gcube

Easy to Share and Economical to Rent

Global GPU NETWORK

Use GPU economically by charging based on resource usage,
not fixed costs.

Reasonable Cost - Pay Only for What You Use

Up to 70% More Economical
GPU Cloud Platform

Use GPU economically by charging based on resource usage,
not fixed costs.
CESIA26
CES Innovation Awards®2026 Honoree in Artificial Intelligence
The CES Innovation Awards are based upon descriptive materials submitted to the judges.CTA did not verify the accuracy of any submission or of any claims made and did not test the item to which the award was given.
CES Innovation Awards®2026 Honoree inArtificial Intelligence

Efficient GPU Usage at Minimal Cost

Good performance but high cost, Low cost but insufficient performance.
We have overcome the limitations of GPU sharing services.

  • Global GPU Grid
    gcube is a GPU sharing economy service that maintains strong cloud computing performance through Global GPU networking while providing it at an economical price.
  • Applicable to any environment
    Customized Supply
    Using cloud-native technology, we combine CSP GPUs and PC GPUs to provide various customized services for high-traffic services, irregular demand, and more.
  • Multiple domestic GPU resources
    secured for High Stability
    Starting with domestic-based services, we secure multiple suppliers to provide stable services through various GPU resources and fast networks.
  • Affordable for Everyone
    GPU Available to Use
    Direct contracts with suppliers and technology that anyone can easily supply reduce supply costs, making it more economical to use.

Up to 70% more economical GPU to use.
Use only what you need without worrying about costs, enjoy it.

Hourly GPU Usage Cost

  • 39,746KRW

    4,830KRW

    Cost Advantage
    H100 X 1
  • 137,646KRW

    34,720KRW

    Cost Advantage
    H100 X 8
  • 57,344KRW

    20,790KRW

    Cost Advantage
    A100
  • 34,272KRW

    1,610KRW

    Cost Advantage
    V100 X 2
gcube
Our Company
Other Companies
Other Companies
    Based on 1 month
    ??0,000 KRW from available.

    gcube does not charge for unused time when using GPU. Costs are charged based on actual resource usage ratio through real-time monitoring.

    Economical and Diverse GPUs

    Choose from a variety of GPUs
    with the purpose and specs you want at gcube.

    Choose from a variety of GPUs
    with the purpose and specs
    you want at gcube.

    TIER 1
    For government-supported projects Large-scale data processing
    • Large capacity
    • High performance
    • 24/7 stable

    GPUs provided by Cloud service providers

      TIER 2
      For universities and research institutes Research purposes
      • Stable network
      • High performance
      • Customized

      Dedicated server GPUs provided through direct contracts

        TIER 2
        For startups AI model development
        • Stable network
        • High performance
        • Customized

        Dedicated server GPUs provided through direct contracts

          TIER 3
          For individual developers Resources for mining
          • Affordable
          • Diverse
          • Flexible

          Personal / PC bang GPUs at economical prices

          GPU Model
          0 types +
          Hourly Price
          0 KRW~
          Monthly Usage Cost
          0 KRW~
          • RTX 5000 Series
          • RTX 4000 Series
          • RTX 3000 Series
          • RTX 2000 Series
          • RTX A Series
          • RTX ADA Series
          • etc

            Based on real-time GPU usage analysis data,
            we establish a reasonable cost structure
            and transparently disclose analysis data.

            2025/06/08 15:30:27 routes.go : 1259 : INFO server config env=”map[CUDA_VISIBLE_DEVICES:

            GPU_DEVICE_ORDINAL: HIP_VISIBLE_DEVICES: HSA_OVERRIDE_GFX_VERSION:HTTPS_PROXYL

            HTTP_PROXY: NO_PROXY: OLLAMA_DEBUG:false OLLAMA_FLASH_ATTENTION:false

            OLLAMA_GPU_OVERHEAD:0 OlLAMA_HOST:http://0.0.0.0:11434 OLLAMA_INTEL_GPU:false

            OLLAMA_KEEP_ALIVE:5m0s OLLAMA_KV_CACHE_TYPE: OLLAMA_LLM_LIBRARY:

            OLLAMA_LOAD_TIMEOUT:5m0s OLLAMA_MAX_LOADED_MODELS:0 OLLAMA_MAX_QUEUE:512

            OLLAMA_MODELS:/root/.ollama/models OLLAMA_MULTIUSER_CACHE:false OLLAMA_NOHISTORY:false

