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Robust Storage Management in the Machine Room and Beyond

Robust Storage Management in the Machine Room and Beyond. Sudharshan Vazhkudai Computer Science Research Group Computer Science and Mathematics Division. In collaboration with ORNL : John Cobb, Greg Pike North Carolina State University : Xiaosong Ma, Zhe Zhang, Chao Wang, Frank Mueller

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Robust Storage Management in the Machine Room and Beyond

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  1. Robust Storage Management in the Machine Room and Beyond Sudharshan Vazhkudai Computer Science Research Group Computer Science and Mathematics Division In collaboration with ORNL: John Cobb, Greg Pike North Carolina State University: Xiaosong Ma, Zhe Zhang, Chao Wang, Frank Mueller The University of British Columbia: Matei Ripeanu, Samer Al Kiswany Virginia Tech: Ali Butt

  2. Problem space: Petascale storage crisis • Data staging, offloading, and checkpointing are all affected by data unavailability and I/O bandwidth bottleneck issues: • Compute time wasted on staging at the beginning of the job. • Early staging and late offloading waste scratch space. • Delayed offloading renders result data vulnerable to purging. • Checkpointing terabytes of data to a traditional file system results in an I/O bottleneck. • Storage failure: • Significant contributor to system downtime and CPU underutilization (during RAID reconstruction). • Failures per year: 3–7% disks, 3–16% controllers, and up to 12% SAN switches; 10x the rate expected from vendor specification sheets (J. Gray and C.V. Ingen, "Empirical measurements of disk failure rates and error rates," Technical Report MSR-TR-2005-166, Microsoft, December 2005.)! • Upshot: • Uptime low: • Due to job resubmissions. • Since checkpoints and restarts are expensive. • Increased job wait times due to staging/offloading and storage errors. • Poor end-user data delivery options.

  3. Approach • If you cannot afford a balanced system, develop management strategies to compensate. • Exploit opportunities throughout the HEC I/O stack: • Parallel file system. • Many unused resources: Memory, cluster node-local storage, desktop idle storage (both in machine room and client-side). • Disparate storage entities including archives and remote sources. • Concerted use of aforementioned: • Can be brought to bear upon urgent supercomputing issues, such as staging, offloading, prefetching, checkpointing, data recovery, I/O bandwidth bottleneck, and end-user data delivery.

  4. Approach (cont’d.) • View the entire HPC center as a system. • New ways to optimize this system’s performance and availability. Global coordinationlayer Scheduler Center-wide storage/processing Staging Offloading Checkpointing Prefetching Service agents Support for Existing Storage Elements Novel aggregate storage Storage abstractions layer Node-local disks Workstation/storage server Tape archives Parallel file systems Memory resources /home@NFS IBP Data communication pathway Scalable I/O across the center Collective downloads Data sessions Data shuffling Data sieving

  5. Global coordination • Motivation: Lack of global coordination between the storage hierarchy and system software. • As a start, need coordination between staging, offloading, and computation: • Problems with manual and scripted staging: • Human operational cost, wasted compute time/storage, and increased wait time due to resubmissions. • How? • Explicit specification of I/O activities alongside computation in a job script. • Zero-charge data transfer queue. • Planning and orchestration.

  6. Coordinating data and computation • Specification of I/O activities in PBS job script: • BEGIN STAGEIN • retry=3; interval=20 • hsi -A keytab -k MyKeytab -l user ‘‘get /scratch/user/Destination: Input’’ • END STAGEIN • BEGIN COMPUTATION • #PBS... • END COMPUTATION • BEGIN STAGEOUT ... END STAGEOUT • Separate data transfer queue: Zero charge: • Queuing up and scheduling data transfers. • Treats data transfers as “data jobs.” • Data transfers can now be charged, if need be! • Planning and orchestration • Parsing into individual stage-in, compute, and stage-out jobs. • Dependency setup and management using resource manager primitives.

  7. Seamless data path • Motivation: Standard data availability techniques designed with persistent data in mind: • RAID techniques can be time consuming; a 160-GB disk takes order of dozens of minutes. • Multiple disk failure within a RAID group can be crippling. • I/O node failovers are not always possible (thousands of nodes). • Need novel mechanisms to address “transient data availability” that complement existing approaches! • What makes it feasible? • Natural data redundancy in the staged job data. • Job input data usually immutable. • Network costs drastically decreasing each year. • Better bulk transfer tools with support for partial data fetches. • How? • Augmenting FS metadata with “recovery hints” from job script. • On-the-fly data reconstruction on another object storage target (OST). • Patching from data source.

  8. Data recovery • Embedding recovery metadata about transient job data into the Lustre parallel file system: • Extend Lustre metadata to include recovery hints. • Metadata extracted from job script. • “Source” and “sink” information becomes an integral part of transient data. • Failure detection to check for unavailable OSTs. • Reconstruction: • Locate substitute OSTs and allocate objects. • Mark data dirty in metadata directory service (MDS). • Recover URI from MDS. • Compute missing data range. • Remote patching: • Reducing multiple authentication costs per dataset. • Automated interactive session with “Expect” for single sign-on. • Protocols: hsi, GridFTP, NFS.

