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The dag-modelling package is a python implementation of the dataflow programming with the lazy graph evaluation.

Project description

Summary

python pipeline coverage report

The DAGModelling software is a python implementation of the dataflow programming with the lazy graph evaluation approach.

Main goals:

  • Lazy evaluated directed acyclic graph;
  • Concise connection syntax;
  • Plotting with graphviz;
  • Flexibility. The goal of DAG-Modelling is not to be efficient, but rather flexible.

The framework is intented to be used for the statistical analysis of the data of JUNO and Daya Bay neutrino oscillation experiments.

Installation

For users (recommended)

For regular use, it's best to install the latest version of the project that's available on PyPi:

pip install dag-modelling

For developers

We recommend that developers install the package locally in editable mode:

git clone https://github.com/dagflow-team/dag-modelling.git
cd dag-modelling
pip install -e .

This way, the system will track all the changes made to the source files. This means that developers won't need to reinstall the package or set environment variables, even when a branch is changed.

Example

For example, let's consider a sum of three input nodes and then a product of the result with another array.

from numpy import arange

from dag_modelling.core.graph import Graph
from dag_modelling.plot.graphviz import savegraph
from dag_modelling.lib.common import Array
from dag_modelling.lib.arithmetic import Sum, Product

# Define a source data
array = arange(3, dtype="d")

# Check predefined Array, Sum and Product
with Graph(debug=debug) as graph:
    # Define nodes
    (in1, in2, in3, in4) = (Array(name, array) for name in ("n1", "n2", "n3", "n4"))
    s = Sum("sum")
    m = Product("product")

    # Connect nodes
    (in1, in2, in3) >> s
    (in4, s) >> m
    graph.close()

    print("Result:", m.outputs["result"].data) # must print [0. 3. 12.]
    savegraph(graph, "dagmodelling_example_1a.png")

The printed result must be [0. 3. 12.], and the created image looks as

For more examples see example/example.py or tests.

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