            OLLAMA_NOPRUNE:false OLLAMA_NUM_PARALLEL:0 OLLAMA_ORIGINS:[http://localhost

            http://localhost http://localhost:* https://localhost:* http:127.0.0.1 https://127.0.0.1

            http://127.0.0.1:* https://127.0.0.1:* http://0.0.0.0 https://0.0.0.0 http://0.0.0.0:*

            http://0.0.0.0* app://* file://* tauri://* vscode-webview://*] OLLAMA_SCHED_SPREAD:false

            ROCR_VISIBLE_DEVICES: http_proxy:https_proxy: no_proxy:]”


            time=2025-06-18T15:30:27.553Z level=INFO source=images.go:757 msg=”total blobs: 5”

            time=2025-06-18T15:30:27.553Z level=INFO source=images.go:757 msg=”total unused blobs removed: 0”

            [GIN-debug] [WARNING] Creating an Engine instance with the Logger and Recovery middleware alreay attached.


            [GIN-debug] [WARNING] Running in “debug” mode. Switch to “release” mode in production.

            - using env: export GIN_MODE=release


            2025/06/08 15:30:27 routes.go : 1259 : INFO server config env=”map[CUDA_VISIBLE_DEVICES:

            GPU_DEVICE_ORDINAL: HIP_VISIBLE_DEVICES: HSA_OVERRIDE_GFX_VERSION:HTTPS_PROXYL

            HTTP_PROXY: NO_PROXY: OLLAMA_DEBUG:false OLLAMA_FLASH_ATTENTION:false

            OLLAMA_GPU_OVERHEAD:0 OlLAMA_HOST:http://0.0.0.0:11434 OLLAMA_INTEL_GPU:false

            OLLAMA_KEEP_ALIVE:5m0s OLLAMA_KV_CACHE_TYPE: OLLAMA_LLM_LIBRARY:

            OLLAMA_LOAD_TIMEOUT:5m0s OLLAMA_MAX_LOADED_MODELS:0 OLLAMA_MAX_QUEUE:512

            OLLAMA_MODELS:/root/.ollama/models OLLAMA_MULTIUSER_CACHE:false OLLAMA_NOHISTORY:false

            OLLAMA_NOPRUNE:false OLLAMA_NUM_PARALLEL:0 OLLAMA_ORIGINS:[http://localhost

            http://localhost http://localhost:* https://localhost:* http:127.0.0.1 https://127.0.0.1

            http://127.0.0.1:* https://127.0.0.1:* http://0.0.0.0 https://0.0.0.0 http://0.0.0.0:*

            http://0.0.0.0* app://* file://* tauri://* vscode-webview://*] OLLAMA_SCHED_SPREAD:false

            ROCR_VISIBLE_DEVICES: http_proxy:https_proxy: no_proxy:]”


            time=2025-06-18T15:30:27.553Z level=INFO source=images.go:757 msg=”total blobs: 5”

            time=2025-06-18T15:30:27.553Z level=INFO source=images.go:757 msg=”total unused blobs removed: 0”

            [GIN-debug] [WARNING] Creating an Engine instance with the Logger and Recovery middleware alreay attached.


            [GIN-debug] [WARNING] Running in “debug” mode. Switch to “release” mode in production.

            - using env: export GIN_MODE=release

            Container Log

            Real-time workload operation log inquiry is available after workload deployment.

            Event container PCEvent container mobile
            WARNING
            Startup probe failed: Get "http://10.249.7.253:15021/healthz/ready": dial tcp 10.249.7.253:15021: connection refused
            Deployment Event Status

            Status change history is shared in real-time during workload operation.Also provided through console notifications, allowing you to immediately check disconnections or status changes and take necessary actions.

                Monitoring

                We disclose hourly resource usage of connected GPUs during workload execution.
                We provide a reliable service by sharing GPU cost calculation data with users.

                gcube Blog

                  FAQ

                    gcube Partners

                    NAVER Cloud
                    KAIST
                    NHN CLOUD
                    용인대학교
                    soundmind
                    KT cloud
                    TOONSQAURE
                    한국전자통신연구원
                    고려대학교
                    NAVER Cloud
                    KAIST
                    NHN CLOUD
                    용인대학교
                    soundmind
                    KT cloud
                    TOONSQAURE
                    한국전자통신연구원
                    고려대학교
                    Ask our experts anything.