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anomaly_explicit/template0/item0
GIFT synthesize
anomaly
D
45.104,79.022,108.380,130.293,349.321,558.734,758.739,950.305,1134.104,1311.993,1487.250,1661.686,1632.464,1607.898,1590.064,1344.266,1112.177,899.515,709.815,546.336,410.910,304.957,228.124,180.906,161.755,186.750,204.405,211.847,210.322,199.754,181.145,155.469,125.881,94.922,64.674,37.938,17.032,3.750,0.000,5.167,19....
2025-10-10 00:00:00
2026-03-14 00:00:00
402.873,436.584,467.769,493.818,512.793,523.240,524.807,517.773,501.788,479.120,451.661,420.819,390.106,361.369,337.711,320.128,311.013,310.448,318.996,336.027,360.150,390.035,422.790,456.281,488.259,516.004,537.864,551.647,556.554,552.514,539.779,519.717,493.478,463.748,432.535,402.473,375.970,355.366,342.552,337.904,...
2026-03-15 00:00:00
2026-06-22 00:00:00
,
100
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the sales of this store over the next 100 days, from 2026-03-15 00:00:00 to 2026-06-22 00:00:00. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the sales volume of a chain store. The data was recorded from 2025-10-10 00:00:00 to 2026-03-14 00:00:00 with the daily (D) frequency. Due to a software bug, the sales records from 2025-10-12 00:00:00 to 2025-11-03 00:00:00 and were significantly higher than normal. After updating the software ...
<history>45.104,79.022,108.380,130.293,349.321,558.734,758.739,950.305,1134.104,1311.993,1487.250,1661.686,1632.464,1607.898,1590.064,1344.266,1112.177,899.515,709.815,546.336,410.910,304.957,228.124,180.906,161.755,186.750,204.405,211.847,210.322,199.754,181.145,155.469,125.881,94.922,64.674,37.938,17.032,3.750,0.000,...
anomaly_explicit/template1/item0
GIFT synthesize
anomaly
D
46.772,99.481,164.879,238.480,316.446,395.768,470.917,538.994,596.387,639.657,664.900,674.772,663.466,636.520,593.470,536.605,467.878,392.910,314.391,238.260,165.277,103.903,52.939,18.215,0.000,0.491,19.617,54.671,104.645,168.635,241.853,320.678,400.364,477.662,548.539,608.676,655.085,685.787,461.035,460.935,530.947,62...
2025-10-10 00:00:00
2026-03-14 00:00:00
1499.326,1442.447,1400.282,1372.734,1360.509,1367.624,1390.619,1431.066,1487.617,1555.376,1633.062,1714.711,1798.462,1879.529,1953.418,2017.664,2069.097,2103.539,2121.425,2120.529,2104.092,2070.618,2022.609,1964.755,1899.697,1828.783,1758.949,1694.447,1637.019,1592.951,1562.462,1548.716,1552.564,1574.543,1612.220,1666....
2026-03-15 00:00:00
2026-06-22 00:00:00
,
100
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the sales of this store over the next 100 days, from 2026-03-15 00:00:00 to 2026-06-22 00:00:00. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the sales volume of a chain store. The data was recorded from 2025-10-10 00:00:00 to 2026-03-14 00:00:00 with the daily (D) frequency. Due to a software bug, the sales records from 2025-11-16 00:00:00 to 2025-12-19 00:00:00 and were significantly higher than normal. After updating the software ...
<history>46.772,99.481,164.879,238.480,316.446,395.768,470.917,538.994,596.387,639.657,664.900,674.772,663.466,636.520,593.470,536.605,467.878,392.910,314.391,238.260,165.277,103.903,52.939,18.215,0.000,0.491,19.617,54.671,104.645,168.635,241.853,320.678,400.364,477.662,548.539,608.676,655.085,685.787,461.035,460.935,5...
anomaly_explicit/template2/item0
GIFT synthesize
anomaly
D
0.000,4.764,9.816,347.463,352.129,357.037,361.771,366.596,371.127,42.951,47.887,52.604,57.297,61.968,66.791,71.599,76.038,81.062,85.932,90.727,95.615,100.096,104.990,109.651,114.286,119.451,124.063,128.492,133.504,471.437,476.085,480.917,485.670,490.408,495.209,166.946,171.702,176.499,181.160,186.039,190.568,195.340,20...
2025-10-10 00:00:00
2026-08-29 00:00:00
567.330,563.851,560.510,557.218,553.930,550.381,547.282,544.045,540.575,537.263,533.990,530.680,527.374,523.913,520.628,517.192,513.912,510.718,840.694,836.994,833.730,830.488,827.130,823.966,487.302,483.954,480.738,477.371,473.923,470.542,467.508,464.291,460.522,457.616,453.955,450.759,447.493,443.993,440.871,437.349,...
2026-08-30 00:00:00
2026-10-28 00:00:00
,
60
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the sales of this store over the next 60 days, from 2026-08-30 00:00:00 to 2026-10-28 00:00:00. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the sales volume of a chain store. The data was recorded from 2025-10-10 00:00:00 to 2026-08-29 00:00:00 with the daily (D) frequency. Due to a software bug, the sales records from 2025-12-10 00:00:00 to 2026-01-21 00:00:00 and were significantly higher than normal. After updating the software ...
<history>0.000,4.764,9.816,347.463,352.129,357.037,361.771,366.596,371.127,42.951,47.887,52.604,57.297,61.968,66.791,71.599,76.038,81.062,85.932,90.727,95.615,100.096,104.990,109.651,114.286,119.451,124.063,128.492,133.504,471.437,476.085,480.917,485.670,490.408,495.209,166.946,171.702,176.499,181.160,186.039,190.568,1...
anomaly_explicit/template3/item0
GIFT synthesize
anomaly
D
6944.088,6945.398,6946.665,6947.786,8104.850,8105.924,8107.217,8108.393,8109.475,6954.818,6955.899,6957.059,6958.090,6959.145,6960.220,6961.318,6962.292,6963.399,6964.440,6965.396,6966.335,6967.329,6968.318,6969.262,6970.308,6971.189,6972.053,6973.114,6973.924,6974.849,6975.773,6976.581,6977.520,6978.297,6979.155,7115....
2025-10-10 00:00:00
2026-08-29 00:00:00
6466.536,6459.267,6451.852,6444.468,6437.123,6429.581,6422.198,6414.712,6407.187,6399.671,6392.087,6384.398,6376.877,6369.230,7517.373,7509.814,7502.162,7494.271,7486.602,6322.886,6315.160,6307.410,6299.605,6291.797,6283.850,6275.946,6268.076,6260.101,6252.187,6244.291,6236.252,6228.239,6220.270,6212.217,6204.159,6196....
2026-08-30 00:00:00
2026-10-28 00:00:00
,
60
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the sales of this store over the next 60 days, from 2026-08-30 00:00:00 to 2026-10-28 00:00:00. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the sales volume of a chain store. The data was recorded from 2025-10-10 00:00:00 to 2026-08-29 00:00:00 with the daily (D) frequency. Due to a software bug, the sales records from 2025-11-12 00:00:00 to 2025-12-27 00:00:00 and were significantly higher than normal. After updating the software ...
