As an ML Quality Engineer, you ensure quality of Cerebras SW across all supported ML workloads and workflows. You will be part of MIQ (ML Integration and Quality) team that will focus on SW components feature testing, ML training accuracy and performance, pre deployment/production validation, validating customer workloads and workflows.
As part of this role, you will influence the best testing practice, good debugging methodology, effective cross team communication and advocate for world-class products.
Responsibilities
Drive quality of various software and hardware components of Cerebras solution to ensure accuracy, performance and usability of model trainings.
Bring good testing methodology, effective communication and strong debugging skills to the team.
Demand the highest quality from all components within the Cerebras environment.
Ability to automate workflows, setup testbeds and build tools to effectively monitor and debug issues.
Implement creative ways to break Cerebras software and identify potential problems.
Break down complex tasks into smaller tasks. Be a problem solver. Be a thought leader.
Ability to work in a fast-paced environment and make the necessary prioritizations and judgements which affects productivity at a company level.
Minimum Qualifications
0-5 years of relevant industry experience in Software quality and testing areas.
Experience testing AI/ML models and evaluation of the model quality.
Stong automation and programming skills using one or more programming languages like Python, C++ or go.
Experience in testing compute/machine learning/networking/storage systems within a large-scale enterprise environment.
Experience in debugging issues across scale out deployment.
Experience in putting together thorough test-plans.
Experience working effectively across teams, including product development, product management, customer operations, and field teams.
Preferred Skills
Knowledge of ML workflows and frameworks.
Knowledge of basic storage and networking protocols.
Hands-on experience with training LLMs.
Hands-on experience working with containers, Kubernetes.