Role Overview
We are seeking an Analytics Engineer to design, build, and operate our analytics and automations as well as build of AI-powered automations and copilots using governed enterprise data. This role is responsible for delivering high-quality Power BI reporting, establishing and maintaining Microsoft Fabric and/or GCP BigQuery, and building business automations and applications using Python, Power Automate and Power Apps.
You will be part of the Cloud & Service Management organization helping to evolve our self-service analytics, scalable data architecture, and automations—while ensuring security, performance, and governance across the platform.
This is a hands-on role with ownership of both solution delivery and platform best practices.
Key Responsibilities
Analytics & Reporting
- Design, develop, and maintain reports and dashboards
- Build and optimize semantic models using strong dimensional modeling (star schema)
- Write and tune DAX measures with a focus on performance and usability
- Implement Power BI and Looker deployment pipelines and promote content across environments
Microsoft Fabric Platform
- Establish and maintain Microsoft Fabric architecture, including:
- Lakehouse and/or Warehouse
- Dataflows Gen2
- OneLake data organization
- Manage Fabric capacities, workspaces, and permissions
- Monitor performance, cost, and reliability of Fabric workloads
- Develop and maintain Python-based data transformations and notebooks within Fabric
- Use Python for data preparation, enrichment, validation, and advanced analytics
- Define and enforce data modeling and medallion architecture standards
Automation & Applications
- Build and maintain automation flows for business processes, approvals, and integrations
- Work with Dataverse, connectors, and security roles
- Implement error handling, logging, and operational support patterns
Platform Governance & Operations
- Define Dev/Test/Prod environment strategy for reporting and automation platform
- Implement Application Life best practices (solutions, pipelines, source control where applicable)
- Establish governance standards to prevent platform sprawl
- Partner with security and IT teams on access control and compliance
- Provide guidance and enablement to analysts and citizen developers
Collaboration & Leadership
- Translate business requirements into scalable technical solutions
- Contribute to platform roadmap and continuous improvement efforts
Agentic AI & ML Enablement
Design and deliver agentic AI solutions that automate multi-step business workflows (tool use, planning, and human-in-the-loop approvals) using enterprise data and governed actions.
Build RAG (retrieval-augmented generation) patterns over Fabric/OneLake (document ingestion, chunking, embeddings, retrieval evaluation) to power analytics copilots and self-service Q&A.
Develop and operate ML pipelines (feature engineering, training, evaluation, batch/real-time inference) using Python and approved ML frameworks.
Establish LLMOps/ModelOps practices: prompt/version control, offline evaluation, regression testing, monitoring (quality, drift, cost, latency), and safe rollback.
Implement AI security and governance: data access controls, prompt/data leakage prevention, PII handling, model risk reviews, and audit logging for agent actions.
Partner with stakeholders to identify high-value use cases and deliver measurable outcomes (time saved, defect reduction, SLA improvements).
Required Qualifications
- 5+ years of experience in analytics, BI, or data engineering roles
- 3+ years of hands-on Power BI development experience
- Strong experience with Microsoft Fabric (Lakehouse, Warehouse, Dataflows)
- Proficient in DAX, SQL, and data modeling
- Hands-on experience with:
- Power Automate (cloud flows, approvals, integrations)
- Power Apps (Canvas apps)
- Dataverse
- Hands-on Python experience delivering ML or GenAI solutions in production (notebooks-to-service, APIs, scheduled jobs, or integrated automations).
Working knowledge of RAG concepts (embeddings, vector search, retrieval, grounding, evaluation).
Experience implementing monitoring and testing for data/ML/GenAI systems (data quality checks, model/prompt evaluation, logging/telemetry).
- Experience managing environments, security, and deployments
- Strong understanding of data governance and analytics best practices
Preferred Qualifications
- Experience designing enterprise-scale analytics platforms
- Familiarity with Azure services (Azure SQL, Data Factory, Synapse)
- Familiarity with GCP BigQuery and Looker
- Experience with CI/CD concepts for Power BI and Looker
- Power Platform or Microsoft analytics certifications
- Experience working in a Center of Excellence (CoE) model
- Experience with Azure OpenAI / Azure AI Foundry (or equivalent) and enterprise deployment patterns.
Experience with orchestration frameworks (e.g., Semantic Kernel, LangChain, Autogen) and tool/function calling.
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Skills Required
- 5+ years of experience in analytics, BI, or data engineering roles
- 3+ years of hands-on Power BI development experience
- Strong experience with Microsoft Fabric (Lakehouse, Warehouse, Dataflows)
- Proficient in DAX, SQL, and data modeling
- Hands-on experience with Power Automate (cloud flows, approvals, integrations)
- Hands-on experience with Power Apps (Canvas apps)
- Experience with Dataverse
- Hands-on Python experience delivering ML or GenAI solutions in production
- Working knowledge of RAG concepts (embeddings, vector search, retrieval, grounding, evaluation)
- Experience implementing monitoring and testing for data/ML/GenAI systems (data quality checks, model/prompt evaluation, logging/telemetry)
- Experience managing environments, security, and deployments
- Strong understanding of data governance and analytics best practices
- Experience designing enterprise-scale analytics platforms
- Familiarity with Azure services (Azure SQL, Data Factory, Synapse)
- Familiarity with GCP BigQuery and Looker
- Experience with CI/CD concepts for Power BI and Looker
- Power Platform or Microsoft analytics certifications
- Experience working in a Center of Excellence (CoE) model
- Experience with Azure OpenAI / Azure AI Foundry (or equivalent) and enterprise deployment patterns
- Experience with orchestration frameworks (e.g., Semantic Kernel, LangChain, Autogen) and tool/function calling
What We Do
We are the world’s learning company with more than 22,500 employees operating in 70 countries. We provide content, assessment and digital services to learners, educational institutions, employers, governments and other partners globally. We are committed to helping equip learners with the skills they need to enhance their employability prospects and to succeed in the changing world of work. We believe that wherever learning flourishes so do people.


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