Slides: From Text to Vision to Voice Exploring Multimodality with Open AI: Romain Huet

Source Video

From Text to Vision to Voice Exploring Multimodality with Open AI: Romain Huet

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

Extracted Slides

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From Text to Vision to Voice:

Exploring Multimodality

with OpenAl

RomainHuet

Head ofDeveloper Experience,OpenAl

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01Al Outlook

02 GPT-40

03 What's Next

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Our investment areas

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Harvey.

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Harvey worked with OpenAl to develop a - 83% increase in factual responses

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domain knowledge of case law to improve - Attorneys at top law firms preferred the

answer depth and reduce hallucination rates. custom trained model's outputs 94% of the

time over GPT-4

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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.