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The dataset generation failed because of a cast error
Error code:   DatasetGenerationCastError
Exception:    DatasetGenerationCastError
Message:      An error occurred while generating the dataset

All the data files must have the same columns, but at some point there are 499 new columns ({'0.0255741127348643.1', '0.02502606882168926', '0.023291925465838508.11', '0.02830188679245283.8', '0.028346456692913385.24', '0.011922503725782414', '0.012462612163509471', '0.022233712512926575.1', '0.028346456692913385.3', '0.023291925465838508', '0.006631927996210327', '0.02776322682032478.3', '0.02338877338877339.1', '0.008177008177008177', '0.01580826109127996', '0.013527054108216433', '0.025587467362924284.1', '0.026687598116169546', '0.02556077203964528.8', '0.02830188679245283.5', '0.028361344537815126.1', '0.012967581047381545.1', '0.014765784114052953.3', '0.0076886112445939455.1', '0.026687598116169546.11', '0.02284527518172378.5', '0.013567839195979899', '0.013164556962025316', '0.015282730514518594.1', '0.02502606882168926.1', '0.02338877338877339', '0.02556077203964528.6', '0.027225130890052355.1', '0.013131313131313131.3', '0.01245019920318725.1', '0.018442622950819672.1', '0.024479166666666666.1', '0.01309823677581864.2', '0.006134969325153374', '0.0057361376673040155', '0.005717008099094807', '0.014758269720101781.5', '0.026687598116169546.14', '0.025587467362924284', '0.011904761904761904', '0.01580826109127996.6', '0.014758269720101781.2', '0.012632642748863061.2', '0.011175898931000973.1', '0.028346456692913385', '0.02284527518172378', '0.014227642276422764.1', '0.026673640167364017', '0.023291925465838508.7', '0.018480492813141684.3', '0.02779234399580493.3', '0.008173076923076924.3', '0.008173076923076924', '0.005248091603053435.1', '0.0200617283950617
...
.012645422357106728', '0.006086142322097378', '0.013171225937183385', '0.028346456692913385.11', '0.011280039234919078', '0.011690209449585971', '0.02556077203964528.7', '0.01354062186559679.1', '0.005671077504725898', '0.013131313131313131.1', '0.026687598116169546.26', '0.024479166666666666', '0.0056657223796034', '0.013171225937183385.1', '0.022233712512926575.6', '0.024479166666666666.5', '0.02007205352547607', '0.0091478093403948', '0.02830188679245283.4', '0.010174418604651164', '0.013171225937183385.4', '0.01580020387359837', '0.02556077203964528.9', '0.02830188679245283.15', '0.01355421686746988', '0.026659696811291166.8', '0.018480492813141684.2', '0.012444001991040319.3', '0.009775171065493646', '0.013157894736842105', '0.006708193579300431.1', '0.014227642276422764', '0.027806925498426022', '0.023291925465838508.4', '0.013691683569979716.2', '0.018480492813141684', '0.02830188679245283.22', '0.0051401869158878505', '0.005245588936576061', '0.028346456692913385.6', '0.026687598116169546.21', '0.025587467362924284.5', '0.028361344537815126.4', '0.010832102412604629', '0.017957927142124165.1', '0.006704980842911878.1', '0.028346456692913385.18', '0.024479166666666666.2', '0.028346456692913385.8', '0.02830188679245283.3', '0.02779234399580493.4', '0.012632642748863061', '0.02830188679245283.17', '0.028346456692913385.21', '0.008687258687258687', '0.026687598116169546.9', '0.011892963330029732.1', '0.022857142857142857', '0.013124684502776375', '0.022857142857142857.2'}) and 499 missing columns ({'0.018628912071535022', '0.020239880059970013.4', '0.010130246020260492.3', '0.01168736303871439.2', '0.010144927536231883.12', '0.021148036253776436.13', '0.019461077844311378.5', '0.015625', '0.018670649738610903.15', '0.020454545454545454.10', '0.01868460388639761.2', '0.011627906976744186.2', '0.020239880059970013.8', '0.02042360060514372.50', '0.02180451127819549', '0.00931899641577061', '0.011670313639679067', '0.020239880059970013', '0.0131852879944483', '0.019461077844311378.4', '0.010144927536231883.9', '0.018670649738610903.16', '0.01944652206432311.17', '0.01003584229390681', '0.01868460388639761.3', '0.02042360060514372.2', '0.020239880059970013.3', '0.017857142857142856.1', '0.01065340909090909.2', '0.01944652206432311.6', '0.013960323291697281', '0.019461077844311378.13', '0.017830609212481426.12', '0.015475313190862197.4', '0.02042360060514372.3', '0.02042360060514372.10', '0.02042360060514372.36', '0.02042360060514372.13', '0.009312320916905445.2', '0.010806916426512969', '0.021148036253776436.20', '0.019461077844311378.9', '0.020454545454545454.8', '0.010660980810234541.2', '0.018615040953090096', '0.02042360060514372.18', '0.02042360060514372.48', '0.020255063765941484.4', '0.02042360060514372.9', '0.01704966641957005.6', '0.009312320916905445.1', '0.014522821576763486', '0.015475313190862197.10', '0.01944652206432311.20', '0.02042360060514372.19', '0.01944652206432311.13', '0.017857142857142856.4', '0.013215859030837005.1', '0.017830609212481426.3', '0.020
...
7714.2', '0.017830609212481426.20', '0.02262443438914027.2', '0.015475313190862197.1', '0.010877447425670777', '0.010706638115631691.1', '0.018670649738610903.14', '0.01167883211678832.3', '0.02042360060514372.8', '0.016260162601626018', '0.017011834319526627.3', '0.019667170953101363.3', '0.02042360060514372.12', '0.010137581462708182.2', '0.020454545454545454.12', '0.01079913606911447', '0.02042360060514372.15', '0.010706638115631691', '0.011871508379888268', '0.021148036253776436.24', '0.01090909090909091', '0.013939838591342627.1', '0.011188811188811189', '0.013186813186813187.1', '0.018670649738610903.12', '0.020454545454545454.2', '0.01968205904617714.1', '0.02260738507912585.2', '0.018628912071535022.7', '0.01944652206432311.12', '0.0111731843575419', '0.021021021021021023', '0.011180992313067784', '0.018628912071535022.1', '0.017830609212481426.19', '0.011661807580174927.2', '0.015475313190862197', '0.016236162361623615', '0.017830609212481426.8', '0.010699001426533523.1', '0.02042360060514372.23', '0.019667170953101363.12', '0.010668563300142247', '0.017817371937639197.3', '0.018656716417910446.1', '0.02180451127819549.23', '0.02260738507912585.3', '0.013980868285504048', '0.015475313190862197.2', '0.01592797783933518', '0.021148036253776436.10', '0.02042360060514372.35', '0.011963406052076003', '0.01704966641957005.1', '0.01314878892733564', '0.017011834319526627.5', '0.018628912071535022.3', '0.01132342533616419', '0.010144927536231883.6', '0.02180451127819549.17'}).

