This weblog will discover how the joint answer from DataRobot and Deepwave — powered by NVIDIA — delivers a safe, high-performance AI stack, purpose-built for air-gapped, on-premises and high-security deployments. This answer ensures businesses can obtain real knowledge sovereignty and operational excellence.
The necessity for autonomous intelligence
AI is evolving quickly, reworking from easy instruments into autonomous brokers that may motive, plan, and act. This shift is important for high-stakes, mission-critical functions reminiscent of RF Intelligence, the place huge RF knowledge streams demand real-time evaluation.
Deploying these superior brokers for public and authorities packages requires a brand new stage of safety, pace, and accuracy that conventional RF evaluation options can not present.
Program leaders usually discover themselves selecting between underperforming, complicated options that generate technical debt or a single-vendor lock-in. The strain to ship next-generation RF intelligence doesn’t subside, leaving operations leaders below strain to deploy with few choices.
The problem of radio intelligence
Radio intelligence, the real-time assortment and evaluation of radio-frequency (RF) indicators, covers each communications and emissions from digital programs. In follow, this usually means extracting the content material of RF indicators — audio, video, or knowledge streams — a course of that presents vital challenges for federal businesses.
- Trendy RF indicators are extremely dynamic and require equally nimble evaluation capabilities to maintain up.
- Operations usually happen on the edge in contested environments, the place handbook evaluation is just too sluggish and never scalable.
- Excessive knowledge charges and sign complexity make RF knowledge terribly troublesome to make use of, and dynamically altering indicators require an evaluation platform that may adapt in real-time.
The mission-critical want is for an automatic and extremely reconfigurable answer that may shortly extract actionable intelligence from these huge quantities of information, guaranteeing well timed, probably life-saving decision-making and reasoning.
Introducing the Radio Intelligence Agent
To satisfy this important want, the Radio Intelligence Agent (RIA) was engineered as an autonomous, proactive intelligence system that transforms uncooked RF indicators right into a always evolving, context-driven useful resource. The answer is designed to function a wise crew member, offering new insights and suggestions which can be far past search engine capabilities.
What actually units the RIA aside from present expertise is its built-in reasoning functionality. Powered by NVIDIA Nemotron reasoning fashions, the system is able to synthesizing patterns, flagging anomalies, and recommending actionable responses, successfully bridging the hole between mere data retrieval and operational intelligence.
Developed collectively by DataRobot and Deepwave, and powered by NVIDIA, this AI answer transforms uncooked RF indicators into conversational intelligence, with its complete lifecycle orchestrated by the trusted, built-in management aircraft of the DataRobot Agent Workforce Platform.
Federal use circumstances and deployment
The Radio Intelligence Agent is engineered particularly for the stringent calls for of federal operations, with each part constructed for safety, compliance, and deployment flexibility.
The facility of the RIA answer lies in performing a big quantity of processing on the edge inside Deepwave’s AirStack Edge ecosystem. This structure ensures high-performance processing whereas sustaining important safety and regulatory compliance.
The Radio Intelligence Agent answer strikes operations groups from easy knowledge assortment and evaluation to proactive, context-aware intelligence, enabling occasion prevention as an alternative of occasion administration. It is a step change in public security capabilities.
- Occasion response optimization: The answer goes past easy alerts by performing as a digital advisor throughout unfolding conditions. It analyzes incoming knowledge in real-time, identifies related entities and places, and recommends next-best actions to scale back response time and enhance outcomes.
- Operational consciousness: The answer enhances visibility throughout a number of knowledge streams, together with audio and video feeds, in addition to sensor inputs, to create a unified view of exercise in real-time. This broad monitoring functionality reduces cognitive burden and helps groups concentrate on strategic decision-making quite than handbook knowledge evaluation.
- Different functions: RIA’s core capabilities are relevant for situations requiring quick, safe, and correct evaluation of huge knowledge streams – together with public security, first responders, and different features.
