Skip to main content
Back to jobs

Staff Product Support Engineer - Hadoop Operations

External
acceldata logoAcceldata · CA
Full-timeOn-site7mo ago
Core DataExcelHadoopLLMsObservabilitySpark
Cover LetterConnect

Prepare for this interview

Elite

AI-generated questions, company research, and talking points tailored to this role


About the role

Acceldata is the market leader in Enterprise Data Observability. Founded in 2018 and backed by top investors including Insight Partners, March Capital, Lightspeed, Sorenson Ventures, Industry Ventures, and Emergent Ventures, we are a Series-C funded company headquartered in Silicon Valley. Our Enterprise Data Observability Platform-the first of its kind-helps enterprises build and operate world-class data products by ensuring data is reliable, trusted, and ready to power today's most critical technologies, including AI, LLMs, Analytics, and DataOps. Delivered as a SaaS solution, Acceldata is trusted by leading global organizations such as HPE, HSBC, Visa, Freddie Mac, Manulife, Workday, Oracle, PubMatic, PhonePe (Walmart), Hershey's, Dun & Bradstreet, and many more. Staff Product Support Engineers at Acceldata are Hadoop Operations SMEs responsible for designing, optimizing, migrating, and scaling Hadoop- and Spark-based data processing systems. This role involves hands-on experience with Hadoop and other core data operations, focusing on building resilient, high-performance distributed data systems. You will collaborate with Customer Engineering teams to deliver high-throughput Hadoop, NiFi, and Spark applications and solve complex data challenges in migration, upgrades, reliability, and optimize post-migration system performance. This role requires flexibility to work in rotational shifts, based on team coverage needs and customer demand. Candidates should be comfortable supporting operations in a 24/7 environment and be willing to adjust their working hours accordingly. At Acceldata, we are committed to providing equal employment opportunities regardless of job history, disability, gender identity, religion, race, color, caste, marital/parental status, veteran status, or any other special status. We stand against the discrimination of employees and individuals and are proud to be an equitable workplace that welcomes individuals from all walks of life if they fit the designated roles and responsibilities. #LifeAtAcceldata is all about working with some of the best minds in the industry and experiencing a culture that values an 'out-of-the-box' mindset. If you want to push boundaries, learn continuously, and grow to be the best version of yourself, Acceldata is the place to be! We also believe in providing our employees with the right tools and resources to help them excel at their job. We offer: - Flexible PTO Plan - Up to 100% employer-paid benefits for health, dental, and vision coverage for specific plans - Discounts and offerings for major vendors through our PEO - Apple Air Mac Equipment - Becoming part of the team that coined the term "Data Observability"!

Requirements

  • Strong hands-on experience with distributed data processing frameworks, including Hadoop, Spark, and NiFi, with a deep understanding of their core components and architecture.
  • Proven ability to analyze, troubleshoot, and optimize large-scale data pipelines and jobs (Spark, NiFi, Impala) to improve performance, reduce latency, and increase throughput.
  • Demonstrated experience diagnosing and resolving complex data and performance issues across Hadoop ecosystems, including cluster-level and application-level debugging.
  • Extensive experience building and maintaining scalable data pipelines that process large volumes of data efficiently in distributed environments.
  • Familiarity with managing and operating clusters using technologies such as Hadoop/YARN, Kubernetes, and cloud-based platforms like AWS EMR or GCP Dataproc.
  • Experience working cross-functionally with DevOps and infrastructure teams to support deployment, scaling, and reliability of distributed systems.
  • Experience supporting platform migrations (e.g., Hadoop distributions or ODP environments), ensuring system stability, performance optimization, and issue resolution during and post-migration.
  • Strong analytical mindset with the ability to perform deep-dive investigations into system performance and implement effective, scalable solutions.
  • PREFERRED REQUIREMENTS
  • Experience working with scripting languages (Scala, Python, Bash, PowerShell).
  • Bachelor's degree required, Master's degree preferred.
  • Familiarity with virtual machine technologies and multi-node environment (50+ nodes).
  • Proficient with Linux, NFS, and Windows, including application installation, scripting, and working with the command line.
  • Working knowledge of application, server, and network security management concepts. Certification on any of the leading Cloud providers (AWS, Azure, GCP ) and/or Kubernetes.
  • Knowledge of databases like MySQL and PostgreSQL.

Your Match

How well this role fits your profile.

Company Intel

What employees say

Worked at acceldata? Share your experience

Interested in this role?

Apply on the company's website.

Cover LetterConnect