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events
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train_0000
[ { "t": 0, "x": -73.98629760742188, "y": 40.71879959106445 }, { "t": 0, "x": -73.99520111083984, "y": 40.721500396728516 }, { "t": 0, "x": -73.95999908447266, "y": 40.76369857788086 }, { "t": 0.0006944444612599909, "x": -73.99659729003906, "y": 40.735500335...
train_0001
[ { "t": 0, "x": -73.87319946289062, "y": 40.66790008544922 }, { "t": 0.00069444440305233, "x": -73.99230194091797, "y": 40.74380111694336 }, { "t": 0.00069444440305233, "x": -73.94609832763672, "y": 40.660400390625 }, { "t": 0.00069444440305233, "x": -73.986999...
train_0002
[ { "t": 0, "x": -73.97339630126953, "y": 40.759498596191406 }, { "t": 0.0006944462656974792, "x": -74.01499938964844, "y": 40.714900970458984 }, { "t": 0.0013888925313949585, "x": -74.00060272216797, "y": 40.72090148925781 }, { "t": 0.0020833387970924377, "x": ...
train_0003
[ { "t": 0, "x": -74.00550079345703, "y": 40.72370147705078 }, { "t": 0, "x": -74.03929901123047, "y": 40.73889923095703 }, { "t": 0, "x": -73.9738998413086, "y": 40.745201110839844 }, { "t": 0, "x": -73.78579711914062, "y": 40.712100982666016 }, { "...
train_0004
[ { "t": 0, "x": -74.17829895019531, "y": 40.69499969482422 }, { "t": 0, "x": -73.96420288085938, "y": 40.719200134277344 }, { "t": 0.0006944537162780762, "x": -74.03009796142578, "y": 40.7495002746582 }, { "t": 0.0006944537162780762, "x": -73.98179626464844, ...
train_0005
[ { "t": 0, "x": -74.00679779052734, "y": 40.7150993347168 }, { "t": 0, "x": -73.98159790039062, "y": 40.74679946899414 }, { "t": 0, "x": -74.0093994140625, "y": 40.73469924926758 }, { "t": 0.0006944537162780762, "x": -73.97820281982422, "y": 40.761299133300...
train_0006
[ { "t": 0, "x": -73.98269653320312, "y": 40.76169967651367 }, { "t": 0.0006944388151168823, "x": -73.96949768066406, "y": 40.78499984741211 }, { "t": 0.0006944388151168823, "x": -73.99579620361328, "y": 40.684898376464844 }, { "t": 0.0006944388151168823, "x": -...
train_0007
[ { "t": 0, "x": -73.93550109863281, "y": 40.68280029296875 }, { "t": 0, "x": -73.94450378417969, "y": 40.68920135498047 }, { "t": 0, "x": -73.98470306396484, "y": 40.726600646972656 }, { "t": 0, "x": -74.01119995117188, "y": 40.70309829711914 }, { "...
train_0008
[ { "t": 0, "x": -73.98619842529297, "y": 40.75740051269531 }, { "t": 0, "x": -73.99250030517578, "y": 40.733001708984375 }, { "t": 0, "x": -74.0365982055664, "y": 40.61309814453125 }, { "t": 0, "x": -73.96759796142578, "y": 40.69770050048828 }, { "t...
train_0009
[ { "t": 0, "x": -73.9843978881836, "y": 40.6708984375 }, { "t": 0, "x": -74.00129699707031, "y": 40.727500915527344 }, { "t": 0, "x": -73.95880126953125, "y": 40.77009963989258 }, { "t": 0, "x": -74.00080108642578, "y": 40.74789810180664 }, { "t": 0...
train_0010
[ { "t": 0, "x": -73.9834976196289, "y": 40.76860046386719 }, { "t": 0, "x": -73.9928970336914, "y": 40.72610092163086 }, { "t": 0, "x": -73.9697036743164, "y": 40.76139831542969 }, { "t": 0, "x": -73.98529815673828, "y": 40.747501373291016 }, { "t":...
train_0011
[ { "t": 0, "x": -73.96209716796875, "y": 40.778099060058594 }, { "t": 0, "x": -74.00920104980469, "y": 40.73759841918945 }, { "t": 0, "x": -73.88569641113281, "y": 40.77299880981445 }, { "t": 0, "x": -73.95500183105469, "y": 40.80929946899414 }, { "...
train_0012
[ { "t": 0, "x": -74.0062026977539, "y": 40.734100341796875 }, { "t": 0, "x": -73.96040344238281, "y": 40.76300048828125 }, { "t": 0.0006944239139556885, "x": -73.96980285644531, "y": 40.784698486328125 }, { "t": 0.0006944239139556885, "x": -73.90280151367188, ...
train_0013
[ { "t": 0, "x": -73.9490966796875, "y": 40.774200439453125 }, { "t": 0, "x": -73.95349884033203, "y": 40.77539825439453 }, { "t": 0, "x": -73.9574966430664, "y": 40.77989959716797 }, { "t": 0.0006944239139556885, "x": -73.98500061035156, "y": 40.73799896240...
train_0014
[ { "t": 0, "x": -74.0073013305664, "y": 40.73749923706055 }, { "t": 0, "x": -73.96299743652344, "y": 40.71179962158203 }, { "t": 0, "x": -73.97879791259766, "y": 40.72370147705078 }, { "t": 0, "x": -74.01640319824219, "y": 40.71659851074219 }, { "t"...
train_0015
[ { "t": 0, "x": -73.9520034790039, "y": 40.77730178833008 }, { "t": 0, "x": -73.97760009765625, "y": 40.75199890136719 }, { "t": 0, "x": -73.9531021118164, "y": 40.772499084472656 }, { "t": 0, "x": -73.94840240478516, "y": 40.780601501464844 }, { "t...
