SlideShare a Scribd company logo
10
Most read
18
Most read
19
Most read
Page 1
Page 1
Mutual Exclusion*
Distributed Systems
Prepared By:
Er. Shikha Manrai
Page 2
Mutual Exclusion?
• A condition in which there is a set of
processes, only one of which is able to
access a given resource or perform a given
function at any time
Page 3
Centralized Systems
Mutual exclusion via:
– Test & set
– Semaphores
– Messages
– Monitors
Page 4
Distributed Mutual Exclusion
• Assume there is agreement on how a resource
is identified
– Pass identifier with requests
• Create an algorithm to allow a process to
obtain exclusive access to a resource
Page 5
Distributed Mutual Exclusion
• Centralized Algorithm
• Token Ring Algorithm
• Distributed Algorithm
• Decentralized Algorithm
Page 6
Centralized algorithm
• Mimic single processor system
• One process elected as coordinator
P
C
request(R)
grant(R)
1. Request resource
2. Wait for response
3. Receive grant
4. access resource
5. Release resource release(R)
Page 7
Centralized algorithm
If another process claimed resource:
– Coordinator does not reply until release
– Maintain queue
• Service requests in FIFO order
P0
C
request(R)
grant(R)
release(R) P1
P2
request(R)
Queue
P1
request(R)
P2
grant(R)
Page 8
Centralized algorithm
Benefits
• Fair
– All requests processed in order
• Easy to implement, understand, verify
Problems
• Process cannot distinguish being blocked from
a dead coordinator
• Centralized server can be a bottleneck
Page 9
Token Ring algorithm
Assume known group of processes
– Some ordering can be imposed on group
– Construct logical ring in software
– Process communicates with neighbor
P0
P1
P2
P3
P4
P5
Page 10
Token Ring algorithm
• Initialization
– Process 0 gets token for resource R
• Token circulates around ring
– From Pi to P(i+1)mod N
• When process acquires token
– Checks to see if it needs to enter critical section
– If no, send token to neighbor
– If yes, access resource
• Hold token until done
P0
P1
P2
P3
P4
P5
token(R)
Page 11
Token Ring algorithm
• Only one process at a time has token
– Mutual exclusion guaranteed
• Order well-defined
– Starvation cannot occur
• If token is lost (e.g. process died)
– It will have to be regenerated
• Does not guarantee FIFO order
Page 12
Ricart & Agrawala algorithm
• Distributed algorithm using reliable multicast
and logical clocks
• Process wants to enter critical section:
– Compose message containing:
• Identifier (machine ID, process ID)
• Name of resource
• Timestamp (totally-ordered Lamport)
– Send request to all processes in group
– Wait until everyone gives permission
– Enter critical section / use resource
Page 13
Ricart & Agrawala algorithm
• When process receives request:
– If receiver not interested:
• Send OK to sender
– If receiver is in critical section
• Do not reply; add request to queue
– If receiver just sent a request as well:
• Compare timestamps: received & sent messages
• Earliest wins
• If receiver is loser, send OK
• If receiver is winner, do not reply, queue
• When done with critical section
– Send OK to all queued requests
Page 14
Ricart & Agrawala algorithm
• N points of failure
• A lot of messaging traffic
• Demonstrates that a fully distributed
algorithm is possible
Page 15
Lamport’s Mutual Exclusion
Each process maintains request queue
– Contains mutual exclusion requests
Requesting critical section:
– Process Pi sends request(i, Ti) to all nodes
– Places request on its own queue
– When a process Pj receives
a request, it returns a timestamped ack
Lamport time
Page 16
Lamport’s Mutual Exclusion
Entering critical section (accessing resource):
– Pi received a message (ack or release) from every
other process with a timestamp larger than Ti
– Pi’s request has the earliest timestamp in its queue
Difference from Ricart-Agrawala:
– Everyone responds … always - no hold-back
– Process decides to go based on whether its
request is the earliest in its queue
Page 17
Lamport’s Mutual Exclusion
Releasing critical section:
– Remove request from its own queue
– Send a timestamped release message
– When a process receives a release message
• Removes request for that process from its queue
• This may cause its own entry have the earliest timestamp in
the queue, enabling it to access the critical section
Characteristics of Decentralized
Algorithms
 No machine has complete information about the system state
 Machines make decisions based only on local information
 Failure of one machine does not ruin the algorithm
 Three is no implicit assumption that a global clock exists
Page 19
Decentralized Algorithm
• Based on the Distributed Hash Table (DHT)
system structure previously introduced
– Peer-to-peer
– Object names are hashed to find the successor
node that will store them
• Here, we assume that n replicas of each
object are stored
Page 20
Placing the Replicas
• The resource is known by a unique name:
rname
– Replicas: rname-0, rname-I, …, rname-(n-1)
– rname-i is stored at succ(rname-i), where names
and site names are hashed as before
– If a process knows the name of the resource it
wishes to access, it also can generate the hash
keys that are used to locate all the replicas
Page 21
The Decentralized Algorithm
• Every replica has a coordinator that controls
access to it (the coordinator is the node that
stores it)
• For a process to use the resource it must
receive permission from m > n/2 coordinators
• This guarantees exclusive access as long as a
coordinator only grants access to one process
at a time
Page 22
The Decentralized Algorithm
• The coordinator notifies the requester when
it has been denied access as well as when it is
granted
– Requester must “count the votes”, and decide
whether or not overall permission has been granted
or denied
• If a process (requester) gets fewer than m
votes it will wait for a random time and then
ask again
Page 23
Analysis
• If a resource is in high demand, multiple
requests will be generated
• It’s possible that processes will wait a long
time to get permission
• Deadlock?
• Resource usage drops
Page 24
Analysis
• More robust than the central coordinator
approach and the distributed approaches. If
one coordinator goes down others are
available.
– If a coordinator fails and resets then it will not
remember having granted access to one requestor,
and may then give access to another. According to
the authors, it is highly unlikely that this will lead
to a violation of mutual exclusion. (See the text
for a probabilistic argument.)

