Hi Ed,

First, there were some bad assignments in my data set. I used the
automatic assignment (which takes an assigned peak list and propagates
it to other peak lists) procedure within NMRPipe for the first time and
some peaks were badly assigned.

Second, the PDB file is quite good as it is a representative
conformation from a 60 ns MD simulation using CHARMM. That said, the
protein moves in the simulation and, hence, the orientations also
change. I could take another conformation, which is what I'll do to
cross-validate my models, but nevertheless the orientations will change
and subtil changes will appear. This shouldn't be an issue since the
vectors that move a lot in the simulations should have correlating
relaxation properties and that should be seen in the models chosen.

Third, here are the stats for the ellipsoid optimization :

round  t_total_(h)  t_opt_(h)  iter_opt  model_change  tm       a    
b      g      chi2                  comments
=====  ===========  =========  ========  ============  ======   ==== 
=====  ====   ==================    =======================
 1     146          144        207       ---           12.423   18.8 
159.7  99.1   9282.2280010132217    ok
 2      49           47         62       215           12.463   74.7 
152.0  94.3   8793.0777454789404    ok
 3      16           14         19        16           12.448   78.0 
152.3  96.9   8767.5325004348124    ok
 4      12           10         13         1           12.445   80.2 
151.9  97.9   8765.5659442063006    ok
 5      19           17         23         2           12.445   83.1 
151.7  98.3   8761.0001889287214    ok
 6      25           23         27         1           12.452   80.9 
151.4  96.2   8744.6870170285692    ok
 7      16           14         19         1           12.445   83.1 
151.7  98.3   8761.0001889287269    almost_5
 8      25           23         28         1           12.452   80.9 
151.4  96.2   8744.6870170285729    almost_6
 9      14           12         17         1           12.445   83.1 
151.7  98.3   8761.0001889287269    almost_5_and_exactly_7
10      29           27         33         1           12.452   80.9 
151.4  96.2   8744.6870170285656    almost_6_and_8
11      stopped...................................

As you can see, there is a kind of interchange between two runs in the
end of the optimization. In fact, from the iteration 5 on, there is only
one residue for which the model is changing, it's always the same. It
changes from model 5 to 6 and 6 to 5... with a tf of ~17, a ts of ~25000
and a S2 of ~0.73 (chi2 ~40 in aic file, but then with ts ~ 1200) when
with model 6 and ts of ~650 and S2 of ~0.78 when with model 5 (chi2 ~50
in aic file). How come a so high ts (25000) isn't eliminated..?

round   AIC_or_OPT  model   S2    S2f   S2s   tf      ts      chi2
=====   ==========  =====   ===   ====  ====  ======  ======  =========
 9      AIC         5       0.78  0.96  0.81  None      698   52
10      AIC         6       0.78  0.97  0.80  11.2     1173   39
 9      OPT         5       0.78  0.96  0.81  None      630   ---
10      OPT         6       0.73  0.93  0.79  16.8    24904   ---


Fourth, the previous runs were made on 4 different computers which give
almost exactly the same calculation time, maybe differing from 10-15
%... This shouldn't be what's causing those so extremely long times...

Fifth, I used the default algorithm whithin the full_analysis.py script.
How can I change the optimization algorithm so it's a two stage
procedure like you proposed ? Should I run several times with MIN_ALGOR
= 'simplex' and, after a few runs (maybe when the chi2 and number of
iterations get to a plateau) switch to MIN_ALGOR = 'newton' ?

I think that's almost everything I can find now...

Let me know if you know how to catch those problems before they appear...