train_0016
[ { "t": 0, "x": -74.00800323486328, "y": 40.735599517822266 }, { "t": 0, "x": -74.00900268554688, "y": 40.73759841918945 }, { "t": 0.0006944537162780762, "x": -73.97859954833984, "y": 40.74689865112305 }, { "t": 0.0006944537162780762, "x": -73.86630249023438, ...
train_0017
[ { "t": 0, "x": -73.93460083007812, "y": 40.694801330566406 }, { "t": 0, "x": -73.95359802246094, "y": 40.767398834228516 }, { "t": 0, "x": -74.00330352783203, "y": 40.722999572753906 }, { "t": 0, "x": -73.99120330810547, "y": 40.7234001159668 }, { ...
train_0018
[ { "t": 0, "x": -74.01689910888672, "y": 40.70920181274414 }, { "t": 0, "x": -73.99569702148438, "y": 40.759300231933594 }, { "t": 0, "x": -73.98760223388672, "y": 40.72869873046875 }, { "t": 0, "x": -74.00240325927734, "y": 40.72919845581055 }, { "...
train_0019
[ { "t": 0, "x": -73.94229888916016, "y": 40.66490173339844 }, { "t": 0, "x": -73.96289825439453, "y": 40.719200134277344 }, { "t": 0.0006944537162780762, "x": -73.9635009765625, "y": 40.765899658203125 }, { "t": 0.0006944537162780762, "x": -74.00779724121094, ...
train_0020
[ { "t": 0, "x": -74.01110076904297, "y": 40.72359848022461 }, { "t": 0, "x": -73.95110321044922, "y": 40.77170181274414 }, { "t": 0, "x": -73.97550201416016, "y": 40.789798736572266 }, { "t": 0, "x": -74.00740051269531, "y": 40.74660110473633 }, { "...
train_0021
[ { "t": 0, "x": -73.98580169677734, "y": 40.75199890136719 }, { "t": 0, "x": -73.97859954833984, "y": 40.728599548339844 }, { "t": 0, "x": -73.99109649658203, "y": 40.729698181152344 }, { "t": 0, "x": -73.99510192871094, "y": 40.752899169921875 }, { ...
train_0022
[ { "t": 0, "x": -73.9719009399414, "y": 40.762001037597656 }, { "t": 0, "x": -74.0105972290039, "y": 40.727901458740234 }, { "t": 0.0006944537162780762, "x": -73.96369934082031, "y": 40.77519989013672 }, { "t": 0.0006944537162780762, "x": -73.94999694824219, ...
train_0023
[ { "t": 0, "x": -74.00170135498047, "y": 40.73210144042969 }, { "t": 0, "x": -73.99230194091797, "y": 40.71879959106445 }, { "t": 0, "x": -73.97789764404297, "y": 40.78739929199219 }, { "t": 0, "x": -73.98719787597656, "y": 40.72200012207031 }, { "t...
train_0024
[ { "t": 0, "x": -73.9625015258789, "y": 40.770599365234375 }, { "t": 0, "x": -73.97979736328125, "y": 40.64509963989258 }, { "t": 0, "x": -73.98989868164062, "y": 40.76729965209961 }, { "t": 0, "x": -73.97979736328125, "y": 40.66899871826172 }, { "t...
train_0025
[ { "t": 0, "x": -73.99169921875, "y": 40.724700927734375 }, { "t": 0, "x": -73.98049926757812, "y": 40.730499267578125 }, { "t": 0, "x": -73.98300170898438, "y": 40.77539825439453 }, { "t": 0.0006944537162780762, "x": -73.94930267333984, "y": 40.77700042724...
train_0026
[ { "t": 0, "x": -74.01029968261719, "y": 40.72380065917969 }, { "t": 0, "x": -73.9552001953125, "y": 40.788700103759766 }, { "t": 0, "x": -73.95359802246094, "y": 40.715599060058594 }, { "t": 0, "x": -73.98989868164062, "y": 40.7328987121582 }, { "t...
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Uber Pickups NYC STPP Benchmark Dataset

A benchmark-ready Spatio-Temporal Point Process (STPP) dataset derived from Uber Pickups (NYC) (~4.5 Million records), following the standard split semantics for Neural STPP evaluation.

Dataset Description

Each record represents a sequence of events. The dataset covers historical Uber pickups across NYC, partitioned sequentially into train / val / test subsets (70% / 15% / 15% ratio).

Source Format

Raw data was obtained from Kaggle (fivethirtyeight/uber-pickups-in-new-york-city). 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 31,741 3,174,028 70%
val 6,802 680,150 15%
test 6,802 680,149 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

uber_pickups_nyc/
β”œβ”€β”€ train.jsonl        # 31741 sequences
β”œβ”€β”€ val.jsonl          # 6802 sequences
β”œβ”€β”€ test.jsonl         # 6802 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": -87.629, "y": 41.878},
    {"t": 2.318, "x": -87.630, "y": 41.879}
  ]
}

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: Kaggle URL: https://www.kaggle.com/datasets/fivethirtyeight/uber-pickups-in-new-york-city

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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