Norseman Defense Technologies
8172 Lark Brown Rd. Ste. 201, Elkridge, MD 21075
410.579.8600 · sales@norseman.com
REPRESENTATIVE USE CASE
Natural Language Processing for Document Intelligence
Deployment of NLP capabilities that automate the analysis of unstructured text — extracting entities, classifying documents, and generating summaries to accelerate human review and decision-making workflows.
PRACTICE
Applied AI & Data Analytics
CLIENT PROFILE
Federal agency processing large volumes of unstructured text — reports, correspondence, intelligence products, or regulatory filings — needing automated extraction, classification, and summarization
Challenge
- Analysts manually reviewing thousands of documents for relevant information
- No automated capability for entity extraction, topic classification, or cross-referencing
- Valuable information locked in unstructured text formats not accessible to search or analytics
Approach
- Implement document ingestion pipeline with OCR for scanned documents
- Deploy named entity recognition (NER) and relationship extraction models
- Build classification models for automated document routing and prioritization
- Create searchable knowledge base with semantic search and summarization capabilities
Typical Outcomes
- Automated extraction and classification reducing manual review time
- Searchable knowledge base enabling rapid information retrieval across document collections
- Analyst focus shifted from document processing to analysis and decision-making
Procurement Paths
- NASA SEWP V for NLP platform infrastructure and GPU compute
- GSA MAS for AI/ML development services
- CIO-CS (NITAAC) for enterprise AI solutions
Partner Technology Examples
- Elastic
- NVIDIA
- AWS GovCloud
- Microsoft Azure
Tip: For a one-page PDF, use your browser print dialog and choose “Save as PDF.”