Title: Transaction Management, Concurrency Control and Recovery
1Transaction Management, Concurrency Control and
Recovery
2Overview
- What are transactions?
- What is a schedule?
- What is concurrency control?
- Why we need concurrency control
- Three problems.
- Serializabiltiy and Concurrency control
- Theory
- Conflict Serializability
- View Serializability
- Practice
- Locking
- Time-stamping
- Optimistic techniques
- Recovery facilities
3What is a Transaction?
- Transaction
- Action, or series of actions, carried out by
user or application, which accesses or changes
contents of database. - Logical unit of work on the database.
- Transforms database from one consistent state to
another, although consistency may be violated
during transaction. - Example
- Read(staffNo, salary)
- salarysalary 1.1
- write(staffNo , salary)
4What is a Transaction?
- Can have one of two outcomes
- Success - transaction commits and database
reaches a new consistent state. - Failure - transaction aborts, and database must
be restored to consistent state before it started
(rolled back or undone). - Committed transaction cannot be aborted.
- Aborted transactions that are rolled back can be
restarted later.
5Properties of Transactions
- Four basic (ACID) properties of a transaction
are - Atomicity All or nothing property.
- Consistency Must transform database from one
consistent state to another. - Isolation Partial effects of incomplete
transactions should not be visible to other
transactions. - Durability Effects of a committed transaction are
permanent and must not be lost because of later
failure. - We deal with transactions in a schedule.
6Schedule
Data Items affected by transactions (optional)
Start with t0 or t1
Running Transactions
Time T1 T2 T3 Balance1 Balance2
t0 Begin Transaction 100 200
t1 Read(Balance1) Begin Transaction 100 200
t2 Read(Balance1) Begin Transaction 100 200
t3 Balance1 500 Read(Balance2) 100 200
t4 Write(Balance1) 600 200
t5 Commit Read(Balance1) 600 200
Order of execution
7Schedule Rules
- Never start two transactions at the same time.
- Never perform Reads and Writes of different
transactions at the same time. - Each transaction should end with a commit or
abort (rollback).
8Schedule Definitions
- Schedule
- Sequence of reads/writes by set of concurrent
transactions. -
- Serial Schedule
- Schedule where operations of each transaction
are executed consecutively without any
interleaved operations from other transactions. - No guarantee that results of all serial
executions of a given set of transactions will be
identical. (Think of an example) - Non-Serial Schedule
- Schedule where operations from set of concurrent
transactions are interleaved
9Example of a Serial Schedule
Time T1 T2
t0 Begin Transaction
t1 Read(Balance1)
t2 Balance1 500
t3 Commit
t4 Begin Transaction
t5 Read(Balance1)
t6 Commit
10Example of a non-Serial Schedule
Time T1 T2
t0 Begin Transaction
t1 Begin Transaction
t2 Read(Balance1)
t3 Read(Balance1)
t4 Commit
t5 Balance1 500
t6 Commit
11What is Concurrency Control?
- Concurrency transactions running simultaneously.
- Concurrency Control Process of managing
simultaneous operations (transactions) on the
database without having them interfere with one
another. - Prevents interference when two or more users are
accessing database simultaneously and at least
one is updating data. - Although two transactions may be correct in
themselves, interleaving of operations may
produce an incorrect result.
12Why we Need Concurrency Control?
- Three examples of potential problems caused by
concurrency - Lost update problem.
- Uncommitted dependency problem.
- Inconsistent analysis problem.
13Lost Update Problem
- Successfully completed update is overridden by
another user. - T1 withdrawing 10 from an account with balx,
initially 100. - T2 depositing 100 into same account.
- Serially, final balance would be 190.
- Loss of T2s update avoided by preventing T1 from
reading balx until after update
14Uncommitted Dependency Problem
- Occurs when one transaction can see intermediate
results of another transaction before it has
committed. - T4 updates balx to 200 but it aborts, so balx
should be back at original value of 100. - T3 has read new value of balx (200) and uses
value as basis of 10 reduction, giving a new
balance of 190, instead of 90. - Problem avoided by preventing T3 from reading
balx until after T4 commits or aborts.
15Inconsistent Analysis Problem
- Occurs when transaction reads several values but
second transaction updates some of them during
execution of first. - Sometimes referred to as dirty read or
unrepeatable read. - T6 is totaling balances of account x (100),
account y (50), and account z (25). - Meantime, T5 has transferred 10 from balx to
balz, so T6 now has wrong result (10 too high).
