Smart Analytics, Machine Learning, and AI on GCP en Espanol
The course's main objectives are to deploy solutions using Vertex AI and integrate machine learning into Google Cloud data pipelines, such as AutoML and BigQuery ML.
Description for Smart Analytics, Machine Learning, and AI on GCP en Espanol
Differentiating between Automated Analytics (AA), Artificial Intelligence (AI), and Deep Learning: Comprehend the distinctions between these technologies.
Unstructured Data Analysis with AA APIs: Discover the process of utilizing AA APIs to analyze unstructured data.
Executing BigQuery Commands from Notebooks: Acquire practical experience by executing BigQuery commands from notebooks.
Developing Machine Learning Models with SQL in BigQuery: Utilize SQL syntax in BigQuery to create machine learning models.
Level: Intermediate
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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