<history>6944.088,6945.398,6946.665,6947.786,8104.850,8105.924,8107.217,8108.393,8109.475,6954.818,6955.899,6957.059,6958.090,6959.145,6960.220,6961.318,6962.292,6963.399,6964.440,6965.396,6966.335,6967.329,6968.318,6969.262,6970.308,6971.189,6972.053,6973.114,6973.924,6974.849,6975.773,6976.581,6977.520,6978.297,6979....
anomaly_explicit/template4/item0
GIFT synthesize
anomaly
D
0.230,0.000,0.366,0.137,0.345,0.323,0.349,0.397,75.318,181.330,286.902,393.023,498.804,604.807,710.371,816.593,922.629,1028.266,1134.330,1240.201,1346.289,1318.352,1212.853,1107.412,1001.988,896.562,791.123,685.764,580.448,475.020,369.519,264.109,158.908,53.371,7.201,192.690,378.194,563.654,749.032,934.683,1120.189,112...
2025-10-10 00:00:00
2026-10-06 00:00:00
3220.355,3224.736,3229.461,3233.663,3238.274,3242.641,3247.277,3251.589,3255.986,3260.670,3265.206,3269.632,3274.239,3323.827,3434.091,3544.387,3654.920,3765.089,3875.486,3985.651,4096.160,4206.626,4317.014,4427.350,4537.837,4648.154,4684.358,4583.580,4482.299,4381.427,4280.275,4179.417,4078.499,3977.466,3876.758,3775....
2026-10-07 00:00:00
2027-03-05 00:00:00
,
150
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the sales of this store over the next 150 days, from 2026-10-07 00:00:00 to 2027-03-05 00:00:00. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the sales volume of a chain store. The data was recorded from 2025-10-10 00:00:00 to 2026-10-06 00:00:00 with the daily (D) frequency. Due to a software bug, the sales records from 2025-11-12 00:00:00 to 2025-11-19 00:00:00 and were significantly higher than normal. After updating the software ...
<history>0.230,0.000,0.366,0.137,0.345,0.323,0.349,0.397,75.318,181.330,286.902,393.023,498.804,604.807,710.371,816.593,922.629,1028.266,1134.330,1240.201,1346.289,1318.352,1212.853,1107.412,1001.988,896.562,791.123,685.764,580.448,475.020,369.519,264.109,158.908,53.371,7.201,192.690,378.194,563.654,749.032,934.683,112...
anomaly_implicit/template0/item0
GIFT synthesize
anomaly
D
45.104,79.022,108.380,130.293,349.321,558.734,758.739,950.305,1134.104,1311.993,1487.250,1661.686,1632.464,1607.898,1590.064,1344.266,1112.177,899.515,709.815,546.336,410.910,304.957,228.124,180.906,161.755,186.750,204.405,211.847,210.322,199.754,181.145,155.469,125.881,94.922,64.674,37.938,17.032,3.750,0.000,5.167,19....
2025-10-10 00:00:00
2026-03-14 00:00:00
402.873,436.584,467.769,493.818,512.793,523.240,524.807,517.773,501.788,479.120,451.661,420.819,390.106,361.369,337.711,320.128,311.013,310.448,318.996,336.027,360.150,390.035,422.790,456.281,488.259,516.004,537.864,551.647,556.554,552.514,539.779,519.717,493.478,463.748,432.535,402.473,375.970,355.366,342.552,337.904,...
2026-03-15 00:00:00
2026-06-22 00:00:00
,
100
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the sales of this store over the next 100 days, from 2026-03-15 00:00:00 to 2026-06-22 00:00:00. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the sales volume of a chain store. The data was recorded from 2025-10-10 00:00:00 to 2026-03-14 00:00:00 with the daily (D) frequency. Due to a software bug, there was a period where the sales records were incorrect and were significantly higher than normal. After updating the software version,...
<history>45.104,79.022,108.380,130.293,349.321,558.734,758.739,950.305,1134.104,1311.993,1487.250,1661.686,1632.464,1607.898,1590.064,1344.266,1112.177,899.515,709.815,546.336,410.910,304.957,228.124,180.906,161.755,186.750,204.405,211.847,210.322,199.754,181.145,155.469,125.881,94.922,64.674,37.938,17.032,3.750,0.000,...
anomaly_implicit/template1/item0
GIFT synthesize
anomaly
D
46.772,99.481,164.879,238.480,316.446,395.768,470.917,538.994,596.387,639.657,664.900,674.772,663.466,636.520,593.470,536.605,467.878,392.910,314.391,238.260,165.277,103.903,52.939,18.215,0.000,0.491,19.617,54.671,104.645,168.635,241.853,320.678,400.364,477.662,548.539,608.676,655.085,685.787,461.035,460.935,530.947,62...
2025-10-10 00:00:00
2026-03-14 00:00:00
1499.326,1442.447,1400.282,1372.734,1360.509,1367.624,1390.619,1431.066,1487.617,1555.376,1633.062,1714.711,1798.462,1879.529,1953.418,2017.664,2069.097,2103.539,2121.425,2120.529,2104.092,2070.618,2022.609,1964.755,1899.697,1828.783,1758.949,1694.447,1637.019,1592.951,1562.462,1548.716,1552.564,1574.543,1612.220,1666....
2026-03-15 00:00:00
2026-06-22 00:00:00
,
100
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the sales of this store over the next 100 days, from 2026-03-15 00:00:00 to 2026-06-22 00:00:00. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the sales volume of a chain store. The data was recorded from 2025-10-10 00:00:00 to 2026-03-14 00:00:00 with the daily (D) frequency. Due to a software bug, there was a period where the sales records were incorrect and were significantly higher than normal. After updating the software version,...
<history>46.772,99.481,164.879,238.480,316.446,395.768,470.917,538.994,596.387,639.657,664.900,674.772,663.466,636.520,593.470,536.605,467.878,392.910,314.391,238.260,165.277,103.903,52.939,18.215,0.000,0.491,19.617,54.671,104.645,168.635,241.853,320.678,400.364,477.662,548.539,608.676,655.085,685.787,461.035,460.935,5...
anomaly_implicit/template2/item0
GIFT synthesize
anomaly
D
0.000,4.764,9.816,347.463,352.129,357.037,361.771,366.596,371.127,42.951,47.887,52.604,57.297,61.968,66.791,71.599,76.038,81.062,85.932,90.727,95.615,100.096,104.990,109.651,114.286,119.451,124.063,128.492,133.504,471.437,476.085,480.917,485.670,490.408,495.209,166.946,171.702,176.499,181.160,186.039,190.568,195.340,20...
2025-10-10 00:00:00
2026-08-29 00:00:00
567.330,563.851,560.510,557.218,553.930,550.381,547.282,544.045,540.575,537.263,533.990,530.680,527.374,523.913,520.628,517.192,513.912,510.718,840.694,836.994,833.730,830.488,827.130,823.966,487.302,483.954,480.738,477.371,473.923,470.542,467.508,464.291,460.522,457.616,453.955,450.759,447.493,443.993,440.871,437.349,...
2026-08-30 00:00:00
2026-10-28 00:00:00
,
60
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the sales of this store over the next 60 days, from 2026-08-30 00:00:00 to 2026-10-28 00:00:00. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the sales volume of a chain store. The data was recorded from 2025-10-10 00:00:00 to 2026-08-29 00:00:00 with the daily (D) frequency. Due to a software bug, there was a period where the sales records were incorrect and were significantly higher than normal. After updating the software version,...
<history>0.000,4.764,9.816,347.463,352.129,357.037,361.771,366.596,371.127,42.951,47.887,52.604,57.297,61.968,66.791,71.599,76.038,81.062,85.932,90.727,95.615,100.096,104.990,109.651,114.286,119.451,124.063,128.492,133.504,471.437,476.085,480.917,485.670,490.408,495.209,166.946,171.702,176.499,181.160,186.039,190.568,1...
anomaly_implicit/template3/item0
GIFT synthesize
anomaly
D
6944.088,6945.398,6946.665,6947.786,8104.850,8105.924,8107.217,8108.393,8109.475,6954.818,6955.899,6957.059,6958.090,6959.145,6960.220,6961.318,6962.292,6963.399,6964.440,6965.396,6966.335,6967.329,6968.318,6969.262,6970.308,6971.189,6972.053,6973.114,6973.924,6974.849,6975.773,6976.581,6977.520,6978.297,6979.155,7115....
