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#164

MiMo-V2-Flash

Xiaomi Release: 2025-12-16 Tested on: 2026-06-04 13:47 xiaomi/mimo-v2-flash::none
(medium) (none)

Summary

MiMo-V2-Flash scores 4.3 on AI BENCHY and ranks #164. It has 6.7 reliability, a 25.4% pass rate, $0.025 total cost, and 2.76s average response time.

What makes MiMo-V2-Flash unique: Its total benchmark cost is unusually low for its score range. It is notably fast compared with similar models.

Archived model: this model is no longer updated or tested on new tests.

Score

4.3

Consistency

8.5

Total Cost (Current Price)

$0.025 ↑ +4.2%

Tested at: $0.024

Total Output Tokens

68,882

Total Input Tokens

36,851

Input Price

$0.100 / 1M

Output Price

$0.300 / 1M

Tests Correct

Wrong Tests: 17

Attempt pass rate: 25.4%

Flaky tests

4

Flaky tests had mixed outcomes across runs (at least one pass and one fail).

Response Time (avg)

2.76s

Response Time (max): 19.68s

Response Time (total): 46.99s

Generation showcase

Hamster playing table tennis

Prompt: Create a detailed SVG illustration of a hamster playing table tennis.

#164 MiMo-V2-Flash

none
Cost
$0.001
Time
7.7s
Tokens
1,481 tok

Run history

Tested on Score Reliability Tests Correct Total Cost Compare
2026-06-04 13:47 New test added 4.6 6.7 $0.025 Current run
2026-05-22 00:20 Suite changed 4.4 10.0 $0.024 Compare
2026-04-11 01:44 First recorded run 4.5 N/A $0.023 Compare

This run used a different benchmark suite. Keep suite changes in mind when reading historical movement.

Price History

Historical pricing data for this model from OpenRouter.

Date Input Price Output Price
2026-06-04 15:40 $0.100 / 1M $0.300 / 1M

Charts

Choose the first model, then click a second model to open a side-by-side page.

Total Output Tokens

Score vs Total Output Tokens

Quick Compare

Category Breakdown

Category Score Consistency Tests Correct
Anti-AI Tricks 3.2 8.0
Coding 4.3 7.9
Combined 3.0 10.0
Data parsing and extraction 2.9 5.8
Domain specific 5.3 7.2
General Intelligence 4.6 10.0
Instructions following 6.5 10.0
Puzzle Solving 5.3 10.0
Tool Calling 10.0 10.0
Trivia 3.0 10.0

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