This happened while the csv dataset builder was generating data using

hf://datasets/petrrysavy/krebs/krebs3/threes1.tsv (at revision 229ef67a0e37072643d1ccc215629cefa560b0b0)

Please either edit the data files to have matching columns, or separate them into different configurations (see docs at https://hf.co/docs/hub/datasets-manual-configuration#multiple-configurations)
Traceback:    Traceback (most recent call last):
                File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/builder.py", line 1870, in _prepare_split_single
                  writer.write_table(table)
                File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/arrow_writer.py", line 622, in write_table
                  pa_table = table_cast(pa_table, self._schema)
                File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/table.py", line 2292, in table_cast
                  return cast_table_to_schema(table, schema)
                File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/table.py", line 2240, in cast_table_to_schema
                  raise CastError(
              datasets.table.CastError: Couldn't cast
              FUMARATE: string
              0.0: double
              0.0.1: double
              0.0.2: double
              0.0.3: double
              0.0.4: double
              0.0.5: double
              4.601932811780948E-4: double
              0.001388888888888889: double
              0.0037209302325581397: double
              0.004195804195804196: double
              0.0051401869158878505: double
              0.005615348619560131: double
              0.006086142322097378: double
              0.005620608899297424: double
              0.005625879043600563: double
              0.006100422336931018: double
              0.0061118946873530795: double
              0.005647058823529412: double
              0.005655042412818096: double
              0.006134969325153374: double
              0.0056657223796034: double
              0.005671077504725898: double
              0.005668398677373642: double
              0.0056657223796034.1: double
              0.005198487712665407: double
              0.005676442762535478: double
              0.006625650733554188: double
              0.006635071090047393: double
              0.006631927996210327: double
              0.006638217164532954: double
              0.006635071090047393.1: double
              0.006644518272425249: double
              0.006172839506172839: double
              0.005717008099094807: double
              0.005235602094240838: double
              0.005240590757503573: double
              0.005245588936576061: double
              0.005248091603053435: double
              0.005248091603053435.1: double
              0.005733397037744864: double
              0.0057306590257879654: double
              0.005733397037744864.1: double
              0.0057361376673040155: double
              0.006226053639846743: double
              0.006704980842911878: double
              0.006704980842911878.1: double
              0.006708193579300431: double
              0.006711409395973154: double
              0.006708193579300431.1: double
              0.00671462829736211: double
              0.00672107537205953: double
              0.007684918347742555: double
              0.0076886112445939455: double
              0.0076886112445939455.1: d
              ...
              0.02779234399580493.1: double
              0.02779234399580493.2: double
              0.02779234399580493.3: double
              0.027806925498426022: double
              0.02779234399580493.4: double
              0.027806925498426022.1: double
              0.028346456692913385: double
              0.028346456692913385.1: double
              0.028346456692913385.2: double
              0.028346456692913385.3: double
              0.028346456692913385.4: double
              0.028346456692913385.5: double
              0.028346456692913385.6: double
              0.028346456692913385.7: double
              0.028346456692913385.8: double
              0.028346456692913385.9: double
              0.028346456692913385.10: double
              0.028346456692913385.11: double
              0.028346456692913385.12: double
              0.028346456692913385.13: double
              0.028346456692913385.14: double
              0.028346456692913385.15: double
              0.028346456692913385.16: double
              0.028346456692913385.17: double
              0.028346456692913385.18: double
              0.028346456692913385.19: double
              0.028346456692913385.20: double
              0.028346456692913385.21: double
              0.028346456692913385.22: double
              0.028346456692913385.23: double
              0.028346456692913385.24: double
              0.028361344537815126: double
              0.028361344537815126.1: double
              0.028361344537815126.2: double
              0.028361344537815126.3: double
              0.028361344537815126.4: double
              0.028361344537815126.5: double
              0.028361344537815126.6: double
              0.028901734104046242: double
              0.028901734104046242.1: double
              0.028901734104046242.2: double
              0.028901734104046242.3: double
              0.028901734104046242.4: double
              0.028901734104046242.5: double
              0.029442691903259727: double
              -- schema metadata --
              pandas: '{"index_columns": [{"kind": "range", "name": null, "start": 0, "' + 71786
              to
              {'FUMARATE': Value(dtype='string', id=None), '0.017361111111111112': Value(dtype='float64', id=None), '0.015625': Value(dtype='float64', id=None), '0.01592797783933518': Value(dtype='float64', id=None), '0.015785861358956762': Value(dtype='float64', id=None), '0.01443298969072165': Value(dtype='float64', id=None), '0.015862068965517243': Value(dtype='float64', id=None), '0.014522821576763486': Value(dtype='float64', id=None), '0.013167013167013167': Value(dtype='float64', id=None), '0.013167013167013167.1': Value(dtype='float64', id=None), '0.013176144244105409': Value(dtype='float64', id=None), '0.01314878892733564': Value(dtype='float64', id=None), '0.013167013167013167.2': Value(dtype='float64', id=None), '0.013167013167013167.3': Value(dtype='float64', id=None), '0.01313969571230982': Value(dtype='float64', id=None), '0.013167013167013167.4': Value(dtype='float64', id=None), '0.013167013167013167.5': Value(dtype='float64', id=None), '0.013176144244105409.1': Value(dtype='float64', id=None), '0.013167013167013167.6': Value(dtype='float64', id=None), '0.0131852879944483': Value(dtype='float64', id=None), '0.0131852879944483.1': Value(dtype='float64', id=None), '0.013194444444444444': Value(dtype='float64', id=None), '0.0131852879944483.2': Value(dtype='float64', id=None), '0.01321279554937413': Value(dtype='float64', id=None), '0.013927576601671309': Value(dtype='float64', id=None), '0.013927576601671309.1': Value(dtype='float64', id=None), '0.013927576601671309.2': Value(d
              ...
              dtype='float64', id=None), '0.019667170953101363.4': Value(dtype='float64', id=None), '0.019667170953101363.5': Value(dtype='float64', id=None), '0.019667170953101363.6': Value(dtype='float64', id=None), '0.019667170953101363.7': Value(dtype='float64', id=None), '0.019667170953101363.8': Value(dtype='float64', id=None), '0.019667170953101363.9': Value(dtype='float64', id=None), '0.019667170953101363.10': Value(dtype='float64', id=None), '0.019667170953101363.11': Value(dtype='float64', id=None), '0.01968205904617714': Value(dtype='float64', id=None), '0.019667170953101363.12': Value(dtype='float64', id=None), '0.01968205904617714.1': Value(dtype='float64', id=None), '0.01968205904617714.2': Value(dtype='float64', id=None), '0.020454545454545454': Value(dtype='float64', id=None), '0.020454545454545454.1': Value(dtype='float64', id=None), '0.020454545454545454.2': Value(dtype='float64', id=None), '0.020454545454545454.3': Value(dtype='float64', id=None), '0.020454545454545454.4': Value(dtype='float64', id=None), '0.020454545454545454.5': Value(dtype='float64', id=None), '0.020454545454545454.6': Value(dtype='float64', id=None), '0.020454545454545454.7': Value(dtype='float64', id=None), '0.020454545454545454.8': Value(dtype='float64', id=None), '0.020454545454545454.9': Value(dtype='float64', id=None), '0.020454545454545454.10': Value(dtype='float64', id=None), '0.020454545454545454.11': Value(dtype='float64', id=None), '0.020454545454545454.12': Value(dtype='float64', id=None)}
              because column names don't match
              
