Resultados de búsqueda - Machine translating.

  • Mostrando 1 - 20 Resultados de 20
Limitar resultados
  1. Speech recognition, machine translation, and corpus analysis for identifying farmer demands and targeting digital extension por Jones-Garcia, Eliot

    Publicado 2022
    “…This report reviews several approaches to overcoming technical constraints and then presents a cutting-edge approach that utilizes innovations in unsupervised learning to deliver highly accurate speech recognition and machine translation in a diverse set of languages.…”
    Enlace del recurso
    Informe técnico
  2. Explainable machine learning driven nutrient recommendation for maize production in Malawi por Liben, Feyera, Kihara, Job, Abera, Wuletawu, AbebeMesfin, Tewodrofins, Homann-kee Tui, Sabine, Munthali, Moses, Munthali, Chandiona, Nalivata, Patson, Mzumara, Edward, Tuimene, Lulseged

    Publicado 2025
    “…This study aimed to (1) evaluate and compare the predictive performance of multiple machine learning algorithms for maize yield estimation in Malawi; (2) identify the most important yield-determining features through recursive feature elimination (RFECV) and SHAP-based interpretation; (3) examine interaction effects between key nutrient inputs and environmental variables using two-dimensional partial dependence plots; and (4) translate model outputs into site-specific nutrient management insights for precision agronomy in smallholder maize systems. …”
    Enlace del recurso
    Resumen
  3. Assessing climate resilience in rice production: Measuring the impact of the Millennium Challenge Corporation’s IWRM scheme in the Senegal River Valley using remote sensing and mac... por Fionnagáin, D.Ó., Geever, M., O’Farrell, J., Codyre, P., Trearty, R., Tessema, Y.M., Reymondin, Louis, Loboguerrero, Ana Maria, Spillane, Charlie, Golden, A

    Publicado 2024
    “…Abstract Satellite remote sensing and machine learning can be combined to develop methods for measuring the impacts of climate change on biomass and agricultural systems. …”
    Enlace del recurso
    Journal Article
  4. Smart breeding driven by big data, artificial intelligence, and integrated genomic-enviromic prediction por Yunbi Xu, Zhang Xingping, Huihui Li, Hongjian Zheng, Jianan Zhang, Olsen, Michael, Varshney, Rajeev K., Boddupalli, P.M., Qian Qian

    Publicado 2022
    “…Finally, we provide perspectives on translating smart breeding into genetic gain through integrative breeding platforms and open-source breeding initiatives. …”
    Enlace del recurso
    Journal Article
  5. Effects of land use land cover change on streamflow of Akaki Catchment, Addis Ababa, Ethiopia por Negash, E. D., Asfaw, Wegayehu, Walsh, C. L., Mengistie, G. K., Haile, Alemseged Tamiru

    Publicado 2023
    “…Since the comparative performance of classification algorithms is poorly understood, we compared the performance of one parametric and five non-parametric machine learning methods for LULC mapping using Landsat imageries. …”
    Enlace del recurso
    Journal Article
  6. Free online trainings on soil health monitoring with satellite based remote sensors por Huq, Rafiq, Lesueur, Didier

    Publicado 2024
    “…Each session featured three one-hour lectures as outlined below: 1. « Earth Observation and Soil Health: Where Innovation Meets Practice » - Focus: The origins and development of Earth Observation (EO) technology, its applications innatural sciences and soil health monitoring, as well as its opportunities and limitations. 2. « Satellite-Based Remote Sensing: How Earth Observation Enhances Soil Health Monitoring » - Focus: Various remote sensing (RS) technologies, their application in soil data collection, and the role of RS data in monitoring soil health. 3. « From Data to Decisions: Translating Remote Sensing Insights into Practical Soil Health Solutions » - Focus: AI-based agricultural informatics, the use of machine learning in data analysis and automation, and the importance of baseline data for machine learning algorithms.…”
    Enlace del recurso
    Informe técnico
  7. Conceptualising ecosystem services and implications for human nature relations por Chorell, Joel

    Publicado 2018
    “…Although still debated, the language of economics makes possible a translation of nature’s values to a wider audience than traditional conservation. …”
    H2
  8. Building Climate Resilience in Agrifood Systems Through AI- Powered Agromet Advisory Services por Kumar, Shalander, Rao, K.P.C., Kumar, G. Kishore

    Publicado 2025
    “…These systems employ machine learning and decision-tree logic to translate complex weather data into actionable insights, enabling timely recommendations on sowing, irrigation, and crop protection. …”
    Enlace del recurso
    Ponencia
  9. Digital solutions to transform agriculture: lessons and experiences in Ethiopia por Tamene, Lulseged D., Abera, Wuletawu, Erkossa, Teklu

    Publicado 2020
    “…Expected results in the coming few years will involve taking data and data use to the next level, whereby data are “translated” into information and farmer-relevant, gender-specific extension content and disseminated digitally and via analog agricultural advisory services. …”
    Enlace del recurso
    Informe técnico
  10. Characterizing degradation of palm swamp peatlands from space and on the ground: An exploratory study in the Peruvian Amazon por Hergoualc'h, Kristell, Gutiérrez Vélez, Victor Hugo, Menton, Mary, Verchot, Louis V.

    Publicado 2017
    “…For this we used a Random Forest machine learning classification algorithm. Results suggest a shift in forest composition from palm to woody tree dominated forest following degradation. …”
    Enlace del recurso
    Journal Article
  11. Bedömning av spermiemotilitet i färsk, kyld samt selekterad hingstsperma med Qualisperm por Strutz, Hanna

    Publicado 2008
    “…Therefore, there have been a number of objective methods designed, for example CASA (Computer Assisted Semen Analysis) where QualispermTM (Biophos AG, Switzerland) is a new system based on different principles compared to earlier CASA-systems. While other CASA-machines takes a series of photographs and the trajectories are used to separate the sperm tracks into categories of different motility patterns, QualispermTM determines the number of particles (spermatozoa) crossing fields of view, yielding a regression fluctuation algorithm of sperm numbers and translation classes. …”
    Enlace del recurso
    Otro
  12. A study of Village Milking Centre in China por Främling, Maja-Lena

    Publicado 2006
    “…VMC is a centre provided with milking machines and bulk milk coolers. Local farmers bring their cows to the VMC two to three times per day. …”
    Enlace del recurso
    Otro
  13. A qualitative study exploring women’s empowerment in coffee cooperatives in Chiapas, Mexico por Eissler, Sarah, Rubin, Deborah, de Anda, Victoria

    Publicado 2024
    “…The data were transcribed into Spanish and then translated into English. These transcripts were analyzed using thematic analysis in NVivo software. …”
    Enlace del recurso
    Artículo preliminar

Herramientas de búsqueda: