Security Data Engineer

Data Freelance Hub
Bristol
1 week ago
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Overview

This role is for a Security Data Engineer on a long-term contract in Bristol, UK, with a pay rate of “competitive”. Key skills include cyber security, DDoS protection, networking, and familiarity with Azure and GCP. Prior cyber security experience is essential.

Responsibilities

The Digital Edge & Cyber Security team within Digital Frameworks deliver and maintain security solutions for our Enterprise and Digital Channels. Examples of what we focus on include, but not limited to; DDoS, Vulnerability management and threat intelligence, certification, ensuring layer 6 & 7 defences are one step ahead of cyber criminals. We’re involved in all the incidents and threats to Lloyds cyber security to understand how we can mitigate future attacks. Looking to the future there will be a focus on Automation & Terraform! You’ll also help develop and deliver cyber security solutions for the Group including critical Work with our target cloud platforms to deliver our future security software and configurations using Akamai, GCP and Azure cloud native products.

Qualifications
  • A prior background within cyber security and a passion to continuously understand and learn the latest in cyber defences.
  • Good knowledge of DDoS, Bot and DNS protection.
  • Solid understanding of how cyber defence is applied through the networking layers (routing/switching, IP, network protocols, firewalls, WAF).>The ability to take ownership and deal with issues directly, identifying solutions to minimize blocking issues.
  • Experience engaging and support key internal relationships.


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