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【驱动量化交易17】教你如何通过股票数据api接口获取强势股池数据之Python、Java等多种主流语言实例代码演示通过股票数据接口获取数据

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【驱动量化交易17】教你如何通过股票数据api接口获取强势股池数据之Python、Java等多种主流语言实例代码演示通过股票数据接口获取数据

​ 如今,量化分析在股市领域风靡一时,其核心要素在于数据,获取股票数据,是踏上量化分析之路的第一步。你可以选择亲手编写爬虫来抓取,但更便捷的方式,莫过于利用专业的股票数据API接口。自编爬虫虽零成本,却伴随着时间与精力的巨大消耗,且常因目标页面变动而失效。大家可以依据自己的实际情况来决定数据获取方式。

接下来,我将分享200多个实测可用且免费的专业股票数据接口,并通过Python、JavaScript(Node.js)、Java、C#、Ruby等五种主流语言,逐一演示如何高效获取各类股票数据,希望能够对大家有所帮助。

先把数据接口的地址给大家,大家可以直接点击地址或复制到地址栏打开,马上就可以验证接口的有效性

沪深A股强势股池数据API接口:http://api.mairuiapi.com/hslt/qsgc/2024-01-10/LICENCE-66D8-9F96-0C7F0FBCD073

接口URL中,000001是股票代码,LICENCE-66D8-9F96-0C7F0FBCD073是请求证书,这个是官方提供的测试证书只能测试000001的数据,随后大家自己可以去领取一个免费的请求证书就可以获取其他股票的数据了。

1、python

importrequests url="http://api.mairuiapi.com/hslt/qsgc/2024-01-10/LICENCE-66D8-9F96-0C7F0FBCD073"response=requests.get(url)data=response.json()print(data)

2、JavaScript (Node.js)

constaxios=require('axios');consturl="http://api.mairuiapi.com/hslt/qsgc/2024-01-10/LICENCE-66D8-9F96-0C7F0FBCD073";axios.get(url).then(response=>{console.log(response.data);}).catch(error=>{console.log(error);});

3、Java

importjava.net.URI;importjava.net.http.HttpClient;importjava.net.http.HttpRequest;importjava.net.http.HttpResponse;importjava.io.IOException;publicclassMain{publicstaticvoidmain(String[]args){HttpClientclient=HttpClient.newHttpClient();HttpRequestrequest=HttpRequest.newBuilder().uri(URI.create("http://api.mairuiapi.com/hslt/qsgc/2024-01-10/LICENCE-66D8-9F96-0C7F0FBCD073")).build();try{HttpResponse<String>response=client.send(request,HttpResponse.BodyHandlers.ofString());System.out.println(response.body());}catch(IOException|InterruptedExceptione){e.printStackTrace();}}}

4、C#

usingSystem;usingSystem.Net.Http;usingSystem.Threading.Tasks;classProgram{staticasyncTaskMain(){using(HttpClientclient=newHttpClient()){stringurl="http://api.mairuiapi.com/hslt/qsgc/2024-01-10/LICENCE-66D8-9F96-0C7F0FBCD073";HttpResponseMessageresponse=awaitclient.GetAsync(url);stringresponseBody=awaitresponse.Content.ReadAsStringAsync();Console.WriteLine(responseBody);}}}

5、Ruby

require'net/http'require'json'url=URI("http://api.mairuiapi.com/hslt/qsgc/2024-01-10/LICENCE-66D8-9F96-0C7F0FBCD073")http=Net::HTTP.new(url.host,url.port)request=Net::HTTP::Get.new(url)response=http.request(request)data=JSON.parse(response.read_body)puts data

返回数据示例:

