# Tag Info

0

You've shot yourself in the foot with your static fields. Change this: public static double im,re; to this: public double im,re; Or better: private double im,re; With appropriate getters and possibly setters if the class is mutable. Please note that static fields are fields of the class not the instance, and so every Matrix instance will hold the ...

1

id is a function to show the memory position of an object. All Python integers from -5 to 256 are cached in memory for reutilization (they are immutable objects anyway) so the first example you showed is expected to have the same id for both a and b. If you try with bigger integers, you will not have this result because generating ints will not cache ...

1

It seems I am one of the few people with the opinion that std::complex may, in some critical inner loops, be too slow, but in any case here are my two cents: A while ago I was writing a simple piece of code that evaluates a complex polynomial in three variables and performs some divisions. I noticed that, whenever I replace a complex division (more) or ...

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you can normalize your complex vector as norm = np.exp(1j*np.angle(z)) although it is slower but has advantage over z/abs(z) since if z is zero and you do above calculation you will get nan. even if you remove nan by 0 you will get 0 any way because normalized length can not be zero. If you use this 0 length normalized vector to set the phase of any ...

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you can do it in nice way.make a struct in your project like : public struct MyNumber { public MyNumber(double rPart1,double iPart1,double rPart2,double iPart2){//Set fields value} private double rPart1; private double iPart1; private double rPart2; private double iPart2; public double X { get { return rPart1 + rPart2 ; } } public ...

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You should use String.Format method: string result = String.Format ("{0} + {1}i", x, y) ;

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you need to write: sum = string.Format("{0} + {1}i", x, y); Btw. the .Net Framework 4.0 and onwards do have a complex number struct built in: Complex Numbers in .Net 4.0

3

Using #pragma simd (even with -Ofast) or relying on the compilers auto-vectorization are more example of why it's a bad idea to blindly expect your compiler to implement SIMD efficiently. In order to use SIMD efficiently for this you need to use an array of struct of arrays. For example for single float with a SIMD width of 4 you could use //struct of ...

4

If you are using a modern compiler (GCC 5, for example), you can use Cilk+, that will give you a nice array notation, automatically usage of SIMD instructions, and parallelisation. So, if you want to run them in parallel you would do: #include <cilk/cilk.h> cilk_for(int i = 0; i < N; i++) { b[i] = cabs(a[i]); } or if you want to test SIMD: ...

5

Use vector operations. If you have glibc 2.22 (pretty recent), you can use the SIMD capabilities of OpenMP 4.0 to operate on vectors/arrays. Libmvec is vector math library added in Glibc 2.22. Vector math library was added to support SIMD constructs of OpenMP4.0 (#2.8 in http://www.openmp.org/mp-documents/OpenMP4.0.0.pdf) by adding vector ...

2

Also, you can use std::future and std::async (they are part of C++11), maybe it's more clear way of achieving what you want to do: #include <future> ... int main() { ... // Create async calculations std::future<void> *futures = new std::future<void>[N]; for (int i = 0; i < N; ++i) { futures[i] = ...

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Or use Concurrency::parallele_for like that : Concurrency::parallel_for(0, N, [&a, &b](int i) { b[i] = cabs(a[i]); });

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Given that all loop iterations are independent, you can use the following code for parallelization: #pragma omp parallel for for(int i = 0; i < N; i++) { b[i] = cabs(a[i]); } Of course, for using this you should enable OpenMP support while compiling your code (usually by using /openmp flag or setting the project options). You can find several ...

1

Your problem is that in the following line: double haeff = (haint/3)(1+ 2 Math.cos((.33* (Math.acos((1 - ((27*M)))/(Math.pow(haint, 3))))))); ...the following operation: (1 - ((27*M)))/(Math.pow(haint, 3)) ...is probably returning negative numbers not in the range of [-1, +1] (I tested with small integers, and it returned -4) In return the ...

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It has to convert them to absolute values so with just applying np.abs at the matrix the problem solved!

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For convenience, one may include tgmath.h library for the type generate macros. It creates the same function name as the double version for all type of variable. For example, For example, it defines a sqrt() macro that expands to the sqrtf() , sqrt() , or sqrtl() function, depending on the type of argument provided. So one don't need to remember the ...

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Since this issue is still not resolved in pandas, let me add another solution. You could modify your DataFrame with a one-liner after reading it in: import pandas as pd df = pd.read_csv('data.csv') df = df.apply(lambda col: col.apply(lambda val: complex(val.strip('()'))))

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List.sum uses static member constraints. Static member constraints don't look into extensions methods so that's not an option. Wrapping the whole complex type is an option but it's overkill, if it is just a specific call you have many ways to compute the sum with a few more keystrokes, you can use a fold as shown on the other answer. Alternatively you can ...

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List.sum doesn't recognize a Zero defined as extension. It must be part of the type. Use List.fold instead: let sum = [c 1.0; c 2.0] |> List.fold (+) Complex.Zero BTW System.Numerics.Complex actually has a static Zero, but it's a field, not a property.

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