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    • Combining Functions
    • Example: List, Browsing a...
    # Combining Functions Each of PromptLoop's functions accomplish specific tasks very well. They can also be effectively used together to accomplish multi-step workflows. ## Example: List, Browsing and Labeling One common way functions are combined is to retrieve text with the Promptloop browser and then analyze and bucket it with the Label function. This combines AI web browsing with accurate and specific AI text labeling. This pipeline can serve as a replacement for human research and summary pipelines and can easily and quickly populate data for reports, research tasks, and more. To get the most out of each row, leverage both the **verbose** and **source** options in the browser. Once the information you are looking for is returned you can use the labeling function to drop various rows and data points into buckets. Once bucketed you can use a SUMIF, Pivot Table, or any other standard tools to process the information you gathered. <Callout title="Combining Multiple AI models"> Web Browsing Label Pivot Table </Callout> <Image src='https://web-public-photos.s3.amazonaws.com/excel-multi-browsing.jpg' alt='Text Labeling' width={600} height={320} />

    Combining Functions

    Each of PromptLoop's functions accomplish specific tasks very well. They can also be effectively used together to accomplish multi-step workflows.

    Example: List, Browsing and Labeling#

    One common way functions are combined is to retrieve text with the Promptloop browser and then analyze and bucket it with the Label function. This combines AI web browsing with accurate and specific AI text labeling. This pipeline can serve as a replacement for human research and summary pipelines and can easily and quickly populate data for reports, research tasks, and more.

    To get the most out of each row, leverage both the verbose and source options in the browser. Once the information you are looking for is returned you can use the labeling function to drop various rows and data points into buckets. Once bucketed you can use a SUMIF, Pivot Table, or any other standard tools to process the information you gathered.

    Combining Multiple AI models

    Web Browsing Label Pivot Table

    Text Labeling