Big Data Engineer with Scala and Spark
We are looking for an experienced and technology-proficient Big Data Engineer to join our team!
Our customer is one of the world’s largest technology companies based in Silicon Valley with operations all over the world. In this project, we are working on the bleeding edge of Big Data technology to develop a high-performance data analytics platform, which handles petabytes datasets.
Project description:
Advertising Platforms group makes it possible for people around the world to easily access informative and imaginative content on their devices while helping publishers and developers promote and monetize their work. Today, our technology and services power advertising in Search Ads in of the biggest search and news providers. Our platforms are highly-performant, deployed at scale, and setting new standards for enabling effective advertising while protecting user privacy. We are looking for an ambitious, self-starter individual who can thrive in an agile environment. You will develop distributed systems to establish, refine and automate our anti-fraud processes across our advertising surfaces.
Responsibilities:
- Running big data analytics, and building large scale data infrastructure
- Detecting meaningful data patterns
- Assuring the integrity of our data
- Measuring fraud activity and its impact on campaign and user performance
- Analyzing the results of mitigations against fraud
Requirements:
- Strong knowledge of Scala
- In-depth knowledge of Hadoop and Spark, experience with data mining and stream processing technologies (Kafka, Spark Streaming, Akka Streams)
- Understanding of the best practices in data quality and quality engineering
- Ability to quickly learn new tools and technologies
- English languages are required
Will be a plus:
- Knowledge of Unix-based operating systems (bash/ssh/ps/grep etc.)
- Experience with JVM build systems (SBT, Maven, Gradle)
We offer:
- Opportunity to work on bleeding-edge projects
- Work with a highly motivated and dedicated team
- Competitive salary
- Flexible schedule
- Professional development opportunities
About us:
Grid Dynamics is the engineering services company known for transformative, mission-critical cloud solutions for retail, finance and technology sectors. We architected some of the busiest e-commerce services on the Internet and have never had an outage during the peak season. Founded in 2006 and headquartered in San Ramon, California with offices throughout the US and Eastern Europe, we focus on big data analytics, scalable omnichannel services, DevOps, and cloud enablement.
Apply to the position
Thank you!
You applied for the position Big Data Engineer with Scala and Spark successfully. We will get back to you soon. Have a great day!
Something went wrong...
There are possible difficulties with connection or other issues. Please try to use another browser (it's recommended to use the latest version of Google Chrome browser). If the problem still persists, please send your application to cv@griddynamics.com
RetrySomething went wrong...
Please double-check the information filled in the form, and make sure to provide valid data.
RetryDon’t see the right opportunity?
Contact us anyway and let’s talk! To apply, send your resume and cover letter to jobs@griddynamics.com
Grid Dynamics is an equal opportunity employer. We are committed to creating an inclusive environment for all employees during their employment and for all candidates during the application process.
All qualified applicants will receive consideration for employment without regard to, and will not be discriminated against based on, age, race, gender, color, religion, national origin, sexual orientation, gender identity, veteran status, disability or any other protected category. All employment is decided on the basis of qualifications, merit, and business need.
Get in touch
Let's connect! How can we reach you?
Thank you!
It is very important to be in touch with you.
We will get back to you soon. Have a great day!
Something went wrong...
There are possible difficulties with connection or other issues.
Please try again after some time.