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Department of Agriculture

PHIS Predictive Analytics

Solicitation: FSIS-FY26-0003
Notice ID: 603ca464a73d48d883ee09f22685195e

Sources Sought from FOOD SAFETY AND INSPECTION SERVICE • AGRICULTURE, DEPARTMENT OF. Place of performance: MD. Response deadline: Mar 14, 2026. Industry: NAICS 541511 • PSC DA10.

Market snapshot

Awarded-market signal for NAICS 541511 (last 12 months), benchmarked to sector 54.

12-month awarded value
$9,650,220
Sector total $5,796,258,355,399 • Share 0.0%
Live
Median
$275,911
P10–P90
$275,911$275,911
Volatility
Stable0%
Market composition
NAICS share of sector
A simple concentration signal, not a forecast.
0.0%
share
Momentum (last 3 vs prior 3 buckets)
+765%($7,650,220)
Deal sizing
$275,911 median
Use as a pricing centerline.
Live signal is computed from awarded notices already observed in the system.
Signals shown are descriptive of observed awards; not a forecast.

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Map for MD
Live POP
Place of performance
Beltsville, Maryland • United States
State: MD
Contracting office
Beltsville, MD • 20705 USA

Point of Contact

Name
Monika Masei
Email
monika.masei@usda.gov
Phone
Not available
Name
George Baptist
Email
george.baptist@usda.gov
Phone
Not available

Agency & Office

Department
AGRICULTURE, DEPARTMENT OF
Agency
FOOD SAFETY AND INSPECTION SERVICE
Subagency
USDA, FSIS, OAS PCMB
Office
Not available
Contracting Office Address
Beltsville, MD
20705 USA

More in NAICS 541511

Description

1. Purpose

The Food Safety and Inspection Service (FSIS) is seeking information on AI-powered predictive analytics solutions to enhance its ability to prioritize inspections, allocate resources, and oversee food safety operations using inspection data, large language models (LLMs), and external risk indicators. This RFI aims to gather insights from industry experts and technology providers to understand the current state of predictive analytics and its potential applications in food safety.

2. Background

FSIS currently relies on numeric risk scores and manual analysis for prioritization, which limits agility and predictive capabilities. By leveraging advanced AI technologies, FSIS seeks to modernize its decision-making processes, improve food safety outcomes, and optimize operational efficiency.

3. Objectives

The primary objective of this RFI is to explore solutions that:
- Incorporate AI-driven risk scoring integrating structured data and narrative-based signals.
- Enable predictive resource planning, scenario simulation, and real-time alerts.
- Provide role-specific dashboards and conversational AI tools for supervisory, analytical, and operational users.
- Ensure transparency and governance through explainable AI and audit mechanisms.

4. Scope of Interest

Respondents should address as many of the following areas as possible. You may include additional information beyond what is requested if it is material to the RFI.

FSIS is not asking for the development of AI software from scratch. The ideal solution will take a vendor's existing commercial software platform, preferably on the Azure Government Cloud, and have data path, enhancements and customization that can be done to the existing software platform.

Risk Scoring & Analytics:
- Describe capabilities for generating dynamic risk scores using structured and unstructured data.
- Explain integration of external data sources (e.g., weather, illness trends, recall history).
- Provide details on transparency features (e.g., explainable AI, confidence indicators).

Advanced Analytical Features:
- Sentiment/contextual analysis on inspection narratives and complaints.
- Pattern detection for recurring issues across establishments.
- Predictive resource planning and scenario simulation.

User Interfaces & Tools:
- Role-specific dashboards (supervisory, analytical, operational).
- Conversational AI assistants for natural language queries.
- Mobile and field applications for inspectors.

Governance & Security:
- Audit logs, user permissions, and feedback loops.
- Data security measures (encryption, access control, compliance).

Cost Estimates:
- Provide a detailed breakdown of costs (development, deployment, maintenance).
- Discuss ROI and cost-saving benefits.

Implementation Timeline:
- Outline proposed timeline for deployment, including milestones for assessment, testing, and full implementation.

Training & Support:
- Describe training programs for FSIS personnel.
- Include ongoing support and technical assistance.

Scalability & Integration:
- Explain scalability for varying volumes of data and establishments.
- Discuss integration with FSIS systems and Azure Government Cloud (preferred environment).

5. Requested Information

Respondents are encouraged to provide:
- Detailed information on proposed predictive analytics solutions.
- Case studies and past performance.
- Cost models or pricing structures.
- Government FTE time estimates for support and feedback.
- Recommendations for Key Performance Indicators.
- Potential implementation barriers.

6. Submission Instructions

Responses should be submitted electronically in PDF format to:
George.Baptist@usda.gov and Monika.Masei@usda.gov
Due Date: March 14, 2026
Email Subject: RFI Number FSIS-FY26-0003 – PHIS Predictive Analytics
Include:
- Company name and point of contact.
- Executive summary (1 page max).
- Detailed responses (10 pages max).
- Optional: White papers, case studies, product brochures.
- Relevant experience.

7. Disclaimer

This RFI is for planning purposes only and does not constitute a solicitation or obligation. No compensation will be provided for responses.

Files

Files size/type shown when available.

BidPulsar Analysis

A practical, capture-style breakdown of fit, requirements, risks, and next steps.

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FAQ

How do I use the Market Snapshot?

It summarizes awarded-contract behavior for the opportunity’s NAICS and sector, including a recent pricing band (P10–P90), momentum, and composition. Use it as context, not a guarantee.

Is the data live?

The signal updates as new awarded notices enter the system. Always validate the official award and solicitation details on SAM.gov.

What do P10 and P90 mean?

P10 is the 10th percentile award size and P90 is the 90th percentile. Together they describe the typical spread of award values.