More Related Content

PDF
Deadlock in Distributed Systems
DOC
Distributed Mutual exclusion algorithms
PDF
8. mutual exclusion in Distributed Operating Systems
PPT
Clock synchronization in distributed system
PPT
Distributed Deadlock Detection.ppt
PPTX
Lecture 3 threads
PPTX
Process synchronization in Operating Systems
PDF
Semaphores
Deadlock in Distributed Systems
Distributed Mutual exclusion algorithms
8. mutual exclusion in Distributed Operating Systems
Clock synchronization in distributed system
Distributed Deadlock Detection.ppt
Lecture 3 threads
Process synchronization in Operating Systems
Semaphores

What's hot (20)

PPT
Classical problem of synchronization
PPTX
Critical section problem in operating system.
PPTX
Distributed DBMS - Unit 6 - Query Processing
PPTX
Producer consumer problem operating system
PPTX
serializability in dbms
DOCX
Operating System Process Synchronization
PPTX
Operating system 31 multiple processor scheduling
PPTX
Distributed Mutual Exclusion and Distributed Deadlock Detection
PDF
Distributed deadlock
PPTX
FCFS scheduling OS
PPTX
Semophores and it's types
PPTX
Deadlock Avoidance in Operating System
PDF
Processes and Processors in Distributed Systems
PPT
Consistency protocols
PDF
Deadlock
PDF
Multithreading
PPT
Lamport’s algorithm for mutual exclusion
PPTX
Semaphore
PPTX
contiguous memory allocation.pptx
PDF
Classical problem of synchronization
Critical section problem in operating system.
Distributed DBMS - Unit 6 - Query Processing
Producer consumer problem operating system
serializability in dbms
Operating System Process Synchronization
Operating system 31 multiple processor scheduling
Distributed Mutual Exclusion and Distributed Deadlock Detection
Distributed deadlock
FCFS scheduling OS
Semophores and it's types
Deadlock Avoidance in Operating System
Processes and Processors in Distributed Systems
Consistency protocols
Deadlock
Multithreading
Lamport’s algorithm for mutual exclusion
Semaphore
contiguous memory allocation.pptx
Ad

Similar to Mutual-Exclusion Algorithm.ppt (20)

PPTX
Implementation of Election Algorithm of Distributed Systems in Client-Server ...
PPT
Mutual Exclusion Election (Distributed computing)
PPT
Deadlock
PPT
Deadlock in software engineering for beginners.ppt
PPTX
deadlocks.pptx
PPT
DeadlockMar21.ppt.....................................
PPT
DeadlockMar21.ppt
PDF
DC Lecture 04 and 05 Mutual Excution and Election Algorithms.pdf
PPT
Ch07 deadlocks
PPTX
Deadlock in Real Time operating Systempptx
PPTX
Module 3 Deadlocks.pptx
PDF
Ch7 deadlocks
PPT
Coordination and Agreement .ppt
PDF
Deadlocks Part- I.pdf
PPTX
deadlock and starvation resources allocation.pptx
PPTX
Chapter 4
PPTX
6. Deadlock_1640227623705.pptx
PDF
Deadlocks Part- II.pdf
PPTX
Deadlocks2
PPTX
OS UNIT3.pptx
Implementation of Election Algorithm of Distributed Systems in Client-Server ...
Mutual Exclusion Election (Distributed computing)
Deadlock
Deadlock in software engineering for beginners.ppt
deadlocks.pptx
DeadlockMar21.ppt.....................................
DeadlockMar21.ppt
DC Lecture 04 and 05 Mutual Excution and Election Algorithms.pdf
Ch07 deadlocks
Deadlock in Real Time operating Systempptx
Module 3 Deadlocks.pptx
Ch7 deadlocks
Coordination and Agreement .ppt
Deadlocks Part- I.pdf
deadlock and starvation resources allocation.pptx
Chapter 4
6. Deadlock_1640227623705.pptx
Deadlocks Part- II.pdf
Deadlocks2
OS UNIT3.pptx
Ad

