Nous Capybara
by Nous Research
Long-context model optimized for extended conversations and documents.
Quick Facts
- Model Size
- 34B
- Context Length
- 200K tokens
- Release Date
- Jan 2024
- License
- Yi License
- Provider
- Nous Research
- KYI Score
- 8.5/10
Best For
Performance Metrics
Speed
Quality
Cost Efficiency
Specifications
- Parameters
- 34B
- Context Length
- 200K tokens
- License
- Yi License
- Pricing
- free
- Release Date
- January 26, 2024
- Category
- llm
Key Features
Pros & Cons
Pros
- ✓Exceptional context length
- ✓Good performance
- ✓Versatile
Cons
- !Restrictive license
- !Resource intensive for long context
Ideal Use Cases
Long documents
Extended conversations
Analysis
Research
Nous Capybara FAQ
What is Nous Capybara best used for?
Nous Capybara excels at Long documents, Extended conversations, Analysis. Exceptional context length, making it ideal for production applications requiring llm capabilities.
How does Nous Capybara compare to other models?
Nous Capybara has a KYI score of 8.5/10, with 34B parameters. It offers exceptional context length and good performance. Check our comparison pages for detailed benchmarks.
What are the system requirements for Nous Capybara?
Nous Capybara with 34B requires appropriate GPU memory. Smaller quantized versions can run on consumer hardware, while full precision models need enterprise GPUs. Context length is 200K tokens.
Is Nous Capybara free to use?
Yes, Nous Capybara is free and licensed under Yi License. You can deploy it on your own infrastructure without usage fees or API costs, giving you full control over your AI deployment.
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