
10,000+ employees
Founded 1849
🏢 Enterprise
🎯 Recruiter
👥 HR Tech
Enterprise • Recruitment • HR Tech
Freudenberg Group is a global company that has developed a specialized platform for job seekers to explore career opportunities within the company. The platform provides a job listing page with search and filter capabilities, and detailed job offer pages where users can learn more about open positions and start the application process. Freudenberg integrates third-party content such as YouTube videos and maps from Google Maps and Baidu Maps to enhance user experience on their job pages. They emphasize user privacy and session management with the use of necessary cookies to ensure security and maintain session consistency throughout the job application process.
🔥 0 minutes ago
Improve your chances of getting an interview by checking your resume score before you apply.

10,000+ employees
Founded 1849
🏢 Enterprise
🎯 Recruiter
👥 HR Tech
Enterprise • Recruitment • HR Tech
Freudenberg Group is a global company that has developed a specialized platform for job seekers to explore career opportunities within the company. The platform provides a job listing page with search and filter capabilities, and detailed job offer pages where users can learn more about open positions and start the application process. Freudenberg integrates third-party content such as YouTube videos and maps from Google Maps and Baidu Maps to enhance user experience on their job pages. They emphasize user privacy and session management with the use of necessary cookies to ensure security and maintain session consistency throughout the job application process.
• Design, build, and operate a secure, scalable, AI‑ready data and analytics platform on Microsoft Azure and Microsoft Fabric, including OneLake, Lakehouse, and Warehouse components. • Administer and optimize Azure and Fabric platform resources including subscriptions, resource groups, RBAC, Azure Policies, and Fabric capacities (F SKUs), workspaces, and item governance. • Manage storage and compute layers across the platform covering ADLS Gen2, Delta Lake, Lakehouse/Warehouse, SQL pools, and Spark runtime and capacity settings. • Enable and operate data ingestion and transformation services using Azure Data Factory, Synapse Pipelines, Fabric Data Factory, and Dataflows Gen2, focusing on platform configuration, reliability, and standards (no pipeline business logic). • Establish platform reliability and operational excellence including monitoring, alerting, autoscaling, performance tuning, cost control, tagging, chargeback/showback, and capacity optimization. • Harden platform security end to end leveraging Entra ID (Azure AD), PIM, conditional access, managed identities, Key Vault, private endpoints, encryption, and network isolation. • Implement governance, compliance, and data protection controls using Microsoft Purview (catalog, lineage, classification), DLP, sensitivity labels, retention policies, and auditing. • Enable AI/ML and advanced analytics workloads by integrating Azure Machine Learning and Fabric ML experiences, including feature stores, registries, compute access, and inference endpoints from a platform perspective. • Oversee CI/CD and lifecycle management for analytics and data platform artifacts including Fabric Git integration, Azure Repos/GitHub, branching strategies, automated deployments, and environment promotion. • Act as tenant and workspace administrator and platform enabler for Fabric and Power BI (capacity settings, gateways, semantic models, refresh, RLS/OLS), while collaborating cross‑functionally, defining best practices, and coaching teams on platform usage.
• Azure platform administration: Entra ID, RBAC, Azure Policy / Blueprints, subscription & resource group management, Cost Management, automation standards. • Microsoft Fabric administration (hands‑on): Capacities (F SKUs), workspaces, Lakehouse, Warehouse, OneLake, Shortcuts, Notebooks, Fabric Data Factory and Dataflows Gen2. • Security‑by‑design for data platforms: Network segmentation, Private Endpoints, Key Vault / CMK, managed identities, secret rotation, DLP and encryption. • Governance & compliance controls: Microsoft Purview (catalog, lineage, classification), RLS/OLS, sensitivity labels, audit logging, data residency & privacy requirements. • Power BI & Fabric tenant administration: Tenant settings, gateways, semantic model governance, incremental refresh, Direct Lake / DirectQuery, deployment pipelines. • Storage & compute operations for analytics platforms: ADLS Gen2, Delta Lake, Spark runtimes, SQL (Synapse / Fabric Warehouse), partitioning, caching, performance tuning. • Observability and operational excellence: Azure Monitor, Log Analytics / KQL, Fabric capacity metrics, refresh diagnostics, query performance, cost/performance optimization. • DevOps and container platform operations: Git-based workflows, YAML pipelines (Azure DevOps / GitHub Actions), environment promotion, release automation, and AKS platform operations (cluster configuration, scaling, upgrades, workload isolation). • MLOps / AI platform enablement: Integration with Azure ML / Fabric ML: model lifecycle, feature stores, pipelines, registries, and governance (platform perspective). • Scripting, automation & infrastructure as code: PowerShell / Azure CLI, Python / SQL scripting, IaC (Bicep / Terraform) for repeatable, governed platform changes. • FinOps-aware platform administration: Cost attribution, capacity optimization, showback/chargeback models. • Experience with adjacent data & streaming platforms: Azure Databricks, Event Hubs / Kafka, or similar large-scale data services. • Advanced Kubernetes ecosystem capabilities: Ingress controllers, service mesh (e.g. Istio/Linkerd), workload identity, secrets integration, and cluster‑level security hardening. • Platform leadership & enablement: Experience leading platform rollouts, defining standards and guardrails, mentoring engineering teams.
• Health insurance • Professional development opportunities
Apply Now🕒 June 28
Snowflake Data Engineer at Wavestone developing and optimizing data models and pipelines. Collaborating on data solutions with global teams and various stakeholders for enterprise-scale analytics.
Airflow
🕒 June 27
Snowflake Data Engineer optimizing data backend with performance and cost efficiency focus at Wavestone. Collaborating on data models and pipelines using Snowflake and dbt.
Airflow
🕒 June 23
501 - 1000
Middle Data Engineer specializing in Azure Databricks to design and develop data pipelines for Miratech's data platform. Collaborating with teams to leverage cloud-based architectures for advanced analytics.
Azure
Cloud
ETL
PySpark
Spark
SQL
SSIS
🕒 June 23
501 - 1000
Middle Data Engineer specializing in Azure Databricks for Miratech, a global IT consulting firm. Designing and developing data pipelines and Lakehouse architectures for data platforms.
Azure
Cloud
ETL
PySpark
Spark
SQL
SSIS
🕒 June 23
501 - 1000
Middle Data Engineer specialized in Azure Databricks for global IT services company. Designing modern data pipelines and Lakehouse architectures to enable advanced analytics.
Azure
Cloud
ETL
PySpark
Spark
SQL
SSIS