              During handling of the above exception, another exception occurred:
              
              Traceback (most recent call last):
                File "/src/services/worker/src/worker/job_runners/config/parquet_and_info.py", line 1417, in compute_config_parquet_and_info_response
                  parquet_operations = convert_to_parquet(builder)
                File "/src/services/worker/src/worker/job_runners/config/parquet_and_info.py", line 1049, in convert_to_parquet
                  builder.download_and_prepare(
                File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/builder.py", line 924, in download_and_prepare
                  self._download_and_prepare(
                File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/builder.py", line 1000, in _download_and_prepare
                  self._prepare_split(split_generator, **prepare_split_kwargs)
                File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/builder.py", line 1741, in _prepare_split
                  for job_id, done, content in self._prepare_split_single(
                File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/builder.py", line 1872, in _prepare_split_single
                  raise DatasetGenerationCastError.from_cast_error(
              datasets.exceptions.DatasetGenerationCastError: An error occurred while generating the dataset
              
              All the data files must have the same columns, but at some point there are 499 new columns ({'0.0255741127348643.1', '0.02502606882168926', '0.023291925465838508.11', '0.02830188679245283.8', '0.028346456692913385.24', '0.011922503725782414', '0.012462612163509471', '0.022233712512926575.1', '0.028346456692913385.3', '0.023291925465838508', '0.006631927996210327', '0.02776322682032478.3', '0.02338877338877339.1', '0.008177008177008177', '0.01580826109127996', '0.013527054108216433', '0.025587467362924284.1', '0.026687598116169546', '0.02556077203964528.8', '0.02830188679245283.5', '0.028361344537815126.1', '0.012967581047381545.1', '0.014765784114052953.3', '0.0076886112445939455.1', '0.026687598116169546.11', '0.02284527518172378.5', '0.013567839195979899', '0.013164556962025316', '0.015282730514518594.1', '0.02502606882168926.1', '0.02338877338877339', '0.02556077203964528.6', '0.027225130890052355.1', '0.013131313131313131.3', '0.01245019920318725.1', '0.018442622950819672.1', '0.024479166666666666.1', '0.01309823677581864.2', '0.006134969325153374', '0.0057361376673040155', '0.005717008099094807', '0.014758269720101781.5', '0.026687598116169546.14', '0.025587467362924284', '0.011904761904761904', '0.01580826109127996.6', '0.014758269720101781.2', '0.012632642748863061.2', '0.011175898931000973.1', '0.028346456692913385', '0.02284527518172378', '0.014227642276422764.1', '0.026673640167364017', '0.023291925465838508.7', '0.018480492813141684.3', '0.02779234399580493.3', '0.008173076923076924.3', '0.008173076923076924', '0.005248091603053435.1', '0.0200617283950617
              ...
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              ...
              7714.2', '0.017830609212481426.20', '0.02262443438914027.2', '0.015475313190862197.1', '0.010877447425670777', '0.010706638115631691.1', '0.018670649738610903.14', '0.01167883211678832.3', '0.02042360060514372.8', '0.016260162601626018', '0.017011834319526627.3', '0.019667170953101363.3', '0.02042360060514372.12', '0.010137581462708182.2', '0.020454545454545454.12', '0.01079913606911447', '0.02042360060514372.15', '0.010706638115631691', '0.011871508379888268', '0.021148036253776436.24', '0.01090909090909091', '0.013939838591342627.1', '0.011188811188811189', '0.013186813186813187.1', '0.018670649738610903.12', '0.020454545454545454.2', '0.01968205904617714.1', '0.02260738507912585.2', '0.018628912071535022.7', '0.01944652206432311.12', '0.0111731843575419', '0.021021021021021023', '0.011180992313067784', '0.018628912071535022.1', '0.017830609212481426.19', '0.011661807580174927.2', '0.015475313190862197', '0.016236162361623615', '0.017830609212481426.8', '0.010699001426533523.1', '0.02042360060514372.23', '0.019667170953101363.12', '0.010668563300142247', '0.017817371937639197.3', '0.018656716417910446.1', '0.02180451127819549.23', '0.02260738507912585.3', '0.013980868285504048', '0.015475313190862197.2', '0.01592797783933518', '0.021148036253776436.10', '0.02042360060514372.35', '0.011963406052076003', '0.01704966641957005.1', '0.01314878892733564', '0.017011834319526627.5', '0.018628912071535022.3', '0.01132342533616419', '0.010144927536231883.6', '0.02180451127819549.17'}).
              
