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(Assignment 2 - V1 Parallelization)
(Assignment 2 - V1 Parallelization)
 
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== Assignment 2 - V1 Parallelization==
 
== Assignment 2 - V1 Parallelization==
 +
 +
Output result(converted to PNG formate):
 +
 
[[File:GpuassOutput.PNG]]
 
[[File:GpuassOutput.PNG]]
 +
 +
Run time graph:
  
 
[[File:Pygpu2.PNG]]
 
[[File:Pygpu2.PNG]]
  
 
CPU code:
 
CPU code:
 +
 +
The most expensive part in the program.
 +
 
     for (int y = 0; y < N; ++y) {
 
     for (int y = 0; y < N; ++y) {
 
         for (int x = 0; x < N; ++x) {
 
         for (int x = 0; x < N; ++x) {
Line 448: Line 456:
 
     }
 
     }
  
GPU
+
Main code on .cu:
 +
 
 +
1. Allocate memory on device.
 +
 
 +
2. run kunal. ntpb = 1024.
 +
 
 +
3. copy the key data out.
 +
 
 
     int size = N * N;
 
     int size = N * N;
 
     int nblocks = (size + ntpb - 1) / ntpb;
 
     int nblocks = (size + ntpb - 1) / ntpb;
Line 466: Line 481:
  
  
Kernel
+
Kernel:
 +
 
 +
before:
 +
    for (int y = 0; y < N; ++y)
 +
        for (int x = 0; x < N; ++x)
 +
after:
 +
    int idx = blockIdx.x * blockDim.x + threadIdx.x;
 +
    int x = idx / N;
 +
    int y = idx % N;
  
 
   __global__ void kernel_tray(Vec3 pix_col, int N, int* pixs_x, int* pixs_y, int* pixs_z) {
 
   __global__ void kernel_tray(Vec3 pix_col, int N, int* pixs_x, int* pixs_y, int* pixs_z) {
Line 493: Line 516:
 
     pixs_z[y * N + x] = (int)pix_col.z;
 
     pixs_z[y * N + x] = (int)pix_col.z;
 
   }
 
   }
 +
 +
Profile on nvvp:
 +
[[File:matrix.senecac.on.ca/~zzha1/Capture.PNG]]
  
 
== Assignment 3 - Optimization ==
 
== Assignment 3 - Optimization ==
Line 586: Line 612:
 
'''What problems does it solve?''' <br />
 
'''What problems does it solve?''' <br />
 
   1. Using too many registers
 
   1. Using too many registers
     To get 100%, we have to use less than 32 registers. If we change it from double to float, it reduces from 42 to 29.
+
     To get 100%, we have to use less than 32 registers. If we change it from double to float, it reduces from 44 to 29.
  
  
Line 595: Line 621:
 
[[File:pyfloat.PNG]]
 
[[File:pyfloat.PNG]]
  
==references==
+
==Links==
https://www.youtube.com/watch?v=ARn_yhgk7aE
+
  Referances: https://www.youtube.com/watch?v=ARn_yhgk7aE
 +
 
 +
  PPT: https://docs.google.com/presentation/d/10Cr_zIDUultkQLzdyC3_3B-GKO_bl6RJFHpWNg72tRk/edit#slide=id.g20678afd80_0_1313

Latest revision as of 04:50, 13 April 2017

Ray Tracing

Team Member

  1. Kevin Pham
  2. Jay Zha
  3. Peiying Yang
eMail All

Progress

Assignment 1 - FileCompressor

FileCompressor

Environment:
System: Windows 10
CPU: i5-6400 2.70GHz
RAM: 8GB 2444Hz
Video card: NVIDIA GTX 1060 3GB


The size of file before compressing is 128MB After:65.2MB (Depend on the file)
Ab.PNG


Here is the major code to compress a file :

Code.PNG
The following image shows that the CompressCore function takes 99.55% of the time to compress a 128MB file.
Percentage.PNG


As the size of file increase, the time that this program spend on compressing a file will increase.
Record.PNG



Assignment 1 Ray Tracing v2

Environment:
System: Windows 10
CPU: i5-6400 2.70GHz
RAM: 8GB 2444Hz
Video card: NVIDIA GTX 1060 3GB


Output:


GpuassOutput.PNG


Pycpu.PNG
Here is the code to calculate each pixel. It is good to use GPU to calculate them because each pixel is independent.

