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VExpenses

Reembolso de despesas sem complicação!

Senior DevOps/SRE

DevOps EngineerDevOps EngineerFull TimeRemoteSeniorTeam 51-200Since 2016H1B No SponsorCompany SiteLinkedIn

Location

Brazil

Posted

49 days ago

Salary

0

Seniority

Senior

Job Description

Senior DevOps/SRE

VExpenses

• Design solutions following automation best practices and cloud computing principles, taking into account the context of a fast-growing fintech; • Diagnose, monitor, and document incidents to help build higher-performing solutions; • Fully automate the deployment of our applications, from code to production (Continuous Deployment); • Provide rapid feedback on code changes at scale while maintaining high security and quality standards (Continuous Integration); • Architect and implement new environments together with our Technology team; • Ensure quality and scalability for our platform.

Job Requirements

  • Strong expertise in AWS, CI/CD tools, and information security;
  • Knowledge of system monitoring and observability tools;
  • Familiarity with GIT, programming languages, and scripting;
  • Experience with Terraform;
  • A strong drive to make things happen!

Benefits

  • Fully remote work throughout your tenure, with a team ready to support you (even from a distance);
  • Medical insurance with no co-pay and national coverage;
  • Flexibility to allocate your benefits between meal and/or food vouchers, whenever and however you prefer;
  • Discounts on medications and health products;
  • All necessary work equipment provided (laptop, headset, mouse, etc.);
  • Referral bonus for successful hires;
  • Access to Wellhub and TotalPass wellness platforms with various well-being solutions;
  • Extended maternity and paternity leave;
  • Plenty of freedom (and support) to be yourself;
  • Close contact with founders and partners;
  • Relaxed and collaborative work environment;
  • Casual dress code on a daily basis;
  • Access to dental insurance;
  • Birthday day off;
  • Significant opportunities for learning and growth! 💙

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