Example
Create APIs that can orchestrate distributed batch inference jobs on large datasets.
Implement
mkdir image-classifier && cd image-classifier
touch predictor.py requirements.txt image_classifier.yaml
# predictor.py
class PythonPredictor:
def __init__(self, config, job_spec):
from torchvision import transforms
import torchvision
import requests
import boto3
import re
self.model = torchvision.models.alexnet(pretrained=True).eval()
self.labels = requests.get(config["labels"]).text.split("\n")[1:]
normalize = transforms.Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225])
self.preprocess = transforms.Compose(
[transforms.Resize(256), transforms.CenterCrop(224), transforms.ToTensor(), normalize]
)
self.s3 = boto3.client("s3") # initialize S3 client to save results
self.bucket, self.key = re.match("s3://(.+?)/(.+)", config["dest_s3_dir"]).groups()
self.key = os.path.join(self.key, job_spec["job_id"])
def predict(self, payload, batch_id):
import json
import torch
from PIL import Image
from io import BytesIO
import requests
tensor_list = []
for image_url in payload: # download and preprocess each image
img_pil = Image.open(BytesIO(requests.get(image_url).content))
tensor_list.append(self.preprocess(img_pil))
img_tensor = torch.stack(tensor_list)
with torch.no_grad(): # classify the batch of images
prediction = self.model(img_tensor)
_, indices = prediction.max(1)
results = [{"url": payload[i], "class": self.labels[class_idx]} for i, class_idx in enumerate(indices)]
self.s3.put_object(Bucket=self.bucket, Key=f"{self.key}/{batch_id}.json", Body=json.dumps(results))
# requirements.txt
torch
boto3
pillow
torchvision
requests
# image_classifier.yaml
- name: image-classifier
kind: BatchAPI
predictor:
type: python
path: predictor.py
config:
labels: "https://storage.googleapis.com/download.tensorflow.org/data/ImageNetLabels.txt"
Deploy
cortex deploy image_classifier.yaml
Describe
cortex get image-classifier
Submit a job
import cortex
import requests
cx = cortex.client("aws")
batch_endpoint = cx.get_api("image-classifier")["endpoint"]
dest_s3_dir = # specify S3 directory for the results, e.g. "s3://my-bucket/dir" (make sure your cluster has access to this bucket)
job_spec = {
"workers": 1,
"item_list": {
"items": [
"https://i.imgur.com/PzXprwl.jpg",
"https://i.imgur.com/E4cOSLw.jpg",
"https://i.imgur.com/jDimNTZ.jpg",
"https://i.imgur.com/WqeovVj.jpg"
],
"batch_size": 2
},
"config": {
"dest_s3_dir": dest_s3_dir
}
}
response = requests.post(batch_endpoint, json=job_spec)
print(response.text)
# > {"job_id":"69b183ed6bdf3e9b","api_name":"image-classifier", "config": {"dest_s3_dir": ...}}
Monitor the job
cortex get image-classifier 69b183ed6bdf3e9b
Stream logs
cortex logs image-classifier 69b183ed6bdf3e9b
View the results
Once the job is complete, you should be able to find the results in the directory you've specified.
Delete
cortex delete image-classifier
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