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events
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train_0000
[ { "t": 0, "x": -97.77777099609375, "y": 30.348447799682617 }, { "t": 0.05341435223817825, "x": -97.74520874023438, "y": 30.268714904785156 }, { "t": 0.11092592775821686, "x": -97.70466613769531, "y": 30.375255584716797 }, { "t": 0.13131944835186005, "x": -97.8...
train_0001
[ { "t": 0, "x": -97.74203491210938, "y": 30.26270294189453 }, { "t": 0.007858753204345703, "x": -97.73225402832031, "y": 30.316646575927734 }, { "t": 0.015335679054260254, "x": -97.74823760986328, "y": 30.168434143066406 }, { "t": 0.015381932258605957, "x": -97...
train_0002
[ { "t": 0, "x": -97.73489379882812, "y": 30.247901916503906 }, { "t": 0.001886606216430664, "x": -97.68260192871094, "y": 30.337068557739258 }, { "t": 0.0037152767181396484, "x": -97.64286041259766, "y": 30.297344207763672 }, { "t": 0.003784656524658203, "x": -...
train_0003
[ { "t": 0, "x": -97.71701049804688, "y": 30.333972930908203 }, { "t": 0.018703699111938477, "x": -97.81697082519531, "y": 30.18061637878418 }, { "t": 0.02092599868774414, "x": -97.70122528076172, "y": 30.430814743041992 }, { "t": 0.02123856544494629, "x": -97.8...
train_0004
[ { "t": 0, "x": -97.78123474121094, "y": 30.430145263671875 }, { "t": 0.0035762786865234375, "x": -97.91890716552734, "y": 30.189373016357422 }, { "t": 0.006354093551635742, "x": -97.69586181640625, "y": 30.32077980041504 }, { "t": 0.008136510848999023, "x": -9...
train_0005
[ { "t": 0, "x": -97.6558837890625, "y": 30.388439178466797 }, { "t": 0.0004744529724121094, "x": -97.75614166259766, "y": 30.381807327270508 }, { "t": 0.001863241195678711, "x": -97.70381164550781, "y": 30.35801887512207 }, { "t": 0.004293918609619141, "x": -97...
train_0006
[ { "t": 0, "x": -97.76403045654297, "y": 30.235275268554688 }, { "t": 0.07298612594604492, "x": -97.72566223144531, "y": 30.237680435180664 }, { "t": 0.11995363235473633, "x": -97.7051010131836, "y": 30.29157066345215 }, { "t": 0.1270601749420166, "x": -97.7763...
train_0007
[ { "t": 0, "x": -97.71574401855469, "y": 30.302623748779297 }, { "t": 0.0001506805419921875, "x": -97.67695617675781, "y": 30.43406867980957 }, { "t": 0.001018524169921875, "x": -97.74671936035156, "y": 30.274301528930664 }, { "t": 0.0017824172973632812, "x": -...
train_0008
[ { "t": 0, "x": -97.74496459960938, "y": 30.32560157775879 }, { "t": 0.012581348419189453, "x": -97.7592544555664, "y": 30.41482162475586 }, { "t": 0.04950237274169922, "x": -97.77064514160156, "y": 30.362060546875 }, { "t": 0.06849527359008789, "x": -97.789070...
train_0009
[ { "t": 0, "x": -97.67888641357422, "y": 30.28380012512207 }, { "t": 0.006793975830078125, "x": -97.81542205810547, "y": 30.205020904541016 }, { "t": 0.015810012817382812, "x": -97.76213073730469, "y": 30.21261215209961 }, { "t": 0.028912067413330078, "x": -97....
train_0010
[ { "t": 0, "x": -97.7275161743164, "y": 30.368301391601562 }, { "t": 0.0013308525085449219, "x": -97.78640747070312, "y": 30.20285987854004 }, { "t": 0.0021181106567382812, "x": -97.70844268798828, "y": 30.261898040771484 }, { "t": 0.004444599151611328, "x": -9...
train_0011
[ { "t": 0, "x": -97.73690795898438, "y": 30.384113311767578 }, { "t": 0.00011587142944335938, "x": -97.64614868164062, "y": 30.33277130126953 }, { "t": 0.0010766983032226562, "x": -97.71480560302734, "y": 30.36453628540039 }, { "t": 0.0022802352905273438, "x": ...
train_0012
[ { "t": 0, "x": -97.76701354980469, "y": 30.294116973876953 }, { "t": 0.00868082046508789, "x": -97.81560516357422, "y": 30.070289611816406 }, { "t": 0.01186370849609375, "x": -97.70572662353516, "y": 30.274721145629883 }, { "t": 0.012917041778564453, "x": -97....
train_0013