2025-10-10 00:00:00
2026-08-29 00:00:00
6466.536,6459.267,6451.852,6444.468,6437.123,6429.581,6422.198,6414.712,6407.187,6399.671,6392.087,6384.398,6376.877,6369.230,7517.373,7509.814,7502.162,7494.271,7486.602,6322.886,6315.160,6307.410,6299.605,6291.797,6283.850,6275.946,6268.076,6260.101,6252.187,6244.291,6236.252,6228.239,6220.270,6212.217,6204.159,6196....
2026-08-30 00:00:00
2026-10-28 00:00:00
,
60
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the sales of this store over the next 60 days, from 2026-08-30 00:00:00 to 2026-10-28 00:00:00. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the sales volume of a chain store. The data was recorded from 2025-10-10 00:00:00 to 2026-08-29 00:00:00 with the daily (D) frequency. Due to a software bug, there was a period where the sales records were incorrect and were significantly higher than normal. After updating the software version,...
<history>6944.088,6945.398,6946.665,6947.786,8104.850,8105.924,8107.217,8108.393,8109.475,6954.818,6955.899,6957.059,6958.090,6959.145,6960.220,6961.318,6962.292,6963.399,6964.440,6965.396,6966.335,6967.329,6968.318,6969.262,6970.308,6971.189,6972.053,6973.114,6973.924,6974.849,6975.773,6976.581,6977.520,6978.297,6979....
anomaly_implicit/template4/item0
GIFT synthesize
anomaly
D
0.230,0.000,0.366,0.137,0.345,0.323,0.349,0.397,75.318,181.330,286.902,393.023,498.804,604.807,710.371,816.593,922.629,1028.266,1134.330,1240.201,1346.289,1318.352,1212.853,1107.412,1001.988,896.562,791.123,685.764,580.448,475.020,369.519,264.109,158.908,53.371,7.201,192.690,378.194,563.654,749.032,934.683,1120.189,112...
2025-10-10 00:00:00
2026-10-06 00:00:00
3220.355,3224.736,3229.461,3233.663,3238.274,3242.641,3247.277,3251.589,3255.986,3260.670,3265.206,3269.632,3274.239,3323.827,3434.091,3544.387,3654.920,3765.089,3875.486,3985.651,4096.160,4206.626,4317.014,4427.350,4537.837,4648.154,4684.358,4583.580,4482.299,4381.427,4280.275,4179.417,4078.499,3977.466,3876.758,3775....
2026-10-07 00:00:00
2027-03-05 00:00:00
,
150
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the sales of this store over the next 150 days, from 2026-10-07 00:00:00 to 2027-03-05 00:00:00. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the sales volume of a chain store. The data was recorded from 2025-10-10 00:00:00 to 2026-10-06 00:00:00 with the daily (D) frequency. Due to a software bug, there was a period where the sales records were incorrect and were significantly higher than normal. After updating the software version,...
<history>0.230,0.000,0.366,0.137,0.345,0.323,0.349,0.397,75.318,181.330,286.902,393.023,498.804,604.807,710.371,816.593,922.629,1028.266,1134.330,1240.201,1346.289,1318.352,1212.853,1107.412,1001.988,896.562,791.123,685.764,580.448,475.020,369.519,264.109,158.908,53.371,7.201,192.690,378.194,563.654,749.032,934.683,112...
anomaly_explicit/template0/item1
GIFT synthesize
anomaly
S
9.803,9.726,9.650,9.574,9.499,9.424,9.349,9.274,9.200,9.126,9.052,8.979,8.905,8.833,8.760,8.688,8.616,8.544,8.473,8.402,8.331,8.261,8.190,8.121,8.051,7.982,7.913,7.844,7.776,7.708,7.640,7.573,7.505,7.439,7.372,7.306,7.240,7.174,7.108,7.044,6.979,6.914,6.850,6.900,7.177,7.683,8.415,9.376,10.564,11.980,13.623,15.495,17.5...
2025-10-08 00:00:00
2025-10-08 00:03:25
0.374,0.359,0.344,0.330,0.316,0.303,0.290,0.276,0.264,0.251,0.239,0.227,0.216,0.205,0.194,0.183,0.173,0.163,0.153,0.144,0.135,0.126,0.117,0.109,0.101,0.093,0.086,0.079,0.072,0.066,0.060,0.054,0.048,0.043,0.038,0.033,0.029,0.025,0.021,0.018,0.015,0.012,0.009,0.007,0.005,0.004,0.002,0.001,0.000,0.000
2025-10-08 00:03:26
2025-10-08 00:04:15
,
50
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the speed of the ship over the next 50 seconds, from 2025-10-08 00:03:26 to 2025-10-08 00:04:15. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the speed (knots) of a slowing down ship. The data was recorded from 2025-10-08 00:00:00 to 2025-10-08 00:03:25 and the frequency of recording is second (S). Due to sensors errors, readings from the periods of 2025-10-08 00:00:41 to 2025-10-08 00:01:20 and 2025-10-08 00:01:38 to 2025-10-08 00:0...
<history>9.803,9.726,9.650,9.574,9.499,9.424,9.349,9.274,9.200,9.126,9.052,8.979,8.905,8.833,8.760,8.688,8.616,8.544,8.473,8.402,8.331,8.261,8.190,8.121,8.051,7.982,7.913,7.844,7.776,7.708,7.640,7.573,7.505,7.439,7.372,7.306,7.240,7.174,7.108,7.044,6.979,6.914,6.850,6.900,7.177,7.683,8.415,9.376,10.564,11.980,13.623,15...
anomaly_explicit/template1/item1
GIFT synthesize
anomaly
S
14.855,14.855,14.852,14.854,14.850,14.849,14.846,14.843,14.839,14.835,14.830,14.827,14.821,7.059,22.881,26.085,9.680,2.817,6.463,11.880,11.110,27.974,22.310,17.379,20.249,2.389,1.111,9.652,14.676,14.660,14.648,14.636,14.620,14.605,14.591,14.576,14.558,14.542,14.521,14.508,14.489,14.469,14.451,14.434,14.411,14.391,14.37...
2025-10-08 00:00:00
2025-10-08 00:03:25
5.160,5.067,4.971,4.878,4.780,4.683,4.590,4.491,4.394,4.294,4.197,4.097,4.000,3.900,3.797,3.698,3.598,3.494,3.393,3.289,3.187,3.084,2.980,2.876,2.770,2.665,2.561,2.453,2.346,2.242,2.132,2.026,1.916,1.806,1.699,1.587,1.478,1.365,1.255,1.142,1.032,0.920,0.806,0.692,0.577,0.464,0.348,0.234,0.115,0.000
2025-10-08 00:03:26
2025-10-08 00:04:15
,
50
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the speed of the ship over the next 50 seconds, from 2025-10-08 00:03:26 to 2025-10-08 00:04:15. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the speed (knots) of a slowing down ship. The data was recorded from 2025-10-08 00:00:00 to 2025-10-08 00:03:25 and the frequency of recording is second (S). Due to sensors errors, readings from the periods of 2025-10-08 00:00:12 to 2025-10-08 00:00:27 and 2025-10-08 00:01:45 to 2025-10-08 00:0...
