Re: Unclear problem with using S3 as a storage data source

2018-03-29 Thread Pat Ferrel
Ok, the problem, as I thought at first, is that Spark creates the model and the 
PredictionServer must read it.

My methods below still work. There is very little extra to creating a pseudo 
cluster for HDFS as far a performance if it is still running all on one machine.

You can also write it on the Spark/training machine ot localfs and copy it to 
the PredictionServer before deploy. A simple scp in a script would do that.

Again I have no knowledge of using S3 for such things. If that works, someone 
else will have to help.




From: Dave Novelli <d...@ultravioletanalytics.com>
Reply: user@predictionio.apache.org <user@predictionio.apache.org>
Date: March 29, 2018 at 6:19:58 AM
To: Pat Ferrel <p...@occamsmachete.com>
Cc: user@predictionio.apache.org <user@predictionio.apache.org>
Subject:  Re: Unclear problem with using S3 as a storage data source  

Sorry Pat, I think I took some shortcuts in my initial explanation that are 
causing some confusion :) I'll try laying everything out again in detail...

I have configured 2 servers in AWS:

Event/Prediction Server - t2.medium
- Runs permanently
- Using swap to deal with 4GB mem limit (I know, I know)
- ElasticSearch
- HBase (pseudo-distributed mode, using normal files instead of hdfs)
- Web server for events and 6 prediction models

Training Server - r4.large
- Only spun up to execute "pio train" for the 6 UR models I've configured then 
spun back down
- Spark

My specific problem is that running "pio train" on the training server when 
"LOCALFS" is set as the model data store will deposit all the stub files in 
.pio_store/models/.

When I run "pio deploy" on the Event/Prediction Server, it's looking for those 
files in the .pio_store/models/ directory on the Event/Prediction server, and 
they're obviously not there. If I manually copy the files from the Training 
server to the Event/Prediction server then "pio deploy" works as expected.

My thought is that if the Training server saves those model stub files to S3, 
then the Event/Prediction server can read those files from S3 and I won't have 
to manually copy them.


Hopefully this clears my situation up!


As a note - I realize t2.medium is not a feasible instance type for any 
significant production system, but I'm bootstrapping a demo system on a very 
tight budget for a site that will almost certainly have extremely low traffic. 
In my initial tests I've managed to get UR working on this configuration and 
will be doing some simple load testing soon to see how far I can push it before 
it crashes. Speed is obviously not an issue at the moment but once it is (and 
once there's some funding) that t2 will be replaced with an r4 or an m5

Cheers,
Dave


Dave Novelli
Founder/Principal Consultant, Ultraviolet Analytics
www.ultravioletanalytics.com | 919.210.0948 | d...@ultravioletanalytics.com

On Wed, Mar 28, 2018 at 7:40 PM, Pat Ferrel <p...@occamsmachete.com> wrote:
Sorry then I don’t understand what part has no access to the file system on the 
single machine? 

Also a t2 is not going to work with PIO. Spark 2 along requires something like 
2g for a do-nothing empty executor and driver, so a real app will require 16g 
or so minimum (my laptop has 16g). Run the OS, HBase, ES, and Spark will get 
you to over 8g, then add data. Spark keeps all data needed at a given phase of 
the calculation in memory across the cluster, that’s where it gets it’s speed. 
Welcome to big-data :-)


From: Dave Novelli <d...@ultravioletanalytics.com>
Reply: user@predictionio.apache.org <user@predictionio.apache.org>
Date: March 28, 2018 at 3:47:35 PM
To: Pat Ferrel <p...@occamsmachete.com>
Cc: user@predictionio.apache.org <user@predictionio.apache.org>
Subject:  Re: Unclear problem with using S3 as a storage data source

I don't *think* I need more spark nodes - I'm just using the one for training 
on an r4.large instance I spin up and down as needed.

I was hoping to avoid adding any additional computational load to my 
Event/Prediction/HBase/ES server (all running on a t2.medium) so I am looking 
for a way to *not* install HDFS on there as well. S3 seemed like it would be a 
super convenient way to pass the model files back and forth, but it sounds like 
it wasn't implemented as a data source for the model repository for UR.

