Storm OpenAPI(en)
  1. Console
Storm OpenAPI(en)
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  1. Console

Dashboard

Dashboard#

The dashboard aggregates data in real-time and allows you to view statistics by day, week, or month. For more detailed analytics, you can download the full dataset as an Excel file.
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View records of agent calls during the selected period, organized by agent.

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Check LLM usage over the selected period.
Input and Output tokens are tracked separately for each LLM model used.

đź’ˇ LLM Tokens

Tokens are the fundamental units that AI language models use to process text.
They are smaller than words—typically, one token equals about 4–5 English characters, while Korean text may produce more tokens.

Input Tokens vs Output Tokens#

Input Tokens: The number of tokens in the user’s input text to the AI.
Output Tokens: The number of tokens generated by the AI’s response.

Relation to Cost#

Most AI services charge based on token usage.
Input and output tokens are often priced differently, with output tokens usually costing more.
Therefore, writing efficient prompts directly contributes to cost savings.
Modified at 2025-10-20 05:35:03
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