Slides: New York Times' Connections: A Case Study on NLP in Word Games — Shafik Quoraishee, NYT Games

Source Video

New York Times' Connections: A Case Study on NLP in Word Games — Shafik Quoraishee, NYT Games

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

slide-001.jpg

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About Me

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Caveats to the Work You Are About To See

e This is all my own independent research and experimentation,

and not currently specifically based on New York Time's

internal research

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slide-004.jpg

OCR text:

Introduction To New York Times Connections

e Connections was launched by the New

York Times in beta in June 2023, and

officially released in August 2023.

e The game is edited by Wyna Liu, who is

awesome

e It quickly became one of NYT's

most-played games, second only to

Wordle, with hundreds of millions of plays

within its first year.

e ALL CONNECTIONS PUZZLES AND

E GAME ITSELF, ARE HUMAN

a ADE NOW AND FOREVER

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slide-005.jpg

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Reinforcement Learning Solver Using

Hyperdimensional Semantic Clusters

© Applied reinforcement leaming to treat

group selection as a sparse-reward

decision process.

e Used hyperdimensiona! semantic

embeddings to structure the word space.

e Trained agents to learn grouping policies

from historical puzzle solutions.

e Incorporated lexical and semantic

coherence as input features for state

evaluation

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slide-006.jpg

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Current Performance LLMS against of ARC-AGI 2

ESSEC ARC-AGI-1 ARC-AGI-2 Efficency

Score Score {cost/task)

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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.