Files
param-hub-python/data/gpus.json

209 lines
8.4 KiB
JSON
Raw Blame History

This file contains ambiguous Unicode characters
This file contains Unicode characters that might be confused with other characters. If you think that this is intentional, you can safely ignore this warning. Use the Escape button to reveal them.
[
{
"id": "h100",
"name": "NVIDIA H100",
"manufacturer": "NVIDIA",
"architecture": "Hopper",
"cuda_cores": 16896,
"tensor_cores": 528,
"memory_gb": 80,
"memory_bandwidth_gbs": 3352,
"fp32_tflops": 67,
"fp16_tflops": 1979,
"int8_perf_tops": 3958,
"price_usd": 30000,
"description": "数据中心顶级GPU专为AI训练设计",
"subcategory_id": "datacenter",
"publish_date": "2022-01-01"
},
{
"id": "a100",
"name": "NVIDIA A100",
"manufacturer": "NVIDIA",
"architecture": "Ampere",
"cuda_cores": 6912,
"tensor_cores": 432,
"memory_gb": 80,
"memory_bandwidth_gbs": 2039,
"fp32_tflops": 19.5,
"fp16_tflops": 312,
"int8_perf_tops": 624,
"price_usd": 10000,
"description": "数据中心主力GPUAI训练推理通用",
"subcategory_id": "datacenter",
"publish_date": "2020-01-01"
},
{
"id": "a10040g",
"name": "NVIDIA A100 40GB",
"manufacturer": "NVIDIA",
"architecture": "Ampere",
"cuda_cores": 6912,
"tensor_cores": 432,
"memory_gb": 40,
"memory_bandwidth_gbs": 1555,
"fp32_tflops": 19.5,
"fp16_tflops": 312,
"int8_perf_tops": 624,
"price_usd": 6000,
"description": "A100 40GB版本性价比更高",
"subcategory_id": "datacenter",
"publish_date": "2020-01-01"
},
{
"id": "l40s",
"name": "NVIDIA L40S",
"manufacturer": "NVIDIA",
"architecture": "Ada Lovelace",
"cuda_cores": 18176,
"tensor_cores": 568,
"memory_gb": 48,
"memory_bandwidth_gbs": 864,
"fp32_tflops": 91.6,
"fp16_tflops": 362,
"int8_perf_tops": 724,
"price_usd": 7000,
"description": "新一代数据中心GPU推理优化",
"subcategory_id": "datacenter",
"publish_date": "2023-01-01"
},
{
"id": "rtx4090",
"name": "NVIDIA RTX 4090",
"manufacturer": "NVIDIA",
"architecture": "Ada Lovelace",
"cuda_cores": 16384,
"tensor_cores": 512,
"memory_gb": 24,
"memory_bandwidth_gbs": 1008,
"fp32_tflops": 82.6,
"fp16_tflops": 330,
"int8_perf_tops": 660,
"price_usd": 1600,
"description": "消费级最强GPU适合个人AI开发",
"subcategory_id": "gaming",
"publish_date": "2022-01-01"
},
{
"id": "rtx4090d",
"name": "NVIDIA RTX 4090D",
"manufacturer": "NVIDIA",
"architecture": "Ada Lovelace",
"cuda_cores": 14592,
"tensor_cores": 456,
"memory_gb": 24,
"memory_bandwidth_gbs": 1008,
"fp32_tflops": 73.5,
"fp16_tflops": 294,
"int8_perf_tops": 588,
"price_usd": 1400,
"description": "4090中国特供版性能略降",
"subcategory_id": "gaming",
"publish_date": "2024-01-01"
},
{
"id": "rtx3090",
"name": "NVIDIA RTX 3090",
"manufacturer": "NVIDIA",
"architecture": "Ampere",
"cuda_cores": 10496,
"tensor_cores": 328,
"memory_gb": 24,
"memory_bandwidth_gbs": 936,
"fp32_tflops": 35.6,
"fp16_tflops": 142,
"int8_perf_tops": 284,
"price_usd": 1200,
"description": "上一代旗舰,性价比高",
"subcategory_id": "gaming",
"publish_date": "2020-01-01"
},
{
"id": "rtx3080",
"name": "NVIDIA RTX 3080",
"manufacturer": "NVIDIA",
"architecture": "Ampere",
"cuda_cores": 8704,
"tensor_cores": 272,
"memory_gb": 10,
"memory_bandwidth_gbs": 760,
"fp32_tflops": 29.8,
"fp16_tflops": 119,
"int8_perf_tops": 238,
"price_usd": 700,
"description": "中高端消费级GPU",
"subcategory_id": "gaming",
