Big Data Engineer (offline)

What will you do:
- You will design and develop applications for data processing on one of languages: Python, Java, Scala.
- Create applications for data ingestion that operate with terabytes of data daily.
- Develop a data processing systems with Spark, Storm, Impala, etc.
- Build Data Lake on-premise or on Cloud.
- Work with trending technologies like Apache Spark, AWS, Microsoft Azure and many more.
- Develop and integrate data visualization solutions. What we expect:
- Bachelor’s Degree from Computer Science, Statistics, Applied Mathematics, or another related field.
- Knowledge of programming languages, e.g. Python, Java, Scala.
- Experience with SQL, Linux or Unix shell scripting.
- Understanding about Machine Learning, ETL, data warehousing, BI.
- Knowledge of Big Data.
- Be a team player.
- Strong verbal and written communication skills in English.

What will be considered as an advantage:
- M.sc or PhD in corresponding fields.
- At least 2 years of hands-on experience with either Python and/or Java and/or Scala.
- At least 2 years of hands-on experience with Big Data systems, like Hadoop, Spark, Storm.
- Experience with noSQL, Machine Learning, ETL, data warehousing, BI.
- Experience delivering solutions in cloud environments like AWS/Azure/GCP, Kubernetes, Dockers , CI/CD tools, Jenkins.
- Knowledge of Scrum, Agile.
- Experience with version control systems such as SVN and Git.

We offer:
- Competitive salary + flexible vacation + health & travel insurance + relocation.
- Opportunity to work from home with flexible working hours.
- An open-minded company culture with dedicated career counselors always ready to help you.
- Worldwide travels.
- Company-paid certifications.

About Stafferty

Stafferty надає послуги з пошуку та підбору персоналу, аутсорсингу бізнес-процесів та кадровому адмініструванню.

Company website:
https://www.linkedin.com/company/stafferty/mycompany/

The job ad is no longer active
Job unpublished on 9 December 2021

Look at the current jobs Java Relocate→