This is the official Dgraph database client implementation for Python (Python >= v3.7), using gRPC.
This client follows the Dgraph Go client closely.
Before using this client, we highly recommend that you read the the product documentation at dgraph.io/docs.
- pydgraph
- Table of contents
- Install
- Supported Versions
- Quickstart
- Using a client
- Creating a Client
- Login into a Namespace
- Connecting To Dgraph Cloud
- Altering the Database
- Creating a Transaction
- Running a Mutation
- Running a Query
- Query with RDF response
- Running an Upsert: Query + Mutation
- Running a Conditional Upsert
- Committing a Transaction
- Cleaning Up Resources
- Setting Metadata Headers
- Setting a timeout
- Async methods
- Examples
- Development
Install using pip:
pip install pydgraph
Depending on the version of Dgraph that you are connecting to, you will have to use a different version of this client.
Dgraph version | pydgraph version |
---|---|
21.03.x | 21.03.x |
23.0.x+ | 23.0.x |
Build and run the simple project in the examples
folder, which
contains an end-to-end example of using the Dgraph python client. For additional details, follow the
instructions in the project's README.
You can initialize a DgraphClient
object by passing it a list of
DgraphClientStub
clients as variadic arguments. Connecting to multiple Dgraph
servers in the same cluster allows for better distribution of workload.
The following code snippet shows just one connection.
import pydgraph
client_stub = pydgraph.DgraphClientStub('localhost:9080')
client = pydgraph.DgraphClient(client_stub)
If your server has Access Control Lists enabled (Dgraph v1.1 or above), the client must be
logged in for accessing data. Use login
endpoint:
Calling login will obtain and remember the access and refresh JWT tokens. All subsequent operations via the logged in client will send along the stored access token.
client.login("groot", "password")
If your server additionally has namespaces (Dgraph v21.03 or above), use the
login_into_namespace
API.
client.login_into_namespace("groot", "password", "123")
If you want to connect to Dgraph running on Dgraph Cloud instance, then
get the gRPC endpoint of your cluster that you can find in the
Settings section of Dgraph Cloud console and obtain a Client
or Admin API key (created in the API key tab
of the Setting section). Create the client_stub
using the gRPC endpoint and the API key:
client_stub = pydgraph.DgraphClientStub.from_cloud(
"https://morning-glade.grpc.us-east-1.aws.cloud.dgraph.io:443", "<api-key>")
client = pydgraph.DgraphClient(client_stub)
The DgraphClientStub.from_slash_endpoint()
method has been removed v23.0.
Please use DgraphClientStub.from_cloud()
instead.
To set the schema, create an Operation
object, set the schema and pass it to
DgraphClient#alter(Operation)
method.
schema = 'name: string @index(exact) .'
op = pydgraph.Operation(schema=schema)
client.alter(op)
Operation
contains other fields as well, including DropAttr
and DropAll
. DropAll
is
useful if you wish to discard all the data, and start from a clean slate, without bringing
the instance down. DropAttr
is used to drop all the data related to a predicate.
# Drop all data including schema from the Dgraph instance. This is a useful
# for small examples such as this since it puts Dgraph into a clean state.
op = pydgraph.Operation(drop_all=True)
client.alter(op)
Indexes can be computed in the background.
You can set the run_in_background
field of pydgraph.Operation
to True
before passing it to the Alter
function. You can find more details
here.
schema = 'name: string @index(exact) .'
op = pydgraph.Operation(schema=schema, run_in_background=True)
client.alter(op)
To create a transaction, call the DgraphClient#txn()
method, which returns a
new Txn
object. This operation incurs no network overhead.
It is good practice to call Txn#discard()
in a finally
block after running
the transaction. Calling Txn#discard()
after Txn#commit()
is a no-op
and you can call Txn#discard()
multiple times with no additional side-effects.
txn = client.txn()
try:
# Do something here
# ...
finally:
txn.discard()
# ...
To create a read-only transaction, call DgraphClient#txn(read_only=True)
.
Read-only transactions are ideal for transactions which only involve queries.
Mutations and commits are not allowed.
txn = client.txn(read_only=True)
try:
# Do some queries here
# ...
finally:
txn.discard()
# ...
To create a read-only transaction that executes best-effort queries, call
DgraphClient#txn(read_only=True, best_effort=True)
. Best-effort queries are
faster than normal queries because they bypass the normal consensus protocol.
