Staff Engineer – Analytics & Machine Learning

Job Location US-CA-Milpitas
Regular Full-Time


What you will do...

  • Design and development of code to collect, analyze and present large quantities of data
  • Understand data analytics tools provided by 3rd parties and develop solutions to look for patterns in data, summarize large data sets and develop predictive analytics based on the large sets of collected data
  • Develop REST APIs and streaming data solutions for real time ingestion of networking metadata
  • Have fun, learn, and write code (lots of code)



Who you are...

  • 3+ years hands on experience with Enterprise Java development.
  • Academic course work or experience related to data analytics and machine learning
  • Experience designing public REST APIs used by 3rdparties
  • Strong knowledge of Algorithms, Object-Oriented Design principles and distributed system patterns
  • Experience using distributed storage technologies like Hbase, MongoDB, Redis
  • Knowledge and/or experience with Elastic Search is a big plus.
  • Experience/Knowledge using analytics and machine learning tools provided by 3rd parties like AWS, Elastic Search is a big plus.
  • (Optional) Experience with Big Data technologies (e.g. Spark, Kafka, Cassandra, Hadoop)


Education:  BS or MS in Computer Science or related fields

About the Company

Aerohive (NYSE: HIVE), a Cloud Networking leader, enables our customers to simply and confidently connect to the information, applications, and insights they need to thrive. Our simple, scalable, and secure platform delivers mobility without limitations. For our customers worldwide, every access point is a starting point. Aerohive was founded in 2006 and is headquartered in Milpitas, CA. For more information, please visit, call us at 408-510-6100, follow us on Twitter @Aerohive, subscribe to our blog, or become a fan on our Facebook page.


Aerohive Networks is proud to be an Equal Opportunity Employer.




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