<history>14.855,14.855,14.852,14.854,14.850,14.849,14.846,14.843,14.839,14.835,14.830,14.827,14.821,7.059,22.881,26.085,9.680,2.817,6.463,11.880,11.110,27.974,22.310,17.379,20.249,2.389,1.111,9.652,14.676,14.660,14.648,14.636,14.620,14.605,14.591,14.576,14.558,14.542,14.521,14.508,14.489,14.469,14.451,14.434,14.411,14....
anomaly_explicit/template2/item1
GIFT synthesize
anomaly
S
24.725,24.629,24.526,24.426,24.337,24.218,24.109,24.021,23.911,23.815,23.710,23.624,23.511,23.406,23.314,23.203,23.104,23.003,22.913,22.793,22.701,22.610,22.509,22.399,22.299,22.218,22.109,22.002,14.159,30.600,25.329,20.132,17.209,14.623,30.874,13.204,26.293,19.704,24.976,18.480,14.477,27.958,12.967,14.644,26.280,27.94...
2025-10-08 00:00:00
2025-10-08 00:04:23
2.932,2.894,2.843,2.792,2.735,2.688,2.661,2.611,2.559,2.499,2.484,2.427,2.389,2.355,2.291,2.263,2.205,2.160,2.132,2.088,2.053,2.019,1.974,1.941,1.908,1.847,1.797,1.774,1.743,1.705,1.668,1.636,1.596,1.552,1.532,1.489,1.462,1.415,1.363,1.355,1.330,1.300,1.262,1.230,1.203,1.165,1.141,1.110,1.086,1.029,1.015,1.008,0.969,0....
2025-10-08 00:04:24
2025-10-08 00:06:23
,
120
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the speed of the ship over the next 120 seconds, from 2025-10-08 00:04:24 to 2025-10-08 00:06:23. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the speed (knots) of a slowing down ship. The data was recorded from 2025-10-08 00:00:00 to 2025-10-08 00:04:23 and the frequency of recording is second (S). Due to sensors errors, readings from the periods of 2025-10-08 00:00:27 to 2025-10-08 00:01:24 and 2025-10-08 00:01:58 to 2025-10-08 00:0...
<history>24.725,24.629,24.526,24.426,24.337,24.218,24.109,24.021,23.911,23.815,23.710,23.624,23.511,23.406,23.314,23.203,23.104,23.003,22.913,22.793,22.701,22.610,22.509,22.399,22.299,22.218,22.109,22.002,14.159,30.600,25.329,20.132,17.209,14.623,30.874,13.204,26.293,19.704,24.976,18.480,14.477,27.958,12.967,14.644,26....
anomaly_explicit/template3/item1
GIFT synthesize
anomaly
S
22.601,22.519,22.425,22.331,22.232,22.142,22.063,21.965,21.873,21.780,21.690,21.597,21.497,21.414,21.320,21.231,21.141,21.042,20.936,20.854,20.767,20.671,20.574,20.483,20.395,20.303,20.215,20.115,20.028,19.934,19.848,19.751,19.660,19.565,19.482,19.398,19.289,19.204,19.110,19.021,18.924,18.826,18.752,18.641,18.564,18.47...
2025-10-08 00:00:00
2025-10-08 00:04:23
2.678,2.627,2.585,2.547,2.500,2.455,2.410,2.373,2.329,2.285,2.257,2.214,2.172,2.126,2.093,2.056,2.015,1.976,1.942,1.904,1.862,1.831,1.796,1.757,1.718,1.689,1.652,1.622,1.582,1.549,1.509,1.485,1.439,1.428,1.385,1.349,1.327,1.298,1.262,1.233,1.195,1.177,1.144,1.113,1.085,1.056,1.031,1.001,0.972,0.944,0.925,0.902,0.871,0....
2025-10-08 00:04:24
2025-10-08 00:06:23
,
120
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the speed of the ship over the next 120 seconds, from 2025-10-08 00:04:24 to 2025-10-08 00:06:23. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the speed (knots) of a slowing down ship. The data was recorded from 2025-10-08 00:00:00 to 2025-10-08 00:04:23 and the frequency of recording is second (S). Due to sensors errors, readings from the periods of 2025-10-08 00:00:59 to 2025-10-08 00:01:36 and 2025-10-08 00:03:25 to 2025-10-08 00:0...
<history>22.601,22.519,22.425,22.331,22.232,22.142,22.063,21.965,21.873,21.780,21.690,21.597,21.497,21.414,21.320,21.231,21.141,21.042,20.936,20.854,20.767,20.671,20.574,20.483,20.395,20.303,20.215,20.115,20.028,19.934,19.848,19.751,19.660,19.565,19.482,19.398,19.289,19.204,19.110,19.021,18.924,18.826,18.752,18.641,18....
anomaly_explicit/template4/item1
GIFT synthesize
anomaly
S
25.019,25.003,25.015,25.027,25.008,24.994,24.992,25.012,24.989,24.989,24.986,25.023,25.019,24.990,24.984,24.989,24.974,24.983,24.978,24.958,24.975,24.969,24.953,24.958,24.974,24.965,24.943,24.942,24.922,24.918,24.915,24.934,24.923,24.911,24.891,24.884,24.880,24.857,24.856,24.859,24.868,24.860,24.834,24.833,24.818,24.81...
2025-10-08 00:00:00
2025-10-08 00:06:51
8.758,8.684,8.607,8.512,8.437,8.364,8.294,8.186,8.113,8.022,7.972,7.877,7.798,7.710,7.626,7.536,7.458,7.389,7.294,7.214,7.139,7.060,6.976,6.877,6.819,6.701,6.640,6.564,6.471,6.379,6.288,6.214,6.123,6.048,5.946,5.871,5.796,5.688,5.625,5.540,5.436,5.358,5.259,5.160,5.098,4.997,4.939,4.832,4.735,4.643,4.559,4.494,4.382,4....
2025-10-08 00:06:52
2025-10-08 00:08:31
,
100
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the speed of the ship over the next 100 seconds, from 2025-10-08 00:06:52 to 2025-10-08 00:08:31. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the speed (knots) of a slowing down ship. The data was recorded from 2025-10-08 00:00:00 to 2025-10-08 00:06:51 and the frequency of recording is second (S). Due to sensors errors, readings from the periods of 2025-10-08 00:01:14 to 2025-10-08 00:02:18 and 2025-10-08 00:05:18 to 2025-10-08 00:0...
<history>25.019,25.003,25.015,25.027,25.008,24.994,24.992,25.012,24.989,24.989,24.986,25.023,25.019,24.990,24.984,24.989,24.974,24.983,24.978,24.958,24.975,24.969,24.953,24.958,24.974,24.965,24.943,24.942,24.922,24.918,24.915,24.934,24.923,24.911,24.891,24.884,24.880,24.857,24.856,24.859,24.868,24.860,24.834,24.833,24....
anomaly_implicit/template0/item1
GIFT synthesize
anomaly
S
9.803,9.726,9.650,9.574,9.499,9.424,9.349,9.274,9.200,9.126,9.052,8.979,8.905,8.833,8.760,8.688,8.616,8.544,8.473,8.402,8.331,8.261,8.190,8.121,8.051,7.982,7.913,7.844,7.776,7.708,7.640,7.573,7.505,7.439,7.372,7.306,7.240,7.174,7.108,7.044,6.979,6.914,6.850,6.900,7.177,7.683,8.415,9.376,10.564,11.980,13.623,15.495,17.5...
