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S2S Forecasting Expert (FuXi, FengWu, AIFS)

End-to-end builder for AI-based Subseasonal-to-Seasonal (S2S) forecasting systems. Generates runnable PyTorch code for FuXi-style, FengWu-style, and AIFS-ins...
基于人工智能的次季节至季节(S2S)预测系统端到端构建工具。可生成FuXi、FengWu及AIFS等风格的PyTorch可运行代码。
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概述

S2S Model Builder (Subseasonal-to-Seasonal Forecasting)

This skill actively helps you design, implement, and train S2S forecasting models from scratch.

It generates:

  • PyTorch model architectures
  • Training loops
  • CRPS loss implementations
  • Data preprocessing pipelines (ERA5-style)
  • Evaluation scripts
  • Multi-GPU training configurations
  • Inference pipelines

Supported paradigms include:

  • FuXi-style transformer architectures
  • FengWu-style Earth system transformers
  • AIFS-inspired probabilistic models
  • Ensemble neural forecasting
  • Multi-lead-time forecasting heads

What This Skill Can Build

1. Model Architecture Code

  • 3D spatiotemporal transformers
  • Global grid attention models
  • Multi-variable input pipelines (Z500, T2M, winds, SST)
  • Lead-time conditioned decoders
  • Ensemble output heads

2. Training Infrastructure

  • PyTorch training loops
  • Distributed training (FSDP-ready structure)
  • Mixed precision support
  • Gradient accumulation
  • Checkpoint saving

3. Probabilistic Forecasting

  • CRPS loss (Gaussian & ensemble forms)
  • Quantile regression heads
  • Spread-skill diagnostics
  • Reliability calibration utilities

4. Evaluation Code

  • CRPS computation
  • ACC metric implementation
  • RMSE across forecast horizons
  • Skill vs climatology baseline

5. Deployment-Ready Inference

  • Batched inference scripts
  • Memory-optimized forward passes
  • Model export patterns

Example Prompts

  • “Generate a FuXi-style transformer in PyTorch for 30-day Z500 forecasting.”
  • “Build a CRPS loss function for ensemble S2S outputs.”
  • “Create a full ERA5 training pipeline scaffold.”
  • “Design a multi-lead-time S2S forecasting head.”
  • “Implement distributed training for global 1° resolution data.”

External Endpoints

This skill does not call external APIs.

EndpointPurposeData Sent
------------------------------
NoneN/ANone

All generated code runs locally within the user’s environment.


Security & Privacy

  • No external API calls
  • No automatic dataset downloads
  • No remote execution
  • No hidden scripts
  • All code is generated transparently

Users are responsible for lawful dataset usage (e.g., ERA5 licensing).


Model Invocation Note

This skill may be automatically invoked when user queries involve:

  • Building S2S models
  • FuXi / FengWu / AIFS implementations
  • CRPS training
  • AI weather model architecture
  • ERA5 training pipelines

Users may opt out by disabling the skill.


Trust Statement

By using this skill, you acknowledge it generates code for AI-based climate forecasting systems. No data is transmitted externally. All execution occurs within your own environment.


Version

v1.0.0

Last updated: Feb 16, 2026

版本历史

共 1 个版本

  • v1.0.1 当前
    2026-03-29 08:53 安全 安全

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