   for (int y = 0; y < N; ++y) {
       for (int x = 0; x < N; ++x) {
           pix_col = black;
           const Ray ray(Vec3(x, y, 0), Vec3(0, 0, 1));
           if (sphere.intersect(ray, t)) {
               const Vec3 pi = ray.o + ray.d*t;
               const Vec3 L = light.c - pi;
               const Vec3 N = sphere.getNormal(pi);
               const double dt = dot(L.normalize(), N.normalize());
               pix_col = (red + white*dt) * 0.5;
               clamp255(pix_col);
           }
           pixs[3 * (y * N + x)] = (int)pix_col.x;
           pixs[3 * (y * N + x) + 1] = (int)pix_col.y;
           pixs[3 * (y * N + x) + 2] = (int)pix_col.z;
       }
   }




Assignment 1 Ray Tracing

Environment:
System: Windows 10
CPU: i7-6700HQ 2.60GHz
RAM: 16GB 21337Hz
Video card: NVIDIA GTX 1060 6GB


Program: raytracing.cpp from scratchpixel.com tutorial on basic raytracing. website along with source code location: [1]


Compilation

Unix -

      g++ -O2 -o raytrace raytracer.cpp
      raytrace

OSX -

      clang++ -O2 -o raytrace raytracer.cpp
      raytrace

From the compilation it creates this ppm file

Raytrace.jpg


Running the Flat Profile: gprof -p -b raytrace > raytrace.flt

gives us this :

Flat profile:

Each sample counts as 0.01 seconds.

 %   cumulative   self              self     total           
time   seconds   seconds    calls  us/call  us/call  name    
87.76      0.43     0.43   307200     1.40     1.40  trace(Vec3<float> const&, Vec3<float> const&, std::vector<Sphere, std::allocator<Sphere> > const&, int const&)
12.24      0.49     0.06                             render(std::vector<Sphere, std::allocator<Sphere> > const&)
 0.00      0.49     0.00        4     0.00     0.00  std::vector<Sphere, std::allocator<Sphere> >::_M_insert_aux(__gnu_cxx::__normal_iterator<Sphere*, std::vector<Sphere, std::allocator<Sphere> > >, Sphere const&)
 0.00      0.49     0.00        1     0.00     0.00  _GLOBAL__sub_I__Z3mixRKfS0_S0_

Observation:

From looking at the result of the flat profile we can see that the trace and the render functions take the most time to run.


Running the call graph: gprof -q -b raytrace > raytrace.clg

Raytracecallgraph.JPG

Observation: From looking at both the flat profile and the call graph we can see that both the trace and the render functions are the hot spots of the program.


Possible Parallelizations:

When looking at both the Trace Function and the render function.

Render Function :

void render(const std::vector<Sphere> &spheres) {

   unsigned width = 640, height = 480;
   Vec3f *image = new Vec3f[width * height], *pixel = image;
   float invWidth = 1 / float(width), invHeight = 1 / float(height);
   float fov = 30, aspectratio = width / float(height);
   float angle = tan(M_PI * 0.5 * fov / 180.);
   // Trace rays
   for (unsigned y = 0; y < height; ++y) {    Possible Parallelization  spot
       for (unsigned x = 0; x < width; ++x, ++pixel) {
           float xx = (2 * ((x + 0.5) * invWidth) - 1) * angle * aspectratio;
           float yy = (1 - 2 * ((y + 0.5) * invHeight)) * angle;
           Vec3f raydir(xx, yy, -1);
           raydir.normalize();
           *pixel = trace(Vec3f(0), raydir, spheres, 0);
       }
   }
   // Save result to a PPM image (keep these flags if you compile under Windows)
   std::ofstream ofs("./untitled.ppm", std::ios::out | std::ios::binary);
   ofs << "P6\n" << width << " " << height << "\n255\n";
   for (unsigned i = 0; i < width * height; ++i) {
       ofs << (unsigned char)(std::min(float(1), image[i].x) * 255) <<
              (unsigned char)(std::min(float(1), image[i].y) * 255) <<
              (unsigned char)(std::min(float(1), image[i].z) * 255);
   }
   ofs.close();
   delete [] image;

}

In the render function it has a runtime speed of T(n) = o^2.


