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N6833522C0158

Definitive Contract

Overview

Government Description
SBIR PHASE II
Place of Performance
Chantilly, VA 20151 United States
Pricing
Cost Plus Fixed Fee
Set Aside
Small Business Set Aside - Total (SBA)
Extent Competed
Full And Open Competition After Exclusion Of Sources
Est. Average FTE
2
Related Opportunity
None
Analysis Notes
Amendment Since initial award the Potential End Date has been extended from 06/27/24 to 01/16/25.
Blue Ridge Envisioneering was awarded Definitive Contract N6833522C0158 (N68335-22-C-0158) for Sbir Phase Ii worth up to $1,107,499 by NAWC Aircraft Division in December 2021. The contract has a duration of 3 years 1 months and was awarded through SBIR Topic Implementing Neural Network Algorithms on Neuromorphic Processors with a Small Business Total set aside with NAICS 541715 and PSC AC12 via direct negotiation acquisition procedures with 22 bids received.

SBIR Details

Research Type
Small Business Innovation Research Program (SBIR) Phase II
Title
MENTAT
Abstract
Deep Neural Networks (DNN) have become a critical component of tactical applications, assisting the warfighter in interpreting and making decisions from vast and disparate sources of data. Whether image, signal or text data, remotely sensed or scraped from the web, cooperatively collected or intercepted, DNNs are the go-to tool for rapid processing of this information to extract relevant features and enable the automated execution of downstream applications. Deployment of DNNs in data centers, ground stations and other locations with extensive power infrastructure has become commonplace but at the edge, where the tactical user operates, is very difficult. Secure, reliable, high bandwidth communications are a constrained resource for tactical applications which limits the ability to routed data collected at the edge back to a centralized processing location. Data must therefore be processed in real-time at the point of ingest which has its own challenges as almost all DNNs are developed to run on power hungry GPUs at wattages exceeding the practical capacity of solar power sources typically available at the edge. So what then is the future of advanced AI for the tactical end user where power and communications are in limited supply. Neuromorphic processors may provide the answer. Blue Ridge Envisioneering, Inc. (BRE) proposes the development of a systematic and methodical approach to deploying Deep Neural Network (DNN) architectures on neuromorphic hardware and evaluating their performance relative to a traditional GPU-based deployment. BRE will develop and document a process for benchmarking a DNN' s performance on a standard GPU, converting it to run on commercially available neuromorphic hardware, training and evaluating model accuracy for a range of available bit quantizations, characterizing the trade between power consumption and the various bit quantizations, and characterizing the trade between throughput/latency and the various bit quantizations. This process will be demonstrated on a Deep Convolutional Neural Network trained to classify Electronic Warfare (EW) emitters in data collected by AFRL in 2011. The BrainChip Akida Event Domain Neural Processor development environment will be utilized for demonstration as it provides a simulated execution environment for running converted models under the discrete, low quantization constraints of neuromorphic hardware. In the option effort we pursue direct Spiking Neural Network (SNN) implementation and compare performance on the Akida hardware, and potentially other vendor's hardware as well. We demonstrate the capability operating on real hardware in a relevant environment by conducting a data collection and demonstration activity at a U.S. test range with relevant EW emitters.
Research Objective
The goal of phase II is to continue the R&D efforts initiated in Phase I. Funding is based on the results achieved in Phase I and the scientific and technical merit and commercial potential of the project proposed in Phase II.
Topic Code
N202-099
Agency Tracking Number
N202-099-1097
Solicitation Number
20.2
Contact
Edward Zimmer

Status
(Open)

Last Modified 7/12/23
Period of Performance
12/16/21
Start Date
1/16/25
Current End Date
1/16/25
Potential End Date
78.0% Complete

Obligations
$1.1M
Total Obligated
$1.1M
Current Award
$1.1M
Potential Award
100% Funded

Award Hierarchy

Definitive Contract

N6833522C0158

Subcontracts

0

Activity Timeline

Interactive chart of timeline of amendments to N6833522C0158

Transaction History

Modifications to N6833522C0158

People

Suggested agency contacts for N6833522C0158

Competition

Number of Bidders
22
Solicitation Procedures
Negotiated Proposal/Quote
Evaluated Preference
None
Performance Based Acquisition
Yes
Commercial Item Acquisition
Commercial Item Procedures Not Used
Simplified Procedures for Commercial Items
No

Other Categorizations

Subcontracting Plan
Plan Not Required
Cost Accounting Standards
Exempt
Business Size Determination
Small Business
Defense Program
None
DoD Claimant Code
All Others Not Identifiable To Any Other Procurement Program
IT Commercial Item Category
Not Applicable
Awardee UEI
J753KUKHV7Z7
Awardee CAGE
4MAC5
Agency Detail
Awarding Office
N68335 NAVAIR WARFARE CTR AIRCRAFT DIV
Funding Office
N00421
Created By
dina.marinelli@navy.mil
Last Modified By
dina.marinelli@navy.mil
Approved By
dina.marinelli@navy.mil

Legislative

Legislative Mandates
None Applicable
Performance District
VA-11
Senators
Mark Warner
Timothy Kaine
Representative
Gerald Connolly
Modified: 7/12/23