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ZBrain credits and their usage
A credit is a unit of usage on ZBrain. Credits are consumed whenever you perform actions such as embedding documents or querying an app. Here’s how credits are utilized:
Document Embedding:
When you upload a document, it is processed and embedded to create a searchable vector representation. This step consumes credits based on the size of the document and the embedding model used.
Input Processing:
When you ask a question, the relevant context is retrieved from the embeddings and processed by the Large Language Model (LLM). This step incurs a credit cost based on the model and the number of input tokens.
Generating Output
The LLM then generates a response based on the processed input, consuming additional credits based on the number of output tokens.
The cost in credits for various models and processes is detailed below:
Models and Credit Consumption:
Model
Input Cost
Output Cost
GPT-4o
2,500 credits / 1M tokens
7,500 credits / 1M tokens
GPT-4
15,000 credits / 1M tokens
30,000 credits / 1M tokens
GPT-4-32k
30,000 credits / 1M tokens
60,000 credits / 1M tokens
GPT-3.5 Turbo
250 credits / 1M tokens
750 credits / 1M tokens
Embedding Models:
Model
Input Cost
text-embedding-3-small
20 credits / 1M tokens
text-embedding-3-large
130 credits / 1M tokens
ada v2
100 credits / 1M tokens
When you create a knowledge base or query an app, credits are deducted based on the embedding, input, and output token usage. This ensures you only pay for what you use while leveraging the full power of advanced AI models.