The General Model is Clarifai's most popular model because of its high level of accuracy and versatility. You can easily categorize any image with the General Model.
For example, the General Model might return the following predictions for the image above:
Concept | Prediction |
water | 0.99 |
sun |
0.99 |
sunset | 0.99 |
beach | 0.99 |
sea | 0.98 |
Getting Started
First things first. You will need to set up a Clarifai account and create an application. This how-to article shows you how to label images with the Clarifai API and through Portal. If you would like to label images via API, you will also need to generate an API key.
Label your photos in Portal
You can do almost anything that Clarifai can do with Clarifai Portal, and we work hard to make Portal the world's easiest interface for using AI. Classifying images with Portal is as simple as uploading your data, and choosing the right base workflow.
Create your application and choose "General" as your base workflow
Simply log in to Clarifai Portal and create a new application. To use the wedding model, select "General" as your base workflow.
View your image in Explorer view
Upload an image to your application and view predictions in the righthand sidebar under the tab that says "App Workflow".
Label photos hosted on your local drive
Use the following Python snippet as an example of how to run a prediction on an image hosted on your local computer. For more details and information on working with predictions in our other client languages, please refer to our API documentation.
from clarifai_grpc.grpc.api import service_pb2, resources_pb2 from clarifai_grpc.grpc.api.status import status_code_pb2 # This is how you authenticate. metadata = (('authorization', 'Key {{YOUR_CLARIFAI_API_KEY}}'),) with open("{YOUR_IMAGE_FILE_LOCATION}", "rb") as f: file_bytes = f.read() request = service_pb2.PostModelOutputsRequest( model_id='aaa03c23b3724a16a56b629203edc62c', inputs=[ resources_pb2.Input( data=resources_pb2.Data( image=resources_pb2.Image( base64=file_bytes ) ) ) ]) response = stub.PostModelOutputs(request, metadata=metadata) if response.status.code != status_code_pb2.SUCCESS: raise Exception("Request failed, status code: " + str(response.status.code)) for concept in response.outputs[0].data.concepts: print('%12s: %.2f' % (concept.name, concept.value))
Label images hosted on the web
Here is an example of how to run a prediction on an image that is hosted on a URL. This snippet is in Python, but we offer support for many other client languages. Please refer to our API documentation for additional information.
from clarifai_grpc.grpc.api import service_pb2, resources_pb2 from clarifai_grpc.grpc.api.status import status_code_pb2 # This is how you authenticate. metadata = (('authorization', 'Key {{YOUR_CLARIFAI_API_KEY}}'),) request = service_pb2.PostModelOutputsRequest( model_id='aaa03c23b3724a16a56b629203edc62c', inputs=[ resources_pb2.Input(data=resources_pb2.Data(image=resources_pb2.Image(url='{{YOUR_IMAGE_URL}}'))) ]) response = stub.PostModelOutputs(request, metadata=metadata) if response.status.code != status_code_pb2.SUCCESS: raise Exception("Request failed, status code: " + str(response.status.code)) for concept in response.outputs[0].data.concepts: print('%12s: %.2f' % (concept.name, concept.value))