| INFO: Pandarallel will run on 8 workers. |
| INFO: Pandarallel will use Memory file system to transfer data between the main process and workers. |
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| Selecting 5.0% vehicles from 134757 vehicles |
| Working on file /home/weijiang/Projects/Netsanut/datasets/simbarca/simulation_sessions/session_037/trajectory/00_traj_1334.5.json.gz |
| Loading a file takes 49.59s |
| Creating data frames takes 29.54s |
| Filling data types and values takes 5.87s |
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| Processing a file takes 18.67s |
| Concatenating time series takes 0.45s |
| Working on file /home/weijiang/Projects/Netsanut/datasets/simbarca/simulation_sessions/session_037/trajectory/01_traj_2121.5.json.gz |
| Loading a file takes 53.51s |
| Creating data frames takes 25.59s |
| Filling data types and values takes 5.75s |
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| Processing a file takes 17.98s |
| Concatenating time series takes 0.23s |
| Working on file /home/weijiang/Projects/Netsanut/datasets/simbarca/simulation_sessions/session_037/trajectory/02_traj_2860.0.json.gz |
| Loading a file takes 54.05s |
| Creating data frames takes 27.86s |
| Filling data types and values takes 5.82s |
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| Processing a file takes 17.80s |
| Concatenating time series takes 0.37s |
| Working on file /home/weijiang/Projects/Netsanut/datasets/simbarca/simulation_sessions/session_037/trajectory/03_traj_3557.0.json.gz |
| Loading a file takes 51.24s |
| Creating data frames takes 24.13s |
| Filling data types and values takes 5.87s |
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| Processing a file takes 18.51s |
| Concatenating time series takes 0.37s |
| Working on file /home/weijiang/Projects/Netsanut/datasets/simbarca/simulation_sessions/session_037/trajectory/04_traj_4251.0.json.gz |
| Loading a file takes 55.00s |
| Creating data frames takes 26.08s |
| Filling data types and values takes 5.80s |
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| Processing a file takes 18.21s |
| Concatenating time series takes 0.39s |
| Working on file /home/weijiang/Projects/Netsanut/datasets/simbarca/simulation_sessions/session_037/trajectory/05_traj_4957.0.json.gz |
| Loading a file takes 52.16s |
| Creating data frames takes 22.40s |
| Filling data types and values takes 5.85s |
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| Processing a file takes 23.91s |
| Concatenating time series takes 0.42s |
| Working on file /home/weijiang/Projects/Netsanut/datasets/simbarca/simulation_sessions/session_037/trajectory/06_traj_5623.0.json.gz |
| Loading a file takes 55.84s |
| Creating data frames takes 22.59s |
| Filling data types and values takes 5.83s |
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| Processing a file takes 21.81s |
| Concatenating time series takes 0.61s |
| Working on file /home/weijiang/Projects/Netsanut/datasets/simbarca/simulation_sessions/session_037/trajectory/07_traj_6269.0.json.gz |
| Loading a file takes 55.22s |
| Creating data frames takes 20.47s |
| Filling data types and values takes 5.64s |
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| Processing a file takes 18.49s |
| Concatenating time series takes 0.56s |
| Working on file /home/weijiang/Projects/Netsanut/datasets/simbarca/simulation_sessions/session_037/trajectory/08_traj_6856.0.json.gz |
| Loading a file takes 55.02s |
| Creating data frames takes 28.77s |
| Filling data types and values takes 7.60s |
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| Processing a file takes 18.20s |
| Concatenating time series takes 0.76s |
| Working on file /home/weijiang/Projects/Netsanut/datasets/simbarca/simulation_sessions/session_037/trajectory/09_traj_7470.0.json.gz |
| Loading a file takes 58.23s |
| Creating data frames takes 22.51s |
| Filling data types and values takes 5.99s |
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| Processing a file takes 18.83s |
| Concatenating time series takes 0.56s |
| Working on file /home/weijiang/Projects/Netsanut/datasets/simbarca/simulation_sessions/session_037/trajectory/10_traj_9117.0.json.gz |
| Loading a file takes 58.19s |
| Creating data frames takes 23.12s |
| Filling data types and values takes 5.83s |
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| Processing a file takes 16.21s |
| Concatenating time series takes 0.35s |
| Working on file /home/weijiang/Projects/Netsanut/datasets/simbarca/simulation_sessions/session_037/trajectory/11_traj_11511.0.json.gz |
| Loading a file takes 60.03s |
| Creating data frames takes 26.89s |
| Filling data types and values takes 5.61s |
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|
| Processing a file takes 12.29s |
| Concatenating time series takes 0.23s |
| Working on file /home/weijiang/Projects/Netsanut/datasets/simbarca/simulation_sessions/session_037/trajectory/12_traj_14690.5.json.gz |
| Loading a file takes 51.38s |
| Creating data frames takes 24.37s |
| Filling data types and values takes 5.60s |
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| Processing a file takes 11.14s |
| Concatenating time series takes 0.18s |
| Working on file /home/weijiang/Projects/Netsanut/datasets/simbarca/simulation_sessions/session_037/trajectory/13_traj_18934.0.json.gz |
| Loading a file takes 51.77s |
| Creating data frames takes 22.37s |
| Filling data types and values takes 5.49s |
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| Processing a file takes 28.37s |
| Concatenating time series takes 0.12s |
| Working on file /home/weijiang/Projects/Netsanut/datasets/simbarca/simulation_sessions/session_037/trajectory/14_traj_23297.0.json.gz |
| Loading a file takes 59.55s |
| Creating data frames takes 21.40s |
| Filling data types and values takes 5.42s |
| /home/weijiang/Projects/Netsanut/scripts/data/simbarca/time_series_from_traj.py:424: FutureWarning: The behavior of DataFrame concatenation with empty or all-NA entries is deprecated. In a future version, this will no longer exclude empty or all-NA columns when determining the result dtypes. To retain the old behavior, exclude the relevant entries before the concat operation. |
| df = pd.concat([df, entering, exiting], ignore_index=True, copy=False) |
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| Processing a file takes 14.94s |
| Concatenating time series takes 0.14s |
| Working on file /home/weijiang/Projects/Netsanut/datasets/simbarca/simulation_sessions/session_037/trajectory/15_traj_end.json.gz |
| Loading a file takes 4.17s |
| Creating data frames takes 0.56s |
| Filling data types and values takes 0.16s |
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| Processing a file takes 3.37s |
| Concatenating time series takes 0.13s |
| Saving all the section time series takes 99.38s |
| Saving all the junction time series takes 14.27s |
| Saving network entrance and exit takes 0.09s |
| Aggregating the raw statistics to different intervals... |
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| Constructing time series for each modality ... |
| Saving aggregated time series to /home/weijiang/Projects/Netsanut/datasets/simbarca/simulation_sessions/session_037/timeseries/agg_timeseries.pkl |
| Extracting samples from time series ... |
| number of samples: 20 |
| Packing the samples into numpy arrays ... |
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