Amazon Timestream is a fast, scalable, fully managed, purpose-built time series database that makes it easy to store and
analyze trillions of time series data points per day. Amazon Timestream saves you time and cost in managing the
lifecycle of time series data by keeping recent data in memory and moving historical data to a cost optimized storage
tier based upon user defined policies. Amazon Timestream’s purpose-built query engine lets you access and analyze
recent and historical data together, without having to specify its location. Amazon Timestream has built-in time series
analytics functions, helping you identify trends and patterns in your data in near real-time. Timestream is serverless
and automatically scales up or down to adjust capacity and performance. Because you don’t need to manage the
underlying infrastructure, you can focus on optimizing and building your applications.
Amazon Timestream also integrates with commonly used services for data collection, visualization, and machine learning.
You can send data to Amazon Timestream using AWS IoT Core, Amazon Kinesis, Amazon MSK, and open source Telegraf.
You can visualize data using Amazon QuickSight, Grafana, and business intelligence tools through JDBC. You can also use
Amazon SageMaker with Amazon Timestream for machine learning. For more information on how to use Amazon Timestream see the AWS documentation.
This repository contains sample applications, plugins, notebooks, data connectors, and adapters to help you get
started with Amazon Timestream and to enable you to use Amazon Timestream with other tools and services.
Sample applications
This repository contains fully functional sample applications to help you get started with Amazon Timestream.
The getting started application shows how to create a database and table, populate the table with ~126K rows of sample data, and run sample queries.
This sample application is currently available for the following programming languages:
To query time series data using Amazon Timestream's JDBC driver, refer to the following application:
To continue to use your preferred data collection, analytics, visualization, and machine learning tools with Amazon Timestream, refer to the following:
To understand the performance and scale capabilities of Amazon Timestream, you can run the following workload:
You can use the following tools to continuously send data to Amazon Timestream: