KEMBAR78
OS Process Synchronization, semaphore and Monitors | PPT
Lecture Plan UNIT-III
Lecture Topic                                         Slide
No.                                                   No.
1       Process synchronization                       2-5
2       critical- section prob, Peterson’s Solution   6-8


3       synchronization Hardware                      9-15
4       Semaphores                                    16-27
5       Monitors                                      28-31
6       atomic transactions                           32-40
7       Case study                                    41-42
8       REVISION
Process synchronization
• Concurrent access to shared data may result in
  data inconsistency
• Maintaining data consistency requires mechanisms
  to ensure the orderly execution of cooperating
  processes
• Suppose that we wanted to provide a solution to the
  consumer-producer problem that fills all the buffers.
  We can do so by having an integer count that keeps
  track of the number of full buffers. Initially, count is
  set to 0. It is incremented by the producer after it
  produces a new buffer and is decremented by the
  consumer after it consumes a buffer.
Producer
while (true) {

        /* produce an item and put in
    nextProduced */
       while (count == BUFFER_SIZE)
            ; // do nothing
           buffer [in] = nextProduced;
           in = (in + 1) % BUFFER_SIZE;
           count++;
}
Consumer
while (true) {
    while (count == 0)
         ; // do nothing
         nextConsumed = buffer[out];
          out = (out + 1) % BUFFER_SIZE;
            count--;

         /* consume the item in
nextConsumed
}
Race Condition
•   count++ could be implemented as

       register1 = count
       register1 = register1 + 1
       count = register1
•   count-- could be implemented as

      register2 = count
      register2 = register2 - 1
      count = register2
•   Consider this execution interleaving with “count = 5” initially:
       S0: producer execute register1 = count {register1 = 5}
       S1: producer execute register1 = register1 + 1 {register1 = 6}
       S2: consumer execute register2 = count {register2 = 5}
       S3: consumer execute register2 = register2 - 1 {register2 = 4}
       S4: producer execute count = register1 {count = 6 }
       S5: consumer execute count = register2 {count = 4}
Solution to Critical-Section
                   Problem
1.Mutual Exclusion - If process P is executing in its critical section,
                                   i
   then no other processes can be executing in their critical
   sections
2. Progress - If no process is executing in its critical section and
   there exist some processes that wish to enter their critical
   section, then the selection of the processes that will enter the
   critical section next cannot be postponed indefinitely
3. Bounded Waiting - A bound must exist on the number of times
   that other processes are allowed to enter their critical sections
   after a process has made a request to enter its critical section
   and before that request is granted
    Assume that each process executes at a nonzero speed
    No assumption concerning relative speed of the N
       processes
Peterson’s Solution
• Two process solution
• Assume that the LOAD and STORE
  instructions are atomic; that is, cannot be
  interrupted.
• The two processes share two variables:
  – int turn;
  – Boolean flag[2]
• The variable turn indicates whose turn it is to
  enter the critical section.
• The flag array is used to indicate if a process
  is ready to enter the critical section. flag[i] =
  true implies that process Pi is ready!
Algorithm for Process Pi
do {
   flag[i] = TRUE;
   turn = j;
   while (flag[j] && turn == j);
         critical section
   flag[i] = FALSE;
         remainder section
} while (TRUE);
Synchronization Hardware
• Many systems provide hardware support for
  critical section code
• Uniprocessors – could disable interrupts
  – Currently running code would execute without
    preemption
  – Generally too inefficient on multiprocessor
    systems
    • Operating systems using this not broadly scalable
• Modern machines provide special atomic
  hardware instructions
    • Atomic = non-interruptable
  – Either test memory word and set value
  – Or swap contents of two memory words
Solution to Critical-section Problem
            Using Locks

do {
   acquire lock
         critical section
   release lock
         remainder section
} while (TRUE);
Test And Set Instruction
• Definition:

      boolean TestAndSet (boolean *target)
      {
         boolean rv = *target;
         *target = TRUE;
         return rv:
      }
Solution using TestAndSet
• Shared boolean variable lock., initialized to false.
• Solution:
     do {
             while ( TestAndSet (&lock ))
                     ; // do nothing

                   //   critical section

             lock = FALSE;

