官术网_书友最值得收藏!

Converting a DataFrame into other formats

This recipe demonstrates the conversion of DataFrame objects into other formats, such as .csv files, json objects, and pickle objects. Conversion into a .csv file makes it easier to further work on the data using a spreadsheet application. The json format is useful for transmitting DataFrame objects over web APIs. The pickle format is useful for transmitting DataFrame objects created in one Python session to another Python session over sockets without having to recreate them.

Getting ready

Make sure the object df is available in your Python namespace. Refer to Creating a pandas.DataFrame object recipe of this chapter to set up this object.

How to do it…

Execute the following steps for this recipe:

  1. Convert and save df as a CSV file:
>>> df.to_csv('dataframe.csv', index=False)
  1. Convert df to a JSON string:
>>> df.to_json()

We get the following output:

'{
"timestamp":{
"0":"13-11-2019 09:00:00","1":"13-11-2019 09:15:00",
"2":"13-11-2019 09:30:00","3":"13-11-2019 09:45:00",
"4":"13-11-2019 10:00:00","5":"13-11-2019 10:15:00",
"6":"13-11-2019 10:30:00","7":"13-11-2019 10:45:00",
"8":"13-11-2019 11:00:00","9":"13-11-2019 11:15:00"},
"open":{
"0":71.8075,"1":71.7925,"2":71.7925, "3":71.76,
"4":71.7425,"5":71.775,"6":71.815, "7":71.775,
"8":71.7525,"9":71.7625},
"high"{
"0":71.845,"1":71.8,"2":71.8125,"3":71.765,
"4":71.78,"5":71.8225,"6":71.83,"7":71.7875,
"8":71.7825,"9":71.7925},
"low":{
"0":71.7775,"1":71.78,"2":71.76,"3":71.735,
"4":71.7425,"5":71.77,"6":71.7775,"7":71.7475,
"8":71.7475,"9":71.76},
"close":{
"0":71.7925,"1":71.7925,"2":71.7625,"3":71.7425,
"4":71.7775,"5":71.815,"6":71.78,"7":71.7525,
"8":71.7625,"9":71.7875},
"volume":{
"0":219512,"1":59252,"2":57187,"3":43048,
"4":45863,"5":42460,"6":62403,"7":34090,
"8":39320,"9":20190}}'
  1. Pickle df to a file:
>>> df.to_pickle('df.pickle')

How it works...

In step 1, you use the to_csv() method to save df as a .csv file. You pass dataframe.csv, a file path where the .csv file should be generated, as the first argument and index as False as the second argument. Passing index as False prevents the index from being dumped to the .csv file. If you want to save the DataFrame along with its index, you can pass the index as True to the to_csv() method.

In step 2, you use the to_json() method to convert df into a JSON string. You do not pass any additional arguments to the to_json() method.

In step 3, you use the to_pickle() method to pickle (serialize) the object. Again you do not pass any additional arguments to the to_pickle() method.

The methods to_csv(), to_json(), and to_pickle() can take more optional arguments than the ones shown in this recipe. Refer to the official docs for complete information on these methods:

主站蜘蛛池模板: 田东县| 安吉县| 清流县| 宿迁市| 昌乐县| 临漳县| 清涧县| 祁阳县| 台南县| 绿春县| 长泰县| 疏附县| 高安市| 甘泉县| 克山县| 修文县| 宿州市| 福泉市| 鄂托克旗| 思南县| 桑日县| 辽宁省| 洛阳市| 阜阳市| 肥城市| 曲阜市| 蓬莱市| 台前县| 泰顺县| 新民市| 张家口市| 定襄县| 科技| 微博| 哈密市| 贵州省| 田东县| 如东县| 德州市| 万年县| 盐源县|