Eiger

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Processing of Eiger data is different from processing of conventional data, because the frames are wrapped into HDF5 files (ending with .h5). However, with the NEGGIA plugin for XDS, processing is as straightforward as before.

General aspects

  1. The framecache of XDS uses memory to save on I/O; it saves a frame in RAM after reading it for the first time. By default, each XDS (or mcolspot/mintegrate) job stores NUMBER_OF_IMAGES_IN_CACHE=DELPHI/OSCILLATION_RANGE images in memory which corresponds to one DELPHI-sized batch of data. This requires (number of pixels)*(number of jobs)*4 Bytes per frame which amounts to 72 MB in case of the Eiger 16M when running with MAXIMUM_NUBER_OF_JOBS=1. (If DELPHI=20 and OSCILLATION_RANGE=0.05 your computer thus has to have at least 400*72MB = 29GB of memory for each job). If it has not, the fallback is to the old behaviour of reading each frame three times (instead of once). There is an upper limit (8GB) to the amount of memory that will be used by default; if the required memory is more than that, a message will be printed and the user must explicitly include a NUMBER_OF_IMAGES_IN_CACHE= line in XDS.INP.
  2. Dectris provides a library [1] for native reading of HDF5 files, which can be loaded into XDS at runtime using the LIB= keyword. With this library, no conversion to CBF or otherwise is necessary. It is therefore just as fast and efficient to read HDF5 files as any other file format.
  3. The XDS BUILT=20170215 has a problem with constructing the master filename, see Eiger#Troubleshooting.

A suitable XDS.INP may have been written by the data collection (beamline) software. Latest generate_XDS.INP (generate_XDS.INP xxx_master.h5) or the XDS_from_H5.py script can be used if XDS.INP is not available.

Compression

The number of pixels of the Eiger 16M is three times higher than that of the Pilatus 6M, but since the Eiger firmware update in November 2015, the ("bit shufflle LZ4") compression of the .h5 files containing data is better than that of CBF files, which mostly compensates for the increased number of pixels.

The size of the *master.h5 file from a Eiger 16M experiment at SLS X06SA is more than 300MB, no matter how many frames are collected. It is therefore advisable to compress (by ~75%) the *master.h5 files on-site, before transferring them home using disk or internet. A very fast (parallel) program is lbzip2 (available from the EPEL repository for RHEL clones). It is supposedly fully compatible with bzip2.

Update 2016-06-05 (Toine Schreurs): a HDF5 file may be compressed with h5repack, e.g. by h5repack -i <in.h5> -o <out.h5> -f GZIP=6 (6 is the default compression level of gzip). This should be a good way to reduce the size of master files while keeping them compatible with processing, but needs to be tested. Whether h5repack uses parallel gzip is not clear from the docs.

A benchmark

Any comparisons should be based on a common dataset. I downloaded from https://www.dectris.com/datasets.html their latest dataset ftp://dectris.com/EIGER_16M_Nov2015.tar.bz2 (900 frames) and processed it on a single unloaded CentOS7.2 64bit machine with dual Intel(R) Xeon(R) CPU E5-2667 v2 @ 3.30GHz , HT enabled (showing 32 processors in /proc/cpuinfo), on a local XFS filesystem (all defaults), with four JOBs and 12 PROCESSORS (the XDS.INP that Dectris provides suggests 8 JOBs of 12 PROCESSORS, but I changed that).

On multi-socket machines, there are additional considerations having to do with their NUMA architecture - see Performance.

Xeon Phi (Knights Landing, KNL)

The benchmark was run on a single KNL7210 processor (256 cores) set to quadrant mode and using the MCDRAM as cache. The environment variable OMP_PROC_BIND was set to false, or KMP_AFFINITY set to none (if this is not done, the scheduler seems to put all threads on one core). XDS was compiled with the -xMIC-AVX512 option of ifort. These benchmarks were performed with "warm" operating system cache, which means that the first run of a given type didn't count because it had to read all data from disk.

Deviating from the Xeon benchmark setup, BACKGROUND_RANGE was set to a more realistic value of 1 50 (instead of 1 9).

