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Integrating BigQuery with Anthropic’s Claude


The world’s most productive and innovative organizations rely on their trusted business data to inform their decision-making, operational efficiency, insights, and growth. Now, gen AI enters the equation, opening up possibilities to transform this wealth of information into an unprecedented competitive edge. 

Google Cloud has been at the forefront of integrating advanced gen AI capabilities directly within BigQuery, our gen AI-ready data platform. Organizations are already harnessing gen AI models like Gemini 1.5 Pro on Vertex AI within the BigQuery platform. And today, we’re extending Google Cloud’s open platform with the preview of BigQuery’s new integration with Anthropic’s Claude models on Vertex AI that connects your data in BigQuery with the powerful intelligence capabilities of Claude models.

Organizations can now access the power of Anthropic’s Claude models that offer advanced gen AI capabilities through BigQuery ML (BQML). BQML simplifies the application of machine learning to data within BigQuery, making it accessible to analysts and SQL users. This integration enables tasks such as text generation, summarization, translation, and more, to be performed directly on your data. 

Powerful use cases

BigQuery’s integration with Anthropic’s Claude models allows organizations to reimagine data-driven decision making and boost productivity across a variety of tasks including:

  1. Analyzing log data for enhanced security: Security teams can efficiently analyze log data in BigQuery, converting complex technical information into clear, readable form and generating appropriate response strategies.
  2. Marketing optimization: Marketing teams can now harness user and product data stored in BigQuery to generate targeted, data-driven campaigns at scale — helping to boost engagement and ROI.
  3. Document summarization: Organizations can streamline knowledge management by automatically summarizing internal documents stored in Google Cloud Storage, saving time and resources.
  4. Content localization: Global organizations can quickly translate text content stored in BigQuery, facilitating communication across language barriers.

Let’s further explore a couple of examples showcasing the possibilities of using Claude models in BigQuery.

Log summarization and recommendations

Organizations commonly store error log data in BigQuery for its ease of use, scalability, and advanced features such as search and vector indexes, which aid in log analytics. Combining your BigQuery data with the Claude models on Vertex AI can supercharge this use case. For example, organizations can efficiently summarize log entries and generate suggested fixes to streamline issue identification and resolution processes. 

Let’s see how:


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