- Страна
- США
- Зарплата
- 210 400 $ – 302 500 $
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Staff Software Engineer - Platform & Infrastructure
Высокая заработная плата, удаленный формат работы в США и возможность работать над передовыми AI-технологиями в быстрорастущей компании делают эту вакансию крайне привлекательной для опытных инженеров.
Сложность вакансии
Роль уровня Staff требует не только глубоких технических знаний в области Kubernetes и Data Platform, но и навыков стратегического лидерства, управления изменениями и оптимизации затрат в масштабах всей компании.
Анализ зарплаты
Предлагаемый диапазон $210k–$302k полностью соответствует и даже несколько превышает рыночные стандарты для позиций уровня Staff Engineer в топовых американских технологических компаниях.
Сопроводительное письмо
I am writing to express my strong interest in the Staff Software Engineer position within the Platform & Infrastructure team at Abnormal Security. With over 8 years of experience in building distributed systems and a proven track record of leading infrastructure transformations, I am excited by the opportunity to shape the core systems that power your AI-driven detection products. My background in scaling Kubernetes environments and managing high-throughput data pipelines with Kafka and Spark aligns perfectly with your team's mission to deliver reliability and scalability at cloud scale.
In my previous roles, I have successfully transitioned legacy infrastructures to self-service platforms, significantly increasing developer velocity while maintaining strict SLOs. I am particularly drawn to Abnormal Security's 'platform as a product' mindset and your commitment to AI-native development. I am confident that my expertise in Go, Python, and AWS, combined with my experience in cost-conscious engineering and operational excellence, will allow me to make immediate contributions to your roadmap and help mentor the next generation of engineers on the team.
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Описание вакансии
About the Role
Enterprises of all sizes trust Abnormal Security’s cloud products to stop cybercrime—and these products are only as powerful as the platform they run on. The Platform Infrastructure team builds and operates the core systems that make Abnormal’s AI-driven detection and prevention possible: delivering reliability, scalability, and security at cloud scale.
We’re looking for a Staff Software Engineer to lead foundational efforts across multiple areas of Platform Infrastructure. In this role, you’ll guide a high-performing team, shape the roadmap for a true self-service infrastructure platform, and drive ambitious technical projects that use AI to automate and elevate how we build and operate our systems.
The ideal candidate:
- Tackles complex, ambiguous problems and turns them into actionable plans.
- Leads by example and dives deep when needed.
- Embodies our VOICE values and builds software that delights customers.
- Earns trust across Engineering, Product, and Design through thoughtful collaboration.
Team mission: Build and evolve the core infrastructure—compute, orchestration, and data platform—that powers Abnormal’s AI/ML products at scale. We treat platforms as products: usable, reliable, secure, and cost-efficient.
What you will do
- Shape the core areas of Platform Infrastructure such as compute (EC2/EKS, autoscaling, container runtime) and orchestration (Kubernetes, workload APIs, multi-cluster, policy/quotas), as well as data platform (streaming, batch, durable storage, data tooling)—with demonstrated depth in at least two of these.
- Design and drive platform architecture & roadmap to support Abnormal’s expanding AI/ML portfolio—scaling seamlessly across services, tenants, and regions.
- Partner deeply with product & ML workflows to make pragmatic trade-offs, accelerating our shift to a platform-first operating model and enabling self-service.
- Raise the bar on operational excellence (SLOs, availability, performance, incident response, change management, on-call hygiene) and help teams consistently meet it.
- Act as the team’s technical lead: define quarterly roadmaps, de-risk delivery, mentor engineers, and land high-leverage, cross-team initiatives.
- Champion AI-native software development, guiding teams on architecture, data gravity, feature stores, model/service interfaces, and evaluation pipelines.
- Own cost-conscious engineering, optimizing design and operations to balance performance, reliability, and spend (capacity planning, right-sizing, caching, storage tiers).
- Instill strong platform product practices: crisp APIs, great docs, clear SLAs/SLOs, telemetry by default, and paved paths that increase developer velocity.
Must haves
- Proven experience building and scaling data-intensive, distributed backend systems in high-growth environments.
- 5+ years as a Senior/Staff engineer building platforms, tools, or infrastructure that materially increase engineering velocity and reliability.
- A strong track record as a change agent—reshaping infra strategy and shipping impactful, self-service platform offerings in startup settings.
- Depth in at least two of the following three areas:
- Compute (e.g., EC2, autoscaling, container runtimes, networking, security hardening)
- Orchestration (e.g., Kubernetes/EKS, controllers/operators, scheduling, policies, multi-cluster)
- Data Platform (e.g., Kafka/Kinesis/SQS; Spark/Databricks/DBT/Airflow; S3; PostgreSQL/MySQL; DynamoDB/RocksDB/Redis/OpenSearch; data governance/quality/lineage)
- Hands-on with our stack (or equivalent): Python, Golang, Terraform/Terragrunt, PostgreSQL, Kafka, Redis, OpenSearch, AWS, Kubernetes.
Strong IaC, observability, and SRE fundamentals (SLOs, error budgets, incident management, postmortems, capacity planning).
Nice to haves
- Experience building multi-tenant or regulated (e.g., FedRAMP-like) platforms, isolation boundaries, and guardrails.
- Background with feature stores, offline/online consistency, model serving, and evaluation/feedback loops.
- Prior leadership of cross-org migrations (e.g., to Kubernetes, event-driven architectures, or a unified data platform).
How we work
- Product mindset: platform as a product with clear APIs, docs, SLAs, and adoption metrics.
- Automation first: paved paths and golden configs over bespoke snowflakes.
- Measured outcomes: reliability, latency, cost, and developer experience over vanity metrics.
#LI-ML1
Actual compensation will be determined based on several non-discriminatory factors including skills, experience, qualifications, and geographic location.
In addition to base salary, this role may be eligible for bonus or incentive compensation, equity, and a comprehensive benefits package.
Base salary range:
$210,400—$302,500 USD
Abnormal AI is an equal opportunity employer. Qualified applicants will receive consideration for employment without regard to race, color, religion, sex, national origin, disability, protected veteran status or other characteristics protected by law. For our EEO policy statement please click here. If you would like more information on your EEO rights under the law, please click here.
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Навыки
- AWS
- Python
- Terraform
- dbt
- Kubernetes
- Amazon EKS
- PostgreSQL
- Redis
- Airflow
- Apache Spark
- Kafka
- DynamoDB
- Databricks
- Go
- Amazon EC2
- Amazon S3
- Terragrunt
- OpenSearch
- RocksDB
Возможные вопросы на собеседовании
Проверка опыта проектирования сложных систем и понимания компромиссов между производительностью и стоимостью.
Опишите случай, когда вам пришлось проектировать архитектуру данных для AI/ML продукта: как вы обеспечили баланс между задержкой (latency) и стоимостью хранения?
Оценка навыков работы с Kubernetes на продвинутом уровне.
Как бы вы реализовали мульти-кластерную стратегию для обеспечения высокой доступности и изоляции тентов в среде EKS?
Проверка лидерских качеств и умения внедрять изменения.
Расскажите о ситуации, когда вам нужно было убедить несколько команд перейти на новую платформенную технологию. С какими препятствиями вы столкнулись?
Оценка понимания SRE и операционной ответственности.
Как вы определяете 'золотые сигналы' для платформенных сервисов и как вы выстраиваете процесс реагирования на инциденты в распределенной команде?
Проверка навыков оптимизации облачных ресурсов.
Какие стратегии вы использовали для управления расходами на облачную инфраструктуру (FinOps) без ущерба для надежности системы?
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- Страна
- США
- Зарплата
- 210 400 $ – 302 500 $