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Large language models (LLMs)
Browse every major large language model in one place. This LLM list tracks frontier and open-source foundation models โ GPT, Claude, Gemini, Llama, Mistral, Qwen and 400+ more โ with parameter counts, context windows, benchmark scores and provider pricing.
Doubao Seed 2.1
๐จ๐ณ ByteDance
Baichuan-M4
๐จ๐ณ Baichuan
GLM-5.2
๐จ๐ณ Zhipu AI
Qwen3.7-Max
๐จ๐ณ Qwen
SkyClaw-v1.0
๐จ๐ณ Skywork
ERNIE 5.1
๐จ๐ณ Baidu
Seed Prover 1.5
๐จ๐ณ ByteDance
ERNIE-5.0-Preview-1203
๐จ๐ณ Baidu
MiniMax-M2.1
๐จ๐ณ MiniMax
GLM-4.7
๐จ๐ณ Zhipu AI
Seed1.8
๐จ๐ณ ByteDance
Seedance 1.5 pro
๐จ๐ณ ByteDance
AutoGLM-Phone-Multilingual
๐จ๐ณ Zhipu AI
GLM-ASR-2512
๐จ๐ณ Zhipu AI
ERNIE-5.0-Preview-1103
๐จ๐ณ Baidu
Hunyuan 2.0 (Think & Instruct)
๐จ๐ณ Tencent
DeepSeek-V3.2
๐จ๐ณ DeepSeek
DeepSeek-V3.2-Speciale
๐จ๐ณ DeepSeek
ERNIE-5.0-Preview-1120
๐จ๐ณ Baidu
ERNIE-5.0-Preview-1022
๐จ๐ณ Baidu
Kimi K2 Thinking
๐จ๐ณ Moonshot
Kimi Linear
๐จ๐ณ Moonshot
Tongyi DeepResearch
๐จ๐ณ Alibaba-NLP
MiniMax-M2
๐จ๐ณ MiniMax
Ring-flash-linear-2.0
๐จ๐ณ Ant Group
Ring-mini-linear-2.0
๐จ๐ณ Ant Group
BAPO 32B
๐จ๐ณ Fudan University
Hunyuan Translation
๐จ๐ณ Tencent
Ling-1T
๐จ๐ณ Ant Group
Ring-1T
๐จ๐ณ Ant Group
GLM 4.6
๐จ๐ณ Zhipu AI
DeepSeek-V3.2-Exp
๐จ๐ณ DeepSeek
MinerU2.5
๐จ๐ณ Shanghai AI Lab
Seedream 4.0
๐จ๐ณ ByteDance
DeepSeek-V3.1-Terminus
๐จ๐ณ DeepSeek
Qwen3-LiveTranslate
๐จ๐ณ Alibaba
AgentFounder-30B
๐จ๐ณ Alibaba
Ling-flash-base-2.0-20T
๐จ๐ณ Ant Group
Ling-mini-base-2.0-20T
๐จ๐ณ Ant Group
Qwen3-Next-80B-A3B
๐จ๐ณ Qwen
Qwen3-Max
๐จ๐ณ Qwen
Hunyuan-MT (open-source)
๐จ๐ณ Tencent
LongCat-Flash
๐จ๐ณ Meituan Inc
Hunyuan T1
๐จ๐ณ Tencent
DeepSeek-V3.1
๐จ๐ณ DeepSeek
Seed-OSS-36B-Base
๐จ๐ณ ByteDance
Qwen Image Edit
๐จ๐ณ Qwen
GLM 4.5
๐จ๐ณ Zhipu AI
GLM-4.5-Air
๐จ๐ณ Zhipu AI
Qwen Image
๐จ๐ณ Qwen
MindLink-32B
๐จ๐ณ Kunlun Inc.
MindLink-72B
๐จ๐ณ Kunlun Inc.
rStar-Math (Qwen2-Math-7B base)
๐จ๐ณ Qwen
rStar-Math (Qwen2.5-Math-7B base)
๐จ๐ณ Qwen
Agentar-Fin-R1 32B
๐จ๐ณ Ant Group
Agentar-Fin-R1 8B
๐จ๐ณ Ant Group
Qwen3-235B-A22B-Instruct (Jul 2025)
๐จ๐ณ Qwen
Qwen3-235B-A22B-Thinking (Jul 2025)
๐จ๐ณ Qwen
Seed Prover
๐จ๐ณ ByteDance
Qwen3-Coder-480B-A35B
๐จ๐ณ Qwen
About Large language models (LLMs)
Large language models (LLMs) are the foundation of modern generative AI โ general-purpose text models trained on vast corpora that can write, reason, summarise, translate and code. Choosing the best LLM is rarely about a single winner: the best AI model for one task may lag on another. Reasoning-heavy work rewards models that score well on benchmarks like MMLU, GPQA and AIME, while agentic and tool-use workloads care more about instruction following, function calling and long-context recall. When you compare LLMs, weigh raw capability against the practical constraints that decide cost and feasibility โ context window, throughput, latency, licensing and price per million tokens. Open-source LLMs such as Llama, Qwen, Mistral and DeepSeek let you self-host and fine-tune, while proprietary frontier models from OpenAI, Anthropic and Google often lead on raw quality. Use our benchmarks to see where each model ranks, and put two candidates side by side with compare before you commit to a provider.
Frequently asked questions
What is the best LLM right now?
There is no single best LLM โ it depends on the task. Frontier proprietary models from OpenAI, Anthropic and Google tend to lead on reasoning benchmarks, while open-source LLMs like Llama, Qwen and DeepSeek are best when you need to self-host or fine-tune. Compare candidates on the benchmarks page for your specific workload.
What is the best open source LLM?
The strongest open-source and open-weights LLMs at any given time typically come from the Llama, Qwen, Mistral and DeepSeek families. They can be downloaded, self-hosted and fine-tuned, and the top ones rival proprietary models on many benchmarks. Filter the list above by availability to see current open-weights options.
How do I compare two LLMs?
Use the compare tool to put two models side by side on parameters, context window, availability and benchmark scores, then check the benchmarks page for task-specific rankings such as MMLU, GPQA and coding scores.