Página inicialGruposDiscussãoMaisZeitgeist
Pesquise No Site
Este site usa cookies para fornecer nossos serviços, melhorar o desempenho, para análises e (se não estiver conectado) para publicidade. Ao usar o LibraryThing, você reconhece que leu e entendeu nossos Termos de Serviço e Política de Privacidade . Seu uso do site e dos serviços está sujeito a essas políticas e termos.

Resultados do Google Livros

Clique em uma foto para ir ao Google Livros

Carregando...

Machine Learning: Hands-On for Developers and Technical Professionals

de Jason Bell

MembrosResenhasPopularidadeAvaliação médiaConversas
13Nenhum(a)1,524,319Nenhum(a)Nenhum(a)
Harness the power of Apple iOS machine learning (ML) capabilities and learn the concepts and techniques necessary to be a successful Apple iOS machine learning practitioner! Machine earning (ML) is the science of getting computers to act without being explicitly programmed. A branch of Artificial Intelligence (AI), machine learning techniques offer ways to identify trends, forecast behavior, and make recommendations. The Apple iOS Software Development Kit (SDK) allows developers to integrate ML services, such as speech recognition and language translation, into mobile devices, most of which can be used in multi-cloud settings. Focusing on Apple ?s ML services, Machine Learning for iOS Developers is an up-to-date introduction to the field, instructing readers to implement machine learning in iOS applications. Assuming no prior experience with machine learning, this reader-friendly guide offers expert instruction and practical examples of ML integration in iOS. Organized into two sections, the book ?s clearly-written chapters first cover fundamental ML concepts, the different types of ML systems, their practical uses, and the potential challenges of ML solutions. The second section teaches readers to use models ?both pre-trained and user-built ?with Apple ?s CoreML framework. Source code examples are provided for readers to download and use in their own projects. This book helps readers: Understand the theoretical concepts and practical applications of machine learning used in predictive data analytics Build, deploy, and maintain ML systems for tasks such as model validation, optimization, scalability, and real-time streaming Develop skills in data acquisition and modeling, classification, and regression. Compare traditional vs. ML approaches, and machine learning on handsets vs. machine learning as a service (MLaaS) Implement decision tree based models, an instance-based machine learning system, and integrate Scikit-learn? & Keras models with CoreML Machine Learning for iOS Developers is a must-have resource software engineers and mobile solutions architects wishing to learn ML concepts and implement machine learning on iOS Apps.… (mais)
Adicionado recentemente porSoLoLibrary, BigDaddy_JC, sholle7, jukofyork
Nenhum(a)
Carregando...

Registre-se no LibraryThing tpara descobrir se gostará deste livro.

Ainda não há conversas na Discussão sobre este livro.

Sem resenhas
sem resenhas | adicionar uma resenha
Você deve entrar para editar os dados de Conhecimento Comum.
Para mais ajuda veja a página de ajuda do Conhecimento Compartilhado.
Título canônico
Título original
Títulos alternativos
Data da publicação original
Pessoas/Personagens
Lugares importantes
Eventos importantes
Filmes relacionados
Epígrafe
Dedicatória
Primeiras palavras
Citações
Últimas palavras
Aviso de desambiguação
Editores da Publicação
Autores Resenhistas (normalmente na contracapa do livro)
Idioma original
CDD/MDS canônico
LCC Canônico

Referências a esta obra em recursos externos.

Wikipédia em inglês

Nenhum(a)

Harness the power of Apple iOS machine learning (ML) capabilities and learn the concepts and techniques necessary to be a successful Apple iOS machine learning practitioner! Machine earning (ML) is the science of getting computers to act without being explicitly programmed. A branch of Artificial Intelligence (AI), machine learning techniques offer ways to identify trends, forecast behavior, and make recommendations. The Apple iOS Software Development Kit (SDK) allows developers to integrate ML services, such as speech recognition and language translation, into mobile devices, most of which can be used in multi-cloud settings. Focusing on Apple ?s ML services, Machine Learning for iOS Developers is an up-to-date introduction to the field, instructing readers to implement machine learning in iOS applications. Assuming no prior experience with machine learning, this reader-friendly guide offers expert instruction and practical examples of ML integration in iOS. Organized into two sections, the book ?s clearly-written chapters first cover fundamental ML concepts, the different types of ML systems, their practical uses, and the potential challenges of ML solutions. The second section teaches readers to use models ?both pre-trained and user-built ?with Apple ?s CoreML framework. Source code examples are provided for readers to download and use in their own projects. This book helps readers: Understand the theoretical concepts and practical applications of machine learning used in predictive data analytics Build, deploy, and maintain ML systems for tasks such as model validation, optimization, scalability, and real-time streaming Develop skills in data acquisition and modeling, classification, and regression. Compare traditional vs. ML approaches, and machine learning on handsets vs. machine learning as a service (MLaaS) Implement decision tree based models, an instance-based machine learning system, and integrate Scikit-learn? & Keras models with CoreML Machine Learning for iOS Developers is a must-have resource software engineers and mobile solutions architects wishing to learn ML concepts and implement machine learning on iOS Apps.

Não foram encontradas descrições de bibliotecas.

Descrição do livro
Resumo em haiku

Current Discussions

Nenhum(a)

Capas populares

Links rápidos

Avaliação

Média: Sem avaliação.

É você?

Torne-se um autor do LibraryThing.

 

Sobre | Contato | LibraryThing.com | Privacidade/Termos | Ajuda/Perguntas Frequentes | Blog | Loja | APIs | TinyCat | Bibliotecas Históricas | Os primeiros revisores | Conhecimento Comum | 204,922,962 livros! | Barra superior: Sempre visível