# Tag Info

9

actually, there's a way now. In highchars 3.0 series added a new api, called update: chart.series[0].update({name:"name u want to change"}, false); chart.redraw(); it will not only update the series name below the chart, but the name in tooltip as well. Cheers!

9

I think concat is a nice way to do this. If they are present it uses the name attributes of the Series as the columns (otherwise it simply numbers them): In [1]: s1 = pd.Series([1, 2], index=['A', 'B'], name='s1') In [2]: s2 = pd.Series([3, 4], index=['A', 'B'], name='s2') In [3]: pd.concat([s1, s2], axis=1) Out[3]: s1 s2 A 1 3 B 2 4 In [4]: ...

6

you can use tools such as cloudPlot and plot(Big) from the FEX. cloudPlot will help visualize the distribution of a 2-dimensional dataset. It is especially helpful when looking at extremely large datasets where a regular plot(x,y,'.') will just fill the plot with a solid color because the measurement points overlap each other. plot(Big) intercepts data ...

6

You can pretty straightforwardly do this kind of thing with a combination of Stream.iterate and scanLeft: def factorial(n: BigInt): BigInt = (BigInt(1) to n).reduceLeft(_ * _) def factorials = Stream.iterate(BigInt(1))(_ + 1).map(factorial) def values = factorials.scanLeft(BigDecimal(0))(_ + 1 / BigDecimal(_)) And then: scala> ...

5

This works if you have a MultiIndex rather than an index of tuples: In [11]: s.index = pd.MultiIndex.from_tuples(s.index) In [12]: s Out[12]: 0 0 1 1 2 3 3 1 0 1 2 4 3 0 5 dtype: int64 In [13]: s[:(1,1)] Out[13]: 0 0 1 1 2 3 3 1 0 1 dtype: int64 In a previous edit I had suggested this could be a bug, ...

5

I think you are looking for numpy.where: np.where(s1<s2, np.arcsin(s3), np.arccos(s3)) For 1D inputs, where(condition, [x, y]) is equivalent to [xv if c else yv for (c,xv,yv) in zip(condition,x,y)]

5

Generally, what affects the accuracy of routines to perform sine, logarithm, and so on is which version of the routine you call. A good math library has separate routines for single-precision sine (C’s sinf function), double-precision sine (C’s sin), and long-double sine (C’s sinl). In C, you usually call these versions explicitly, by writing calls to sinf, ...

5

Because the variable y is int, so storing the return value of pow() in it truncates. Read the manual page for pow(). Please check how you enable all warnings in your compiler, and look at the compiler output.

4

Suppose you have this DataFrame: import io import pandas as pd text = '''\ sample_date metric_name sample 2012-10-03 21:30:18.742307+00:00 linkedin_profile 257 2012-10-03 21:30:25.132189+00:00 twitter_profile 972 2012-10-03 21:30:26.063389+00:00 youtube_video 10393 2012-10-03 21:30:26.178347+00:00 ...

4

You don't need a loop, but a simple series of integers against which you can JOIN. Table of integers In SQL, a table of integers is often used for this. E.g., CREATE TABLE UTIL\$KILO (i INTEGER NOT NULL); -- one thousand integers, 0 – 999 INSERT INTO UTIL\$KILO (i) VALUES (0); INSERT INTO UTIL\$KILO (i) VALUES (1); ... INSERT INTO UTIL\$KILO (i) VALUES ...

4

>>> s = pd.Series([1,2,3,4,np.NaN,5,np.NaN]) >>> s[~s.isnull()] 0 1 1 2 2 3 3 4 5 5 update or even better approach as @DSM suggested in comments, using pandas.Series.dropna(): >>> s.dropna() 0 1 1 2 2 3 3 4 5 5

4

Convert appended item to Series: >>> ds = pd.Series([1,2,3,4,5]) >>> ds.append(pd.Series([6])) 0 1 1 2 2 3 3 4 4 5 0 6 dtype: int64 or use DataFrame: >>> df = pd.DataFrame(ds) >>> df.append([6], ignore_index=True) 0 0 1 1 2 2 3 3 4 4 5 5 6 and last option if your index is without gaps, ...

3

Pandas will automatically align these passed in series and create the joint index They happen to be the same here. reset_index moves the index to a column. In [2]: s1 = Series(randn(5),index=[1,2,4,5,6]) In [4]: s2 = Series(randn(5),index=[1,2,4,5,6]) In [8]: DataFrame(dict(s1 = s1, s2 = s2)).reset_index() Out[8]: index s1 s2 0 1 ...

3

Place both series in the python set container. See documentation: http://docs.python.org/2/library/sets.html then use the set intersection method. s1.intersection(s2) and then transform back to list if needed. Just noticed pandas in the tag. Can translate back to that. pd.Series(list(set(s1).intersection(set(s2)))) should to the trick, except ...

3

You can use concat: In [11]: s1 Out[11]: id 1 3 3 19 4 15 5 5 6 2 Name: count_1, dtype: int64 In [12]: s2 Out[12]: id 1 3 3 1 4 1 5 2 6 1 Name: count_2, dtype: int64 In [13]: pd.concat([s1, s2], axis=1) Out[13]: count_1 count_2 id 1 3 3 3 19 1 4 15 1 5 5 ...