2025-10-08 00:00:00
2025-10-08 00:03:25
0.374,0.359,0.344,0.330,0.316,0.303,0.290,0.276,0.264,0.251,0.239,0.227,0.216,0.205,0.194,0.183,0.173,0.163,0.153,0.144,0.135,0.126,0.117,0.109,0.101,0.093,0.086,0.079,0.072,0.066,0.060,0.054,0.048,0.043,0.038,0.033,0.029,0.025,0.021,0.018,0.015,0.012,0.009,0.007,0.005,0.004,0.002,0.001,0.000,0.000
2025-10-08 00:03:26
2025-10-08 00:04:15
,
50
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the speed of the ship over the next 50 seconds, from 2025-10-08 00:03:26 to 2025-10-08 00:04:15. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the speed (knots) of a slowing down ship. The data was recorded from 2025-10-08 00:00:00 to 2025-10-08 00:03:25 and the frequency of recording is second (S). Due to sensors errors, some readings were noisy and unreliable. However, the ship is slowing down steadily and is expected to reach a com...
<history>9.803,9.726,9.650,9.574,9.499,9.424,9.349,9.274,9.200,9.126,9.052,8.979,8.905,8.833,8.760,8.688,8.616,8.544,8.473,8.402,8.331,8.261,8.190,8.121,8.051,7.982,7.913,7.844,7.776,7.708,7.640,7.573,7.505,7.439,7.372,7.306,7.240,7.174,7.108,7.044,6.979,6.914,6.850,6.900,7.177,7.683,8.415,9.376,10.564,11.980,13.623,15...
anomaly_implicit/template1/item1
GIFT synthesize
anomaly
S
14.855,14.855,14.852,14.854,14.850,14.849,14.846,14.843,14.839,14.835,14.830,14.827,14.821,7.059,22.881,26.085,9.680,2.817,6.463,11.880,11.110,27.974,22.310,17.379,20.249,2.389,1.111,9.652,14.676,14.660,14.648,14.636,14.620,14.605,14.591,14.576,14.558,14.542,14.521,14.508,14.489,14.469,14.451,14.434,14.411,14.391,14.37...
2025-10-08 00:00:00
2025-10-08 00:03:25
5.160,5.067,4.971,4.878,4.780,4.683,4.590,4.491,4.394,4.294,4.197,4.097,4.000,3.900,3.797,3.698,3.598,3.494,3.393,3.289,3.187,3.084,2.980,2.876,2.770,2.665,2.561,2.453,2.346,2.242,2.132,2.026,1.916,1.806,1.699,1.587,1.478,1.365,1.255,1.142,1.032,0.920,0.806,0.692,0.577,0.464,0.348,0.234,0.115,0.000
2025-10-08 00:03:26
2025-10-08 00:04:15
,
50
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the speed of the ship over the next 50 seconds, from 2025-10-08 00:03:26 to 2025-10-08 00:04:15. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the speed (knots) of a slowing down ship. The data was recorded from 2025-10-08 00:00:00 to 2025-10-08 00:03:25 and the frequency of recording is second (S). Due to sensors errors, some readings were noisy and unreliable. However, the ship is slowing down steadily and is expected to reach a com...
<history>14.855,14.855,14.852,14.854,14.850,14.849,14.846,14.843,14.839,14.835,14.830,14.827,14.821,7.059,22.881,26.085,9.680,2.817,6.463,11.880,11.110,27.974,22.310,17.379,20.249,2.389,1.111,9.652,14.676,14.660,14.648,14.636,14.620,14.605,14.591,14.576,14.558,14.542,14.521,14.508,14.489,14.469,14.451,14.434,14.411,14....
anomaly_implicit/template2/item1
GIFT synthesize
anomaly
S
24.725,24.629,24.526,24.426,24.337,24.218,24.109,24.021,23.911,23.815,23.710,23.624,23.511,23.406,23.314,23.203,23.104,23.003,22.913,22.793,22.701,22.610,22.509,22.399,22.299,22.218,22.109,22.002,14.159,30.600,25.329,20.132,17.209,14.623,30.874,13.204,26.293,19.704,24.976,18.480,14.477,27.958,12.967,14.644,26.280,27.94...
2025-10-08 00:00:00
2025-10-08 00:04:23
2.932,2.894,2.843,2.792,2.735,2.688,2.661,2.611,2.559,2.499,2.484,2.427,2.389,2.355,2.291,2.263,2.205,2.160,2.132,2.088,2.053,2.019,1.974,1.941,1.908,1.847,1.797,1.774,1.743,1.705,1.668,1.636,1.596,1.552,1.532,1.489,1.462,1.415,1.363,1.355,1.330,1.300,1.262,1.230,1.203,1.165,1.141,1.110,1.086,1.029,1.015,1.008,0.969,0....
2025-10-08 00:04:24
2025-10-08 00:06:23
,
120
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the speed of the ship over the next 120 seconds, from 2025-10-08 00:04:24 to 2025-10-08 00:06:23. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the speed (knots) of a slowing down ship. The data was recorded from 2025-10-08 00:00:00 to 2025-10-08 00:04:23 and the frequency of recording is second (S). Due to sensors errors, some readings were noisy and unreliable. However, the ship is slowing down steadily and is expected to reach a com...
<history>24.725,24.629,24.526,24.426,24.337,24.218,24.109,24.021,23.911,23.815,23.710,23.624,23.511,23.406,23.314,23.203,23.104,23.003,22.913,22.793,22.701,22.610,22.509,22.399,22.299,22.218,22.109,22.002,14.159,30.600,25.329,20.132,17.209,14.623,30.874,13.204,26.293,19.704,24.976,18.480,14.477,27.958,12.967,14.644,26....
anomaly_implicit/template3/item1
GIFT synthesize
anomaly
S
22.601,22.519,22.425,22.331,22.232,22.142,22.063,21.965,21.873,21.780,21.690,21.597,21.497,21.414,21.320,21.231,21.141,21.042,20.936,20.854,20.767,20.671,20.574,20.483,20.395,20.303,20.215,20.115,20.028,19.934,19.848,19.751,19.660,19.565,19.482,19.398,19.289,19.204,19.110,19.021,18.924,18.826,18.752,18.641,18.564,18.47...
2025-10-08 00:00:00
2025-10-08 00:04:23
2.678,2.627,2.585,2.547,2.500,2.455,2.410,2.373,2.329,2.285,2.257,2.214,2.172,2.126,2.093,2.056,2.015,1.976,1.942,1.904,1.862,1.831,1.796,1.757,1.718,1.689,1.652,1.622,1.582,1.549,1.509,1.485,1.439,1.428,1.385,1.349,1.327,1.298,1.262,1.233,1.195,1.177,1.144,1.113,1.085,1.056,1.031,1.001,0.972,0.944,0.925,0.902,0.871,0....
2025-10-08 00:04:24
2025-10-08 00:06:23
,
120
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the speed of the ship over the next 120 seconds, from 2025-10-08 00:04:24 to 2025-10-08 00:06:23. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the speed (knots) of a slowing down ship. The data was recorded from 2025-10-08 00:00:00 to 2025-10-08 00:04:23 and the frequency of recording is second (S). Due to sensors errors, some readings were noisy and unreliable. However, the ship is slowing down steadily and is expected to reach a com...
