Submit evaluation results for Toto-2.0-1B

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  1. results/Toto-2.0-1B/Australia_Solar/H/long/config.json +40 -0
  2. results/Toto-2.0-1B/Australia_Solar/H/long/metrics.npz +3 -0
  3. results/Toto-2.0-1B/Australia_Solar/H/long/predictions.npz +3 -0
  4. results/Toto-2.0-1B/Australia_Solar/H/medium/config.json +40 -0
  5. results/Toto-2.0-1B/Australia_Solar/H/medium/metrics.npz +3 -0
  6. results/Toto-2.0-1B/Australia_Solar/H/medium/predictions.npz +3 -0
  7. results/Toto-2.0-1B/Australia_Solar/H/short/config.json +40 -0
  8. results/Toto-2.0-1B/Australia_Solar/H/short/metrics.npz +3 -0
  9. results/Toto-2.0-1B/Australia_Solar/H/short/predictions.npz +3 -0
  10. results/Toto-2.0-1B/Auto_Production_SF/M/short/config.json +40 -0
  11. results/Toto-2.0-1B/Auto_Production_SF/M/short/metrics.npz +3 -0
  12. results/Toto-2.0-1B/Auto_Production_SF/M/short/predictions.npz +3 -0
  13. results/Toto-2.0-1B/CPHL/15T/long/config.json +40 -0
  14. results/Toto-2.0-1B/CPHL/15T/long/metrics.npz +3 -0
  15. results/Toto-2.0-1B/CPHL/15T/long/predictions.npz +3 -0
  16. results/Toto-2.0-1B/CPHL/15T/medium/config.json +40 -0
  17. results/Toto-2.0-1B/CPHL/15T/medium/metrics.npz +3 -0
  18. results/Toto-2.0-1B/CPHL/15T/medium/predictions.npz +3 -0
  19. results/Toto-2.0-1B/CPHL/15T/short/config.json +40 -0
  20. results/Toto-2.0-1B/CPHL/15T/short/metrics.npz +3 -0
  21. results/Toto-2.0-1B/CPHL/15T/short/predictions.npz +3 -0
  22. results/Toto-2.0-1B/CPHL/30T/long/config.json +40 -0
  23. results/Toto-2.0-1B/CPHL/30T/long/metrics.npz +3 -0
  24. results/Toto-2.0-1B/CPHL/30T/long/predictions.npz +3 -0
  25. results/Toto-2.0-1B/CPHL/30T/medium/config.json +40 -0
  26. results/Toto-2.0-1B/CPHL/30T/medium/metrics.npz +3 -0
  27. results/Toto-2.0-1B/CPHL/30T/medium/predictions.npz +3 -0
  28. results/Toto-2.0-1B/CPHL/30T/short/config.json +40 -0
  29. results/Toto-2.0-1B/CPHL/30T/short/metrics.npz +3 -0
  30. results/Toto-2.0-1B/CPHL/30T/short/predictions.npz +3 -0
  31. results/Toto-2.0-1B/CPHL/H/long/config.json +40 -0
  32. results/Toto-2.0-1B/CPHL/H/long/metrics.npz +3 -0
  33. results/Toto-2.0-1B/CPHL/H/long/predictions.npz +3 -0
  34. results/Toto-2.0-1B/CPHL/H/medium/config.json +40 -0
  35. results/Toto-2.0-1B/CPHL/H/medium/metrics.npz +3 -0
  36. results/Toto-2.0-1B/CPHL/H/medium/predictions.npz +3 -0
  37. results/Toto-2.0-1B/CPHL/H/short/config.json +40 -0
  38. results/Toto-2.0-1B/CPHL/H/short/metrics.npz +3 -0
  39. results/Toto-2.0-1B/CPHL/H/short/predictions.npz +3 -0
  40. results/Toto-2.0-1B/Coastal_T_S/15T/long/config.json +40 -0
  41. results/Toto-2.0-1B/Coastal_T_S/15T/long/metrics.npz +3 -0
  42. results/Toto-2.0-1B/Coastal_T_S/15T/long/predictions.npz +3 -0
  43. results/Toto-2.0-1B/Coastal_T_S/15T/medium/config.json +40 -0
  44. results/Toto-2.0-1B/Coastal_T_S/15T/medium/metrics.npz +3 -0
  45. results/Toto-2.0-1B/Coastal_T_S/15T/medium/predictions.npz +3 -0
  46. results/Toto-2.0-1B/Coastal_T_S/15T/short/config.json +40 -0
  47. results/Toto-2.0-1B/Coastal_T_S/15T/short/metrics.npz +3 -0
  48. results/Toto-2.0-1B/Coastal_T_S/15T/short/predictions.npz +3 -0
  49. results/Toto-2.0-1B/Coastal_T_S/20T/long/config.json +40 -0
  50. results/Toto-2.0-1B/Coastal_T_S/20T/long/metrics.npz +3 -0
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