# TRACE: TimeSeriesRAG Raw Dataset This is the **raw dataset** accompanying the paper: **[TRACE: Grounding Time Series in Context for Multimodal Embedding and Retrieval (NeurIPS 2025)](https://arxiv.org/abs/2506.09114?)** Feel free to use this dataset for follow-up research and downstream tasks. --- ## Files | File | Lines | Description | |------|-------|-------------| | `event_report.jsonl` | 4,855 | Weather event reports with narrative text | | `mmts.jsonl` | 44,565 | Multimodal time series samples from weather stations | --- ## Data Format ### `event_report.jsonl` Each line is a JSON object representing a weather event report: ```json { "event_id": 1065296, "event_type": "Debris Flow", "state": "CALIFORNIA", "cz_name": "MADERA", "begin_date_time": "2023-01-10 21:11:00", "end_date_time": "2023-01-10 23:11:00", "narrative": "A strong low pressure system moved through central California...", "ts_dict_index": [12, 13, 14] } ``` | Field | Type | Description | |-------|------|-------------| | `event_id` | int | Unique event identifier | | `event_type` | string | Type of weather event (e.g., Debris Flow, Flood, Tornado) | | `state` | string | U.S. state where the event occurred | | `cz_name` | string | County/zone name | | `begin_date_time` | string | Event start time (`YYYY-MM-DD HH:MM:SS`) | | `end_date_time` | string | Event end time (`YYYY-MM-DD HH:MM:SS`) | | `narrative` | string | Free-text description of the event | | `ts_dict_index` | list[int] | Indices into `mmts.jsonl` for associated time series samples | > **Note:** `ts_dict_index` values are 0-based line indices into `mmts.jsonl`, linking each event report to one or more nearby weather station time series. --- ### `mmts.jsonl` Each line is a JSON object representing a multimodal time series sample from a weather station: ```json { "id": "0", "station_id": "USW00025323", "latitude": 59.2428, "longitude": -135.5114, "temperature": [2.2, 1.7, 1.4, ...], "precipitation": [1.0, 0.5, 0.5, ...], "relative_humidity": [82.0, 85.0, 88.5, ...], "visibility": [12.88, 11.26, 6.44, ...], "wind_u": [-1.59, 2.25, -0.54, ...], "wind_v": [-0.61, 1.3, 3.05, ...], "sky_code": [8, 8, 8, ...], "DATE": ["2020-11-24T00:00:00", "2020-11-24T01:00:00", ...], "mode": "7day_hourly", "location": "HAINES BOROUGH,ALASKA", "description": { "DATE": "The past week from November 24 to November 30, 2020.", "location": "...", "temperature": "...", "precipitation": "...", "relative_humidity": "...", "visibility": "...", "wind_u": "...", "wind_v": "...", "sky_code": "...", "labels": "[Cold, Rainy, Cloudy, Windy]" } } ``` | Field | Type | Description | |-------|------|-------------| | `id` | string | Row index (matches position in file, 0-based) | | `station_id` | string | NOAA weather station identifier | | `latitude` / `longitude` | float | Station coordinates | | `temperature` | list[float] | Temperature readings (°C) | | `precipitation` | list[float] | Precipitation (mm) | | `relative_humidity` | list[float] | Relative humidity (%) | | `visibility` | list[float] | Visibility (km) | | `wind_u` | list[float] | Eastward wind component (m/s) | | `wind_v` | list[float] | Northward wind component (m/s) | | `sky_code` | list[int] | Sky cover code (0–8 oktas) | | `DATE` | list[string] | ISO 8601 timestamps for each hourly reading | | `mode` | string | Sampling mode (e.g., `7day_hourly` = 7-day window at hourly resolution) | | `location` | string | Human-readable station location | | `description` | dict | Natural language descriptions of each channel plus weather labels | --- ## Linking Events to Time Series The `ts_dict_index` field in `event_report.jsonl` contains a list of line indices (0-based) pointing to rows in `mmts.jsonl`. These identify the weather station time series samples spatially and temporally associated with each event. ```python import json with open("mmts.jsonl") as f: mmts = [json.loads(line) for line in f] with open("event_report.jsonl") as f: for line in f: event = json.loads(line) related_ts = [mmts[i] for i in event["ts_dict_index"]] ``` --- ## Preprocessed Dataset A preprocessed version of this dataset (formatted for model training and evaluation) is available for download: [Google Drive Link](https://drive.google.com/file/d/1hX4D91QbXa0UQlgf6Jnf-1ii96gfp1aY/view?usp=sharing) --- ## Citation If you use this dataset, please cite: ```bibtex @article{chen2025trace, title={Trace: Grounding time series in context for multimodal embedding and retrieval}, author={Chen, Jialin and Zhao, Ziyu and Nurbek, Gaukhar and Feng, Aosong and Maatouk, Ali and Tassiulas, Leandros and Gao, Yifeng and Ying, Rex}, journal={arXiv preprint arXiv:2506.09114}, year={2025} } ```