<history>22.601,22.519,22.425,22.331,22.232,22.142,22.063,21.965,21.873,21.780,21.690,21.597,21.497,21.414,21.320,21.231,21.141,21.042,20.936,20.854,20.767,20.671,20.574,20.483,20.395,20.303,20.215,20.115,20.028,19.934,19.848,19.751,19.660,19.565,19.482,19.398,19.289,19.204,19.110,19.021,18.924,18.826,18.752,18.641,18....
anomaly_implicit/template4/item1
GIFT synthesize
anomaly
S
25.019,25.003,25.015,25.027,25.008,24.994,24.992,25.012,24.989,24.989,24.986,25.023,25.019,24.990,24.984,24.989,24.974,24.983,24.978,24.958,24.975,24.969,24.953,24.958,24.974,24.965,24.943,24.942,24.922,24.918,24.915,24.934,24.923,24.911,24.891,24.884,24.880,24.857,24.856,24.859,24.868,24.860,24.834,24.833,24.818,24.81...
2025-10-08 00:00:00
2025-10-08 00:06:51
8.758,8.684,8.607,8.512,8.437,8.364,8.294,8.186,8.113,8.022,7.972,7.877,7.798,7.710,7.626,7.536,7.458,7.389,7.294,7.214,7.139,7.060,6.976,6.877,6.819,6.701,6.640,6.564,6.471,6.379,6.288,6.214,6.123,6.048,5.946,5.871,5.796,5.688,5.625,5.540,5.436,5.358,5.259,5.160,5.098,4.997,4.939,4.832,4.735,4.643,4.559,4.494,4.382,4....
2025-10-08 00:06:52
2025-10-08 00:08:31
,
100
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Predict the speed of the ship over the next 100 seconds, from 2025-10-08 00:06:52 to 2025-10-08 00:08:31. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the speed (knots) of a slowing down ship. The data was recorded from 2025-10-08 00:00:00 to 2025-10-08 00:06:51 and the frequency of recording is second (S). Due to sensors errors, some readings were noisy and unreliable. However, the ship is slowing down steadily and is expected to reach a com...
<history>25.019,25.003,25.015,25.027,25.008,24.994,24.992,25.012,24.989,24.989,24.986,25.023,25.019,24.990,24.984,24.989,24.974,24.983,24.978,24.958,24.975,24.969,24.953,24.958,24.974,24.965,24.943,24.942,24.922,24.918,24.915,24.934,24.923,24.911,24.891,24.884,24.880,24.857,24.856,24.859,24.868,24.860,24.834,24.833,24....
context_explicit/template0/item0
GIFT synthesize
phase_change
T
77.654,77.762,77.828,77.907,77.965,78.006,78.028,78.038,78.034,77.996,77.968,77.895,77.833,77.744,77.637,77.518,77.377,77.225,77.064,76.874,76.690,76.483,76.267,76.036,75.807,75.565,75.310,75.042,74.766,74.498,74.211,73.944,73.645,73.353,73.079,72.792,72.495,72.220,71.943,71.668,71.395,71.123,70.875,70.623,70.382,70.15...
2025-10-08 00:00:00
2025-10-08 06:31:00
108.888,108.801,108.730,108.669,108.616,108.575,108.554,108.537,108.520,108.537,108.556,108.596,108.620,108.669,108.724,108.789,108.847,108.926,109.006,109.092,109.181,109.265,109.357,109.459,109.555,109.651,109.753,109.842,109.933,110.025,110.119,110.208,110.283,110.365,110.448,110.520,110.592,110.629,110.694,110.750,...
2025-10-08 06:32:00
2025-10-08 08:31:00
,
120
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Forecast the traffic in the next 60 minutes, from 2025-10-08 06:32:00 to 2025-10-08 07:31:00, of this time series. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the traffic of a webiste. The traffic was recorded from 2025-10-08 00:00:00 to 2025-10-08 06:31:00 with the minutes (T) frequency. The webmaster ran an online event at 2025-10-08 02:21:00, leading to an increase of traffic. The traffic is expected to be high for the rest of the event.
<history>77.654,77.762,77.828,77.907,77.965,78.006,78.028,78.038,78.034,77.996,77.968,77.895,77.833,77.744,77.637,77.518,77.377,77.225,77.064,76.874,76.690,76.483,76.267,76.036,75.807,75.565,75.310,75.042,74.766,74.498,74.211,73.944,73.645,73.353,73.079,72.792,72.495,72.220,71.943,71.668,71.395,71.123,70.875,70.623,70....
context_explicit/template1/item0
GIFT synthesize
phase_change
T
68.053,68.926,69.960,70.767,71.759,72.654,73.574,74.416,75.519,76.349,77.080,78.196,79.100,79.992,80.814,81.800,82.737,83.573,84.510,77.766,91.244,80.127,90.677,92.271,118.547,112.877,131.736,129.781,163.114,171.774,172.543,173.655,174.529,175.434,176.341,177.292,178.193,178.956,179.852,180.755,181.665,182.599,183.391,...
2025-10-08 00:00:00
2025-10-08 02:35:00
267.538,268.021,268.490,269.075,269.740,269.942,270.606,271.150,271.551,272.099,272.531,273.050,273.462,274.058,274.527,274.877,275.350,275.774,276.286,276.668,277.149,277.609,277.904,278.414,278.745,279.066,279.567,279.940,280.474,280.820,281.170,281.553,281.848,282.329,282.696,282.947,283.555,283.693,284.212,284.419,...
2025-10-08 02:36:00
2025-10-08 04:15:00
,
100
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Forecast the traffic in the next 60 minutes, from 2025-10-08 02:36:00 to 2025-10-08 03:35:00, of this time series. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the traffic of a webiste. The traffic was recorded from 2025-10-08 00:00:00 to 2025-10-08 02:35:00 with the minutes (T) frequency. The webmaster ran an online event at 2025-10-08 00:18:00, leading to an increase of traffic. The traffic is expected to be high for the rest of the event.
<history>68.053,68.926,69.960,70.767,71.759,72.654,73.574,74.416,75.519,76.349,77.080,78.196,79.100,79.992,80.814,81.800,82.737,83.573,84.510,77.766,91.244,80.127,90.677,92.271,118.547,112.877,131.736,129.781,163.114,171.774,172.543,173.655,174.529,175.434,176.341,177.292,178.193,178.956,179.852,180.755,181.665,182.599...
context_explicit/template2/item0
GIFT synthesize
phase_change
T
839.369,839.962,839.635,839.073,840.792,840.751,840.934,841.664,842.197,843.010,843.798,844.340,844.058,844.253,845.586,847.898,848.810,849.538,850.354,852.393,852.730,855.023,855.471,857.165,858.009,861.504,862.577,863.183,864.985,865.705,867.764,869.301,872.618,873.412,876.242,878.893,881.787,882.464,886.978,887.783,...
2025-10-07 00:00:00
2025-10-07 02:35:00
3994.128,4003.133,4012.559,4022.494,4032.639,4041.298,4053.421,4063.813,4073.915,4085.908,4093.861,4105.931,4114.733,4125.447,4136.539,4147.525,4157.829,4168.897,4179.532,4191.485,4201.494,4213.780,4224.946,4236.837,4247.864,4259.014,4270.655,4282.067,4294.219,4304.726,4317.657,4327.532,4340.921,4350.448,4364.567,4375....
2025-10-07 02:36:00
2025-10-07 04:15:00
,
100
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Forecast the traffic in the next 60 minutes, from 2025-10-07 02:36:00 to 2025-10-07 03:35:00, of this time series. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the traffic of a webiste. The traffic was recorded from 2025-10-07 00:00:00 to 2025-10-07 02:35:00 with the minutes (T) frequency. The webmaster ran an online event at 2025-10-07 01:10:00, leading to an increase of traffic. The traffic is expected to be high for the rest of the event.
