Tech Field Day

The Independent IT Influencer Event

  • Home
    • The Futurum Group
    • FAQ
    • Staff
  • Sponsors
    • Sponsor List
      • 2026 Sponsors
      • 2025 Sponsors
      • 2024 Sponsors
      • 2023 Sponsors
      • 2022 Sponsors
    • Sponsor Tech Field Day
    • Best of Tech Field Day
    • Results and Metrics
    • Preparing Your Presentation
      • Complete Presentation Guide
      • A Classic Tech Field Day Agenda
      • Field Day Room Setup
      • Presenting to Engineers
  • Delegates
    • Delegate List
      • 2026 Delegates
      • 2025 Delegates
      • 2024 Delegates
      • 2023 Delegates
      • 2022 Delegates
    • Become a Field Day Delegate
    • What Delegates Should Know
  • Events
    • All Events
      • Upcoming
      • Past
    • Field Day
    • Field Day Extra
    • Field Day Exclusive
    • Field Day Experience
    • Field Day Live
    • Field Day Showcase
  • Topics
    • Tech Field Day
    • Cloud Field Day
    • Mobility Field Day
    • Networking Field Day
    • Security Field Day
    • Storage Field Day
  • News
    • Coverage
    • Event News
    • Podcast
  • When autocomplete results are available use up and down arrows to review and enter to go to the desired page. Touch device users, explore by touch or with swipe gestures.
You are here: Home / Appearances / Signal 65 Presents at AI Infrastructure Field Day

Signal 65 Presents at AI Infrastructure Field Day



AI Infrastructure Field Day 4

Brian Martin presented for Signal 65 at AI Infrastructure Field Day 4

This Presentation date is January 29, 2026 at 4:00PM – 5:00PM PT.

Presenters: Brian Martin

Compute-ready data for AI

Enterprises are discovering that PDFs are for people; machines need something else. As AI systems move from experimentation to production, raw documents limit accuracy, performance, and trust. This session covers a proof-of-concept engagement exploring why unstructured content must be transformed into secure, compute-ready assets to deliver faster insights, predictable performance, and true data sovereignty. This solution enables processing data once to power AI everywhere in your organization.


Compute-ready data for AI with Futurum Signal65


Watch on YouTube
Watch on Vimeo

Enterprises are discovering that PDFs are for people; machines need something else. As AI systems move from experimentation to production, raw documents limit accuracy, performance, and trust. This session covers a proof-of-concept engagement exploring why unstructured content must be transformed into secure, compute-ready assets to deliver faster insights, predictable performance, and true data sovereignty. This solution enables processing data once to power AI everywhere in your organization. Brian Martin, VP of AI and Data Center Performance at Signal65, presented the work of their AI lab, which is sponsored by Dell Technologies and focuses on real-world impact tests of AI workloads using extensive AI infrastructure, including various Dell XE servers and NVIDIA GPUs. The lab also developed a digital twin to optimize its physical layout, particularly for complex designs such as slab-on-grade data centers with overhead utilities, demonstrating an immediate positive ROI by identifying costly design changes early.

The presentation then transitioned to the critical challenge of preparing data for AI models. Echoing the sentiment that “garbage in, garbage out” becomes “expensive garbage out” with AI infrastructure, Signal65 highlighted how raw, unstructured data, particularly PDFs, hinders AI accuracy, performance, and trust. PDFs are designed for human consumption, not machine processing. Gadget Software addresses this by offering “compute-ready data,” which transforms unstructured content into AI-digestible formats. This process involves semantic decomposition to maintain topic continuity, LLM enrichment to generate useful metadata such as summaries, keywords, sentiment, and sample Q&A pairs, and robust governance and security through unique IDs and lineage tracking. This approach overcomes the limitations of traditional chunking and pure vectorization, which often lose context and attribution, making it difficult to cite sources or enforce security policies.

In a proof of concept using the vast United States Federal Register, Signal65 demonstrated the tangible benefits of this compute-ready data pipeline. The process ensured that all AI responses could be traced back to the original documents, which is crucial for governance and security. Performance testing revealed a significant advantage for local GPU processing (using L40S and RTX Pros) compared to accessing cloud LLM APIs. Local processing delivered remarkably consistent, flat latency during data ingestion and enrichment, in contrast to the spiky, unpredictable latency observed with cloud APIs, regardless of document size. This “write once, read many” approach ensures that once data is processed and enriched, it can be reliably accessed by various AI applications, such as chatbots or BI tools, delivering consistent, attributable results. Furthermore, the prepared data facilitates user interaction by enabling intuitive dashboards that showcase data content and suggest relevant queries, addressing the common user challenge of “what can I ask?”

Personnel: Brian Martin

  • Bluesky
  • LinkedIn
  • Mastodon
  • RSS
  • Twitter
  • YouTube

Event Calendar

  • Mar 11-Mar 12 — Cloud Field Day 25
  • Mar 23-Mar 24 — Tech Field Day Extra at RSAC 2026
  • Apr 8-Apr 10 — Networking Field Day 40
  • Apr 29-Apr 30 — Security Field Day 15
  • May 6-May 8 — Mobility Field Day 14
  • May 13-May 14 — AI Field Day 8
  • Jun 2-Jun 3 — Tech Field Day Extra at Cisco Live US 2026
  • Jun 10-Jun 11 — AI Infrastructure Field Day 5

Latest Coverage

  • One Rack, One Exabyte, Zero Excuses: How Open Storage Is Rewriting AI Infrastructure
  • Your GPUs Are Only as Good as the Network Feeding Them
  • 174: GreyBeards talk SDN chips with Ted Weatherford, VP Bus. Dev. & John Carney. Dist. Eng. at Xsight Labs
  • The Governance Controls Cisco Didn’t Know They Were Selling
  • Cisco’s Deterministic Ethernet: Closing the AI Networking Gap

Tech Field Day News

  • Cloud Strategy, The Future of Infrastructure, and Of Course AI at Cloud Field Day 25
  • Cutting-Edge AI Networking and Storage Kick Off 2026 at AI Infrastructure Field Day 4

Return to top of page

Copyright © 2026 · Genesis Framework · WordPress · Log in