Presentation is loading. Please wait.

Presentation is loading. Please wait.

A PLFS Plugin for HDF5 for Improved I/O Performance and Analysis Kshitij Mehta 1, John Bent 2, Aaron Torres 3, Gary Grider 3, Edgar Gabriel 1 1 University.

Similar presentations


Presentation on theme: "A PLFS Plugin for HDF5 for Improved I/O Performance and Analysis Kshitij Mehta 1, John Bent 2, Aaron Torres 3, Gary Grider 3, Edgar Gabriel 1 1 University."— Presentation transcript:

1 A PLFS Plugin for HDF5 for Improved I/O Performance and Analysis Kshitij Mehta 1, John Bent 2, Aaron Torres 3, Gary Grider 3, Edgar Gabriel 1 1 University of Houston, Texas 2 EMC Corp. 3 Los Alamos National Lab DISCS 2012

2 Talk Outline ● Background – HDF5 – PLFS ● Plugin – Goals and Design ● Semantic Analysis ● Experiments and Results ● Conclusion

3 HDF5 – An Overview ● Hierarchical Data Format ● Data model, File format, and API ● Tool for managing complex data ● Widely used in industry and academia ● User specifies data objects and logical relationship between them ● HDF5 maintains data structures, memory management, metadata creation, file I/O

4 HDF5 – An Overview (II) ● Parallel HDF5 – Build with an MPI library – File create, dataset create, group create etc. are collective calls ● User can select POSIX I/O, or parallel I/O using MPI-IO (individual/collective) ● File portable between access by sequential, PHDF5

5 File HDF5 – An Overview (III) Group D1 D2 D3 Metadata D1 D2 D3.h5 file PEs

6 HDF5 – An Overview (IV) ● File is a top level object, collection of objects ● Dataset is a multi-dimensional array – Dataspace ● Number of dimensions ● Size of each dimension – Datatype ● Native (int, float, etc.) ● Compound (~struct) ● Group is a collection of objects (groups, datasets, attributes) ● Attributes used to annotate user data ● Hyperslab selection – Specify offset, stride in the dataspace – e.g. write selected hyperslab from matrix in memory to selected hyperslab in dataset in file

7 HDF5 Virtual Object Layer (VOL) ● Recently introduced by the HDF group ● New abstraction layer, intercepts API calls ● Forwards calls to object plugin ● Allows third party plugin development ● Data can be stored in any format – netCDF, HDF4 etc. Public API.h5 netCDF Object Plugin

8 Opportunities in HDF5 Preserve semantic information about HDF5 objects Single.h5 file a black box Allows performing post-processing on individual HDF5 objects Improve I/O performance on certain file systems N-1 access often results in sub-optimal I/O performance on file systems like Lustre

9 PLFS Parallel Log Structured File System developed at LANL, CMU, EMC Middleware positioned between application and underlying file system Transforms N-1 access pattern into N-N Processes write to separate files, sufficient metadata maintained to re-create the original shared file Demonstrated benefits on many parallel file systems

10 Goals of the new plugin Store data in a new format, different from the native single file format Preserves semantic information Perform additional analysis and optimizations Use PLFS to read/write data objects Tackles performance problem due to N-1 access

11 Plugin Design Implementation for various object functions Provide a raw mapping of HDF5 objects to the underlying file system HDF5 file, groups stored as directories Datasets as PLFS files Attributes as PLFS files stored as dataset_name.attr_name Use PLFS API calls in the plugin PLFS Xattrs store dataset metadata (datatype, dataspace,..) Xattrs provide key-value type access

12 PLFS Plugin ● Relative path describes relationship between objects ● User still sees the same API File Group D1 D2 D3 File/ Group/ D1 D2 Group/ D3

13 Semantic Analysis (I) Active Analysis Application can provide a data parser function PLFS applies function on the streaming data Function outputs key-value pairs which can be embedded in extensible metadata e.g. recording the height of the largest wave in ocean data within each physical file Quick retrieval of the largest wave, since only need to search extensible metadata Extensible metadata can be stored on burst buffers for faster retrieval

14 Active Analysis (II) PE PLFS data Parser Parser Output FS Burst Buffer

15 Semantic Analysis (II) Semantic Restructuring Allows re-organizing data into a new set of PLFS shards e.g. assume ocean model stored row-wise Column-wise access expensive Analysis routine can ask for “column-wise re- ordering” PLFS knows what it means, since it knows the structure Avoids application having to restructure data by calculating a huge list of logical offsets

16 Semantic Restructuring (II) Restructure HDF5 Datasets “Re-order wave lengths recorded in October 2012 in column-major (Hour x Day)”

17 Experiments and Results ● Lustre FS, 12 OSTs, 1M stripe size ● HDF5 performance tool “h5perf” ● Multiple processes write data to multiple datasets in a file ● Bandwidth values presented are average of 3 runs ● 1,2,4,8,32,64 PEs – 4 PEs/node max ● 10 datasets, minimum total data size 64G ● Comparing MPI-IO Lustre, Plugin, AD_PLFS (PLFS MPI-IO driver) ● Individual I/O (non-collective) tests

18 Write Contiguous Aligned transfer size of 1M For almost all cases, plugin better than MPI-IO, AD_PLFS shows best performance

19 Write Interleaved Unaligned transfer size of (1M + 10 bytes) Plugin performance > MPI-IO

20 Read Performance Contiguous reads ( 1M ) and Interleaved reads ( 1M+10 bytes ) Similar trend as in writes MPI-IO < Plugin < AD_PLFS

21 Conclusion ● New plugin for HDF5 developed using PLFS API ● New output format allows for Semantic Analysis ● Using PLFS improves I/O performance ● Tests show plugin performs better than MPI-IO in most cases, AD_PLFS shows best performance ● Future Work: Use AD_PLFS API calls in the plugin instead of native PLFS API calls, provide collective I/O in the plugin

22 Thank You Acknowledgements: Quincey Koziol, Mohamad Chaarawi – HDF group University of Dresden for access to Lustre FS

23 Why not use AD_PLFS on default.h5 file ? Changing output format allows for semantic analysis Provides a more object-based storage (DOE fast forward proposal – EMC, Intel, HDF working towards an object stack) Questions


Download ppt "A PLFS Plugin for HDF5 for Improved I/O Performance and Analysis Kshitij Mehta 1, John Bent 2, Aaron Torres 3, Gary Grider 3, Edgar Gabriel 1 1 University."

Similar presentations


Ads by Google