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GPT-4o mini vs. Command-R+ (Apr '24)

Comparison between GPT-4o mini and Command-R+ (Apr '24) across intelligence, price, speed, context window and more.
For details relating to our methodology, see our Methodology page.

Highlights

Intelligence
Artificial Analysis Intelligence Index; Higher is better
Speed
Output Tokens per Second; Higher is better
Price
USD per 1M Tokens; Lower is better
Parallel Queries:
Prompt Length:

Model Comparison

Metric
OpenAI logoGPT-4o mini
Cohere logoCommand-R+ (Apr '24)
Analysis
Creator
OpenAI
Cohere
Context Window
128k tokens (~192 A4 pages of size 12 Arial font)
128k tokens (~192 A4 pages of size 12 Arial font)
Both GPT-4o mini and Command-R+ (Apr '24) have the same sized context window
Release Date
July, 2024
April, 2024
GPT-4o mini has a more recent release date than Command-R+ (Apr '24)
Image Input Support
Yes
No
GPT-4o mini has image input support while Command-R+ (Apr '24) does not
Open Source (Weights)
No
Yes
Command-R+ (Apr '24) is open source while GPT-4o mini is proprietary

Intelligence

Artificial Analysis Intelligence Index

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Intelligence Index incorporates 7 evaluations spanning reasoning, knowledge, math & coding
Artificial Analysis Intelligence Index: Combination metric covering multiple dimensions of intelligence - the simplest way to compare how smart models are. Version 2 was released in Feb '25 and includes: MMLU-Pro, GPQA Diamond, Humanity's Last Exam, LiveCodeBench, SciCode, AIME, MATH-500. See Intelligence Index methodology for further details, including a breakdown of each evaluation and how we run them.

Artificial Analysis Intelligence Index by Model Type

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Intelligence Index incorporates 7 evaluations spanning reasoning, knowledge, math & coding
Non-Reasoning Model
Artificial Analysis Intelligence Index: Combination metric covering multiple dimensions of intelligence - the simplest way to compare how smart models are. Version 2 was released in Feb '25 and includes: MMLU-Pro, GPQA Diamond, Humanity's Last Exam, LiveCodeBench, SciCode, AIME, MATH-500. See Intelligence Index methodology for further details, including a breakdown of each evaluation and how we run them.

Artificial Analysis Intelligence Index by Open Weights vs Proprietary

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Intelligence Index incorporates 7 evaluations spanning reasoning, knowledge, math & coding
Proprietary
Open Weights (Commercial Use Restricted)
Artificial Analysis Intelligence Index: Combination metric covering multiple dimensions of intelligence - the simplest way to compare how smart models are. Version 2 was released in Feb '25 and includes: MMLU-Pro, GPQA Diamond, Humanity's Last Exam, LiveCodeBench, SciCode, AIME, MATH-500. See Intelligence Index methodology for further details, including a breakdown of each evaluation and how we run them.
Open Weights: Indicates whether the model weights are available. Models are labelled as 'Commercial Use Restricted' if the weights are available but commercial use is limited (typically requires obtaining a paid license).

Artificial Analysis Coding Index

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Represents the average of coding benchmarks in the Artificial Analysis Intelligence Index (LiveCodeBench & SciCode)
Artificial Analysis Coding Index: Represents the average of coding evaluations in the Artificial Analysis Intelligence Index. Currently includes: LiveCodeBench, SciCode. See Intelligence Index methodology for further details, including a breakdown of each evaluation and how we run them.

Artificial Analysis Math Index

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Represents the average of math benchmarks in the Artificial Analysis Intelligence Index (AIME 2024 & Math-500)
Artificial Analysis Math Index: Represents the average of math evaluations in the Artificial Analysis Intelligence Index. Currently includes: AIME, MATH-500. See Intelligence Index methodology for further details, including a breakdown of each evaluation and how we run them.

