c4ai-command-r-08-2024

Maintainer: CohereForAI

Total Score

134

Last updated 9/29/2024

📈

PropertyValue
Run this modelRun on HuggingFace
API specView on HuggingFace
Github linkNo Github link provided
Paper linkNo paper link provided

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Model overview

C4AI Command R 08-2024 is a 35 billion parameter highly performant generative model developed by Cohere and Cohere For AI. The model is optimized for a variety of use cases including reasoning, summarization, and question answering. It has the capability for multilingual generation, trained on 23 languages and evaluated in 10 languages, as well as highly performant RAG capabilities.

The C4AI Command R+ model is an open weights research release of a 104 billion parameter model with even more advanced capabilities. This includes Retrieval Augmented Generation (RAG) and multi-step tool use, which allows the model to combine multiple tools over multiple steps to accomplish complex tasks.

Model inputs and outputs

Inputs

  • Text: The models take text input only.

Outputs

  • Text: The models generate text output only.

Capabilities

Both C4AI Command R and C4AI Command R+ have impressive capabilities, including strong performance on reasoning, summarization, and question answering tasks. The models also have advanced features like grounded generation, which allows them to generate responses that cite the sources of the information used, and conversational tool use, where the models can leverage external tools to assist in completing tasks.

C4AI Command R+ in particular stands out for its multi-step tool use capabilities, which enable it to combine multiple tools over multiple steps to tackle complex problems. This makes it a powerful tool for automating sophisticated workflows and tasks.

What can I use it for?

These models could be used in a wide variety of applications, such as:

  • Conversational AI: Both models can be used to power advanced chatbots and virtual assistants, leveraging their strong language understanding and generation capabilities.
  • Content Generation: The models can be used to generate high-quality text for applications like article writing, creative writing, and summarization.
  • Task Automation: The tool use capabilities of C4AI Command R+ make it well-suited for automating complex, multi-step workflows.
  • Research and Development: As open weights models, C4AI Command R and C4AI Command R+ can be used by researchers and developers to advance the state-of-the-art in language models and AI.

Things to try

Some interesting things to try with these models include:

  • Experiment with the different tool use and grounded generation capabilities to see how they can be leveraged for your specific use cases.
  • Explore the models' multilingual capabilities by testing them on a variety of languages.
  • Try using C4AI Command R+ for tasks that require combining multiple steps or tools, and see how it performs compared to other models.
  • Use the models for open-ended generation tasks and analyze the quality and coherence of the outputs.


This summary was produced with help from an AI and may contain inaccuracies - check out the links to read the original source documents!

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