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Map-Reduce Perfect Power

Copyright Adina-Maria Amzarescu


Map-Reduce program to implement a parallel program in Pthreads for finding numbers greater than 0 that are perfect powers from a set of files and counting unique values for each exponent.


There are 3 structures in this program.

The first one is a linked list used to store the perfect powers for each exponent.

The second one is thread_data_t used for the thread.

  • role is used to check if the thread will be used for a map or for a reducer

The last one is app_data_t, used to solve the mapper and reducer threads. Mutex and condition variable are used to synchronize the threads.


Flow and logic:

The the main() function will call the read_files() function. There each line will be stored in the file_links array, used to find each file to be processed.

Then each file will be sent to maps based on the number of files. The app_aloc() function decides if the thread is a mapper or a reducer. Here the mutex is initialized. If the index is less than the number of mappers then it is a mapper thread. Otherwise it is a reducer thread. For each one of those threads, the role will be either 0 (mapper) or 1 (reducer). The exponents variable is equal to the number_of_reducers + 2 because the exponents will start from 2.

Then the threads will start in the allocate_maps_and_reducers() function. I used a for() to create the threads and then another for() to join them. By deciding their role all threads start at the same time.

The thread_func() will check the role of the thread (0-mapper or 1-reducer). If it is a mapper thread then the mapper_func() is called and count of finised mapper is increased. When the value of mapper_count reaches the number_of_mappers the reducer threads will be unlocked. If it is a reducer function then it will wait until mappers have finished and then call the reducer_func().

The files are sent to maps in the allocate_files_to_maps() function. Here depending on the number of files and the number of mappers, in order to distribute them evenly the program will check if the distribution can be made 1:1. If there are more files than mappers then the files_per_map will be number_of_files/number_of_mappers.

Then each file will be sent to a mapper depending on the number_of_files and files_per_map. Each mapper will get a file until file_count reaches the last file_per_map. Then if there are remaining files those will be distributed to mappers as well and the number of files_per_map will increase.

To calculate the time I used time_t to check the difference between the start the end of the program.


Mapper thread

General Idea:

All mapper threads find the perfect powers from input data and store them to linked list. This data will be used by reducer threads later.

Code explanation:

The mapper_func() function will get the number of files. Since a single mapper might handle multiple files the total_numbers variable will be the final number.

Then the final_count variable will store how many numbers there are in each file.

For testing the perfect powers are stored in the linked list because it is more efficient. Since 1 is a perfect power there is a separate list_append() call for this case. Then each perfect power is added to the list of the associated exponent.


Reducer thread

General Idea:

All reducer threads can process data once all mapper threads have done their job. So they wait for condition which the value of mapper_count reach to number_of_mappers. Every mapper thread increases mapper_count by 1 when it has finished, so mapper_count will be number_of_mappers (for example) when all mapper threads are finished. Each reducer will process perfect numbers for its own exponential.

For example, reducer[0] will process perfect numbers for exponential 2 reducer[1] for exponential 3, reducer[2] for exponential 3 and so on.

They don't need to have a list for them.

Code explanation:

The reducer_func() function will get the total count of perfect powers for a given exponent. The nums array is used to store the data from the linked_list. At first the array will store all perfect powers, with duplicates. Then all duplicates will be removed by replacing them with -1.

For counting the final number (unique values for each exponent) the array will be processed again and for each value different than -1 count will increase. Then count will be printed in a representative output file for each exponent.


Resources:

  1. OCW

  2. POSIX thread

  3. MapReduce:Theory and Implementation


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