We use cookies. Find out more about it here. By continuing to browse this site you are agreeing to our use of cookies.
#alert
Back to search results
Remote New

Staff Engineer in Test

DataDirect Networks
United States, California, San Francisco
Jun 22, 2026

Staff Engineer in Test
Job Locations

US-CA-San Francisco - Remote




Job ID
2026-5902


Name Linked

Remote: San Francisco, CA


Country

United States


City

San Francisco - Remote

Worker Type
Regular Full-Time Employee


Posting Location : State/Province

CA



Overview

This is an incredible opportunity to be part of a company that has been at the forefront of AI and high-performance data storage innovation for over two decades. DataDirect Networks (DDN) is a global market leader renowned for powering many of the world's most demanding AI data centers, in industries ranging from life sciences and healthcare to financial services, autonomous cars, Government, academia, research and manufacturing.

"DDN's A3I solutions are transforming the landscape of AI infrastructure." - IDC

"The real differentiator is DDN. I never hesitate to recommend DDN. DDN is the de facto name for AI Storage in high performance environments" - Marc Hamilton, VP, Solutions Architecture & Engineering | NVIDIA

DDN is the global leader in AI and multi-cloud data management at scale. Our cutting-edge data intelligence platform is designed to accelerate AI workloads, enabling organizations to extract maximum value from their data. With a proven track record of performance, reliability, and scalability, DDN empowers businesses to tackle the most challenging AI and data-intensive workloads with confidence.

Our success is driven by our unwavering commitment to innovation, customer-centricity, and a team of passionate professionals who bring their expertise and dedication to every project. This is a chance to make a significant impact at a company that is shaping the future of AI and data management.

Our commitment to innovation, customer success, and market leadership makes this an exciting and rewarding role for a driven professional looking to make a lasting impact in the world of AI and data storage.



Job Description

We are seeking a highly skilled and technically strong Staff Engineer in Test to lead system level quality engineering efforts for networking, security and other enterprise readiness aspects of Infinia, DDN's large-scale distributed data platform.

In this role, you will be a senior technical authority responsible for planning and implementing test strategies and test infrastructures to ensure correctness, stability, performance, and resilience of Infinia's distributed architecture. You will work across core subsystems-including the I/O path, memory management, networking stack, scheduling layers, multi-tenant services, and NVMe-backed storage

patterns-to ensure platform quality at scale.

This is a hands-on, high-impact IC role for someone who can solve hard problems, automate at scale, leverage AI to improve velocity and elevate quality engineering across the organization.

Key Responsibilities:

Quality Engineering & System Validation

    Design detailed test strategies and validation plans for networking and security features for distributed system
  • Create scalable, automated test suites that validate multi-tenant behavior, concurrency, data consistency, and system-level performance.

Automation Frameworks & Tooling

  • Build and maintain robust automation using tools such as Pytest and container-based environments leveraging Docker, Jenkins, Kubernetes.
  • Develop reusable automation templates, harnesses, and utilities to accelerate test creation and reduce engineering overhead.

Performance, Reliability & Scale Testing

  • Construct and execute performance tests covering I/O throughput, system latency, NVMe access patterns, concurrency limits, and long-running workload stability.
  • Use advanced tools (profilers, fuzzers, failure-injection frameworks, trace analyzers) to uncover issues in distributed workflows.
  • Analyze CPU, memory, disk, and network utilization to diagnose performance bottlenecks and identify regression risks.

Cross-Functional Quality Leadership

  • Work closely with architects, developers, release engineering, DevOps, and customer engineering to drive quality-first design decisions.
  • Participate in feature design reviews, ensuring testability, observability, and resilience are built into system components.
  • Lead root cause analysis (RCA) for complex issues and propose long-term improvements to engineering practices and platform stability.

Documentation & Quality Standards

  • Produce clear, detailed test plans, automation guides, design-review feedback, and quality metrics reports.
  • Contribute to the development and maintenance of internal QA standards, best practices, and. onboarding materials.

Required Qualifications

  • 10+ years of experience in software quality engineering, with strong focus on distributed systems, system-level testing, or infrastructure platforms.
  • Hands-on expertise in test automation using Python, Bash, and modern CI/CD tooling (Git, Jenkins, etc.).
  • Strong understanding of:
    • Distributed concurrency
    • File systems and I/O stack behavior
    • Storage performance analysis (NVMe, SPDK)
    • Networking, tracing, and system observability
  • Experience with large-scale performance testing, stress testing, and reliability validation.
  • Demonstrated skill in diagnosing complex system issues across logs, traces, network captures, and profiling tools.
  • ISTQB or equivalent certification preferred.

Preferred Qualifications

  • Experience validating large-scale data platforms, storage engines, or distributed scheduling systems.
  • Experience with AI technologies in context of quality engineering, such as issue triaging, test generation, automation.
  • Familiarity with observability technologies such as OpenTelemetry, Grafana, Prometheus.
  • Background in compliance or security testing (e.g., access control, backup/restore workflows, Section 508/HIPAA/PCI).
  • Contributions to open-source test frameworks or distributed systems validation tools.

Salary Range for this role: $145,000 - $185,000



DDN

Join our dynamic and driven team, where engineering excellence is at the heart of everything we do. We seek individuals who love to challenge themselves and are fueled by curiosity. Here, you'll have the opportunity to work across various areas of the company, thanks to our flat organizational structure that encourages hands-on involvement and direct contributions to our mission. Leadership is earned by those who take initiative and consistently deliver outstanding results, both in their work ethic and deliverables, making strong prioritization skills essential. Additionally, we value strong communication skills in all our engineers and researchers, as they are crucial for the success of our teams and the company as a whole.

Interview Process: After submitting your application, one of our recruiters will review your resume. If your application passes this stage, you will be invited to a 30-minute interview during which a member of our team will ask some basic questions. If you clear the interview, you will enter the main process, which can consist of up to four interviews in total:

  • Coding assessment: Often in a language of your choice.
  • Systems design: Translate high-level requirements into a scalable, fault-tolerant service (depending on role).
  • Real-time problem-solving: Demonstrate practical skills in a live problem-solving session.
  • Meet and greet with the wider team.
  • Our goal is to finish the main process in 2-3 weeks at most.

DataDirect Networks (DDN) is an Equal Opportunity/Affirmative Action employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, gender, gender identity, gender expression, transgender, sex stereotyping, sexual orientation, national origin, disability, protected Veteran Status, or any other characteristic protected by applicable federal, state, or local law.

#LI-Remote

Applied = 0

(web-77cf7d65c7-rcc7h)