A library for building Native Format Scores.
Project description
# nf-grapher-python
This is a Python3 library for building Native Format Scores.
> **Note**: Currently this library supports _building_ Native Format Scores for the Native Format Smart Player, however reading or deserializing scores from JSON is currently unsupported.
## Requirements
- Python3
- virtualenv
## Installing
```bash
pip install nf_grapher
```
## Getting Started
Setup a virtual environment with the following:
```bash
virtualenv -p python3 e
source ./e/bin/activate
```
You can use whatever environment name you'd like, `e` is used here because it's short.
## Structure
This python library is divided into 3 modules. `nf_grapher.score` contains all the Score level objects
defined by the Native Format Score schema. `nf_grapher.typed` contains useful "typed" nodes defined
by the [smart player contract](../smart-player-contract.json). Because Python is not
statically typed, these types are not yet enforced. `nf_grapher.encoder` contains a function `encode`
for serializing grapher objects into JSON.
## Tests
Run tests with the following command:
```bash
python -m unittest discover -v
```
## Example Usage
```python
from nf_grapher.score import *
from nf_grapher.typed import *
from nf_grapher.encoder import encode
# Build a source node for a Spotify track
# Start from 5.6 seconds into the track and play for 5.6 seconds
source = FileNode('spotify:track:4RDKrwyA9YouzL1LxvMaxH', offset=5.6e+9, duration=5.6e+9)
# Create a 5.6 second loop from the beginning of the track
loop = LoopNode(when=0, duration=5.6e+9)
# Create the full score
score = Score(Graph(
nodes=[source, loop],
edges=[source.connect(loop)]
))
print(encode(score))
```
You can see a list of all supported typed nodes by using the Python `help` feature in a REPL.
For instance,
```bash
python
>>> from nf_grapher import typed
>>> help(typed)
```
This is a Python3 library for building Native Format Scores.
> **Note**: Currently this library supports _building_ Native Format Scores for the Native Format Smart Player, however reading or deserializing scores from JSON is currently unsupported.
## Requirements
- Python3
- virtualenv
## Installing
```bash
pip install nf_grapher
```
## Getting Started
Setup a virtual environment with the following:
```bash
virtualenv -p python3 e
source ./e/bin/activate
```
You can use whatever environment name you'd like, `e` is used here because it's short.
## Structure
This python library is divided into 3 modules. `nf_grapher.score` contains all the Score level objects
defined by the Native Format Score schema. `nf_grapher.typed` contains useful "typed" nodes defined
by the [smart player contract](../smart-player-contract.json). Because Python is not
statically typed, these types are not yet enforced. `nf_grapher.encoder` contains a function `encode`
for serializing grapher objects into JSON.
## Tests
Run tests with the following command:
```bash
python -m unittest discover -v
```
## Example Usage
```python
from nf_grapher.score import *
from nf_grapher.typed import *
from nf_grapher.encoder import encode
# Build a source node for a Spotify track
# Start from 5.6 seconds into the track and play for 5.6 seconds
source = FileNode('spotify:track:4RDKrwyA9YouzL1LxvMaxH', offset=5.6e+9, duration=5.6e+9)
# Create a 5.6 second loop from the beginning of the track
loop = LoopNode(when=0, duration=5.6e+9)
# Create the full score
score = Score(Graph(
nodes=[source, loop],
edges=[source.connect(loop)]
))
print(encode(score))
```
You can see a list of all supported typed nodes by using the Python `help` feature in a REPL.
For instance,
```bash
python
>>> from nf_grapher import typed
>>> help(typed)
```
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
nf_grapher-1.2.24.tar.gz
(8.6 kB
view hashes)
Built Distribution
Close
Hashes for nf_grapher-1.2.24-py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | 8c3649881f463b1f0489b2eb31f3d76f0d8f58749fdf26576c17525f0215e17e |
|
MD5 | f69ec3abb4e44ba40fcaebb4ce7d57ef |
|
BLAKE2b-256 | c0e5938f9a7f258fa9c7597d758be56a84f6d794b7fb611f6374896f60ce2af4 |