Senior DevOps Engineer

Corsearch
St Paul's
1 year ago
Applications closed

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Are you ready to embark on an exciting adventure in the world of DevOps? ✅Join a Mission-Led Company At Corsearch, we're not just obsessed with trademarks and brand protection—we're driven by a mission to create a safer world for businesses and consumers. As a global leader in the intellectual property services industry, Corsearch boasts a team of over 1,600 talented professionals spread across 27 countries and 5 continents. Trusted by Fortune 500 companies and serving over 5,000 clients worldwide, our success lies in our ability to blend innovative technology, data analytics, and expertise. Through cutting-edge web crawling, machine learning algorithms, and scalable platforms, we monitor millions of product listings and analyze vast datasets to provide comprehensive brand protection and valuable insights. Our solutions empower businesses to combat counterfeits, safeguard their brand value, and thrive in today's competitive marketplace. Joining Corsearch means becoming part of a fast-growing tech company that is dedicated to empowering businesses to protect their valuable brands and innovations. We foster a culture of continuous learning, collaboration, and innovation, valuing diverse perspectives and investing in the well-being of our employees. Together, we'll make a lasting impact, protecting brands worldwide and ensuring a safer marketplace. If you're ready to take on a new challenge as a Senior DevOps Engineer, keep reading As a key player in our data transformation journey, you'll be part of our mission to optimize our infrastructure for future growth and migrate workloads to AWS. ✅ The Role As a Senior DevOps Engineer, you'll have a pivotal role in our company's digital transformation. Your expertise in Ansible, Terraform, GitHub Actions, Kubernetes, ECS, AWS, and ideally Elastic Search will enable you to design, implement, and maintain efficient and scalable infrastructure solutions. Join us as we push the boundaries of DevOps and drive our company's technological advancement. ✅ Responsibilities and Duties Collaborate closely with cross-functional teams to understand the requirements and objectives of workload migrations to AWS. Utilize Ansible, Terraform, and GitHub Actions to design and develop robust automation frameworks that streamline the migration process. Deploy and manage containerized applications using Kubernetes and ECS, ensuring high availability and scalability. Architect, provision, and maintain infrastructure resources required for workload migration using various AWS services. Optimize continuous integration and continuous deployment (CI/CD) pipelines in collaboration with software development teams. Monitor and troubleshoot infrastructure and application issues to ensure smooth and reliable operation of migrated workloads. Implement security best practices and ensure compliance with industry standards throughout the migration process. Document infrastructure architecture, deployment processes, and technical procedures to facilitate knowledge sharing and future reference. Stay up-to-date with the latest DevOps trends and technologies, identifying opportunities for improvement and innovation within our infrastructure. ✅ Essential Qualifications Bachelor's degree in Computer Science, Engineering, or a related field (or equivalent work experience). Proven experience as a DevOps Engineer, with a strong focus on infrastructure migration projects. Extensive hands-on experience with Ansible, Terraform, GitHub Actions, Kubernetes, and ECS. In-depth knowledge of AWS services and the ability to architect and manage complex cloud-based infrastructures. Familiarity with Elastic Search is a plus. Strong understanding of CI/CD concepts and practical experience in implementing CI/CD pipelines. Proficiency in scripting languages such as Python, Bash, or PowerShell. Solid grasp of networking, security, and infrastructure-as-code (IaC) principles. Excellent problem-solving skills and the ability to troubleshoot and resolve complex technical issues. Strong communication and collaboration skills to effectively work within a cross-functional team. If you're a self-motivated professional with a passion for cloud infrastructure and automation, and thrive in a fast-paced environment, we'd love to hear from you. Join our team and play a crucial role in our exciting journey of migrating workloads to AWS and optimizing our infrastructure for future growth. Together, we'll make a lasting impact, protecting brands worldwide and ensuring a safer marketplace. Corsearch is an equal opportunity and inclusive employer and does not tolerate discrimination of any kind. We are committed to creating a diverse and inclusive workplace where all employees feel valued, respected, and supported. We welcome applications from all individuals regardless of race, nationality, religion, gender, gender identity or expression, sexual orientation, age, disability, or any other protected characteristic. Together, we are working proactively to build a workplace where everyone can belong and be at their best selves. Together, we make an Impact.

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