Intelligence Evaluations

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Intelligence evaluations measured independently by Artificial Analysis; Higher is better
Results claimed by AI Lab (not yet independently verified)
MMLU-Pro (Reasoning & Knowledge)
GPQA Diamond (Scientific Reasoning)
Humanity's Last Exam (Reasoning & Knowledge)
LiveCodeBench (Coding)
SciCode (Coding)
HumanEval (Coding)
MATH-500 (Quantitative Reasoning)
AIME 2024 (Competition Math)
Multilingual Index (Artificial Analysis)
While model intelligence generally translates across use cases, specific evaluations may be more relevant for certain use cases.
Artificial Analysis Intelligence Index: Combination metric covering multiple dimensions of intelligence - the simplest way to compare how smart models are. Version 2 was released in Feb '25 and includes: MMLU-Pro, GPQA Diamond, Humanity's Last Exam, LiveCodeBench, SciCode, AIME, MATH-500. See Intelligence Index methodology for further details, including a breakdown of each evaluation and how we run them.

Intelligence vs. Price

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Artificial Analysis Intelligence Index (Version 2, released Feb '25); Price: USD per 1M Tokens
Most attractive quadrant
GPT-4o mini
Command-R+ (Apr '24)
While higher intelligence models are typically more expensive, they do not all follow the same price-quality curve.
Artificial Analysis Intelligence Index: Combination metric covering multiple dimensions of intelligence - the simplest way to compare how smart models are. Version 2 was released in Feb '25 and includes: MMLU-Pro, GPQA Diamond, Humanity's Last Exam, LiveCodeBench, SciCode, AIME, MATH-500. See Intelligence Index methodology for further details, including a breakdown of each evaluation and how we run them.
Price: Price per token, represented as USD per million Tokens. Price is a blend of Input & Output token prices (3:1 ratio).
Figures represent performance of the model's first-party API (e.g. OpenAI for o1) or the median across providers where a first-party API is not available (e.g. Meta's Llama models).

Intelligence vs. Output Speed

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Artificial Analysis Intelligence Index (Version 2, released Feb '25); Output Speed: Output Tokens per Second
Most attractive quadrant
GPT-4o mini
Command-R+ (Apr '24)
Artificial Analysis Intelligence Index: Combination metric covering multiple dimensions of intelligence - the simplest way to compare how smart models are. Version 2 was released in Feb '25 and includes: MMLU-Pro, GPQA Diamond, Humanity's Last Exam, LiveCodeBench, SciCode, AIME, MATH-500. See Intelligence Index methodology for further details, including a breakdown of each evaluation and how we run them.
Output Speed: Tokens per second received while the model is generating tokens (ie. after first chunk has been received from the API for models which support streaming).
Figures represent performance of the model's first-party API (e.g. OpenAI for o1) or the median across providers where a first-party API is not available (e.g. Meta's Llama models).

Intelligence vs. Total Response Time

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Artificial Analysis Intelligence Index (Version 2, released Feb '25); End-to-End Seconds to Output 100 Tokens; Lower is better
Most attractive quadrant
GPT-4o mini
Command-R+ (Apr '24)
Artificial Analysis Intelligence Index: Combination metric covering multiple dimensions of intelligence - the simplest way to compare how smart models are. Version 2 was released in Feb '25 and includes: MMLU-Pro, GPQA Diamond, Humanity's Last Exam, LiveCodeBench, SciCode, AIME, MATH-500. See Intelligence Index methodology for further details, including a breakdown of each evaluation and how we run them.
Total Response Time: Time to receive a 100 token response. Calculated based on Latency (time to receive first token) and Output Speed (output tokens per second).
Figures represent performance of the model's first-party API (e.g. OpenAI for o1) or the median across providers where a first-party API is not available (e.g. Meta's Llama models).

Context Window

Context Window

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Context Window: Tokens Limit; Higher is better
Larger context windows are relevant to RAG (Retrieval Augmented Generation) LLM workflows which typically involve reasoning and information retrieval of large amounts of data.
Context window: Maximum number of combined input & output tokens. Output tokens commonly have a significantly lower limit (varied by model).

Intelligence vs. Context Window

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Artificial Analysis Intelligence Index (Version 2, released Feb '25); Context Window: Tokens Limit
Most attractive quadrant
GPT-4o mini
Command-R+ (Apr '24)
Artificial Analysis Intelligence Index: Combination metric covering multiple dimensions of intelligence - the simplest way to compare how smart models are. Version 2 was released in Feb '25 and includes: MMLU-Pro, GPQA Diamond, Humanity's Last Exam, LiveCodeBench, SciCode, AIME, MATH-500. See Intelligence Index methodology for further details, including a breakdown of each evaluation and how we run them.
Context window: Maximum number of combined input & output tokens. Output tokens commonly have a significantly lower limit (varied by model).

