Btw, all important jobs in ALS are map-only, so its the number of map
slotes that counts.

On 06.03.2013 12:11, Sean Owen wrote:
> OK, that's reasonable on 35 machines. (You can turn up to 70 reducers,
> probably, as most machines can handle 2 reducers at once).
> I think the recommendation step loads one whole matrix into memory. You're
> not running out of memory but if you're turning up the heap size to
> accommodate, you might be hitting swapping, yes. I think (?) the
> conventional wisdom is to turn off swap for Hadoop.
> 
> Sebastian yes that is probably a good optimization; I've had good results
> reusing a mutable object in this context.
> 
> 
> On Wed, Mar 6, 2013 at 10:54 AM, Josh Devins <[email protected]> wrote:
> 
>> The factorization at 2-hours is kind of a non-issue (certainly fast
>> enough). It was run with (if I recall correctly) 30 reducers across a 35
>> node cluster, with 10 iterations.
>>
>> I was a bit shocked at how long the recommendation step took and will throw
>> some timing debug in to see where the problem lies exactly. There were no
>> other jobs running on the cluster during these attempts, but it's certainly
>> possible that something is swapping or the like. I'll be looking more
>> closely today before I start to consider other options for calculating the
>> recommendations.
>>
>>
> 

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