A time series is a sequence of data values measured at successive, though not necessarily regular, points in time. The time series library allows you to perform various key operations on time series data, including segmentation, forecasting, joins,
transforms, and reducers.
The library supports various time series types, including numeric, categorical, and arrays. Examples of time series data include:
Stock share prices and trading volumes
Clickstream data
Electrocardiogram (ECG) data
Temperature or seismographic data
Network performance measurements
Network logs
Electricity usage as recorded by a smart meter and reported via an Internet of Things data feed
An entry in a time series is called an observation. Each observation comprises a time tick, a 64-bit integer that indicates when the observation was made, and the data that was recorded for that observation. The recorded data can be either numerical,
for example, a temperature or a stock share price, or categorical, for example, a geographic area. A time series can but must not necessarily be associated with a time reference system (TRS), which defines the granularity of each time tick and
the start time.
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