                   //    remainder section

      } while (TRUE);
Swap Instruction

• Definition:

     void Swap (boolean *a, boolean *b)
     {
          boolean temp = *a;
          *a = *b;
          *b = temp:
     }
Solution using Swap
• Shared Boolean variable lock initialized to FALSE;
  Each process has a local Boolean variable key
• Solution:
      do {
             key = TRUE;
             while ( key == TRUE)
                   Swap (&lock, &key );

                     //   critical section

             lock = FALSE;

                    //    remainder section

     } while (TRUE);
Bounded-waiting Mutual Exclusion with TestandSet()
do {
     waiting[i] = TRUE;
     key = TRUE;
     while (waiting[i] && key)
               key = TestAndSet(&lock);
     waiting[i] = FALSE;
               // critical section
     j = (i + 1) % n;
     while ((j != i) && !waiting[j])
               j = (j + 1) % n;
     if (j == i)
               lock = FALSE;
     else
               waiting[j] = FALSE;
               // remainder section
} while (TRUE);
Semaphore
• Synchronization tool that does not require busy waiting
• Semaphore S – integer variable
• Two standard operations modify S: wait() and signal()
   – Originally called P() and V()
• Less complicated
• Can only be accessed via two indivisible (atomic)
  operations
   – wait (S) {
          while S <= 0
             ; // no-op
            S--;
       }
   – signal (S) {
         S++;
Semaphore as General Synchronization Tool
• Counting semaphore – integer value can range over an unrestricted
  domain
• Binary semaphore – integer value can range only between 0
  and 1; can be simpler to implement
   – Also known as mutex locks
• Can implement a counting semaphore S as a binary semaphore
• Provides mutual exclusion
   Semaphore mutex; // initialized to 1
   do {
      wait (mutex);
          // Critical Section
       signal (mutex);
      // remainder section
   } while (TRUE);
Semaphore Implementation
• Must guarantee that no two processes can execute wait () and
  signal () on the same semaphore at the same time
• Thus, implementation becomes the critical section problem
  where the wait and signal code are placed in the crtical section.
   – Could now have busy waiting in critical section
     implementation
      • But implementation code is short
      • Little busy waiting if critical section rarely occupied
• Note that applications may spend lots of time in critical sections
  and therefore this is not a good solution.
Semaphore Implementation with no Busy waiting
• With each semaphore there is an associated
  waiting queue. Each entry in a waiting queue
  has two data items:
  – value (of type integer)
  – pointer to next record in the list


• Two operations:
  – block – place the process invoking the operation
    on the    appropriate waiting queue.
  – wakeup – remove one of processes in the
    waiting queue and place it in the ready queue.
Semaphore Implementation with no Busy waiting
• Implementation of wait:
      wait(semaphore *S) {
             S->value--;
             if (S->value < 0) {
                     add this process to S->list;
                     block();
             }
      }
• Implementation of signal:

       signal(semaphore *S) {
               S->value++;
               if (S->value <= 0) {
                       remove a process P from S->list;
                       wakeup(P);
               }
       }
Deadlock and Starvation
• Deadlock – two or more processes are waiting indefinitely for
  an event that can be caused by only one of the waiting
  processes
• Let S and Q be two semaphores initialized to 1
                 P0                        P1
            wait (S);                      wait (Q);
            wait (Q);                         wait (S);
              .                          .
              .                          .
              .                          .
           signal (S);                      signal (Q);
           signal (Q);                      signal (S);
• Starvation – indefinite blocking. A process may never be
  removed from the semaphore queue in which it is suspended
• Priority Inversion - Scheduling problem when lower-priority
  process holds a lock needed by higher-priority process
Bounded-Buffer Problem
•   N buffers, each can hold one item
•   Semaphore mutex initialized to the value 1
•   Semaphore full initialized to the value 0
•   Semaphore empty initialized to the value N.
Bounded Buffer Problem
•   The structure of the producer process

    do {
                    // produce an item in nextp
            wait (empty);
            wait (mutex);
                 // add the item to the buffer
             signal (mutex);
             signal (full);
       } while (TRUE);
The structure of the consumer process
   do {
             wait (full);
             wait (mutex);
  // remove an item from buffer to nextc
             signal (mutex);
             signal (empty);
                            // consume the item in nextc
       } while (TRUE);
Readers-Writers Problem
• A data set is shared among a number of concurrent processes
   – Readers – only read the data set; they do not perform any
     updates
   – Writers – can both read and write

