Desarrollo de Procesos en el Centro de Estimulación para el Niño CEN, en Tegucigalpa, Honduras, para el año 2022
Tesis
Materias > Comunicación
Materias > Psicología
Materias > Ciencias Sociales
Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster
Cerrado
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En Honduras, las organizaciones tanto tradicionales como las tecnológicas persiguen propósitos y metas claras para alcanzar objetivos que apuntan al éxito de esta, considerando la importancia de que sean alcanzados en el Centro de Estimulación para el Niño, se propuso implementar de forma digital procesos administrativos que la organización no ha realizado, porque los había hecho como procesos experimentales no documentados. La inactividad operativa debido a la pandemia COVID-19 por más de un año y medio afectó en gran escala la falta de recursos económicos. Para lograr validar los procesos que se propusieron, se compartió tiempo de trabajo y conversación junto al personal y directivos de la institución educativa no gubernamental, conociéndolos como recurso del talento humano, extrayendo información de cómo lo hacen o hacían para así proponer una forma que les ayude a ser más efectivos. Se pudo conocer que la organización no tenía procesos para planificar sus actividades operativas, para seleccionar, desarrollar o separar su personal y no hay definido un plan de atraer fondos de diversas fuentes. Dada la relevancia que se tengan pasos a seguir ante las necesidades imperantes de la organización misma, se propuso procesos básicos con alcance digital que se presentaron ante los directivos para su prueba y aplicación en sus gestiones administrativas, entre los principales resultados obtenidos fue la elaboración de un plan de sus operaciones para el año 2022, junto a la directiva y personal técnico fueron identificadas las oportunidades, debilidades, amenazas y fortalezas que se tiene como empresa, así como la necesidad de empoderar y fortalecer las habilidades del personal capacitándoles en temas que mejoren su desempeño, para todo esto será necesario la gestión administrativa a través de estrategias que generen más ingresos.
metadata
Garcia Ortez, Breny Grissel
mail
breny_garcia@hotmail.com
(2022)
Desarrollo de Procesos en el Centro de Estimulación para el Niño CEN, en Tegucigalpa, Honduras, para el año 2022.
Masters thesis, SIN ESPECIFICAR.
Resumen
En Honduras, las organizaciones tanto tradicionales como las tecnológicas persiguen propósitos y metas claras para alcanzar objetivos que apuntan al éxito de esta, considerando la importancia de que sean alcanzados en el Centro de Estimulación para el Niño, se propuso implementar de forma digital procesos administrativos que la organización no ha realizado, porque los había hecho como procesos experimentales no documentados. La inactividad operativa debido a la pandemia COVID-19 por más de un año y medio afectó en gran escala la falta de recursos económicos. Para lograr validar los procesos que se propusieron, se compartió tiempo de trabajo y conversación junto al personal y directivos de la institución educativa no gubernamental, conociéndolos como recurso del talento humano, extrayendo información de cómo lo hacen o hacían para así proponer una forma que les ayude a ser más efectivos. Se pudo conocer que la organización no tenía procesos para planificar sus actividades operativas, para seleccionar, desarrollar o separar su personal y no hay definido un plan de atraer fondos de diversas fuentes. Dada la relevancia que se tengan pasos a seguir ante las necesidades imperantes de la organización misma, se propuso procesos básicos con alcance digital que se presentaron ante los directivos para su prueba y aplicación en sus gestiones administrativas, entre los principales resultados obtenidos fue la elaboración de un plan de sus operaciones para el año 2022, junto a la directiva y personal técnico fueron identificadas las oportunidades, debilidades, amenazas y fortalezas que se tiene como empresa, así como la necesidad de empoderar y fortalecer las habilidades del personal capacitándoles en temas que mejoren su desempeño, para todo esto será necesario la gestión administrativa a través de estrategias que generen más ingresos.
Tipo de Documento: | Tesis (Masters) |
---|---|
Palabras Clave: | Proceso Administrativo, Digitalización de Procesos, Reactivación de Empresas Post-Pandemia, Plan Operativo Anual, Honduras |
Clasificación temática: | Materias > Comunicación Materias > Psicología Materias > Ciencias Sociales |
Divisiones: | Universidad Europea del Atlántico > Docencia > Trabajos finales de Máster |
Depositado: | 03 Nov 2023 23:30 |
Ultima Modificación: | 03 Nov 2023 23:30 |
URI: | https://repositorio.uneatlantico.es/id/eprint/1768 |
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Enzymatic treatment shapes in vitro digestion pattern of phenolic compounds in mulberry juice
The health benefits of mulberry fruit are closely associated with its phenolic compounds. However, the effects of enzymatic treatments on the digestion patterns of these compounds in mulberry juice remain largely unknown. This study investigated the impact of pectinase (PE), pectin lyase (PL), and cellulase (CE) on the release of phenolic compounds in whole mulberry juice. The digestion patterns were further evaluated using an in vitro simulated digestion model. The results revealed that PE significantly increased chlorogenic acid content by 77.8 %, PL enhanced cyanidin-3-O-glucoside by 20.5 %, and CE boosted quercetin by 44.5 %. Following in vitro digestion, the phenolic compound levels decreased differently depending on the treatment, while cyanidin-3-O-rutinoside content increased across all groups. In conclusion, the selected enzymes effectively promoted the release of phenolic compounds in mulberry juice. However, during gastrointestinal digestion, the degradation of phenolic compounds surpassed their enhanced release, with effects varying based on the compound's structure.
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A novel machine learning-based proposal for early prediction of endometriosis disease
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Detecting hate in diversity: a survey of multilingual code-mixed image and video analysis
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