Hi Aljoscha, hi Till, @Aljoscha, the new AvroSerializer is almost what I wanted except that it does not use the schema of the snapshot while reading. In fact, this version will fail with the same error as before when a field is added or removed. https://github.com/apache/flink/blob/f3a2197a23524048200ae2b4712d6ed833208124/flink-formats/flink-avro/src/main/java/org/apache/flink/formats/avro/typeutils/AvroSerializer.java#L265 needs to use the schema from https://github.com/apache/flink/blob/f3a2197a23524048200ae2b4712d6ed833208124/flink-formats/flink-avro/src/main/java/org/apache/flink/formats/avro/typeutils/AvroSerializer.java#L188 as the first parameter. Accordingly, a readSchema field need to be set in #ensureCompatibility and relayed in #duplicate. Should I add a ticket for that as well?
@Till concerning the poor man's migration. The doc of #ensureCompatibility in 1.3.2 states: <li>{@link CompatibilityResult#compatible()}: this signals Flink that this serializer is compatible, or * has been reconfigured to be compatible, to continue reading previous data, and that the * serialization schema remains the same. No migration needs to be performed.</li> The important part is the reconfiguration, which is also mentioned on the big documentation. The default avro and kryo serializers actually try to reconfigure themselves. @Aljoscha, I will open a ticket for the RocksDB thingy. I pinned the problem down and will try to come up with an easy solution. It's a tad hard to compare the different versions (since I'm deep into the debugger), so I just might write a 1.3.2 ticket. @Till, thanks for reminding me that we are not talking about incremental checkpoints ;) That makes it indeed much easier to understand the whole state recovery with evolution. Best, Arvid On Tue, Feb 20, 2018 at 12:27 PM, Aljoscha Krettek <aljos...@apache.org> wrote: > Hi Arvid, > > Did you check out the most recent AvroSerializer code? > https://github.com/apache/flink/blob/f3a2197a23524048200ae2b4712d6ed833208124/flink-formats/flink-avro/src/main/java/org/apache/flink/formats/avro/typeutils/AvroSerializer.java#L185 > I think this does what you're suggesting. > > Regarding the integration tests, if this is in fact the case it is not good > and I would be very happy about a Jira Issue/PR there. > > Regarding your last point, I think that the RockDB backend stores the > metadata, which includes the type serialiser snapshot once, and not for all > keys or key groups. > > Best, > Aljoscha > > > On 20. Feb 2018, at 11:40, Arvid Heise <arvid.he...@gmail.com> wrote: > > Hi guys, > > just wanted to write about that topic on my own. > > The FF talk of Tzu-Li gave me also the impression that by just using > AvroSerializer, we get some kind of state evolution for free. > https://www.slideshare.net/FlinkForward/flink-forward-berlin-2017-tzuli-gordon-tai-managing-state-in-apache-flink > > However, I discovered two issues on 1.3.2: > > 1. The AvroSerializer does not use read/write schema. The snapshot > stores type information instead of the more plausible schema > information. > However, the actual type should not matter as long as a compatible > type is used for state restoration. > I have rewritten the AvroSerializer to store the schema in the > snapshot config and actually uses it as a read schema during the > initialization of the DatumReader. > > 2. During integration tests, it turns out that the current > implementation of the StateDescriptor always returns copies of the > serializer through #getSerializer. So #ensureCompatibility is invoked > on a different serializer than the actual #deserialize method. So > although my AvroSerializer sets the correct read schema, it is not > used, since it is set on the wrong instance. > I propose to make sure that #ensureCompatibility is invoked on the > original serializer in the state descriptor. Otherwise all adjustments > to the serializer are lost. > > I can provide tests and patches if needed. > > One related question: > > If I do an incremental snapshot with RocksDB backend and keyed state > backend, is the snapshot config attached to all keys? So would the > following work: > * Write (key1, value1) and (key2, value2) with schema1. Do cancel with > snapshot. > * Read (key1, value1) with schema1->schema2 and write with (key1, > value1). Do cancel with snapshot. > <Now we have two different schemas in the snapshots> > * Read (key1, value1) with schema2 and read with (key2, value2) with > schema1->schema2. > > Thanks for any feedback > > Arvid > > On Mon, Feb 19, 2018 at 7:17 PM, Niels Denissen <nielsdenis...@gmail.com> > wrote: > > Hi Till, > > Thanks for the quick reply, I'm using 1.3.2 atm. > > Cheers, > Niels > > On Feb 19, 2018 19:10, "Till Rohrmann" <trohrm...@apache.org> wrote: > > > Hi Niels, > > which version of Flink are you using? Currently, Flink does not support to > upgrade the TypeSerializer itself, if I'm not mistaken. As you've described, > it will try to use the old serializer stored in the checkpoint stream to > restore state. > > I've pulled Gordon into the conversation who can tell you a little bit > more about the current capability and limitations of state evolution. > > Cheers, > Till > > On Mon, Feb 19, 2018 at 4:14 PM, Niels <[hidden email]> wrote: > > > Hi all, > > I'm currently trying to use Avro in order to evolve our data present in > Flink's Managed State. I've extended the TypeSerializer class > successfully > for this purpose, but still have issues using Schema Evolution. > > *The problem:* > When we try to read data (deserialize from savepoint) with a new > serialiser > and a new schema, Flink seems to use the old schema of the old serializer > (written to the savepoint). This results in an old GenericRecord that > doesn't adhere to the new Avro schema. > > *What seems to happen to me is the following* (Say we evolve from dataV1 > to > dataV2): > - State containing dataV1 is serialized with avro schema V1 to a > check/savepoint. Along with the data, the serializer itself is written. > - Upon restore, the old serializer is retrieved from the data (therefore > needs to be on the classpath). Data is restored using this old > serializer. > The new serializer provided is only used for writes. > > If this is indeed the case it explains our aforementioned problem. If you > have any pointers as to whether this is true and what a possible solution > would be that would be very much appreciated! > > Thanks! > Niels > > > > -- > Sent from: > http://apache-flink-user-mailing-list-archive.2336050.n4.nabble.com/ > > > > > > ________________________________ > If you reply to this email, your message will be added to the discussion > below: > > http://apache-flink-user-mailing-list-archive.2336050.n4.nabble.com/Managed-State-Custom-Serializer-with-Avro-tp18419p18437.html > To unsubscribe from Managed State Custom Serializer with Avro, click here. > NAML > >