• Problem – allow multiple readers to read at the same time.
  Only one single writer can access the shared data at the same
  time
Shared Data
   – Data set
   – Semaphore mutex initialized to 1
   – Semaphore wrt initialized to 1
   – Integer readcount initialized to 0
Readers-Writers Problem
• The structure of a writer process
             do {
                  wait (wrt) ; // writing is performed
                  signal (wrt) ;
              } while (TRUE);
The structure of a reader process
    do {
             wait (mutex) ;
             readcount ++ ;
             if (readcount == 1)
                  wait (wrt) ;
            signal (mutex) //reading is performed        wait (mutex) ;
                  readcount - - ;
                  if (readcount == 0)
                          signal (wrt) ;
                  signal (mutex) ;
         } while (TRUE);
Dining-Philosophers Problem
• Shared data
  – Bowl of rice (data set)
  – Semaphore chopstick [5] initialized to 1
do {
             wait ( chopstick[i] );
                                         wait ( chopStick[ (i + 1) % 5] );

                                              // eat

                                          signal ( chopstick[i] );
                                          signal (chopstick[ (i + 1) %
                                      5] );

                 // think

       } while (TRUE);
Monitors
• A high-level abstraction that provides a convenient
  and effective mechanism for process synchronization
• Only one process may be active within the monitor at
  a time
     monitor monitor-name
     {
       // shared variable declarations
       procedure P1 (…) { …. }
              …

         procedure Pn (…) {……}

             Initialization code ( ….) { … }
                    …
         }
     }
Solution to Dining Philosophers
monitor DP
  {         enum { THINKING; HUNGRY, EATING) state [5] ;
     condition self [5];
     void pickup (int i) {
         state[i] = HUNGRY;
         test(i);
         if (state[i] != EATING) self [i].wait;
     }
void putdown (int i) {
         state[i] = THINKING;
               // test left and right neighbors
          test((i + 4) % 5);
          test((i + 1) % 5);
       }
void test (int i) {
          if ( (state[(i + 4) % 5] != EATING) &&
          (state[i] == HUNGRY) &&
          (state[(i + 1) % 5] != EATING) ) {
               state[i] = EATING ;
                self[i].signal () ;
           } }
initialization_code() {
         for (int i = 0; i < 5; i++)
         state[i] = THINKING;
     } }
• Each philosopher I invokes the operations pickup() and putdown() in the
  following sequence:
         DiningPhilosophters.pickup (i);
             EAT
          DiningPhilosophers.putdown (i);
Monitor Implementation Using Semaphores Variables
        semaphore mutex; // (initially = 1)
        semaphore next; // (initially = 0)
        int next-count = 0;
Each procedure F will be replaced by
•                         wait(mutex);
                     …
                                   body of F;
                     …
                 if (next_count > 0)
                          signal(next)
                 else
                          signal(mutex);

•   Mutual exclusion within a monitor is ensured.
Monitor Implementation
• For each condition variable x, we have:

            semaphore x_sem; // (initially = 0)
            int x-count = 0;

• The operation x.wait can be implemented as:

            x-count++;
            if (next_count > 0)
                signal(next);
            else
                signal(mutex);
            wait(x_sem);
            x-count--;
Atomic Transactions
•   System Model
•   Log-based Recovery
•   Checkpoints
•   Concurrent Atomic Transactions
System Model
• Assures that operations happen as a single logical unit of
  work, in its entirety, or not at all
• Related to field of database systems
• Challenge is assuring atomicity despite computer system
  failures
• Transaction - collection of instructions or operations that
  performs single logical function
   – Here we are concerned with changes to stable storage –
      disk
   – Transaction is series of read and write operations
   – Terminated by commit (transaction successful) or abort
      (transaction failed) operation
   – Aborted transaction must be rolled back to undo any
      changes it performed
Log-Based Recovery
• Record to stable storage information about all modifications
  by a transaction
• Most common is write-ahead logging
   – Log on stable storage, each log record describes single
     transaction write operation, including
      • Transaction name
      • Data item name
      • Old value
      • New value
   – <Ti starts> written to log when transaction T i starts
   – <Ti commits> written when Ti commits
• Log entry must reach stable storage before operation on data
  occur
Checkpoints
•                                      Log could become long,
                                       and recovery could take
                                       long
•                                      Checkpoints shorten log
                                       and recovery time.
•                                      Checkpoint scheme:
    1. Output all log records currently in volatile storage to stable
       storage
    2. Output all modified data from volatile to stable storage
    3. Output a log record <checkpoint> to the log on stable
       storage
•                                      Now recovery only includes
                                       Ti, such that Ti started
                                       executing before the most
                                       recent checkpoint, and all
Concurrent Transactions

• Must be equivalent to serial execution –
  serializability
• Could perform all transactions in critical
  section
  – Inefficient, too restrictive
• Concurrency-control algorithms provide
  serializability
Serializability
• Consider two data items A and B
• Consider Transactions T0 and T1
• Execute T0, T1 atomically
• Execution sequence called schedule
• Atomically executed transaction order called
  serial schedule
• For N transactions, there are N! valid serial
  schedules
Locking Protocol
• Ensure serializability by associating lock with
  each data item
  – Follow locking protocol for access control
• Locks
  – Shared – Ti has shared-mode lock (S) on item Q, Ti
    can read Q but not write Q
  – Exclusive – Ti has exclusive-mode lock (X) on Q, Ti
    can read and write Q
• Require every transaction on item Q acquire
  appropriate lock
• If lock already held, new request may have to
Two-phase Locking Protocol
• Generally ensures conflict serializability
• Each transaction issues lock and unlock
  requests in two phases
  – Growing – obtaining locks
  – Shrinking – releasing locks
• Does not prevent deadlock
Solaris Synchronization
• Implements a variety of locks to support
  multitasking, multithreading (including real-
  time threads), and multiprocessing
• Uses adaptive mutexes for efficiency when
  protecting data from short code segments
• Uses condition variables and readers-writers
  locks when longer sections of code need
  access to data
• Uses turnstiles to order the list of threads
  waiting to acquire either an adaptive mutex or
  reader-writer lock
Windows XP Synchronization
• Uses interrupt masks to protect access to
  global resources on uniprocessor systems
• Uses spinlocks on multiprocessor systems
• Also provides dispatcher objects which
  may act as either mutexes and
  semaphores
• Dispatcher objects may also provide
  events
  – An event acts much like a condition variable
Linux Synchronization
• Linux:
  – Prior to kernel Version 2.6, disables interrupts
    to implement short critical sections
  – Version 2.6 and later, fully preemptive


