Gemini 2.0 Flash Thinking Experimental (Dec '24) vs K-EXAONE (Reasoning)

Comparing 2 AI models · 6 benchmarks · Google, LG AI Research

Most Affordable
Google logo
Gemini 2.0 Flash Thinking Experimental (Dec '24)
$0.00/1M
Highest Intelligence
LG AI Research logo
K-EXAONE (Reasoning)
78.3% GPQA
Best for Coding
LG AI Research logo
K-EXAONE (Reasoning)
27.0 Coding Index
Price Difference
NaNx
input cost range

Composite Indices

Intelligence, Coding, Math

Standard Benchmarks

Academic and industry benchmarks

Benchmark Winners

6 tests
Google logo

Gemini 2.0 Flash Thinking Experimental (Dec '24)

1
  • MATH 500
LG AI Research logo

K-EXAONE (Reasoning)

5
  • GPQA
  • MMLU Pro
  • HLE
  • LiveCodeBench
  • AIME 2025
Metric
Google logo Gemini 2.0 Flash Thinking Experimental (Dec '24)
Google
LG AI Research logo K-EXAONE (Reasoning)
LG AI Research
Pricing
Per 1M tokens
Input Cost $0.00/1M $0.00/1M
Output Cost $0.00/1M $0.00/1M
Specifications
Organization Model creator
Google LG AI Research
Release Date Launch date
Dec 19, 2024 Dec 31, 2025
Performance & Speed
Throughput Output speed
Time to First Token (TTFT) Initial response delay
Latency Time to first answer token
Composite Indices
Intelligence Index Overall reasoning capability
12.3 32.1
Coding Index Programming ability
27.0
Math Index Mathematical reasoning
90.3
Standard Benchmarks
GPQA Graduate-level reasoning
78.3%
MMLU Pro Advanced knowledge
83.8%
HLE Hard language evaluation
13.1%
LiveCodeBench Real-world coding tasks
76.8%
MATH 500 Mathematical problems
48.0%
AIME 2025 Advanced math competition
90.3%
AIME (Original) Math olympiad problems
SciCode Scientific code generation
35.6%
LCR Code review capability
55.7%
IFBench Instruction-following
64.7%
TAU-bench v2 Tool use & agentic tasks
74.3%
TerminalBench Hard CLI command generation
22.7%

Key Takeaways

Gemini 2.0 Flash Thinking Experimental (Dec '24) offers the best value at $0.00/1M, making it ideal for high-volume applications and cost-conscious projects.

K-EXAONE (Reasoning) leads in reasoning capabilities with a 78.3% GPQA score, excelling at complex analytical tasks and problem-solving.

K-EXAONE (Reasoning) achieves a 27.0 coding index, making it the top choice for software development and code generation tasks.

All models support context windows of ∞+ tokens, suitable for processing lengthy documents and maintaining extended conversations.

When to Choose Each Model

Google logo

Gemini 2.0 Flash Thinking Experimental (Dec '24)

  • Cost-sensitive applications
  • High-volume processing
LG AI Research logo

K-EXAONE (Reasoning)

  • Complex reasoning tasks
  • Research & analysis
  • Code generation
  • Software development

Cost Calculator

Google logo Gemini 2.0 Flash Thinking Experimental (Dec '24)
$0.00
per month
LG AI Research logo K-EXAONE (Reasoning)
$0.00
per month

Costs are estimates based on API pricing. Actual costs may vary based on caching, batch processing, and volume discounts.

AI Model Comparison Guide

Compare large language models (LLMs) side-by-side with detailed benchmark scores, pricing, and performance metrics. Our interactive comparison tool helps you evaluate AI models from OpenAI, Anthropic, Google, Meta, DeepSeek, and other leading providers. Use our AI model leaderboard to discover more models to compare.

Understanding Composite Indices

  • Intelligence Index: Aggregated score combining MMLU-Pro, GPQA, and HLE benchmarks - measures overall reasoning and knowledge capabilities
  • Coding Index: Composite metric from LiveCodeBench, SciCode, and LiveCodeBench Review - evaluates programming proficiency across multiple languages
  • Math Index: Combined score from AIME, AIME 2025, and MATH-500 benchmarks - assesses mathematical reasoning from high school to competition level

Key Comparison Metrics

  • Benchmark Scores: Standardized tests measuring intelligence, coding, math, and specialized capabilities - higher percentages indicate better performance
  • Pricing Analysis: Compare input and output token costs across models - critical for budgeting API usage and scaling applications
  • Performance Metrics: Throughput (tokens/second) and latency measurements for real-time application planning
  • Context Windows: Maximum token capacity for processing documents and maintaining conversation history

How to Compare AI Models Effectively

Performance vs Cost

Balance benchmark scores against token pricing - flagship models offer 10-15% better performance but cost 5-10x more than smaller alternatives

Task-Specific Selection

Prioritize relevant indices: coding index for development tasks, math index for STEM applications, intelligence index for general reasoning

Real-World Testing

Use our free AI chat interface to test models with your specific prompts before committing to API integration

All benchmark scores, pricing data, and performance metrics are sourced from Artificial Analysis and updated daily. Compare models by intelligence, coding ability, math performance, speed, cost, or release date using our comprehensive AI model leaderboard.