官术网_书友最值得收藏!

Time series primer

In general, time series serve two purposes. First, they help us to learn about the underlying process that generated the data. On the other hand, we would like to be able to forecast future values of the same or related series using existing data. When we measure temperature, precipitation or wind, we would like to learn more about more complex things, such as weather or the climate of a region and how various factors interact. At the same time, we might be interested in weather forecasting.

In this chapter we will explore the time series capabilities of Pandas. Apart from its powerful core data structures – the series and the DataFrame – Pandas comes with helper functions for dealing with time related data. With its extensive built-in optimizations, Pandas is capable of handling large time series with millions of data points with ease.

We will gradually approach time series, starting with the basic building blocks of date and time objects.

主站蜘蛛池模板: 荔波县| 彭山县| 东至县| 全州县| 婺源县| 淮滨县| 玛曲县| 纳雍县| 通海县| 栾川县| 永泰县| 黔江区| 呼伦贝尔市| 松江区| 太康县| 聊城市| 盐池县| 黄陵县| 西昌市| 呼伦贝尔市| 阿克苏市| 沭阳县| 小金县| 和静县| 获嘉县| 祁门县| 故城县| 玉屏| 封丘县| 连江县| 固始县| 镇雄县| 宁蒗| 平和县| 岚皋县| 恭城| 天长市| 浠水县| 海淀区| 米易县| 上杭县|