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Storage Systems CSE 598d, Spring 2007. Lecture 5: Redundant Arrays of Inexpensive Disks Feb 8, 2007. What is a RAID?. Why RAID?. Higher performance Higher I/O rates for short operations by exploiting parallelism in disk arms
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Storage SystemsCSE 598d, Spring 2007 Lecture 5: Redundant Arrays of Inexpensive Disks Feb 8, 2007
Why RAID? • Higher performance • Higher I/O rates for short operations by exploiting parallelism in disk arms • Higher bandwidth for larger operations by exploiting parallelism in transfers • However, we need to address the linear decrease in MTTF by introducing redundancy
Data Striping • Stripe: Unit at which data is distributed across the disks • Small stripes: Greater parallelism for each (small) request, however higher overheads • Large stripes: Less parallelism for small requests, but preferable for large requests
Redundancy • Mechanism: Parity, ECC, Reed-Solomon codes, Mirroring • Distribution schemes: • Concentrate redundancy on a few disks • Distribute the parity similar to data
RAID Taxonomy/Levels • RAID 0 (Non-Redundant) • RAID 1 (Mirrored) • RAID 2 (ECC) • RAID 3 (Bit-interleaved Parity) • RAID 4 (Block-interleaved Parity) • RAID 5 (Block-interleaved distributed Parity) • RAID 6 (P+Q Redundancy) • RAID 0+1 (Mirrored arrays)
Non-Redundant (RAID 0) • Simply stripe the data across the disks without worrying about redundancy • Advantages: • Lowest cost • Best write performance, used in some supercomputing environments • Disadvantages: • Cannot tolerate any data loss
Mirrored (RAID 1) • Each disk is mirrored • Whenever you write to a disk, also write to its mirror • Read can go to any one of the mirrors (with shorter queueing delay) • What if one (or both) copies of a block get corrupted? • Uses twice the number of disks! • Often used in database applications where availability and transaction rate are more important than storage efficiency (cost of storage system)
ECC (RAID 2) • Use Hamming codes (go over example) • Parity for distinct non-overlapping sets of components • Helps identify and fix the errors • Storage efficiency is logarithmic with the number of disks
Bit-Interleaved Parity (RAID 3) • Unlike memory, one can typically identify which disk has failed • Simple parity can thus suffice to identify/fix single error occurrences • Data is interleaved bit-wise over the disks, and a single parity disk is provisioned • Each read request spans all data disks • Each write request spans all data disks and parity disk • Consequently, only 1 outstanding request at a time • Sometimes referred to as “synchronized disks” • Suitable for apps need high data rate but not high I/O rate • E.g., some scientific apps with high spatial data locality
Block-Interleaved Parity (RAID 4) • Data is interleaved in blocks of certain size (striping unit) • Small (< 1 stripe) requests • Reads access only 1 disk • Writes need 4 disk accesses (write new data, read old data, read old parity, write new parity) – read-modify-write procedure • Large requests can enjoy good parallelism • Parity disk can become a bottleneck – load imbalance
Block Interleaved Distributed Parity (RAID 5) • Distributes the parity across the data disks (no separate parity disk) • Best small read, large read and large write performance of any redundant array
Distribution of data in RAID 5 • Ideally, you want to access each disk once before accessing any disk twice (when traversing blocks sequentially) • Left symmetric parity placement
P+Q Redundancy (RAID 6) • Parity requires single, self-identifying error • More disks => Higher probability of multiple simultaneous failures • Idea: Use Reed-Solomon Codes for redundancy • Given a set of “k” input symbols. RS adds “2t” redundant symbols to give a total number of symbols “n=k+2t” • 2t is the number of self-identifying errors we want to protect against • The resulting “n” sequence can: • Correct “t” errors • Correct “2t” erasures • Error locations are known • So if we want to tolerate 2 disk failures, we only need t=1, i.e. 2 redundant disks • Performance similar as RAID-5, except small writes incur 6 accesses to update P and Q
Mirrored Arrays (RAID 0+1) • Combination of “0” and “1” • Partition the array into groups of “m” each, with each disk in a group reflecting/mirroring the contents of the corresponding disk in other groups. If “m=2”, becomes single mirror
Throughput per dollar relative to RAID-0 Assumptions: Perfect load balancing “Small”: Requests for 1 striping unit “Large”: Requests of 1 full stripe (1 unit from each disk in an error correcting group) G: No. of disks in an error correction group RAID-5 provides good trade-offs, and its variants used more commonly in practice
Reliability • Say the mean-time-between-failures of a single disk is MTBF • Mean-time-between-failures of a 2-disk array without any redundancy is • MTBF/2 (MTBF/N for a N disk array) • Say we have 2 disks, where 1 is the mirror of another. What is the MTBF of this system? • It can be calculated based on the probability of 1 disk failing, and the second disk also failing during the time it takes to repair the first disk • (MTBF/2) * (MTBF/MTTR) • MTTF of a RAID-5 array is given by • (MTBF*MTBF)/N*(G-1)*MTTR
Reliability (contd.) • With 100 disks each with MTBF=200K hours, a MTTR=1 hr, and a group size of 16, MTBF of this RAID-5 system is 3000 years! • However, higher levels of reliability are still needed!!!
Why? • System crashes and Parity inconsistencies • Not just disks fail. System may crash in the middle of updating parity leading to inconsistencies later on • Uncorrectable Bit Errors • There may be an error when obtaining the data from a single disk (usually incorrect writes) that may not be correctable • Disk failures are usually correlated • Natural calamities, power surges/failures, common support hardware • Also, disk reliability characteristics (e.g. inverted bathtub) may themselves be correlated
Implementation Issues • Avoiding stale data • When a disk failure is detected, mark its sectors to be “invalid”, and after the new disk is re-created mark its sectors to be “valid” • Regenerating parity after crash • Mark parity sectors “Inconsistent” before servicing any write • When a system comes up, regenerate all “Inconsistent” parity sectors • Periodically mark “Inconsistent” parities to be “Consistent” – you can do better management based on need
Orthogonal RAID • Reduces disk failure correlations • Reduces string conflicts
Improving small write performance in RAID-5 • Buffering and Caching • Buffer writes in a NVRAM to coalesce writes, avoid redundant writes, get better sequentiality, and allow better disk scheduling • Floating parity • Cluster parity into cylinders each with some spares. When parity needs to be updated, new parity block can be written on the rotationally-closest unallocated block following old parity • Needs a level of indirection to get to latest parity • Parity Logging • Keep a log of differences that need to be made to parity (in NVRAM and on a log disk). Later on update the new parity
Declustered Parity • We not only want to balance load in the normal case, but also when there are failures Say Disk 2 fails in the two configurations. The latter will more evenly balance the load
Online Spare Disks • To allow reconstruction to start immediately (no MTBR) so that window of vulnerability is low • Distributed Sparing • Rather than keep separate disks (idling), spread the spare capacity around. • Parity Sparing • Use the space capacity to store additional parity. One can view this as P+Q redundancy • Or small writes can update just one of the parities based on head position, queue length, etc.
Data Striping • Trade-off between seek/positioning times, data sequentiality and transfer parallelism • Optimal size of data striping is Sqrt(P.X.(L-1).Z/N) where • P is the avg. positioning time • X is the avg. transfer rate • L is the concurrency • Z is the request size • N is no. of disks. • Common rule of thumb where not much is known about the workload for RAID-5 is ½ * avg. positioning time * transfer rate