Guidewire Data Architect/ Tech Lead

Overview

On Site
Depends on Experience
Contract - Independent
Contract - W2

Skills

Guidewire Data Archtiect
Data Architect
GWCP
Rawzone
CDA
KCC
PC
BC
Change Data Capture
Kemper Claims Center
PolicyCenter
BillingCenter
Datahub
Operational Data Store
ODS
EDW
Enterprise Data Warehouse
Snowflake
Trusted Zone
Vault Layer
Integrate
Intergration

Job Details

Role : Guidewire Data Architect/ Tech Lead

Duration : Long Term Contact

Location : Jacksonville FL Hybrid

Job Description: Role: Guidewire Data architecture / Technical lead
Extract Data from GWCP to Rawzone through the CDA Path for KCC, PC, and BC
Extract data from Guidewire Cloud Platform (GWCP) to the Rawzone using the Change Data Capture (CDA) path for key components such as KCC (Kemper Claims Center), PC (PolicyCenter), and BC (BillingCenter).
Ensure the extraction process is efficient and reliable, minimizing downtime and data loss.
Ensure Data is Sourced to New Schemas in Rawzone
Design and implement new schemas in the Rawzone to accommodate the extracted data.
Ensure that the data is accurately mapped to the new schemas, maintaining data integrity and consistency.
Integrate New Rawzone Schemas into the Trusted Zone/Vault Layer
Integrate the new Rawzone schemas into the trusted zone or vault layer.
Ensure that the data flows seamlessly from the Rawzone to the trusted zone, maintaining data quality and security.
Design and Implement Schema Mappings and Transformations
Design schema mappings and transformations to convert raw data into a structured format suitable for analysis and reporting.
Implement these mappings and transformations, ensuring they are optimized for performance and accuracy.
Implement Minimal Changes to the Refined Zone
Make minimal changes to the refined zone to accommodate the new data structures.
Ensure that the refined zone remains consistent and accurate, reflecting the latest data updates.
Ensure Data Consistency and Accuracy in the Refined Zone
Monitor the refined zone to ensure data consistency and accuracy.
Implement data validation and reconciliation processes to identify and resolve any discrepancies.
Leverage EOR to Populate PC, BC, and KCC Data to Datahub
Use the Extract-Only Region (EOR) to populate PolicyCenter (PC), BillingCenter (BC), and Kemper Claims Center (KCC) data to Datahub.
Ensure that the data is accurately and efficiently transferred to Datahub.
Monitor and Validate Data Integration Processes
Continuously monitor data integration processes to ensure they are running smoothly.
Validate the data integration to ensure that the data is accurate and complete.
Implement Any Required Changes to Datahub ODS and Extraction Layers
Identify and implement any necessary changes to the Datahub Operational Data Store (ODS) and extraction layers.
Ensure that these changes are optimized for performance and do not disrupt existing processes.
Ensure Data Extraction Processes are Optimized and Efficient
Optimize data extraction processes to ensure they are efficient and scalable.
Implement best practices for data extraction to minimize resource usage and maximize performance.
Load KSG EDW Loss Leveraging Either Snowflake Rawzone GWCP New Schemas or GWCP Read Replica
Load KSG Enterprise Data Warehouse (EDW) Loss data using either the Snowflake Rawzone GWCP new schemas or the GWCP read replica.
Ensure that the data loading process is accurate and efficient.
Validate and Reconcile Data Loading Processes
Validate the data loading processes to ensure that the data is accurate and complete.
Reconcile any discrepancies in the data to maintain data integrity.
Implement Any Required Changes to EDW
Identify and implement any necessary changes to the Enterprise Data Warehouse (EDW).
Ensure that these changes are optimized for performance and do not disrupt existing processes.
Ensure Data Integrity and Performance in the EDW Environment
Monitor the EDW environment to ensure data integrity and performance.
Implement best practices for data management and optimization to maintain a high-performing EDW environment."

Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.