This episode emphasizes the crucial role of dataset engineering in the success of AI models, asserting that data quality and diversity are as important as data quantity. It explains how companies are shifting towards a data-centric AI approach to improve model performance, moving beyond solely enhancing model architectures. The text details the process of data curation, including the importance of data quality, coverage, and quantity, and introduces data augmentation and synthesis as methods to address data scarcity and improve dataset characteristics. Various techniques for generating and processing data are discussed, highlighting the growing reliance on AI for data creation and verification, while also acknowledging the limitations of synthetic data and the ongoing need for human oversight and real data.
No persons identified in this episode.
This episode hasn't been transcribed yet
Help us prioritize this episode for transcription by upvoting it.
Popular episodes get transcribed faster
Other recent transcribed episodes
Transcribed and ready to explore now
3ª PARTE | 17 DIC 2025 | EL PARTIDAZO DE COPE
01 Jan 1970
El Partidazo de COPE
Buchladen: Tipps für Weihnachten
20 Dec 2025
eat.READ.sleep. Bücher für dich
BOJ alza 25pb decennale sopra 2%, Oracle vola con accordo Tik Tok, 90 mld eurobond per Ucraina | Morning Finance
19 Dec 2025
Black Box - La scatola nera della finanza
365. The BEST advice for managing ADHD in your 20s ft. Chris Wang
19 Dec 2025
The Psychology of your 20s
LVST 19 de diciembre de 2025
19 Dec 2025
La Venganza Será Terrible (oficial)
Cuando la Ciencia Ficción Explicó el Mundo que Hoy Vivimos
19 Dec 2025
El Podcast de Marc Vidal