16Inconsistent Analysis Problem
- Problem avoided by preventing T6 from reading
balx and balz until after T5 completed updates.
17Serializability
- Serializability is a property of a schedule
- We say serializable schedule and non-serializable
schedule. - But what makes a schedule serializable?
- A serializable schedule is a non-serial schedule
that allows transactions to execute concurrently
without interfering with one another. - In other words, a non-serial schedule that is
equivalent to some serial schedule. - Main goal is to prevent transactions interfering
with each other (3 problems discussed earlier).
18Serializability
- Two types of seriailizability
- Conflict.
- View.
19Conflict Serializability
- In serializability, ordering of read/writes is
important - (a) If two transactions only read a data item,
they do not conflict and order is not important. - (b) If two transactions either read or write
completely separate data items, they do not
conflict and order is not important. - (c) If one transaction writes a data item and
another reads or writes same data item, order of
execution is important. They conflict.
20Conflict Serializability
- Schedule S1 is conflict serializable if it is
conflict equivalent to a serial schedule. - Two ways of testing a schedule for conflict
serialiazibility - A schedule is conflict serializable if you can
switch order of 2 non-conflicting operations
until you reach a serial schedule. - Precedence graph.
21Testing for Conflict Serializability
Time T7 T8 t1
begin-transaction t2 read(balx) t3
write(balx) t4
begin_transaction t5
read(balx) t6 write(balx) t7
read(baly) t8 write(baly) t9
commit t10 read(baly)
t11 write(baly) t12
commit
T7 T8
begin-transaction read(balx)
write(balx)
begin_transaction
read(balx) read(baly)
write(balx) write(baly)
commit read(baly)
write(baly) commit
22Testing for Conflict Serializability
Time T7 T8 t1
begin-transaction t2 read(balx) t3
write(balx) t4
begin_transaction t5
read(baly) t6 read(balx) t7
write(balx) t8 write(baly)
t9 commit t10
read(baly) t11 write(baly) t12
commit
T7 T8
begin-transaction read(balx)
write(balx) read(baly) write(baly)
commit
begin_transaction
read(balx) write(balx)
read(baly) write(baly)
commit
23Non-conflict Serializable Schedule
Time T7 T8 t1
begin-transaction t2 read(balx) t3
begin_transaction t4
write(balx) t5 write(balx) t6
commit t7 commit
T7 T8
begin-transaction read(balx)
write(balx) commit
begin_transaction
write(balx) commit
24Testing for Conflict Serializability Precedence
Graph
- Create
- node for each transaction
- a directed edge Ti ? Tj, if Tj reads the value of
an item written by Ti - a directed edge Ti ? Tj, if Tj writes a value
into an item after it has been read by Ti. - a directed edge Ti ? Tj, if Tj writes a value
into an item after it has been written by Ti. - If precedence graph contains cycle, schedule is
not conflict serializable.
25Test Schedule Is it conflict serializable?
Time T7 T8 t1
begin-transaction t2 read(balx) t3
balx balx 100 t 4
write(balx) t5
begin_transaction t6 read(balx)
t7 balx balx 1.1 t8
write(balx) t9 read(baly) t10
baly baly 1.1 t11
write(baly) t12
commit t13 read(baly) t14 write(baly) t15
commit
26View Serializability
- Offers less stringent definition of schedule
equivalence than conflict serializability. - Two schedules S1 and S2 are view equivalent if
- For each data item x, if Ti reads initial value
of x in S1, Ti must also read initial value of x
in S2. - For each read on x by Ti in S1, if value read by
x is written by Tj, Ti must also read value of x
produced by Tj in S2. - For each data item x, if last write on x
performed by Ti in S1, same transaction must
perform final write on x in S2.
27View Serializability
- Schedule is view serializable if it is view
equivalent to a serial schedule. - Every conflict serializable schedule is view
serializable, although converse is not true. - It can be shown that any view serializable
schedule that is not conflict serializable
contains one or more blind writes.
28View Serializable Schedule
Time T7 T8 t1
begin-transaction t2 read(balx) t3
write(balx) t4 read(baly) t5
write(baly) t6 commit t7
begin-transaction t8 read(balx)
t9
write(balx) t10
read(baly) t11 write(baly) t12
commit
T7
T8 begin-transaction read(balx)
write(balx)
begin_transaction read(balx)
write(balx) read(baly) write(baly)
commit read(baly) write(baly)
commit
29View Serializable Schedule
Time T11 T12 T13 t1
begin-transaction t2
read(balx) t3
begin_transaction t4
write(balx) t5 commit t6
write(balx) t7 commit t8
begin_transaction t9 write(balx) t10
commit
Is this schedule conflict serializable?
