Dataset Viewer
Auto-converted to Parquet Duplicate
Search is not available for this dataset
The dataset viewer is not available for this split.
Rows from parquet row groups are too big to be read: 361.90 MiB (max=286.10 MiB)
Error code:   TooBigContentError

Need help to make the dataset viewer work? Make sure to review how to configure the dataset viewer, and open a discussion for direct support.

Dataset Card

image/png image/png

This dataset contains a single huggingface split, named 'all_samples'.

The samples contains a single huggingface feature, named called "sample".

Samples are instances of plaid.containers.sample.Sample. Mesh objects included in samples follow the CGNS standard, and can be converted in Muscat.Containers.Mesh.Mesh.

Example of commands:

from datasets import load_dataset
from plaid.bridges.huggingface_bridge import huggingface_dataset_to_plaid

hf_dataset = load_dataset("PLAID-datasets/VKI-LS59", split="all_samples")

dataset, problem = huggingface_dataset_to_plaid(hf_dataset, processes_number = 4)

ids_train = problem.get_split('train')
ids_test  = problem.get_split('test')

sample_train_0 = dataset[ids_train[0]]
sample_test_0 = dataset[ids_test[0]]


# inputs
nodes = sample_train_0.get_nodes(base_name="Base_2_2")
elements = sample_train_0.get_elements(base_name="Base_2_2")
nodal_tags = sample_train_0.get_nodal_tags(base_name="Base_2_2")
sdf = sample_train_0.get_field("sdf", base_name="Base_2_2")
angle_in = sample_train_0.get_scalar("angle_in")
mach_out = sample_train_0.get_scalar("mach_out")

# outputs
mach = sample_train_0.get_field("mach", base_name="Base_2_2")
nut = sample_train_0.get_field("nut", base_name="Base_2_2")

for sn in ["Q", "power", "Pr", "Tr", "eth_is", "angle_out"]:
    outscalar = sample_train_0.get_scalar(sn)

Dataset Details

Dataset Description

This dataset contains 2D internal aero CFD RANS solutions, under geometrical variations, based on the VKI-LS59 blade.

The variablity in the samples are 2 input scalars and the geometry (mesh) - the signed distance function is also provided and can be used as an input field. Outputs of interest are 7 fields (6 2D-fields and 1 1D-field) and 6 scalars.

Eight nested training sets of sizes 8 to 671 are provided, with complete input-output data. A testing set of size 168 is provided, for which outputs are not provided.

Dataset created using the PLAID library and datamodel, version: 0.1.

  • Language: PLAID
  • License: cc-by-sa-4.0
  • Owner: Safran

Dataset Sources

Downloads last month
1,142

Models trained or fine-tuned on PLAID-datasets/VKI-LS59

Space using PLAID-datasets/VKI-LS59 1

Collection including PLAID-datasets/VKI-LS59