L LLM Cloud Hub
Side-by-side comparison

Trinity Large Thinking vs MiniMax M2.5

Arcee AI

Trinity Large Thinking

πŸ”§ Tools {} JSON
Input / 1M
$0.2200
Output / 1M
$0.8500
View Trinity Large Thinking β†’
MiniMax

MiniMax M2.5

πŸ”§ Tools {} JSON
Input / 1M
$0.1500
Output / 1M
$1.1500
View MiniMax M2.5 β†’
Trinity Large ThinkingMiniMax M2.5
Provider Arcee AI MiniMax
Context window Maximum tokens (input + output) the model can process in a single request. Glossary β†’ 262,144 196,608
Capabilities Optional capabilities the model advertises: vision (images), tools (function calling), json_mode (structured output). tools, json_mode tools, json_mode
Input $ / 1M tokens Cost for tokens you send (prompt + context). Cheaper side highlighted. Glossary β†’ 0.2200 0.1500
Output $ / 1M tokens Cost for tokens the model generates. Output is normally 3–5Γ— pricier than input. Glossary β†’ 0.8500 1.1500

Frequently asked questions

Which is cheaper, Trinity Large Thinking or MiniMax M2.5?

Trinity Large Thinking is cheaper than MiniMax M2.5 on a 50/50 input/output blend by about $0.115 per 1M tokens. Exact savings depend on your input-vs-output ratio β€” use the cost calculator on this page for a workload-specific estimate.

Which has a larger context window, Trinity Large Thinking or MiniMax M2.5?

Trinity Large Thinking has the larger context window at 262k tokens versus 197k tokens for MiniMax M2.5. That means Trinity Large Thinking can ingest about 1.3x as much text per request.

What is the difference between Trinity Large Thinking and MiniMax M2.5?

Trinity Large Thinking comes from Arcee AI; MiniMax M2.5 comes from MiniMax. They differ in pricing, context window, and supported capabilities β€” see the side-by-side table on this page for the exact figures, refreshed nightly.

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