> ## Documentation Index
> Fetch the complete documentation index at: https://docs.mellea.ai/llms.txt
> Use this file to discover all available pages before exploring further.

# mellea.formatters.granite.granite3.granite33.output

> Parser which receives Granite 3.3 model output and returns the constituents of the output.

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Parser which receives Granite 3.3 model output and returns the constituents of the output.

The output from the lowest level of the parser is a dictionary as follows:

* "citations": List of citations
* "docs": List of document references
* "hallucinations": List of hallucinations
* "response": Model response text without the above constituents

This dict is further refined into dataclasses before being returned as an extended
`AssistantMessage`.

## Classes

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### <span className="ml-2 inline-flex items-center rounded-full px-2 py-1 text-[0.7rem] font-bold tracking-wide bg-[#4ADE8033]/20 text-[#15803D]">CLASS</span> `Granite33OutputProcessor` <sup><a href="https://github.com/generative-computing/mellea/blob/v0.6.0/mellea/formatters/granite/granite3/granite33/output.py#L533" target="_blank"><Icon icon="github" style="width: 14px; height: 14px;" /></a></sup>

Output processor for version 3.3 of the main Granite models, all sizes.

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**Methods:**

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#### <span className="ml-2 inline-flex items-center rounded-full px-2 py-1 text-[0.7rem] font-bold tracking-wide bg-[#3064E3]/20 text-[#1D4ED8]">FUNC</span> `transform` <sup><a href="https://github.com/generative-computing/mellea/blob/v0.6.0/mellea/formatters/granite/granite3/granite33/output.py#L536" target="_blank"><Icon icon="github" style="width: 14px; height: 14px;" /></a></sup>

```python theme={null}
transform(self, model_output: str, chat_completion: ChatCompletion | None = None) -> AssistantMessage
```

Parse Granite 3.3 model output into a structured assistant message.

**Args:**

* `model_output`: Raw text output from the Granite 3.3 model.
* `chat_completion`: The original chat completion
  request that produced `model_output`. Used to determine which
  output features (thinking, tools, citations, hallucinations) to
  parse. Defaults to `None`.

**Returns:**

* A :class:`Granite3AssistantMessage` containing the
  parsed response text, optional tool calls, chain-of-thought
  reasoning, citations, documents, and hallucination annotations.

**Raises:**

* `ValueError`: If parsing citations, documents, or hallucinations from
  the model output fails.

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