30Recoverable Schedule
- A schedule where, for each pair of transactions
Ti and Tj, if Tj reads a data item previously
written by Ti, then the commit operation of Ti
precedes the commit operation of Tj.
31Concurrency Control Techniques
32Concurrency Control Techniques
- Two basic concurrency control techniques
- Locking,
- Timestamping.
- Both are conservative approaches delay
transactions in case they conflict with other
transactions. - Optimistic methods assume conflict is rare and
only check for conflicts at commit.
33Concurrency Control Techniques Overview
Locking
Time-stamping
Optimistic
Basic Rules
2PL
Deadlock Prevention
Basic Time-stamp Ordering
Multi-version Time-stamp Ordering
Deadlock Detection
Thomass Write Rule
Regular
Rigorous
Wait-Die
Wound-Wait
Wait-for Graph
Time outs
Strict
34Locking
- Main Idea Transaction uses locks to deny access
to other transactions and so prevent incorrect
updates. - Most widely used approach to ensure
serializability. - A transaction must claim
- a shared (read) on x before it can read it.
- or an exclusive (write) lock on x before it can
write it. - Lock prevents other transactions from reading or
writing the locked data item.
35Locking Basic Rules
- Shared Lock
- If transaction has shared lock on item, it can
read but not update item. - More than one transaction can hold a shared lock
on an item. - Exclusive Lock
- If transaction has exclusive lock on item, can
both read and update item. - Only one transaction can hold an exclusive lock
on an item. - Some systems allow transaction to
- upgrade read lock to an exclusive lock.
- downgrade exclusive lock to a shared lock.
36Locking -- Commands
- To acquire a shared (read) lock on X
- Read_Lock(x)
- RLock(X)
- Shared_Lock(X)
- SLock(X)
- To acquire an exclusive (write) lock on X
- Write_Lock(X)
- WLock(X)
- Exclusive_Lock(X)
- XLock(X)
- To release a lock on X
- Unlock(X)
37Time T9 T10 t1
begin-transaction t2
write_lock(balx) t3 read(balx) t4 balx
balx 100 t5
write(balx) t6 unlock(balx) t7
begin_transaction t8
write_lock(balx) t9 read(balx)
t10 balx balx 1.1 t11
write(balx) t12 unlock(balx) t13 wri
te_lock(baly) t14 read(baly) t15 baly
baly 1.1 t16
write(baly) t17
commit/unlock(baly) t18
write_lock(baly) t19 read(baly) t20 baly
baly - 100 t21 write(baly) t22
commit/unlock(baly)
Correct use of locks. But is the execution
correct?
38Two-Phase Locking (2PL)
- We just saw that locking alone doesnt always
work. - Solution 2PL.
- Transaction follows 2PL protocol if all locking
operations precede first unlock operation in the
transaction. - Two phases for transaction
- Growing phase - acquires all locks but cannot
release any locks. - Shrinking phase - releases locks but cannot
acquire any new locks. - With 2PL, we can prevent the three problems.
39Original Lost Update Problem
40Preventing Lost Update Problem
Time T1 T2 balx t1
begin-transaction 100 t2 begin_transaction wri
te_lock(balx) 100 t3 write_lock(balx) r
ead(balx) 100 t4 WAIT balx balx
100 100 t5 WAIT write(balx) 200 t6
WAIT commit/unlock(balx)
200 t7 read(balx) 200 t8
balx balx -10 200 t9 write(balx)
190 t10 commit/unlock(balx) 190
41Original Uncommitted Dependency Problem
42Preventing Uncommitted Dependency Problem
Time T3 T4 balx t1
begin-transaction 100 t2 write_lock(balx) 10
0 t3 read(balx) 100 t4
begin_transaction balx balx 100 100 t5
write_lock(balx) write(balx) 200 t6
WAIT commit/unlock(balx)
200 t7 read(balx) 200 t8
balx balx -10 200 t9 write(balx)
190 t10 commit/unlock(balx) 190
43Original Inconsistent Analysis Problem
44Preventing Inconsistent Analysis Problem
45A Potential Problem with 2PL
46Cascading Rollbacks
- If every transaction in a schedule follows 2PL,
schedule is serializable. - However, problems can occur with interpretation
of when locks can be released. - Cascading rollback is undesirable since they
potentially lead to the undoing of a significant
amount of work - To prevent this with 2PL, 2 solutions
- Rigorous 2PL Leave release of all locks until
end of transaction. - Strict 2PL Holds only exclusive locks until the
end of the transaction. - BOTH are still 2PL. So both still have growing
and shrinking phases. - 2PL still may cause deadlock.
