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Claude Fable 5
claude-fable-5
https://convly.ai/model/claude-fable-5/
Anthropic
LLM (frontier reasoning)
Text, Vision → Text
Undisclosed
1M
128K
Proprietary
no
2026
10
50
Anthropic, AWS
null
null
https://www.anthropic.com/claude
Claude Haiku 4.5
claude-haiku-4-5
https://convly.ai/model/claude-haiku-4-5/
Anthropic
LLM
Text, Vision → Text
Undisclosed
200K
64K
Proprietary
no
2025
1
5
Anthropic, AWS, Vertex AI, Azure
null
null
https://www.anthropic.com/claude
Claude Opus 4.8
claude-opus-4-8
https://convly.ai/model/claude-opus-4-8/
Anthropic
LLM (reasoning)
Text, Vision → Text
Undisclosed
1M
128K
Proprietary
no
2026
5
25
Anthropic, AWS, Vertex AI, Azure
null
null
https://www.anthropic.com/claude
Claude Sonnet 4.6
claude-sonnet-4-6
https://convly.ai/model/claude-sonnet-4-6/
Anthropic
LLM
Text, Vision → Text
Undisclosed
1M
64K
Proprietary
no
2025
3
15
Anthropic, AWS, Vertex AI, Azure
null
null
https://www.anthropic.com/claude
DeepSeek R1
deepseek-r1
https://convly.ai/model/deepseek-r1/
DeepSeek
LLM (MoE, reasoning)
Text → Text
671B total / 37B active (MoE)
128K
null
MIT (open)
yes
2025
0.5
2.15
DeepSeek, DeepInfra, OpenRouter
~400 GB
Multi-GPU server
https://huggingface.co/deepseek-ai
DeepSeek R1 Distill Llama 70B
deepseek-r1-distill-llama-70b
https://convly.ai/model/deepseek-r1-distill-llama-70b/
DeepSeek
LLM (dense, reasoning)
Text → Text
70B
128K
null
MIT (open)
yes
2025
0.8
0.8
DeepInfra, OpenRouter, Ollama
~40 GB
2× RTX 4090 / 1× 48GB
https://huggingface.co/deepseek-ai
DeepSeek V4-Flash
deepseek-v4-flash
https://convly.ai/model/deepseek-v4-flash/
DeepSeek
LLM (MoE)
Text → Text
284B total / ~13B active (MoE)
1M
384K
MIT (open)
yes
2026-04
0.14
0.28
DeepSeek, OpenRouter
~140 GB
2× H100 80GB (4-bit)
https://huggingface.co/deepseek-ai
DeepSeek V4-Pro
deepseek-v4-pro
https://convly.ai/model/deepseek-v4-pro/
DeepSeek
LLM (MoE)
Text → Text
1.6T total / ~49B active (MoE)
1M
384K
MIT (open)
yes
2026-04
0.435
0.87
DeepSeek, OpenRouter
~800 GB
Multi-GPU server (e.g. 8× H100 80GB)
https://huggingface.co/deepseek-ai
Gemini 3.1 Pro
gemini-3-1-pro
https://convly.ai/model/gemini-3-1-pro/
Google
LLM (multimodal)
Text, Image, Audio, Video → Text
Undisclosed
1.05M
65K
Proprietary
no
2026
2
12
Google AI Studio, Vertex AI
null
null
https://ai.google.dev/
Gemini 3.5 Flash
gemini-3-5-flash
https://convly.ai/model/gemini-3-5-flash/
Google
LLM (multimodal)
Text, Image, Audio, Video → Text
Undisclosed
1M
65K
Proprietary
no
2026
1.5
9
Google AI Studio, Vertex AI
null
null
https://ai.google.dev/
Gemma 3 12B
gemma-3-12b
https://convly.ai/model/gemma-3-12b/
Google
LLM (multimodal)
Text, Image → Text
12B
128K
null
Gemma (open)
yes
2025
0.05
0.15
Google AI Studio, OpenRouter, Ollama
~8 GB
RTX 4070 12GB
https://huggingface.co/google
Gemma 3 27B
gemma-3-27b
https://convly.ai/model/gemma-3-27b/
Google
LLM (multimodal)
Text, Image → Text
27B
128K
null
Gemma (open)
yes
2025
0.08
0.16
Google AI Studio, OpenRouter, Ollama
~16 GB
RTX 4080 16GB / RTX 4090
https://huggingface.co/google
Gemma 3 4B
gemma-3-4b
https://convly.ai/model/gemma-3-4b/
Google
LLM (multimodal)
Text, Image → Text
4B
128K
null
Gemma (open)
yes
2025
0.05
0.1
Google AI Studio, Ollama
~3 GB
Any 6GB+ GPU
https://huggingface.co/google
GLM 5.2
glm-5-2
https://convly.ai/model/glm-5-2/
Zhipu AI
LLM (coding/agentic, MoE)
Text → Text
744B total / ~40B active (MoE)
1M
131K
MIT (open)
yes
2026-06
1.4
4.4
Zhipu (Z.ai), OpenRouter
~370 GB
Multi-GPU server (e.g. 5× H100 80GB)
https://github.com/zai-org/GLM-5
GPT-5.5
gpt-5-5
https://convly.ai/model/gpt-5-5/
OpenAI
LLM (reasoning)
Text, Vision → Text
Undisclosed
1.05M
128K
Proprietary
no
2026
5
30
OpenAI, Azure
null
null
https://openai.com/api/
Kimi K2.7 Code
kimi-k2-7-code
https://convly.ai/model/kimi-k2-7-code/
