Recoger datos con SurveyMonkey (Coursera)

Recoger datos con SurveyMonkey (Coursera)

En este proyecto, vamos a explorar el proceso para crear una encuesta y las maneras en que SurveyMonkey simplifica el recogimiento de datos. Vamos a aprender cómo se organiza el programa y como funciona para que Usted se sienta cómodo y seguro de si mismo en crear su propia encuesta.

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SurveyMonkey es un programa de encuestas basado en la nube que permite a sus usuarios crear encuestas en línea, gratis. Con SurveyMonkey, se puede recoger las opiniones y sugerencias de sus empleados, clientes, accionistas, etc. Después de crear una encuesta con SurveyMonkey, es fácil enviársela a quien quiera o compartirla por sus medios sociales. Con las plantillas de pregunta proporcionadas por SurveyMonkey, es fácil y rápido crear una encuesta detallada y profesional. Sus elementos fáciles de usar y opciones detalladas permiten que ambos los profesionales de mercadeo y los principiantes puedan crear la encuesta que quieren.

In this Free Guided Project, you will:

  • Crear una cuenta de SurveyMonkey y crear una encuesta usando la opción comenzar de una plantilla.
  • Publicar una encuesta con SurveyMonkey.
  • Analizar los resultados de la encuesta en SurveyMonkey.
  • Showcase this hands-on experience in an interview

Learn step-by-step
In a video that plays in a split-screen with your work area, your instructor will walk you through these steps:

  1. Crear una cuenta de SurveyMonkey
  2. Crear una encuesta usando la opción comenzar de una plantilla
  3. Publicar una encuesta con SurveyMonkey
  4. Desarrollar una encuesta de opinión con SurveyMonkey
  5. Analizar los resultados de la encuesta en SurveyMonkey
Go to Class
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