Emílias Podcast -- Mulheres na Computação: Ampliando Horizontes e Inspirando Carreiras em STEM
- URL: http://arxiv.org/abs/2410.16294v1
- Date: Sun, 06 Oct 2024 12:59:48 GMT
- Title: Emílias Podcast -- Mulheres na Computação: Ampliando Horizontes e Inspirando Carreiras em STEM
- Authors: Nathálya Chaves Dos Santos, Adolfo Gustavo Serra Seca Neto,
- Abstract summary: "Em'ilias Podcast -- Women in Computing" celebrates its 5th anniversary on October 3, 2024.
The podcast aims to provide a space for women in computing and related fields to share their experiences.
The results revealed that 100% of interviewees would recommend "Em'ilia's Podcast," reflecting a high level of satisfaction with the project.
- Score: 0.42970700836450487
- License:
- Abstract: On October 3, 2024, the "Em\'ilias Podcast -- Women in Computing" celebrates its 5th anniversary, standing out as a platform that promotes the participation of women in STEM (an acronym for "science, technology, engineering, and mathematics"). The podcast aims to provide a space for women in computing and related fields to share their experiences and highlight the various opportunities in Information and Communication Technology (ICT). The methodology included a feedback survey with interviewees, conducted via Google Forms, to assess their experience and determine whether they would recommend the podcast. In addition, we analyzed audience data, which showed consistent growth over the five years. The results revealed that 100% of the interviewees would recommend "Em\'ilias Podcast," reflecting a high level of satisfaction with the project. The average participation experience rating was 4.7 on a scale of 1 to 5, highlighting positive aspects such as the quality of the script, the interview conduction, and the networking opportunities. The audience data also underscore the podcast's impact: with over 10,000 accumulated downloads and plays, it is primarily listened to by people aged 23 to 44, with 50.9% of the audience being female, demonstrating its relevance and reach. In conclusion, the feedback from interviewees and the audience data reinforce the podcast's positive impact and its crucial role in the inclusion of women in technology. The results highlight the importance of promoting the field and its opportunities, contributing to a more inclusive and inspiring future. The data analysis demonstrates the podcast's effectiveness in engaging and expanding its audience, establishing it as a significant example of social impact in ICT.
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