[ { "t": 0, "x": -97.84081268310547, "y": 30.15724754333496 }, { "t": 0.0008335113525390625, "x": -97.82035827636719, "y": 30.179426193237305 }, { "t": 0.0023956298828125, "x": -97.63796997070312, "y": 30.213178634643555 }, { "t": 0.004687309265136719, "x": -97....
train_0014
[ { "t": 0, "x": -97.7388916015625, "y": 30.19321060180664 }, { "t": 0.0005788803100585938, "x": -97.74014282226562, "y": 30.348960876464844 }, { "t": 0.0032176971435546875, "x": -97.58895874023438, "y": 30.13369369506836 }, { "t": 0.0035419464111328125, "x": -9...
train_0015
[ { "t": 0, "x": -97.75363159179688, "y": 30.407697677612305 }, { "t": 0.00005817413330078125, "x": -97.70710754394531, "y": 30.27775764465332 }, { "t": 0.006771087646484375, "x": -97.78360748291016, "y": 30.19741439819336 }, { "t": 0.007858753204345703, "x": -9...
train_0016
[ { "t": 0, "x": -97.7724609375, "y": 30.220905303955078 }, { "t": 0.000011444091796875, "x": -97.68964385986328, "y": 30.270700454711914 }, { "t": 0.0014929771423339844, "x": -97.69789123535156, "y": 30.273662567138672 }, { "t": 0.0018401145935058594, "x": -97....
train_0017
[ { "t": 0, "x": -97.76214599609375, "y": 30.357622146606445 }, { "t": 0.001967906951904297, "x": -97.98200988769531, "y": 30.586143493652344 }, { "t": 0.0055904388427734375, "x": -97.72512817382812, "y": 30.355199813842773 }, { "t": 0.006458759307861328, "x": -...
train_0018
[ { "t": 0, "x": -97.68418884277344, "y": 30.44331169128418 }, { "t": 0.005069255828857422, "x": -97.83776092529297, "y": 30.187850952148438 }, { "t": 0.005717277526855469, "x": -97.67924499511719, "y": 30.356088638305664 }, { "t": 0.00817108154296875, "x": -97....
train_0019
[ { "t": 0, "x": -97.74465942382812, "y": 30.31254005432129 }, { "t": 0.00476837158203125, "x": -97.7584228515625, "y": 30.23241424560547 }, { "t": 0.005208015441894531, "x": -97.70030975341797, "y": 30.329193115234375 }, { "t": 0.0076961517333984375, "x": -97.7...
train_0020
[ { "t": 0, "x": -97.76483917236328, "y": 30.243398666381836 }, { "t": 0.000659942626953125, "x": -97.72869873046875, "y": 30.244827270507812 }, { "t": 0.0007753372192382812, "x": -97.74169158935547, "y": 30.287044525146484 }, { "t": 0.0011806488037109375, "x": ...
train_0021
[ { "t": 0, "x": -97.74573516845703, "y": 30.184720993041992 }, { "t": 0.006690025329589844, "x": -97.75370025634766, "y": 30.32290267944336 }, { "t": 0.007210731506347656, "x": -97.73695373535156, "y": 30.339344024658203 }, { "t": 0.007338523864746094, "x": -97...
train_0022
[ { "t": 0, "x": -97.72330474853516, "y": 30.32244300842285 }, { "t": 0.0008325576782226562, "x": -97.73582458496094, "y": 30.294437408447266 }, { "t": 0.0033788681030273438, "x": -97.96920776367188, "y": 30.582990646362305 }, { "t": 0.005415916442871094, "x": -...
train_0023
[ { "t": 0, "x": -97.65435028076172, "y": 30.41425895690918 }, { "t": 0.0021638870239257812, "x": -97.76679229736328, "y": 30.257787704467773 }, { "t": 0.0028467178344726562, "x": -97.66081237792969, "y": 30.372623443603516 }, { "t": 0.005045890808105469, "x": -...
train_0024
[ { "t": 0, "x": -97.69513702392578, "y": 30.434429168701172 }, { "t": 0.00026702880859375, "x": -97.62681579589844, "y": 30.37360191345215 }, { "t": 0.00098419189453125, "x": -97.73937225341797, "y": 30.257421493530273 }, { "t": 0.0011577606201171875, "x": -97....
train_0025
[ { "t": 0, "x": -97.69322967529297, "y": 30.369916915893555 }, { "t": 0.003368377685546875, "x": -97.72972106933594, "y": 30.240467071533203 }, { "t": 0.0069561004638671875, "x": -97.8721694946289, "y": 30.233850479125977 }, { "t": 0.008032798767089844, "x": -9...
train_0026
[ { "t": 0, "x": -97.65385437011719, "y": 30.306804656982422 }, { "t": 0.000335693359375, "x": -97.69757843017578, "y": 30.25335121154785 }, { "t": 0.0012378692626953125, "x": -97.75634765625, "y": 30.26662254333496 }, { "t": 0.0035648345947265625, "x": -97.6975...
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Austin 311 STPP Benchmark Dataset