Moonshot AI
LLM (coding, MoE)
Text → Text
1T total / 32B active (MoE)
256K
Modified MIT (open)
yes
2026-06
0.6
2.5
Moonshot, OpenRouter
~500 GB
Multi-GPU server
https://huggingface.co/moonshotai
Llama 3.1 8B
llama-3-1-8b
https://convly.ai/model/llama-3-1-8b/
Meta
LLM (dense)
Text → Text
8B
128K
null
Llama 3.1 Community (open)
yes
2024
0.02
0.03
Together, DeepInfra, OpenRouter, Ollama
~5 GB
Any 8GB GPU
https://www.llama.com/
Llama 3.3 70B
llama-3-3-70b
https://convly.ai/model/llama-3-3-70b/
Meta
LLM (dense)
Text → Text
70B
128K
null
Llama 3.3 Community (open)
yes
2024
0.1
0.32
Together, DeepInfra, OpenRouter, Ollama
~40 GB
2× RTX 4090 / 1× 48GB
https://www.llama.com/
Llama 4 Maverick
llama-4-maverick
https://convly.ai/model/llama-4-maverick/
Meta
Multimodal (MoE)
Text, Image → Text
400B total / 17B active (MoE)
1M
null
Llama 4 Community (EU-restricted)
yes
2025
0.15
0.6
Meta, Together, OpenRouter
~240 GB
Multi-GPU server
https://www.llama.com/models/llama-4/
Llama 4 Scout
llama-4-scout
https://convly.ai/model/llama-4-scout/
Meta
Multimodal (MoE)
Text, Image → Text
109B total / 17B active (MoE)
10M
null
Llama 4 Community (EU-restricted)
yes
2025
0.1
0.3
Meta, Together, OpenRouter
~65 GB
H100 80GB / Mac 128GB
https://www.llama.com/models/llama-4/
Mistral 7B
mistral-7b
https://convly.ai/model/mistral-7b/
Mistral AI
LLM (dense)
Text → Text
7B
32K
null
Apache 2.0 (open)
yes
2023
0.02
0.03
Mistral, DeepInfra, OpenRouter, Ollama
~4.5 GB
Any 6GB GPU
https://huggingface.co/mistralai
Mistral Large 3
mistral-large-3
https://convly.ai/model/mistral-large-3/
Mistral AI
LLM (MoE)
Text → Text
675B total / 41B active (MoE)
256K
null
Apache 2.0 (open)
yes
2025
2
6
Mistral, OpenRouter
~400 GB
Multi-GPU server
https://huggingface.co/mistralai
Mistral NeMo 12B
mistral-nemo-12b
https://convly.ai/model/mistral-nemo-12b/
Mistral AI
LLM (dense)
Text → Text
12B
128K
null
Apache 2.0 (open)
yes
2024
0.02
0.04
Mistral, OpenRouter, Ollama
~7.5 GB
RTX 4070 12GB / RTX 3060
https://huggingface.co/mistralai
NVIDIA Nemotron 3 Nano Omni
nvidia-nemotron-3-nano-omni
https://convly.ai/model/nvidia-nemotron-3-nano-omni/
NVIDIA
Multimodal (omni)
Text, Image, Audio, Video → Text
30B total / ~3B active (MoE)
256K
NVIDIA Open Model Agreement
yes
2026
null
null
Hugging Face, OpenRouter, NVIDIA NIM
~21 GB (NVFP4)
RTX 5090 32GB (NVFP4) / H100 80GB (BF16)
https://huggingface.co/nvidia
Phi-4
phi-4
https://convly.ai/model/phi-4/
Microsoft
LLM (dense)
Text → Text
14B
16K
null
MIT (open)
yes
2025
0.07
0.14
Azure, OpenRouter, Ollama
~9 GB
RTX 4070 12GB / RTX 3060 12GB
https://huggingface.co/microsoft
Qwen3 14B
qwen3-14b
https://convly.ai/model/qwen3-14b/
Alibaba
LLM (dense)
Text → Text
14B
128K
null
Apache 2.0 (open)
yes
2025
0.12
0.24
Alibaba, OpenRouter, Ollama
~9 GB
RTX 4070 12GB (Q4)
https://huggingface.co/Qwen
Qwen3 235B-A22B
qwen3-235b-a22b
https://convly.ai/model/qwen3-235b-a22b/
Alibaba
LLM (MoE)
Text → Text
235B total / 22B active (MoE)
128K
null
Apache 2.0 (open)
yes
2025
0.45
1.8
Alibaba, OpenRouter
~140 GB
Multi-GPU or Mac 192GB
https://huggingface.co/Qwen
Qwen3 30B-A3B
qwen3-30b-a3b
https://convly.ai/model/qwen3-30b-a3b/
Alibaba
LLM (MoE)
Text → Text
30B total / 3B active (MoE)
128K
null
Apache 2.0 (open)
yes
2025
0.12
0.5
Alibaba, OpenRouter, Ollama
~18 GB
RTX 4090 24GB (Q4) — fast, 3B active
https://huggingface.co/Qwen
Qwen3 32B
qwen3-32b
https://convly.ai/model/qwen3-32b/
Alibaba
LLM (dense)
Text → Text
32B
128K
null
Apache 2.0 (open)
yes
2025
0.08
0.28
Alibaba, OpenRouter, Ollama
~20 GB
RTX 4090 24GB (Q4)
https://huggingface.co/Qwen
Qwen3 8B
qwen3-8b
https://convly.ai/model/qwen3-8b/
Alibaba
LLM (dense)
Text → Text
8B
128K
null
Apache 2.0 (open)
yes
2025
0.04
0.14
Alibaba, OpenRouter, Ollama
~5 GB
RTX 3060 8GB / any 8GB GPU
https://huggingface.co/Qwen

