
Overview
Feed in your multivariate time-series data from different sensors at normalized sampling rates and this API will flag anomalies for you. You can tweak the anomaly level with hyper-parameters. This algorithm has been used for monitoring the performance of various mechanical equipment or devices.
Highlights
- * Deploying the Anomaly Detection Algorithm within SageMaker ensures a secure and efficient setup, ideal for scalable and reliable anomaly detection applications. * Optimized Docker containers deliver excellent performance, with low latency and high throughput, particularly in both CPU and GPU configurations. * The algorithm supports flexible deployment with custom training and inference scripts, making it adaptable to various anomaly detection use cases across different datasets.
Details
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Pricing
Dimension | Description | Cost/host/hour |
|---|---|---|
ml.m5.large Inference (Batch) Recommended | Model inference on the ml.m5.large instance type, batch mode | $5.00 |
ml.m5.large Inference (Real-Time) Recommended | Model inference on the ml.m5.large instance type, real-time mode | $5.00 |
ml.m5.large Training Recommended | Algorithm training on the ml.m5.large instance type | $10.00 |
ml.m4.4xlarge Inference (Batch) | Model inference on the ml.m4.4xlarge instance type, batch mode | $5.00 |
ml.m5.4xlarge Inference (Batch) | Model inference on the ml.m5.4xlarge instance type, batch mode | $5.00 |
ml.m5.12xlarge Inference (Batch) | Model inference on the ml.m5.12xlarge instance type, batch mode | $5.00 |
ml.m4.16xlarge Inference (Batch) | Model inference on the ml.m4.16xlarge instance type, batch mode | $5.00 |
ml.m5.2xlarge Inference (Batch) | Model inference on the ml.m5.2xlarge instance type, batch mode | $5.00 |
ml.c4.4xlarge Inference (Batch) | Model inference on the ml.c4.4xlarge instance type, batch mode | $5.00 |
ml.m5.xlarge Inference (Batch) | Model inference on the ml.m5.xlarge instance type, batch mode | $5.00 |
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Delivery details
Amazon SageMaker algorithm
An Amazon SageMaker algorithm is a machine learning model that requires your training data to make predictions. Use the included training algorithm to generate your unique model artifact. Then deploy the model on Amazon SageMaker for real-time inference or batch processing. Amazon SageMaker is a fully managed platform for building, training, and deploying machine learning models at scale.
Version release notes
Anomaly Detection
Additional details
Inputs
- Summary
The training job generates a model.tar.gz file, which is saved to the specified S3 output path. This model, along with the testing JSON data, is then used as input for the inference script. Kindly follow the notebook link.
- Input MIME type
- application/json
Input data descriptions
The following table describes supported input data fields for real-time inference and batch transform.
Field name | Description | Constraints | Required |
|---|---|---|---|
Non-anomaly features | The data contains sensor data which has different amplitudes for about 3000-7000 sensors. For different assets we have different data and number of sensors also varies. | Type: Continuous | Yes |
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AWS Support is a one-on-one, fast-response support channel that is staffed 24x7x365 with experienced and technical support engineers. The service helps customers of all sizes and technical abilities to successfully utilize the products and features provided by Amazon Web Services.
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