Method training: Create a podcast

TT
by to-teach Team
7 pagesGrade 7 and aboveEconomics, Politics, non-subject specific content
Template

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Your worksheet

Insert the desired topic of the podcast. Students will be instructed to create a podcast on this topic.

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Description

Objective:

Learners acquire methodological skills for creating a podcast and deal creatively with a topic of their choice.

Content and methods:

The worksheet guides learners step by step through the process of creating a podcast. It teaches the basics of the components of a podcast, provides a structured checklist for planning and production and contains a sample solution as a guide. The topic of the podcast can be flexibly adapted to different lesson content.

Competencies:

  • Development and implementation of an audiovisual media product
  • Research, structuring and preparation of information
  • Creative design and technical implementation of audio recordings
  • Reflection on the production process and potential for improvement

Target group and level:

Grade 7 and above

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