Akshat Mahajan

JavaScript

Topic: Anything JavaScript, ECMAScript including Node, React, ...
May 17, 2017 18:48
@rlemon Thanks!
May 17, 2017 18:47
@KevinB Not anymore, since we want to be able to make them importable server-side.
May 17, 2017 18:46
@KevinB On the server? The IIFEs look like this: (function(w){...}(window)). Trying that approach throws 'window is not defined`.
May 17, 2017 18:44
Note that it's going to be impossible for me to rewrite the loader scripts, either - too short a timeframe + would have to ensure compatibility with old application.
May 17, 2017 18:42
Hey, guys. I'm trying to port over an application that was written back in the good-ol'-days when we didn't have AMD/CommonJS to using ES6 modules, and am trying to figure out a way to bundle multiple IIFEs acting on the window object / jQuery prototype into something I could import anywhere else as a bundled module. I figure it should be a common enough problem that there might be an existing npm module or something, but I can't find anything like it.

Right now, the application works with a series of script tags following each other in a server-side rendered page - the first few (call the
 
Apr 4, 2016 01:55
One thing I can also do on my end is try and work with the data you have. If you could upload a CSV or similar containing only a sample (maybe five rows or so) of what you have that I could read into a dataframe, I can try and figure out whether this really is because of a difference in Spark versions.
Apr 4, 2016 01:25
No problem. Anytime! Have a fun run.
Apr 4, 2016 01:25
Worst comes to worst, you can ask this as a separate SO question or even [open an issue] with the PySpark team(cwiki.apache.org/confluence/display/SPARK/…). This problem is very specific
Apr 4, 2016 01:21
Hmm. This is very bizarre. Maybe you could try upgrading your Spark version? I'm using Spark 1.6.0, and this problem isn't happening to me.
Apr 4, 2016 01:20
*dropna
Apr 4, 2016 01:20
Yes, exactly - only one record in your dataframe has exactly three non-null values. So drpona will keep that, and throw outthe rest.
Apr 4, 2016 01:18
You could try the other dropna options. df.dropna(has='any')?
Apr 4, 2016 01:18
In other words, if you did thresh = 1, all the records would be kept, because every record has at least one non-null value.
Apr 4, 2016 01:17
Ah, okay. In that case, dropna with thresh actually won't work. thresh specifies how many _non-null column you have to have.
Apr 4, 2016 01:08
Hmm. That is really interesting - it should work then. Not quite sure how to improve upon it, I'm afraid. I strongly suspect this is because of the form of your dataframe, though - other dataframes I tried it on all appear to work correctly.
Apr 4, 2016 01:07
@AlexWoolford: So I tried to recreate your actual dataframe using the snapshot you posted above from collect(), and keep being told that 'some types cannot be determined after inferring' when trying to convert a list of Rows to dataframe. Could the issue be simply that the types are not well-defined in your dataframe?
Apr 4, 2016 01:07
I mention this because I can reproduce how dropna should work with a simpler dataset: d = [{'name': 'Alice', 'age': 1,'he':23}, {'name':'Abs','age':2,'he':None}, {'name':None, 'age': None, 'he': 2},{k: None for k in ['name','age','he']}].
Apr 4, 2016 01:07
@AlexWoolford I've been trying to replicate what you're going through, and I concur - dropna does work a bit unexpectedly. I've found though that it does work for unintuitive values of thresh - what test numbers did you try for it?
Apr 4, 2016 01:07
It appears thresh indicates at least how many columns must be non-null. If I have three rows, of which exactly one has two non-null columns, then the only way to get rid of it is to set thresh=3.