Model Detail
Amazon: Nova Micro 1.0
—Amazon: Nova Micro 1.0 is a large language model released by Amazon. And supports text->text inputs.
Amazon: Nova Micro 1.0 is priced at $0.035/M input tokens and $0.14/M output tokens. Operationally the model offers a 128K-token context window, which matters when sizing it for prompt-heavy or latency-sensitive workloads. At this input rate the model sits in the commodity tier and is suitable for high-volume workloads where per-call cost dominates the decision.
The published knowledge cutoff is 2024-10-31, so newer events will not be reflected in zero-shot answers without retrieval.
Amazon: Nova Micro 1.0 is best fit for general-purpose chat and instruction-following workloads, and high-volume batch jobs where per-call cost dominates the budget. Treat this as a starting matrix rather than a benchmark verdict — the right deployment usually depends on the specific evaluation suite that mirrors your workload.
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