              This happened while the csv dataset builder was generating data using
              
              hf://datasets/petrrysavy/krebs/krebs3/threes1.tsv (at revision 229ef67a0e37072643d1ccc215629cefa560b0b0)
              
              Please either edit the data files to have matching columns, or separate them into different configurations (see docs at https://hf.co/docs/hub/datasets-manual-configuration#multiple-configurations)

Need help to make the dataset viewer work? Make sure to review how to configure the dataset viewer, and open a discussion for direct support.

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0.021545
0.021545
0.021545
0.021545
0.021545
0.021545
0.021545
0.021545
0.021545
0.021545
0.021545
0.021545
0.021545
0.021545
0.021545
0.021545
0.021545
0.021545
0.021545
0.020818
0.021545
0.020818
0.020818
0.020818
0.020818
0.020818
0.020089
0.020818
0.020089
0.020089
0.020089
0.020089
0.020089
0.020104
0.020833
0.019374
0.019374
0.019374
0.019374
0.019374
0.019374
0.019374
0.019374
0.018643
0.019374
0.018643
0.018643
0.018643
0.01791
0.018643
0.01791
0.01791
0.01791
0.017177
0.017177
0.017177
0.017177
0.017177
0.017177
0.017177
0.017177
0.017177
0.017177
0.017177
0.017177
0.017177
0.017177
0.017177
0.017177
0.016442
0.017177
0.016442
0.016442
0.016442
0.016455
0.016455
0.016455
0.016455
0.016455
0.016455
0.016455
0.016455
0.016455
0.016455
0.016455
0.016455
0.016455
0.016455
0.016455
0.016455
0.016455
0.016455
0.016455
0.015719
0.016455
0.015719
0.015707
0.015707
0.015707
0.015707
0.015707
0.015707
0.01497
0.015707
0.01497
0.01497
0.01497
0.01497
0.01497
0.01497
0.01497
0.01497
0.01497
0.01497
0.01497
0.01497
0.01497
0.01497
0.01497
0.014232
0.014243
0.014243
0.014243
0.014243
0.014243
0.014243
0.014243
0.014243
0.014243
0.014243
0.014243
0.014243
0.013503
0.013503
0.013503
0.013503
0.013503
0.013503
0.013503
0.013514
0.013514
0.013514
0.013524
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.012782
0.011295
0.011304
0.011304
0.011304
0.011304
0.010558
0.010558
0.010558
0.009811
0.009811
0.009811
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.009063
0.008314
0.008314
0.008314
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007564
0.007559
0.006808
0.006808
0.006808
0.006808
0.006808
0.006808
0.006808
0.006808
0.006808
0.006808
0.006808
0.006808
0.006056
0.006808
0.006056
0.006056
0.006061
0.006061
0.006061
0.006061
0.006061
0.006061
0.006061
0.006061
0.006061
0.006061
0.006061
0.006061
0.006061
CIS-ACONITATE
0.006944
0.026495
0.001385
0.002745
0.004124
0.002069
0.000692
0.000693
0.001386
0.001387
0.001384
0
0
0.002075
0
0
0.000693
0.001386
0
0
0
0.000694
0
0
0.000696
0.000696
0
0.000696
0.000698
0.000699
0.000698
0.000699
0.000699
0
0
0.001404
0
0.000703
0
0.000705
0.001407
0
0
0
0
0
0
0.000707
0
0
0.001415
0.000709
0
0.00071
0.00071
0
0.000711
0
0
0
0.00071
0
0
0
0
0
0.000712
0
0
0.000713
0
0
0.000715
0.000715
0
0.001431
0
0
0
0
0
0
0
0.002151
0.000719
0
0.00144
0
0
0.00072
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0.000724
0
0
0
0
0
0.000726
0
0.000725
0
0.000726
0
0
0
0
0
0
0
0
0.000728
0
0
0
0.001458
0
0
0.000729
0
0
0
0
0.001459
0
0
0
0
0
0
0
0
0
0
0
0
0
0.000733
0
0
0
0
0
0
0.000736
0.001472
0
0
0
0
0
0
0
0
0
0
0
0
0
0.000738
0
0.000739
0
0
0.000739
0
0
0
0
0
0
0.00074
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0.000742
0
0
0
0.000742
0
0
0.000742
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0.000743
0
0
0
0
0
0
0.000743
0
0
0
0
0
0
0.000744
0
0
0
0
0
0
0
0
0
0.000745
0
0
0
0
0.000746
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0.000747
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0.000748
0
0
0
0
0
0
0
0
0.000748
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0.000756
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
MALATE
0.008333
0.002717
0.001385
0.001373
0.002749
0.001379
0.003458
0.004158
0.004158
0.004161
0.00346
0.003465
0.003465
0.003458
0.003465
0.003465
0.003467
0.003465
0.00347
0.00347
0.003472
0.00347
0.003477
0.003482
0.003482
0.003482
0.003487
0.003479
0.005587
0.004892
0.00419
0.003497
0.003497
0.003501
0.002809
0.002807
0.002813
0.002811
0.002817
0.003524
0.002815
0.002819
0.002819
0.002819
0.003529
0.003531
0.003536
0.004243
0.003539
0.003544
0.004246
0.004252
0.004255
0.004258
0.004261
0.004267
0.004264
0.004264
0.004261
0.004264
0.004261
0.004264
0.004264
0.004264
0.00427
0.004274
0.004274
0.004993
0.004996
0.004993
0.004996
0.005007
0.004292
0.004292
0.005018
0.004292
0.005018
0.005014
0.005014
0.005014
0.005014
0.005735
0.005025
0.005018
0.005032
0.005051
0.00504
0.005047
0.005047
0.005043
0.005047
0.005776
0.006508
0.005789
0.005065
0.005065
0.005065
0.005069
0.005069
0.005069
0.005072
0.005072
0.005072
0.005072
0.005072
0.005072
0.005072
0.005072
