Description for Summarizing Text using SQL and LLMs in BigQuery ML
Summarization of Source Code: Acquire the skills to utilize Vertex AI's LLM for producing succinct summaries of source code from GitHub sources.
Identification of Programming Languages: Identify techniques for the automatic detection of programming languages utilized in GitHub repositories.
Practical Experience with Google Cloud Console: This laboratory provides hands-on, self-directed experience within the Google Cloud terminal environment.
Text Generation Utilizing Vertex AI LLM: Acquire familiarity with Vertex AI's functionalities in text creation for programming assignments.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 1
Offered by: On Coursera provided by Google Cloud
Duration: 60 minutes
Schedule: Hands-on learning
Pricing for Summarizing Text using SQL and LLMs in BigQuery ML
Use Cases for Summarizing Text using SQL and LLMs in BigQuery ML
FAQs for Summarizing Text using SQL and LLMs in BigQuery ML
Reviews for Summarizing Text using SQL and LLMs in BigQuery ML
0 / 5
from 0 reviews
Ease of Use
Ease of Customization
Intuitive Interface
Value for Money
Support Team Responsiveness
Alternative Tools for Summarizing Text using SQL and LLMs in BigQuery ML
The AI tool empowers non-programmers to construct and deploy AI, featuring data transformation, insights generation, identification of critical drivers, and prediction and forecasting functionalities to enhance business decision-making and planning processes.
CensusGPT is an AI tool that simplifies access to census data, offering tabular data and visual representations in response to user queries. It targets economists, researchers, and individuals interested in demographic analysis, leveraging the TextSQL framework for seamless interaction with datasets.
The AI data analysis tool offers real-time insights and collaboration, integrated with security features, although users may face limitations with complex inquiries and integration requirements.
Coginiti's AI-Assisted SQL Development boosts SQL development efficiency with instant query assistance and optimization, alongside on-demand learning resources, while facing integration restrictions and an initial learning curve.
AskYourDatabase facilitates conversational interactions with SQL and NoSQL databases, offering insights, visualization, and analysis features, with support for major databases and integrations like ChatGPT and Excel.
Vanna.ai, an open-source Python-based AI SQL agent, swiftly generates complex SQL queries, supporting various databases and integration options for efficient database operations and insights extraction.
NLSQL is an AI utility that offers an intuitive text interface and NLP SQL API for personnel to make data-driven decisions, with real-time access to critical healthcare data and instant results.
Avanti is a Chrome extension that enhances data analyst work with Metabase, offering features such as SQL query generation, formatting, and intelligent AI capabilities, with a focus on data security and complimentary trial access during development.
The chatbot, designed for SQL discussions, integrates with the OpenAI API to connect with local browsers for data storage, providing users with a seamless experience and enabling more robust SQL conversations.
LogicLoop's AI SQL query copilot leverages AI technology to swiftly generate SQL queries from plain text, offering comprehensive functionality for efficient data analysis tasks.
Featured Tools
The training combines ISO/IEC 42001 compliance with ethical and efficient AI techniques to provide an organized and responsible approach to AI management.
Gain a comprehensive understanding of the principles of reinforcement learning. Develop a comprehensive RL solution and comprehend the application of AI tools to address real-world issues.
The purpose of this course is to provide students with the opportunity to develop practical, cloud-based machine learning skills. It focuses on the use of Apache Spark to teach logistic regression modeling on Google Cloud.
Gain the skills needed for a machine learning engineering role and prepare for the Google Cloud Professional Machine Learning Engineer certification exam by learning to design, build, and productize ML models using Google Cloud technologies.
Master logistic regression for cancer classification, dataset acquisition via Kaggle API, and cloud-based development with Google Colab.