Cheers


Séb  :)





Edward d'Auvergne wrote:
> Hi,
>
> I've been trying to think of what could possibly be causing these
> really long times, but I'm really not sure what is happening.
> Unfortunately there just was not enough information in the post to
> decipher the key to this problem.  Is there something special about
> those 7 residues?  How accurate do you think their orientations are in
> the PDB file you are using?  And how accurate is the PDB file itself
> with respect to all parts of the system?
>
> Have you had a chance to investigate further as to what the issue
> might be?  For example, which part of the calculation is taking the
> time?  Is it the global optimisation of all parameters?  Are the final
> results of each round similar or completely different (selected model
> wise and parameter value wise).  How do the iteration numbers compare
> at each stage.  Essentially a fine analysis and comparison of the
> results files and the printout from relax will be necessary to track
> down this abnormal computation time.  Oh, are you running these on the
> same computer as the previous analysis?
>
> As for the optimisation algorithm being stuck, if you've used the
> default algorithm then this shouldn't happen.  Optimisation should
> terminate.  There are certain very rare situations where the algorithm
> known as the GMW Hessian modification, which is used by default as a
> subalgorithm by the Newton algorithm in relax, can take large amounts
> of time to complete.  You'll see this as a increase in the number of
> iterations by 4 to 5 orders of magnitude.  One way to test this is to
> use a lower quality optimisation algorithm first and then complete to
> high precision with the Newton algorithm.  In this case I would use
> simplex first followed by the default Newton algorithm and its default
> subalgorithms.  In all cases constraints should be used.  This will
> only solve the long computation times if the GMW algorithm is at
> fault.
>
> Regards,
>
> Edward
>
>
> On 9/4/07, Sebastien Morin <[EMAIL PROTECTED]> wrote:
>   
>> Hi all,
>>
>> I am using the full_analysis.py script with data a three magnetic fields.
>>
>> After a first complete cycle (going through the final optimization), I
>> realized that a few residues had extremely high chi-squared values (>
>> 1000) no matter the diffusion model or model-free model chosen...
>>
>> So I removed those residues (7 out of 222) and started the full_analysis
>> protocole again.
>>
>> However, the optimization times are now extremely long and I should get
>> the final results in weeks...
>>
>>
>> Here are the available times (for local_tm, sphere and ellipsoid) :
>>
>>
>> Diffusion_model    Round      Time-before_N=222  X2
>> Time-now_N=215  X2
>> ===============    =====      =================  =======
>> ==============  =======
>> local_tm           ---          12h30              45949
>> 14h30            5802    OK, X2 much smaller
>>
>> sphere             init         ---              1154338        ---
>>       249255
>>                    1             2h30              65654        36h00
>>         10303    Long, but X2 much smaller
>>                    2             2h30              65654      > 30h00
>>
>> ellipsoid          init         ---               753535
>> ---            177764
>>                    1             4h00              64592      >
>> 67h00                    ??
>>                    2             2h30              64592
>> not_there_yet
>>
>> Is it possible that the algorithms get stuck somewhere during the
>> optimization..?
>>
>> I thought that removing badly fit residues would, on the contrary, speed
>> up calculations...
>>
>> Thanks for ideas !
>>
>>
>> Sébastien  :)
>>
>> --
>>          ______________________________________
>>      _______________________________________________
>>     |                                               |
>>    || Sebastien Morin                               ||
>>   ||| Etudiant au PhD en biochimie                  |||
>>  |||| Laboratoire de resonance magnetique nucleaire ||||
>> ||||| Dr Stephane Gagne                             |||||
>>  |||| CREFSIP (Universite Laval, Quebec, CANADA)    ||||
>>   ||| 1-418-656-2131 #4530                          |||
>>    ||                                               ||
>>     |_______________________________________________|
>>          ______________________________________
>>
>>
>>
>> _______________________________________________
>> relax (http://nmr-relax.com)
>>
>> This is the relax-users mailing list
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>>     
>
>
>   

-- 
         ______________________________________    
     _______________________________________________
    |                                               |
   || Sebastien Morin                               ||
  ||| Etudiant au PhD en biochimie                  |||
 |||| Laboratoire de resonance magnetique nucleaire ||||
||||| Dr Stephane Gagne                             |||||
 |||| CREFSIP (Universite Laval, Quebec, CANADA)    ||||
  ||| 1-418-656-2131 #4530                          |||
   ||                                               ||
    |_______________________________________________|
         ______________________________________    

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