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Synthetic Data Generation Solution

Overview


Data Analytics, AI & Cloud Hosting
Richmond, British Columbia, CanadaPosted about 1 month agoDeadline: April 13th, 2026

Fit Score


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SUMMARY


Seeking a vendor to provide an enterprise-wide synthetic data generation platform using GenAI algorithms, supporting multiple databases and flexible data property customization while ensuring privacy compliance.

KEY REQUIREMENTS


BUDGET

Estimate

$250,000 – $500,000

CONTRACT DURATION


24 months

TIMELINE


Submission Closing Time: May 13th, 2026

QUESTION DEADLINE


May 6th, 2026

Issuing Agency


Workers' Compensation Board

Organization overview and procurement intelligence available on paid plans.

DESCRIPTION


The organization is seeking a vendor to provide an enterprise-wide synthetic data generation solution. The required solution should utilize Generative Artificial Intelligence (GenAI) algorithms to produce artificial datasets that accurately reflect the statistical properties, patterns, and relationships of original datasets, without incorporating any personally identifiable information.

This technology will accelerate AI model training, enhance software testing, and facilitate data sharing while adhering to privacy regulations. Currently, anonymized production data is used and periodically refreshed for non-production environments; the new solution should improve upon this by generating synthetic datasets as needed.

The proposed solution must support a variety of database systems, including DB2, SQL Server, SQL Managed Instance, and Oracle, to accommodate a range of workloads. Additionally, the solution should permit customization of data attributes such as volume, distribution, and temporal patterns for varied use cases. The system must allow for scalable data volumes to meet different testing requirements while preserving referential integrity, business rules, and statistical fidelity.

Source attribution

This Settle analysis is based on the issuing organization’s public RFP listing.

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