Lead migration of a legacy data warehouse to Microsoft Fabric, design and implement a medallion (lakehouse) architecture, perform Fabric fitment assessments, define target cloud architecture and operating model, create migration roadmaps, and deliver a Proof of Value/MVP while collaborating with customer engineering teams.
This is a hands‑on delivery
role centered on legacy data platform migration and the implementation
of a medallion (lakehouse) architecture. The engagement is designed to
demonstrate the technical fit and business value of Microsoft Fabric as the
target platform for modernization.
Key Responsibilities
- Lead the migration of a
legacy data warehouse to Microsoft Fabric, including data store migration
and implementation of a medallion (lakehouse) architecture
- Conduct a Microsoft
Fabric fitment assessment, addressing technical considerations such as
wide tables, long column names, data‑type mapping, performance SLAs, and
security/privacy alignment
- Define and propose the
target cloud architecture, including lakehouse and/or warehouse patterns,
operating model implications, and clear roles and responsibilities
- Develop a migration
roadmap covering data store migration and inbound/outbound data
orchestration
- Execute core data
engineering work to deliver a Proof of Value / MVP in close collaboration
with customer engineering teams
- Proven, hands‑on
experience migrating legacy data platforms or data warehouses to Microsoft
Fabric
- Strong expertise across
Microsoft Fabric capabilities, including Lakehouse, Warehouse, OneLake,
medallion architecture, Spark/notebooks, and data pipelines
- Deep understanding of
schema and data‑type translation, including large‑scale and wide‑table
scenarios
- Ability to engage
directly with customer stakeholders and produce architecture and migration
roadmap deliverables
- Toronto‑based (local presence
required)
- Direct experience
migrating from Sybase to a modern cloud data platform
- Experience delivering
customer‑facing Proof of Value or MVP engagements
- Familiarity with
enterprise data governance, security, and privacy frameworks
Requirements
This is a hands‑on delivery
role centered on legacy data platform migration and the implementation
of a medallion (lakehouse) architecture. The engagement is designed to
demonstrate the technical fit and business value of Microsoft Fabric as the
target platform for modernization.
Key Responsibilities
- Lead the migration of a
legacy data warehouse to Microsoft Fabric, including data store migration
and implementation of a medallion (lakehouse) architecture
- Conduct a Microsoft
Fabric fitment assessment, addressing technical considerations such as
wide tables, long column names, data‑type mapping, performance SLAs, and
security/privacy alignment
- Define and propose the
target cloud architecture, including lakehouse and/or warehouse patterns,
operating model implications, and clear roles and responsibilities
- Develop a migration
roadmap covering data store migration and inbound/outbound data
orchestration
- Execute core data
engineering work to deliver a Proof of Value / MVP in close collaboration
with customer engineering teams
- Proven, hands‑on
experience migrating legacy data platforms or data warehouses to Microsoft
Fabric
- Strong expertise across
Microsoft Fabric capabilities, including Lakehouse, Warehouse, OneLake,
medallion architecture, Spark/notebooks, and data pipelines
- Deep understanding of
schema and data‑type translation, including large‑scale and wide‑table
scenarios
- Ability to engage
directly with customer stakeholders and produce architecture and migration
roadmap deliverables
- Toronto‑based (local presence
required)
- Direct experience
migrating from Sybase to a modern cloud data platform
- Experience delivering
customer‑facing Proof of Value or MVP engagements
- Familiarity with
enterprise data governance, security, and privacy frameworks
Similar Jobs
Agency • Information Technology
Design and implement data federation and lakehouse architectures (Starburst/Trino), build scalable ETL/ELT pipelines using Python and Spark, optimize Spark and federated queries, manage Delta/Iceberg/Hudi tables, and enforce governance, access control, and data masking for analytics and AI use.
Top Skills:
AdlsApache IcebergSparkAws EmrAzure DatabricksDbtDelta LakeDremioGCPGlueHudiKubernetesMedallion ArchitecturePrestoPulumiPysparkPythonS3Snowflake SchemaSQLStar SchemaStarburst EnterpriseTerraformTrino
Analytics
Lead design, build, and operate scalable AWS-based data pipelines and real-time ingestion for analytics and ML. Implement data modeling, automated validation, observability, and event-driven architectures; mentor engineers and collaborate with Product and ML teams to productionize feature stores and ML-ready datasets.
Top Skills:
AWSAws BedrockAws GlueAws KinesisAws S3Aws SnsAws SqsAws Step FunctionsDatabricksDatabricks AiDatabricks WorkflowsDebeziumDeltaDimensional ModelingEtl/EltFeature StoreFivetranIcebergKafkaMedallion ArchitectureParquetPysparkPythonSnowflakeSnowflake CortexSQL
Fintech • Analytics
Design, build, and operate a cloud-native, event-driven People Function capability layer. Deliver resilient, scalable integration pipelines, canonical data models, CI/CD, observability, and AWS infrastructure while enforcing technical standards, security and governance.
Top Skills:
Api GatewayAws LambdaCloudwatchDatadogDockerDynamoDBEc2EcsEksGitlab CiGoGrafanaIamJenkinsKafkaMs SqlPostgresPrometheusPythonRabbitMQRdsRestful ApisS3SnsSqsVpc
What you need to know about the Delhi Tech Scene
Delhi, India's capital city, is a place where tradition and progress co-exist. While Old Delhi is known for its rich history and bustling markets, New Delhi is defined by its modern architecture. It's clear the region places a strong emphasis on preserving its cultural heritage while embracing technological advancements, particularly in artificial intelligence, which plays a central role in shaping the city's tech landscape, fueled by investments in research and development.


.jpg)