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How to implement concurrent data structures and algorithms in C++?

Aug 27, 2023 am 08:13 AM
data structure algorithm c++ concurrency

How to implement concurrent data structures and algorithms in C++?

How to implement concurrent data structures and algorithms in C?

In concurrent programming, the correct use of data structures and algorithms is very important. In C, we can use a variety of methods to implement concurrent data structures and algorithms, including using mutex locks, condition variables, atomic operations, etc.

1. Use mutex locks
Mutex locks are the most basic concurrency control mechanism. Concurrent operation protection is achieved by locking shared resources and then controlling access. In C, we can use std::mutex to implement mutex locks.

For example, we can use a mutex to implement a simple thread-safe queue:

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#include <mutex>

#include <queue>

 

template<typename T>

class ConcurrentQueue {

private:

    std::queue<T> q;

    std::mutex mtx;

 

public:

    void push(const T& value) {

        std::lock_guard<std::mutex> lock(mtx);

        q.push(value);

    }

 

    T pop() {

        std::lock_guard<std::mutex> lock(mtx);

        if (q.empty())

            throw std::runtime_error("Queue is empty");

        T value = q.front();

        q.pop();

        return value;

    }

 

    bool empty() {

        std::lock_guard<std::mutex> lock(mtx);

        return q.empty();

    }

};

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In the above code, we use std::mutex to protect the operation of the queue, through std ::lock_guard to automatically manage the locking and unlocking of mutexes. This ensures that when multiple threads access the queue at the same time, only one thread is operating the queue.

2. Use condition variables
Condition variables are another way to implement concurrent data structures and algorithms in C. Condition variables can be used for synchronization and communication between threads.

For example, we can use condition variables to implement a simple thread-safe queue. When the queue is empty, the consumer thread will wait and block until new data is put into the queue by the producer thread.

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#include <mutex>

#include <queue>

#include <condition_variable>

 

template<typename T>

class ConcurrentQueue {

private:

    std::queue<T> q;

    std::mutex mtx;

    std::condition_variable cv;

 

public:

    void push(const T& value) {

        std::lock_guard<std::mutex> lock(mtx);

        q.push(value);

        cv.notify_one();

    }

 

    T pop() {

        std::unique_lock<std::mutex> lock(mtx);

        cv.wait(lock, [this] { return !q.empty(); });

        T value = q.front();

        q.pop();

        return value;

    }

 

    bool empty() {

        std::lock_guard<std::mutex> lock(mtx);

        return q.empty();

    }

};

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In the above code, we use std::condition_variable to implement waiting and notification operations. When the queue is empty, the consumer thread calls the cv.wait() function to wait until new data is put into the queue by the producer thread, and then the cv.notify_one() function notifies the consumer thread to continue execution.

3. Use atomic operations
Atomic operation is a special operation method that can ensure that the operation of shared resources is uninterruptible. C 11 introduces a series of atomic operation interfaces that can be used to implement efficient concurrent data structures and algorithms.

For example, we can use atomic operations to implement a simple thread-safe counter:

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#include <atomic>

 

class ConcurrentCounter {

private:

    std::atomic<int> count;

 

public:

    ConcurrentCounter() : count(0) {}

 

    int increment() {

        return count.fetch_add(1) + 1;

    }

 

    int decrement() {

        return count.fetch_sub(1) - 1;

    }

 

    int get() {

        return count.load();

    }

};

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In the above code, we use std::atomic to declare an atomic variable through std:: The atomic::fetch_add() and std::atomic::fetch_sub() functions perform atomic operations on the counter to ensure thread safety.

Summary:
Implementing concurrent data structures and algorithms in C is a complex and important task. We can use mutex locks, condition variables, atomic operations and many other methods to ensure thread safety. When designing concurrent data structures and algorithms, we need to fully consider the balance between data consistency and concurrency, as well as avoid common problems in concurrent programming such as deadlocks and race conditions.

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