Pricing: Input and Output Prices

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Price: USD per 1M Tokens
Input price
Output price
Input Price: Price per token included in the request/message sent to the API, represented as USD per million Tokens.
Figures represent performance of the model's first-party API (e.g. OpenAI for o1) or the median across providers where a first-party API is not available (e.g. Meta's Llama models).

Pricing: Cached Input Prompts

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Price: USD per 1M Tokens
Input (standard)
Cache Write
Cache Hit
Cache Storage per Hour
Output (standard)
Input Price: Price per token included in the request/message sent to the API, represented as USD per million Tokens.
Cache Write: One-time cost charged when storing a prompt in the cache for future reuse, represented as USD per million tokens.
Cache Hit: Price per token for cached prompts (previously processed), typically offering a significant discount compared to regular input price, represented as USD per million tokens.
Cache Storage per Hour: Cost to maintain tokens in cache storage, charged per million tokens per hour. Currently only applicable to Google's Gemini models.
Output Price: Price per token generated by the model (received from the API), represented as USD per million Tokens.

Pricing: Image Input Pricing

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Image Input Price: USD per 1k images at 1MP (1024x1024)
Price per 1k 1MP images: Price for 1,000 images at a resolution of 1 Megapixel (1024 x 1024) processed by the model.
Figures represent performance of the model's first-party API (e.g. OpenAI for o1) or the median across providers where a first-party API is not available (e.g. Meta's Llama models).

Performance Summary

Output Speed vs. Price

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Output Speed: Output Tokens per Second; Price: USD per 1M Tokens
Most attractive quadrant
GPT-4o mini
Command-R+ (Apr '24)
Output Speed: Tokens per second received while the model is generating tokens (ie. after first chunk has been received from the API for models which support streaming).
Price: Price per token, represented as USD per million Tokens. Price is a blend of Input & Output token prices (3:1 ratio).

Latency vs. Output Speed

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Latency: Seconds to First Token Received; Output Speed: Output Tokens per Second
Most attractive quadrant
GPT-4o mini
Command-R+ (Apr '24)
Output Speed: Tokens per second received while the model is generating tokens (ie. after first chunk has been received from the API for models which support streaming).
Latency: Time to first token of tokens received, in seconds, after API request sent. For models which do not support streaming, this represents time to receive the completion.
Price: Price per token, represented as USD per million Tokens. Price is a blend of Input & Output token prices (3:1 ratio).

Speed

Measured by Output Speed (tokens per second)

Output Speed

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Output Tokens per Second; Higher is better
Output Speed: Tokens per second received while the model is generating tokens (ie. after first chunk has been received from the API for models which support streaming).
Figures represent performance of the model's first-party API (e.g. OpenAI for o1) or the median across providers where a first-party API is not available (e.g. Meta's Llama models).

Output Speed by Input Token Count (Context Length)

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Output Tokens per Second; Higher is better
100 input tokens
1k input tokens
10k input tokens
100k input tokens
Output Speed: Tokens per second received while the model is generating tokens (ie. after first chunk has been received from the API for models which support streaming).
Input Tokens Length: Length of tokens provided in the request. See Prompt Options above to see benchmarks of different input prompt lengths across other charts.
Figures represent performance of the model's first-party API (e.g. OpenAI for o1) or the median across providers where a first-party API is not available (e.g. Meta's Llama models).

Output Speed Variance

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Output Tokens per Second; Results by percentile; Higher is better
Median, Other points represent 5th, 25th, 75th, 95th Percentiles respectively
Output Speed: Tokens per second received while the model is generating tokens (ie. after first chunk has been received from the API for models which support streaming).
Boxplot: Shows variance of measurements
Picture of the author

Output Speed, Over Time

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Output Tokens per Second; Higher is better
Output Speed: Tokens per second received while the model is generating tokens (ie. after first chunk has been received from the API for models which support streaming).
Over time measurement: Median measurement per day, based on 8 measurements each day at different times. Labels represent start of week's measurements.
Figures represent performance of the model's first-party API (e.g. OpenAI for o1) or the median across providers where a first-party API is not available (e.g. Meta's Llama models).

