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Generators vs Chat Generators

This page explains the difference between Generators and Chat Generators in Haystack. It emphasizes choosing the right Generator based on the use case and model.

Input/Output

GeneratorsChat Generators
InputsString (a prompt)A list of ChatMessages
OutputsTextChat Message (in “replies)

Pick the Right Class

Overview

The choice between Generators (or text Generators) and Chat Generators depends on your use case and the underlying model.

As highlighted by the different input and output characteristics above, Generators and Chat Generators are distinct, often interacting with different models through calls to different APIs. Therefore, they are not automatically interchangeable.

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Multi-turn Interactions

If you anticipate a two-way interaction with the Language Model in a chat scenario, opting for a Chat Generator is generally better. This choice ensures a more structured and straightforward interaction with the Language Model.

Chat Generators use Chat Messages. They can accommodate roles like "system", "user", "assistant", and even "function", enabling a more structured and nuanced interaction with Language Models. Chat Generators can handle many interactions, including complex queries, mixed conversations using tools, resolving function names and parameters from free text, and more. The format of Chat Messages is also helpful in reducing off-topic responses. Chat Generators are better at keeping the conversation on track by providing a consistent context.

Function Calling

Some Chat Generators allow to leverage the function-calling capabilities of the models by passing tool/function definitions.

If you'd like to learn more, read the introduction to Function Calling in our docs.

Or, you can find more information in relevant providers’ documentation:

Compatibility Exceptions

In such cases, opting for a Chat Generator simplifies the process, as Haystack handles the conversion of Chat Messages to a prompt that’s fit for the selected model.

No Corresponding Chat Generator

If a Generator does not have a corresponding Chat Generator, this does not imply that the Generator cannot be utilized in a chat scenario.

For example, LlamaCppGenerator can be used with both chat and non-chat models.
However, without the ChatMessage data class, you need to pay close attention to the model's prompt template and adhere to it.

Chat (Prompt) Template

The chat template may be available on the Model card on Hugging Face for open Language Models in a human-readable form.
See an example for argilla/notus-7b-v1 model on the Hugging Face.

Usually, it is also available as a Jinja template in the tokenizer_config.json.
Here’s an example for argilla/notus-7b-v1:

{% for message in messages %}\n{% if message['role'] == 'user' %}\n{{ '<|user|>\n' + message['content'] + eos_token }}\n{% elif message['role'] == 'system' %}\n{{ '<|system|>\n' + message['content'] + eos_token }}\n{% elif message['role'] == 'assistant' %}\n{{ '<|assistant|>\n'  + message['content'] + eos_token }}\n{% endif %}\n{% if loop.last and add_generation_prompt %}\n{{ '<|assistant|>' }}\n{% endif %}\n{% endfor %}

Different Types of Language Models

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Topic Exploration

This field is young, constantly evolving, and distinctions are not always possible and precise.

The training of Generative Language Models involves several phases, yielding distinct models.

From Pretraining to Base Language Models

In the pretraining phase, models are trained on vast amounts of raw text in an unsupervised manner. During this stage, the model acquires the ability to generate statistically plausible text completions.

For instance, given the prompt “What is music...” the pretrained model can generate diverse plausible completions:

  • Adding more context: “...to your ears?”
  • Adding follow-up questions: “? What is sound? What is harmony?”
  • Providing an answer: “Music is a form of artistic expression…”

The model that emerges from this pretraining is commonly referred to as the base Language Model.
Examples include meta-llama/Llama-2-70b and mistralai/Mistral-7B-v0.1.

Using base Language Models is infrequent in practical applications, as they cannot follow instructions or engage in conversation.

If you want to experiment with them, use the Haystack text Generators.

Supervised Fine Tuning (SFT) and Alignment with Human Preferences

To make the language model helpful in real applications, two additional training steps are usually performed.

  • Supervised Fine Tuning: The language Model is further trained on a dataset containing instruction-response pairs or multi-turn interactions. Depending on the dataset, the model can acquire the capability to follow instructions or engage in chat.
    If model training stops at this point, it may perform well on some benchmarks, but it does not behave in a way that aligns with human user preferences.
  • Alignment with Human Preferences: This crucial step ensures that the Language Model aligns with human intent. Various techniques, such as RLHF and DPO, can be employed.
    To learn more about these techniques and this evolving landscape, you can read this blog post.

After these phases, a Language Model suitable for practical applications is obtained.
Examples include meta-llama/Llama-2-70b-chat-hf and mistralai/Mistral-7B-Instruct-v0.2.

Instruct vs Chat Language Models

Instruct models are trained to follow instructions, while Chat models are trained for multi-turn conversations.

This information is sometimes evident in the model name (meta-llama/Llama-2-70b-chat-hf, mistralai/Mistral-7B-Instruct-v0.2) or within the accompanying model card.

  • For Chat Models, employing Chat Generators is the most natural choice.
  • Should you opt to utilize Instruct models for single-turn interactions, turning to text Generators is recommended.

It's worth noting that many recent Instruct models are equipped with a chat template. An example of this is mistralai/Mistral-7B-Instruct-v0.2 chat template.

Utilizing a Chat Generator is the optimal choice if the model features a Chat template and you intend to use it in chat scenarios. In these cases, you can expect out-of-the-box support for Chat Messages, and you don’t need to manually apply the aforementioned template.

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Caution

The distinction between Instruct and Chat models is not a strict dichotomy.

  • Following pre-training, Supervised Fine Tuning (SFT) and Alignment with Human Preferences can be executed multiple times using diverse datasets. In some cases, the differentiation between Instruct and Chat models may not be particularly meaningful.
  • Some open Language Models on Hugging Face lack explicit indications of their nature.