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Home / Models / OpenChat 3.5

OpenChat 3.5

by OpenChat

8
KYI Score

C-RLFT trained model achieving strong performance with efficient training.

LLMApache 2.0FREE7B
Official WebsiteHugging Face

Quick Facts

Model Size
7B
Context Length
8K tokens
Release Date
Nov 2023
License
Apache 2.0
Provider
OpenChat
KYI Score
8/10

Best For

→Chatbots
→Assistants
→Content generation
→General tasks

Performance Metrics

Speed

9/10

Quality

7/10

Cost Efficiency

10/10

Specifications

Parameters
7B
Context Length
8K tokens
License
Apache 2.0
Pricing
free
Release Date
November 2, 2023
Category
llm

Key Features

C-RLFT trainingEfficientFastGood performance

Pros & Cons

Pros

  • ✓Excellent for size
  • ✓Fast
  • ✓Apache 2.0
  • ✓Efficient training

Cons

  • !Smaller model
  • !Limited capabilities
  • !Shorter context

Ideal Use Cases

Chatbots

Assistants

Content generation

General tasks

OpenChat 3.5 FAQ

What is OpenChat 3.5 best used for?

OpenChat 3.5 excels at Chatbots, Assistants, Content generation. Excellent for size, making it ideal for production applications requiring llm capabilities.

How does OpenChat 3.5 compare to other models?

OpenChat 3.5 has a KYI score of 8/10, with 7B parameters. It offers excellent for size and fast. Check our comparison pages for detailed benchmarks.

What are the system requirements for OpenChat 3.5?

OpenChat 3.5 with 7B requires appropriate GPU memory. Smaller quantized versions can run on consumer hardware, while full precision models need enterprise GPUs. Context length is 8K tokens.

Is OpenChat 3.5 free to use?

Yes, OpenChat 3.5 is free and licensed under Apache 2.0. 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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