6,306 reputation
1036
bio website
location New York, NY
age 28
visits member for 3 years, 6 months
seen 13 mins ago

I'm fascinated by all of the problems surrounding any kind of data analysis. Anything down to writing C to speed up loops all the way up to visualizing multidimensional data sets, I love to find and squash bugs and I love to build tools that help people wrangle their data into a useful form. I also have a strong interest in statistical problems in neurophysiology, which is where I discovered my love of programming and data analysis tooling.


5h
comment Pandas join on 2 columns
What dialect of SQL is this?
5h
answered Filtering duplicates from pandas dataframe with preference based on additional column
Jul
11
awarded  Enlightened
Jul
11
awarded  Nice Answer
Jul
2
awarded  Curious
Jun
25
awarded  Announcer
Jun
17
awarded  python
Jun
11
comment Replicating GROUP_CONCAT for pandas.DataFrame
You could try df.groupby('team').apply(lambda x: list(x.user)).to_pickle('pickle.pkl').
Jun
10
awarded  Notable Question
Jun
7
revised Python Pandas Cleaning columns with multiple dates
namespace it
Jun
7
comment Python Pandas Cleaning columns with multiple dates
What's the purpose of the x column?
Jun
7
answered Python Pandas Cleaning columns with multiple dates
Jun
7
comment Creating a pandas column with regex?
All of the columns here are object dtypes, which I doubt is what OP wanted. You can call convert_objects(convert_numeric=True) on the result to convert numbers, but that still won't convert date to datetime64[ns].
Jun
7
answered Creating a pandas column with regex?
Jun
5
comment pandas dataframe to latex table according to variable value
Can you give an example of your desired output (even if it's just a couple of rows).
Jun
4
answered add column with constant value to pandas dataframe
Jun
1
comment Unable to query a local variable in pandas 0.14.0
This is fixed by github.com/pydata/pandas/commit/…
May
26
comment Speedup virtualenv creation with numpy and pandas
We install from sources so that we can test against multiple versions of numpy and other libs. It was the easiest way for us to speed up our CI iterations without depending on the package manager (even though we ended up installing lapack that way, I'm not sure if Ubuntu tracks multiple versions of numpy et al.). We only build from sources once, so that we can reuse the packages via wheels.
May
21
comment Pandas performance: Multiple dtypes in one column or split into different dtypes?
That doesn't mean the total number of bytes is the same, object pointers are the same size as float64 on a 64 bit system
May
21
comment Pandas performance: Multiple dtypes in one column or split into different dtypes?
If you're using nbytes you won't see a difference in the value because object float64 and int64 nbytes per element is the same. Do you mean taking up the Same amount of disk space?