0.005072
0.005069
0.005072
0.005072
0.005072
0.005072
0.00508
0.00508
0.005084
0.005076
0.005087
0.005084
0.005087
0.005087
0.005818
0.005818
0.005822
0.005822
0.005822
0.005827
0.005822
0.005831
0.005831
0.005839
0.005831
0.005839
0.005839
0.005835
0.005839
0.005839
0.005839
0.005844
0.005835
0.005844
0.005844
0.005848
0.005848
0.005121
0.005124
0.004392
0.004396
0.004396
0.004396
0.004399
0.004399
0.004402
0.004399
0.004402
0.00514
0.004405
0.004405
0.003674
0.003676
0.003679
0.003679
0.003685
0.003685
0.003685
0.003685
0.003685
0.003685
0.003685
0.003685
0.003685
0.003685
0.003685
0.003685
0.00369
0.00369
0.003695
0.003693
0.003695
0.003695
0.003693
0.002959
0.002959
0.002959
0.002959
0.002959
0.002961
0.002959
0.002963
0.002963
0.002965
0.002965
0.002965
0.002965
0.002965
0.002965
0.002965
0.002967
0.00297
0.00297
0.00297
0.00297
0.00297
0.002967
0.00297
0.00297
0.00297
0.002967
0.00297
0.00297
0.002967
0.002972
0.002972
0.002972
0.002972
0.002972
0.002972
0.002972
0.002972
0.002972
0.002972
0.002972
0.002972
0.002972
0.002972
0.002972
0.002972
0.002972
0.002972
0.002972
0.002972
0.002974
0.002972
0.002974
0.002974
0.002974
0.002974
0.002974
0.002976
0.002974
0.002976
0.002976
0.002976
0.002976
0.002976
0.002978
0.002976
0.002981
0.002981
0.002981
0.002981
0.002981
0.002981
0.002981
0.002981
0.002983
0.002981
0.002983
0.002983
0.002983
0.002985
0.002983
0.002985
0.002985
0.002985
0.002987
0.002987
0.002987
0.002987
0.002987
0.002987
0.002987
0.002987
0.002987
0.002987
0.002987
0.002987
0.002987
0.002987
0.002987
0.002987
0.00299
0.002987
0.00299
0.00299
0.00299
0.002992
0.002992
0.002992
0.002992
0.002992
0.002992
0.002992
0.002992
0.002992
0.002992
0.002992
0.002992
0.002992
0.002992
0.002992
0.002992
0.002992
0.002992
0.002992
0.002994
0.002992
0.002994
0.002992
0.002992
0.002992
0.002992
0.002992
0.002992
0.002994
0.002992
0.002994
0.002994
0.002994
0.002994
0.002994
0.002994
0.002994
0.002994
0.002994
0.002994
0.002994
0.002994
0.002994
0.002994
0.002994
0.002996
0.002999
0.002999
0.002999
0.002999
0.002999
0.002999
0.002999
0.002999
0.002999
0.002999
0.002999
0.002999
0.003001
0.003001
0.003001
0.003001
0.003001
0.003001
0.003001
0.003003
0.003003
0.003003
0.003005
0.003008
0.003008
0.003008
0.003008
0.003008
0.003008
0.003008
0.003008
0.003008
0.003008
0.003008
0.003008
0.003008
0.003008
0.003008
0.003008
0.003008
0.003008
0.003008
0.003008
0.003008
0.003008
0.002256
0.002256
0.003012
0.003014
0.003014
0.003014
0.003014
0.003017
0.003017
0.003017
0.003774
0.003019
0.003019
0.003776
0.003021
0.003021
0.003021
0.003021
0.003021
0.003021
0.003021
0.003021
0.003021
0.003021
0.003021
0.003021
0.003021
0.003021
0.003021
0.003021
0.003021
0.002266
0.002266
0.002266
0.002266
0.002266
0.002266
0.002266
0.003023
0.003023
0.003023
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003026
0.003023
0.003782
0.003782
0.003782
0.003782
0.003782
0.003782
0.003782
0.003782
0.003782
0.003782
0.003782
0.003782
0.003785
0.003782
0.003785
0.003785
0.003788
0.003788
0.003788
0.003788
0.003788
0.003788
0.003788
0.003788
0.003788
0.003788
0.003788
0.003788
0.003788
OXALOACETATE
0
0.01087
0.001385
0
0
0.001379
0
0.000693
0
0
0.000692
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0.002795
0.001397
0.000699
0
0
0.000702
0
0
0
0
0
0.001407
0
0
0
0
0
0
0
0.000708
0
0
0.000709
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0.000715
0
0
0.001431
0
0
0
0
0
0
0.001436
0
0
0
0
0
0
0
0
0
0
0.000724
0.000724
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0.000732
0
0.000732
0
0
0
0
0
0
0
0
0
0.000734
0
0.000735
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0.00074
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0.000752
0
0
0
0
0
0
0
0
0
0
0.000755
0
0
0.000755
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0.000755
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
0
FAD
0.135417
0.132473
0.135042
0.133837
0.134021
0.133103
0.133472
0.133749
0.133749
0.133842
0.133564
0.133749
0.133749
0.133472
0.133749
0.133749
0.133842
0.133749
0.133935
0.133935
0.134028
0.133935
0.134214
0.133705
0.133705
0.133705
0.133891
0.133612
0.134078
0.134172
0.134078
0.134266
0.134266
0.134454
0.133427
0.133333
0.133615
0.133521
0.133803
0.133897
0.133709
0.133897
0.133897
0.133192
0.13338
0.132768
0.132956
0.132956
0.13305
0.133239
0.13305
0.133239
0.133333
0.133428
0.133523
0.133713
0.133618
0.133618
0.133523
0.133618
0.133523
0.133618
0.133618
0.133618
0.133808
0.133903
0.133191
0.133381
0.133476
0.133381
0.133476
0.133763
0.133763
0.133763
0.13405
0.133763
0.13405
0.133954
0.133954
0.133954
0.133954
0.13405
0.134243
0.13405
0.133717
0.132756
0.132469
0.13266
0.13266
0.132565
0.13266
0.13213
0.132321
0.132417
0.132417
0.132417
0.132417
0.132513
0.132513
0.132513
0.132609
0.132609
