system dependencies:
cuda
11.8llvm
10python
3.10+docker
(for ipfs node)
# create and edit config from template
cp skynet.toml.example skynet.toml
# install poetry package manager
curl -sSL https://install.python-poetry.org | python3 -
# install
poetry install
# enable environment
poetry shell
# test you can run this command
skynet --help
# launch ipfs node
skynet run ipfs
# to launch worker
skynet run dgpu
system dependencies:
docker
# create and edit config from template
cp skynet.toml.example skynet.toml
# pull runtime container
docker pull guilledk/skynet:runtime-frontend
# run telegram bot
docker run \
-it \
--rm \
--network host \
--name skynet-telegram \
--mount type=bind,source="$(pwd)",target=/root/target \
guilledk/skynet:runtime-frontend \
skynet run telegram --db-pass PASSWORD --db-user USER --db-host HOST
system dependencies:
docker
with gpu enabled
# create and edit config from template
cp skynet.toml.example skynet.toml
# pull runtime container
docker pull guilledk/skynet:runtime-cuda
# or build it (takes a bit of time)
./build_docker.sh
# launch simple ipfs node
./launch_ipfs.sh
# run worker with all gpus
docker run \
-it \
--rm \
--gpus all \
--network host \
--name skynet-worker \
--mount type=bind,source="$(pwd)",target=/root/target \
guilledk/skynet:runtime-cuda \
skynet run dgpu
# run worker with specific gpu
docker run \
-it \
--rm \
--gpus '"device=1"' \
--network host \
--name skynet-worker-1 \
--mount type=bind,source="$(pwd)",target=/root/target \
guilledk/skynet:runtime-cuda \
skynet run dgpu