Applying Machine Learning to your Data with Google Cloud
An overview of machine learning for business applications is provided in this course, which instructs participants on the development and utilization of ML models with BigQuery.
Description for Applying Machine Learning to your Data with Google Cloud
Fundamentals of Machine Learning Principles: Acquire knowledge of machine learning, its advantages for enterprises, and essential terminology, like instances, features, and labels.
Pre-trained VS Custom Machine Learning Models: Understand the distinctions between employing pre-trained models and constructing unique models, as well as the suitable contexts for each.
Creation of Datasets in BigQuery: Create machine learning datasets natively in BigQuery, facilitating data preparation for subsequent model development.
Constructing Machine Learning Models Utilizing BigQuery SQL: Utilize BigQuery ML to generate machine learning models exclusively with SQL, hence streamlining the model creation process.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 1
Offered by: On Coursera provided by Google Cloud
Duration: 3 weeks at 2 hours a week
Schedule: Flexible
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