{ "model_type": "fela-ts", "architectures": [ "FelaTsModel" ], "auto_map": { "AutoConfig": "configuration_ts.FelaTsConfig", "AutoModel": "modeling_ts.FelaTsModel" }, "library_name": "pytorch", "arch": "FELA_TS", "note": "FELA time series forecaster, about 1.76M params. RevIN, patch embedding, FNO spectral mixer blocks, linear head. Trained on electricity, 321 channels, L=512, H=96.", "C": 321, "L": 512, "H": 96, "patch": 16, "stride": 8, "D": 128, "modes": 16, "nblk": 3, "input_shape": [ 1, 512, 321 ], "input_desc": "history window shape (1, 512, 321): 512 past steps of 321 channels, standardized per channel on training statistics. RevIN normalizes instances inside the model.", "complex_keys": [ "blocks.0.fno.w", "blocks.1.fno.w", "blocks.2.fno.w" ] }