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dubos306 committed May 5, 2026
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template_date: 2026-04-21
template_version: 1.0.1
basic:
date: 2026-04-21
version: 1.0.0
contact_info:
- name: Sreenivas Karpurapu
division: Response Security and Data Integrity
mail: sreenivas.karpurapu@census.gov
- name: Ama Danso
division: Response Security and Data Integrity
mail: Ama.A.Danso@census.gov

bedrock_information:
company_name: U.S. Census Bureau
website_url: https://census.gov/
industry: Government
intended_users:
internal_employees: true
external_user: false
use_case_description: |
QUANTM’s AI Enhanced Clerical Matching Solution evaluates the application of large language models to support In Field Enumeration (IFE) and Census Data Quality Assurance (CDQA) by performing intelligent matching of complex records, reducing manual clerical effort while producing transparent, explainable decisions consistent with expert human judgment.
bedrock models:
-anthropic.claude-4-5-sonnet

federal_standards_information:
id: 20260421-1
project_name: QUANTM
project_summary: |
As part of the quality operations of the US Census Bureau, computer matching and clerical operations are employed. These efforts help in the assessment of the quality of data collection. The existing operations have constraints in their ability to accurately match and compare complex datasets, resulting in high number of cases being flagged or removed. This process is time-intensive and expensive, creating a significant burden on human resources. With the advanced AI capabilities available in the industry, QUANTM is assessing their feasibility to support the quality assessment efforts and reduce the clerical footprint. The bureau aims to explore whether large language model (LLM) technology can replicate and improve upon the reasoning processes used by human clerks.
development_stage: active
data_sensitivity: |
Yes, Demographic data from census survey responses
dms_project_number: 7535836
cms_project_number: none


deployment_details:
crf_number
finOps_project_number: fs0000000001
finOps_project_name: edl_ditd
project_role: edl_ditd_quantm
accounts:
-account_id: 001502248272
account_alias: edl-addcp-prod-ew
environment: prod
management_account_name: edl-management-ew
management_account_project_role: edl-u-7535836
tenant_account_project_environment_role: r-edl-prod-7535836


history:
-date: 20260421
comment:


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