Recently uploaded (20)

PPTX
Sustainable Sites - Green Building Construction
PPTX
Geodesy 1.pptx...............................................
PPTX
OOP with Java - Java Introduction (Basics)
PDF
TFEC-4-2020-Design-Guide-for-Timber-Roof-Trusses.pdf
PDF
Automation-in-Manufacturing-Chapter-Introduction.pdf
PPTX
Welding lecture in detail for understanding
PDF
Operating System & Kernel Study Guide-1 - converted.pdf
PPTX
bas. eng. economics group 4 presentation 1.pptx
PPTX
UNIT-1 - COAL BASED THERMAL POWER PLANTS
DOCX
573137875-Attendance-Management-System-original
PPTX
CH1 Production IntroductoryConcepts.pptx
PPTX
UNIT 4 Total Quality Management .pptx
PPTX
M Tech Sem 1 Civil Engineering Environmental Sciences.pptx
PDF
Mitigating Risks through Effective Management for Enhancing Organizational Pe...
PPTX
MCN 401 KTU-2019-PPE KITS-MODULE 2.pptx
PPTX
KTU 2019 -S7-MCN 401 MODULE 2-VINAY.pptx
PPTX
CYBER-CRIMES AND SECURITY A guide to understanding
PDF
Model Code of Practice - Construction Work - 21102022 .pdf
PDF
Embodied AI: Ushering in the Next Era of Intelligent Systems
PDF
SM_6th-Sem__Cse_Internet-of-Things.pdf IOT
Sustainable Sites - Green Building Construction
Geodesy 1.pptx...............................................
OOP with Java - Java Introduction (Basics)
TFEC-4-2020-Design-Guide-for-Timber-Roof-Trusses.pdf
Automation-in-Manufacturing-Chapter-Introduction.pdf
Welding lecture in detail for understanding
Operating System & Kernel Study Guide-1 - converted.pdf
bas. eng. economics group 4 presentation 1.pptx
UNIT-1 - COAL BASED THERMAL POWER PLANTS
573137875-Attendance-Management-System-original
CH1 Production IntroductoryConcepts.pptx
UNIT 4 Total Quality Management .pptx
M Tech Sem 1 Civil Engineering Environmental Sciences.pptx
Mitigating Risks through Effective Management for Enhancing Organizational Pe...
MCN 401 KTU-2019-PPE KITS-MODULE 2.pptx
KTU 2019 -S7-MCN 401 MODULE 2-VINAY.pptx
CYBER-CRIMES AND SECURITY A guide to understanding
Model Code of Practice - Construction Work - 21102022 .pdf
Embodied AI: Ushering in the Next Era of Intelligent Systems
SM_6th-Sem__Cse_Internet-of-Things.pdf IOT

