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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.
Designation: AI Integration Engineer
Job Description:
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Build end‑to‑end AI/ML pipelines (training → evaluation → deployment) using MLflow/Kubeflow/Databricks/Weights & Biases with experiment tracking and model registries.
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Develop models with Python using Py Torch, Tensor Flow, JAX, scikit‑learn, and Hugging Face Transformers, package as reproducible services.
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Implement LLM/RAG systems with Lang Chain, Llama Index, Semantic Kernel and vector DBs (Pinecone, Weaviate, Milvus, FAISS, Chroma) for semantic retrieval and grounding.
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Fine‑tune and optimize models using PEFT/LoRA/QLoRA, Deep Speed/Accelerate, distillation, and quantization; export/optimize via ONNX Runtime/Torch Script/TensorRT.
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Engineer scalable model serving with KServe, Seldon Core, BentoML, Ray Serve, NVIDIA Triton, supporting A/B, canary, shadow deployments.
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Build evaluation harnesses (offline/online) with Ragas, Tru Lens, Promptfoo, golden datasets, and regression gates integrated into CI/CD.
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Construct feature stores (e.g., Feast) and data contracts (Protobuf/Avro/Pydantic); enforce data quality with Great Expectations/Deequ.
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Orchestrate event‑driven pipelines with Airflow/Prefect/Dagster; streaming/messaging via Kafka/RabbitMQ/NATS and schema registries.
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Design Python microservices using FastAPI/gRPC; integrate with downstream systems via REST/GraphQL; write robust automation in Python/Bash/PowerShell and SQL for data ops.
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Use notebooks (Jupyter) and packaging (Poetry/pip/conda) with virtualenvs, environment locking, and artifacts suitable for promotion across stages.
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Apply testing & quality: pytest, unit/integration/e2e tests, property‑based (hypothesis), linters/formatters (ruff/flake8, black), type checks (mypy/pyright), pre‑commit.
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Deliver IaC with Terraform/Pulumi; manage config via Helm/Kustomize; implement Git Ops with Argo CD/Flux on managed/self‑hosted Kubernetes.
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Build secure CI/CD (GitHub Actions/GitLab CI/Jenkins/Azure DevOps) for app/data/ML artifacts, artifact promotion, provenance, and automated rollbacks.
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Embed Dev Sec Ops: SAST/DAST/IAST (Snyk/Checkmarx/Sonar Qube), container & IaC scanning (Trivy), dependency hygiene (Dependabot/Renovate), SBOM (Syft/CycloneDX).
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Enforce policy‑as‑code (OPA/Gatekeeper, Kyverno), image signing/verification (Sigstore/cosign), supply‑chain standards (SLSA, in‑toto).
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Manage secrets/KMS with Vault and native managers; adopt short‑lived workload identities, mTLS, and least‑privilege RBAC/ABAC in clusters and pipelines.
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Implement AI safety & governance: prompt‑injection defenses, output filtering, PII redaction, guardrails (Guardrails.ai/Ne Mo Guardrails/Presidio), policy checks.
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Monitor model/data drift, bias, and performance with Evidently/Why Labs/Arize/Fiddler; unify telemetry via Open Telemetry, Prometheus, Grafana, ELK/Loki, Jaeger.
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Optimize compute/GPU: CUDA/cuDNN/NCCL, HPA/VPA/KEDA, efficient batching, caching, concurrency control; track cost and latency SLOs.
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Implement progressive delivery for services/models (blue/green, canary, shadow) using Argo Rollouts/Flagger with instant rollback and health checks.
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Operate API gateways and service mesh (Kong/NGINX/Envoy, Istio/Linkerd) for rate limiting, mTLS, authN/Z, and zero‑trust patterns.
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Ensure privacy/compliance (GDPR/CCPA/DPDP/ISO 27001): data minimization, masking/tokenization, DLP, lineage (Open Lineage/Marquez), model cards/data sheets.
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Collaborate with security, data, and platform teams to publish golden paths, templates, and reference implementations for repeatable AI delivery.
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Contribute to code/design reviews and SRE practices (SLIs/SLOs/error budgets), on‑call readiness, incident response, and blameless post‑mortems.
Desired Profile
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Looking for a Dev Sec Ops & AI Engineer with 4–7 years of hands‑on experience in cloud platforms, automation, and AI/ML engineering workflows.
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Strong expertise in Terraform, Kubernetes, Helm, Docker, and modern CI/CD pipelines using GitHub Actions, GitLab CI, Jenkins, or Azure DevOps.
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Proficient in Python with experience in FastAPI, ML libraries (Py Torch/Tensor Flow), and scripting using Bash or PowerShell for automation.
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Solid experience in Dev Sec Ops practices including SAST/DAST, container/IaC scanning, secrets scanning, SBOM, and policy-as-code frameworks.
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Hands‑on exposure to MLOps and AI integration using tools like MLflow, Kubeflow, Weights & Biases, KServe, Seldon Core, or BentoML.
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Experience building or integrating RAG/LLM pipelines using Lang Chain, Llama Index, or vector databases (Pinecone/FAISS/Weaviate).
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Strong cloud fundamentals across AWS/Azure/GCP with ability to architect secure, automated infrastructure via IaC and Git Ops (Argo CD/Flux).
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Familiarity with monitoring and observability stacks (Prometheus, Grafana, Open Telemetry, ELK/Loki) for application and model performance.
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Strong troubleshooting, problem‑solving, and system debugging skills with a collaborative, engineering‑first mindset.
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Excellent communication skills with ability to work cross‑functionally with Data, AI/ML, DevOps, Security, and Platform Engineering teams.
Experience: 4 to 7 years
Education: B.Tech. / BS in Computer Science
Technical Skills & Certifications
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Terraform, Pulumi, and IaC for automated cloud and platform provisioning.
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Kubernetes, Docker/Podman, Helm, and Kustomize for container orchestration and packaging.
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CI/CD pipelines using GitHub Actions, GitLab CI, Jenkins, and Azure DevOps.
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Proficient in Python (FastAPI, ML/LLM libraries) and scripting with Bash/PowerShell.
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Dev Sec Ops tooling: Snyk, Sonar Qube, Trivy, Checkmarx, Git Leaks, and secret scanning.
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MLOps platforms: MLflow, Kubeflow, W&B, Azure ML, Vertex AI for model lifecycle management.
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Model serving frameworks: KServe, Seldon Core, BentoML, Ray Serve for scalable inference.
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RAG/LLM integration: Lang Chain, Llama Index, vector DBs (Pinecone, Weaviate, FAISS, Chroma).
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Monitoring & observability: Prometheus, Grafana, ELK/Loki, Open Telemetry, Jaeger.
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Git Ops tools (Argo CD, Flux), configuration management (Ansible/Puppet), and serverless 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
PublicEY, 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
3.4
10件のレビュー
ワークライフバランス
2.3
報酬
3.7
企業文化
4.1
キャリア
3.8
経営陣
3.2
65%
友人に勧める
良い点
Good learning opportunities and career advancement
Supportive culture and kind people
Professional environment and good benefits
改善点
Long working hours and poor work-life balance
Hectic and taxing work environment
Limited support for interns and technical growth
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
面接体験
7件の面接
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
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