Dataset Viewer
Auto-converted to Parquet Duplicate
_primaryKey
stringlengths
7
67
_firstSeenAt
timestamp[ms, tz=UTC]date
2026-01-28 22:38:59
2026-02-09 08:35:51
_lastSeenAt
timestamp[ms, tz=UTC]date
2026-01-28 22:38:59
2026-02-09 08:35:51
listingId
stringlengths
7
67
eventId
stringclasses
178 values
price
stringclasses
1 value
priceWithFees
stringclasses
1 value
fee
stringclasses
1 value
section
stringclasses
796 values
sectionFull
stringclasses
805 values
row
stringclasses
120 values
quantity
uint8
1
26
seats
listlengths
0
26
inHandDate
timestamp[ms, tz=UTC]date
1984-11-10 00:00:00
2026-09-19 00:00:00
deliveryType
stringclasses
3 values
marketplace
stringclasses
5 values
dealBucket
uint8
0
7
dealScore
stringclasses
1 value
splitType
stringclasses
66 values
05VT8pnJx66
2026-01-28T22:39:35.878000
2026-01-28T22:39:35.878000
05VT8pnJx66
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
115
Section 115
17
1
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
1
05VT8pnaVY7
2026-01-28T22:39:35.878000
2026-01-28T22:39:35.878000
05VT8pnaVY7
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
110
Section 110
17
3
[]
2026-04-10T00:00:00
electronic
exchange
5
[PREMIUM]
1,2,3
2v0czpJ5OzG
2026-01-28T22:39:35.878000
2026-01-28T22:39:35.878000
2v0czpJ5OzG
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
102
Section 102
17
4
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
1,2,4
2v0czpJeZ5E
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
2v0czpJeZ5E
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
110
Section 110
23
2
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
2
3q7fNp93oZJ
2026-01-28T22:39:35.878000
2026-01-28T22:39:35.878000
3q7fNp93oZJ
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
305
Section 305
3
3
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
1,2,3
4vXcjpakpr8
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
4vXcjpakpr8
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
324
Section 324
13
2
[]
2026-04-10T00:00:00
electronic
exchange
3
[PREMIUM]
2
5EjuZpOEoBe
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
5EjuZpOEoBe
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
301
Section 301
4
2
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
2
6mOhkda8MPX
2026-01-28T22:39:35.878000
2026-01-28T22:39:35.878000
6mOhkda8MPX
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
317
Section 317
16
4
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
1,2,4
7KntAp5OM07
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
7KntAp5OM07
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
323
Section 323
4
2
[]
2026-04-10T00:00:00
electronic
exchange
0
[PREMIUM]
2
7KntAp5Genj
2026-01-28T22:39:35.878000
2026-02-05T00:20:24.047000
7KntAp5Genj
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
110
Section 110
2
1
[]
2026-04-11T00:00:00
electronic
exchange
0
[PREMIUM]
1
7KntAp5xVZp
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
7KntAp5xVZp
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
114
Section 114
16
2
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
1,2
7KntApL5ZxN
2026-01-28T22:39:35.878000
2026-02-05T00:20:24.047000
7KntApL5ZxN
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
308
Section 308
7
2
[ "1", "2" ]
2026-04-09T00:00:00
electronic
exchange
0
[PREMIUM]
2
9P2c5pNaz72
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
9P2c5pNaz72
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
303
Section 303
5
2
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
2
A6rs28AM0qM
2026-01-28T22:39:35.878000
2026-01-28T22:39:35.878000
A6rs28AM0qM
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
110
Section 110
17
3
[]
2026-04-10T00:00:00
electronic
exchange
5
[PREMIUM]
1,2,3
A6rs28zbNJJ
2026-01-28T22:39:35.878000
2026-02-07T10:03:23.361000
A6rs28zbNJJ
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
106
Section 106
23
3
[]
2026-04-10T00:00:00
electronic
exchange
0
[PREMIUM]
3
BALImZrJlj5
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
BALImZrJlj5
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
301
Section 301
7
3
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
1,3
EroUXZrr8re
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
EroUXZrr8re
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
301
Section 301
11
4
[]
2026-04-10T00:00:00
electronic
exchange
4
[PREMIUM]
1,2,3,4
EroUXZzYlAE
2026-01-28T22:39:35.878000
2026-01-28T22:39:35.878000
EroUXZzYlAE
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
118
Section 118
14
2
[]
2026-01-28T00:00:00
electronic
exchange
2
[PREMIUM]
2
EroUXZzGwo5
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
EroUXZzGwo5
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
118M
Section 118 M
27
4
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
1,2,4
EroUXZzJ8B6
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
EroUXZzJ8B6
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
310
Section 310
6
2
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
2
GAaI6ZlkDRv
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
GAaI6ZlkDRv
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
120
Section 120
18
2
[]
2026-04-11T00:00:00
electronic
exchange
4
[PREMIUM]
2
GAaI6Zlpavq
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
GAaI6Zlpavq
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
303
Section 303
4
2
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
2
JABI3ZamGl3
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
JABI3ZamGl3
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
301
Section 301
11
4
[]
2026-04-11T00:00:00
electronic
exchange
3
[PREMIUM]
2,4
JABI3ZkPAXG
