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Maritalk

docs/examples/llm/maritalk.ipynb

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Maritalk

Introduction

MariTalk is an assistant developed by the Brazilian company Maritaca AI. MariTalk is based on language models that have been specially trained to understand Portuguese well.

This notebook demonstrates how to use MariTalk with Llama Index through two examples:

  1. Get pet name suggestions with chat method;
  2. Classify film reviews as negative or positive with few-shot examples with complete method.

Installation

If you're opening this Notebook on colab, you will probably need to install LlamaIndex.

python
!pip install llama-index
!pip install llama-index-llms-maritalk
!pip install asyncio

API Key

You will need an API key that can be obtained from chat.maritaca.ai ("Chaves da API" section).

Example 1 - Pet Name Suggestions with Chat

python
from llama_index.core.llms import ChatMessage
from llama_index.llms.maritalk import Maritalk

import asyncio

# To customize your API key, do this
# otherwise it will lookup MARITALK_API_KEY from your env variable
llm = Maritalk(api_key="<your_maritalk_api_key>", model="sabia-2-medium")

# Call chat with a list of messages
messages = [
    ChatMessage(
        role="system",
        content="You are an assistant specialized in suggesting pet names. Given the animal, you must suggest 4 names.",
    ),
    ChatMessage(role="user", content="I have a dog."),
]

# Sync chat
response = llm.chat(messages)
print(response)


# Async chat
async def get_dog_name(llm, messages):
    response = await llm.achat(messages)
    print(response)


asyncio.run(get_dog_name(llm, messages))

Stream Generation

For tasks involving the generation of long text, such as creating an extensive article or translating a large document, it can be advantageous to receive the response in parts, as the text is generated, instead of waiting for the complete text. This makes the application more responsive and efficient, especially when the generated text is extensive. We offer two approaches to meet this need: one synchronous and another asynchronous.

python
# Sync streaming chat
response = llm.stream_chat(messages)
for chunk in response:
    print(chunk.delta, end="", flush=True)


# Async streaming chat
async def get_dog_name_streaming(llm, messages):
    async for chunk in await llm.astream_chat(messages):
        print(chunk.delta, end="", flush=True)


asyncio.run(get_dog_name_streaming(llm, messages))

Example 2 - Few-shot Examples with Complete

We recommend using the llm.complete() method when using the model with few-shot examples

python
prompt = """Classifique a resenha de filme como "positiva" ou "negativa".

Resenha: Gostei muito do filme, é o melhor do ano!
Classe: positiva

Resenha: O filme deixa muito a desejar.
Classe: negativa

Resenha: Apesar de longo, valeu o ingresso..
Classe:"""

# Sync complete
response = llm.complete(prompt)
print(response)


# Async complete
async def classify_review(llm, prompt):
    response = await llm.acomplete(prompt)
    print(response)


asyncio.run(classify_review(llm, prompt))
python
# Sync streaming complete
response = llm.stream_complete(prompt)
for chunk in response:
    print(chunk.delta, end="", flush=True)


# Async streaming complete
async def classify_review_streaming(llm, prompt):
    async for chunk in await llm.astream_complete(prompt):
        print(chunk.delta, end="", flush=True)


asyncio.run(classify_review_streaming(llm, prompt))