<history>839.369,839.962,839.635,839.073,840.792,840.751,840.934,841.664,842.197,843.010,843.798,844.340,844.058,844.253,845.586,847.898,848.810,849.538,850.354,852.393,852.730,855.023,855.471,857.165,858.009,861.504,862.577,863.183,864.985,865.705,867.764,869.301,872.618,873.412,876.242,878.893,881.787,882.464,886.978...
context_explicit/template3/item0
GIFT synthesize
phase_change
T
37.204,41.912,39.814,41.331,42.088,39.806,39.569,39.479,38.919,39.672,41.326,37.546,39.696,40.254,37.513,38.159,38.008,39.111,37.615,42.954,36.072,40.517,38.212,38.164,39.842,37.556,38.825,37.838,35.959,38.227,38.894,36.296,36.495,38.780,39.853,37.793,41.394,37.853,40.613,36.270,41.814,38.814,40.785,38.964,41.513,40.59...
2025-10-07 00:00:00
2025-10-07 03:53:00
67.449,65.518,65.362,67.953,65.799,69.032,65.316,66.867,65.960,63.276,65.160,65.845,65.289,67.250,66.616,62.850,63.838,65.608,63.881,63.926,66.464,68.056,63.506,63.544,67.801,62.989,63.676,67.576,68.191,65.886,65.060,68.352,70.082,65.625,65.607,66.160,67.628,68.129,69.362,68.148,70.945,67.924,66.895,68.869,68.228,69.58...
2025-10-07 03:54:00
2025-10-07 06:23:00
,
150
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Forecast the traffic in the next 60 minutes, from 2025-10-07 03:54:00 to 2025-10-07 04:53:00, of this time series. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the traffic of a webiste. The traffic was recorded from 2025-10-07 00:00:00 to 2025-10-07 03:53:00 with the minutes (T) frequency. The webmaster ran an online event at 2025-10-07 01:46:00, leading to an increase of traffic. The traffic is expected to be high for the rest of the event.
<history>37.204,41.912,39.814,41.331,42.088,39.806,39.569,39.479,38.919,39.672,41.326,37.546,39.696,40.254,37.513,38.159,38.008,39.111,37.615,42.954,36.072,40.517,38.212,38.164,39.842,37.556,38.825,37.838,35.959,38.227,38.894,36.296,36.495,38.780,39.853,37.793,41.394,37.853,40.613,36.270,41.814,38.814,40.785,38.964,41....
context_explicit/template4/item0
GIFT synthesize
phase_change
T
7200.378,4592.884,6222.893,7077.956,6839.441,6452.646,8114.307,8619.239,9369.519,7023.154,9057.831,7664.191,8683.972,8554.980,7787.065,8361.943,8110.618,7815.972,6504.497,8409.822,7445.998,8013.396,7767.750,6884.176,5946.087,6373.278,5146.195,5302.175,6665.887,7962.915,6863.586,7372.069,7724.296,8854.848,7226.928,8265....
2025-10-07 00:00:00
2025-10-07 04:23:00
44274.600,46180.358,45372.796,45200.444,47909.012,45739.829,46900.637,46271.819,48341.060,45930.607,45164.682,47631.788,46440.244,47387.428,47019.544,47740.154,45885.525,46337.318,46477.850,47590.830,45501.922,45668.269,46580.702,47614.048,45089.559,46205.832,46884.223,47932.492,46483.092,45503.013,46543.293,45508.449,...
2025-10-07 04:24:00
2025-10-07 06:23:00
,
120
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Forecast the traffic in the next 60 minutes, from 2025-10-07 04:24:00 to 2025-10-07 05:23:00, of this time series. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the traffic of a webiste. The traffic was recorded from 2025-10-07 00:00:00 to 2025-10-07 04:23:00 with the minutes (T) frequency. The webmaster ran an online event at 2025-10-07 03:27:00, leading to an increase of traffic. The traffic is expected to be high for the rest of the event.
<history>7200.378,4592.884,6222.893,7077.956,6839.441,6452.646,8114.307,8619.239,9369.519,7023.154,9057.831,7664.191,8683.972,8554.980,7787.065,8361.943,8110.618,7815.972,6504.497,8409.822,7445.998,8013.396,7767.750,6884.176,5946.087,6373.278,5146.195,5302.175,6665.887,7962.915,6863.586,7372.069,7724.296,8854.848,7226....
context_implicit/template0/item0
GIFT synthesize
phase_change
T
77.654,77.762,77.828,77.907,77.965,78.006,78.028,78.038,78.034,77.996,77.968,77.895,77.833,77.744,77.637,77.518,77.377,77.225,77.064,76.874,76.690,76.483,76.267,76.036,75.807,75.565,75.310,75.042,74.766,74.498,74.211,73.944,73.645,73.353,73.079,72.792,72.495,72.220,71.943,71.668,71.395,71.123,70.875,70.623,70.382,70.15...
2025-10-08 00:00:00
2025-10-08 06:31:00
108.888,108.801,108.730,108.669,108.616,108.575,108.554,108.537,108.520,108.537,108.556,108.596,108.620,108.669,108.724,108.789,108.847,108.926,109.006,109.092,109.181,109.265,109.357,109.459,109.555,109.651,109.753,109.842,109.933,110.025,110.119,110.208,110.283,110.365,110.448,110.520,110.592,110.629,110.694,110.750,...
2025-10-08 06:32:00
2025-10-08 08:31:00
,
120
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Forecast the traffic in the next 120 minutes, from 2025-10-08 06:32:00 to 2025-10-08 08:31:00, of this time series. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the traffic of a webiste. The traffic was recorded from 2025-10-08 00:00:00 to 2025-10-08 06:31:00 with the minutes (T) frequency. The webmaster ran an online event, leading to an increase of traffic. The traffic is expected to be high to the rest of the event.
<history>77.654,77.762,77.828,77.907,77.965,78.006,78.028,78.038,78.034,77.996,77.968,77.895,77.833,77.744,77.637,77.518,77.377,77.225,77.064,76.874,76.690,76.483,76.267,76.036,75.807,75.565,75.310,75.042,74.766,74.498,74.211,73.944,73.645,73.353,73.079,72.792,72.495,72.220,71.943,71.668,71.395,71.123,70.875,70.623,70....
context_implicit/template1/item0
GIFT synthesize
phase_change
T
68.053,68.926,69.960,70.767,71.759,72.654,73.574,74.416,75.519,76.349,77.080,78.196,79.100,79.992,80.814,81.800,82.737,83.573,84.510,77.766,91.244,80.127,90.677,92.271,118.547,112.877,131.736,129.781,163.114,171.774,172.543,173.655,174.529,175.434,176.341,177.292,178.193,178.956,179.852,180.755,181.665,182.599,183.391,...
2025-10-08 00:00:00
2025-10-08 02:35:00
267.538,268.021,268.490,269.075,269.740,269.942,270.606,271.150,271.551,272.099,272.531,273.050,273.462,274.058,274.527,274.877,275.350,275.774,276.286,276.668,277.149,277.609,277.904,278.414,278.745,279.066,279.567,279.940,280.474,280.820,281.170,281.553,281.848,282.329,282.696,282.947,283.555,283.693,284.212,284.419,...
2025-10-08 02:36:00
2025-10-08 04:15:00
,
100
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Forecast the traffic in the next 100 minutes, from 2025-10-08 02:36:00 to 2025-10-08 04:15:00, of this time series. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the traffic of a webiste. The traffic was recorded from 2025-10-08 00:00:00 to 2025-10-08 02:35:00 with the minutes (T) frequency. The webmaster ran an online event, leading to an increase of traffic. The traffic is expected to be high to the rest of the event.