Latency

Measured by Time (seconds) to First Token

Latency

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Seconds to First Token Received; Lower is better
Latency: Time to first token of tokens received, in seconds, after API request sent. For models which do not support streaming, this represents time to receive the completion.
Figures represent performance of the model's first-party API (e.g. OpenAI for o1) or the median across providers where a first-party API is not available (e.g. Meta's Llama models).

Latency by Input Token Count (Context Length)

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Seconds to First Token Received; Lower is better
100 input tokens
1k input tokens
10k input tokens
100k input tokens
Input Tokens Length: Length of tokens provided in the request. See Prompt Options above to see benchmarks of different input prompt lengths across other charts.
Latency: Time to first token of tokens received, in seconds, after API request sent. For models which do not support streaming, this represents time to receive the completion.
Figures represent performance of the model's first-party API (e.g. OpenAI for o1) or the median across providers where a first-party API is not available (e.g. Meta's Llama models).

Latency Variance

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Seconds to First Token Received; Results by percentile; Lower is better
Median, Other points represent 5th, 25th, 75th, 95th Percentiles respectively
Latency: Time to first token of tokens received, in seconds, after API request sent. For models which do not support streaming, this represents time to receive the completion.
Boxplot: Shows variance of measurements
Picture of the author

Total Response Time

Time to receive 100 tokens output, calculated from latency and output speed metrics

Total Response Time

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End-to-End Seconds to Output 100 Tokens; Lower is better
The speed difference between the fastest and slowest models is >3X. There is not always a correlation between parameter size and speed, or between price and speed.
Total Response Time: Time to receive a 100 token response. Calculated based on Latency (time to receive first token) and Output Speed (output tokens per second).
Figures represent performance of the model's first-party API (e.g. OpenAI for o1) or the median across providers where a first-party API is not available (e.g. Meta's Llama models).

Total Response Time by Input Token Count (Context Length)

+ Add model from specific provider
End-to-End Seconds to Output 100 Tokens; Lower is better
100 input tokens
1k input tokens
10k input tokens
100k input tokens
Input Tokens Length: Length of tokens provided in the request. See Prompt Options above to see benchmarks of different input prompt lengths across other charts.
Total Response Time: Time to receive a 100 token response. Calculated based on Latency (time to receive first token) and Output Speed (output tokens per second).
Figures represent performance of the model's first-party API (e.g. OpenAI for o1) or the median across providers where a first-party API is not available (e.g. Meta's Llama models).

