This opportunity is within Audibles Data Engineering group. The Data Engineering group owns technology platforms and datasets that enable systems and people to uncover new insights and fine-tune operations to meet business goals. We need your help designing and building these.

KEY RESPONSIBILITIES
· Apply broad knowledge of technology options, technology platforms, design techniques and approaches across the Data Engineering ecosystem to build systems that meet business needs
· Build systems and datasets using software engineering best practices, data management fundamentals, data storage principles, recent advances in distributed systems, and operational excellence best practices
· Analyze source systems, define underlying data sources and transformation requirements, design suitable data models and document the design/specifications
· Demonstrate passion for quality and productivity by use of efficient development techniques, standards and guidelines
· Effectively communicate with various teams and stakeholders, escalate technical and managerial issues at the right time and resolve conflicts
· Peer review work. Actively mentor other members of the team, improving their skills, their knowledge of our systems and their ability to get things done

HOW DOES AMAZON FIT IN?
We’re a part of Amazon, they are our parent company and it’s a great partnership. You’ll get to play with all of Amazon’s technologies like EC2, SQS and S3 but it doesn’t stop there. Audible’s built on Amazon technology and you’ll have insight into the inner workings of the world’s leading ecommerce experience. There’s a LOT to learn!

If you want to own and solve problems, work with a creative dynamic team, fail fast in a supportive environment whilst growing your career and working on a platform that powers web applications used by millions of customers worldwide we want to hear from you.

Basic Qualifications

· A Bachelors degree or higher in Computer Science, Engineering, Mathematics, Physics, or a related field.
· Proficiency in functional programming languages (e.g. Python) as well as declarative programming languages (e.g. SQL, SPARQL)
· 2+ years of hands on experience in working on data-centric systems using MPP Database technologies and Hadoop, Spark, Kafka or AWS equivalents.
· Understanding of processing and modeling large, complex data sets for Analytical use cases with Database technologies such as AWS Redshift, Teradata or equivalent.
· Ability to communicate effectively and work independently with little supervision to deliver on time quality products.
· Willingness to learn, be open minded to new ideas and different opinions yet knowing when to stop, analyze, and reach a decision.

Preferred Qualifications

· Familiarity with AWS cloud technologies such as Elastic Map Reduce (EMR), Kinesis, Athena.
· Familiarity with BI and Visualization platforms such as MicroStrategy and AWS Quicksight.

ABOUT AUDIBLE
At Audible, we innovate and inspire through the power of voice. We’re changing the narrative on storytelling. As a leading producer and provider of original spoken-word entertainment and audiobooks, we’ve redefined the ways people access, discover, and share stories. The stories we tell have the ability to transport and transform everyday moments into meaningful experiences and it’s our people who make Audible’s service possible. We’re listeners, storytellers, and problem-solvers. Our perspectives and experiences power our ideas and come together in our mission to unleash the power of the spoken word.

Audible is committed to a diverse and inclusive workplace. Audible is an equal opportunity employer and does not discriminate on the basis of race, national origin, gender, gender identity, sexual orientation, protected veteran status, disability, age, or other legally protected status. For individuals with disabilities who would like to request an accommodation, please visit https://www.amazon.jobs/en/disability/us.

Tagged as: AWS, C#, Cloud, design, Dev, Go, Python, Scala, Spark, SQL, UI

Source:

Job Overview
We use cookies to improve your experience on our website. By browsing this website, you agree to our use of cookies.

Sign in

Sign Up

Forgotten Password

Share