About Anyscale:
At Anyscale, we're on a mission to democratize distributed computing and make it accessible to software developers of all skill levels. We’re commercializing Ray, a popular open-source project that's creating an ecosystem of libraries for scalable machine learning. Companies like OpenAI, Uber, Spotify, Instacart, and many more, have Ray in their tech stacks to accelerate the progress of AI applications out into the real world.
With Anyscale, we’re building the best place to run Ray, so that any developer or data scientist can scale an ML application from their laptop to the cluster without needing to be a distributed systems expert.
Proud to be backed by Andreessen Horowitz, NEA, and Addition with $250+ million raised to date.
Anyscale is actively seeking talented engineers to join our team and contribute to the development of next-generation, high-performance machine learning serving systems. We value diversity and inclusion, and we encourage individuals from underrepresented groups to apply.
Many existing ML serving tools are inherited from previous infrastructure generations, but emerging ML applications present new requirements, such as high compute demands, specialized hardware needs, and the integration of multiple models and business logic within a single request. At Anyscale, our mission is to provide a powerful yet simple set of tools that enable the seamless deployment of complex ML applications in production.
What if you could build the infrastructure that powers AI applications for millions of users worldwide? Ray Serve is the production-grade serving framework that makes this possible—and we need exceptional engineers to push its boundaries.
You'll be working on problems that sit at the intersection of distributed systems, machine learning, and high-performance computing. This isn't about maintaining CRUD apps or tweaking configurations—this is about solving fundamental computer science problems that directly impact how the world deploys AI.
Sub-millisecond Model Routing: Design and implement intelligent request routing systems that dynamically balance load across thousands of model replicas while maintaining strict latency SLAs
Zero-Downtime Model Updates: Build sophisticated traffic management systems that seamlessly transition between model versions at scale, handling terabytes of inference requests without dropping a single query
Autoscaling at Scale: Create reactive systems that predict traffic patterns and scale model replicas from 1 to 10,000+ instances based on real-time demand signals
Multi-Model Orchestration: Architect frameworks for complex ML pipelines where dozens of models need to communicate, share resources, and maintain end-to-end latency guarantees
Observability & Debugging: Build deep introspection tools that make it trivial to debug distributed ML applications—because "works on my laptop" doesn't cut it at scale
Deep Systems Programming: You'll write performance-critical code in Python (with Cython optimization paths) and potentially C++ for the hot paths
Distributed Systems at Scale: Work directly with Ray Core's actor system, gRPC, and custom networking protocols to handle millions of requests per second
Cloud-Native Infrastructure: Kubernetes, service meshes, and custom operators—you'll need to understand and extend the cloud native ecosystem
ML/AI Systems: TensorFlow, PyTorch, JAX, transformers—you don't need to be an ML expert, but you'll develop deep knowledge of how these systems work under the hood
Production Reliability: OpenTelemetry, Prometheus, distributed tracing, and chaos engineering to ensure 99.99% uptime
Strong Systems Fundamentals: You understand operating systems, networking, concurrency, and distributed systems at a deep level
Production Experience: You've built and maintained systems that serve real users at scale
Code Quality: You write clean, tested, well-documented code that other engineers love to work with
Ownership Mindset: You take responsibility for your code in production—from design to deployment to incident response
Experience with distributed systems frameworks (gRPC, Ray)
Background in ML/AI systems or serving infrastructure
Contributions to major open source projects
Experience with performance optimization and profiling
Knowledge of cloud-native technologies (Kubernetes, Istio, etc.)
We care more about how you think and solve problems than checking boxes. If you're intellectually curious, love building elegant solutions to hard problems, and want to work on infrastructure that matters—we want to talk to you.
Anyscale Inc. is an Equal Opportunity Employer. Candidates are evaluated without regard to age, race, color, religion, sex, disability, national origin, sexual orientation, veteran status, or any other characteristic protected by federal or state law.
Anyscale Inc. is an E-Verify company and you may review the Notice of E-Verify Participation and the Right to Work posters in English and Spanish
If an employer mentions a salary or salary range on their job, we display it as an "Employer Estimate". If a job has no salary data, Rise displays an estimate if available.
Alignerr is hiring a remote Backend Rust Developer to evaluate and harden AI-generated Rust code for memory safety, concurrency, and performance.
Remote entry-level Software Engineer role focused on Java development, mentoring, and hands-on project experience for recent graduates and career changers.
A federal contracting partner is hiring a remote Full Stack Developer to modernize Java/IBM Maximo applications and migrate systems to Azure cloud-native architectures.
Experienced Principal Engineer sought to drive architecture, mentor senior teams, and build scalable, cloud-native distributed systems with strong data and AI/ML integration.
Full Stack Software Engineer needed to design, build, and maintain features across OpsLevel’s Ruby on Rails/GraphQL backend and Vue.js frontend while contributing to architecture, on-call operations, and team growth.
Palantir is hiring a Forward Deployed Software Engineer to build and deploy Command-and-Control software for multi-modal autonomous systems used in operational missions.
Collectly seeks a Senior Full-Stack Engineer with a front-end focus to deliver pixel-perfect React/TypeScript user experiences and own features end-to-end.
Frontend-focused engineer needed to design and ship elegant, production-ready UIs for Mashgin’s AI-powered checkout hardware and web tools in Palo Alto.
Lead the Insights engineering team at Decagon to build and scale analytics, detection, and recommendation products that help customers understand and act on conversational data.
Lead mobile architecture and deliver high-quality iOS and Android experiences for a mission-driven digital healthcare platform as the primary Mobile Engineer.
Salesforce is hiring a Principal Architect to define and lead architecture for Agentforce Field Service Scheduling and Optimization across multi-cloud Salesforce ecosystems with a focus on AI-driven, large-scale operations.
Ensono is hiring a seasoned Site Reliability Engineer to lead IaC, CI/CD, monitoring, and incident resolution across cloud environments while engaging directly with clients and third-party suppliers.
EvenUp is hiring a Senior Frontend Engineer to lead client-portal integration work and deliver performant, user-centered interfaces as part of a hybrid San Francisco-based engineering team.
We are building the future of software development.
4 jobs