Site Reliability Engineer (m/f/d)
Düsseldorf, Nordrhein-Westfalen / €85000 - €95000
INFO
€85000 - €95000
LOCATION
Düsseldorf, Nordrhein-Westfalen
Permanent
SITE RELIABILITY ENGINEER (m/f/d)
Keywords: AWS, DevOps, Ansible, Python, Docker, Kubernetes, Chef, Bash
Salary: €85 000 - €95 000
Location: Düsseldorf, Germany
Are you an SRE looking for experience with a fast-growing software company? This is an excellent opportunity for you to apply your knowledge!
THE COMPANY
This fast-growing software company provides innovative solutions to its customers. They empower businesses to achieve their goals through technology, building software applications that are reliable, scalable, and secure. They are looking for a passionate individual that wants to help them with their mission and bring on their knowledge.
THE ROLE
As an SRE, you will be:
- Designing, implementing, and maintaining scalable, reliable, and secure infrastructure
- Monitoring the performance and availability of applications and services
- Developing and maintaining tools and processes to automate the deployment, scaling, and monitoring of systems
- Collaborating with deployment teams to ensure that new features and services are designed with reliability and scalability in mind
- Continuously improving systems and processes to increase reliability, scalability, and efficiency
- Staying up to date with the latest trends and best practices in infrastructure and operations
SKILLS AND EXPERIENCE
As an SRE you have the following experience and master these tools:
- University degree in Computer Science, Information Technology, or a comparable education
- 4+ years of experience as an SRE, DevOps Engineer, or a similar role
- Strong knowledge of Linux, networking, and cloud platforms (AWS, GCP, or Azure)
- Experience with Ansible, Chef, or Puppet
- Strong scripting skills in Python, Ruby, or Bash
- Familiarity with Docker and Kubernetes is a plus
- Ability to work independently and as part of a team
- Excellent communication and collaboration skills
THE BENEFITS
- Home office possibility and work-life balance
- Learning and development opportunities
- 30 days of holiday
Please register your interest by sending your CV to Maria Alejandra Leon via the Apply link on this page.

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