Cloud-Native Planetary Scale Supercomputing

Spatial-temporal data is intrinsically large-scale. The amounts of both meteorology and remote sensing data are at PB level and are still growing at TB-level on a daily basis.

TerraQuanta's computing infrastructure enables AI to efficiently deliver accurate forecasting results and surface model anywhere in the globe.

PB-Level Data Processing

Processing up to 100 billion data points and inhaling TBs of data on a daily basis, effectively support large-scale and high-frequency computing mission.

Cutting-edge MLOps

Neural Architecture Search (NAS), AutoML, and CUDA-based acceleration are applied in distributed training and processing.

Grow With Giants

Proudly graduated accelerators by Microsoft, Intel, and Nvidia, TerraQuanta has abundant cloud and in-house computing resource.

OceanStorm

Management Platform For Smart Large-scale Computing

  • A computing management platform for spatial-temporal data.

  • Flexibly scheduling thousands of GPUs and CPUs

  • Execute billions of data point calculations, hugely supporting AI training and processing of globe-scale weather forecasting

Poseidon

GPU Management Engine for Model Training and Inference

  • Enables distributed training and large-scale data manufacturing, constantly integrates and deploys deep learning models in their complete life cycles.

  • In combination with GPU technologies such as TensorRT, dramatically accelerates data processing

  • Beyond deep learning - Various GPU-based applications such as FFT

Halia

CPU and Model Management Engine For Parallel Computing

  • Digital earth is more than deep learning. Analytical and numerical models also rely on CPU cluster

  • Use high performance CPU cluster to regularly execute large-scale numerical computing

  • Cloud-native architecture for constant integration and deployment of analytical and numerical models

Graduated from startup accelerators

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