Gremlin

Data Scientist, AI/ML

Gremlin$220K — $290K *
US-AnywhereRemote in United States
Enterprise Technology
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • 5+ years of experience in machine learning and software development, with a focus on distributed systems or SRE.
  • Hands-on expertise in causal inference, graph ML, time-series modeling, or reinforcement learning.
  • Experience in building data pipelines and feature stores for training and inference.
  • Proven ability to work collaboratively in agile development environments.
  • Strong commitment to experimentation, model evaluation, and engineering best practices.
  • Comfort in partnering with platform engineers to implement AI-driven product features.
  • Ability to break down complex problems into actionable insights.

Responsibilities

  • Analyze millions of chaos experiments to uncover failure patterns and resilience signals.
  • Pretrain and fine-tune ML models for automated detection and classification of failures.
  • Develop intelligent systems for automated remediation recommendations based on historical data.
  • Create scalable data pipelines to handle large volumes of experiment data for real-time applications.
  • Collaborate with platform engineers and SREs to integrate AI capabilities into the core product.
  • Apply advanced ML techniques for improved accuracy in automated failure analysis.
  • Translate chaos experiment insights into actionable AI-powered features for customers.

Benefits

  • 401k Matching
  • Equity options
  • Flexible time off
  • Paid company holidays
  • Supportive remote-first work environment
Full Job Description
Data Scientist, AI/ML
Job Description:

As a Data Scientist, AI/ML at Gremlin, you will have the opportunity to improve the reliability of the internet at large by turning millions of chaos engineering experiments into automated failure analysis and remediation. You will be able to leverage your applied machine learning experience to inform product direction as well as solve complex technical problems that directly impact our customers (which range from the Fortune 500 to smaller organizations). You will work closely with a small, talented engineering team focused on quality, delivery, and predictability with an emphasis on providing our customers a great user experience.
In this role, you'll get to:
  • Analyze Gremlin's proprietary dataset of millions of chaos engineering experiments to identify failure patterns, root causes, and resilience signals across complex distributed systems
  • Pretraining and fine-tuning machine learning models that automatically detect, classify, and explain failures observed during chaos experiments
  • Build intelligent systems that deliver automated remediation recommendations, and eventually orchestration, by learning from historical experiment outcomes and system behavior
  • Develop scalable data pipelines and feature stores to process, enrich, and serve large volumes of experiment data for both model training and real-time inference
  • Collaborate closely with platform engineers and SREs to integrate AI-driven failure analysis and remediation capabilities directly into Gremlin's core product
  • Apply advanced techniques, including causal inference, graph ML, time-series modeling, and reinforcement learning, to continuously improve the accuracy and actionability of automated failure analysis
  • Translate insights from millions of chaos experiments into AI-powered features that help customers automatically understand blast radius, pinpoint root causes, and accelerate recovery
  • Research and productionize novel ML approaches, including causal AI and agentic systems, that turn raw chaos experiment data into automated, reliable remediation strategies
We'll expect you to have:
  • Experience as a self-driven and collaborative problem solver with strong communication skills
  • 5+ years professional experience building and productionizing machine learning, ideally for distributed systems, infrastructure, or DevOps and SRE use cases with more overall years of experience in software development.
  • Hands-on experience with techniques such as causal inference, graph ML, time-series modeling, or reinforcement learning
  • Experience building data pipelines and feature stores that support both offline training and real-time inference
  • Experience with agile development environments and practices
  • Strong advocate and practitioner of rigorous experimentation, model evaluation, and engineering best practices
  • Comfort partnering with platform engineers and SREs to turn research into shipped product features
  • Strong at breaking down ambiguous problems into concrete actions and milestones
Bonus Experience:
  • Experience with chaos engineering, site reliability engineering, or distributed systems
  • Background in agentic AI systems or large-scale causal inference in production
  • Experience standing up MLOps tooling such as model serving, monitoring, or feature store infrastructure
  • Working in Remote first environments
  • Has been on-call and participated in an incident management program

*The role does not offer sponsorship employment benefits.

**If you don't think you meet all of the criteria above but still are interested in the job, please apply. Nobody checks every box, we're looking for candidates that are particularly strong in a few areas, and have some interest and capabilities in others.

Compensation

We expect the salary range for this role to be $220,000 - $290,000. We recognize that salary varies from person to person depending on level of experience and we welcome direct conversations about it. The final offer will vary based on assessment of a candidate's skills and ability and our budget and market data.

Gremlin offers competitive total compensation packages including 401k Matching, Equity and other benefits such as flexible time off and paid company holidays.

About Gremlin

Gremlin is a computer software company that provides a platform for chaos engineering. The company's platform is designed to help businesses improve the reliability of their systems by simulating real-world failures and identifying weaknesses in their infrastructure. Gremlin's technology is used by companies in various industries, including finance, healthcare, and e-commerce.
Learn more about Gremlin
Size
50 employees
Industry

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