Hi Jonathan, have you tried using Amazon's latest EMR Hadoop distribution? Maybe they've fixed the issue in their for older Hadoop releases?
On Wed, Nov 23, 2016 at 4:38 PM, Scott Kidder <kidder.sc...@gmail.com> wrote: > Hi Jonathan, > > You might be better off creating a small Hadoop HDFS cluster just for the > purpose of storing Flink checkpoint & savepoint data. Like you, I tried > using S3 to persist Flink state, but encountered AWS SDK issues and felt > like I was going down an ill-advised path. I then created a small 3-node > HDFS cluster in the same region as my Flink hosts but distributed across 3 > AZs. The checkpointing is very fast and, most importantly, just works. > > Is there a firm requirement to use S3, or could you use HDFS instead? > > Best, > > --Scott Kidder > > On Tue, Nov 22, 2016 at 11:52 PM, Jonathan Share <jon.sh...@gmail.com> > wrote: > >> Hi, >> >> I'm interested in hearing if anyone else has experience with using Amazon >> S3 as a state backend in the Frankfurt region. For political reasons we've >> been asked to keep all European data in Amazon's Frankfurt region. This >> causes a problem as the S3 endpoint in Frankfurt requires the use of AWS >> Signature Version 4 "This new Region supports only Signature Version 4" >> [1] and this doesn't appear to work with the Hadoop version that Flink is >> built against [2]. >> >> After some hacking we have managed to create a docker image with a build >> of Flink 1.2 master, copying over jar files from the hadoop >> 3.0.0-alpha1 package and this appears to work, for the most part but we >> still suffer from some classpath problems (conflicts between AWS API used >> in hadoop and those we want to use in out streams for interacting with >> Kinesis) and the whole thing feels a little fragile. Has anyone else tried >> this? Is there a simpler solution? >> >> As a follow-up question, we saw that with checkpointing on three >> relatively simple streams set to 1 second, our S3 costs were higher than >> the EC2 costs for our entire infrastructure. This seems slightly >> disproportionate. For now we have reduced checkpointing interval to 10 >> seconds and that has greatly improved the cost projections graphed via >> Amazon Cloud Watch, but I'm interested in hearing other peoples experience >> with this. Is that the kind of billing level we can expect or is this a >> symptom of a mis-configuration? Is this a setup others are using? As we are >> using Kinesis as the source for all streams I don't see a huge risk with >> larger checkpoint intervals and our Sinks are designed to mostly tolerate >> duplicates (some improvements can be made). >> >> Thanks in advance >> Jonathan >> >> >> [1] https://aws.amazon.com/blogs/aws/aws-region-germany/ >> [2] https://issues.apache.org/jira/browse/HADOOP-13324 >> > >