This answer can be moveable, supporting native improvement and testing, with the flexibility to transition seamlessly into non-public cloud or FedRAMP-authorized DataRobot-hosted environments for safe manufacturing in federal missions.
A deeper dive into the Radio Intelligence Agent
Think about receiving complicated RF indicators evaluation which can be trusted, high-fidelity, and actionable in seconds, just by asking a query.
DataRobot, Deepwave, and NVIDIA teamed as much as make this a actuality.
First, Deepwave’s AIR-T edge sensors obtain and digitize the RF indicators utilizing AirStack software program, powered by embedded NVIDIA GPUs.
Then, the most recent AirStack part, AirStack Edge, introduces a safe API with FIPS-grade encryption, enabling the deployment of sign processing functions and NVIDIA Riva Speech and Translation AI fashions straight on AIR-T units.
This end-to-end course of runs securely and in real-time, delivering extracted knowledge content material into the agent-based workflows orchestrated by DataRobot.
The answer’s agentic functionality is rooted in a complicated, two-part system that leverages NVIDIA Llama-3_1-Nemotron-Extremely-253B-v1 to interpret context and generate refined responses.
- Question Interpreter: This part is chargeable for understanding the person’s preliminary intent, translating the pure language query into an outlined data want.
- Info Retriever: This agent executes the mandatory searches, retrieves related transcript chunks, and synthesizes the ultimate, cohesive reply by connecting numerous knowledge factors and making use of reasoning to the retrieved textual content.
This performance is delivered by the NVIDIA Streaming Knowledge to RAG answer, which permits real-time ingestion and processing of dwell RF knowledge streams utilizing GPU-accelerated pipelines.
By leveraging NVIDIA’s optimized vector search and context synthesis, the system permits for quick, safe, and context-driven retrieval and reasoning over radio-transcribed knowledge whereas guaranteeing each operational pace and regulatory compliance.
The agent first consults a vector database, which shops semantic embeddings of transcribed audio and sensor metadata, to seek out essentially the most related data earlier than producing a coherent response. The sensor metadata is customizable and comprises important details about indicators, together with frequency, location, and reception time of the info.
The answer is provided with a number of specialised instruments that allow this superior workflow:
- RF orchestration: The answer can make the most of Deepwave’s AirStack Edge orchestration layer to actively recollect new RF intelligence by working new fashions, recording indicators, or broadcasting indicators.
- Search instruments: It performs sub-second semantic searches throughout huge volumes of transcript knowledge.
- Time parsing instruments: Converts human-friendly temporal expressions (e.g., “3 weeks in the past”) into exact, searchable timestamps, leveraging the sub-10 nanosecond accuracy printed within the metadata.
- Audit path: The system maintains a whole audit path of all queries, software utilization, and knowledge sources, guaranteeing full traceability and accountability.
NVIDIA Streaming Knowledge to RAG Blueprint instance permits the workflow to maneuver from easy knowledge lookup to autonomous, proactive intelligence. The GPU-accelerated software-defined radio (SDR) pipeline repeatedly captures, transcribes, and indexes RF indicators in real-time, unlocking steady situational consciousness.

DataRobot Agent Workforce Platform: The built-in management aircraft
The DataRobot Agent Workforce Platform, co-developed with NVIDIA, serves because the agentic pipeline and orchestration layer, the management aircraft that orchestrates your entire lifecycle. This ensures businesses keep full visibility and management over each layer of the stack and implement compliance robotically.
Key features of the platform embody:
- Finish-to-end management: Automates your entire AI lifecycle, from improvement and deployment to monitoring and governance, permitting businesses to area new capabilities sooner and extra reliably.
- Design Structure: Function-built with the NVIDIA Enterprise AI Manufacturing facility structure, guaranteeing your entire stack is validated and production-ready from day one.
- Knowledge sovereignty: DataRobot’s answer is purpose-built for high-security environments, deploying straight into the company’s air-gapped or on-premises infrastructure. All processing happens throughout the safety perimeter, guaranteeing full knowledge sovereignty and guaranteeing the company retains sole management and possession of its knowledge and operations.