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
JABI3ZkPAXG
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
303
Section 303
6
4
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
1,2,4
JABI3ZkLYbE
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
JABI3ZkLYbE
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
102
Section 102
15
7
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
1,2,3,4,5,6,7
KezczZVbM5M
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
KezczZVbM5M
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
302
Section 302
1
2
[]
2026-04-10T00:00:00
electronic
exchange
1
[PREMIUM]
2
LbviLZOV47z
2026-01-28T22:39:35.878000
2026-01-29T22:38:45.818000
LbviLZOV47z
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
311
Section 311
5
2
[]
2026-04-10T00:00:00
electronic
exchange
0
[PREMIUM]
2
LbviLZPn2R2
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
LbviLZPn2R2
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
303
Section 303
6
6
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
1,2,3,4,5,6
LbviLZPKaK9
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
LbviLZPKaK9
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
102
Section 102
15
7
[]
2026-04-10T00:00:00
electronic
exchange
3
[PREMIUM]
1,2,3,4,5,6,7
LbviLZPN5V3
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
LbviLZPN5V3
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
113
Section 113
24
6
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
1,2,3,4,5,6
MAeIPZRxbKx
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
MAeIPZRxbKx
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
313
Section 313
7
2
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
2
MAeIPZRxjvV
2026-01-28T22:39:35.878000
2026-02-06T00:12:27.630000
MAeIPZRxjvV
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
102
Section 102
15
7
[]
2026-04-10T00:00:00
electronic
exchange
5
[PREMIUM]
1,2,3,4,5,6,7
MAeIPZRRJl3
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
MAeIPZRRJl3
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
109M
Section 109 M
25
2
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
1,2
MAeIPZdRAog
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
MAeIPZdRAog
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
122
Section 122
29
4
[]
2026-04-11T00:00:00
electronic
exchange
3
[PREMIUM]
2,4
MAeIPZpObDO
2026-01-28T22:39:35.878000
2026-01-29T22:38:45.818000
MAeIPZpObDO
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
310
Section 310
8
6
[]
2026-04-10T00:00:00
electronic
exchange
1
[PREMIUM]
6
NrqUvZqZ7Xe
2026-01-28T22:39:35.878000
2026-02-05T00:20:24.047000
NrqUvZqZ7Xe
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
113
Section 113
3
4
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
1,2,3,4
O7Ahw833K9P
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
O7Ahw833K9P
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
323
Section 323
3
2
[]
2026-04-10T00:00:00
electronic
exchange
5
[PREMIUM]
2
PX0sg89aV7M
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
PX0sg89aV7M
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
106
Section 106
10
2
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
2
ROXHz7aOEB6
2026-01-28T22:39:35.878000
2026-01-29T22:38:45.818000
ROXHz7aOEB6
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
323
Section 323
11
4
[]
2026-04-10T00:00:00
electronic
exchange
4
[PREMIUM]
1,2,3,4
V4KU0nYJzaM
2026-01-28T22:39:35.878000
2026-01-29T22:38:45.818000
V4KU0nYJzaM
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
102
Section 102
4
4
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
1,2,4
V4KU0nYk6BJ
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
V4KU0nYk6BJ
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
104
Section 104
29
4
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
1,2,4
YgJtk575dl7
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
YgJtk575dl7
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
319
Section 319
17
4
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
1,2,3,4
YgJtk5a4bVD
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
YgJtk5a4bVD
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
116
Section 116 A
17
4
[]
2026-04-10T00:00:00
electronic
exchange
0
[PREMIUM]
4
Zm9hvqn0OkO
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
Zm9hvqn0OkO
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
321
Section 321
16
4
[ "13", "14", "15", "16" ]
2026-04-11T00:00:00
electronic
exchange
0
[PREMIUM]
2,4
Zm9hvqnqBXM
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
Zm9hvqnqBXM
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
103
Section 103
28
2
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
2
agktlLKOoKj
2026-01-28T22:39:35.878000
2026-02-07T10:03:23.361000
agktlLKOoKj
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
111
Section 111
9
3
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
1,2,3
agktlLKwpw5
2026-01-28T22:39:35.878000
2026-01-28T22:39:35.878000
agktlLKwpw5
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
113
Section 113
19
11
[]
2026-01-28T00:00:00
electronic
exchange
0
[PREMIUM]
1,2,3,4,5,6,7,8,9,11
b4wUazZZXgY
2026-01-28T22:39:35.878000
2026-01-28T22:39:35.878000
b4wUazZZXgY
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
103
Section 103
h
4
[]
2026-04-10T00:00:00
electronic
exchange
4
[PREMIUM]
1,2,3,4
b4wUazZXm9d
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
b4wUazZXm9d
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
303
Section 303
6
2
[]
2026-04-11T00:00:00
electronic
exchange
3
[PREMIUM]
2
dNgUgRL3Vbm
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
dNgUgRL3Vbm
