Por favor, use este identificador para citar o enlazar este ítem: http://www.alice.cnptia.embrapa.br/alice/handle/doc/1187909
Título: PFBCIA – sweet potato: low-cost AI-powered phenotyping platform from prompt engineering to climate justice: thermal stress
Autor: FONTENELLE, M. R.
VENDRAME, L. P. de C.
MARTINS, S. C. V.
GUEDES, I. M. R.
LUSTOSA JÚNIOR, I. M.
LIMA, C. E. P.
Afiliación: MARIANA RODRIGUES FONTENELLE, CNPH; LARISSA PEREIRA DE CASTRO VENDRAME, CNPH; SAMUEL CORDEIRO VITOR MARTINS, CNPH; ITALO MORAES ROCHA GUEDES, CNPH; ILVAN MEDEIROS LUSTOSA JÚNIOR, INSTITUTO FEDERAL BRASÍLIA; CARLOS EDUARDO PACHECO LIMA, CNPH.
Año: 2026
Referencia: Revista Educa, v. 9, 2026.
Descripción: The development of Low-Cost Phenotyping Platforms Supported by Generative Artificial Intelligence (AI) is part of a recently launched research initiative at Embrapa Vegetables in Brasília, Federal District, aimed at creating a National Platform for Adaptation to Climate Change Applied to Family Farming (Clima AF). Through Prompt Engineering and Command Chaining, this stage was designed for the visual assessment of physiological disorders in sweet potato (Ipomoea batatas) tuberous roots in the context of the Climate Emergency. The pipeline consists of four stages: 1 - Definition of an expert persona; 2 - Phenological contextualization and critical root filling period; 3 - Visual anatomical phenotyping; and 4 - Synthesis of the physiological disorders found, with a focus on heat stress. The methodology is available as open access following FAIR principles. The analysis is conducted using minimal information, such as photos that can be taken with everyday devices like martphones and information about the harvest season. Because it is available as open access, it democratizes information and contributes to achieving climate justice for a socioeconomically ulnerable audience (family farmers).
Thesagro: Batata Doce
Ipomoea Batatas
Fenótipo
Mudança Climática
Agricultura Familiar
Distúrbio Fisiológico
Palabras clave: Ciência aberta
Inteligência artificial
ISSN: 2674-8460
DOI: 10.54901/educa.v9-370
Tipo de Material: Artigo de periódico
Acceso: openAccess
Aparece en las colecciones:Artigo em periódico indexado (CNPH)

Ficheros en este ítem:
Fichero TamañoFormato 
CNPH-42445-AP.pdf1,12 MBAdobe PDFVisualizar/Abrir

FacebookTwitterDeliciousLinkedInGoogle BookmarksMySpace