Trace Function:

Vec3f trace(

   const Vec3f &rayorig,
   const Vec3f &raydir,
   const std::vector<Sphere> &spheres,
   const int &depth)

{

   //if (raydir.length() != 1) std::cerr << "Error " << raydir << std::endl;
   float tnear = INFINITY;
   const Sphere* sphere = NULL;
   // find intersection of this ray with the sphere in the scene
   for (unsigned i = 0; i < spheres.size(); ++i) {
       float t0 = INFINITY, t1 = INFINITY;
       if (spheres[i].intersect(rayorig, raydir, t0, t1)) {
           if (t0 < 0) t0 = t1;
           if (t0 < tnear) {
               tnear = t0;
               sphere = &spheres[i];
           }
       }
   }
   // if there's no intersection return black or background color
   if (!sphere) return Vec3f(2);
   Vec3f surfaceColor = 0; // color of the ray/surfaceof the object intersected by the ray
   Vec3f phit = rayorig + raydir * tnear; // point of intersection
   Vec3f nhit = phit - sphere->center; // normal at the intersection point
   nhit.normalize(); // normalize normal direction
   // If the normal and the view direction are not opposite to each other
   // reverse the normal direction. That also means we are inside the sphere so set
   // the inside bool to true. Finally reverse the sign of IdotN which we want
   // positive.
   float bias = 1e-4; // add some bias to the point from which we will be tracing
   bool inside = false;
   if (raydir.dot(nhit) > 0) nhit = -nhit, inside = true;
   if ((sphere->transparency > 0 || sphere->reflection > 0) && depth < MAX_RAY_DEPTH) {
       float facingratio = -raydir.dot(nhit);
       // change the mix value to tweak the effect
       float fresneleffect = mix(pow(1 - facingratio, 3), 1, 0.1);
       // compute reflection direction (not need to normalize because all vectors
       // are already normalized)
       Vec3f refldir = raydir - nhit * 2 * raydir.dot(nhit);
       refldir.normalize();
       Vec3f reflection = trace(phit + nhit * bias, refldir, spheres, depth + 1);
       Vec3f refraction = 0;
       // if the sphere is also transparent compute refraction ray (transmission)
       if (sphere->transparency) {
           float ior = 1.1, eta = (inside) ? ior : 1 / ior; // are we inside or outside the surface?
           float cosi = -nhit.dot(raydir);
           float k = 1 - eta * eta * (1 - cosi * cosi);
           Vec3f refrdir = raydir * eta + nhit * (eta *  cosi - sqrt(k));
           refrdir.normalize();
           refraction = trace(phit - nhit * bias, refrdir, spheres, depth + 1);
       }
       // the result is a mix of reflection and refraction (if the sphere is transparent)
       surfaceColor = (
           reflection * fresneleffect +
           refraction * (1 - fresneleffect) * sphere->transparency) * sphere->surfaceColor;
   }
   else {
       // it's a diffuse object, no need to raytrace any further
       for (unsigned i = 0; i < spheres.size(); ++i) {
           if (spheres[i].emissionColor.x > 0) {
               // this is a light
               Vec3f transmission = 1;
               Vec3f lightDirection = spheres[i].center - phit;
               lightDirection.normalize();
               for (unsigned j = 0; j < spheres.size(); ++j) {
                   if (i != j) {
                       float t0, t1;
                       if (spheres[j].intersect(phit + nhit * bias, lightDirection, t0, t1)) {
                           transmission = 0;
                           break;
                       }
                   }
               }
               surfaceColor += sphere->surfaceColor * transmission *
               std::max(float(0), nhit.dot(lightDirection)) * spheres[i].emissionColor;
           }
       }
   }
   
   return surfaceColor + sphere->emissionColor;

}


Within this trace function the possible parallelization points would be here :

{

  for (unsigned i = 0; i < spheres.size(); ++i) {
       float t0 = INFINITY, t1 = INFINITY;
       if (spheres[i].intersect(rayorig, raydir, t0, t1)) {
           if (t0 < 0) t0 = t1;
           if (t0 < tnear) {
               tnear = t0;
               sphere = &spheres[i];
           }
       }
   }

} {

   else {
       // it's a diffuse object, no need to raytrace any further
       for (unsigned i = 0; i < spheres.size(); ++i) {
           if (spheres[i].emissionColor.x > 0) {
               // this is a light
               Vec3f transmission = 1;
               Vec3f lightDirection = spheres[i].center - phit;
               lightDirection.normalize();
               for (unsigned j = 0; j < spheres.size(); ++j) {
                   if (i != j) {
                       float t0, t1;
                       if (spheres[j].intersect(phit + nhit * bias, lightDirection, t0, t1)) {
                           transmission = 0;
                           break;
                       }
                   }
               }
               surfaceColor += sphere->surfaceColor * transmission *
               std::max(float(0), nhit.dot(lightDirection)) * spheres[i].emissionColor;
           }
       }
   }
   
   return surfaceColor + sphere->emissionColor;

}

In this function it has a runtime speed of T(n) = O^2.

