Ai & Machine Learning

Smart Analytics, Machine Learning, and AI on GCP en Espanol

(0 reviews)
Share icon
Coursera

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.

Key AI Functions:big data, bigquery, machine learning, google cloud platform, ai_machine_learning, ai & machine learning

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

Reviews for Smart Analytics, Machine Learning, and AI on GCP en Espanol

0 / 5

from 0 reviews

Ease of Use

Ease of Customization

Intuitive Interface

Value for Money

Support Team Responsiveness

Alternative Tools for Smart Analytics, Machine Learning, and AI on GCP en Espanol

Gain extensive knowledge in AI technologies relevant to digital marketing, involving precise data analysis, content creation, and tools for optimizing social media and consumer segmentation.

#social media #market research
Visit icon

Gain an extensive understanding of TinyML applications, fundamental principles, and the ethical development of artificial intelligence.

#artificial neural networks #smartphone operation
Visit icon

In this course, students gain the skills necessary to use Python for data science, machine learning, and foundational applications of artificial intelligence.

#scientific methods #data science
Visit icon

This course is dedicated to the setting up of GPU-based environments, the deployment of local large language models (LLMs), and their integration into Python applications utilizing open-source tools.

#llm #local llm
Visit icon

Learn proficiency in the construction, deployment, and safeguarding of large language models at scale, utilizing Rust, Amazon Web Services (AWS), and established DevOps best practices.

#llmops #devops
Visit icon

Develop expertise in the exposure and deployment of large language models via application programming interfaces (APIs), configure server environments, and incorporate natural language processing (NLP) functionalities into applications.

#llamafile #api
Visit icon

Learn the skills necessary to operate, optimize, and implement large language models through practical experience with state-of-the-art LLM architectures and open-source resources.

#opensource #llm
Visit icon

Gain proficiency in the automation of software development processes through the utilization of generative artificial intelligence, AI-assisted programming, MLOps, and Amazon Web Services.

#gen ai #software development
Visit icon

Study the ethical consequences of AI development and implementation, emphasizing generative AI, AI governance, and pragmatic ethical decision-making in practical contexts.

#artificial intelligence #machine learning
Visit icon

A thorough grasp of artificial intelligence (AI) and machine learning, including its various forms, methods, and applications, is given in this course.

#artificial intelligence #data science
Visit icon