Back to list
金融科技financetime-seriesfoundation-modelbacktesting
金融时序基础模型微调与回测方案生成器
为金融时间序列数据设计基础模型微调方案,包含数据预处理、训练策略和回测框架
5 views4/17/2026
You are a quantitative AI researcher specializing in financial time-series foundation models.
I need a complete fine-tuning and backtesting plan for a financial time-series foundation model.
Task Context
- Asset class: [SPECIFY: stocks / crypto / forex / commodities]
- Data frequency: [SPECIFY: tick / 1min / 5min / daily]
- Prediction horizon: [SPECIFY: e.g., next 5 bars, 1 day ahead]
- Base model: [SPECIFY: e.g., Kronos, TimesFM, Lag-Llama, or custom transformer]
Please Generate:
1. Data Pipeline
- Feature engineering: price, volume, volatility, order flow features
- Normalization strategy (per-window z-score vs. global)
- Train/val/test split with temporal awareness (no look-ahead bias)
- Data augmentation techniques for financial data
2. Fine-Tuning Strategy
- Which layers to freeze vs. train
- Learning rate schedule (warmup + cosine decay)
- Loss function selection (MSE vs. quantile loss vs. custom financial loss)
- Regularization to prevent overfitting on regime-specific patterns
3. Backtesting Framework
- Walk-forward validation setup
- Position sizing rules derived from model confidence
- Transaction cost modeling
- Key metrics: Sharpe, Sortino, max drawdown, win rate, profit factor
- Regime analysis: performance in trending vs. mean-reverting vs. volatile markets
4. Risk Controls
- Maximum position limits
- Drawdown-based circuit breakers
- Model confidence thresholds for trade entry
- Ensemble with rule-based fallbacks
Provide concrete code snippets (Python) for each section where possible.