Using the Dectris library that makes use of the LIB= option of XDS:

INIT:            elapsed wall-clock time       30.4 sec
COLSPOT:         elapsed wall-clock time       40.7 sec
INTEGRATE: total elapsed wall-clock time       52.9 sec

Now additionally running with numactl --preferred=1 xds_par after having modified the forkintegrate script such that it starts mintegrate_par with the same numactl parameters:

INIT.LP:         elapsed wall-clock time       29.8 sec
COLSPOT:         elapsed wall-clock time       40.0 sec
INTEGRATE: total elapsed wall-clock time       51.3 sec

This was running with a 8GB/8GB split (hybrid) MCDRAM. The same run, but with 8 JOBS and 32 PROCESSORS, takes

INIT.LP:         elapsed wall-clock time       25.3 sec
COLSPOT:         elapsed wall-clock time       40.1 sec
INTEGRATE: total elapsed wall-clock time       53.1 sec

Back to 16 JOBS and 16 PROCESSORS, but with MCDRAM in flat mode und numactl --preferred=1 xds_par (thus using all 16GB for arrays, and nothing for cache):

INIT.LP:         elapsed wall-clock time       29.5 sec
COLSPOT:         elapsed wall-clock time       38.6 sec
INTEGRATE: total elapsed wall-clock time       53.2 sec

Now setting the KNL to SNC4 mode, and the MCDRAM to cache (using it in flat mode is impractical because the --preferred argument takes only 1 argument; to determine the correct argument requires scripting):

INIT.LP:         elapsed wall-clock time       29.6 sec
COLSPOT.LP:      elapsed wall-clock time       37.8 sec 
INTEGRATE: total elapsed wall-clock time       49.6 sec

If the library is compiled with -mtune=knl, all times are about 1 second less.

Conclusions: since INIT benefits from more PROCESSORs, one could run XDS twice for fastest turnaround; the first run with JOBS=XYCORR INIT and a high number of processors (99 is maximum). The second run with JOB=COLSPOT IDXREF DEFPIX INTEGRATE CORRECT, and an optimized JOBS/PROCESSORS combination. The SNC4 mode is fastest in this example - to do better than the cache mode of the MCDRAM, one needs to adapt the forkcolspot and forkintegrate script- see Performance. Other examples (with more frames) confirmed that cache mode is best for quadrant and SNC4, and resulted in quadrant mode being superior to SNC4. To optimally use the latter, one needs to thoroughly understand and properly use the relevant environment variables, in particular KMP_AFFINITY and KMP_PLACE_THREADS.

For comparison, if these data are stored as CBFs, COLSPOT and INTEGRATE take 34.8 and 45.2 seconds, respectively, in SNC4 mode. However, with a cold cache (i.e. when data are read for the first time), the HDF5 files have an advantage because they are a factor 2.5 smaller, due to the better compression.

Troubleshooting

  • make sure that master.h5 and the corresponding data.h5 files remain together as collected, and don't rename the data.h5 files - they are referred to from master.h5. If you change the names of the data.h5 files or copy them somewhere else, that link is broken unless you fix master.h5.
  • the very latest XDS (BUILT=20170215) has a problem with reading Eiger data - the master filename is not correctly constructed. The workaround is to either use the previous BUILT of 20161205, or to place a symlink e.g. ln -s my_data_master.h5 my_data_000001.h5. The next BUILT will of course fix the problem. The main difference between the two latest builds is in XDSCONV, so you can use all executables from the earlier build, but replace XDSCONV with the latest version.

XDS_from_H5.py script for generating XDS.INP given a master .h5 file

Download XDS_from_H5.py.

  • Made script executable and put into /usr/local/bin.
  • Install ALBULA API
  • Install numpy (yum -y install numpy) as root if you get the error message
    • ImportError: No module named numpy.core.multiarray

Once XDS.INP has been generated,

  • Make sure no nonsense has been extracted from master.h5.
  • Make sure INCIDENT_BEAM_DIRECTION= corresponds to the experimental geometry.
  • Point LIB= to where Neggia is saved.
    • Comment out LIB= if Neggia isn't used (not recommended).
  • Set MAXIMUM_NUMBER_OF_JOBS= and MAXIMUM_NUMBER_OF_PROCESSORS= to similar values whose product is slightly smaller than the total number of threads on your system.

Less efficient way of processing Eiger data, using conversion to CBF

Since the release of NEGGIA, a plugin for XDS that parallelizes the reading of images from HDF5 data, conversion to H5ToXds should no longer required in most usage scenarios. The sections below nevertheless describe this possibility, since preliminary experience with some less common network file systems (apparently GPFS, but not NFS) seems to indicate low performance of NEGGIA.

Conversion program options: Dectris provides H5ToXds (Linux only!). That program converts (as the name indicates) the HDF5 files to CBF files; however, it does not write the geometry and other information into the CBF header (therefore, generate_XDS.INP or MOSFLM does not work with these files). Alternatives are GlobalPhasing's hdf2mini-cbf program (needs autoPROC license) or, from http://www.mrc-lmb.cam.ac.uk/harry/imosflm/ver721/downloads, the eiger2cbf-osx or eiger2cbf-linux program written by T. Nakane. The latter programs do write a useful CBF header.