  9. 1,000,000 100,000 10,000 1,000 100 10 1 Data source /home 32 4 8 16 Results Machine room End user Head node Compute nodes Job script Job queue Stage data Checkpoint setup Compute job Offload data • Better use of users’ compute time allocation and decreased job turnaround time. • Optimal use of center’s scratch space, avoiding too early stage in and delayed offloading. • Reduces resubmissions due to result-data loss. • Reduces wait time: Trace-driven simulation of LANL operational data + LCF scratch data. Without reconstruction I/O nodes Source copy of dataset accessed using ftp, scp, GridFTP Planner Data queue 1,2 3 after 1, 4 after 3 Mean wait time (s) Regular I/O access to staged data Seamless I/O access via “data path” Archive With reconstruction NFS access hsi access /scratch parallel file system Stripe count Staging/offloading

  10. New storage abstractions • Checkpointing TB of data cumbersome; need better tools to address the storage bandwidth bottleneck. • Options: • Machines can potentially be provisioned with solid-state memory. • ~ 200 TB of aggregate memory in the PF machine; potential “residual memory”: • Tier 1 Apps (GTC, S3D, POP, CHIMERA) seldom use all memory. • Checkpoint size is ~ 10% of the memory footprint. • Many applications oversubscribe for processors in an attempt to plan for failure: • Use the oversubscribed processors! • Checkpoint to memory can expedite these operations. • Previous solutions are not concerted in their memory usage, creating artificial load imbalance: • Examples: J.S. Plank, K. Li, and M.A. Puening, “Diskless Checkpointing,” IEEE Transactions on Parallel and Distributed Systems, 1998. 9(10): p. 972-986. L.M. Silva, and J.G. Silva, “Using two-level stable storage for efficient checkpointing,” IEE Proceedings - Software, 1998. 145(6): p. 198-202.

  11. stdchk: A checkpoint-friendly storage • Aggregate memory-based storage abstraction: • Split checkpoint images into chunks and stripe them. • Parallel I/O across distributed memory. • Redundantly mounted on PEs for FS-like access. • Optimized, relaxed POSIX I/O interfaces to the storage. • Lazy migration of images to local disk/archives, creating a seamless data pathway. • Unused/underutilized processors can perform this operation. • Incremental checkpointing and pruning of checkpoint files. • Compare chunk hashes from two successive intervals. • Initial experiments suggest a 10–25% reduction in size for BLCR checkpoints. • Purge images from previous interval once the current image is safely stored. • File system is unable to perform such optimizations. • Specification of checkpoint preparation in a job script.

  12. End-user data delivery: An architecture for eager offloading of result data • Offloading result data equally important for local visualization and interpretation. • Storage system failure and purging of scratch space can cause loss of result data; end-user resource may not be available for offload. • Eager offloading: • Equivalent to data reconstruction. • Transparent data migration using “sink”/destination metadata as part of job submission (done as part of global coordination). • Data offloading can be overlapped with computation. • Can failover to intermediate storage/archives for planned transfers in the future: • Intermediate nodes specified by the user in the job script. • A one-to-many distribution followed by a many-to-one download. • A combination of bullet + landmarks (p2p + staged). • Erasure coded chunks for redundancy and fault tolerance. • Monitor offloads for bandwidth degradation and choose alternate paths accordingly.

  13. FreeLoader PVFS HPSS-Hot HPSS-Cold RemoteNFS waet-nchi 120 100 80 60 40 20 0 FreeLoader: Improving end-user data delivery with client-side collaborative caching • Enabling trends: • Unused storage: More than 50% desktop storage unused. • Immutable data: Data are usually write-once, read-many with remote source copies. • Connectivity: Well-connected, secure LAN settings. • FreeLoader aggregate storage cache: • Scavenges O(GB) of contributions from desktops. • Parallel I/O environment across loosely connected workstations, aggregating I/O as well as network BW. • NOT a file system, but a low-cost, local storage solution enabling client-side caching and locality. Throughput (MB/s) 512 MB 4 GB 32 GB 64 GB Dataset size

  14. Data source Data source Virtual cache: Impedance matching on steroids! • Can we host partial copies of datasets and yet serve client accesses to the entire dataset? • ~ FileSystem-BufferCache:Disk :: FreeLoader:RemoteDataSource. • Benefits: • Bootstrapping the download process. • Store more datasets. • Allows for efficient cache management. • Persistent storage and BW-only donors. Scientific Data Cache Persistent storage + BW donors Bootstrapping downloads using “seeds” across w Parallel get () dataset-1 Stripe width (w) Source copy of dataset-1 accessed http://source-1/dataset-1 BW donors Patch width (p) Transparent patching Parallel get () dataset-2 R Source copy of dataset-N accessed gsiftp://source-N/dataset-2 w p

  15. Contact • Sudharshan Vazhkudai • Computer Science Research Group • Computer Science and Mathematics Division • (865) 576-5547 • vazhkudaiss@ornl.gov • http://www.csm.ornl.gov/~vazhkuda/Storage.html 15Vazhkudai_FreeLoader_SC07

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