<history>68.053,68.926,69.960,70.767,71.759,72.654,73.574,74.416,75.519,76.349,77.080,78.196,79.100,79.992,80.814,81.800,82.737,83.573,84.510,77.766,91.244,80.127,90.677,92.271,118.547,112.877,131.736,129.781,163.114,171.774,172.543,173.655,174.529,175.434,176.341,177.292,178.193,178.956,179.852,180.755,181.665,182.599...
context_implicit/template2/item0
GIFT synthesize
phase_change
T
839.369,839.962,839.635,839.073,840.792,840.751,840.934,841.664,842.197,843.010,843.798,844.340,844.058,844.253,845.586,847.898,848.810,849.538,850.354,852.393,852.730,855.023,855.471,857.165,858.009,861.504,862.577,863.183,864.985,865.705,867.764,869.301,872.618,873.412,876.242,878.893,881.787,882.464,886.978,887.783,...
2025-10-07 00:00:00
2025-10-07 02:35:00
3994.128,4003.133,4012.559,4022.494,4032.639,4041.298,4053.421,4063.813,4073.915,4085.908,4093.861,4105.931,4114.733,4125.447,4136.539,4147.525,4157.829,4168.897,4179.532,4191.485,4201.494,4213.780,4224.946,4236.837,4247.864,4259.014,4270.655,4282.067,4294.219,4304.726,4317.657,4327.532,4340.921,4350.448,4364.567,4375....
2025-10-07 02:36:00
2025-10-07 04:15:00
,
100
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Forecast the traffic in the next 100 minutes, from 2025-10-07 02:36:00 to 2025-10-07 04:15:00, of this time series. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the traffic of a webiste. The traffic was recorded from 2025-10-07 00:00:00 to 2025-10-07 02:35:00 with the minutes (T) frequency. The webmaster ran an online event, leading to an increase of traffic. The traffic is expected to be high to the rest of the event.
<history>839.369,839.962,839.635,839.073,840.792,840.751,840.934,841.664,842.197,843.010,843.798,844.340,844.058,844.253,845.586,847.898,848.810,849.538,850.354,852.393,852.730,855.023,855.471,857.165,858.009,861.504,862.577,863.183,864.985,865.705,867.764,869.301,872.618,873.412,876.242,878.893,881.787,882.464,886.978...
context_implicit/template3/item0
GIFT synthesize
phase_change
T
37.204,41.912,39.814,41.331,42.088,39.806,39.569,39.479,38.919,39.672,41.326,37.546,39.696,40.254,37.513,38.159,38.008,39.111,37.615,42.954,36.072,40.517,38.212,38.164,39.842,37.556,38.825,37.838,35.959,38.227,38.894,36.296,36.495,38.780,39.853,37.793,41.394,37.853,40.613,36.270,41.814,38.814,40.785,38.964,41.513,40.59...
2025-10-07 00:00:00
2025-10-07 03:53:00
67.449,65.518,65.362,67.953,65.799,69.032,65.316,66.867,65.960,63.276,65.160,65.845,65.289,67.250,66.616,62.850,63.838,65.608,63.881,63.926,66.464,68.056,63.506,63.544,67.801,62.989,63.676,67.576,68.191,65.886,65.060,68.352,70.082,65.625,65.607,66.160,67.628,68.129,69.362,68.148,70.945,67.924,66.895,68.869,68.228,69.58...
2025-10-07 03:54:00
2025-10-07 06:23:00
,
150
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Forecast the traffic in the next 150 minutes, from 2025-10-07 03:54:00 to 2025-10-07 06:23:00, of this time series. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the traffic of a webiste. The traffic was recorded from 2025-10-07 00:00:00 to 2025-10-07 03:53:00 with the minutes (T) frequency. The webmaster ran an online event, leading to an increase of traffic. The traffic is expected to be high to the rest of the event.
<history>37.204,41.912,39.814,41.331,42.088,39.806,39.569,39.479,38.919,39.672,41.326,37.546,39.696,40.254,37.513,38.159,38.008,39.111,37.615,42.954,36.072,40.517,38.212,38.164,39.842,37.556,38.825,37.838,35.959,38.227,38.894,36.296,36.495,38.780,39.853,37.793,41.394,37.853,40.613,36.270,41.814,38.814,40.785,38.964,41....
context_implicit/template4/item0
GIFT synthesize
phase_change
T
7200.378,4592.884,6222.893,7077.956,6839.441,6452.646,8114.307,8619.239,9369.519,7023.154,9057.831,7664.191,8683.972,8554.980,7787.065,8361.943,8110.618,7815.972,6504.497,8409.822,7445.998,8013.396,7767.750,6884.176,5946.087,6373.278,5146.195,5302.175,6665.887,7962.915,6863.586,7372.069,7724.296,8854.848,7226.928,8265....
2025-10-07 00:00:00
2025-10-07 04:23:00
44274.600,46180.358,45372.796,45200.444,47909.012,45739.829,46900.637,46271.819,48341.060,45930.607,45164.682,47631.788,46440.244,47387.428,47019.544,47740.154,45885.525,46337.318,46477.850,47590.830,45501.922,45668.269,46580.702,47614.048,45089.559,46205.832,46884.223,47932.492,46483.092,45503.013,46543.293,45508.449,...
2025-10-07 04:24:00
2025-10-07 06:23:00
,
120
You are a helpful assistant for time series forecasting. Think step by step to make a prediction.
Forecast the traffic in the next 120 minutes, from 2025-10-07 04:24:00 to 2025-10-07 06:23:00, of this time series. The final result must be enclosed by '\boxed{' and '}', and where values are separated by ','.
This time series records the traffic of a webiste. The traffic was recorded from 2025-10-07 00:00:00 to 2025-10-07 04:23:00 with the minutes (T) frequency. The webmaster ran an online event, leading to an increase of traffic. The traffic is expected to be high to the rest of the event.
<history>7200.378,4592.884,6222.893,7077.956,6839.441,6452.646,8114.307,8619.239,9369.519,7023.154,9057.831,7664.191,8683.972,8554.980,7787.065,8361.943,8110.618,7815.972,6504.497,8409.822,7445.998,8013.396,7767.750,6884.176,5946.087,6373.278,5146.195,5302.175,6665.887,7962.915,6863.586,7372.069,7724.296,8854.848,7226....
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Gift-EvalCTX Parquet

This repository hosts the GIFT-EvalCTX dataset in parquet format, highly compatible with LLMs. Each row is a sample of the dataset and contain the following fields:

  • idx: unique id of the sample
  • source: source of the same
  • skill: the types of context
  • frequency: frequency of the sample
  • history_values: a string containing values of the history
  • history_start: starting timestamp of the history
  • history_end: ending timestamp of the history
  • future_values: a string containing values of the forecasting future
  • future_start: starting timestamp of the future
  • future_end: ending timestamp of the future
  • entry_sep: separator used to split the string in history_values, future_values, and roi into array of floats
  • roi: region of interest, indicating the indices of the timestamp that are affected by the context and used in evaluation
  • pred_length: number of timestamps to forecast
  • system_prompt: default system prompt
  • user_instruct: query to forecast
  • context_info: context for the current sample
  • prompt: a complete prompt to query LLM

Note that all fields contain string only, you need to convert them into the appropriate format (array of floats, or datetime).

Example usage

from datasets import load_dataset

ds = load_dataset(
    "Salesforce/GiftEvalCTX",
    "gift_ctx",
    split="train"
)
print(len(ds))
print(ds[0].keys())

This repository is made public for research purposes only.

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