Model Cost Profile

Arcee AI: Trinity Mini

Developer: arcee-ai

Pricing updated Mar 11, 2026

Input rank: #50Output rank: #54

Live Pricing

Input: $0.0450

Output: $0.1500

Pricing via OpenRouter API ยท Last synced Mar 11, 2026

Arcee AI: Trinity Mini features an extensive context window of 131072 tokens, making it ideal for applications requiring deep contextual understanding, such as legal document analysis or extensive content generation. The input cost of $0.04 per million tokens and output cost of $0.15 per million tokens allows teams to effectively budget for projects involving large datasets or high-volume interactions. This model is particularly beneficial for businesses that need to process and generate large amounts of text while maintaining cost efficiency.

๐Ÿ”ง Tool Calling๐Ÿ“‹ Structured Output๐Ÿง  Reasoning

Context Window

131,072

Tokens

Input Price / 1M

$0.0450

Prompt tokens

Output Price / 1M

$0.1500

Completion tokens

Intelligence (MMLU)

Benchmark Pending

Massive Multitask Language Understanding

Price History

Arcee AI: Trinity Mini Pricing Trend

Input / 1M tokens0.0%Output / 1M tokens0.0%
Mar 7 โ€” Mar 11
$0.0450$0.0975$0.1500Mar 7Mar 8Mar 9Mar 10Mar 11

Current Input / 1M

$0.0450

Current Output / 1M

$0.1500

Cheaper Alternatives to Compare

Quick links for cost-down decisions before production rollout.

FAQ

Common pricing and benchmark questions for Arcee AI: Trinity Mini.

How much does Arcee AI: Trinity Mini cost per 1M input tokens?

Arcee AI: Trinity Mini input pricing is $0.0450 per 1M tokens based on the latest synced provider data.

How much does Arcee AI: Trinity Mini cost per 1M output tokens?

Arcee AI: Trinity Mini output pricing is $0.1500 per 1M tokens based on the latest synced provider data.

What context window does Arcee AI: Trinity Mini support?

Arcee AI: Trinity Mini supports a context window of 131,072 tokens.

How can I compare Arcee AI: Trinity Mini with cheaper alternatives?

Use the comparison links on this page to open direct model-vs-model pricing and benchmark pages, then evaluate monthly spend projections for your workload.