IA para todos (Coursera)

Offered by DeepLearning.AI,
IA para todos (Coursera)

IA não é apenas para engenheiros. Se quiser que sua organização se torne melhor no uso de IA, este é o curso que todos, especialmente aos seus colegas não técnicos, devem fazer.

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Neste curso, você aprenderá:

  • O significado por trás da terminologia comum de IA, incluindo redes neurais, machine learning, aprendizado profundo/deep learning e ciência de dados
  • O que IA pode ou não fazer de forma realista
  • Como identificar oportunidades para aplicar IA aos problemas em sua própria organização
  • Como é criar projetos de machine learning e ciência de dados
  • Como trabalhar com uma equipe de IA e construir uma estratégia de IA em sua empresa
  • Como lidar com discussões éticas e sociais sobre IA

Embora este curso seja em grande parte não técnico, os engenheiros também podem fazê-lo para aprender os aspectos comerciais da IA.

Syllabus

WEEK 1: O que é IA?
WEEK 2: Criação de projetos de IA
WEEK 3: Criação de projetos de IA
WEEK 4: IA e sociedade

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