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Transcript
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
3
Transactions
1
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Outline
 transactions - generalities
 concurrency control
 concurrency problems
 locking
2
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
1
3
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Transactions – example
 Parts (P_id, P_name, Colour, Weight, Total_qty)
 Contracted (S_id, P_id, Qty)
 add a new contract for ‘S4’ for 200 pieces of ‘P1’
P_id
P1
P2
…
P_name
gear
pin
…
Colour Weight
white
black
…
S_id
S1
S1
S2
S3
S3
P_id
P1
P3
P1
P1
P2
1.233
0.1
…
Total_qty
1150
10000
…
Qty
500
200
150
500
1000
4
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Transaction
 logical unit of work
 sequence of database operations
 transforms a consistent state of a db into another
consistent state
 between operations the db can be inconsistent
5
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Transaction Processing
 do not allow for
 one operation to be performed and the other ones not
 principle of transaction processing support
 if some operations are executed and then a failure occurs
(before the planned termination) then those operations will
be undone
6
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Transaction Manager
 COMMIT TRANSACTION
• a logical unit of work was successfully completed
• all the updates can be made permanent
 ROLLBACK TRANSACTION
• unsuccessful end of transaction
• all the attempted updates must be rolled back
 they are issued from applications
7
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Example
execute(BEGIN TRANSACTION);
execute(INSERT (‘S4’, ‘P1’, 200) INTO Contracted);
if(/*any error occurred*/) then go to undo;
execute( UPDATE Parts WHERE P_id =‘P1’
SET Total_qty = Total_qty + 200);
if(/*any error occurred*/) then go to undo;
execute(COMMIT TRANSACTION);
go to finish;
undo : execute(ROLLBACK TRANSACTION);
finish : return;
8
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
SQL Support
 COMMIT and ROLLBACK
 No BEGIN TRANSACTION (in SQL2 and Oracle)
 all data definition and data manipulation statements are
transaction initiating
 PostgreSQL provides
BEGIN [TRANSACTION]
9
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
At the COMMIT point
 all updates, since the previous commit, are made
permanent (will not be undone)
 all database positioning and all tuple locks are lost
10
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
ACID Properties of Transactions
 Atomicity
• all or nothing
 Consistency
• preserve database consistency
 Isolation
• transactions are isolated from one another
 Durability
• committed transaction  updates are performed
11
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
2
12
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Concurrency
 more than one transaction have access to data
simultaneously
13
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Three concurrency problems
 the lost update
 the uncommitted dependency
 the inconsistent analysis
14
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
The lost update problem
Transaction A
time
RETRIEVE (t)
t1
t2
UPDATE (t) TO (t1)
Transaction B
RETRIEVE (t)
t3
t4
UPDATE (t) TO (t2)
15
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
The uncommitted dependency problem
Transaction A
RETRIEVE (t)
time
Transaction B
t1
UPDATE (t)
t2
t3
ROLLBACK
16
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
The uncommitted dependency problem
Transaction A
UPDATE p
time
Transaction B
t1
UPDATE p
t2
t3
ROLLBACK
17
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
The inconsistent analysis problem
Transaction A
BEGIN TRANSACTION
RETRIEVE (SugarA)
[sum = 500]
RETRIEVE (SugarB)
[sum = 700]
RETRIEVE (SugarC)
[sum = 800]
end result: sum = 800
time
t0
t1
t2
t3
t4
t5
Transaction B
BEGIN TRANSACTION
RETRIEVE (SugarA)
UPDATE SugarA TO 0
COMMIT
t6
18
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Issue
 all these problems may lead to an inconsistent
(incorrect) database
 is there a criterion based on which to decide weather
a certain set of transaction, if executed concurrently,
leads to an incorrect database or not?