Presentation

What is Ray Tracing?

Ray tracing is the technique of generating an image by tracing the paths light would travel through pixels in an image plane and simulating the effects it encounters with virtual objects.

Ray trace diagram.svg.png

Code

   struct Vec3 {
       double x, y, z;
       Vec3(double x, double y, double z) : x(x), y(y), z(z) {}
       Vec3 operator + (const Vec3& v) const { return Vec3(x + v.x, y + v.y, z + v.z); }
       Vec3 operator - (const Vec3& v) const { return Vec3(x - v.x, y - v.y, z - v.z); }
       Vec3 operator * (double d) const { return Vec3(x*d, y*d, z*d); }
       Vec3 operator / (double d) const { return Vec3(x / d, y / d, z / d); }
       Vec3 normalize() const {
               double mg = sqrt(x*x + y*y + z*z);
               return Vec3(x / mg, y / mg, z / mg);
       }
   };
      inline double dot(const Vec3& a, const Vec3& b) {
       return (a.x*b.x + a.y*b.y + a.z*b.z);
   }
   struct Ray {
        Vec3 o, d;
        Ray(const Vec3& o, const Vec3& d) : o(o), d(d) {}
   };
   struct Sphere {
       Vec3 c;
       double r;
       Sphere(const Vec3& c, double r) : c(c), r(r) {}
       Vec3 getNormal(const Vec3& pi) const { return (pi - c) / r; }
       bool intersect(const Ray& ray, double &t) const {
               const Vec3 o = ray.o;
               const Vec3 d = ray.d;
               const Vec3 oc = o - c;
               const double b = 2 * dot(oc, d);
               const double c = dot(oc, oc) - r*r;
               double disc = b*b - 4 * c;
               if (disc < 1e-4) return false;
               disc = sqrt(disc);
               const double t0 = -b - disc;
               const double t1 = -b + disc;
               t = (t0 < t1) ? t0 : t1;
               return true;
       }
   };
  int main() {
      steady_clock::time_point ts, te,tm;
      ts = steady_clock::now();
       const int N = 500;
       const Vec3 white(255, 255, 255);
       const Vec3 black(0, 0, 0);
       const Vec3 red(0, 255, 0);
       const Sphere sphere(Vec3(N*0.5, N*0.5, 50), 50);
       const Sphere light(Vec3(0, 0, 50), 1);
       std::ofstream out("out.ppm");
       out << "P3\n" << N << ' ' << N << ' ' << "255\n";
       double t;
       Vec3 pix_col(black);
       int* pixs = new int[N * N * 3];
       for (int y = 0; y < N; ++y) {
               for (int x = 0; x < N; ++x) {
                   pix_col = black;
                   const Ray ray(Vec3(x, y, 0), Vec3(0, 0, 1));
                   if (sphere.intersect(ray, t)) {
                           const Vec3 pi = ray.o + ray.d*t;
                           const Vec3 L = light.c - pi;
                           const Vec3 N = sphere.getNormal(pi);
                           const double dt = dot(L.normalize(), N.normalize());
                           pix_col = (red + white*dt) * 0.5;
                           clamp255(pix_col);
                   }
                   pixs[3 * (y * N + x)] = (int)pix_col.x;
                   pixs[3 * (y * N + x) + 1] = (int)pix_col.y;
                   pixs[3 * (y * N + x) + 2] = (int)pix_col.z;
               }
       }
       te = steady_clock::now();
       reportTime("matrix-matrix multiplication", te - ts);
       for (int y = 0; y < N; ++y) {
           for (int x = 0; x < N; ++x) {
               out << pixs[3 * (y * N + x)] << ' '
                   << pixs[3 * (y * N + x) + 1] << ' '
                   << pixs[3 * (y * N + x) + 2] << '\n';
               }
       }
       tm = steady_clock::now();
       reportTime("matrix-matrix multiplication", tm - ts);
       delete[] pixs;
   }

