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9c6e3c89a5
* fix js scoping issue * add external libraries (they were offline too often) * new compiled scripts and css * new fixes in the binary * vendor update * change js source * remove needless variable * removed more needless variables
51 lines
2.7 KiB
Go
51 lines
2.7 KiB
Go
// Code generated by private/model/cli/gen-api/main.go. DO NOT EDIT.
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// Package iotanalytics provides the client and types for making API
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// requests to AWS IoT Analytics.
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//
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// AWS IoT Analytics allows you to collect large amounts of device data, process
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// messages, and store them. You can then query the data and run sophisticated
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// analytics on it. AWS IoT Analytics enables advanced data exploration through
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// integration with Jupyter Notebooks and data visualization through integration
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// with Amazon QuickSight.
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//
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// Traditional analytics and business intelligence tools are designed to process
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// structured data. IoT data often comes from devices that record noisy processes
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// (such as temperature, motion, or sound). As a result the data from these
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// devices can have significant gaps, corrupted messages, and false readings
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// that must be cleaned up before analysis can occur. Also, IoT data is often
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// only meaningful in the context of other data from external sources.
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//
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// AWS IoT Analytics automates the steps required to analyze data from IoT devices.
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// AWS IoT Analytics filters, transforms, and enriches IoT data before storing
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// it in a time-series data store for analysis. You can set up the service to
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// collect only the data you need from your devices, apply mathematical transforms
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// to process the data, and enrich the data with device-specific metadata such
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// as device type and location before storing it. Then, you can analyze your
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// data by running queries using the built-in SQL query engine, or perform more
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// complex analytics and machine learning inference. AWS IoT Analytics includes
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// pre-built models for common IoT use cases so you can answer questions like
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// which devices are about to fail or which customers are at risk of abandoning
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// their wearable devices.
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//
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// See https://docs.aws.amazon.com/goto/WebAPI/iotanalytics-2017-11-27 for more information on this service.
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//
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// See iotanalytics package documentation for more information.
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// https://docs.aws.amazon.com/sdk-for-go/api/service/iotanalytics/
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//
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// Using the Client
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//
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// To contact AWS IoT Analytics with the SDK use the New function to create
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// a new service client. With that client you can make API requests to the service.
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// These clients are safe to use concurrently.
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//
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// See the SDK's documentation for more information on how to use the SDK.
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// https://docs.aws.amazon.com/sdk-for-go/api/
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//
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// See aws.Config documentation for more information on configuring SDK clients.
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// https://docs.aws.amazon.com/sdk-for-go/api/aws/#Config
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//
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// See the AWS IoT Analytics client IoTAnalytics for more
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// information on creating client for this service.
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// https://docs.aws.amazon.com/sdk-for-go/api/service/iotanalytics/#New
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package iotanalytics
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