"publish_date": "2020-01-01"
},
{
"id": "v100",
"name": "NVIDIA V100",
"manufacturer": "NVIDIA",
"architecture": "Volta",
"cuda_cores": 5120,
"tensor_cores": 640,
"memory_gb": 32,
"memory_bandwidth_gbs": 900,
"fp32_tflops": 14.8,
"fp16_tflops": 118,
"int8_perf_tops": 236,
"price_usd": 4000,
"description": "上一代数据中心GPU仍有价值",
"subcategory_id": "datacenter",
"publish_date": "2017-01-01"
},
{
"id": "mi300x",
"name": "AMD MI300X",
"manufacturer": "AMD",
"architecture": "CDNA 3",
"cuda_cores": 0,
"tensor_cores": 304,
"memory_gb": 192,
"memory_bandwidth_gbs": 5300,
"fp32_tflops": 81.7,
"fp16_tflops": 1307,
"int8_perf_tops": 2614,
"price_usd": 15000,
"description": "AMD最强AI GPU192GB显存",
"subcategory_id": "datacenter",
"publish_date": "2023-01-01"
},
{
"name": "RTX 6000D",
"manufacturer": "NVIDIA",
"memory_gb": 84,
"cuda_cores": 19968,
"description": "NVIDIA为中国市场定制的全新工作站显卡搭载84GB GDDR7显存、19968个CUDA核心采用被动散热设计专为服务器机箱风道优化。显存总线为448位核心频率为2430MHz在Geekbench 6 OpenCL测试中获得390,656分。",
"id": "f56b2de6fac4",
"created_at": "2026-04-20 18:19:14",
"visible": true,
"raw_text": "据tweaktown报道NVIDIA为中国市场定制的全新工作站显卡RTX 6000D近日迎来首度拆解。该卡搭载84GB GDDR7显存、19968个CUDA核心采用被动散热设计专为服务器机箱风道优化。\n\n\n相较于满血RTX PRO 600096GB GDDR7/512-bit中国特供版RTX 6000D在规格上进行了多处调整。国内团队“技数犬”发布了拆解视频。\n\n据了解RTX 6000D为无风扇被动散热设计完全依靠机箱气流降温。\n\nRTX 6000D搭载28颗VRAM模块总计84GB GDDR7显存显存总线为448位相比RTX PRO 6000的96GB/512位有所减少。\n\nRTX 6000D GPU 核心为156 SM单元19,968个CUDA核心比RTX PRO 6000少约17%。\n\nRTX 6000D核心频率为2430MHzRTX PRO 6000为2600MHzTDP暂未公布。性能方面RTX 6000D在Geekbench 6 OpenCL测试中获得390,656分低于RTX PRO 6000的4550万分。",
"currency": "CNY",
"price_usd": 45000,
"updated_at": "2026-04-28 11:56:48",
"subcategory_id": "professional",
"views": 0,
"images": [],
"publish_date": "2024-01-01"
},
{
"name": "RTX PRO 6000",
"description": "这款专业显卡基于 GB202 GPU拥有 24064 个 CUDA 核心188 个 SM运行频率达 2,617 MHz并配备 96 GB 支持 ECC 校验的 GDDR7 显存。\n\n相比之下面向游戏市场的旗舰显卡 RTX 5090 虽同样基于 GB202 ,但其 CUDA 核心数量缩减至 21,760 个,频率为 2,410 MHz显存容量为 32 GB。\n\n96G超大显存RTX PRO 6000Blackwell初次跑分略逊于RTX 5090\n其测试平台采用了华硕 Pro WS WRX80E-SAGE SE WIFI 主板、AMD 锐龙 Threadripper PRO 3975WX 处理器、512 GB 内存。\n\n在 Geekbench 6.4.0 上,其测试平台 OpenCL 得分仅 368219 分,略低于 RTX 5090 的 376,858 分,差距约 2.3%,外媒认为这主要是由于 RTX PRO 6000 缺乏正式版驱动导致,且显卡功耗可能受限。\n\nRTX PRO 6000 系列将提供两种版本分别为适用于紧凑型机箱规格相同的Max-Q 工作站版但TDP 功耗限制在 300W以及支持最高600W TDP的标准版可满足高强度计算需求。",
"id": "d246301f2032",
"created_at": "2026-04-20 18:21:00",
"visible": true,
"raw_text": "这款专业显卡基于 GB202 GPU拥有 24064 个 CUDA 核心188 个 SM运行频率达 2,617 MHz并配备 96 GB 支持 ECC 校验的 GDDR7 显存。\n\n相比之下面向游戏市场的旗舰显卡 RTX 5090 虽同样基于 GB202 ,但其 CUDA 核心数量缩减至 21,760 个,频率为 2,410 MHz显存容量为 32 GB。\n\n96G超大显存RTX PRO 6000Blackwell初次跑分略逊于RTX 5090\n其测试平台采用了华硕 Pro WS WRX80E-SAGE SE WIFI 主板、AMD 锐龙 Threadripper PRO 3975WX 处理器、512 GB 内存。\n\n在 Geekbench 6.4.0 上,其测试平台 OpenCL 得分仅 368219 分,略低于 RTX 5090 的 376,858 分,差距约 2.3%,外媒认为这主要是由于 RTX PRO 6000 缺乏正式版驱动导致,且显卡功耗可能受限。\n\nRTX PRO 6000 系列将提供两种版本分别为适用于紧凑型机箱规格相同的Max-Q 工作站版但TDP 功耗限制在 300W以及支持最高600W TDP的标准版可满足高强度计算需求。",
"architecture": "GB202",
"memory_gb": 96,
"cuda_cores": 24064,
"currency": "CNY",
"price_usd": 65000,
"updated_at": "2026-04-28 11:56:38",
"manufacturer": "NVIDIA",
"subcategory_id": "professional",
"views": 0,
"images": [],
"publish_date": "2020-01-01"
}
]