• Linux provides:
  – semaphores
  – spin locks

OS Process Synchronization, semaphore and Monitors

  • 1.
    Lecture Plan UNIT-III LectureTopic Slide No. No. 1 Process synchronization 2-5 2 critical- section prob, Peterson’s Solution 6-8 3 synchronization Hardware 9-15 4 Semaphores 16-27 5 Monitors 28-31 6 atomic transactions 32-40 7 Case study 41-42 8 REVISION
  • 2.
    Process synchronization • Concurrentaccess to shared data may result in data inconsistency • Maintaining data consistency requires mechanisms to ensure the orderly execution of cooperating processes • Suppose that we wanted to provide a solution to the consumer-producer problem that fills all the buffers. We can do so by having an integer count that keeps track of the number of full buffers. Initially, count is set to 0. It is incremented by the producer after it produces a new buffer and is decremented by the consumer after it consumes a buffer.
  • 3.
    Producer while (true) { /* produce an item and put in nextProduced */ while (count == BUFFER_SIZE) ; // do nothing buffer [in] = nextProduced; in = (in + 1) % BUFFER_SIZE; count++; }
  • 4.
    Consumer while (true) { while (count == 0) ; // do nothing nextConsumed = buffer[out]; out = (out + 1) % BUFFER_SIZE; count--; /* consume the item in nextConsumed }
  • 5.
    Race Condition • count++ could be implemented as register1 = count register1 = register1 + 1 count = register1 • count-- could be implemented as register2 = count register2 = register2 - 1 count = register2 • Consider this execution interleaving with “count = 5” initially: S0: producer execute register1 = count {register1 = 5} S1: producer execute register1 = register1 + 1 {register1 = 6} S2: consumer execute register2 = count {register2 = 5} S3: consumer execute register2 = register2 - 1 {register2 = 4} S4: producer execute count = register1 {count = 6 } S5: consumer execute count = register2 {count = 4}
  • 6.
    Solution to Critical-Section Problem 1.Mutual Exclusion - If process P is executing in its critical section, i then no other processes can be executing in their critical sections 2. Progress - If no process is executing in its critical section and there exist some processes that wish to enter their critical section, then the selection of the processes that will enter the critical section next cannot be postponed indefinitely 3. Bounded Waiting - A bound must exist on the number of times that other processes are allowed to enter their critical sections after a process has made a request to enter its critical section and before that request is granted Assume that each process executes at a nonzero speed No assumption concerning relative speed of the N processes
  • 7.
    Peterson’s Solution • Twoprocess solution • Assume that the LOAD and STORE instructions are atomic; that is, cannot be interrupted. • The two processes share two variables: – int turn; – Boolean flag[2] • The variable turn indicates whose turn it is to enter the critical section. • The flag array is used to indicate if a process is ready to enter the critical section. flag[i] = true implies that process Pi is ready!
  • 8.
    Algorithm for ProcessPi do { flag[i] = TRUE; turn = j; while (flag[j] && turn == j); critical section flag[i] = FALSE; remainder section } while (TRUE);
  • 9.
    Synchronization Hardware • Manysystems provide hardware support for critical section code • Uniprocessors – could disable interrupts – Currently running code would execute without preemption – Generally too inefficient on multiprocessor systems • Operating systems using this not broadly scalable • Modern machines provide special atomic hardware instructions • Atomic = non-interruptable – Either test memory word and set value – Or swap contents of two memory words
  • 10.
    Solution to Critical-sectionProblem Using Locks do { acquire lock critical section release lock remainder section } while (TRUE);
  • 11.
    Test And SetInstruction • Definition: boolean TestAndSet (boolean *target) { boolean rv = *target; *target = TRUE; return rv: }
  • 12.
    Solution using TestAndSet •Shared boolean variable lock., initialized to false. • Solution: do { while ( TestAndSet (&lock )) ; // do nothing // critical section lock = FALSE; // remainder section } while (TRUE);
  • 13.
    Swap Instruction • Definition: void Swap (boolean *a, boolean *b) { boolean temp = *a; *a = *b; *b = temp: }
  • 14.
    Solution using Swap •Shared Boolean variable lock initialized to FALSE; Each process has a local Boolean variable key • Solution: do { key = TRUE; while ( key == TRUE) Swap (&lock, &key ); // critical section lock = FALSE; // remainder section } while (TRUE);
  • 15.
    Bounded-waiting Mutual Exclusionwith TestandSet() do { waiting[i] = TRUE; key = TRUE; while (waiting[i] && key) key = TestAndSet(&lock); waiting[i] = FALSE; // critical section j = (i + 1) % n; while ((j != i) && !waiting[j]) j = (j + 1) % n; if (j == i) lock = FALSE; else waiting[j] = FALSE; // remainder section } while (TRUE);