3

This looks like a "bug" in numpy; see here. It doesn't raise when there's overflow. Here are some examples: In [26]: prod(poisson(10, size=30)) Out[26]: -2043494819862020096 In [46]: prod(randn(10000)) Out[46]: 0.0 You'll have to use the long (Python 2) or int (Python 3) type and reduce it using reduce/functools.reduce: import operator from functools ...

3

You can use the pandas library. In the case of your data you can get the max as: import pandas as pd # Read in the data and parse the first two columns as a # date-time and set it as index df = pd.read_csv('your_file', parse_dates=[[0,1]], index_col=0, header=None) # get only the fifth column (close) df = df[[5]] # Resample to date frequency and get the max ...

3

You can do it using the relativedelta function from the dateutil library. from dateutil.relativedelta import relativedelta start = df.index[0] def func(item): delta = relativedelta(item, start) return (delta.years, delta.months, delta.days) >>>> pd.DataFrame(list(df.index.map(func)), index=df.index, columns=['year', ...

3

This seems like a bug to me: In [1]: a = pd.Series([True, False, True], list('bca')) In [2]: b = pd.Series([False, True, False], list('abc')) In [3]: a & b Out[3]: b False c False a False dtype: bool One way to workaround is to reindex using the same index: In [4]: index = a.index | b.index In [5]: a.reindex(index) & b.reindex(index) ...

3

You can use the Series vectorised string methods, which includes lower: In [11]: df = pd.DataFrame([['A', 'B'], ['C', 4]], columns=['X', 'Y']) In [12]: df Out[12]: X Y 0 A B 1 C 4 In [13]: df.X.str.lower() Out[13]: 0 a 1 c Name: X, dtype: object In [14]: df.Y.str.lower() Out[14]: 0 b 1 NaN Name: Y, dtype: object

3

copy is defined as a helper to do a copy of the underlying arrays, and the function does not copy the index. See the source code: Definition: series.copy(self, order='C') Source: def copy(self, order='C'): """ Return new Series with copy of underlying values Returns ------- cp : Series """ return ...

3

The easy way would be to use the start of month days and subtract one. So, for instance: datevec(datenum(1993,2,1)-1); This would give you 1993 01 31. It is fairly simple to then do the same for each following month. e.g. datenum(1993,2:13,1)-1; would give you the end of month days for the whole of 1993. EDIT: As Luis pointed out, if you want the ...

2

Is this what you are trying to do? private static CategoryDataset createDataset() { // row keys... String series1 = "Municipality 1"; String series2 = "Municipality 2"; String series3 = "Municipality 3"; // column keys... String category1 = "Vendor 1"; String category2 = "Vendor 2"; String category3 = "Vendor 3"; ...

2

Here is the way I've found: df = pandas.read_csv('csvfile.txt', index_col=False, header=0); serie = df.ix[0,:] Seems like a bit stupid to me as Squeeze should already do this. Is this a bug or am I missing something? /EDIT: Best way to do it: df = pandas.read_csv('csvfile.txt', index_col=False, header=0); serie = df.transpose()[0] # here we convert the ...

2

I asked this question on Kendo forums and recieved the following answer. You'll need to keep a deep copy of the chart options before passing them in. This way you can recreate the chart with only your original options. var options = { ... }; \$("#chart").kendoChart( // No side effects on options \$.extend(true, {}, options) ); If you look at ...

2

Use numpy's universal functions. For your case, use numpy.arcsin instead of math.asin.

2

In [1]: import pandas as pd In [2]: s = pd.Series([1, 2, 3, np.NaN, np.NaN, 5, 6]) In [3]: s.isnull() Out[3]: 0 False 1 False 2 False 3 True 4 True 5 False 6 False dtype: bool In [4]: s[s.isnull()] Out[4]: 3 NaN 4 NaN dtype: float64 In [5]: s.index[s.isnull()] Out[5]: Int64Index([3, 4], dtype=int64)

2

Here's one way that you could accomplish that fairly efficiently: x = [1 1 1 0.5 0.4 0.2 -0.2 -0.3 1 1 0 1]; x1 = (x==1); d = diff(x1(:).'); start = find([x1(1) d]==1) len = find([d -x1(end)]==-1)-start+1 which returns start = 1 9 12 len = 3 2 1

2

You can change order by index parameter which can be set in serie. http://jsfiddle.net/KLttA/ series: [{ data: [29.9, 71.5, 106.4, 129.2, 144.0, 176.0, 135.6, 148.5, 216.4, 194.1, 95.6, 54.4], index:1 }, { data: [144.0, 176.0, 135.6, 148.5, 216.4, 194.1, 95.6, 54.4, 29.9, 71.5, 106.4, 129.2], index:0 }]

2

Add this line below your jqplot: \$(\$("#chartXXX .jqplot-table-legend").get(0)).hide(); Play around with the number inside get(), as I am not exactly sure how the number is mapped to the legend elements. This solution is much more elegant than changing the enhancedLegendRenderer code.

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