MetaLlama 3.2fast

Llama 3.2 1B Instruct

Llama 3.2 1B is a 1-billion-parameter language model focused on efficiently performing natural language tasks, such as summarization, dialogue, and multilingual text analysis. Its smaller size allows it to operate efficiently in low-resource environments while maintaining strong task performance. Supporting eight core languages and fine-tunable for more, Llama 1.3B is ideal for businesses or developers seeking lightweight yet powerful AI solutions that can operate in diverse multilingual settin

60K context·~45K words·
Context window60Ktokens

Context window

This model accepts 60K tokens in one request (~45K words of text).

Context window size60K tokens
4K32K128K1M10M

What fits in one request

  • Short document
    About 1,500 words of text
    Fits
  • Long document
    About 37K words of text
    Fits
  • Small codebase
    About 150K words of text
    Won't fit
  • Full novel
    About 375K words of text
    Won't fit

Specifications

Context size, pricing, and release info in one place.

Context window
60,000 tokens (60K)
Speed tier
fast
Provider
Meta
Model family
Llama 3.2
Release date
Sep 2024

Capabilities

See which features this model supports, such as vision, tools, and streaming.

Supported (1)
Streaming
Supported
Not supported (7)
Vision
Not supported
Tool use
Not supported
Function calling
Not supported
Extended thinking
Not supported
Web search
Not supported
Batch API
Not supported
Prompt caching
Not supported

Best for

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Frequently asked questions

Short answers about context size and how this model behaves.

Llama 3.2 1B Instruct has a context window of 60K tokens (60,000 tokens). This is sufficient for most chat, summarization, and moderate document tasks.

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