Total Response Time Variance

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Total Response Time: End-to-End Seconds to Output 100 Tokens; Results by percentile; Lower is better
Median, Other points represent 5th, 25th, 75th, 95th Percentiles respectively
Total Response Time: Time to receive a 100 token response. Calculated based on Latency (time to receive first token) and Output Speed (output tokens per second).
Boxplot: Shows variance of measurements
Picture of the author
Further details
Model NameFurther analysis
OpenAI
OpenAI logoo1
OpenAI logoo3-mini
OpenAI logoo1-preview
OpenAI logoo1-mini
OpenAI logoGPT-4o (Aug '24)
OpenAI logoGPT-4o (May '24)
OpenAI logoGPT-4o (Nov '24)
OpenAI logoGPT-4o mini
OpenAI logoo3
OpenAI logoGPT-4o (ChatGPT)
OpenAI logoo3-mini (high)
OpenAI logoGPT-4o Realtime (Dec '24)
OpenAI logoGPT-4.5 (Preview)
OpenAI logoGPT-4o mini Realtime (Dec '24)
OpenAI logoo1-pro
OpenAI logoGPT-4 Turbo
OpenAI logoGPT-4
Meta
Meta logoLlama 3.3 Instruct 70B
Meta logoLlama 3.1 Instruct 405B
Meta logoLlama 3.2 Instruct 90B (Vision)
Meta logoLlama 3.1 Instruct 70B
Meta logoLlama 3.2 Instruct 11B (Vision)
Meta logoLlama 3.1 Instruct 8B
Meta logoLlama 3.2 Instruct 3B
Meta logoLlama 3.2 Instruct 1B
Meta logoLlama 3 Instruct 70B
Meta logoLlama 3 Instruct 8B
Meta logoLlama 2 Chat 70B
Meta logoLlama 2 Chat 13B
Meta logoLlama 2 Chat 7B
Google
Google logoGemma 3 12B Instruct
Google logoGemma 3 4B Instruct
Google logoGemini 2.0 Pro Experimental (Feb '25)
Google logoGemini 2.0 Flash (Feb '25)
Google logoGemini 2.0 Flash (experimental)
Google logoGemini 1.5 Pro (Sep '24)
Google logoGemini 1.5 Flash (Sep '24)
Google logoGemini 1.5 Pro (May '24)
Google logoGemma 2 27B
Google logoGemma 2 9B
Google logoGemini 1.5 Flash-8B
Google logoGemma 3 27B Instruct
Google logoGemini 2.0 Flash-Lite (Feb '25)
Google logoGemini 2.0 Flash Thinking Experimental (Dec '24)
Google logoGemini 2.5 Pro Experimental (Mar' 25)
Google logoGemma 3 1B Instruct
Google logoGemini 2.0 Flash-Lite (Preview)
Google logoGemini 1.0 Pro
Google logoGemini 1.5 Flash (May '24)
Anthropic
Anthropic logoClaude 3.5 Sonnet (Oct '24)
Anthropic logoClaude 3.5 Sonnet (June '24)
Anthropic logoClaude 3 Opus
Anthropic logoClaude 3.5 Haiku
Anthropic logoClaude 3 Haiku
Anthropic logoClaude 3.7 Sonnet (Standard)
Anthropic logoClaude 3.7 Sonnet (Extended Thinking)
Anthropic logoClaude 3 Sonnet
Anthropic logoClaude 2.1
Anthropic logoClaude 2.0
Mistral
Mistral logoPixtral Large
Mistral logoMistral Large 2 (Nov '24)
Mistral logoMistral Large 2 (Jul '24)
Mistral logoMistral Small 3
Mistral logoMistral Small (Sep '24)
Mistral logoMixtral 8x22B Instruct
Mistral logoPixtral 12B (2409)
Mistral logoMinistral 8B
