Compare
Llama 2 13b Chat vs Llama 4 Scout 17b 16e Instruct Fp8
This page is context-first: how much text each model can take in one request. Full specs adds capabilities and limits; the pricing matrix below is only about $/million tokens from hosts that list both models.
Model
Llama 4 Scout 17b 16e Instruct Fp8
Context window
10M
10,000,000 tokens · ~7.5M words
Context window · side by side
Bar length is relative to the larger of the two windows (100% = max of this pair). This is not pricing.
Llama 4 Scout 17b 16e Instruct Fp8 has about 2441.4× the context window of the other in this pair.
Llama 4 Scout 17b 16e Instruct Fp8 has 244040% more context capacity (10000K vs 4K tokens).
Quick verdicts
Short takeaways — validate with your own workloads.
Long document processing
Use Llama 4 Scout 17b 16e Instruct Fp8. Its 10000K context fits entire documents without chunking (vs 4K).
Long output (reports, code files)
Use Llama 2 13b Chat. Its 4K max output lets you generate complete artifacts in one request.
Full specs
Context, output, capabilities, and dates. Green highlights the favorable value where we compute a winner.
| Spec | Llama 2 13b Chat | Llama 4 Scout 17b 16e Instruct Fp8 |
|---|---|---|
| Context window | 4,096 tokens (4K) | 10,000,000 tokens (10000K) |
| Max output tokens | 4,096 tokens (4K) | 4,028 tokens (4K) |
| Speed tier | Fast | Fast |
| Vision | No | No |
| Function calling | No | Yes |
| Extended thinking | No | No |
| Prompt caching | No | No |
| Batch API | No | No |
| Release date | N/A | N/A |
Pricing matrix
Dollar rates only: hosts that list both models, per 1M tokens. For how much text fits, use the context section above — not this table.
| Provider | Llama 2 13b Chat in | Llama 2 13b Chat out | Llama 4 Scout 17b 16e Instruct Fp8 in | Llama 4 Scout 17b 16e Instruct Fp8 out |
|---|---|---|---|---|
| Anyscale | $0.250/M | $0.250/M | — | — |
| Meta | — | — | — | — |
Frequently asked questions
Powered by Mem0
Use a smaller model.
Get better results.
Mem0 gives your AI long-term memory so you stop re-sending context on every call. That means you can use a smaller, faster, cheaper model — and still get better answers.
Example: a multi-turn chat session
80% less to send — works with any model