Convly AI Models Database

A continuously updated, hand-verified dataset of 30+ AI language models — specs, licenses, API pricing (USD per 1M tokens), and local-hardware (VRAM) requirements.

Maintained by Convly.ai · Live interactive version: https://convly.ai/models/

Fields

name, slug, convly_url, developer, model_type, modality, parameters, context_window, max_output, license, open_weights, release_date, input_price (USD/1M tokens), output_price (USD/1M tokens), api_providers, vram_q4 (GB, 4-bit), min_gpu, official_url

Coverage

Frontier + open-weight models as of July 2026: Claude (Opus 4.8, Fable 5, Sonnet 4.6, Haiku 4.5), GPT-5.5, Gemini 3.1 Pro / 3.5 Flash, DeepSeek V4-Pro / V4-Flash / R1, Qwen3 family, Llama 3.x / 4, Gemma 3, Mistral, Phi-4, GLM 5.2, Kimi K2.7 Code, NVIDIA Nemotron 3, and more.

Why

Provider pricing pages are inconsistent and marketing-heavy. This dataset normalizes verified specs, like-for-like per-million-token pricing, and practical 4-bit VRAM requirements so you can tell instantly whether a model runs on your hardware and what it costs to call. It powers the LLM VRAM Calculator, the AI API Cost Calculator, and the AI Price-Performance Index.

Usage

from datasets import load_dataset
ds = load_dataset("sakd99/ai-models-database")
print(ds["train"][0])

Or load the raw files directly:

import pandas as pd
df = pd.read_csv("convly-ai-models.csv")

License

CC BY 4.0 — free to use, share and adapt with attribution to Convly.ai (a link to https://convly.ai/models/ is perfect).

Citation

Convly.ai (2026). Convly AI Models Database [Data set]. https://convly.ai/models/
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