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Distributed Databases Chapter 22, Part B Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 1

Introduction Data is stored at several sites, each managed by a DBMS that can run independently. Distributed Data Independence: Users should not have to know where data is located (extends Physical and Logical Data Independence principles). Distributed Transaction Atomicity: Users should be able to write Xacts accessing multiple sites just like local Xacts. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 2

Recent Trends Users have to be aware of where data is located, i.e., Distributed Data Independence and Distributed Transaction Atomicity are not supported. These properties are hard to support efficiently. For globally distributed sites, these properties may not even be desirable due to administrative overheads of making location of data transparent. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 3

Types of Distributed Databases Homogeneous: Every site runs same type of DBMS. Heterogeneous: Different sites run different DBMSs (different RDBMSs or even nonrelational DBMSs). DBMS1 DBMS2 DBMS3 Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 4

Distributed DBMS Architectures Client-Server QUERY Client ships query to single site. All query processing at server. - Thin vs. fat clients. - Set-oriented communication, client side caching. Collaborating-Server Query can span multiple sites. CLIENT CLIENT SERVER SERVER SERVER SERVER QUERY SERVER SERVER Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 5

Storing Data Fragmentation Horizontal: Usually disjoint. Vertical: Lossless-join; tids. Replication TID t1 t2 t3 t4 Gives increased availability. Faster query evaluation. Synchronous vs. Asynchronous. Vary in how current copies are. R1 R1 R3 R2 SITE A SITE B Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 6

Distributed Catalog Management Must keep track of how data is distributed across sites. Must be able to name each replica of each fragment. To preserve local autonomy: <local-name, birth-site> Site Catalog: Describes all objects (fragments, replicas) at a site + Keeps track of replicas of relations created at this site. To find a relation, look up its birth-site catalog. Birth-site never changes, even if relation is moved. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 7

Distributed Queries SELECT AVG(S.age) FROM Sailors S WHERE S.rating > 3 AND S.rating < 7 Horizontally Fragmented: Tuples with rating < 5 at Shanghai, >= 5 at Tokyo. Must compute SUM(age), COUNT(age) at both sites. If WHERE contained just S.rating>6, just one site. Vertically Fragmented: sid and rating at Shanghai, sname and age at Tokyo, tid at both. Must reconstruct relation by join on tid, then evaluate the query. Replicated: Sailors copies at both sites. Choice of site based on local costs, shipping costs. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 8

LONDON PARIS Distributed Joins Fetch as Needed, Page NL, Sailors as outer: Cost: 500 D + 500 * 1000 (D+S) Sailors Reserves 500 pages 1000 pages D is cost to read/write page; S is cost to ship page. If query was not submitted at London, must add cost of shipping result to query site. Can also do INL at London, fetching matching Reserves tuples to London as needed. Ship to One Site: Ship Reserves to London. Cost: 1000 S + 4500 D (SM Join; cost = 3*(500+1000)) If result size is very large, may be better to ship both relations to result site and then join them! Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 9

Semijoin At London, project Sailors onto join columns and ship this to Paris. At Paris, join Sailors projection with Reserves. Result is called reduction of Reserves wrt Sailors. Ship reduction of Reserves to London. At London, join Sailors with reduction of Reserves. Idea: Tradeoff the cost of computing and shipping projection for cost of shipping full Reserves relation. Especially useful if there is a selection on Sailors, and answer desired at London. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 10

Bloomjoin At London, compute a bit-vector of some size k: Hash join column values into range 0 to k-1. If some tuple hashes to I, set bit I to 1 (I from 0 to k-1). Ship bit-vector to Paris. At Paris, hash each tuple of Reserves similarly, and discard tuples that hash to 0 in Sailors bit-vector. Result is called reduction of Reserves wrt Sailors. Ship reduced Reserves to London. At London, join Sailors with reduced Reserves. Bit-vector cheaper to ship, almost as effective. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 11

Distributed Query Optimization Cost-based approach; consider all plans, pick cheapest; similar to centralized optimization. Difference 1: Communication costs must be considered. Difference 2: Local site autonomy must be respected. Difference 3: New distributed join methods. Query site constructs global plan, with suggested local plans describing processing at each site. If a site can improve suggested local plan, free to do so. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 12

Updating Distributed Data Synchronous Replication: All copies of a modified relation (fragment) must be updated before the modifying Xact commits. Data distribution is made transparent to users. Asynchronous Replication: Copies of a modified relation are only periodically updated; different copies may get out of synch in the meantime. Users must be aware of data distribution. Current products follow this approach. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 13

Synchronous Replication Voting: Xact must write a majority of copies to modify an object; must read enough copies to be sure of seeing at least one most recent copy. E.g., 10 copies; 7 written for update; 4 copies read. Each copy has version number. Not attractive usually because reads are common. Read-any Write-all: Writes are slower and reads are faster, relative to Voting. Most common approach to synchronous replication. Choice of technique determines which locks to set. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 14

Cost of Synchronous Replication Before an update Xact can commit, it must obtain locks on all modified copies. Sends lock requests to remote sites, and while waiting for the response, holds on to other locks! If sites or links fail, Xact cannot commit until they are back up. Even if there is no failure, committing must follow an expensive commit protocol with many msgs. So the alternative of asynchronous replication is becoming widely used. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 15

Asynchronous Replication Allows modifying Xact to commit before all copies have been changed (and readers nonetheless look at just one copy). Users must be aware of which copy they are reading, and that copies may be out-of-sync for short periods of time. Two approaches: Primary Site and Peer-to- Peer replication. Difference lies in how many copies are ``updatable or ``master copies. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 16

