---
title: "Slides: Frontier results, on device - RL Nabors, Arize"
category: "slides"
video_id: "fWXJM-J0ZB8"
sourceLabels: ["Public YouTube video frames", "Public YouTube metadata"]
---

# Slides: Frontier results, on device - RL Nabors, Arize

## Source Video
[Frontier results, on device - RL Nabors, Arize](https://www.youtube.com/watch?v=fWXJM-J0ZB8)

## Relationship To World's Fair 2026
These slides are extracted from a public AI Engineer YouTube video connected to World's Fair 2026. Speaker-matched clips are supporting context unless later confirmed as exact session recordings; official livestream recordings are day-level/event-level source material.

## Related Scheduled Sessions
- No individual scheduled session mapping has been assigned yet; treat this as an event livestream deck.

## Extracted Slides
![[assets/slides/fWXJM-J0ZB8/slide-001.jpg]]

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![[assets/slides/fWXJM-J0ZB8/slide-015.jpg]]

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## Slide-Derived Subjects To Review
Subject extraction uses video title, related session titles/descriptions, transcript context, and OCR text when available. OCR is best-effort and should be reviewed against the embedded slide images.
