads, memory management, and large-scale compute efficiency.

What We Offer

  • Equity-heavy compensation with meaningful ownership in a mission-driven company

  • Competitive base salary for senior engineering roles in Australia

  • Visa sponsorship available for exceptional candidates

  • Remote-first with optional access to our Melbourne hub

  • World-class team โ€” team mates were previously at at Google, Amazon, Microsoft, and leading startups

Backed by Union Square Ventures and other tier-1 investors, we're a world-class, deeply technical team of ML researchers and engineers. Pluralis is unapologetically ideological. We view the world as a better place if we are able to implement what we are attempting, and Protocol Learning as the only plausible approach to preventing a handful of massive corporations monopolising model development, access and release, and achieving massive economic capture. If this resonates, please apply.

Frequently Asked Questions

Is the salary disclosed for the Machine Learning Engineer - Distributed ML Systems position at pluralis-research?
The salary for this Machine Learning Engineer - Distributed ML Systems role at pluralis-research is not publicly listed. Click "Apply Now" to learn more about the compensation package on their official careers page.
Where is the Machine Learning Engineer - Distributed ML Systems position at pluralis-research located?
This Machine Learning Engineer - Distributed ML Systems role at pluralis-research is based in Melbourne, Sydney. The position is listed as on-site or hybrid. Check the full job description or apply directly to confirm the work arrangement.
Is the Machine Learning Engineer - Distributed ML Systems role at pluralis-research full-time or part-time?
This is listed as a FullTime position. It is posted as a Machine Learning Engineer - Distributed ML Systems role in the Engineering department at pluralis-research.
Which team or department does the Machine Learning Engineer - Distributed ML Systems at pluralis-research belong to?
This Machine Learning Engineer - Distributed ML Systems position is part of the Engineering department at pluralis-research. See the full job description for more information about the team structure and responsibilities.
How do I apply for the Machine Learning Engineer - Distributed ML Systems position at pluralis-research?
Click the "Apply Now" button on this page. You will be redirected to pluralis-research's official application portal hosted on ashby where you can submit your application directly.
When was the Machine Learning Engineer - Distributed ML Systems job at pluralis-research posted?
This Machine Learning Engineer - Distributed ML Systems position at pluralis-research was posted on Feb 23, 2026. Apply as soon as possible โ€” early applications are often reviewed first.
Machine Learning Engineer - Distributed ML Systems
pluralis-research
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