Perhaps that's something I could implement and contribute? I can *kinda* read 
Scala haha, maybe this would be a fun learning project. Do you think it would 
be fairly straightforward?


Dave Novelli
Founder/Principal Consultant, Ultraviolet Analytics
www.ultravioletanalytics.com | 919.210.0948 | d...@ultravioletanalytics.com

On Wed, Mar 28, 2018 at 6:01 PM, Pat Ferrel <p...@occamsmachete.com> wrote:
So you need to have more Spark nodes and this is the problem?

If so setup HBase on pseudo-clustered HDFS so you have a master node address 
even though all storage is on one machine. Then you us

Re: Unclear problem with using S3 as a storage data source

2018-03-28 Thread Pat Ferrel
So you need to have more Spark nodes and this is the problem?

If so setup HBase on pseudo-clustered HDFS so you have a master node
address even though all storage is on one machine. Then you use that
version of HDFS to tell Spark where to look for the model. It give the
model a URI.

I have never used the raw S3 support, HDFS can also be backed by S3 but you
use HDFS APIs, it is an HDFS config setting to use S3.

It is a rather unfortunate side effect of PIO but there are 2 ways to solve
this with no extra servers.

Maybe someone else knows how to use S3 natively for the model stub?


From: Dave Novelli <d...@ultravioletanalytics.com>
<d...@ultravioletanalytics.com>
Date: March 28, 2018 at 12:13:12 PM
To: Pat Ferrel <p...@occamsmachete.com> <p...@occamsmachete.com>
Cc: user@predictionio.apache.org <user@predictionio.apache.org>
<user@predictionio.apache.org>
Subject:  Re: Unclear problem with using S3 as a storage data source

Well, it looks like the local file system isn't an option in a multi-server
configuration without manually setting up a process to transfer those stub
model files.

I trained models on one heavy-weight temporary instance, and then when I
went to deploy from the prediction server instance it failed due to missing
files. I copied the .pio_store/models directory from the training server
over to the prediction server and then was able to deploy.

So, in a dual-instance configuration what's the best way to store the
files? I'm using pseudo-distributed HBase with standard file system storage
instead of HDFS (my current aim is keeping down cost and complexity for a
pilot project).

Is S3 back on the table as on option?

On Fri, Mar 23, 2018 at 11:03 AM, Dave Novelli <
d...@ultravioletanalytics.com> wrote:

> Ahhh ok, thanks Pat!
>
>
> Dave Novelli
> Founder/Principal Consultant, Ultraviolet Analytics
> www.ultravioletanalytics.com | 919.210.0948 <(919)%20210-0948> |
> d...@ultravioletanalytics.com
>
> On Fri, Mar 23, 2018 at 8:08 AM, Pat Ferrel <p...@occamsmachete.com> wrote:
>
>> There is no need to have Universal Recommender models put in S3, they are
>> not used and only exist (in stub form) because PIO requires them. The
>> actual model lives in Elasticsearch and uses special features of ES to
>> perform the last phase of the algorithm and so cannot be replaced.
>>
>> The stub PIO models have no data and will be tiny. putting them in HDFS
>> or the local file system is recommended.
>>
>>
>> From: Dave Novelli <d...@ultravioletanalytics.com>
>> <d...@ultravioletanalytics.com>
>> Reply: user@predictionio.apache.org <user@predictionio.apache.org>
>> <user@predictionio.apache.org>
>> Date: March 22, 2018 at 6:17:32 PM
>> To: user@predictionio.apache.org <user@predictionio.apache.org>
>> <user@predictionio.apache.org>
>> Subject:  Unclear problem with using S3 as a storage data source
>>
>> Hi all,
>>
>> I'm using the Universal Recommender template and I'm trying to switch
>> storage data sources from local file to S3 for the model repository. I've
>> read the page at https://predictionio.apache.org/system/anotherdatastore/
>> to try to understand the configuration requirements, but when I run pio
>> train it's indicating an error and nothing shows up in the s3 bucket:
>>
>> [ERROR] [S3Models] Failed to insert a model to
>> s3://pio-model/pio_modelAWJPjTYM0wNJe2iKBl0d
>>
>> I created a new bucket named "pio-model" and granted full public
>> permissions.
>>
>> Seemingly relevant settings from pio-env.sh:
>>
>> PIO_STORAGE_REPOSITORIES_MODELDATA_NAME=pio_model
>> PIO_STORAGE_REPOSITORIES_MODELDATA_SOURCE=S3
>> ...
>>
>> PIO_STORAGE_SOURCES_S3_TYPE=s3
>> PIO_STORAGE_SOURCES_S3_REGION=us-west-2
>> PIO_STORAGE_SOURCES_S3_BUCKET_NAME=pio-model
>>
>> # I've tried with and without this
>> #PIO_STORAGE_SOURCES_S3_ENDPOINT=http://s3.us-west-2.amazonaws.com
>>
>> # I've tried with and without this
>> #PIO_STORAGE_SOURCES_S3_BASE_PATH=pio-model
>>
>>
>> Any suggestions where I can start troubleshooting my configuration?
>>
>> Thanks,
>> Dave
>>
>>
>