Mistral logoMistral NeMo
Mistral logoMinistral 3B
Mistral logoMixtral 8x7B Instruct
Mistral logoCodestral-Mamba
Mistral logoMistral Small 3.1
Mistral logoCodestral (Jan '25)
Mistral logoMistral Saba
Mistral logoMistral Small (Feb '24)
Mistral logoMistral Large (Feb '24)
Mistral logoMistral 7B Instruct
Mistral logoCodestral (May '24)
Mistral logoMistral Medium
DeepSeek
DeepSeek logoDeepSeek R1
DeepSeek logoDeepSeek R1 Distill Llama 70B
DeepSeek logoDeepSeek-V2.5 (Dec '24)
DeepSeek logoDeepSeek-Coder-V2
DeepSeek logoDeepSeek LLM 67B Chat (V1)
DeepSeek logoDeepSeek R1 Distill Qwen 32B
DeepSeek logoDeepSeek V3 0324 (Mar' 25)
DeepSeek logoDeepSeek Coder V2 Lite Instruct
DeepSeek logoDeepSeek R1 Distill Qwen 1.5B
DeepSeek logoDeepSeek R1 Distill Llama 8B
DeepSeek logoDeepSeek R1 Distill Qwen 14B
DeepSeek logoDeepSeek V3
DeepSeek logoDeepSeek-V2.5
DeepSeek logoDeepSeek-V2-Chat
Perplexity
Perplexity logoSonar Reasoning Pro
Perplexity logoSonar Reasoning
Perplexity logoSonar
Perplexity logoSonar Pro
xAI
xAI logoGrok Beta
xAI logoGrok 3 Reasoning Beta
xAI logoGrok 3 mini
xAI logoGrok 3 mini Reasoning
xAI logoGrok 3
xAI logoGrok 2 (Dec '24)
Amazon
Amazon logoNova Pro
Amazon logoNova Lite
Amazon logoNova Micro
Microsoft Azure
Microsoft Azure logoPhi-4
Microsoft Azure logoPhi-3 Mini Instruct 3.8B
Microsoft Azure logoPhi-4 Mini Instruct
Microsoft Azure logoPhi-3 Medium Instruct 14B
Microsoft Azure logoPhi-4 Multimodal Instruct
Liquid AI
Liquid AI logoLFM 40B
Upstage
Upstage logoSolar Mini
Databricks
Databricks logoDBRX Instruct
MiniMax
MiniMax logoMiniMax-Text-01
NVIDIA
NVIDIA logoLlama 3.1 Nemotron Instruct 70B
NVIDIA logoLlama 3.3 Nemotron Super 49B v1
Allen Institute for AI
Allen Institute for AI logoLlama 3.1 Tulu3 405B
Reka AI
Reka AI logoReka Flash (Sep '24)
Reka AI logoReka Core
Reka AI logoReka Flash (Feb '24)
Reka AI logoReka Edge
Reka AI logoReka Flash 3
Cohere
Cohere logoCommand-R+ (Aug '24)
Cohere logoCommand-R+ (Apr '24)
Cohere logoCommand-R (Mar '24)
Cohere logoCommand-R (Aug '24)
Cohere logoCommand A
Cohere logoAya Expanse 32B
Cohere logoAya Expanse 8B
AI21 Labs
AI21 Labs logoJamba 1.5 Large
AI21 Labs logoJamba 1.5 Mini
AI21 Labs logoJamba 1.6 Mini
AI21 Labs logoJamba 1.6 Large
AI21 Labs logoJamba Instruct
Snowflake
Snowflake logoArctic Instruct
Alibaba
Alibaba logoQwen2.5 Max
Alibaba logoQwen2.5 Instruct 72B
Alibaba logoQwen2.5 Coder Instruct 32B
Alibaba logoQwen Turbo
Alibaba logoQwen2 Instruct 72B
Alibaba logoQwQ 32B
Alibaba logoQwen1.5 Chat 110B
Alibaba logoQwen2.5 Instruct 32B
Alibaba logoQwen2.5 Coder Instruct 7B
Alibaba logoQwen Chat 72B
Alibaba logoQwQ 32B-Preview
01.AI
01.AI logoYi-Large
OpenChat
OpenChat logoOpenChat 3.5 (1210)

