Architect, design, and lead the implementation of complex backend systems and services that power core product experiences at scale.
Define and drive technical strategy for your domain, making key decisions on system design, technology choices, and long-term architectural direction.
Own the end-to-end reliability and performance of critical backend services, establishing SLOs, monitoring, and incident response best practices.
Design scalable API frameworks and data models that serve as foundations for multiple product teams and external integrations.
Lead cross-functional technical initiatives spanning multiple teams, coordinating with frontend, infrastructure, product, and design stakeholders.
Identify and drive large-scale refactoring efforts, tackling tech debt and evolving legacy systems into modern, maintainable architectures.
Mentor and grow engineers on the team through design reviews, code reviews, and hands-on technical guidance.
Track record of leading technical projects from ambiguous problem statements through to production delivery. AI fluency
Requirements
Software has entered an era where humans and AI build side by side.
Every day, millions of developers use HackerRank to prove their skills.
Expert in at least one modern backend programming language (e.g., Python, Ruby, Go, Java, or Node.js) with strong fundamentals across the stack.
Proven ability to design and build distributed systems - you've made meaningful architectural decisions around service decomposition, data consistency, fault tolerance, and observability.
Deep expertise with relational databases (PostgreSQL, MySQL) and NoSQL stores, including schema design, query optimization, and data modeling for high-throughput workloads.
Strong understanding of caching strategies (Redis/Memcached), asynchronous messaging (Kafka/RabbitMQ), and event-driven architectures. Hands-on
experience with containerization (Docker/Kubernetes), CI/CD pipelines, and infrastructure-as-code practices.
Deep, hands-on proficiency with AI-powered development tools (e.g., GitHub Copilot, Cursor, Claude Code) - you don't just use them, you've developed workflows and best practices around them that you can teach others.
Strong working knowledge of LLMs and agentic AI systems - you understand model capabilities, limitations, context management, tool use, and can reason about when and how to integrate AI into backend systems.
Proven ability to leverage AI across the full software development lifecycle: architecture exploration, implementation, code review, test generation, documentation, incident analysis, and technical writing.
Solid understanding of AI/ML fundamentals: transformer architectures, embedding models, inference optimization, RAG patterns, fine-tuning vs. prompt engineering trade-offs, and evaluation methodologies.
Ability to evaluate and make technical recommendations on AI tooling, APIs, and integration patterns for your team and domain - including cost, latency, reliability, and security considerations.
You actively follow developments in AI research and tooling, can separate hype from real engineering value, and drive adoption of AI-augmented practices within your team. Even better if you have •
Experience designing and operating systems serving millions of concurrent users with strict latency and availability requirements.
Deep expertise in system design patterns such as Microservices, CQRS, Event Sourcing, or Domain-Driven Design, with real-world application. Significant
experience with cloud platforms (AWS, GCP, or Azure), including serverless architectures, managed services, and cost optimization. •
A history of driving engineering culture improvements - whether through RFC processes, architecture review boards, or engineering blog contributions. You will thrive in this role if
Contact
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Additional details
Our platform is trusted by over 2,500 of the world’s most innovative companies to build strong engineering teams ready for what’s next.
As this shift accelerates, the definition of strong technical talent is changing.
We give companies better ways to identify and invest in next-generation skills.
People at HackerRank care deeply about the impact of their work and sweat the small details so our customers can be wildly successful with products they genuinely love to use.
We move with urgency and believe great outcomes come from high standards. About the role
You will own the architecture and evolution of core backend services, mentor engineers across teams, and be a key technical decision-maker ensuring our platform remains fast, reliable, and scalable as we grow our global user base. What you will do
Contribute to engineering-wide standards, tooling, and processes that raise the bar for code quality and developer productivity. Who you are
experience building and operating production backend systems at scale.
Experience building platform-level APIs, SDKs, or developer tools consumed by internal or external engineering teams.
You think beyond the immediate task and consider the long-term health, extensibility, and operational cost of the systems you build.