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
319
Section 319
17
4
[]
2026-04-10T00:00:00
electronic
exchange
5
[PREMIUM]
1,2,3,4
dNgUgRLbloz
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
dNgUgRLbloz
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
102
Section 102
15
7
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
1,2,3,4,5,7
eeacKbErO66
2026-01-28T22:39:35.878000
2026-01-28T22:39:35.878000
eeacKbErO66
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
311
Section 311
8
2
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
2
eeacKbz5qvo
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
eeacKbz5qvo
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
318
Section 318
6
4
[]
2026-04-10T00:00:00
electronic
exchange
2
[PREMIUM]
4
kYet9zXERMp
2026-01-28T22:39:35.878000
2026-01-28T22:39:35.878000
kYet9zXERMp
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
113
Section 113
19
11
[]
2026-01-28T00:00:00
electronic
exchange
0
[PREMIUM]
1,2,3,4,5,6,7,8,9,11
lxVsdDKR07B
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
lxVsdDKR07B
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
102
Section 102
29
5
[]
2026-04-10T00:00:00
electronic
exchange
0
[PREMIUM]
5
lxVsdDrLMOr
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
lxVsdDrLMOr
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
113
Section 113
10
1
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
1
lxVsdDr8nY0
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
lxVsdDr8nY0
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
109M
Section 109 M
25
4
[]
2026-04-10T00:00:00
electronic
exchange
2
[PREMIUM]
1,2,3,4
lxVsdDrlaO5
2026-01-28T22:39:35.878000
2026-02-04T02:54:17.758000
lxVsdDrlaO5
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
308
Section 308
7
2
[ "9001", "9002" ]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
2
lxVsdDrJmq5
2026-01-28T22:39:35.878000
2026-01-28T22:39:35.878000
lxVsdDrJmq5
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
103
Section 103
h
4
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
1,2,3,4
mxAs4Dk9Bvm
2026-01-28T22:39:35.878000
2026-01-29T22:38:45.818000
mxAs4Dk9Bvm
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
323
Section 323
12
4
[]
2026-04-10T00:00:00
electronic
exchange
4
[PREMIUM]
1,2,3,4
mxAs4Dk9aRY
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
mxAs4Dk9aRY
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
319
Section 319
17
4
[]
2026-04-10T00:00:00
electronic
exchange
5
[PREMIUM]
1,2,3,4
mxAs4DkbGNj
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
mxAs4DkbGNj
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
112
Section 112
23
4
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
1,2,4
nx0srAXqga7
2026-01-28T22:39:35.878000
2026-01-28T22:39:35.878000
nx0srAXqga7
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
101
Section 101
3
2
[]
2026-04-10T00:00:00
electronic
exchange
0
[PREMIUM]
2
oV7Hbd2R5PX
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
oV7Hbd2R5PX
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
115
Section 115
25
4
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
1,2,4
oV7Hbd236x8
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
oV7Hbd236x8
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
119M
Section 119 M
26
4
[]
2026-04-10T00:00:00
electronic
exchange
1
[PREMIUM]
4
oV7HbdV4j8m
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
oV7HbdV4j8m
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
312
Section 312
13
2
[]
2026-04-10T00:00:00
electronic
exchange
1
[PREMIUM]
2
pVXHDzAPZNP
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
pVXHDzAPZNP
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
106M
Section 106 M
28
2
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
2
pVXHDzALKvM
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
pVXHDzALKvM
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
109M
Section 109 M
25
4
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
1,2,3,4
pVXHDzAzYPb
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
pVXHDzAzYPb
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
323
Section 323
11
4
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
1,2,3,4
qVjH2A8ZM92
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
qVjH2A8ZM92
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
323
Section 323
6
2
[]
2026-04-10T00:00:00
electronic
exchange
0
[PREMIUM]
2
qVjH2A8eqJq
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
qVjH2A8eqJq
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
118M
Section 118 M
28
7
[]
2026-04-10T00:00:00
electronic
exchange
5
[PREMIUM]
1,2,3,4,5,6,7
rVOHkAYG0O6
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
rVOHkAYG0O6
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
113
Section 113
3
4
[]
2026-04-11T00:00:00
electronic
exchange
4
[PREMIUM]
2,4
rVOHkAYZVqP
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
rVOHkAYZVqP
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
109M
Section 109 M
25
2
[]
2026-04-10T00:00:00
electronic
exchange
2
[PREMIUM]
2
rVOHkAwmNw9
2026-01-28T22:39:35.878000
2026-01-29T22:38:45.818000
rVOHkAwmNw9
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
312
Section 312
18
2
[]
2026-04-11T00:00:00
electronic
exchange
2
[PREMIUM]
2
w3JseOjJXJD
2026-01-28T22:39:35.878000
2026-02-09T00:20:00.176000
w3JseOjJXJD
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
323
Section 323
16
2
[]
2026-04-10T00:00:00
electronic
exchange
1
[PREMIUM]
2
xb9imv5pANL
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
xb9imv5pANL
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
122
Section 122