--
Dave Novelli
Founder/Principal Consultant, Ultraviolet Analytics
www.ultravioletanalytics.com | 919.210.0948 | d...@ultravioletanalytics.com


Re: Unclear problem with using S3 as a storage data source

2018-03-23 Thread Dave Novelli
Ahhh ok, thanks Pat!


Dave Novelli
Founder/Principal Consultant, Ultraviolet Analytics
www.ultravioletanalytics.com | 919.210.0948 | d...@ultravioletanalytics.com

On Fri, Mar 23, 2018 at 8:08 AM, Pat Ferrel <p...@occamsmachete.com> wrote:

> There is no need to have Universal Recommender models put in S3, they are
> not used and only exist (in stub form) because PIO requires them. The
> actual model lives in Elasticsearch and uses special features of ES to
> perform the last phase of the algorithm and so cannot be replaced.
>
> The stub PIO models have no data and will be tiny. putting them in HDFS or
> the local file system is recommended.
>
>
> From: Dave Novelli <d...@ultravioletanalytics.com>
> <d...@ultravioletanalytics.com>
> Reply: user@predictionio.apache.org <user@predictionio.apache.org>
> <user@predictionio.apache.org>
> Date: March 22, 2018 at 6:17:32 PM
> To: user@predictionio.apache.org <user@predictionio.apache.org>
> <user@predictionio.apache.org>
> Subject:  Unclear problem with using S3 as a storage data source
>
> Hi all,
>
> I'm using the Universal Recommender template and I'm trying to switch
> storage data sources from local file to S3 for the model repository. I've
> read the page at https://predictionio.apache.org/system/anotherdatastore/
> to try to understand the configuration requirements, but when I run pio
> train it's indicating an error and nothing shows up in the s3 bucket:
>
> [ERROR] [S3Models] Failed to insert a model to s3://pio-model/pio_
> modelAWJPjTYM0wNJe2iKBl0d
>
> I created a new bucket named "pio-model" and granted full public
> permissions.
>
> Seemingly relevant settings from pio-env.sh:
>
> PIO_STORAGE_REPOSITORIES_MODELDATA_NAME=pio_model
> PIO_STORAGE_REPOSITORIES_MODELDATA_SOURCE=S3
> ...
>
> PIO_STORAGE_SOURCES_S3_TYPE=s3
> PIO_STORAGE_SOURCES_S3_REGION=us-west-2
> PIO_STORAGE_SOURCES_S3_BUCKET_NAME=pio-model
>
> # I've tried with and without this
> #PIO_STORAGE_SOURCES_S3_ENDPOINT=http://s3.us-west-2.amazonaws.com
>
> # I've tried with and without this
> #PIO_STORAGE_SOURCES_S3_BASE_PATH=pio-model
>
>
> Any suggestions where I can start troubleshooting my configuration?
>
> Thanks,
> Dave
>
>