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Python Engineer - Cyber Security

London
11 months ago
Applications closed

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The company itself is a scale up who are going through a significant round of funding. They are a software company with the Cyber Security space and this role is 100% remote within the UK. They are well respected in their industry and their product is used by Fortune 500 and other large enterprises globally.

Client Details

The company itself is a scale up who are going through a significant round of funding. They are a software company with the Cyber Security space and this role is 100% remote within the UK. They are well respected in their industry and their product is used by Fortune 500 and other large enterprises globally.

Description

Design and build scalable solutions
Design backend services
Design automation, automation architecture
Prototyping security tooling
Work closely with the Security and Labs teams
Work alongside the ethical hackers/ bounty hunters Profile

Must haves:

Backend Engineering experience (they are 80% Python, 20% GO)
Cyber Security experience or an interest personally
Worked in a start up / scale up / smaller businessNice to haves:

Experience working with significant amounts of data or handling 'big data' for security
Hands on experience of offensive security Job Offer

100% Remote working

Unlimited holidays

Healthcare

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