For this same reason, best-effort queries cannot guarantee to return the latest
data. Best-effort queries are only supported by read-only transactions.
Txn#mutate(mu=Mutation)
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.
Txn#mutate()
provides convenience keyword arguments set_obj
and del_obj
for setting JSON values and set_nquads
and del_nquads
for setting N-Quad
values. See examples below for usage.
We define a person object to represent a person and use it in a transaction.
# Create data.
p = { 'name': 'Alice' }
# Run mutation.
txn.mutate(set_obj=p)
# If you want to use a mutation object, use this instead:
# mu = pydgraph.Mutation(set_json=json.dumps(p).encode('utf8'))
# txn.mutate(mu)
# If you want to use N-Quads, use this instead:
# txn.mutate(set_nquads='_:alice <name> "Alice" .')
# Delete data
query = """query all($a: string)
{
all(func: eq(name, $a))
{
uid
}
}"""
variables = {'$a': 'Bob'}
res = txn.query(query, variables=variables)
ppl = json.loads(res.json)
# For a mutation to delete a node, use this:
txn.mutate(del_obj=person)
For a complete example with multiple fields and relationships, look at the
simple project in the examples
folder.
Sometimes, you only want to commit a mutation, without querying anything further.
In such cases, you can set the keyword argument commit_now=True
to indicate
that the mutation must be immediately committed.
A mutation can be executed using txn.do_request
as well.
mutation = txn.create_mutation(set_nquads='_:alice <name> "Alice" .')
request = txn.create_request(mutations=[mutation], commit_now=True)
txn.do_request(request)
You can run a query by calling Txn#query(string)
. You will need to pass in a
DQL query string. If you want to pass
an additional dictionary of any variables that you might want to set in the query,
call Txn#query(string, variables=d)
with the variables dictionary d
.
The query response contains the json
field, which returns the JSON response.
Let’s run a query with a variable $a
, deserialize the result from JSON and
print it out:
# Run query.
query = """query all($a: string) {
all(func: eq(name, $a))
{
name
}
}"""
variables = {'$a': 'Alice'}
res = txn.query(query, variables=variables)
# If not doing a mutation in the same transaction, simply use:
# res = client.txn(read_only=True).query(query, variables=variables)
ppl = json.loads(res.json)
# Print results.
print('Number of people named "Alice": {}'.format(len(ppl['all'])))
for person in ppl['all']:
print(person)
This should print:
Number of people named "Alice": 1
Alice
You can also use txn.do_request
function to run the query.
request = txn.create_request(query=query)
txn.do_request(request)
You can get query result as a RDF response by calling Txn#query(string)
with resp_format
set
to RDF
. The response would contain a rdf
field, which has the RDF encoded result.
Note: If you are querying only for uid
values, use a JSON format response.
res = txn.query(query, variables=variables, resp_format="RDF")
print(res.rdf)
The txn.do_request
function allows you to use upsert blocks. An upsert block
contains one query block and one or more mutation blocks, so it lets you perform
queries and mutations in a single request. Variables defined in the query block
can be used in the mutation blocks using the uid
and val
functions
implemented by DQL.
To learn more about upsert blocks, see the Upsert Block documentation.
query = """{
u as var(func: eq(name, "Alice"))
}"""
nquad = """
uid(u) <name> "Alice" .
uid(u) <age> "25" .
"""
mutation = txn.create_mutation(set_nquads=nquad)
request = txn.create_request(query=query, mutations=[mutation], commit_now=True)
txn.do_request(request)
The upsert block also allows specifying a conditional mutation block using an @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 Upserts here.
query = """
{
user as var(func: eq(email, "[email protected]"))
}
"""
cond = "@if(eq(len(user), 1))"
nquads = """
uid(user) <email> "[email protected]" .
"""
mutation = txn.create_mutation(cond=cond, set_nquads=nquads)
request = txn.create_request(mutations=[mutation], query=query, commit_now=True)
txn.do_request(request)
A transaction can be committed using the Txn#commit()
method. If your transaction
consist solely of Txn#query
or Txn#queryWithVars
calls, and no calls to
Txn#mutate
, then calling Txn#commit()
is not necessary.