Models compared: OpenAI: GPT 4o Audio, GPT 4o Realtime, GPT 4o Speech Pipeline, GPT-3.5 Turbo, GPT-3.5 Turbo (0125), GPT-3.5 Turbo (0314), GPT-3.5 Turbo (1106), GPT-3.5 Turbo Instruct, GPT-4, GPT-4 Turbo, GPT-4 Turbo (0125), GPT-4 Turbo (1106), GPT-4 Vision, GPT-4.5 (Preview), GPT-4o (Aug '24), GPT-4o (ChatGPT), GPT-4o (May '24), GPT-4o (Nov '24), GPT-4o Realtime (Dec '24), GPT-4o mini, GPT-4o mini Realtime (Dec '24), o1, o1-mini, o1-preview, o1-pro, o3, o3-mini, and o3-mini (high), Meta: Code Llama 70B, Llama 2 Chat 13B, Llama 2 Chat 70B, Llama 2 Chat 7B, Llama 3 70B, Llama 3 8B, Llama 3.1 405B, Llama 3.1 70B, Llama 3.1 8B, Llama 3.2 11B (Vision), Llama 3.2 1B, Llama 3.2 3B, Llama 3.2 90B (Vision), and Llama 3.3 70B, Google: Gemini 1.0 Pro, Gemini 1.5 Flash (May), Gemini 1.5 Flash (Sep), Gemini 1.5 Flash-8B, Gemini 1.5 Pro (May), Gemini 1.5 Pro (Sep), Gemini 2.0 Flash, Gemini 2.0 Flash (exp), Gemini 2.0 Flash Thinking exp. (Dec '24), Gemini 2.0 Flash Thinking exp. (Jan '25), Gemini 2.0 Flash-Lite (Feb '25), Gemini 2.0 Flash-Lite (Preview), Gemini 2.0 Pro Experimental, Gemini 2.5 Pro Experimental, Gemini Experimental (Nov), Gemma 2 27B, Gemma 2 9B, Gemma 3 12B, Gemma 3 1B, Gemma 3 27B, Gemma 3 4B, and Gemma 7B, Anthropic: Claude 2.0, Claude 2.1, Claude 3 Haiku, Claude 3 Opus, Claude 3 Sonnet, Claude 3.5 Haiku, Claude 3.5 Sonnet (June), Claude 3.5 Sonnet (Oct), Claude 3.7 Sonnet Thinking, Claude 3.7 Sonnet, and Claude Instant, Mistral: Codestral (Jan '25), Codestral (May '24), Codestral-Mamba, Ministral 3B, Ministral 8B, Mistral 7B, Mistral Large (Feb '24), Mistral Large 2 (Jul '24), Mistral Large 2 (Nov '24), Mistral Medium, Mistral NeMo, Mistral Saba, Mistral Small (Feb '24), Mistral Small (Sep '24), Mistral Small 3, Mistral Small 3.1, Mixtral 8x22B, Mixtral 8x7B, Pixtral 12B, and Pixtral Large, DeepSeek: DeepSeek Coder V2 Lite, DeepSeek LLM 67B (V1), DeepSeek R1, DeepSeek R1 (FP4), DeepSeek R1 Distill Llama 70B, DeepSeek R1 Distill Llama 8B, DeepSeek R1 Distill Qwen 1.5B, DeepSeek R1 Distill Qwen 14B, DeepSeek R1 Distill Qwen 32B, DeepSeek V3, DeepSeek V3 (Mar' 25), DeepSeek-Coder-V2, DeepSeek-V2, DeepSeek-V2.5, DeepSeek-V2.5 (Dec '24), DeepSeek-VL2, and Janus Pro 7B, Perplexity: PPLX-70B Online, PPLX-7B-Online, R1 1776, Sonar, Sonar 3.1 Huge, Sonar 3.1 Large, Sonar 3.1 Small , Sonar Large, Sonar Pro, Sonar Reasoning, Sonar Reasoning Pro, and Sonar Small, xAI: Grok 2, Grok 3, Grok 3 Reasoning Beta, Grok 3 mini, Grok 3 mini Reasoning, Grok Beta, and Grok-1, OpenChat: OpenChat 3.5, Amazon: Nova Lite, Nova Micro, and Nova Pro, Microsoft Azure: Phi-3 Medium 14B, Phi-3 Mini, Phi-4, Phi-4 Mini, and Phi-4 Multimodal, Liquid AI: LFM 1.3B, LFM 3B, and LFM 40B, Upstage: Solar Mini, Solar Pro, and Solar Pro (Nov '24), Databricks: DBRX, MiniMax: MiniMax-Text-01, NVIDIA: Cosmos Nemotron 34B, Llama 3.1 Nemotron 70B, Llama 3.3 Nemotron Nano 8B v1, Llama 3.3 Nemotron Nano 8B v1 (Reasoning), Llama 3.3 Nemotron Super 49B v1, and Llama 3.3 Nemotron Super 49B v1 (Reasoning), IBM: Granite 3.0 2B, OpenVoice: Granite 3.0 8B, Inceptionlabs: Mercury Coder Mini, Mercury Coder Small, and Mercury Instruct, Reka AI: Reka Core, Reka Edge, Reka Flash (Feb '24), Reka Flash, and Reka Flash 3, Other: LLaVA-v1.5-7B, Cohere: Aya Expanse 32B, Aya Expanse 8B, Command, Command A, Command Light, Command R7B, Command-R, Command-R (Mar '24), Command-R+ (Apr '24), and Command-R+, AI21 Labs: Jamba 1.5 Large, Jamba 1.5 Large (Feb '25), Jamba 1.5 Mini, Jamba 1.5 Mini (Feb 2025), Jamba 1.6 Large, Jamba 1.6 Mini, and Jamba Instruct, Snowflake: Arctic, Alibaba: QwQ-32B, QwQ 32B-Preview, Qwen Chat 72B, Qwen Plus, Qwen Turbo, Qwen1.5 Chat 110B, Qwen1.5 Chat 14B, Qwen1.5 Chat 32B, Qwen1.5 Chat 72B, Qwen1.5 Chat 7B, Qwen2 72B, Qwen2 Instruct 7B, Qwen2 Instruct A14B 57B, Qwen2-VL 72B, Qwen2.5 Coder 32B, Qwen2.5 Coder 7B , Qwen2.5 Instruct 14B, Qwen2.5 Instruct 32B, Qwen2.5 72B, Qwen2.5 Instruct 7B, Qwen2.5 Max, Qwen2.5 Max 01-29, Qwen2.5 VL 72B, and Qwen2.5 VL 7B, and 01.AI: Yi-Large.