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Update cpp.md
Signed-off-by: Dennis Eichhorn <spl1nes.com@googlemail.com>
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@ -80,6 +80,54 @@ https://www.agner.org/optimize/instruction_tables.pdf
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### Cache locality
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Column wise traversal
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```c++
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void process_columns(int matrix[1000][1000]) {
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for (int col = 0; col < 1000; ++col) {
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for (int row = 0; row < 1000; ++row) {
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matrix[row][col] *= 2;
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}
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}
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}
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```
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Row wise traversal
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```c++
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void process_rows(int matrix[1000][1000]) {
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for (int row = 0; row < 1000; ++row) {
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for (int col = 0; col < 1000; ++col) {
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matrix[row][col] *= 2;
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}
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}
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}
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```
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### Data Padding
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Wasting 6 bytes
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```c++
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struct Data {
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char a;
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int b;
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char c;
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};
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```
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Wasting 2 bytes
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```c++
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struct Data {
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char a;
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char c;
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int b;
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};
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```
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### Cache line sharing between CPU cores
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### Cache line sharing between CPU cores
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When working with multi-threading you may choose to use atomic variables and atomic operations to reduce the locking in your application. You may think that a variable value `a[0]` used by thread 1 on core 1 and a variable value `a[1]` used by thread 2 on core 2 will have no performance impact. However, this is wrong. Core 1 and core 2 both have different L1 and L2 caches BUT the CPU doesn't just load individual variables, it loads entire cache lines (e.g. 64 bytes). This means that if you define `int a[2]`, it has a high chance of being on the same cache line and therfore thread 1 and thread 2 both have to wait on each other when doing atomic writes.
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When working with multi-threading you may choose to use atomic variables and atomic operations to reduce the locking in your application. You may think that a variable value `a[0]` used by thread 1 on core 1 and a variable value `a[1]` used by thread 2 on core 2 will have no performance impact. However, this is wrong. Core 1 and core 2 both have different L1 and L2 caches BUT the CPU doesn't just load individual variables, it loads entire cache lines (e.g. 64 bytes). This means that if you define `int a[2]`, it has a high chance of being on the same cache line and therfore thread 1 and thread 2 both have to wait on each other when doing atomic writes.
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