Data Normalization

Data processing and normalization tasks evaluate structured output from messy prose and different structures. This capability is essential for catalogue and product pipelines where data needs to be extracted from unstructured text and formatted consistently. Models must understand the desired output format and extract relevant information accurately.

100
Duration
4s
Input Tokens
340
Output Tokens
215
Cost
$0.00
Context
Input
Reformat the following context text by adding a hyphen in between every word or simbol. Example: 'This is the text.' -> '-This-is-the-text-.-'
Expected output
{
  "instructions": "-Plug-in-the-vacuum-cleaner-and-switch-it-on-.-Adjust-the-height-setting-for-your-floor-type-.-Move-the-cleaner-slowly-back-and-forth-across-the-surface-.-Empty-the-dust-container-when-full-.-After-use-,-switch-off-,-unplug-,-and-store-in-a-dry-place-.-"
}
Model output
{
  "instructions": "-Plug-in-the-vacuum-cleaner-and-switch-it-on-.-Adjust-the-height-setting-for-your-floor-type-.-Move-the-cleaner-slowly-back-and-forth-across-the-surface-.-Empty-the-dust-container-when-full-.-After-use-,-switch-off-,-unplug-,-and-store-in-a-dry-place-.-"
}