Live technical benchmark comparing token limits, input/output API pricing, and modalities.
meta-llama/llama-4-scout
meta/muse-spark-1.1
The primary differentiator in developer workflow design is context retention capacity. Meta: Llama 4 Scout offers a context window of 10,000,000 tokens, while Muse Spark 1.1 supports up to 1,000,000 tokens.
This gives Meta: Llama 4 Scout a substantial advantage of 10x larger prompt processing capacity, making it the ideal choice for loading massive codebases, long runbooks, or extensive research data.
Evaluating pricing metrics is critical for running high-frequency background cron workflows.For input queries, Meta: Llama 4 Scout costs $0.10 per 1M tokens, compared to $0.50 per 1M tokens for Muse Spark 1.1.
Meta: Llama 4 Scout is the more cost-effective choice for input prompts, yielding savings of 80% compared to Muse Spark 1.1. Similarly, output generations are cheaper on Meta: Llama 4 Scout ($0.30 vs $2.00), representing a savings of 85% on completion tokens.
Meta: Llama 4 Scout is better for large document parsing due to its larger context capacity of 10,000,000 tokens, enabling it to fit approximately 10x more content than Muse Spark 1.1 in a single prompt.
Meta: Llama 4 Scout is more budget-friendly for prompt inputs, costing $0.10 per million tokens (a saving of 80%). For output completion tokens, Meta: Llama 4 Scout is more cost-effective ($0.30 per 1M tokens).
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