47Problems with 2PL
- Cascading Rollbacks
- Solved with strict or rigorous 2PL.
- Dead Locks
- Happen in regular 2PL, and also in strict and
rigorous 2PL. - Handled using deadlock detection and prevention
techniques.
48Deadlocks
- Deadlock An impasse that may result when two (or
more) transactions are each waiting for locks
held by the other to be released. - Once a deadlock happens, only one way to break
deadlock abort one or more of the transactions. - Deadlock should be transparent to user, so DBMS
should restart aborted transaction(s).
49Example Deadlock
Time T9 t1
begin-transaction t2
write_lock(balx) t3 read(balx) t4 balx
balx - 10 t5 write(balx) t6
write_lock(baly) t7 WAIT t8 WAIT t9
WAIT t10 WAIT t11
T10
begin-transaction write_lock(baly)
read(baly) baly baly 100
write(baly)
wait_lock(balx) WAIT WAIT
WAIT
50Deadlock Handling
- Two general techniques for handling deadlock
- Deadlock prevention DBMS doesnt allow deadlock
to happen. - Timeouts.
- Wait-Die.
- Wound-wait.
- Deadlock detection and recovery DBMS allows
deadlocks to happens but detects and recovers
from them. - Wait-for Graphs (WFG).
51Timeouts
- Transaction that requests lock will only wait for
a system-defined period of time. - If lock has not been granted within this period,
lock request times out. - DBMS assumes transaction deadlocked, even though
it may not be, and it aborts and automatically
restarts the transaction.
52Timestamps
- Before we discuss Wait-die and Wound-wait
techniques, introduce timestamps. - A timestamp is a unique number given to each
transaction. - Traditionally, it is the time the transaction
started. - The smaller the timestamp, the older the
transaction.
53Timestamps
Time T11 T12 T13 t1
begin-transaction t2
read(balx) t3
begin_transaction t4
write(balx) t5 commit t6
write(balx) t7 commit t8
begin_transaction t9 write(balx) t10
commit
- TS(T11) 1
- TS(T12) 3
- TS(T13) 8
54Wait-Die Technique
- Only an older transaction can wait for younger
one, otherwise transaction is aborted (dies) and
restarted with same timestamp. (Why the same?) - If a transaction Ti requests a lock on an item
held by Tj - If Ti gt Tj TS(Ti) lt TS(Tj), Ti waits for Tj to
release the lock. - If Ti lt Tj TS(Ti) gt TS(Tj), Ti is aborted and
restarted with the same TS.
55Wound-Wait Technique
- only a younger transaction can wait for an older
one. If older transaction requests lock held by
younger one, younger one is aborted (wounded) and
restarted with same timestamp. (Why the same?) - If a transaction Ti requests a lock on an item
held by Tj - If Ti gt Tj TS(Ti) lt TS(Tj), Tj is aborted and
Ti gets the lock. - If Ti lt Tj TS(Ti) gt TS(Tj), Ti waits for Tj to
release the lock.
56Deadlock Detection and Recovery
- Usually handled by construction of wait-for graph
(WFG) showing transaction dependencies - Create a node for each transaction.
- Create edge Ti ?Tj, if Ti waiting to lock item
locked by Tj. - Deadlock exists if and only if WFG contains
cycle.
57Example Schedule with WFG
Time T9 t1
begin-transaction t2
write_lock(balx) t3 read(balx) t4 balx
balx - 10 t5 write(balx) t6
write_lock(baly) t7 WAIT t8 WAIT t9
WAIT t10 WAIT t11
T10
begin-transaction write_lock(baly)
read(baly) baly baly 100
write(baly)
wait_lock(balx) WAIT WAIT
WAIT
T10
T9
58Deadlock Detection and Recovery
- WFG is created at regular intervals.
- Several issues when recovering from a deadlock
- choice of deadlock victim
- avoiding starvation.
- Self-read pages 596-597
59Concurrency Control Techniques Overview
Locking
Time-stamping
Optimistic
Basic Rules
2PL
Deadlock Prevention
Basic Time-stamp Ordering
Multi-version Time-stamp Ordering
Deadlock Detection
Thomass Write Rule
Regular
Rigorous
Wait-Die
Wound-Wait
Wait-for Graph
Time outs
Strict
60Timestamping
- Main Idea Transactions ordered globally so that
older transactions (smaller timestamps) get
priority in the event of conflict. - Conflict is resolved by rolling back (aborting)
and restarting transaction. - No locks so no deadlock.
