GCP Architect

Photon
London
11 months ago
Applications closed

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Role : GCP Architect

Location : London, UK

Responsibilities:

Infrastructure as Code (IaC):

• Design, implement, and manage infrastructure as code using Terraform for GCP environments.

• Ensure infrastructure configurations are scalable, reliable, and follow best practices.

GCP Platform Management:

• Architect and manage GCP environments, including compute, storage, and networking components.

• Collaborate with cross-functional teams to understand requirements and provide scalable infrastructure solutions.

Vertex AI Integration:

• Work closely with data scientists and AI specialists to integrate and optimize solutions using Vertex AI on GCP.

• Implement and manage machine learning pipelines and models within the Vertex AI environment.

BigQuery Storage:

• Design and optimize data storage solutions using BigQuery Storage.

• Collaborate with data engineers and analysts to ensure efficient data processing and analysis.

Wiz Security Control Integration:

• Integrate and configure Wiz Security Control for continuous security monitoring and compliance checks within GCP environments.

• Collaborate with security teams to implement and enhance security controls.

Automation and Tooling:

• Implement automation and tooling solutions for monitoring, scaling, and managing GCP resources.

• Develop and maintain scripts and tools to streamline operational tasks.

Security and Compliance:

• Implement security best practices in GCP environments, including identity and access management, encryption, and compliance controls.

• Must understand the Policies as a Code in GCP

• Perform regular security assessments and audits.

Requirements:

Bachelor's Degree:

• Bachelor’s degree in Computer Science, Information Technology, or a related field.

GCP Certification:

• GCP Professional Cloud Architect or similar certifications are highly desirable.

Infrastructure as Code:

• Proven experience with Infrastructure as Code (IaC) using Terraform for GCP environments.

Vertex AI and BigQuery:

• Hands-on experience with Vertex AI for generative AI solutions and BigQuery for data storage and analytics.

Wiz Security Control:

• Experience with Wiz Security Control and its integration for continuous security monitoring in GCP environments.

GCP Services:

• In-depth knowledge of various GCP services, including Compute Engine, Cloud Storage, VPC, and IAM.

Automation Tools:

• Proficiency in scripting languages (e.g., Python, Bash) and automation tools for GCP resource management.

Security and Compliance:

• Strong understanding of GCP security best practices and compliance standards.

Collaboration Skills:

• Excellent collaboration and communication skills, with the ability to work effectively in a team-oriented environment.

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