Verifiable Random Functions (VRF) are cryptographic primitives that generate random numbers that are both unpredictable and verifiable. This allows to create "trustless randomness", i.e. generate (pseudo-) random numbers in decentralized systems and provide the assurance that the number was indeed generated randomly.
Aleph.im uses a combination of virtual machines (VMs) and aleph.im network messages to implement VRFs.
The implementation revolves around the following components:
- The VRF coordinator
- N executors.
The coordinator receives user requests to generate random numbers. Upon receiving a request, it selects a set of compute resource nodes (CRNs) to act as executors. Each of these executors generates a random number and computes its hash using SHA3–256. These hashes are then posted to aleph.im using a POST message, which also includes a unique request identifier. Once all the hashes are posted and confirmed, the coordinator requests the actual random numbers from each node.
Finally, the coordinator performs a verification process to ensure that all random numbers correspond to their previously posted hashes. The random numbers are then combined using an XOR operation to generate the final random number. This final number, along with a summary of operations performed, is published on aleph.im for public verification.
The VRF executors and coordinator are meant to be deployed as VM functions on the aleph.im network. The coordinator can also be deployed in library mode (see below).
We provide a script to deploy the VM functions. Just run the following command to package the application and upload it to the aleph.im network.
python3 deployment/deploy_vrf_vms.py
If the deployment succeeds, the script will display links to the VMs on the aleph.im network. Example:
Executor VM: https://api2.aleph.im/api/v0/messages/558b0eeea54d80d2504b0287d047e0b78458d08022d3600bcf8478700dd0aac2 Coordinator VM: https://api2.aleph.im/api/v0/messages/d9eef54544338685a9b4034cc16e285520eb3cf0c199eeade1d6b290365c95d0
The coordinator can also be used directly from Python code. First, deploy the executors using the deployment script, without the coordinator VM:
python3 deployment/deploy_vrf_vms.py --no-coordinator
This will deploy an executor VM on the network and give you its ID. Example:
Executor VM: https://api2.aleph.im/api/v0/messages/558b0eeea54d80d2504b0287d047e0b78458d08022d3600bcf8478700dd0aac2
Then, install the aleph-vrf
module and call it from your code:
pip install aleph-vrf
from aleph_vrf.coordinator.vrf import generate_vrf
from aleph_message.models import ItemHash
async def main():
aleph_account = ... # Specify your aleph.im account
vrf_response = await generate_vrf(
account=aleph_account,
vrf_function=ItemHash(
# The hash of the executor VM deployed above
"558b0eeea54d80d2504b0287d047e0b78458d08022d3600bcf8478700dd0aac2"
),
)
random_number = int(vrf_response.random_number)
You can set up a development environment by configuring a Python virtual environment and installing the project in development mode.
python -m virtualenv venv
source venv/bin/activate
pip install -e .[build,testing]
This project uses mypy for static type analysis and pytest for unit/integration tests.
# Static analysis with mypy
mypy src/ tests/
# Run unit/integration tests
pytest -v .
- Deploy the VMs:
python3 deployment/deploy_vrf_vms.py
- Update the executor VM hash in the settings (Settings.FUNCTION) and create a Pull Request
- Merge the Pull Request and create a new release on Github
- Build and upload the package on PyPI:
python3 -m build && twine upload dist/*