A benchmark-ready Spatio-Temporal Point Process (STPP) dataset derived from Austin 311 Public Data (~2.4M records), following the standard split semantics for Neural STPP evaluation.

Dataset Description

Each record represents a sequence of events. The dataset covers historical public service requests, partitioned sequentially into train / val / test subsets (70% / 15% / 15% ratio).

Source Format

Raw data was obtained from Austin Open Data. Each sequence maps to a (N, 3) float64 array with columns [t, x, y].

Sequence Unit

One sequence corresponds to a chunk of contiguous events. No new windowing or segmentation was applied. The dataset unit aligns with benchmark STPP formulations.

Event Schema

Field Type Description
t float Time of event
x float Longitude or X coordinate
y float Latitude or Y coordinate

Values are exported as-is β€” no normalization applied. The Neural STPP codebase applies StdScaler normalization at training time, not during preprocessing.

Split Semantics

Split Sequences Events Ratio
train 17,167 1,716,633 70%
val 3,701 370,001 15%
test 3,695 369,435 15%

Split logic mirrors a sequential temporal split sequential_split_ratio_(0.7, 0.15, 0.15) β€” no random splitting, no reshuffling.

File Structure

austin_311/
β”œβ”€β”€ train.jsonl        # 17167 sequences
β”œβ”€β”€ val.jsonl          # 3701 sequences
β”œβ”€β”€ test.jsonl         # 3695 sequences
β”œβ”€β”€ dataset_meta.json  # Task/schema metadata
└── README.md

JSONL Row Schema

Each line in a .jsonl file is a JSON object:

{
  "sequence_id": "seq_0",
  "events": [
    {"t": 1.062, "x": -97.743, "y": 30.267},
    {"t": 2.318, "x": -97.744, "y": 30.268}
  ]
}

Example (Python)

import json

with open("train.jsonl") as f:
    for line in f:
        seq = json.loads(line)
        sid    = seq["sequence_id"]
        events = seq["events"]        # list of {"t", "x", "y"} dicts
        t = [e["t"] for e in events]
        x = [e["x"] for e in events]
        y = [e["y"] for e in events]

Source & License

Source data: Austin Open Data URL: https://data.austintexas.gov/api/views/xwdj-i9he/rows.csv?accessType=DOWNLOAD

Version 1.0.0 Time Ordering Fix

Version 1.0.0 applies a deterministic data-level repair: events are stable-sorted by t globally before chunking. Validation ensures non-decreasing timestamps for every sequence in train/val/test.

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