Dharma – o caminho para o jovem encontrar a realização profissional no presente

Thesis Subjects > Communication
Subjects > Psychology
Subjects > Social Sciences
Subjects > Education
Ibero-american International University > Teaching > Master's Final Projects Closed Portuguese O mundo pode ser um lugar bem melhor se mais pessoas forem realizadas profissionalmente. O problema é que a frustração e a ansiedade assolam a sociedade de tal maneira no que se refere às atividades laborais que limitam o modelo mental daqueles que construirão o futuro. É compreensível que os jovens não deem conta desses desafios por serem cada vez mais de famílias desestruturadas, por estarem inseridos em um mercado em crise que não absorve os seus anseios e porque de forma atroz a mídia ardilosa, ferramenta dos interesses econômicos nada igualitários, os afastam das suas verdadeiras vocações e propósitos. Esta pesquisa possibilitou que jovens entre 18 e 21 anos experimentassem vivenciar no seu cotidiano a atenção plena em diversas atividades. Identificando as lacunas comportamentais que faltavam para manifestar todo o seu potencial. O que ocorreu por meio de um aplicativo no smartphone com tarefas práticas e reflexivas orientadas pelo conceito do Dharma, princípio da filosofia védica que trata de proporcionar à pessoa foco na sua verdadeira essência no momento presente. O resultado apresentado mostrou que quando corpo, mente e alma estão aplicados sincronizadamente numa mesma ação reduz-se o espaço para desvarios. Para identificar esta oportunidade os jovens precisaram ter a noção dos impactos pessoais e coletivos de cada uma das suas decisões. Assumir a responsabilidade no desenvolvimento de suas competências e, também, que havia a necessidade deles e seus respectivos gestores e mentores reduzirem a discrepância mútua quanto à expectativa de suas atuações conjuntas. Concluímos que se a consciência da realização profissional surgir ainda no período introdutório ao mundo do trabalho esse resultado pode ser potencializado e mazelas sociais e econômicas mitigadas. E os jovens participantes da pesquisa entenderam que mais importante do que a velocidade para atender aos desejos materiais é tomar cada passo com autoconhecimento, autorresponsabilização, convicção e alinhamento ao perfil comportamental para se viver, diariamente, uma vida realizada e repleta de significância. metadata Amaral Franco, Daniel mail danielfranco.ce@gmail.com (2022) Dharma – o caminho para o jovem encontrar a realização profissional no presente. Master's thesis, UNSPECIFIED.

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Abstract

O mundo pode ser um lugar bem melhor se mais pessoas forem realizadas profissionalmente. O problema é que a frustração e a ansiedade assolam a sociedade de tal maneira no que se refere às atividades laborais que limitam o modelo mental daqueles que construirão o futuro. É compreensível que os jovens não deem conta desses desafios por serem cada vez mais de famílias desestruturadas, por estarem inseridos em um mercado em crise que não absorve os seus anseios e porque de forma atroz a mídia ardilosa, ferramenta dos interesses econômicos nada igualitários, os afastam das suas verdadeiras vocações e propósitos. Esta pesquisa possibilitou que jovens entre 18 e 21 anos experimentassem vivenciar no seu cotidiano a atenção plena em diversas atividades. Identificando as lacunas comportamentais que faltavam para manifestar todo o seu potencial. O que ocorreu por meio de um aplicativo no smartphone com tarefas práticas e reflexivas orientadas pelo conceito do Dharma, princípio da filosofia védica que trata de proporcionar à pessoa foco na sua verdadeira essência no momento presente. O resultado apresentado mostrou que quando corpo, mente e alma estão aplicados sincronizadamente numa mesma ação reduz-se o espaço para desvarios. Para identificar esta oportunidade os jovens precisaram ter a noção dos impactos pessoais e coletivos de cada uma das suas decisões. Assumir a responsabilidade no desenvolvimento de suas competências e, também, que havia a necessidade deles e seus respectivos gestores e mentores reduzirem a discrepância mútua quanto à expectativa de suas atuações conjuntas. Concluímos que se a consciência da realização profissional surgir ainda no período introdutório ao mundo do trabalho esse resultado pode ser potencializado e mazelas sociais e econômicas mitigadas. E os jovens participantes da pesquisa entenderam que mais importante do que a velocidade para atender aos desejos materiais é tomar cada passo com autoconhecimento, autorresponsabilização, convicção e alinhamento ao perfil comportamental para se viver, diariamente, uma vida realizada e repleta de significância.

Document Type: Thesis (Master's)
Keywords: Dharma, Jovem, Realização Profissional, Profissão, Comportamento
Subject classification: Subjects > Communication
Subjects > Psychology
Subjects > Social Sciences
Subjects > Education
Divisions: Ibero-american International University > Teaching > Master's Final Projects
Deposited: 14 Mar 2024 23:30
Last Modified: 14 Mar 2024 23:30
URI: https://repositorio.unib.org/id/eprint/2253

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