20
2
[]
2026-04-11T00:00:00
electronic
exchange
1
[PREMIUM]
2
z3Es62eqdEm
2026-01-28T22:39:35.878000
2026-01-30T22:49:52.093000
z3Es62eqdEm
17669883
[PREMIUM]
[PREMIUM]
[PREMIUM]
303
Section 303
6
8
[]
2026-04-10T00:00:00
electronic
exchange
4
[PREMIUM]
1,2,3,4,5,6,7,8
mo28kn0
2026-01-28T22:39:18.673000
2026-02-09T00:16:37.077000
mo28kn0
17669520
[PREMIUM]
[PREMIUM]
[PREMIUM]
102
Section 102
18
5
[ "1", "2", "3", "4", "5" ]
2026-03-30T00:00:00
electronic
fan_to_fan
1
[PREMIUM]
1,2,3,5
05VT8pnnzOv
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
05VT8pnnzOv
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
129
Section 129
i
3
[ "3", "4", "5" ]
2026-04-10T00:00:00
electronic
exchange
4
[PREMIUM]
1,3
2v0czpJnrZL
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
2v0czpJnrZL
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
101
Section 101
z
4
[ "300", "301", "302", "303" ]
2026-04-10T00:00:00
electronic
exchange
2
[PREMIUM]
2,4
3q7fNp99A4D
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
3q7fNp99A4D
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
104
Section 104
o
4
[ "9", "10", "11", "12" ]
2026-04-10T00:00:00
electronic
exchange
0
[PREMIUM]
1,2,4
3q7fNp99A6B
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
3q7fNp99A6B
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
131
Section 131
s
6
[ "5", "6", "7", "8", "9", "10" ]
2026-04-10T00:00:00
electronic
exchange
0
[PREMIUM]
1,2,3,4,6
4vXcjpv20e6
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
4vXcjpv20e6
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
238
Section 238
v
4
[ "300", "301", "302", "303" ]
2026-04-10T00:00:00
electronic
exchange
5
[PREMIUM]
1,2,4
5EjuZpOODoX
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
5EjuZpOODoX
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
126
Section 126
d
3
[ "1", "2", "3" ]
2026-04-10T00:00:00
electronic
exchange
0
[PREMIUM]
1,3
5EjuZpOODLA
2026-01-28T22:39:16.544000
2026-01-30T22:50:06.272000
5EjuZpOODLA
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
116
Section 116
s
3
[ "7", "8", "9" ]
2026-04-10T00:00:00
electronic
exchange
0
[PREMIUM]
1,3
5EjuZpOOD7n
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
5EjuZpOOD7n
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
130
Section 130
m
4
[ "7", "8", "9", "10" ]
2026-04-10T00:00:00
electronic
exchange
1
[PREMIUM]
1,2,4
5EjuZpOEdmZ
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
5EjuZpOEdmZ
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
129
Section 129
z
4
[ "300", "301", "302", "303" ]
2026-04-10T00:00:00
electronic
exchange
3
[PREMIUM]
2,4
5EjuZpOEdZZ
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
5EjuZpOEdZZ
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
138
Section 138
u
2
[ "304", "305" ]
2026-04-10T00:00:00
electronic
exchange
5
[PREMIUM]
2
6mOhkdanjkJ
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
6mOhkdanjkJ
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
133
Section 133
z
2
[ "304", "305" ]
2026-04-10T00:00:00
electronic
exchange
5
[PREMIUM]
2
6mOhkdaaGXO
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
6mOhkdaaGXO
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
230
Section 230
m
4
[ "3", "4", "5", "6" ]
2026-04-10T00:00:00
electronic
exchange
0
[PREMIUM]
1,2,4
8lKt6prrqj0
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
8lKt6prrqj0
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
116
Section 116
q
4
[ "3", "4", "5", "6" ]
2026-04-10T00:00:00
electronic
exchange
0
[PREMIUM]
1,2,4
8lKt6prrqd0
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
8lKt6prrqd0
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
106
Section 106
z
6
[ "3", "4", "5", "6", "7", "8" ]
2026-04-10T00:00:00
electronic
exchange
0
[PREMIUM]
1,2,3,4,6
8lKt6prrq7P
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
8lKt6prrq7P
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
225
Section 225
h
4
[ "7", "8", "9", "10" ]
2026-04-10T00:00:00
electronic
exchange
1
[PREMIUM]
1,2,4
9P2c5pN8z48
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
9P2c5pN8z48
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
126
Section 126
z
4
[ "300", "301", "302", "303" ]
2026-04-10T00:00:00
electronic
exchange
4
[PREMIUM]
2,4
A6rs28A9vnO
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
A6rs28A9vnO
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
201
Section 201
x
3
[ "304", "305", "306" ]
2026-04-10T00:00:00
electronic
exchange
4
[PREMIUM]
1,3
A6rs28AAzZG
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
A6rs28AAzZG
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
122
Section 122
o
3
[ "3", "4", "5" ]
2026-04-10T00:00:00
electronic
exchange
0
[PREMIUM]
1,3
BALImZr8L6B
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
BALImZr8L6B
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
104
Section 104
p
2
[ "304", "305" ]
2026-04-10T00:00:00
electronic
exchange
5
[PREMIUM]
2
DdwHkZrreVY
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
DdwHkZrreVY
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
131
Section 131
t
4
[ "3", "4", "5", "6" ]
2026-04-10T00:00:00
electronic
exchange
0
[PREMIUM]
1,2,4
EroUXZzzNo7
2026-01-28T22:39:16.544000
2026-02-09T00:20:11.298000
EroUXZzzNo7
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
113
Section 113
k
4
[ "9", "10", "11", "12" ]
2026-04-10T00:00:00
electronic
exchange
1
[PREMIUM]
1,2,4
EroUXZzzNwO
2026-01-28T22:39:16.544000
2026-01-30T22:50:06.272000
EroUXZzzNwO
17670976
[PREMIUM]
[PREMIUM]
[PREMIUM]
136
Section 136
z
3
[ "3", "4", "5" ]
2026-04-10T00:00:00
electronic
exchange
0
[PREMIUM]
1,3
End of preview. Expand in Data Studio