- Timestamp
- A unique identifier created by DBMS that
indicates relative starting time of a
transaction. - Timestamping
- A concurrency control protocol that orders
transactions in such a way that order
transactions. Transactions with smaller
timestamps, get priority in the event of conflict
61Timestamping
- 2 Techniques
- Basic Timestamp Ordering.
- Thomass Write Rule.
- Multiversion Timestamp Ordering.
62Basic Timestamp Ordering
- Read/write proceeds only if last update on that
data item was carried out by an older
transaction. - Otherwise, transaction requesting read/write is
restarted and given a new timestamp. - Main Goal Ordering writes then reads/writes as
they would have been ordered in a serial
schedule. - Timestamps are also set for data items
- read-timestamp - timestamp of last transaction to
read item - write-timestamp - timestamp of last transaction
to write item.
63Basic Timestamping Read(x)
- Consider a read(x) transaction T with timestamp
TS(T) - TS(T) lt write_timestamp(x)
- x already updated by younger (later) transaction.
- Transaction T must be aborted and restarted with
a new timestamp. - TS(T) ? write_timestamp(x)
- execute the read(x) operation of T
- read_timestamp(x) TS(T)
64Basic Timestamping Write(x)
- TS(T) lt read_timestamp(x)
- x already read by younger transaction.
- Transaction T must be aborted and restarted with
a new timestamp. - TS(T) lt write_timestamp(x)
- x already written by younger transaction.
- Transaction T must be aborted and restarted with
a new timestamp. - Otherwise, operation is accepted and executed.
- Write_timestamp(x) TS(T)
65Basic Timestamp Ordering
66Thomass Write Rule
- Provide greater concurrency by rejecting obsolete
write operations. - When a read(x) is encountered, behave just like
in slide 62. - When a write(x) is encountered, perform the
following check - TS(T) lt read_timestamp(x)
- x already read by younger transaction.
- Transaction T must be aborted and restarted with
a new timestamp. - TS(T) lt write_timestamp(x)
- x already written by younger transaction.
- Ignores the write operation (ignore obsolete
write rule) - Otherwise, operation is accepted and executed.
- Write_timestamp(x) TS(T)
67Comparison of Methods
68Multiversion Timestamp Ordering
- Main Idea Versioning of data can be used to
increase concurrency so create multiple versions
of each data item. - Basic timestamp assumes only one version of data
item exists, and so only one transaction can
access data item at a time. - Multiversion allows multiple transactions to read
and write different versions of same data item. - Multiversion ensures each transaction sees
consistent set of versions for all data items it
accesses. - In multiversion
- Each write operation creates new version of data
item while retaining old version. - When transaction attempts to read data item,
system selects one version that ensures
serializability ? NO ABORTS ON READs - Each version has a read and a write timestamp.
- Versions can be deleted once they are no longer
required.
69Multiversion Timestamping Read(x)
- When a transaction T wishes to read x, we find
the correct version and let it read it. - The correct version, xi, is the latest version
written by an older transaction - TS(T) ? write_timestamp(xi)
- After xi is found and read by T, we need to
record that xi was read by T - read_timestamp(xi) max(read_timestamp(xi),
TS(T)) - Absolutely no aborts on read.
70Multiversion Timestamping Write(x)
- When a transaction T wishes to write x, we need
to perform a test first then write a new version. - Test we need make sure that there is no older
version of x that has been read by a transaction
younger than T - ? The transaction that is younger than T should
read Ts version, not this older version. -
71Multiversion Timestamping Write(x)
- Find the correct version, xi is the latest
version written by an older transaction - TS(T) ? write_timestamp(xi)
- Test it make sure that no younger transaction
has already read xi - TS(T) lt read_timestamp(xi)?
- If yes Abort T.