Points of possible Parallelization

   for (int y = 0; y < N; ++y) {
               for (int x = 0; x < N; ++x) {
                       pix_col = black;
                       const Ray ray(Vec3(x, y, 0), Vec3(0, 0, 1));
                       if (sphere.intersect(ray, t)) {
                               const Vec3 pi = ray.o + ray.d*t;
                               const Vec3 L = light.c - pi;
                               const Vec3 N = sphere.getNormal(pi);
                               const double dt = dot(L.normalize(), N.normalize());
                               pix_col = (red + white*dt) * 0.5;
                               clamp255(pix_col);
                       }
                       pixs[3 * (y * N + x)] = (int)pix_col.x;
                       pixs[3 * (y * N + x) + 1] = (int)pix_col.y;
                       pixs[3 * (y * N + x) + 2] = (int)pix_col.z;
               }
   }

Graph

GraphDPS915kevin.JPG


Assignment 2 - V1 Parallelization

Output result(converted to PNG formate):

GpuassOutput.PNG

Run time graph:

Pygpu2.PNG

CPU code:

The most expensive part in the program.

   for (int y = 0; y < N; ++y) {
       for (int x = 0; x < N; ++x) {
           pix_col = black;
           const Ray ray(Vec3(x, y, 0), Vec3(0, 0, 1));
           if (sphere.intersect(ray, t)) {
               const Vec3 pi = ray.o + ray.d*t;
               const Vec3 L = light.c - pi;
               const Vec3 N = sphere.getNormal(pi);
               const double dt = dot(L.normalize(), N.normalize());
               pix_col = (red + white*dt) * 0.5;
               clamp255(pix_col);
           }
           //Store RGB to array
           pixs[3 * (y * N + x)] = (int)pix_col.x;      
           pixs[3 * (y * N + x) + 1] = (int)pix_col.y;
           pixs[3 * (y * N + x) + 2] = (int)pix_col.z;
       }
   }

Main code on .cu:

1. Allocate memory on device.

2. run kunal. ntpb = 1024.

3. copy the key data out.

   int size = N * N;
   int nblocks = (size + ntpb - 1) / ntpb;
   int* h_pixs_x = new int[N * N];
   int* h_pixs_y = new int[N * N];
   int* h_pixs_z = new int[N * N];
   int* d_pixs_x;
   int* d_pixs_y;
   int* d_pixs_z;
   cudaMalloc((void**)&d_pixs_x, N * N * sizeof(int));
   cudaMalloc((void**)&d_pixs_y, N * N * sizeof(int));
   cudaMalloc((void**)&d_pixs_z, N * N * sizeof(int));
   kernel_tray << <nblocks, ntpb >> >(pix_col, N, d_pixs_x, d_pixs_y, d_pixs_z);
   cudaMemcpy(h_pixs_x, d_pixs_x, N * N * sizeof(int), cudaMemcpyDeviceToHost);
   cudaMemcpy(h_pixs_y, d_pixs_y, N * N * sizeof(int), cudaMemcpyDeviceToHost);
   cudaMemcpy(h_pixs_z, d_pixs_z, N * N * sizeof(int), cudaMemcpyDeviceToHost);


Kernel:

before:

   for (int y = 0; y < N; ++y)
       for (int x = 0; x < N; ++x)

after:

   int idx = blockIdx.x * blockDim.x + threadIdx.x;
   int x = idx / N;
   int y = idx % N;
 __global__ void kernel_tray(Vec3 pix_col, int N, int* pixs_x, int* pixs_y, int* pixs_z) {
   int idx = blockIdx.x * blockDim.x + threadIdx.x;
   int x = idx / N;
   int y = idx % N;
   const Vec3 white(255, 255, 255);
   const Vec3 black(0, 0, 0);
   const Vec3 red(255, 0, 0);
   const Sphere sphere(Vec3(N*0.5, N*0.5, 50), 50);
   const Sphere light(Vec3(0, 0, 50), 1);
   double t;
   pix_col = black;
   const Ray ray(Vec3(x, y, 0), Vec3(0, 0, 1));
   if (sphere.intersect(ray, t)) {
       const Vec3 pi = ray.o + ray.d*t;
       const Vec3 L = light.c - pi;
       const Vec3 N = sphere.getNormal(pi);
       const double dt = dot(L.normalize(), N.normalize());
       pix_col = (red + white*dt) * 0.5;
       clamp255(pix_col);
   }
   //Store RGB to arrays
   pixs_x[y * N + x] = (int)pix_col.x;
   pixs_y[y * N + x] = (int)pix_col.y;
   pixs_z[y * N + x] = (int)pix_col.z;
 }