For faster processing, the shell script below should be copied to /usr/local/bin/H5ToXds and made executable (chmod a+rx /usr/local/bin/H5ToXds*). The binary H5ToXds then should be named e.g. /usr/local/bin/H5ToXds.bin - note the .bin filename extension! The script also uses RAM to speed up processing; it uses it for fast storage of the temporary CBF file that H5ToXds/eiger2cbf/hdf2mini-cbf writes, and that each parallel thread ("processor") of XDS reads. The amount of additional RAM this requires is modest (about (number of pixels)*(number of threads) bytes).

Benchmark using H5ToXds

This was run on a single unloaded CentOS7.2 64bit machine with dual Intel(R) Xeon(R) CPU E5-2667 v2 @ 3.30GHz , HT enabled (showing 32 processors in /proc/cpuinfo), on a local XFS filesystem (all defaults), with four JOBs and 12 PROCESSORS. The numbers below refer to the H5ToXds binary as used in the script below.

The timing, using the XDS (BUILT=20151231), is on the first run

INIT:  elapsed wall-clock time       12.0 sec
COLSPOT: elapsed wall-clock time       44.9 sec
INTEGRATE: total elapsed wall-clock time       65.1 sec
CORRECT: elapsed wall-clock time        2.9 sec
Total elapsed wall-clock time for XDS      133.6 sec

When I repeat this, I get

Total elapsed wall-clock time for XDS      128.3 sec

Repeat once again:

Total elapsed wall-clock time for XDS      129.3 sec

So a bit of cache-warming helps, but not much. This machine has 64GB RAM. From the output of "top", the highest memory usage occurs during INTEGRATE, when each of the mintegrate_par processes consumes up to 7.4% of the memory. In other words, in this way less than 20GB of total memory are used. "top" shows a CPU consumption around (on average) 4 times 650%.

The number of JOBs and PROCESSORs could be optimized. I tried 6 JOBs and get

Total elapsed wall-clock time for XDS      120.1 sec

so there's still some room for improvement.

With program versions as of 2016-03-10, eiger2cbf-linux is practically as fast as the H5ToXds binary; hdf2mini-cbf is somewhat slower.

When unpacking the .h5 files to .cbf files and processing those, I get on the same machine and with same processing parameters:

Total elapsed wall-clock time for XDS       96.3 sec

which indicates a 24% overhead due to the HDF5-to-CBF conversion. However, one has to add to this the time for the HDF5-to-CBF conversion, which is (with 18 parallel H5ToXds jobs each converting 50 frames) 34.2 sec, so overall the "on-the-fly" route using the script below is faster than the "pre-conversion" route, at least on this machine.

A script for faster XDS processing of CBF-converted Eiger data

#!/bin/bash
# Kay Diederichs 10/2015
# 3/2017 include RAMdisk creation for MacOS; only lightly tested!
# 3/2016 adapt for eiger2cbf and hdf2mini-cbf
# for the latter see https://www.jiscmail.ac.uk/cgi-bin/webadmin?A2=ccp4bb;58a4ee1.1603 and
# https://www.jiscmail.ac.uk/cgi-bin/webadmin?A2=ccp4bb;a048b4e8.1603 
#
# Idea: put temporary files into fast local directory, instead of NFS
#
# Installation: Rename Dectris' H5ToXds to H5ToXds.bin
#               This script should be called H5ToXds and reside in $PATH 
#               Modify this script according to which binary you use - see comments below.
#
# Recommendation:
# - for the fast local directory one should use a RAMdisk (one GB size at most)
# - /dev/shm seems to be already set up for that purpose on most Linux distributions
# - on MacOS you can easily set this up as described at http://stackoverflow.com/questions/2033362/does-os-x-have-an-equivalent-to-dev-shm
# example on MacOS for 1GB RAMdisk (needs to be repeated after booting):
# diskutil eraseVolume HFS+ RAMdisk $(hdiutil attach -nomount ram://$((2 * 1024 * 1000)))
#
# on MacOS the next line should then be:
# tempfile="/Volumes/RAMdisk/H5ToXds${PWD//\//_}.$3"
# and on Linux:
tempfile="/dev/shm/H5ToXds${PWD//\//_}.$3"
#
# choose between H5ToXds.bin,  eiger2cbf and hdf2mini-cbf; un/comment accordingly 
/usr/local/bin/H5ToXds.bin $1 $2 "$tempfile" || rm "$tempfile"
#/usr/local/bin/eiger2cbf-linux $1 $2 "$tempfile" >& /dev/null  || rm "$tempfile"
#/usr/local/bin/eiger2cbf-osx $1 $2 "$tempfile" >& /dev/null  || rm "$tempfile"
#/usr/local/bin/hdf2mini-cbf $1 $2 "$tempfile"  || rm "$tempfile"
ln -sf "$tempfile" $3 2>/dev/null

See also

Performance