Data Engineer

Ryan
Manchester
3 weeks ago
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Why Ryan

  • Competitive Compensation and Benefits

  • Home Office Stipend

  • Business Connectivity Reimbursement (Phone/Internet)

  • Gym Membership or Equipment Reimbursement

  • LinkedIn Learning Subscription

  • Flexible Work Environment

  • Tuition Reimbursement After One Year of Service

  • Accelerated Career Path

  • AwardWinning Culture & Community Outreach

The Data Engineer Data Engineering is responsible for the identifying developing and maintaining the technologies that enable the efficient flow of data throughout the organization. This role requires an enterprise mindset to build out robust highperformance technology.

Duties and Responsibilities aligned with Key Results:

People

  • Use a variety of programming languages and tools to develop test and maintain data pipelines within the Platform Reference Architecture.
  • Working directly with management product teams and practice personnel to understand their platform data requirements
  • Maintaining a positive work atmosphere by behaving and communicating in a manner that encourages productive interactions with customers coworkers and supervisors
  • Developing and engaging with team members by creating a motivating work environment that recognizes holds team members accountable and rewards strong performance
  • Fostering an innovative inclusive and diverse team environment promoting positive team culture encouraging collaboration and selforganization while delivering high quality solutions

Client

  • Collaborating on an Agile team to design develop test implement and support highly scalable data solutions
  • Collaborating with product teams and clients to deliver robust cloudbased data solutions that drive tax decisions and provide powerful experiences
  • Analyzing user feedback and activity and iterate to improve the services and user experience

Value

  • Securing data in alignment with internal information and data security policies best practices and client requirements
  • Creating and implementing robust cloudbased data solutions that scale effectively and provide powerful experiences for both internal teams and clients
  • Performing unit tests and conducting reviews with other team members to make sure solutions and code are rigorously designed elegantly coded and effectively tuned for performance
  • Staying on top of tech trends experimenting with and learning new technologies participating in internal & external technology communities and mentoring other members of the engineering community
  • Perform other duties as assigned

Education and Experience:

  • Bachelors and/or masters degree in a related field
  • 3 years of experience developing data technologies.
  • 3 years of experience deploying ETL solutions in production environments.
  • 3 years of experience with cloudbased data services preferably in AWS or Azure.
  • 3 years of experience developing Python Scala Java .Net or similar solutions in a backend or data wrangling capacity.
  • 3 years of experience in mixed Windows/Linux environments.

Additional Required Skills and Experience:

  • Resultsproven track record of exceeding goals and evidence of the ability to consistently make good decisions through a combination of analysis experience and judgment
  • Fluency in one or more databases preferably relational and NoSQL is a plus.
  • Experience with distributed data platforms is a plus.
  • Exposure to AI/ML pipelines is preferred.
  • Experience deploying monitoring and maintaining data pipelines in production environments
  • Commitment to diversity accountability transparency and ethics.

Computer Skills:

To perform this job successfully an individual must have intermediate knowledge of Microsoft Project Word Excel Access PowerPoint Outlook and Internet navigation and research.

Supervisory Responsibilities:

  • None

Work Environment:

  • Standard indoor working environment.
  • Occasional long periods of sitting while working at computer.
  • Must be able to lift carry push or pull up to 30 lbs.
  • Position requires regular interaction with employees at all levels of the Firm and interface with external vendors as necessary.
  • Independent travel requirement: As Needed

Equal Opportunity Employer: disability/veteran

#DICE


Key Skills
Apache Hive,S3,Hadoop,Redshift,Spark,AWS,Apache Pig,NoSQL,Big Data,Data Warehouse,Kafka,Scala
Employment Type :Full-Time
Experience:years
Vacancy:1

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