SeatGeek Events & Ticket Listings Dataset

Daily sample of SeatGeek events, ticket listings, performers, and venues with Deal Score ratings, section-level seating, delivery types, and cross-platform IDs.

This dataset is a preview sample of the SeatGeek dataset published by Rebrowser. If you're doing academic research, you may be eligible for free access to a much larger slice — see Free Datasets for Research.

This dataset contains 4 entities, each in its own folder: Events (events), Event Listings (event-listings), Performers (performers), Venues (venues). See below for a full field breakdown, sample counts, and data distributions for each.

Found this useful? ❤️ Like this dataset on HuggingFace to help us keep publishing fresh data. Found an error? Let us know.


Events

Daily sample of SeatGeek events with type, taxonomy, venue and performer IDs, schedule status, cross-platform IDs, and seat map availability.

7,351 total records from 2025-10-05 to 2026-03-08, up to 7,351 rows in this sample (100.0% of full dataset). Exported as one file per day, up to 1,000 rows each, last 30 days retained.

Record Growth

Field Type Fill Rate Description
_primaryKey string 100% Unique identifier for this record
_firstSeenAt datetime 100% First time this record was seen
_lastSeenAt datetime 100% Last time this record was updated
eventId float 100% Unique event ID (e.g., 17601982)
name string 100% Full event name/title (e.g., NLDS: Chicago Cubs at Milwaukee Brewers)
shortName string 100% Short event name (e.g., NLDS: Cubs at Brewers)
type string 100% Event type (mlb, nba, nhl, nfl, stadium_tours, etc.)
datetimeUtc datetime 100% Event UTC datetime
endDatetimeUtc datetime 96% Event end datetime (UTC)
dateTbd bool 100% Event date is TBD (to be determined)
timeTbd bool 100% Event time is TBD
datetimeTbd bool 100% Event datetime is TBD
status string 100% Event status (normal, postponed, cancelled)
scheduleStatus string 100% Schedule status (as_originally_scheduled, rescheduled)
conditional bool 100% Event is conditional (e.g., playoff games)
contingent bool 100% Event is contingent on other events
isOpen bool 100% Event is open for ticket sales
isVisible bool 100% Event is visible on site
isHybrid bool 100% Event is a hybrid event
eventScore 🔒 float 100% Event score/rank (0-1 scale)
popularityScore 🔒 float 100% Event popularity score (0-1 scale)
url string 100% Full SeatGeek URL for the event
createdAt datetime 100% Event creation timestamp
announceDate datetime 100% Event announcement date
visibleAt datetime 100% When event became visible
visibleUntilUtc datetime 100% When event stops being visible (UTC)
listingCount 🔒 float 100% Number of active ticket listings
ticketCount 🔒 float 100% Total tickets available across listings
averagePrice 🔒 float 100% Average ticket price in dollars
lowestPrice 🔒 float 100% Lowest ticket price in dollars
highestPrice 🔒 float 100% Highest ticket price in dollars
medianPrice 🔒 float 100% Median ticket price in dollars
lowestSgBasePrice 🔒 float 100% Lowest SeatGeek base price in dollars
venueId float 100% Venue ID (join with seatgeek_venues)
performerIds array 100% Performer IDs (join with seatgeek_performers)
taxonomyName string 100% Top-level category (sports, concerts, theater)
taxonomySubName string 100% Sub-category (baseball, basketball, hockey, football)
ticketmasterId string 42% Ticketmaster event ID (for cross-platform matching)
stubhubId string 61% StubHub event ID (for cross-platform matching)
integratedProvider string 63% Integrated ticket provider (OPEN, TICKETMASTER, TDC)
integratedProviderId string 63% Provider-specific event ID
isMapped bool 100% Venue has seat map available
isGa bool 100% Event is general admission
seatSelectionEnabled bool 100% Seat selection is enabled

🔒 Premium fields are included in the data files but their values are replaced with [PREMIUM]. To access real values, use our website.

Field Distributions

Event Type Distribution (type)
Value Count Share
mlb 2,981 ████████░░░░░░░░░░░░ 40.6%
nhl 1,417 ████░░░░░░░░░░░░░░░░ 19.3%
nba 1,402 ████░░░░░░░░░░░░░░░░ 19.1%
stadium_tours 1,195 ███░░░░░░░░░░░░░░░░░ 16.3%
nfl 353 █░░░░░░░░░░░░░░░░░░░ 4.8%
baseball 3 ░░░░░░░░░░░░░░░░░░░░ 0.0%
Top-Level Event Category (taxonomyName)
Value Count Share
sports 7,351 ████████████████████ 100.0%
Event Status (status)
Value Count Share
normal 7,351 ████████████████████ 100.0%

Event Listings

Daily sample of SeatGeek ticket listings with section, row, quantity, delivery type, marketplace, and deal bucket per event.