0.132609
0.132609
0.132609
0.132609
0.132609
0.132609
0.132609
0.132513
0.132609
0.132609
0.132609
0.132609
0.132801
0.132075
0.132171
0.13198
0.131541
0.131445
0.131541
0.131541
0.131636
0.131636
0.131004
0.131004
0.131004
0.1311
0.131004
0.131195
0.131195
0.131387
0.131195
0.131387
0.131387
0.131291
0.131387
0.131387
0.131387
0.131483
0.131291
0.131483
0.131483
0.130848
0.130848
0.130944
0.130307
0.130307
0.130403
0.130403
0.130403
0.129765
0.129765
0.129861
0.129765
0.129861
0.129956
0.129956
0.129956
0.129317
0.129412
0.129507
0.129507
0.128224
0.128224
0.128224
0.128224
0.128224
0.128224
0.128224
0.128224
0.128224
0.128224
0.128224
0.128224
0.128413
0.127675
0.127864
0.12777
0.127864
0.127864
0.12777
0.127219
0.127219
0.127219
0.127219
0.127219
0.127313
0.127219
0.127407
0.127407
0.127502
0.127502
0.127502
0.127502
0.127502
0.127502
0.127502
0.127596
0.126949
0.126949
0.126949
0.126949
0.126949
0.126855
0.126949
0.126949
0.126949
0.126855
0.126949
0.126949
0.126855
0.127043
0.127043
0.127043
0.127043
0.127043
0.127043
0.127043
0.127043
0.127043
0.127043
0.127043
0.127043
0.127043
0.127043
0.127043
0.127043
0.127043
0.127043
0.127043
0.127043
0.127138
0.127043
0.127138
0.127138
0.127138
0.127138
0.127138
0.127232
0.127138
0.127232
0.127232
0.127232
0.127232
0.127232
0.126582
0.126488
0.126677
0.126677
0.126677
0.126677
0.126677
0.126677
0.126677
0.126677
0.126771
0.126677
0.126771
0.126771
0.126771
0.126866
0.126771
0.126866
0.126866
0.126866
0.12696
0.12696
0.12696
0.12696
0.12696
0.12696
0.12696
0.12696
0.12696
0.12696
0.12696
0.12696
0.12696
0.12696
0.12696
0.12696
0.127055
0.12696
0.127055
0.127055
0.127055
0.126402
0.126402
0.126402
0.126402
0.126402
0.126402
0.126402
0.126402
0.126402
0.126402
0.126402
0.126402
0.126402
0.126402
0.126402
0.126402
0.126402
0.126402
0.126402
0.126497
0.126402
0.126497
0.126402
0.126402
0.126402
0.126402
0.126402
0.126402
0.126497
0.126402
0.126497
0.126497
0.126497
0.126497
0.126497
0.126497
0.126497
0.126497
0.126497
0.126497
0.126497
0.126497
0.126497
0.126497
0.126497
0.126592
0.125937
0.125937
0.125937
0.125937
0.125937
0.125937
0.125937
0.125937
0.125937
0.125937
0.125937
0.125937
0.126032
0.126032
0.126032
0.126032
0.126032
0.126032
0.126032
0.125375
0.125375
0.125375
0.124718
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.124812
0.125
0.123587
0.123587
0.123587
0.123587
0.12368
0.12368
0.12368
0.123774
0.123774
0.123774
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123867
0.123961
0.123961
0.123961
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.123961
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124054
0.124148
0.124054
0.124148
0.124148
0.123485
0.123485
0.123485
0.123485
0.123485
0.123485
0.123485
0.123485
0.123485
0.123485
0.123485
0.123485
0.123485
SUCCINYL-COA
0
0
0
0.004804
0.019931
0.018621
0.021438
0.022869
0.023562
0.023578
0.025606
0.027027
0.02772
0.027663
0.028413
0.028413
0.029126
0.029106
0.029146
0.02984
0.029861
0.030534
0.029207
0.029248
0.029944
0.029944
0.029986
0.032011
0.032821
0.032145
0.032821
0.032867
0.033566
0.033613
0.033708
0.032982
0.033755
0.033732
0.033099
0.033827
0.033779
0.034531
0.035941
0.03735
0.037403
0.037429
0.037482
0.03819
0.039632
0.039688
0.041755
0.041814
0.042553
0.041874
0.042614
0.042674
0.042644
0.044065
0.044034
0.045487
0.046875
0.046908
0.046908
0.046908
0.045552
0.045584
0.046296
0.047076
0.047109
0.047789
0.047823
0.047926
0.047926
0.048641
0.049462
0.050787
0.050896
0.05086
0.051576
0.051576
0.051576
0.051613
0.051687
0.051613
0.051042
0.051948
0.053276
0.053353
0.054795
0.054755
0.055516
0.055596
0.054953
0.054993
0.054993
0.054993
0.055716
0.055757
0.055757
0.055757
0.055072
0.055072
0.055072
0.055072
0.055797
0.056522
0.057246
0.057971
0.057971
0.057929
0.057971
0.057971
0.057971
0.057971
0.057329
0.057329
0.058097
0.058738
0.058866
0.058824
0.058866
0.059593
0.059636
0.059636
0.05968
0.060408
0.061135
0.06118
0.062591
0.062682
0.062682
0.063504
0.063411
0.063504
0.064234
0.065646
0.065693
0.066423
0.067153
0.067202
0.067104
0.067202
0.069394
0.069444
0.069444
0.069495
0.069546
0.070278
0.07033
0.071062
0.071062
0.071114
0.071114
0.0719
0.071848
0.0719
0.071953
0.071953
0.071953
0.072741
0.073529
0.072848
0.072112
0.072218
0.072955
0.072955
0.072955
0.072955
0.072955
0.073692
0.073692
0.075166
0.075903
0.07664
0.07664
0.076753
0.076753
0.076866
0.076809
0.076866
0.076866
0.076809
0.076923
0.076923
0.077663
0.077663
0.077663
0.07772
0.077663
0.077037
0.077037
0.077094
0.077094
0.077094
0.077094
0.077094
0.077094
0.077094
0.076409
0.077209
0.077209
0.077209
0.077209
0.077209
0.077151
0.077951
0.077951
0.079436
0.079377
0.079436
0.079436
0.080119
0.079495
0.080238
0.080981
0.080981
0.080981
0.080981
0.080981
0.080981
0.080981
0.080981
0.081724
