Curso Machine Learning on Google Cloud
- Cas-Training
- Tipo : Cursos
- Modalidad: Semi-Presencial en Madrid
- Duración: 35 horas
- Precio:
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Curso Machine Learning on Google Cloud
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Sede principal del centro
- MadridSede principal
Calle de la Basílica 19
Madrid - 28020, Madrid
Dirigido a:
Este curso está dirigido, principalmente, a los siguientes participantes:
-Aspirantes a analistas de datos de machine learning, científicos de datos e ingenieros de datos.
-Personas que deseen aprender sobre machine learning mediante Vertex AI AutoML, BQML, Feature Store, Workbench, Dataflow, Vizier para el ajuste de hiperparámetros, y TensorFlow/Keras.
Requisitos
-Estar familiarizado con los conceptos básicos de machine learning.
-Tener un dominio básico de un lenguaje de secuencias de comandos, preferiblemente Python.
Comentarios:
El Leer más
Este curso está dirigido, principalmente, a los siguientes participantes:
-Aspirantes a analistas de datos de machine learning, científicos de datos e ingenieros de datos.
-Personas que deseen aprender sobre machine learning mediante Vertex AI AutoML, BQML, Feature Store, Workbench, Dataflow, Vizier para el ajuste de hiperparámetros, y TensorFlow/Keras.
Requisitos
-Estar familiarizado con los conceptos básicos de machine learning.
-Tener un dominio básico de un lenguaje de secuencias de comandos, preferiblemente Python.
Comentarios:
El Leer más
Curso 1: How Google Does Machine Learning
-What are best practices for implementing machine learning on Google Cloud? What is Vertex AI and how can you use the platform to quickly build, train, and deploy AutoML machine learning models without writing a single line of code? What is machine learning, and what kinds of problems can it solve?
-Google thinks about machine learning slightly differently: it’s about providing a unified platform for managed datasets, a feature store, a way to build, train, and deploy machine learning models without writing a single line of code, providing the ability to label data, create Workbench notebooks using frameworks such as TensorFlow, SciKit Learn, Pytorch, R, and others. Our Vertex AI Platform also includes the ability to train custom models, build component pipelines, and perform both online and batch predictions. We also discuss the five phases of converting a candidate use case to be driven by machine learning, and consider why it is important to not skip the phases. We end with a recognition of the biases that machine learning can amplify and how to recognize them.
-Describe the Vertex AI Platform and how it is used to quickly build, train, and deploy AutoML machine learning models without writing a single line of code.
-Describe best practices for implementing machine learning on Google Cloud.
-Develop a data strategy around machine learning.
-Examine use cases that are then reimagined through an ML lens.
-Leverage Google Cloud Platform tools and environment to do ML.
-Learn from Google's experience to avoid common pitfalls.
-Carry out data science tasks in online collaborative notebooks.
Curso 2: Launching into Machine Learning
The course begins with a discussion about data: how to improve data quality and perform exploratory data analysis. We describe Vertex AI AutoML and how to build, train, and deploy an ML model without writing a single line of code. You will understand the benefits of Big Query ML. We then discuss how to optimize a machine learning (ML) model and how generalization and sampling can help assess the quality of ML models for custom training.
-Describe Vertex AI AutoML and how to build, train, and deploy an ML model without writing a single line of code.
-Describe Big Query ML and its benefits.
-Describe how to improve data quality.
-Perform exploratory data analysis.
-Build and train supervised learning models.
-Optimize and evaluate models using loss functions and performance metrics.
-Mitigate common problems that arise in machine learning.
-Create repeatable and scalable training, evaluation, and test datasets.
Curso 3: TensorFlow on Leer más
-What are best practices for implementing machine learning on Google Cloud? What is Vertex AI and how can you use the platform to quickly build, train, and deploy AutoML machine learning models without writing a single line of code? What is machine learning, and what kinds of problems can it solve?
-Google thinks about machine learning slightly differently: it’s about providing a unified platform for managed datasets, a feature store, a way to build, train, and deploy machine learning models without writing a single line of code, providing the ability to label data, create Workbench notebooks using frameworks such as TensorFlow, SciKit Learn, Pytorch, R, and others. Our Vertex AI Platform also includes the ability to train custom models, build component pipelines, and perform both online and batch predictions. We also discuss the five phases of converting a candidate use case to be driven by machine learning, and consider why it is important to not skip the phases. We end with a recognition of the biases that machine learning can amplify and how to recognize them.
-Describe the Vertex AI Platform and how it is used to quickly build, train, and deploy AutoML machine learning models without writing a single line of code.
-Describe best practices for implementing machine learning on Google Cloud.
-Develop a data strategy around machine learning.
-Examine use cases that are then reimagined through an ML lens.
-Leverage Google Cloud Platform tools and environment to do ML.
-Learn from Google's experience to avoid common pitfalls.
-Carry out data science tasks in online collaborative notebooks.
Curso 2: Launching into Machine Learning
The course begins with a discussion about data: how to improve data quality and perform exploratory data analysis. We describe Vertex AI AutoML and how to build, train, and deploy an ML model without writing a single line of code. You will understand the benefits of Big Query ML. We then discuss how to optimize a machine learning (ML) model and how generalization and sampling can help assess the quality of ML models for custom training.
-Describe Vertex AI AutoML and how to build, train, and deploy an ML model without writing a single line of code.
-Describe Big Query ML and its benefits.
-Describe how to improve data quality.
-Perform exploratory data analysis.
-Build and train supervised learning models.
-Optimize and evaluate models using loss functions and performance metrics.
-Mitigate common problems that arise in machine learning.
-Create repeatable and scalable training, evaluation, and test datasets.
Curso 3: TensorFlow on Leer más