AWS DevOps Engineer

  • Plano, TX
  • Posted 19 days ago | Updated 4 hours ago

Overview

On Site
BASED ON EXPERIENCE
Contract - Independent
Contract - W2
Contract - 12+ mo(s)

Skills

DEVOPS
AWS
INFRASTRUCTURE AS CODE
IAC
CI/CD
GITLAB
ARGO
KUBERNETES
EKS
BASH
PYTHON
SHELL
DATADOG
ELK
SPLUNK
APPDYNAMICS
GRAFANA
MICROSERVICES
ECS
EC2
S3
TERRAFORM

Job Details

Job Description:
5 years' experience in Information Technology.
Should have achieved mastery in one of the SecDevops practices - IaC-Terraform, Cloud-AWS, CICD-Git/Argo, microservices architecture deployment (primarily Kubernetes) with awareness about site reliability engineering principles, coupled with a willingness to learn and expand the knowledge.
Familiarity with Agile/Scrum methodology.
Experience with source control and continuous integration tools.
Strong analytical and reasoning skills.
Good experience with cloud services (AWS), cloud engineering, architecture, and software as a service. Hands-on experience in AWS Services - IAM, VPC, EKS, CloudFront, APIGW.
Ability to work in fast paced teams with quick decision making.
Scripting experience with Bash/Shell, Python.
Experience in IaC - Terraform is a must have.
CI (preferably Gitlab CI) and CD (preferably Argo CD).
Kubernetes debugging experience.

What you'll be doing:

Write well defined and tested code (IaC - Terraform) and Build pipeline (Good CICD experience) to enforce standards, frameworks, and architecture principles for the connected vehicle program. Work with the cyber security and the web security team to ensure the compliance to the technical solution being implemented.
Perform as an individual contributor and colleague who enjoys collaborating with, learning from, and mentoring program team members on security disciplines to bolster overall security posture to lower the business risk profile.
Solve complex problems around connected vehicle technology for mobility and telematics by troubleshoot issues and debug codebases.
Deployment, automation, management, and maintenance of AWS cloud-based production system.
Adapt new technologies, tools, processes from the organization as needed.
Communicate well with team members and work collaboratively.
Maintain and improve existing codebases and peer review code changes.
Ensuring availability, performance, security, and scalability of AWS production systems.
Management of creation, release, and configuration of production systems.
System troubleshooting and problem resolution across various application domains and platforms.

Qualifications/ What you bring (Must Haves) - Highlight Top 3-5 skills.

Master in one of the SecDevops practices - IaC-Terraform, Cloud-AWS, CICD-Git/Argo, microservices architecture deployment (primarily Kubernetes) with awareness about site reliability engineering principles, coupled with a willingness to learn and expand the knowledge.
Perform as an accountable resource and take ownership on assigned projects and tasks for delivery with quality and in a timely manner using Agile/JIRA best practices.
Partner with application teams as a trusted advisor to ensure compliance and adoption of organizational SecDevops standards, processes, and industry best-practices for developing and deploying microservices in public cloud environments.

Added bonus if you have (Preferred):

Cloud Platform Engineering team manages several tool stacks, if someone has expertise in more than one of the below, that'd be a great asset - AWS - ECS, EC2, S3, SNS, SQS, MKS, Batch, Lambda, Cognito, SG, RDS, Cert Manager, Route 53, ALB, Param Store, Config, etc.
IaC: Terraform - Preferred, CloudFormation.
CI & CD: GitLab - Preferred, GitHub, Azure DevOps, Jenkins, Artifactory, Docker, Kubernetes, Helm, Argo CD, Serverless.
Secrets Management: HCP Vault, AWS Secrets Manager.
Networking: Transit GW, VPC Peering, NAT, Istio, Traefik, HCP Consul, Nginx, Section.io, etc.
Scripting: Python, GO, Bash/Shell, JavaScript, YAML, JSON.
Build Tools: Maven, Gradle, NPM, Bazel, Go.
Databases: RDS, SQL, MySQL, Postgres, RedShift, MongoDB, DynamoDB.
Security Scans: SAST, Secrets, Container, DAST, Xray, Prisma Cloud.
Logging and Monitoring: DataDog, Splunk, App Dynamics, ELK, Grafana.

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