0.081724
0.081724
0.081724
0.081724
0.081724
0.081724
0.081724
0.081724
0.081724
0.081784
0.08321
0.083271
0.083271
0.083271
0.083271
0.083271
0.083333
0.083271
0.083333
0.083333
0.083333
0.084077
0.084077
0.08414
0.084821
0.084203
0.084948
0.084948
0.084948
0.084948
0.084948
0.084948
0.084948
0.085011
0.085693
0.086503
0.087248
0.087248
0.087313
0.087248
0.087313
0.08806
0.088806
0.088872
0.088872
0.088872
0.088872
0.088872
0.088872
0.088872
0.088872
0.088872
0.088872
0.088872
0.088872
0.088872
0.088872
0.088872
0.088872
0.088939
0.088872
0.088939
0.090433
0.090433
0.090501
0.090501
0.090501
0.090501
0.091249
0.091249
0.091249
0.091249
0.091249
0.091249
0.091249
0.091249
0.091249
0.091249
0.091249
0.091249
0.091249
0.091249
0.091249
0.091317
0.091249
0.091317
0.091249
0.091997
0.092745
0.093493
0.093493
0.093493
0.093563
0.093493
0.093563
0.093563
0.093563
0.093563
0.093563
0.094311
0.094311
0.094311
0.09506
0.09506
0.09506
0.09506
0.09506
0.095808
0.095808
0.09588
0.095952
0.095952
0.095952
0.096702
0.096702
0.096702
0.096702
0.096702
0.096702
0.096702
0.096702
0.096702
0.096774
0.097524
0.097524
0.097524
0.097524
0.097524
0.097524
0.097598
0.097598
0.097598
0.097671
0.096992
0.097744
0.097744
0.097744
0.098496
0.098496
0.099248
0.099248
0.099248
0.099248
0.099248
0.099248
0.099248
0.1
0.1
0.1
0.1
0.1
0.1
0.1
0.1
0.1
0.100752
0.100752
0.100151
0.100226
0.100226
0.10098
0.10098
0.100302
0.100302
0.100302
0.100377
0.100377
0.100377
0.100453
0.100453
0.100453
0.100453
0.100453
0.100453
0.100453
0.100453
0.100453
0.100453
0.100453
0.100453
0.100453
0.100453
0.100453
0.100453
0.100453
0.100453
0.100453
0.100453
0.101208
0.101208
0.101964
0.101964
0.101964
0.102041
0.102041
0.102041
0.101362
0.101362
0.101362
0.101362
0.101362
0.101362
0.101362
0.101362
0.101362
0.101362
0.101362
0.101362
0.101362
0.101362
0.101362
0.101362
0.101362
0.101362
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.102118
0.103553
0.103631
0.103631
0.104387
0.104387
0.104387
0.104387
0.104387
0.104387
0.104387
0.104387
0.105144
0.105144
0.105223
0.105144
0.105223
0.105223
0.105303
0.105303
0.105303
0.105303
0.105303
0.105303
0.105303
0.105303
0.105303
0.105303
0.105303
0.105303
0.105303
NAD
0.441667
0.421196
0.421745
0.374056
0.358076
0.353103
0.347856
0.344421
0.343728
0.343273
0.337024
0.336105
0.333333
0.332642
0.33264
0.329868
0.329404
0.329175
0.328938
0.326856
0.326389
0.325468
0.326147
0.325905
0.325209
0.325209
0.324965
0.320807
0.320531
0.317959
0.312849
0.30979
0.307692
0.306723
0.304775
0.304561
0.304501
0.303584
0.304225
0.301621
0.299789
0.298097
0.295278
0.293869
0.293578
0.293785
0.294201
0.293494
0.29087
0.289157
0.285916
0.285613
0.285106
0.285309
0.283381
0.283784
0.282871
0.28145
0.27983
0.278607
0.276989
0.277186
0.276475
0.276475
0.276868
0.277066
0.276353
0.276034
0.276231
0.275321
0.275517
0.274678
0.273963
0.273247
0.271685
0.26681
0.267384
0.264327
0.26361
0.26361
0.262894
0.263082
0.262024
0.261649
0.262401
0.261183
0.259179
0.259553
0.258111
0.257925
0.25739
0.257762
0.258134
0.257598
0.256874
0.256874
0.256151
0.256336
0.256336
0.256336
0.256522
0.256522
0.256522
0.256522
0.255797
0.255072
0.254348
0.253623
0.253623
0.25344
0.253623
0.252174
0.252174
0.252174
0.25254
0.25254
0.251997
0.248731
0.249273
0.249092
0.249273
0.248547
0.248727
0.248727
0.248908
0.24818
0.247453
0.246176
0.244541
0.244169
0.24344
0.243066
0.242711
0.243066
0.240146
0.238512
0.238686
0.237226
0.236496
0.236669
0.235594
0.235939
0.233747
0.233918
0.233918
0.231895
0.232064
0.2306
0.230769
0.230037
0.230037
0.230205
0.230205
0.228907
0.228739
0.228173
0.228341
0.227606
0.227606
0.226304
0.225735
0.225901
0.225901
0.225497
0.224761
0.224761
0.224761
0.224761
0.224761
0.224024
0.224024
0.22255
0.221813
0.221076
0.221076
0.219926
0.219926
0.219512
0.21935
0.218773
0.217295
0.217134
0.216716
0.215976
0.215237
0.215237
0.215237
0.215396
0.215237
0.215556
0.214815
0.214233
0.214233
0.214233
0.214233
0.214233
0.214233
0.214233
0.21365
0.213066
0.213066
0.213066
0.213066
0.213066
0.212908
0.212324
0.211581
0.210097
0.209941
0.210097
0.208612
0.207715
0.208024
0.207281
0.206538
0.206538
0.206538
0.206538
0.206538
0.206538
0.206538
0.206538
0.205795
0.205795
0.205795
0.205795
0.205795
0.205795
0.205795
0.205795
0.205795
0.205052
0.205204
0.203566
0.203717
0.202974
0.202974
0.202974
0.202974
0.203125
0.202974
0.203125
0.202381
0.202381
0.201637
0.201637
0.201042
0.200149
0.200447
0.199702
0.199702
0.199702
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A-K-GLUTARATE
0
0
0.006233
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0.028866
0.032414
0.033887
0.03465
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GDP
0.098611
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0.075758
End of preview.