19
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Serialisability
 criterion for correctness for concurrent execution of
transactions:
 the interleaved execution of a set of transactions is
guaranteed to be correct if it is serialisable
 correct  the DB is not in an inconsistent state
 serialisability: an interleaved execution has the same result
as some serial execution
20
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Serialisable schedule
Interleaved schedule for transaction 1, 2 and 3
time
Transaction 1
Transaction 2
Transaction 3
t1
op11
t2
t3
t4
op12
op21
t5
t6
op22
op23
t7
op13
op31
t8
t9
op14
op32
Equivalent serial schedule (Transaction 1 then Transaction 3 then Transaction 2)
time
Transaction 1
Transaction 2
Transaction 3
t1
op11
t2
op12
t3
op13
t4
op14
t5
op31
t6
t7
t8
t9
op21
op22
op23
op32
21
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Notes
 the schedules described in the concurrency problems
examples were not serialisable
 neither A-then-B nor B-then-A
 two different interleaved transactions might produce
different results, yet both can be considered correct
22
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
3
23
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Two-phase locking theorem
 if all transactions obey the
two phase locking protocol
then all possible interleaved schedules are
serialisable
• i.e., they can be executed concurrently, because they will leave
the database in a consistent state
24
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Two-phase locking protocol
1.before operating on an object a transaction must acquire a lock
on that object
2.after releasing a lock a transaction must not go on to acquire any
more locks
• phase1 (growing): acquire locks (not simultaneously)
• phase2 (shrinking): release locks (no further acquisitions
allowed)
• usually locks are released by the COMMIT or ROLLBACK
operation
 in practice
• trade-off between “release lock early and acquire more locks”
and the “two phase locking protocol”
25
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Locking
 usually, applicable to tuples
 types
• X, exclusive - write
• S, shared - read
 rules
• compatibility matrix
26
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Compatibility matrix
existing lock on t
X
S
none
X
refused
refused
granted
S
refused
granted
granted
-
-
-
request for lock on t
no request
27
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Data access protocol
 retrieve tuple  acquire S lock (on that tuple)
 update tuple  acquire X lock (on that tuple), or
promote the S lock it holds (if it holds one)
• implicit request
 if request for lock is denied  transaction goes in
wait state until the lock is released
• livelock - first come first served
 X locks are held until end of transaction (COMMIT or
ROLLBACK) (two phase locking protocol)
28
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
The uncommitted dependency problem: OK
Transaction A
RETRIEVE (t)
(request X lock on t)
wait
wait
resume RETRIEVE (t)
(acquire S lock on t)
time
Transaction B
t1
UPDATE (t)
(X lock on t)
t2
t3
COMMIT / ROLL..
(release X lock on t)
t4
29
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
The lost update problem : dead-lock
Transaction A
RETRIEVE p
(acquire S lock on p)
time
t1
t2
UPDATE p
(request X lock on p
denied)
wait
wait
wait
Transaction B
RETRIEVE p
(acquire S lock on p)
t3
t4
UPDATE p
(request X lock on p
denied)
wait
30
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Locking
 solves the three basic problems of concurrency
 theorem
• if all the transactions of a set S of transactions comply with the
two phase locking protocol, then all their possible interleaved
executions (schedules) are serialisable
• however, not all schedules produce the same result
– think of examples
 introduces another problem: deadlock
31
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Deadlock
 two or more transaction are waiting for the other to
release a lock
• in practice: usually two transactions
 detect a deadlock
• cycle in the wait-for graph, or
• timing mechanism
 break a deadlock
• rollback a victim transaction
• what happens to the victim?
32
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Further topics
• two phase locking protocol - not feasible in practice (not
efficient)
 levels of isolation
• degree of interference
 intent locking
• locking granularity
 SQL support
• no explicit locking facilities
• it supports different isolation levels (with “locking behind the
scenes”)
33
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
–
34
Term 2, 2004, Lecture 6, Transactions
Marian Ursu, Department of Computing, Goldsmiths College
Conclusions
 transactions
 concurrency
 concurrency problems
 locking
35