Crucially, this offers operational autonomy (or sovereignty) over your entire AI stack, because it requires no exterior suppliers for the operational {hardware} or fashions. This ensures the complete AI functionality stays throughout the company’s managed area, free from exterior dependencies or third-party entry.

Specialised collaborations
The answer is a collaboration constructed on a co-developed and enterprise-grade structure.
Deepwave: RF AI on the edge
DataRobot integrates with extremely expert, specialised companions like Deepwave, who present the important AI edge processing to transform uncooked RF sign content material into RF intelligence and securely share it with DataRobot’s knowledge pipelines. The Deepwave platform extends this answer’s capabilities by enabling the subsequent steps in RF intelligence gathering by the orchestration and automation of RF AI edge duties.
- Edge AI processing: The agent makes use of Deepwave’s high-performance edge computing and AI fashions to intercept and course of RF indicators.
- Decreased infrastructure: As an alternative of backhauling uncooked RF knowledge, the answer runs AI fashions on the edge to extract solely the important data. This reduces community backhaul wants by an element of 10 million — from 4 Gbps down to only 150 bps per channel — dramatically bettering mobility and simplifying the required edge infrastructure.
- Safety: Deepwave’s AirStack Edge leverages the most recent FIPS mode encryption to report this knowledge to the DataRobot Agent Workforce Platform securely.
- Orchestration: Deepwave’s AirStack Edge software program orchestrates and automates networks of RF AI edge units. This allows low-latency responses to RF situations, reminiscent of detecting and jamming undesirable indicators.
NVIDIA: Foundational belief and efficiency
NVIDIA offers the high-performance and safe basis needed for federal missions.
- Safety: AI brokers are constructed with production-ready NVIDIA NIM™ microservices. These NIM are constructed from a trusted, STIG-ready base layer and help FIPS mode encryption, making them the important, pre-validated constructing blocks for reaching a FedRAMP deployment shortly and securely.
DataRobot offers an NVIDIA NIM gallery, which permits speedy consumption of accelerated AI fashions throughout a number of modalities and domains, together with LLM, VLM, CV, embedding, and extra, and direct integration into agentic AI options that may be deployed anyplace.
- Reasoning: The agent’s core intelligence is powered by NVIDIA Nemotron fashions. These AI fashions with open weights, datasets, and recipes, mixed with main effectivity and accuracy, present the high-level reasoning and planning capabilities for the agent, enabling it to excel at complicated reasoning and instruction-following. It goes past easy lookups to attach complicated knowledge factors, delivering true intelligence, not simply knowledge retrieval.
- Speech & Translation: NVIDIA Riva Speech and Translation, permits real-time speech recognition, translation, and synthesis straight on the edge. By deploying Riva alongside AIR-T and AirStack Edge, audio content material extracted from RF indicators might be transcribed and translated on-device with low latency. This functionality permits radio frequency intelligence brokers to show intercepted voice visitors into actionable, multilingual knowledge streams that seamlessly circulation into DataRobot’s agentic AI workflows.
A collaborative method to mission-critical AI
The mixed strengths of DataRobot, NVIDIA, and Deepwave create a complete, safe, production-ready answer:
- DataRobot: Finish-to-end AI lifecycle orchestration and management.
- NVIDIA: Aaccelerated GPU infrastructure, optimized software program frameworks, validated designs, safe and performant basis fashions and microservices.
- Deepwave: RF sensors with embedded GPU edge processing, safe datalinks, and streamlined orchestration software program.
Collectively, these capabilities energy the Radio Intelligence Agent answer, demonstrating how agentic AI, constructed on the DataRobot Agent Workforce Platform, can convey real-time intelligence to the sting. The result’s a trusted, production-ready path to knowledge sovereignty and autonomous, proactive intelligence for the federal mission.
For extra data on utilizing RIA to show RF knowledge into actual time insights, go to deepwave.ai/ria.
To study extra about how we may also help advance your company’s AI ambitions, join with DataRobot federal consultants.
