Senior Golang Engineer – $50 million Series B

Propel London
united kingdom
8 months ago
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Job Description

The Role

As a cloud-native backend engineer, You will work have the opportunity to work in Golang but do not need commercial experience in it to join this business. All previous hires came from other backgrounds (java C++) and the team is very happy to help train you up in Golang. You will be responsible for writing high-quality code and ushering it all the way from concept to production. You will work in a flat structure where you will report directly to a super impressive and successful CTO who will guide you over the next few years.

About You

As a senior backend engineer –

· You’ll love software engineering

· You’ll want to work in Golang but can come with a mastery of Golang, C, C++, and Java.

· You’ll be cloud native and have an expertise of modern cloud practices in any of the major public cloud providers (GCP Azure AWS)

· You’ll know Linux Inside out

· You might have knowledge of Big Data tools such as Hadoop Spark or Presto or at least understand how they interact with backend systems

· You’ll have an understanding of machine learning concepts.

This is a remote role.



As a senior backend engineer, you can expect to earn in the region of £80,000 - £110,000 plus a range of impressive benefits.



To apply please click the link or email

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