ML Systems Engineer, Infrastructure & Cloud
Quick Summary
About Basis Basis is a nonprofit applied AI research organization with two mutually reinforcing goals. The first is to understand and build intelligence.
Own distributed training infrastructure including job launchers, checkpointing systems, recovery mechanisms, and monitoring that ensures experiments run reliably at scale.
Basis is a nonprofit applied AI research organization with two mutually reinforcing goals.
The first is to understand and build intelligence. This means to establish the mathematical principles of what it means to reason, to learn, to make decisions, to understand, and to explain; and to construct software that implements these principles.
The second is to advance society’s ability to solve intractable problems. This means expanding the scale, complexity, and breadth of problems that we can solve today, and even more importantly, accelerating our ability to solve problems in the future.
To achieve these goals, we’re building both a new technological foundation that draws inspiration from how humans reason, and a new kind of collaborative organization that puts human values first.
About the Role
~1 min readML Systems Engineers at Basis ensure training and evaluation infrastructure is fast, reliable, and scalable. You will own the full stack from distributed training frameworks through cloud administration, making it possible for researchers to iterate quickly on complex models while managing computational resources efficiently.
We are looking for engineers who combine deep understanding of ML systems with operational excellence. The ideal ML Systems Engineer has experience with distributed training at scale, understands the intricacies of debugging numerical instabilities, and can manage cloud infrastructure that scales from experiments to production. You will be the guardian of training stability, the optimizer of compute costs, and the enabler of reproducible research.
This role spans traditional ML engineering and cloud/DevOps responsibilities. You will manage GPU clusters, optimize cloud spending, ensure security and compliance, and build the infrastructure that lets researchers focus on algorithms rather than operations.
We seek individuals who aspire to build robust ML infrastructure, maintain “logbook culture” for documenting issues and solutions, and treat operational excellence as a first-class concern.
Requirements
~1 min readExperience at organizations training large models (OpenAI, Anthropic, Google, Meta).
Background in both ML research and production systems.
Contributions to ML frameworks or distributed training libraries.
Experience with on-premise GPU cluster management.
Knowledge of optimization theory and numerical methods.
Understanding of robotics-specific infrastructure requirements.
Responsibilities
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Own distributed training infrastructure including job launchers, checkpointing systems, recovery mechanisms, and monitoring that ensures experiments run reliably at scale.
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Debug and resolve training failures by diagnosing issues across GPUs, networking, numerics, and data pipelines, maintaining detailed logs of problems and solutions.
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Profile and optimize training performance by identifying bottlenecks in data loading, gradient computation, communication overhead, and implementing solutions that improve step time.
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Manage cloud infrastructure and costs including capacity planning, spot instance strategies, storage optimization, and building tools that give researchers visibility into resource usage.
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Implement security and compliance measures including access controls, data encryption, audit logging, and ensuring infrastructure meets requirements for handling sensitive data.
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Build evaluation and benchmarking infrastructure that enables consistent, reproducible measurement of model performance across different conditions and datasets.
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Develop monitoring and alerting systems that detect anomalies in training metrics, resource utilization, or system health, enabling rapid response to issues.
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Maintain development environments including containerization, dependency management, and tools that ensure researchers can reproduce results across different systems.
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Document and share knowledge through runbooks, post-mortems, and training materials that help the team understand and operate ML infrastructure effectively.
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Collaborate with researchers to understand requirements, suggest infrastructure solutions, and ensure systems support rather than constrain research goals.
Exceptional candidates who may not meet all of the following criteria are still encouraged to apply.
FT/PT: Full-time.
In-person Policy: We are in the office four days a week. Be prepared to attend multi-day Basis-wide in-person events.
Location: New York City or Cambridge, MA.
Salary range: Competitive salary.
Non-Discrimination Notice
Basis Research Institute provides equal employment opportunities without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, age, disability, or genetics and prohibits discrimination based on all protected characteristics.
Privacy Notice
By submitting your application, you grant Basis permission to use your materials for both hiring evaluation and recruitment-related research and development purposes. Your information may be processed in different countries, including the US. You retain copyright while providing Basis a license to use these materials for the stated purposes.
Read our full Global Data Privacy Notice here.
Location & Eligibility
Listing Details
- Posted
- November 23, 2025
- First seen
- May 5, 2026
- Last seen
- May 8, 2026
Posting Health
- Days active
- 0
- Repost count
- 0
- Trust Level
- 13%
- Scored at
- May 6, 2026
Signal breakdown
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