Ai & Machine Learning

How Google does ML en Espanol

(0 reviews)
Share icon
Coursera

The primary objective of the course is to emphasize responsible AI and best practices in the development of machine learning models using Vertex AI.

Key AI Functions:ai & machine learning, google cloud, vertex ai, responsible ai

Description for How Google does ML en Espanol

  • Overview of the Vertex AI Platform: Learn how to construct, train, and deploy AutoML models without the need to write any code.

  • Best Practices for Machine Learning on Google Cloud: Discover the most effective methods for integrating machine learning into the Google Cloud environment.

  • Google Cloud Platform Tools: Utilize a variety of tools and environments offered by Google Cloud to efficiently perform AA (AutoML).

  • Responsible AI Practices: Learn the most effective methods for ensuring the responsible use of AI and how to identify potential biases in machine learning.

Level: Intermediate

Certification Degree: Yes

Languages the Course is Available: 1

Offered by: On Coursera provided by Google Cloud

Duration: 3 weeks at 5 hours a week

Schedule: Flexible

Reviews for How Google does ML en Espanol

0 / 5

from 0 reviews

Ease of Use

Ease of Customization

Intuitive Interface

Value for Money

Support Team Responsiveness

Alternative Tools for How Google does ML en Espanol

Gain experience creating safe, compliant GCP systems, configuring resources, streamlining procedures, and studying for the Professional Cloud Architect test.

#gcp #cloud architecture
Visit icon

This specific course emphasizes the integration of machine learning and AI with big data administration, utilizing Google Cloud services.

#cloud computing #google cloud
Visit icon

Develop advanced AI techniques, including prompt engineering and chatbot development, as well as master large language models and their implementation on Google Cloud.

#artificial intelligence #data science
Visit icon

Learners will have the ability to utilize Vertex AI to develop machine learning models and big data pipelines on Google Cloud.

#google cloud #machine learning
Visit icon

This course instructs on integrating machine learning into data pipelines utilizing BigQuery ML, AutoML, and Vertex AI, emphasizing model development and deployment on Google Cloud.

#google cloud #artificial intelligence
Visit icon

Learn about the foundational AI and ML concepts and Google Cloud's offerings to explore the future of business technology.

#google cloud #artificial intelligence
Visit icon

Define Large Language Models and their use cases, explain prompt tuning, and overview tools for Gen AI development at Google.

#Large Language Models #LLMs
Visit icon

Utilizing Vertex AI Studio for model management, integrating with Gemini multimodal capabilities, employing effective prompts, and optimizing models through tuning methods are all topics addressed on the course page.

#Vertex AI #Gemini
Visit icon

Acquire the ability to differentiate between static and dynamic training and inference, manage model dependencies, establish distributed training for defect tolerance and replication, and generate exportable models.

#Machine Learning #Google Cloud
Visit icon