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Open Graph

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Sulfur - Responsive HTML5 Template

image

site name

author

Shahriyar Ahmed

updated

2026-02-17 20:19:13

raw text

DCAI Tutorial KDD 2023 Tutorial Home About Presenters Resources Data-centric AI KDD 2023 Tutorial 2:00 pm to 5:00 pm PST, Tuesday, August 8, 2023 202A, Long Beach Convention & Entertainment Center Check Out Our [Slides] and [Talk] About What is Data-centric AI (DCAI)? DCAI is an emerging field that focuses on engineering data to improve AI systems with enhanced data quality and quantity. DCAI shifts our focus from model to data. It is important to note that "data-centric" differs fundamentally from "data-driven", as the latter only emphasizes the use of data to guide AI development, which typically still centers on developing models rather than engineering data. Why DCAI? Many major AI breakthroughs occur only after we have the access to the right training data. Large and high-quality training data are the driving force of recent successes of GPT models, while model architectures remain similar, except for more model weights. When the model...

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