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Data Engineer

Bottomline
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2 months ago
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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data EngineerWhy Choose Bottomline?

Are you ready to transform the way businesses pay and get paid? Bottomline is a global leader in business payments and cash management, with over 35 years of experience and moving more than $16 trillion in payments annually. We're looking for passionate individuals to join our team and help drive impactful results for our customers. If you're dedicated to delighting customers and promoting growth and innovation - we want you on our team!

The Role

Bottomline is looking for aData Engineerto grow with useither remotely or in a Hybrid work environment out of our Theale, UK office!

As a Data Engineer, you will work collaboratively with both business and technical users to define, develop, and test data pipelines, data warehouse schemas, tables, views, and external tables. You will ideally leverage tools such as Talend, AWS S3, Python, Java, PowerBI, and Snowflake to ensure seamless data integration and accessibility.

How you'll contribute:

Collaborate with stakeholders to gather and analyze data requirements for reporting and analytics. Design, develop, and maintain data pipelines using Talend to ensure efficient data flow from various sources. Create and manage data warehouse schemas, tables, views, and external tables in Snowflake. Utilize AWS S3 for data storage solutions and ensure data integrity and security. Write and optimize Java and/or Python scripts for data transformation and processing tasks. Conduct thorough testing and validation of data pipelines and warehouse structures to ensure accuracy and performance. Monitor data pipeline performance and troubleshoot issues as they arise. Document data processes and maintain clearmunication with technical and non-technical stakeholders.


What will make you successful:
Bachelor's degree inputer science, Information Technology, Data Engineering, or a related field. 4+ years of experience in data engineering, data integration, or a similar role. Experience in ETL tools such as Talend (or other tools like Informatica and/or Alteryx), AWS S3, Python, and Snowflake. Strong understanding of data warehousing concepts, schema design, and ETL processes. Excellent problem-solving skills and attention to detail. Strongmunication skills, with the ability to conveyplex concepts clearly to various audiences. Ability to work independently and manage multiple tasks in a fast-paced environment.
What We Offer:
Opportunities for professional growth and advancement. A collaborative and innovative work environment. Flexible working arrangements.
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We wee talent at all career stages and are dedicated to understanding and supporting additional needs. We're proud to be an equal opportunity employer,mitted to creating an inclusive and open environment for everyone. Job ID 7897105002

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