15 lines
1023 B
Markdown
15 lines
1023 B
Markdown
# Scaling Batch Inference with Ray Data
|
|
|
|
| Template Specification | Description |
|
|
| ---------------------- | ----------- |
|
|
| Summary | This template walks through GPU batch inference on an image dataset. |
|
|
| Time to Run | Less than 5 minutes to compute predictions on the dataset. |
|
|
| Minimum Compute Requirements | No hard requirements. The default is 4 nodes, each with 1 NVIDIA T4 GPU. |
|
|
| Cluster Environment | This template uses the latest Anyscale-provided Ray ML image using Python 3.9: [`anyscale/ray-ml:latest-py39-gpu`](https://docs.anyscale.com/reference/base-images/overview?utm_source=ray_docs&utm_medium=docs&utm_campaign=01_batch_inference). If you want to change to a different cluster environment, make sure that it's based on this image.|
|
|
|
|
## Getting Started
|
|
|
|
**When the workspace is up and running, start coding by clicking on the Jupyter or VS Code icon above. Open the `start.ipynb` file and follow the instructions there.**
|
|
|
|
By the end, we will have classified around 10k images with a PyTorch model.
|