and thank you for looking.
I am trying my hand at modifying a Python script to download a bunch of data from a website. I have decided that given the large data that will be used, I am wanting to convert the script to Pandas for this. I have this code so far.
snames = ['Index','Node_ID','Node','Id','Name','Tag','Datatype','Engine'] sensorinfo = pd.read_csv(sensorpath, header = None, names = snames, index_col=['Node', 'Index']) for j in sensorinfo['Node']: for z in sensorinfo['Index']: # create a string for the url of the data data_url = "http://www.mywebsite.com/emoncms/feed/data.json?id=" + sensorinfo['Id'] + "&apikey1f8&start=&end=&dp=600" print data_url # read in the data from emoncms sock = urllib.urlopen(data_url) data_str = sock.read() sock.close # data is output as a string so we convert it to a list of lists data_list = eval(data_str) myfile = open(feed_list['Name'[k]] + ".csv",'wb') wr=csv.writer(myfile,quoting=csv.QUOTE_ALL)
The first part of the code gives me a very nice table which means I am opening my csv data file and import the information, my question is this:
So I am trying to do this in pseudo code:
For node is nodes (4 nodes so far) For index in indexes data_url = websiteinfo + Id + sampleinformation smalldata.read.csv(data_url) merge(bigdata, smalldata.no_time_column)
This is my first post here, I tried to keep it short but still supply the relevant data. Let me know if I need to clarify anything.