トレンド企業

EY
EY

EY, previously known as Ernst & Young, is a British multinational professional services network based in London, United Kingdom

DevSecOps and AI Engineer-SENIOR

職種DevOps
経験シニア級
勤務オンサイト
雇用正社員
掲載1ヶ月前
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At EY, we’re all in to shape your future with confidence.

We’ll help you succeed in a globally connected powerhouse of diverse teams and take your career wherever you want it to go.

Join EY and help to build a better working world.

Dev Sec Ops & AI Engineer Job Description

  • Build and maintain secure CI/CD pipelines using GitHub Actions, GitLab CI, Jenkins, Azure DevOps, and CircleCI for application, data, and AI workloads.

  • Integrate Dev Sec Ops practices into pipelines using Snyk, Sonar Qube, Checkmarx, Trivy, Anchore, and OWASP tools for continuous security scanning.

  • Implement shift-left security with secret scanning (Git Leaks, Truffle Hog), SBOM automation (Syft, CycloneDX), and dependency management (Dependabot, Renovate).

  • Work with containerization (Docker/Podman) and Kubernetes (EKS, AKS, GKE) including Helm/Kustomize for deployments and secure image pipelines.

  • Develop and automate MLOps workflows using MLflow, Kubeflow, Azure ML, Sage Maker, or Vertex AI for model training, packaging, and deployment.

  • Build and maintain RAG/AI integration pipelines using Lang Chain, Llama Index, Semantic Kernel, and vector databases like Pinecone, Weaviate, or FAISS.

  • Implement AI inference systems using Seldon Core, KServe, BentoML, Ray Serve, or Triton Inference Server for scalable model serving.

  • Automate ETL/ELT and data feature pipelines using Airflow, Prefect, Dagster, dbt, or Kafka/Kinesis for AI model data feeds.

  • Work with IaC tools such as Terraform, Pulumi, CloudFormation, or Azure Bicep to provision cloud and AI infrastructure.

  • Implement event-driven architectures using serverless functions (AWS Lambda, Azure Functions, Cloud Functions) and messaging systems like Kafka or RabbitMQ.

  • Maintain monitoring and logging using Prometheus, Grafana, ELK/Loki, Open Telemetry, Jaeger, Datadog, or New Relic for both app and ML workloads.

  • Handle model & data observability using tools like Evidently AI, Arize AI, Why Labs, or Fiddler for drift, bias, and performance tracking.

  • Secure cloud environments using IAM best practices (AWS IAM, Azure AD/Entra ID, GCP IAM), workload identities, and least-privilege controls.

  • Support configuration management using Ansible, Chef, or Salt Stack for environment consistency and automation.

  • Develop scripts in Python, Bash, or SQL for automation, data processing, validation, and orchestration of ML workflows.

  • Implement API integrations for AI systems using REST, gRPC, or GraphQL for model consumption and downstream applications.

  • Use Git Ops tools like Argo CD or Flux for automated, secure Kubernetes deployments and progressive delivery.

  • Apply AI security practices including guardrails, prompt protection, model validation, and safe inference techniques using industry tools.

  • Ensure compliance with data governance, privacy, and security standards including GDPR, CCPA, and cloud security best practices.

  • Collaborate with data engineers, ML engineers, DevOps teams, and security teams, contributing to documentation, reviews, and mentoring juniors.

Desired Profile

  • Looking for a Dev Sec Ops & AI Engineer with 4–7 years of hands‑on experience in cloud, DevOps, and AI/ML workflows.

  • Strong skills in Terraform, Kubernetes, Helm, Docker, and CI/CD (GitHub Actions, GitLab CI, Jenkins, Azure DevOps).

  • Proficient in Python and scripting (Bash/PowerShell) with good automation mindset.

  • Experience implementing Dev Sec Ops practices—SAST/DAST, container scanning, secrets scanning, SBOM, and policy-as-code.

  • Exposure to MLOps/AI integration using MLflow, Kubeflow, Sage Maker, Azure ML, KServe, or Seldon.

  • Familiar with cloud (AWS/Azure/GCP), configuration management (Ansible/Puppet), and Git Ops tools (Argo CD/Flux).

  • Strong communication, troubleshooting, and collaboration skills with ability to work cross‑functionally.

Experience

  • 4 to 7 years

Education

  • B.Tech. / BS in Computer Science

Technical Skills & Certifications

  • Terraform, Pulumi, and Infrastructure as Code (IaC)

  • Kubernetes (EKS/AKS/GKE), Docker/Podman, Helm, Kustomize

  • CI/CD tools: GitHub Actions, GitLab CI, Jenkins, Azure DevOps

  • Cloud platforms: AWS, Azure, GCP

  • Python, Bash, PowerShell scripting

  • Dev Sec Ops tools: Snyk, Sonar Qube, Trivy, Checkmarx, Git Leaks, Truffle Hog

  • Policy-as-code (OPA/Gatekeeper, Kyverno) and SBOM tools (Syft, CycloneDX)

  • MLOps tools: MLflow, Kubeflow, Sage Maker, Azure ML, Vertex AI

  • Model serving frameworks: KServe, Seldon Core, BentoML, Ray Serve

  • Vector DBs & RAG stack: Pinecone, Weaviate, FAISS, Chroma, Lang Chain, Llama Index

  • Monitoring & observability: Prometheus, Grafana, ELK/Loki, Open Telemetry, Jaeger

  • Configuration management: Ansible, Puppet

  • Git Ops: Argo CD, Flux

  • Serverless: AWS Lambda, Azure Functions, Google Cloud Functions.

EY | Building a better working world

EY is building a better working world by creating new value for clients, people, society and the planet, while building trust in capital markets.

Enabled by data, AI and advanced technology, EY teams help clients shape the future with confidence and develop answers for the most pressing issues of today and tomorrow.

EY teams work across a full spectrum of services in assurance, consulting, tax, strategy and transactions. Fueled by sector insights, a globally connected, multi-disciplinary network and diverse ecosystem partners, EY teams can provide services in more than 150 countries and territories.

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EYについて

EY

EY

Public

EY, previously known as Ernst & Young, is a British multinational professional services network based in London, United Kingdom. Along with Deloitte, KPMG and PwC, it is one of the Big Four professional services firms.

10,001+

従業員数

London

本社所在地

レビュー

2件のレビュー

2.7

2件のレビュー

ワークライフバランス

2.0

報酬

3.0

企業文化

2.2

キャリア

3.5

経営陣

1.8

25%

知人への推奨率

良い点

Opportunity to become top performer

Handle large accounts

High responsibility roles

改善点

Long hours and intense work pressure

Poor management and leadership

Burnout issues

給与レンジ

31,254件のデータ

Mid/L4

Mid/L4 · Operations Research Analyst

1,738件のレポート

$142,571

年収総額

基本給

$136,899

ストック

-

ボーナス

$5,673

$100,128

$203,912

面接レビュー

レビュー7件

難易度

3.0

/ 5

期間

14-28週間

内定率

57%

面接プロセス

1

Application Review

2

HR Screen

3

Hiring Manager Interview

4

Technical/Case Interview

5

Partner/Director Interview

6

Offer

よくある質問

Behavioral/STAR

Case Study

Technical Knowledge

Past Experience

Culture Fit