TimeGPT is a transformer based foundation model trained on massive multi-domain time series corpora. It learns general patterns like seasonality, shocks, and regime drift, then adapts quickly to specific crypto symbols with a short context window.
TimeGPT transforms past observations into embeddings, applies multi-head attention to capture long range dependencies, and predicts a distribution of future values. The model is trained on many markets, so it recognizes patterns such as volatility clustering and sudden liquidity shifts before fine tuning on a target symbol.
For crypto, we feed TimeGPT with price, volume, funding rates, and calendar signals, then project multiple horizons with uncertainty bands. That uncertainty becomes a confidence weight in the trading decision engine.
Normalize price history, inject time features, and map into a shared latent space.
Multi-head attention weights past segments based on relevance to the current regime.
Generate multiple step forecasts with probabilistic intervals and calibration checks.
Translate uncertainty into a confidence signal for downstream risk sizing.
Attention based forecasting enables long range memory with scalable computation while keeping uncertainty front and center.
TimeGPT is the long memory engine that powers mid horizon projections and signal validation.