[{"dm":"sz301157","mc":"华塑科技","p":70.25,"ztp":70.25,"zf":20.0,"cje":810332336.0,"lt":1451368863.75,"zsz":4215000000.0,"zs":0.0,"nh":1,"lb":2.64,"hs":60.51,"tj":"3/3"},{"dm":"sz301187","mc":"欧圣电气","p":43.44,"ztp":43.44,"zf":20.0,"cje":455264944.0,"lt":2079656203.68,"zsz":7932476793.84,"zs":0.0,"nh":1,"lb":2.25,"hs":23.74,"tj":"1/1"},{"dm":"sz300807","mc":"天迈科技","p":43.64,"ztp":43.64,"zf":19.99,"cje":138644280.0,"lt":2140716079.96,"zsz":2969247576.68,"zs":0.0,"nh":0,"lb":1.47,"hs":6.48,"tj":"2/2"},{"dm":"sz300715","mc":"凯伦股份","p":9.74,"ztp":9.74,"zf":19.95,"cje":73141283.0,"lt":3254707452.24,"zsz":3682259829.76,"zs":0.0,"nh":1,"lb":0.47,"hs":2.25,"tj":"1/1"},{"dm":"sz301606","mc":"绿联科技","p":47,"ztp":48.25,"zf":16.89,"cje":835917232.0,"lt":1466789489.0,"zsz":19500760976.0,"zs":0.0,"nh":1,"lb":4.59,"hs":60.22,"tj":"2/1"},{"dm":"sh688768","mc":"容知日新","p":38.25,"ztp":41.64,"zf":10.23,"cje":113945028.0,"lt":3122196336.0,"zsz":3344096252.25,"zs":0.0,"nh":1,"lb":4.37,"hs":3.67,"tj":"0/0"},{"dm":"sz002418","mc":"康盛股份","p":3.37,"ztp":3.37,"zf":10.13,"cje":966193504.0,"lt":3829668000.0,"zsz":3829668000.0,"zs":0.0,"nh":1,"lb":2.58,"hs":26.11,"tj":"5/4"},{"dm":"sz000573","mc":"粤宏远A","p":4.57,"ztp":4.57,"zf":10.12,"cje":261682904.0,"lt":2892649222.83,"zsz":2916942378.56,"zs":0.0,"nh":1,"lb":1.59,"hs":9.05,"tj":"4/4"},{"dm":"sz002175","mc":"东方智造","p":4.57,"ztp":4.57,"zf":10.12,"cje":1318352192.0,"lt":5834853647.39,"zsz":5834887890.4,"zs":0.0,"nh":0,"lb":1.81,"hs":23.54,"tj":"2/2"},{"dm":"sz000533","mc":"顺钠股份","p":8.2,"ztp":8.2,"zf":10.07,"cje":1921887168.0,"lt":5616199680.0,"zsz":5664691200.0,"zs":0.0,"nh":1,"lb":1.23,"hs":36.39,"tj":"9/8"},{"dm":"sh600693","mc":"东百集团","p":7.55,"ztp":7.55,"zf":10.06,"cje":1418767760.0,"lt":6560593504.1,"zsz":6567339112.0,"zs":0.0,"nh":0,"lb":1.82,"hs":24.36,"tj":"21/11"},{"dm":"sz002122","mc":"汇洲智能","p":3.83,"ztp":3.83,"zf":10.06,"cje":1233524032.0,"lt":7613027110.54,"zsz":7661822099.52,"zs":0.0,"nh":0,"lb":1.86,"hs":16.98,"tj":"2/2"},{"dm":"sh603269","mc":"海鸥股份","p":14.03,"ztp":14.03,"zf":10.04,"cje":32680921.0,"lt":3094133787.31,"zsz":3094133787.31,"zs":0.0,"nh":1,"lb":0.15,"hs":1.06,"tj":"3/3"},{"dm":"sz002379","mc":"宏创控股","p":10.86,"ztp":10.86,"zf":10.03,"cje":2051022688.0,"lt":12341018957.58,"zsz":12341019033.6,"zs":0.0,"nh":1,"lb":5.23,"hs":16.97,"tj":"3/3"},{"dm":"sz002364","mc":"中恒电气","p":15.36,"ztp":15.36,"zf":10.03,"cje":2722317120.0,"lt":8572484121.6,"zsz":8656357785.6,"zs":0.0,"nh":1,"lb":1.31,"hs":32.89,"tj":"12/7"},{"dm":"sh603070","mc":"万控智造","p":14.93,"ztp":14.93,"zf":10.02,"cje":67032953.0,"lt":1280076327.55,"zsz":5986930000.0,"zs":0.0,"nh":1,"lb":0.7,"hs":5.24,"tj":"2/2"},

返回的数据字段说明:

dm 代表: 代码,mc代表: 名称,p 代表: 价格(元),ztp 代表:涨停价(元),zf 代表: 涨幅(%),cje 代表: 成交额(元),lt 代表: 流通市值(元),zsz 代表: 总市值(元),zs代表: 涨速(%),nh 代表: 是否新高(0:否,1:是),lb 代表: 量比,hs代表: 换手率(%),tj 代表: 涨停统计(x天/y板)

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