- If no create a new version xj of x
- read_timestamp(xj) write_timestamp(xj) TS(T)
72Time T1 T2 T3 T4 T5
0 Begin
1 Begin
2 Read(x)
3 xx20
4 Write(x)
5 Begin
6 Read(x)
7 Begin
8 Read(x)
9 Read(y)
10 Read(y)
11 Begin
12 Read(y)
13 yy/2
14 Write(y)
15 yyx-100
16 Write(y)
17 xx0.10x
18 Write(x)
19 Commit
20 Commit
21 Commit
22 Commit
23 Commit
73Concurrency Control Techniques Overview
Locking
Time-stamping
Optimistic
Basic Rules
2PL
Deadlock Prevention
Basic Time-stamp Ordering
Multi-version Time-stamp Ordering
Deadlock Detection
Thomass Write Rule
Regular
Rigorous
Wait-Die
Wound-Wait
Wait-for Graph
Time outs
Strict
74Optimistic Techniques
- Main Idea conflict is rare and it is more
efficient to let transactions proceed without
delays to ensure serializability. - At commit, check is made to determine whether
conflict has occurred. - If there is a conflict, transaction must be
rolled back and restarted. - Potentially allows greater concurrency than
traditional protocols. - Three phases
- Read.
- Validation.
- Write.
75Optimistic Techniques Read Phase
- Extends from start until immediately before
commit. - Transaction reads values from database and stores
them in local variables. Updates are applied to a
local copy of the data. - DB is not changed during read phase.
76Optimistic Techniques Validation Phase
- Follows the read phase just before the
transaction commits. - For read-only transaction
- check that data read are still current values.
- If no interference, transaction is committed.
- Else, transaction is aborted and restarted.
- For update transaction
- check transaction leaves database in a
consistent state, with serializability
maintained.
77Optimistic Techniques Write Phase
- Follows successful validation phase for update
transactions. - Updates made to local copy are applied to the
database.
78Database Recovery
- Process of restoring database to a correct state
in the event of a failure. - Transactions represent basic unit of recovery.
- Recovery manager responsible for atomicity and
durability. - If failure occurs between commit and database
buffers being flushed to secondary storage then,
to ensure durability, recovery manager has to
redo (rollforward) transactions updates. - If transaction had not committed at failure time,
recovery manager has to undo (rollback) any
effects of that transaction for atomicity. - Partial undo - only one transaction has to be
undone. - Global undo - all transactions have to be undone.
79Example
- DBMS starts at time t0, but fails at time tf.
Assume data for transactions T2 and T3 have been
written to secondary storage. - T1 and T6 have to be undone. In absence of any
other information, recovery manager has to redo
T2, T3, T4, and T5.
80Recovery Facilities
- DBMS should provide following facilities to
assist with recovery - Backup mechanism which makes periodic backup
copies of database. - Logging facilities which keep track of current
state of transactions and database changes. - Checkpoint facility which enables updates to
database in progress to be made permanent. - Recovery manager which allows DBMS to restore
database to consistent state following a failure.
812. Logging Facilities The Log File
- Contains information about all updates to
database - Transaction records.
- Checkpoint records.
- Often used for other purposes (for example,
auditing).
823. Checkpoint Facility
- Checkpoint
- Point of synchronization between database and
log file. All buffers are written to secondary
storage. - A checkpoint consists of the following actions
- Suspend execution of transactions temporarily.
- Write all updated buffers to disk.
- Write a checkpoint log record to disk.
- Resume executing transactions.
- When failure occurs, the recovery manager
performs the following - Redo all transactions that committed since the
checkpoint. - Undo all transactions active at time of crash (if
using immediate update).
83Example
- T1 and T6 undo.
- T2 and T3 do nothing.
- T4 and T5 redo.
84Checkpoint in Log File
85Main Recovery Techniques
- Three main recovery techniques
- Deferred Update.
- Immediate Update.
- Shadow Paging.
86Deferred Update
- Updates are not written to the database until
after a transaction has reached its commit point.
- Start from the last checkpoint
- If a transaction has committed before checkpoint
? Do nothing. - If a transaction has committed after checkpoint
? Redo it. - If a transaction has not committed after
checkpoint ? Do nothing.
87Immediate Update
- Updates are applied to database as they occur.
- Start from the last checkpoint
- If a transaction has committed before checkpoint?
Do nothing. - If a transaction has committed after checkpoint ?
Redo it. - If a transaction has not committed after
checkpoint ? Undo it. - Undo is done in reverse order from bottom of log
file to top. - Redo is done in order from top of log file to
bottom.
88Example
- Using Deferred Update Which transactions to
undo? Redo? - Using Immediate Update Which transactions to
undo? Redo?
89Shadow Paging
- Maintain two page tables during life of a
transaction - Current page table.
- Shadow page table.
- When transaction starts, two tables are the same.
- Shadow page table is never changed thereafter and
is used to restore database in event of failure. - During transaction, current page table records
all updates to database. - When transaction completes, current page table
becomes shadow page table.