Datasets:
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---
license: cc-by-sa-4.0
task_categories:
- graph-ml
pretty_name: 2D internal aero CFD RANS dataset, under geometrical variations
tags:
- physics learning
- geometry learning
dataset_info:
features:
- name: Base_1_2/Zone/GridCoordinates/CoordinateX
list: float32
- name: Base_1_2/Zone/GridCoordinates/CoordinateY
list: float32
- name: Base_1_2/Zone/PointData/M_iso
list: float32
- name: Base_2_2/Zone/GridCoordinates/CoordinateX
list: float32
- name: Base_2_2/Zone/GridCoordinates/CoordinateY
list: float32
- name: Base_2_2/Zone/PointData/mach
list: float32
- name: Base_2_2/Zone/PointData/nut
list: float32
- name: Base_2_2/Zone/PointData/ro
list: float32
- name: Base_2_2/Zone/PointData/roe
list: float32
- name: Base_2_2/Zone/PointData/rou
list: float32
- name: Base_2_2/Zone/PointData/rov
list: float32
- name: Base_2_2/Zone/PointData/sdf
list: float32
- name: Global/Pr
list: float32
- name: Global/Q
list: float32
- name: Global/Tr
list: float32
- name: Global/angle_in
list: float32
- name: Global/angle_out
list: float32
- name: Global/eth_is
list: float32
- name: Global/mach_out
list: float32
- name: Global/power
list: float32
splits:
- name: train
num_bytes: 881825516
num_examples: 671
- name: test
num_bytes: 73767729
num_examples: 168
download_size: 1016414914
dataset_size: 955593245
configs:
- config_name: default
data_files:
- split: train
path: data/train-*
- split: test
path: data/test-*
---
<p align='center'>
<img src='https://i.ibb.co/hJqv4hCt/Logo-VKI-2.png' alt='https://i.ibb.co/hJqv4hCt/Logo-VKI-2.png' width='1000'/>
<img src='https://i.ibb.co/7NX9z7NQ/image001.png' alt='https://i.ibb.co/7NX9z7NQ/image001.png' width='1000'/>
</p>
```yaml
legal:
owner: Safran
license: cc-by-sa-4.0
data_production:
type: simulation
physics: 2D compressible RANS, with Spalart-Allmaras turbulence model
simulator: Broadcast
num_samples:
train: 671
test: 168
storage_backend: hf_datasets
plaid:
version: 0.1.13.dev1+gb350f274a
```
This dataset was generated with [`plaid`](https://plaid-lib.readthedocs.io/), we refer to this documentation for additional details on how to extract data from `plaid_sample` objects.
The simplest way to use this dataset is to first download it:
```python
from plaid.storage import download_from_hub
repo_id = "channel/dataset"
local_folder = "downloaded_dataset"
download_from_hub(repo_id, local_folder)
```
Then, to iterate over the dataset and instantiate samples:
```python
from plaid.storage import init_from_disk
local_folder = "downloaded_dataset"
split_name = "train"
datasetdict, converterdict = init_from_disk(local_folder)
dataset = datasetdict[split]
converter = converterdict[split]
for i in range(len(dataset)):
plaid_sample = converter.to_plaid(dataset, i)
```
It is possible to stream the data directly:
```python
from plaid.storage import init_streaming_from_hub
repo_id = "channel/dataset"
datasetdict, converterdict = init_streaming_from_hub(repo_id)
dataset = datasetdict[split]
converter = converterdict[split]
for sample_raw in dataset:
plaid_sample = converter.sample_to_plaid(sample_raw)
```
Plaid samples' features can be retrieved like the following:
```python
from plaid.storage import load_problem_definitions_from_disk
local_folder = "downloaded_dataset"
pb_defs = load_problem_definitions_from_disk(local_folder)
# or
from plaid.storage import load_problem_definitions_from_hub
repo_id = "channel/dataset"
pb_defs = load_problem_definitions_from_hub(repo_id)
pb_def = pb_defs[0]
plaid_sample = ... # use a method from above to instantiate a plaid sample
for t in plaid_sample.get_all_time_values():
for path in pb_def.get_in_features_identifiers():
plaid_sample.get_feature_by_path(path=path, time=t)
for path in pb_def.get_out_features_identifiers():
plaid_sample.get_feature_by_path(path=path, time=t)
```
For those familiar with HF's `datasets` library, raw data can be retrieved without using the `plaid` library:
```python
from datasets import load_dataset
repo_id = "channel/dataset"
datasetdict = load_dataset(repo_id)
for split_name, dataset in datasetdict.items():
for raw_sample in dataset:
for feat_name in dataset.column_names:
feature = raw_sample[feat_name]
```
Notice that raw data refers to the variable features only, with a specific encoding for time variable features.
### Dataset Sources
- **Papers:**
- [arxiv](https://arxiv.org/abs/2505.02974)
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