Hi Graeme,
> 1. Tweaking rfio read ahead doesn't do anything for panda analysis,
> because the stager streams the data to the worker node. For most UK
> sites this should be rfcp, but in fact I see that many of our DPM
> sites are still using lcg-cp. I'll try and correct this tonight. Panda
> has a built in timeout on the stager of 1800s, so if the load is such
> that the file copy time is greater than this your success rate
> plummets (this certainly happened at MAN-HEP2 early last week).
in Manchester what caused(s) problems are panda jobs using rfcp (as
already pointed out we don't have WMS jobs) and for all those failures
there where hundreds of jobs hanging, copying few bytes every second
from an overloaded pool. So although a better file distribution on the
pools would have been more helpful, tweaking the read ahead was
something to try. That it didn't work for other reasons (your point 5)
is another matter.
> but I think this is probably skewed by the capping which meant that
may jobs ran out of
> proxy time before they could run
if anything the capping helped in Manchester to reduce the load on the storage and the jobs that before hanged for days trying to copy data run now in few hours so even though it looks like skewing it might instead help.
cheers
alessandra
Graeme Stewart wrote:
> Addressing some of the points on the thread:
>
>
>
> 2. Like Liverpool with file stager, we found the rfcp stager in panda
> could make significant headway even when the network was maxed out by
> apparently useless i/o and network traffic from jobs accessing via
> rfio (my speculation is that sensible "streaming" access is probably
> preferred by the RAID card so it gets a better throughput, even under
> load).
>
> 3. The WMS analysis runs a mixture of file stager and DQ2_LOCAL (rfio
> or dcap) access, all using Johannes'. In retrospect this is was a
> mistake as it meant that the sites had no easy way to distinguish
> between these important differences in access pattern. One thing we
> could try is to deliberately ban sites from one form of analysis to
> try and disentangle this - we could stop the rfio access at Liverpool
> and see how well the hammercloud AOD analysis performs with file
> stager only. We might well try this at Glasgow on Thursday.
>
> (At the moment http://atlas-ganga-storage.cern.ch/test_426/ and
> http://atlas-ganga-storage.cern.ch/test_428/ use DQ2_LOCAL and
> http://atlas-ganga-storage.cern.ch/test_429/ uses file stager.)
>
> 4. File stager should be more analogous to the way that panda access
> the data - copy to the worker node. However, it does not seem to work
> much better for Glasgow in the current statistics, but I think this is
> probably skewed by the capping which meant that may jobs ran out of
> proxy time before they could run (obviously this doesn't happen to
> panda jobs). (Our SE hated file stager with small AOD files though, I
> remember, it did something evil we never quite fathomed.)
>
>
>
> 6. I can't help but post one plot from ganglia, of the week snapshot:
>
> - Giant load spike one week ago when we were running 1250 analysis
> jobs; many disk servers in utter panic (load up to 200).
> - Job capping the controlled load, but network continually maxed out
> (I now think this was the rfio:/// access).
> - Saturday I switched read ahead to 0 bytes - network still maxed
> out, load reduced, a lot of i/o wait on the disk servers.
> - Tuesday all WMS jobs (but 1) were stopped - finally the network
> dropped off the 1.4GB/s maximum to ~400MB/s (this was with 200 panda
> jobs). Ramp up of panda analysis shows the network load climbing up
> again.
>
> Currently we're at 600 panda analysis jobs and running nicely.
> Tail+eyeball on the PBS logs seems to hint that the CPU efficiency is
> up to ~60%.
>
> Many thanks for everyone's inputs. Feel free to be creative the rest
> of the week to try and learn as much as we can.
>
> Cheers
>
> Graeme
>
> On Tue, Jun 9, 2009 at 17:39, John Bland<[log in to unmask]> wrote:
>
>> Sam Skipsey wrote:
>>
>>> 2009/6/9 Ewan MacMahon <[log in to unmask]>:
>>>
>>>>> -----Original Message-----
>>>>> From: Testbed Support for GridPP member institutes [mailto:TB-
>>>>>
>>>>> Gentlepersons,
>>>>>
>>>> <huge snip>
>>>>
>>>>> Of course, this would be even more useful if other sites (UK for
>>>>> starters) could do something similar, so we could compare data across
>>>>> storage and cluster implementations too.
>>>>>
>>>>>
>>>> It sounds like you're having a similar experience to us, but you're a
>>>> bit further ahead; I'd expect that we'll be following shortly behind.
>>>>
>>>> One thing I don't understand is quite what the difference between the
>>>> current batch of WMS jobs and those we've seen in previous hammercould
>>>> tests is - we're seeing completely different usage patterns with the
>>>> bottleneck being very definitely the DPM disk servers (and their network
>>>> links), whereas before we were being limited by the rate of
>>>> authorisations
>>>> going through the DPM head node. Is this just the result of the recent
>>>> packing together of data into fewer larger files, or something else?
>>>>
>>>>
>>> Mostly the former. The ratio of transfer time to processing time is
>>> much better with the merged AODs.
>>>
>> Unfortunately the ratio of data processing to shifting data around on LAN or
>> disk is much worse as files on WNs no longer fit in rfio buffers or node
>> page cache and so we're being limited by LAN bandwidth (rfio) or disk IOPS
>> rather than RAM latency (file stager).
>>
>> The main limit we're seeing at Liverpool (at about 100 rfio connections on
>> each server for a max of ~700 connections) is just plain bandwidth (we have
>> turned down rfio buffers to 32/64MB to keep RAM usage on pools sensible).
>>
>> The rfio processes are sitting around so much because we've got 100 rfio
>> processes and 350MB/s of bandwidth on a pool, that's only a max of 3.5MB/s
>> per process. With these big files that's a drop in the ocean (roughly 12
>> rfio connections can saturate one of our 3Gb/s pools), hence efficiencies
>> are through the floor.
>>
>> At the same time we've got local user analysis going on. With these same
>> saturated pool nodes they're using file stager, and getting far more useful
>> work done.[1] If we're reading all of the file why are we using rfio when
>> AFAICT file stager is miles more efficient for that work flow with these
>> size files (smaller files too, IIRC) and the available bandwidth at sites?
>> Are STEP09 tests using/going to use file stager (maybe our usage is skewed
>> due to our software install problems)?
>>
>> John
>>
>> [1] rfio and file stager run in parallel on same cluster; file stagers had
>> finished before rfio had barely started.
>>
>> --
>> Dr John Bland, Systems Administrator
>> Room 220, Oliver Lodge
>> Particle Physics Group, University of Liverpool
>> Mail: [log in to unmask]
>> Tel : 0151 794 2911
>> "I canna change the laws of physics, Captain!"
>>
>>
>
>
>
>
>
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