ETL Developer - B2B SaaS Fintech

Landytech is revolutionizing investment reporting for investment managers, asset owners, and advisors with its Sesame platform, helping clients in over 15 countries make informed decisions.
Data
Senior Software Engineer
Hybrid
51 - 100 Employees
5+ years of experience
Finance

Description For ETL Developer - B2B SaaS Fintech

Landytech is on a mission to revolutionize investment reporting for investment managers, asset owners, and advisors. Powered by Sesame, their industry-leading platform helps clients in over 15 countries make informed decisions. Having secured $12M in Series B funding in 2023, Landytech has grown from two co-founders to nearly 100 staff in just four years, with offices in London and Paris. The company values diversity, with team members from over 15 countries speaking 14 languages.

As an ETL Developer at Landytech, you'll be at the core of operations, working with data from various banks. Your responsibilities include implementing ETL processes using Azure Data Factory, following established standards, ensuring data quality, participating in code reviews, and suggesting improvements. You'll work in a collaborative environment, starting each day with a priority-setting meeting and following a structured development process that includes tests, peer reviews, and client team approval.

The ideal candidate should have at least 5 years of ETL experience, fluency in English, knowledge of Git, proficiency in Spring (Boot, Web, Security, and Data), strong SQL skills, and experience with Docker. Additional advantages include experience with Azure Data Factory, knowledge of financial datasets, familiarity with Azure Cloud, and experience with Azure DevOps Pipelines and Boards.

Benefits include working in a fast-growing fintech, being part of an international team, a hybrid work model with 2 days in the Pune office, and private medical insurance for you and your family members. Join Landytech and be part of the revolution in investment reporting!

Last updated 2 months ago

Responsibilities For ETL Developer - B2B SaaS Fintech

  • Implement ETL processes using Azure Data Factory (ADF)
  • Define and follow established standards and guidelines
  • Execute tests to ensure data quality and integrity
  • Participate in code reviews
  • Suggest improvements, share new technologies, and provide innovative solutions
  • Be ready to welcome, support, and manage new recruits

Requirements For ETL Developer - B2B SaaS Fintech

Java
  • At least 5 years of ETL experience
  • Fluent in spoken and written English
  • Knowledge of Git
  • Proficient in Spring (including Boot, Web, Security, and Data)
  • Strong SQL skills
  • Experience with Docker

Benefits For ETL Developer - B2B SaaS Fintech

Medical Insurance
  • Opportunity to work in a fast-growing fintech revolutionizing investment reporting
  • Regular socials and being part of an international team
  • Hybrid style of work/ 2 days working from our office in Pune, India
  • Private medical insurance for you and your family members

Interested in this job?

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