Profile on nvvp: File:Matrix.senecac.on.ca/~zzha1/Capture.PNG

Assignment 3 - Optimization

V2 -- One array

PPM file output:
Txt.PNG
We allocate three arrays to store the all the results. Each pixel stores in 3 arrys, and it is slow. Instead of 3 arrays, we allocate a bigger array and store all the pixels in this array. For the first pixel.

 1st:  R _ _ _ _ _ _ _
 2nd:  G _ _ _ _ _ _ _
 3rd:  B _ _ _ _ _ _ _
 new array: R G B _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _

Before

  int* d_pixs_x;
  int* d_pixs_y;
  int* d_pixs_z;
  cudaMalloc((void**)&d_pixs_x, N * N * sizeof(int));
  cudaMalloc((void**)&d_pixs_y, N * N * sizeof(int));
  cudaMalloc((void**)&d_pixs_z, N * N * sizeof(int));
  kernel_tray << <nblocks, ntpb >> >(pix_col, N, d_pixs_x, d_pixs_y, d_pixs_z);
  cudaMemcpy(h_pixs_x, d_pixs_x, N * N * sizeof(int), cudaMemcpyDeviceToHost);
  cudaMemcpy(h_pixs_y, d_pixs_y, N * N * sizeof(int), cudaMemcpyDeviceToHost);
  cudaMemcpy(h_pixs_z, d_pixs_z, N * N * sizeof(int), cudaMemcpyDeviceToHost);

After

  int* d_pixs;
  cudaMalloc((void**)&d_pixs, N * N * 3 * sizeof(int));
  kernel_tray << <nblocks, ntpb >> >(pix_col, N, d_pixs);
  cudaMemcpy(h_pixs, d_pixs, N * N * 3 * sizeof(int), cudaMemcpyDeviceToHost);


Pyonearray.PNG


V3 -- Occupancy

If we use 1024 threads, we only get 50%. However, if we change it to 640, we can get 60%.
before:

 const int ntpb = 1024;

After:

 const int ntpb = 640;

Pyoccu.PNG





Pythreads640.PNG


V4 -- Coalescence

Before this modification, here is our array.

 R1 G1 B1 _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ R2 G2 B2 _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _

After we modify switch the x and y.

 R1 G1 B1 R1 G1 B1 _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _ _


Before

 int idx = blockIdx.x * blockDim.x + threadIdx.x;
 int x = idx / N;
 int y = idx % N;

After

 int idx = blockIdx.x * blockDim.x + threadIdx.x;
 int y = idx / N;
 int x = idx % N;


PyCoalescence.PNG


V5 -- Double -> float

 struct Vec3 {
 double x, y, z;
 __host__ __device__ Vec3(double x, double y, double z) : x(x), y(y), z(z) {}
 __host__ __device__ Vec3 operator + (const Vec3& v) const { return Vec3(x + v.x, y + v.y, z + v.z); }
 __host__ __device__ Vec3 operator - (const Vec3& v) const { return Vec3(x - v.x, y - v.y, z - v.z); }
 __host__ __device__ Vec3 operator * (double d) const { return Vec3(x*d, y*d, z*d); }
 __host__ __device__ Vec3 operator / (double d) const { return Vec3(x / d, y / d, z / d); }
 __host__ __device__
   Vec3 normalize() const {
   double mg = sqrt(x*x + y*y + z*z);
   return Vec3(x / mg, y / mg, z / mg);
 }
 };

What problems does it solve?

 1. Using too many registers
    To get 100%, we have to use less than 32 registers. If we change it from double to float, it reduces from 44 to 29.


Pyoccu2.PNG

 2. Calculating in double is very slow on Geforce device.
    

Pyfloat.PNG

Links

 Referances: https://www.youtube.com/watch?v=ARn_yhgk7aE
 PPT: https://docs.google.com/presentation/d/10Cr_zIDUultkQLzdyC3_3B-GKO_bl6RJFHpWNg72tRk/edit#slide=id.g20678afd80_0_1313