Peer-to-Peer Replication More than one of the copies of an object can be a master in this approach. Changes to a master copy must be propagated to other copies somehow. If two master copies are changed in a conflicting manner, this must be resolved. (e.g., Site 1: Joe s age changed to 35; Site 2: to 36) Best used when conflicts do not arise: E.g., Each master site owns a disjoint fragment. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 17

Primary Site Replication Exactly one copy of a relation is designated the primary or master copy. Replicas at other sites cannot be directly updated. The primary copy is published. Other sites subscribe to (fragments of) this relation; these are secondary copies. Main issue: How are changes to the primary copy propagated to the secondary copies? Done in two steps. First, capture changes made by committed Xacts; then apply these changes. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 18

Implementing the Capture Step Log-Based Capture: The log (kept for recovery) is used to generate a Change Data Table (CDT). If this is done when the log tail is written to disk, must somehow remove changes due to subsequently aborted Xacts. Procedural Capture: A procedure that is automatically invoked (i.e., trigger) does the capture; typically, just takes a snapshot. Log-Based Capture is better (cheaper, faster) but relies on log details. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 19

Implementing the Apply Step The Apply process at the secondary site periodically obtains (a snapshot or) changes to the CDT table from the primary site, and updates the copy. Period can be timer-based or user/application defined. Log-Based Capture plus continuous Apply minimizes delay in propagating changes. Procedural Capture plus application-driven Apply is the most flexible way to process changes. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 20

Distributed Locking How do we manage locks for objects across many sites? Centralized: One site does all locking. Vulnerable to single site failure. Primary Copy: All locking for an object done at the primary copy site for this object. Reading requires access to locking site as well as site where the object is stored. Fully Distributed: Locking for a copy done at site where the copy is stored. Locks at all sites while writing an object. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 21

Distributed Deadlock Detection Each site maintains a local waits-for graph. A global deadlock might exist even if the local graphs contain no cycles: T1 T2 T1 T2 T1 T2 SITE A SITE B GLOBAL Three solutions: Centralized: send all local graphs to one site Hierarchical: organize sites into a hierarchy and send local graphs to parent in the hierarchy Timeout: abort Xact if it waits too long Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 22

Distributed Recovery Two new issues: New kinds of failure, e.g., links and remote sites. If sub-transactions of an Xact execute at different sites, all or none must commit. Need a commit protocol to achieve this. A log is maintained at each site, as in a centralized DBMS, and commit protocol actions are additionally logged. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 23

Two-Phase Commit (2PC) Site at which Xact originates is coordinator; other sites at which it executes are subordinates. When an Xact wants to commit: Coordinator sends prepare msg to each subordinate. Subordinate force-writes an abort or prepare log record and then sends a no or yes msg to coordinator. If coordinator gets unanimous yes votes, force-writes a commit log record and sends commit msg to all subs. Else, force-writes abort log rec, and sends abort msg. Subordinates force-write abort/commit log rec based on msg they get, then send ack msg to coordinator. Coordinator writes end log rec after getting all acks. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 24

Comments on 2PC Two rounds of communication: first, voting; then, termination. Both initiated by coordinator. Any site can decide to abort an Xact. Every msg reflects a decision by the sender; to ensure that this decision survives failures, it is first recorded in the local log. All commit protocol log recs for an Xact contain Xactid and Coordinatorid. The coordinator s abort/commit record also includes ids of all subordinates. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 25

Restart After a Failure at a Site If we have a commit or abort log rec for Xact T, but not an end rec, must redo/undo T. If this site is the coordinator for T, keep sending commit/abort msgs to subs until acks received. If we have a prepare log rec for Xact T, but not commit/abort, this site is a subordinate for T. Repeatedly contact the coordinator to find status of T, then write commit/abort log rec; redo/undo T; and write end log rec. If we don t have even a prepare log rec for T, unilaterally abort and undo T. This site may be coordinator! If so, subs may send msgs. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 26

Blocking If coordinator for Xact T fails, subordinates who have voted yes cannot decide whether to commit or abort T until coordinator recovers. T is blocked. Even if all subordinates know each other (extra overhead in prepare msg) they are blocked unless one of them voted no. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 27

Link and Remote Site Failures If a remote site does not respond during the commit protocol for Xact T, either because the site failed or the link failed: If the current site is the coordinator for T, should abort T. If the current site is a subordinate, and has not yet voted yes, it should abort T. If the current site is a subordinate and has voted yes, it is blocked until the coordinator responds. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 28

Observations on 2PC Ack msgs used to let coordinator know when it can forget an Xact; until it receives all acks, it must keep T in the Xact Table. If coordinator fails after sending prepare msgs but before writing commit/abort log recs, when it comes back up it aborts the Xact. If a subtransaction does no updates, its commit or abort status is irrelevant. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 29

2PC with Presumed Abort When coordinator aborts T, it undoes T and removes it from the Xact Table immediately. Doesn t wait for acks; presumes abort if Xact not in Xact Table. Names of subs not recorded in abort log rec. Subordinates do not send acks on abort. If subxact does not do updates, it responds to prepare msg with reader instead of yes/no. Coordinator subsequently ignores readers. If all subxacts are readers, 2nd phase not needed. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 30

Summary Parallel DBMSs designed for scalable performance. Relational operators very wellsuited for parallel execution. Pipeline and partitioned parallelism. Distributed DBMSs offer site autonomy and distributed administration. Must revisit storage and catalog techniques, concurrency control, and recovery issues. Database Management Systems, 2 nd Edition. R. Ramakrishnan and Johannes Gehrke 31