  • 16.
    Semaphore • Synchronization toolthat does not require busy waiting • Semaphore S – integer variable • Two standard operations modify S: wait() and signal() – Originally called P() and V() • Less complicated • Can only be accessed via two indivisible (atomic) operations – wait (S) { while S <= 0 ; // no-op S--; } – signal (S) { S++;
  • 17.
    Semaphore as GeneralSynchronization Tool • Counting semaphore – integer value can range over an unrestricted domain • Binary semaphore – integer value can range only between 0 and 1; can be simpler to implement – Also known as mutex locks • Can implement a counting semaphore S as a binary semaphore • Provides mutual exclusion Semaphore mutex; // initialized to 1 do { wait (mutex); // Critical Section signal (mutex); // remainder section } while (TRUE);
  • 18.
    Semaphore Implementation • Mustguarantee that no two processes can execute wait () and signal () on the same semaphore at the same time • Thus, implementation becomes the critical section problem where the wait and signal code are placed in the crtical section. – Could now have busy waiting in critical section implementation • But implementation code is short • Little busy waiting if critical section rarely occupied • Note that applications may spend lots of time in critical sections and therefore this is not a good solution.
  • 19.
    Semaphore Implementation withno Busy waiting • With each semaphore there is an associated waiting queue. Each entry in a waiting queue has two data items: – value (of type integer) – pointer to next record in the list • Two operations: – block – place the process invoking the operation on the appropriate waiting queue. – wakeup – remove one of processes in the waiting queue and place it in the ready queue.
  • 20.
    Semaphore Implementation withno Busy waiting • Implementation of wait: wait(semaphore *S) { S->value--; if (S->value < 0) { add this process to S->list; block(); } } • Implementation of signal: signal(semaphore *S) { S->value++; if (S->value <= 0) { remove a process P from S->list; wakeup(P); } }
  • 21.
    Deadlock and Starvation •Deadlock – two or more processes are waiting indefinitely for an event that can be caused by only one of the waiting processes • Let S and Q be two semaphores initialized to 1 P0 P1 wait (S); wait (Q); wait (Q); wait (S); . . . . . . signal (S); signal (Q); signal (Q); signal (S); • Starvation – indefinite blocking. A process may never be removed from the semaphore queue in which it is suspended • Priority Inversion - Scheduling problem when lower-priority process holds a lock needed by higher-priority process
  • 22.
    Bounded-Buffer Problem • N buffers, each can hold one item • Semaphore mutex initialized to the value 1 • Semaphore full initialized to the value 0 • Semaphore empty initialized to the value N.
  • 23.
    Bounded Buffer Problem • The structure of the producer process do { // produce an item in nextp wait (empty); wait (mutex); // add the item to the buffer signal (mutex); signal (full); } while (TRUE); The structure of the consumer process do { wait (full); wait (mutex); // remove an item from buffer to nextc signal (mutex); signal (empty); // consume the item in nextc } while (TRUE);
  • 24.
    Readers-Writers Problem • Adata set is shared among a number of concurrent processes – Readers – only read the data set; they do not perform any updates – Writers – can both read and write • Problem – allow multiple readers to read at the same time. Only one single writer can access the shared data at the same time Shared Data – Data set – Semaphore mutex initialized to 1 – Semaphore wrt initialized to 1 – Integer readcount initialized to 0
  • 25.
    Readers-Writers Problem • Thestructure of a writer process do { wait (wrt) ; // writing is performed signal (wrt) ; } while (TRUE); The structure of a reader process do { wait (mutex) ; readcount ++ ; if (readcount == 1) wait (wrt) ; signal (mutex) //reading is performed wait (mutex) ; readcount - - ; if (readcount == 0) signal (wrt) ; signal (mutex) ; } while (TRUE);
  • 26.
    Dining-Philosophers Problem • Shareddata – Bowl of rice (data set) – Semaphore chopstick [5] initialized to 1 do { wait ( chopstick[i] ); wait ( chopStick[ (i + 1) % 5] ); // eat signal ( chopstick[i] ); signal (chopstick[ (i + 1) % 5] ); // think } while (TRUE);
  • 27.
    Monitors • A high-levelabstraction that provides a convenient and effective mechanism for process synchronization • Only one process may be active within the monitor at a time monitor monitor-name { // shared variable declarations procedure P1 (…) { …. } … procedure Pn (…) {……} Initialization code ( ….) { … } … } }
  • 28.
