
Sold by: Source Cooperative
Open data
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Deployed on AWS
Machine learning model embeddings dataset providing pre-computed feature representations for satellite and aerial imagery analysis.
Overview
Machine learning model embeddings dataset providing pre-computed feature representations for satellite and aerial imagery analysis.
Features and programs
Open Data Sponsorship Program
This dataset is part of the Open Data Sponsorship Program, an AWS program that covers the cost of storage for publicly available high-value cloud-optimized datasets.
Pricing
This is a publicly available data set. No subscription is required.
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Legal
Content disclaimer
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Delivery details
AWS Data Exchange (ADX)
AWS Data Exchange is a service that helps AWS easily share and manage data entitlements from other organizations at scale.
Open data resources
Available with or without an AWS account.
- How to use
- To access these resources, reference the Amazon Resource Name (ARN) using the AWS Command Line Interface (CLI). Learn more
- Description
- Clay Model v0 Embeddings S3 Bucket
- Resource type
- S3 bucket
- Amazon Resource Name (ARN)
- arn:aws:s3:::us-west-2.opendata.source.coop/clay/clay-model-v0-embeddings
- AWS region
- us-west-2
- AWS CLI access (No AWS account required)
- aws s3 ls --no-sign-request s3://us-west-2.opendata.source.coop/clay/clay-model-v0-embeddings/
Resources
Vendor resources
Support
Contact
Managed By
How to cite
Clay Model v0 Embeddings was accessed on DATE from https://registry.opendata.aws/clay-model-v0-embeddings .
License
Creative Commons Attribution 4.0 International License
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