An error is raised if another transaction(s) modify the same data concurrently that was modified in the current transaction. It is up to the user to retry transactions when they fail.
txn = client.txn()
try:
# ...
# Perform any number of queries and mutations
# ...
# and finally...
txn.commit()
except pydgraph.AbortedError:
# Retry or handle exception.
finally:
# Clean up. Calling this after txn.commit() is a no-op
# and hence safe.
txn.discard()
To clean up resources, you have to call DgraphClientStub#close()
individually for
all the instances of DgraphClientStub
.
SERVER_ADDR1 = "localhost:9080"
SERVER_ADDR2 = "localhost:9080"
# Create instances of DgraphClientStub.
stub1 = pydgraph.DgraphClientStub(SERVER_ADDR1)
stub2 = pydgraph.DgraphClientStub(SERVER_ADDR2)
# Create an instance of DgraphClient.
client = pydgraph.DgraphClient(stub1, stub2)
# Use client
...
# Clean up resources by closing all client stubs.
stub1.close()
stub2.close()
Metadata headers such as authentication tokens can be set through the metadata of gRPC methods. Below is an example of how to set a header named "auth-token".
# The following piece of code shows how one can set metadata with
# auth-token, to allow Alter operation, if the server requires it.
# metadata is a list of arbitrary key-value pairs.
metadata = [("auth-token", "the-auth-token-value")]
dg.alter(op, metadata=metadata)
A timeout value representing the number of seconds can be passed to the login
,
alter
, query
, and mutate
methods using the timeout
keyword argument.
For example, the following alters the schema with a timeout of ten seconds:
dg.alter(op, timeout=10)
The alter
method in the client has an asynchronous version called
async_alter
. The async methods return a future. You can directly call the
result
method on the future. However. The DgraphClient class provides a static
method handle_alter_future
to handle any possible exception.
alter_future = self.client.async_alter(pydgraph.Operation(
schema="name: string @index(term) ."))
response = pydgraph.DgraphClient.handle_alter_future(alter_future)
The query
and mutate
methods int the Txn
class also have async versions
called async_query
and async_mutation
respectively. These functions work
just like async_alter
.
You can use the handle_query_future
and handle_mutate_future
static methods
in the Txn
class to retrieve the result. A short example is given below:
txn = client.txn()
query = "query body here"
future = txn.async_query()
response = pydgraph.Txn.handle_query_future(future)
Keep in mind that due to the nature of async calls, the async functions cannot
retry the request if the login is invalid. You will have to check for this error
and retry the login (with the function retry_login
in both the Txn
and
Client
classes). A short example is given below:
client = DgraphClient(client_stubs) # client_stubs is a list of gRPC stubs.
alter_future = client.async_alter()
try:
response = alter_future.result()
except Exception as e:
# You can use this function in the util package to check for JWT
# expired errors.
if pydgraph.util.is_jwt_expired(e):
# retry your request here.
- simple: Quickstart example of using pydgraph.
- tls: Quickstart example that uses TLS.
- parse_datetime: Demonstration of converting Dgraph's DateTime strings to native python datetime.
There are many ways to set up your local Python environment. We suggest some sane defaults here.
- Use pyenv to manage your Python installations.
- Most recent versions of Python should work, but the version of Python officially supported is located in
.python-version
- Create a Python virtual environment using
python -m venv .venv
- Activate virtual environment via
source .venv/bin/activate
To build and install pydgraph locally, run
pip install -e ".[dev]"
If you have made changes to the pydgraph/proto/api.proto
file, you need need
to regenerate the source files generated by Protocol Buffer tools. To do that,
install the grpcio-tools library and then run the following
command:
python scripts/protogen.py
To run the tests in your local machine, run:
bash scripts/local-test.sh
This script assumes dgraph is located on your path. Dgraph release binaries can
be found here.
The test script also requires that docker
and docker compose
are installed on
your machine.
The script will take care of bringing up a Dgraph cluster and bringing it down after the tests are executed. The script connects to randomly selected ports for HTTP and gRPC requests to prevent interference with clusters running on the default port. Docker and docker-compose need to be installed before running the script. Refer to the official Docker documentation for instructions on how to install those packages.