XX
DevOps Engineering Lead - ML InfrastructureSymbolicaUnited States

Dieses Stellenangebot ist nicht mehr verfügbar

XX

DevOps Engineering Lead - ML Infrastructure

Symbolica
  • US
    United States
  • US
    United States

Über

DevOps Engineering Lead - ML Infrastructure
Symbolica was founded on a simple idea: intelligence is about structure and reasoning, not just pattern matching. For decades, AI has been split between symbolic systems that are reliable but brittle and neural systems that are flexible but unpredictable. We're building a bridge between the two. We're an AI research lab combining deep mathematics and machine learning to create systems that truly reason. Using category and type theory as a unifying framework, we develop interpretable, reliable and scalable foundations for intelligence and turn them into real products, working in a tight feedback loop where research directly shapes application. Agentica is the latest expression of this vision: an agent framework for tool use and multi-agent orchestration through arbitrary code execution. It recently achieved 85.28% on ARC-AGI-2, setting a new public SOTA. Founded in 2022, we've raised over $30M from investors including Khosla Ventures, General Catalyst, Abstract Ventures and Buckley Ventures, backing us to rethink the mathematical foundations of machine learning. If you've ever been kept awake wondering what comes after deep learning, you'll fit right in. About the Role As a DevOps Engineering Lead working closely with our Head of ML Engineering, you will lead the design, build, and optimize the infrastructure and tools that enable us to take our research and development efforts from the lab into a highly reliable, performant and secure software stack in production. You'll help accelerate the processes involved in going from research prototypes into production and enterprise ready platforms with security, availability and reliability in mind. Your work will be at the intersection of research and engineering, ensuring our R&D team has the robust platform they need to push the boundaries of AI, working with our GPU vendors, cloud providers, and on-prem servers. This is an onsite role that is based in our SF office (345 California St.) Key Responsibilities Focus on improving the reliability and performance of our Lambda cluster and model training pipeline. Assist in managing multiple Kubernetes environments across cloud providers Maintain and build the internal observability platform across all environments, covering everything from GPUs, AI applications and distributed backend systems. Take ownership of our model training and deployment systems, bringing them to a more scalable, production-ready state. Aid in building comprehensive CI tests for GitOps repositories and promotion systems Build and maintain different environments for research and client facing products according to best practices About You - 5+ years of experience in DevOps, or infrastructure roles, with at least 2 years in machine learning infrastructure or MLOps. It would be a benefit if you have either built, maintained, or managed ML infrastructure using DevOps practices in the past. - Proficient in cloud-native architectures, with the ability to make the right tradeoffs where necessary - Experienced with Linux, containers, GPU management, Nix, Kubernetes and an interest in making sure the infrastructure behind our models is secure by design. - Exceptional problem-solving skills with the ability to nimbly solve edge-cases with minimum disruption. - Solid software engineering skills in Rust, Golang or Python What We Offer Competitive salary and early-stage equity package. A high-trust, execution-first culture with minimal bureaucracy. Direct ownership of meaningful projects with real business impact. A rare opportunity to sit at the interface between deep research and real-world productization. Symbolica is an equal opportunities employer. We celebrate diversity and are committed to creating an inclusive environment for all employees, regardless of race, gender, age, religion, disability, or sexual orientation.
  • United States

Sprachkenntnisse

  • English
Hinweis für Nutzer

Dieses Stellenangebot wurde von einem unserer Partner veröffentlicht. Sie können das Originalangebot einsehen hier.