31,349,410 total records from 2025-10-05 to 2026-02-08, up to 30,000 rows in this sample (0.10% of full dataset). Exported as one file per day, up to 1,000 rows each, last 30 days retained.

Record Growth

Field Type Fill Rate Description
_primaryKey string 100% Unique identifier for this record
_firstSeenAt datetime 100% First time this record was seen
_lastSeenAt datetime 100% Last time this record was updated
listingId string 100% Unique listing ID (e.g., qVjH2vAdbzA, 05VT8679aVX)
eventId string 100% Event ID this listing belongs to (join with seatgeek_events)
price 🔒 float 100% Ticket price in dollars before fees
priceWithFees 🔒 float 100% Total ticket price in dollars with fees
fee 🔒 float 100% Fee amount in dollars
section string 100% Section name/number (e.g., 101, 506WC, C129)
sectionFull string 100% Full section name including tier/level (e.g., Section 101, Club 129, Section 506 WC)
row string 100% Row within section - can be numeric (1-50+) or letter (a-z, w, h)
quantity float 100% Number of tickets available in this listing, typically 1-20
seats array 26% Specific seat numbers if assigned, empty array if GA/unassigned
inHandDate datetime 99% Date when tickets will be in hand for delivery
deliveryType string 100% Ticket delivery method: electronic, sg_app, shipped, local
marketplace string 100% Ticket marketplace/seller: exchange, open_marketplace, marketplace, open, fan_to_fan
dealBucket float 100% Deal quality bucket: 0=Amazing, 1=Great, 2=Good, 3=Okay, 4-6=Price tiers, 7=Other
dealScore 🔒 float 99% Deal quality score 0-10, higher=better value
splitType string 100% How tickets can be split - comma-separated quantities (e.g., "2", "1,2,4")

🔒 Premium fields are included in the data files but their values are replaced with [PREMIUM]. To access real values, use our website.

Field Distributions

Listing Marketplace (marketplace)
Value Count Share
exchange 30,907,421 ████████████████████ 98.6%
open 242,441 ░░░░░░░░░░░░░░░░░░░░ 0.8%
open_marketplace 116,290 ░░░░░░░░░░░░░░░░░░░░ 0.4%
marketplace 73,186 ░░░░░░░░░░░░░░░░░░░░ 0.2%
fan_to_fan 10,072 ░░░░░░░░░░░░░░░░░░░░ 0.0%
Delivery Type (deliveryType)
Value Count Share
electronic 28,528,394 ██████████████████░░ 91.0%
sg_app 2,812,129 ██░░░░░░░░░░░░░░░░░░ 9.0%
shipped 8,666 ░░░░░░░░░░░░░░░░░░░░ 0.0%
local 221 ░░░░░░░░░░░░░░░░░░░░ 0.0%

Performers

SeatGeek performers including teams, artists, and acts with type, taxonomy, division, popularity score, and home venue.

226 total records from 2025-10-05 to 2026-03-08, 226 rows in this sample (100.0% of full dataset). Exported as a single file, overwritten daily.

Record Growth

Field Type Fill Rate Description
_primaryKey string 100% Unique identifier for this record
_firstSeenAt datetime 100% First time this record was seen
_lastSeenAt datetime 100% Last time this record was updated
performerId float 100% Unique performer ID (e.g., 11, 793010)
name string 100% Full performer name (e.g., Chicago Cubs, MLB Postseason)
shortName string 100% Short name (e.g., Cubs, Dodgers)
type string 100% Performer type (mlb, nba, nhl, nfl, etc.)
slug string 100% URL-friendly slug (e.g., chicago-cubs)
url string 100% Full SeatGeek URL for the performer
heroImageUrl 🔒 string 100% Hero/large image URL
bannerImageUrl 🔒 string 100% Banner image URL
score float 100% Performer score (0-1 scale)
popularity float 100% Performer popularity score (raw count)
homeVenueId float 58% Home venue ID (for teams)
primaryColor string 58% Primary brand color hex (e.g., #0E3386)
iconicColor string 58% Iconic brand color hex
isEvent bool 100% Is an event/competition performer (e.g., playoffs, series)
divisionName string 55% Division display name (e.g., National League Central)
divisionShortName string 55% Division short name (e.g., NL Central)
taxonomyName string 100% Top-level category (sports, concerts, theater)
taxonomySubName string 99% Sub-category (baseball, basketball, hockey, football)

🔒 Premium fields are included in the data files but their values are replaced with [PREMIUM]. To access real values, use our website.