    Solution to DiningPhilosophers monitor DP { enum { THINKING; HUNGRY, EATING) state [5] ; condition self [5]; void pickup (int i) { state[i] = HUNGRY; test(i); if (state[i] != EATING) self [i].wait; } void putdown (int i) { state[i] = THINKING; // test left and right neighbors test((i + 4) % 5); test((i + 1) % 5); } void test (int i) { if ( (state[(i + 4) % 5] != EATING) && (state[i] == HUNGRY) && (state[(i + 1) % 5] != EATING) ) { state[i] = EATING ; self[i].signal () ; } } initialization_code() { for (int i = 0; i < 5; i++) state[i] = THINKING; } }
  • 29.
    • Each philosopherI invokes the operations pickup() and putdown() in the following sequence: DiningPhilosophters.pickup (i); EAT DiningPhilosophers.putdown (i); Monitor Implementation Using Semaphores Variables semaphore mutex; // (initially = 1) semaphore next; // (initially = 0) int next-count = 0; Each procedure F will be replaced by • wait(mutex); … body of F; … if (next_count > 0) signal(next) else signal(mutex); • Mutual exclusion within a monitor is ensured.
  • 30.
    Monitor Implementation • Foreach condition variable x, we have: semaphore x_sem; // (initially = 0) int x-count = 0; • The operation x.wait can be implemented as: x-count++; if (next_count > 0) signal(next); else signal(mutex); wait(x_sem); x-count--;
  • 31.
    Atomic Transactions • System Model • Log-based Recovery • Checkpoints • Concurrent Atomic Transactions
  • 32.
    System Model • Assuresthat operations happen as a single logical unit of work, in its entirety, or not at all • Related to field of database systems • Challenge is assuring atomicity despite computer system failures • Transaction - collection of instructions or operations that performs single logical function – Here we are concerned with changes to stable storage – disk – Transaction is series of read and write operations – Terminated by commit (transaction successful) or abort (transaction failed) operation – Aborted transaction must be rolled back to undo any changes it performed
  • 33.
    Log-Based Recovery • Recordto stable storage information about all modifications by a transaction • Most common is write-ahead logging – Log on stable storage, each log record describes single transaction write operation, including • Transaction name • Data item name • Old value • New value – <Ti starts> written to log when transaction T i starts – <Ti commits> written when Ti commits • Log entry must reach stable storage before operation on data occur
  • 34.
    Checkpoints • Log could become long, and recovery could take long • Checkpoints shorten log and recovery time. • Checkpoint scheme: 1. Output all log records currently in volatile storage to stable storage 2. Output all modified data from volatile to stable storage 3. Output a log record <checkpoint> to the log on stable storage • Now recovery only includes Ti, such that Ti started executing before the most recent checkpoint, and all
  • 35.
    Concurrent Transactions • Mustbe equivalent to serial execution – serializability • Could perform all transactions in critical section – Inefficient, too restrictive • Concurrency-control algorithms provide serializability
  • 36.
    Serializability • Consider twodata items A and B • Consider Transactions T0 and T1 • Execute T0, T1 atomically • Execution sequence called schedule • Atomically executed transaction order called serial schedule • For N transactions, there are N! valid serial schedules
  • 37.
    Locking Protocol • Ensureserializability by associating lock with each data item – Follow locking protocol for access control • Locks – Shared – Ti has shared-mode lock (S) on item Q, Ti can read Q but not write Q – Exclusive – Ti has exclusive-mode lock (X) on Q, Ti can read and write Q • Require every transaction on item Q acquire appropriate lock • If lock already held, new request may have to
  • 38.
    Two-phase Locking Protocol •Generally ensures conflict serializability • Each transaction issues lock and unlock requests in two phases – Growing – obtaining locks – Shrinking – releasing locks • Does not prevent deadlock
  • 39.
    Solaris Synchronization • Implementsa variety of locks to support multitasking, multithreading (including real- time threads), and multiprocessing • Uses adaptive mutexes for efficiency when protecting data from short code segments • Uses condition variables and readers-writers locks when longer sections of code need access to data • Uses turnstiles to order the list of threads waiting to acquire either an adaptive mutex or reader-writer lock
  • 40.
    Windows XP Synchronization •Uses interrupt masks to protect access to global resources on uniprocessor systems • Uses spinlocks on multiprocessor systems • Also provides dispatcher objects which may act as either mutexes and semaphores • Dispatcher objects may also provide events – An event acts much like a condition variable
  • 41.
    Linux Synchronization • Linux: – Prior to kernel Version 2.6, disables interrupts to implement short critical sections – Version 2.6 and later, fully preemptive • Linux provides: – semaphores – spin locks