samples
folder, which contains an end-to-end example of using
the Dgraph Java client. Follow the instructions in the
README
of that project.
DgraphClient
and the async client DgraphAsyncClient
. A DgraphClient
or
DgraphAsyncClient
can be initialized by passing it a list of
DgraphBlockingStub
clients. The anyClient()
API can randomly pick a stub,
which can then be used for gRPC operations.
0
) with the following
method:
0
. In order to log into a
different namespace, use the loginIntoNamespace
method on the client:
dgraphClient
object can be used to do any further
operations.
openssl
tool.
First, let’s install the openssl
tool:
Operation
object, set the schema and pass it to
DgraphClient#alter
method.
setRunInBackground(true)
as shown below before calling
alter
. You can find more details
here.
Operation
contains other fields as well, including drop predicate and drop
all. Drop all is useful if you wish to discard all the data, and start from a
clean slate, without bringing the instance down.
DgraphClient
and the asynchronous
DgraphAsyncClient
clients support the two types of transactions by providing
the newTransaction
and the newReadOnlyTransaction
APIs. Creating a
transaction is a local operation and incurs no network overhead.
In most of the cases, the normal read-write transactions is used, which can have
any number of query or mutate operations. However, if a transaction only has
queries, you might benefit from a read-only transaction, which can share the
same read timestamp across multiple such read-only transactions and can result
in lower latencies.
For normal read-write transactions, it’s a good practice to call
Transaction#discard()
in a finally
block after running the transaction.
Calling Transaction#discard()
after Transaction#commit()
is a no-op and you
can call discard()
multiple times with no additional side-effects.
Transaction.discard
,
which is equivalent to a no-op.
Transaction#mutate
runs a mutation. It takes in a Mutation
object, which
provides two main ways to set data: JSON and RDF N-Quad. You can choose
whichever way is convenient.
We’re going to use JSON. First we define a Person
class to represent a person.
This data is serialized into JSON.
Person
object, serialize it and use it in Mutation
object.
CommitNow
field in Mutation
object to indicate
that the mutation must be immediately committed.
Mutation can be run using the doRequest
function as well.
Transaction#commit()
method. If your
transaction consisted solely of calls to Transaction#query()
, and no calls to
Transaction#mutate()
, then calling Transaction#commit()
isn’t necessary.
An error is returned if other transactions running concurrently modify the same
data that was modified in this transaction. It is up to the user to retry
transactions when they fail.
Transaction#query()
. You need to pass in a DQL
query string, and a map (optional, could be empty) of any variables that you
might want to set in the query.
The response would contain a JSON
field, which has the JSON encoded result.
You need to decode it before you can do anything useful with it.
Let’s run the following query:
People
class that helps us deserialize the JSON result:
doRequest
function to run the query.
queryRDF()
or
queryRDFWithVars()
. The response contains the getRdf()
method, which
provides the RDF encoded output.
uid
values only, use a JSON format response.uid
is 0x2
):
txn.doRequest
function allows you to run upserts consisting of one query
and one mutation. Variables can be defined in the query and used in the
mutation. You could also use txn.doRequest
to perform a query followed by a
mutation.
@if
directive. The mutation is executed only when the specified condition is
true. If the condition is false, the mutation is silently ignored.
See more about Conditional Upsert
Here.
Helpers#deleteEdges
to delete
multiple edges corresponding to predicates on a node with the given UID. The
helper method takes an existing mutation, and returns a new mutation with the
deletions applied.
ManagedChannel#shutdown
on the gRPC channel
object created when creating a Dgraph client.
DgraphAsyncClient
class. The usage is almost exactly the
same as the DgraphClient
(show in previous section) class. The main
differences is that the DgraphAsyncClient#newTransacation()
returns an
AsyncTransaction
class. The API for AsyncTransaction
is exactly
Transaction
. The only difference is that instead of returning the results
directly, it returns immediately with a corresponding CompletableFuture<T>
object. This object represents the computation which runs asynchronously to
yield the result in the future. Read more about CompletableFuture<T>
in the
Java 8 documentation.
Here is the asynchronous version of the preceding code, which runs a query.
samples/concurrent-modification
. In order to run
this example, execute the following maven command from the
‘concurrent-modification’ folder.