Field Distributions

Performer Type (type)
Value Count Share
nfl 59 █████░░░░░░░░░░░░░░░ 26.1%
mlb 46 ████░░░░░░░░░░░░░░░░ 20.4%
nba 45 ████░░░░░░░░░░░░░░░░ 19.9%
nhl 43 ████░░░░░░░░░░░░░░░░ 19.0%
baseball 19 ██░░░░░░░░░░░░░░░░░░ 8.4%
stadium_tours 5 ░░░░░░░░░░░░░░░░░░░░ 2.2%
minor_league_baseball 4 ░░░░░░░░░░░░░░░░░░░░ 1.8%
band 2 ░░░░░░░░░░░░░░░░░░░░ 0.9%
ncaa_baseball 2 ░░░░░░░░░░░░░░░░░░░░ 0.9%
basketball 1 ░░░░░░░░░░░░░░░░░░░░ 0.4%

Venues

SeatGeek venues with name, full address, city, state, country, GPS coordinates, capacity, and popularity score.

161 total records from 2025-10-05 to 2026-03-08, 161 rows in this sample (100.0% of full dataset). Exported as a single file, overwritten daily.

Record Growth

Field Type Fill Rate Description
_primaryKey string 100% Unique identifier for this record
_firstSeenAt datetime 100% First time this record was seen
_lastSeenAt datetime 100% Last time this record was updated
venueId float 100% Unique venue ID (e.g., 15, 181)
name string 100% Venue name (e.g., American Family Field, Capital One Arena)
slug string 100% URL-friendly slug (e.g., american-family-field)
url string 100% Full SeatGeek URL for the venue
addressStreet string 96% Street address (e.g., 1 Brewers Way)
addressCity string 100% City name (e.g., Milwaukee)
addressState string 98% State/province code (e.g., WI, ON)
addressCountry string 100% Country (US, Canada, Germany, UK)
addressPostalCode string 99% Postal/ZIP code (e.g., 53214)
timezone string 100% IANA timezone (e.g., America/Chicago)
latitude float 100% Venue latitude coordinate
longitude float 100% Venue longitude coordinate
capacity float 100% Venue seating capacity
score float 100% Venue score (0-1 scale)
popularity float 100% Venue popularity score (raw count)
metroCode float 100% Metro area code

Field Distributions

Venue Countries (addressCountry)
Value Count Share
US 148 ██████████████████░░ 91.9%
Canada 10 █░░░░░░░░░░░░░░░░░░░ 6.2%
UK 2 ░░░░░░░░░░░░░░░░░░░░ 1.2%
Germany 1 ░░░░░░░░░░░░░░░░░░░░ 0.6%

Pre-built Views on Rebrowser

Rebrowser web viewer lets you filter, sort, and export any slice of this dataset interactively. These pre-built views are ready to open:

Events

Events with Pricing Data — 7,402 records

[{"field":"averagePrice","op":"gt","value":0},{"sort":"averagePrice DESC"}]

Sports Events — 3,191 records

[{"field":"taxonomyName","op":"is","value":"sports"},{"sort":"datetimeUtc ASC"}]

Events Open for Ticket Sales — 1,077 records

[{"field":"isOpen","op":"isTrue"},{"sort":"datetimeUtc ASC"}]

MLB Baseball Events — 139 records

[{"field":"type","op":"is","value":"mlb"},{"sort":"datetimeUtc ASC"}]

NBA Basketball Events — 973 records

[{"field":"type","op":"is","value":"nba"},{"sort":"datetimeUtc ASC"}]

See all 24 views →

Event Listings

Listings with Deal Score — 27,340,000 records

[{"field":"dealScore","op":"gt","value":0},{"sort":"dealScore DESC"}]

Best Deal Listings (Deal Score 8+) — 12,721,146 records

[{"field":"dealScore","op":"gte","value":8},{"sort":"dealScore DESC"}]

Listings by Price (Low to High) — 27,340,000 records

[{"sort":"price ASC"}]

Listings by Price (High to Low) — 27,340,000 records

[{"sort":"price DESC"}]

Electronic Delivery Listings — 25,159,243 records

[{"field":"deliveryType","op":"is","value":"electronic"},{"sort":"price ASC"}]

See all 25 views →

Performers

Sports Performers — 75 records

[{"field":"taxonomyName","op":"is","value":"sports"},{"sort":"name ASC"}]

MLB Performers — 46 records

[{"field":"type","op":"is","value":"mlb"},{"sort":"name ASC"}]

NBA Performers — 6 records

[{"field":"type","op":"is","value":"nba"},{"sort":"name ASC"}]

NHL Performers — 2 records

[{"field":"type","op":"is","value":"nhl"},{"sort":"name ASC"}]

NFL Performers — 51 records

[{"field":"type","op":"is","value":"nfl"},{"sort":"name ASC"}]

See all 18 views →

Venues

Venues by Capacity — 45 records

[{"field":"capacity","op":"gt","value":0},{"sort":"capacity DESC"}]

Venues in United States — 42 records

[{"field":"addressCountry","op":"is","value":"US"},{"sort":"addressState ASC"}]

Venues in California — 3 records

[{"field":"addressState","op":"is","value":"CA"},{"sort":"name ASC"}]

Venues in Florida — 4 records

[{"field":"addressState","op":"is","value":"FL"},{"sort":"name ASC"}]

Venues in Arizona — 1 records

[{"field":"addressState","op":"is","value":"AZ"},{"sort":"name ASC"}]

