This is the audio podcast version of Troy Hunt's weekly update video published here: https://www.troyhunt.com/tag/weekly-update/
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Machine Learning For Kids
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Manage episode 194063240 series 1828621
Conteúdo fornecido por machinelrn. Todo o conteúdo do podcast, incluindo episódios, gráficos e descrições de podcast, é carregado e fornecido diretamente por machinelrn ou por seu parceiro de plataforma de podcast. Se você acredita que alguém está usando seu trabalho protegido por direitos autorais sem sua permissão, siga o processo descrito aqui https://pt.player.fm/legal.
Joined today by the world’s youngest machine learning engineer! She was inspired by “Age of Ultron” But how does machine learning actually work? We followed up this podcast with the Teachable Machine project based on a new library called deeplearn.js, which makes it easier for any web dev to get into machine learning. ML relies on specific representation of data, a set of features that are understandable for a computer. If we’re talking about text it should be represented through the words it contains or some other characteristics such as length of the text etc. All ML tasks can be classified in several categories, the main ones are: • Supervised ML • Unsupervised ML • Reinforcement learning. Supervised ML relies on data where the true label/class was indicated. This is easier to explain using an example. Let us imagine that we want to teach a computer to distinguish pictures of cats and dogs. We can ask some of our friends to send us pictures of cats and dogs adding a tag Cat or Dog. Follow-up questions: • Why did they want better machines? • How do you imagine and build something that doesn’t exist yet?
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7 episódios
MP3•Home de episódios
Manage episode 194063240 series 1828621
Conteúdo fornecido por machinelrn. Todo o conteúdo do podcast, incluindo episódios, gráficos e descrições de podcast, é carregado e fornecido diretamente por machinelrn ou por seu parceiro de plataforma de podcast. Se você acredita que alguém está usando seu trabalho protegido por direitos autorais sem sua permissão, siga o processo descrito aqui https://pt.player.fm/legal.
Joined today by the world’s youngest machine learning engineer! She was inspired by “Age of Ultron” But how does machine learning actually work? We followed up this podcast with the Teachable Machine project based on a new library called deeplearn.js, which makes it easier for any web dev to get into machine learning. ML relies on specific representation of data, a set of features that are understandable for a computer. If we’re talking about text it should be represented through the words it contains or some other characteristics such as length of the text etc. All ML tasks can be classified in several categories, the main ones are: • Supervised ML • Unsupervised ML • Reinforcement learning. Supervised ML relies on data where the true label/class was indicated. This is easier to explain using an example. Let us imagine that we want to teach a computer to distinguish pictures of cats and dogs. We can ask some of our friends to send us pictures of cats and dogs adding a tag Cat or Dog. Follow-up questions: • Why did they want better machines? • How do you imagine and build something that doesn’t exist yet?
…
continue reading
7 episódios
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