Mutual-Exclusion Algorithm.ppt

  • 1. Page 1 Page 1 Mutual Exclusion* Distributed Systems Prepared By: Er. Shikha Manrai
  • 2. Page 2 Mutual Exclusion? • A condition in which there is a set of processes, only one of which is able to access a given resource or perform a given function at any time
  • 3. Page 3 Centralized Systems Mutual exclusion via: – Test & set – Semaphores – Messages – Monitors
  • 4. Page 4 Distributed Mutual Exclusion • Assume there is agreement on how a resource is identified – Pass identifier with requests • Create an algorithm to allow a process to obtain exclusive access to a resource
  • 5. Page 5 Distributed Mutual Exclusion • Centralized Algorithm • Token Ring Algorithm • Distributed Algorithm • Decentralized Algorithm
  • 6. Page 6 Centralized algorithm • Mimic single processor system • One process elected as coordinator P C request(R) grant(R) 1. Request resource 2. Wait for response 3. Receive grant 4. access resource 5. Release resource release(R)
  • 7. Page 7 Centralized algorithm If another process claimed resource: – Coordinator does not reply until release – Maintain queue • Service requests in FIFO order P0 C request(R) grant(R) release(R) P1 P2 request(R) Queue P1 request(R) P2 grant(R)
  • 8. Page 8 Centralized algorithm Benefits • Fair – All requests processed in order • Easy to implement, understand, verify Problems • Process cannot distinguish being blocked from a dead coordinator • Centralized server can be a bottleneck
  • 9. Page 9 Token Ring algorithm Assume known group of processes – Some ordering can be imposed on group – Construct logical ring in software – Process communicates with neighbor P0 P1 P2 P3 P4 P5
  • 10. Page 10 Token Ring algorithm • Initialization – Process 0 gets token for resource R • Token circulates around ring – From Pi to P(i+1)mod N • When process acquires token – Checks to see if it needs to enter critical section – If no, send token to neighbor – If yes, access resource • Hold token until done P0 P1 P2 P3 P4 P5 token(R)
  • 11. Page 11 Token Ring algorithm • Only one process at a time has token – Mutual exclusion guaranteed • Order well-defined – Starvation cannot occur • If token is lost (e.g. process died) – It will have to be regenerated • Does not guarantee FIFO order
  • 12. Page 12 Ricart & Agrawala algorithm • Distributed algorithm using reliable multicast and logical clocks • Process wants to enter critical section: – Compose message containing: • Identifier (machine ID, process ID) • Name of resource • Timestamp (totally-ordered Lamport) – Send request to all processes in group – Wait until everyone gives permission – Enter critical section / use resource
  • 13. Page 13 Ricart & Agrawala algorithm • When process receives request: – If receiver not interested: • Send OK to sender – If receiver is in critical section • Do not reply; add request to queue – If receiver just sent a request as well: • Compare timestamps: received & sent messages • Earliest wins • If receiver is loser, send OK • If receiver is winner, do not reply, queue • When done with critical section – Send OK to all queued requests
  • 14. Page 14 Ricart & Agrawala algorithm • N points of failure • A lot of messaging traffic • Demonstrates that a fully distributed algorithm is possible
  • 15. Page 15 Lamport’s Mutual Exclusion Each process maintains request queue – Contains mutual exclusion requests Requesting critical section: – Process Pi sends request(i, Ti) to all nodes – Places request on its own queue – When a process Pj receives a request, it returns a timestamped ack Lamport time
  • 16. Page 16 Lamport’s Mutual Exclusion Entering critical section (accessing resource): – Pi received a message (ack or release) from every other process with a timestamp larger than Ti – Pi’s request has the earliest timestamp in its queue Difference from Ricart-Agrawala: – Everyone responds … always - no hold-back – Process decides to go based on whether its request is the earliest in its queue
  • 17. Page 17 Lamport’s Mutual Exclusion Releasing critical section: – Remove request from its own queue – Send a timestamped release message – When a process receives a release message • Removes request for that process from its queue • This may cause its own entry have the earliest timestamp in the queue, enabling it to access the critical section
  • 18. Characteristics of Decentralized Algorithms  No machine has complete information about the system state  Machines make decisions based only on local information  Failure of one machine does not ruin the algorithm  Three is no implicit assumption that a global clock exists
  • 19. Page 19 Decentralized Algorithm • Based on the Distributed Hash Table (DHT) system structure previously introduced – Peer-to-peer – Object names are hashed to find the successor node that will store them • Here, we assume that n replicas of each object are stored
  • 20. Page 20 Placing the Replicas • The resource is known by a unique name: rname – Replicas: rname-0, rname-I, …, rname-(n-1) – rname-i is stored at succ(rname-i), where names and site names are hashed as before – If a process knows the name of the resource it wishes to access, it also can generate the hash keys that are used to locate all the replicas
  • 21. Page 21 The Decentralized Algorithm • Every replica has a coordinator that controls access to it (the coordinator is the node that stores it) • For a process to use the resource it must receive permission from m > n/2 coordinators • This guarantees exclusive access as long as a coordinator only grants access to one process at a time
  • 22. Page 22 The Decentralized Algorithm • The coordinator notifies the requester when it has been denied access as well as when it is granted – Requester must “count the votes”, and decide whether or not overall permission has been granted or denied • If a process (requester) gets fewer than m votes it will wait for a random time and then ask again
  • 23. Page 23 Analysis • If a resource is in high demand, multiple requests will be generated • It’s possible that processes will wait a long time to get permission • Deadlock? • Resource usage drops
  • 24. Page 24 Analysis • More robust than the central coordinator approach and the distributed approaches. If one coordinator goes down others are available. – If a coordinator fails and resets then it will not remember having granted access to one requestor, and may then give access to another. According to the authors, it is highly unlikely that this will lead to a violation of mutual exclusion. (See the text for a probabilistic argument.)