See all 19 views →


Code Examples

import pandas as pd
from pathlib import Path

# ── Performers (dimension table) ─────────────────────────────────────────────
performers = pd.read_parquet('rebrowser/seatgeek-dataset/performers/data.parquet')

# Top 20 performers by popularity
print(performers.nlargest(20, 'popularity')[['name', 'type', 'taxonomyName', 'popularity']]
      .to_string(index=False))

# Count performers per type (mlb, nba, nhl, nfl, ...)
print(performers['type'].value_counts().head(15).to_string())

# Sports performers with a home venue
home_teams = performers[performers['homeVenueId'].notna()]
print(home_teams[['name', 'type', 'divisionShortName', 'homeVenueId']].sort_values('type'))

# ── Venues (dimension table) ─────────────────────────────────────────────────
venues = pd.read_parquet('rebrowser/seatgeek-dataset/venues/data.parquet')

# Largest venues by capacity
print(venues.nlargest(15, 'capacity')[['name', 'addressCity', 'addressState', 'capacity']]
      .to_string(index=False))

# Venue count by state
print(venues['addressState'].value_counts().head(15).to_string())

# ── Events (daily append) ────────────────────────────────────────────────────
files = sorted(Path('rebrowser/seatgeek-dataset/events/data').glob('*.parquet'))[-7:]
events = pd.concat([pd.read_parquet(f) for f in files])

# Events by type
print(events['type'].value_counts().head(15).to_string())

# Upcoming sports events with normal status
sports = events[(events['taxonomyName'] == 'sports') & (events['status'] == 'normal')]
print(sports[['name', 'type', 'datetimeUtc', 'venueId']].head(20).to_string(index=False))

# Events with cross-platform Ticketmaster IDs
tm_events = events[events['ticketmasterId'].notna()]
print(f"Events with Ticketmaster ID: {len(tm_events)} / {len(events)}")

# ── Event Listings (daily append) ────────────────────────────────────────────
files = sorted(Path('rebrowser/seatgeek-dataset/event-listings/data').glob('*.parquet'))[-7:]
listings = pd.concat([pd.read_parquet(f) for f in files])

# Distribution of delivery types
print(listings['deliveryType'].value_counts().to_string())

# Listings by marketplace
print(listings['marketplace'].value_counts().to_string())

# Average quantity per listing by delivery type
print(listings.groupby('deliveryType')['quantity'].mean().round(1).to_string())

Use Cases

Cross-Platform Event Matching

Use ticketmasterId and stubhubId fields to match events across SeatGeek, Ticketmaster, and StubHub. Build cross-marketplace comparisons and inventory analysis.

Venue Capacity Analysis

Combine venue capacity data with event listing counts to study sell-through rates. Compare demand patterns across venue sizes, states, and time zones.

Delivery Method Research

Analyze how electronic vs. shipped vs. app delivery options distribute across event types and marketplaces. Study the industry shift toward mobile ticketing.

Performer Demand Tracking

Join events with performers to measure which artists and teams generate the most listings. Rank performers by event frequency and marketplace activity.


Full Dataset on Rebrowser

This is a 1,000-row preview sample. The full dataset is at rebrowser.net/products/datasets/seatgeek

Doing academic research? You may qualify for free access to a larger slice. See Free Datasets for Research.

On Rebrowser you can:

  • Filter before you buy — use the web UI to apply filters on any field and sort by any column. Preview results before purchasing. You only pay for records that match your criteria.
  • Export in your format — CSV, JSON, JSONL, or Parquet depending on your plan.
  • Access via API — integrate dataset queries into your pipelines and workflows.
  • Choose your freshness — plans range from a 14-day lag to real-time data with no delay.
  • Select only the fields you need — keep exports lean. Premium fields with richer data are available on higher plans.

免费去水印 starts at $2 per 1,000 rows with volume discounts.


License & Terms

Free for research and non-commercial use with attribution. See license terms and how to cite.

@misc{rebrowser_seatgeek,
  author       = {Rebrowser},
  title        = {SeatGeek Events & Ticket Listings Dataset},
  year         = {2026},
  howpublished = {\url{https://rebrowser.net/products/datasets/seatgeek}},
  note         = {Accessed: YYYY-MM-DD}
}

Commercial use requires a paid license — see 免费去水印. Use of this data is governed by the Rebrowser Terms of Use, which may be updated at any time independently of this dataset.


Disclaimer

Rebrowser is an independent data provider and is not affiliated with, endorsed by, or sponsored by SeatGeek. Any trademarks are the property of their respective owners. This dataset is compiled from publicly available information; we do not request or collect SeatGeek user credentials. By using this dataset, you agree to comply with SeatGeek's Terms of Service and all applicable laws and regulations. Images, logos, descriptions, and other materials included in this dataset remain the intellectual property of their respective owners and are provided solely for informational purposes. Rebrowser makes no warranties regarding the accuracy, completeness, or legality of the data and assumes no liability for how the data is used. You are solely responsible for ensuring that your use of this dataset does not infringe on the rights of any third party.

You can also find this data on GitHub, Kaggle, Zenodo.

Downloads last month
51