The Krebs cycle dataset

Motivation

This dataset contains simulated time series that mimic Kreb's cycle. The intent of the datasets is for causal discovery from multivariate time series data, provide ground truth causal relationships as well as allow testing on multiple scenarios, including many short time series,

few long time series, as well as relative data instead of absolute values.

The dataset was created at the Czech Technical University in Prague as part of the CoDiet project https://www.codiet.eu/, which focuses on the relationship between diet and non-transmittable diseases.

The contents of this repository are also described in the following paper: (TODO, we will provide a bibtex reference, once published)

Causal Learning in Biomedical Applications
Petr Ryšavý, Xiaoyu He, Jakub Mareček

Dataset composition

There are four datasets, each differing in the type of time series. The basic characteristics are described in the table below. Each of the datasets is contained in one of the subdirectories of this repository.

Dataset N. features Lenght N. series Initialization Concentrations
KrebsN 16 500 100 Normal distribution Absolute
Krebs3 16 500 120 Excitation of three Relative
KrebsL 16 5000 10 Normal distribution Absolute
KrebsS 16 5 10000 Normal distribution Absolute

Each of the datasets was sampled using a simulator of the Krebs cycle. Individual compounds were created in a bounding box and spread throughout the box at random locations. In each time step, the molecules move in the box, and once a reaction can happen, the reactants are removed, and the product is created. As a result, the concentrations of the particles change, resulting in one data point per time step of the simulator.

Each of the time series is in its individual file, with a name connected to the type of the series and the seed (timestamp) used for the dataset generation. Each of the rows in each of the time series files contains concentrations of one compound, where individual time steps are separated by tab character \t. The files with the individual time series are, therefore, in the TSV format (tab-separated-values) and can be opened in any text editor or tabular editor.

The features in the dataset correspond to the following molecules:

Whenever the concentrations are absolute (please see the table above), the features show the number of individual molecules in the mix. Whenever the concentrations are relative, the concentrations are normalized to zero-one interval.

The dataset contains no missing data. The source of randomness in the data comes from the initialization of the compound's concentrations and randomness of the location of the compounds in the bounding box. Despite the fact that it is unlikely, the datasets can contain repeated time series. The datasets are self-contained.

If needed for testing, the recommended train-test split is so that the first x % of the dataset is used for training, and the remaining 1-x% is used for testing. The order in which individual time series are considered is at the root of the repository.

The datasets do not contain any confidential, offensive, or similar type of data.

Dataset collection

The dataset is simulated, meaning that the data were generated by a computer program. The simulator is based on the Chemistry Engine repository (https://github.com/AugustNagro/Chemistry-Engine) by August Nagro. You can find the code used to generate the dataset in github repository at https://github.com/petrrysavy/krebsgenerator/.

Uses

The dataset is intended for testing and developing causal discovery algorithms. From the time series, one would naturally ask questions of whether higher levels of FURMATE in one-time step imply higher levels of MALATE in the next step, in an ideal case leading to the discovery of the whole cycle of reactions. The usage is, however, not limited to causal discovery; it is possible to predict concentrations at the next level or do any similar time-series analyses.

Distribution

The dataset is available at the HuggingFace repository at https://huggingface.co/datasets/petrrysavy/krebs/tree/main. The dataset is available under the CC-BY-3.0 license. The authors bear all responsibility in case of violation of rights. To download the dataset, use

git clone [email protected]:datasets/petrrysavy/krebs/

The metadata to the project in JSON format can be found at https://huggingface.co/api/datasets/petrrysavy/krebs/croissant.

Example of Usages in Custom Projects

An example usage of the dataset can be found at github repository at https://github.com/petrrysavy/krebsdynotears. The repository shows usage of the dataset to evaluate DyNoTears (see https://arxiv.org/abs/2002.00498), a State-of-the-art method for dynamic Bayesian networks. The repository also provides an example of how to load the code into Python language, here:

import os
import pandas as pd

with open("krebsN.txt", "r") as file:
    lines = file.readlines()
files = ["krebsN" + os.sep + line.strip() for line in lines]

data = [pd.read_table(path + os.sep + file, header=None, index_col=0).transpose() for file in files]

# data now contains a list of pandas data frames, one per single time-series
# columns of the data frames are concentrations of one of the 16 compounds
# rows correspond to individual time-steps, sorted by increasing time

Maintenance

With queries, requests, and errands about the dataset, please contact either Petr Ryšavý [email protected], or Jakub Mareček [email protected]. The authors of the repository are open to proposed changes and extensions of the dataset; the simplest way to do so is to open a pull request in HuggingFace, which will be merged after validation. The history of the dataset can be seen in the commit history at https://huggingface.co/datasets/petrrysavy/krebs/commits/main.

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