JobShopLib is a Python package for creating, solving, and visualizing Job Shop Scheduling Problems (JSSP).
It follows a modular design, allowing users to easily extend the library with new solvers, dispatching rules, visualization functions, etc.
See the documentation for more details about the latest version (1.0.0a2).
JobShopLib is distributed on PyPI and it supports Python 3.10+.
You can install the latest stable version (version 0.5.1) using pip
:
pip install job-shop-lib
See this Google Colab notebook for a quick start guide!
Version 1.0.0 is currently in alpha stage and can be installed with:
pip install job-shop-lib==1.0.0a2
Although this version is not stable and may contain breaking changes in subsequent releases, it is recommended to install it to access the new reinforcement learning environments and familiare yourself with new changes (see the latest pull requests). This version is the first one with a documentation page.
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Data Structures: Easily create, manage, and manipulate job shop instances and solutions with user-friendly data structures. See Getting Started and How Solutions are Represented.
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Benchmark Instances: Load well-known benchmark instances directly from the library without manual downloading. See Load Benchmark Instances.
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Random Instance Generation: Create random instances with customizable sizes and properties or augment existing ones. See
generation
package. -
Multiple Solvers:
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Constraint Programming Solver: OR-Tools' CP-SAT solver. See Solving the Problem.
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Dispatching Rule Solvers: Use any of the available dispatching rules or create custom ones. See Dispatching Rules.
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Gantt Charts: Visualize final schedules and how are they created iteratively by dispatching rule solvers or sequences of scheduling decisions with GIFs or videos. See Save Gif.
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Graph Representations:
- Disjunctive Graphs: Represent and visualize instances as disjunctive graphs. See Disjunctive Graph.
- Agent-Task Graphs: Encode instances as agent-task graphs (introduced in ScheduleNet paper). See Agent-Task Graph.
- Build your own custom graphs with the
JobShopGraph
class.
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Gymnasium Environments: Two environments for solving the problem with Graph Neural Networks (GNNs) or any other method, and Reinforcement Learning (RL). See SingleJobShopGraphEnv and MultiJobShopGraphEnv.
You can create a JobShopInstance
by defining the jobs and operations. An operation is defined by the machine(s) it is processed on and the duration (processing time).
from job_shop_lib import JobShopInstance, Operation
job_1 = [Operation(machines=0, duration=1), Operation(1, 1), Operation(2, 7)]
job_2 = [Operation(1, 5), Operation(2, 1), Operation(0, 1)]
job_3 = [Operation(2, 1), Operation(0, 3), Operation(1, 2)]
jobs = [job_1, job_2, job_3]
instance = JobShopInstance(
jobs,
name="Example",
# Any extra parameters are stored inside the
# metadata attribute as a dictionary:
lower_bound=7,
)
You can load a benchmark instance from the library:
from job_shop_lib.benchmarking import load_benchmark_instance
ft06 = load_benchmark_instance("ft06")
The module benchmarking
contains functions to load the instances from the file and return them as JobShopInstance
objects without having to download them
manually.
The contributions to this benchmark dataset are as follows:
-
abz5-9
: by Adams et al. (1988). -
ft06
,ft10
,ft20
: by Fisher and Thompson (1963). -
la01-40
: by Lawrence (1984) -
orb01-10
: by Applegate and Cook (1991). -
swb01-20
: by Storer et al. (1992). -
yn1-4
: by Yamada and Nakano (1992). -
ta01-80
: by Taillard (1993).
The metadata from these instances has been updated using data from: https://github.com/thomasWeise/jsspInstancesAndResults
>>> ft06.metadata
{'optimum': 55,
'upper_bound': 55,
'lower_bound': 55,
'reference': "J.F. Muth, G.L. Thompson. 'Industrial scheduling.', Englewood Cliffs, NJ, Prentice-Hall, 1963."}
You can also generate a random instance with the GeneralInstanceGenerator
class.
from job_shop_lib.generation import GeneralInstanceGenerator
generator = GeneralInstanceGenerator(
duration_range=(5, 10), seed=42, num_jobs=5, num_machines=5
)
random_instance = generator.generate()
This class can also work as an iterator to generate multiple instances:
generator = GeneralInstanceGenerator(iteration_limit=100, seed=42)
instances = []
for instance in generator:
instances.append(instance)
# Or simply:
instances = list(generator)
Every solver is a Callable
that receives a JobShopInstance
and returns a Schedule
object.
import matplotlib.pyplot as plt
from job_shop_lib.constraint_programming import ORToolsSolver
from job_shop_lib.visualization import plot_gantt_chart
solver = ORToolsSolver(max_time_in_seconds=10)
ft06_schedule = solver(ft06)
fig, ax = plot_gantt_chart(ft06_schedule)
plt.show()
A dispatching rule is a heuristic guideline used to prioritize and sequence jobs on various machines. Supported dispatching rules are:
class DispatchingRule(str, Enum):
SHORTEST_PROCESSING_TIME = "shortest_processing_time"
FIRST_COME_FIRST_SERVED = "first_come_first_served"
MOST_WORK_REMAINING = "most_work_remaining"
MOST_OPERATION_REMAINING = "most_operation_remaining"
RANDOM = "random"
We can visualize the solution with a DispatchingRuleSolver
as a gif:
from job_shop_lib.visualization import create_gif, plot_gantt_chart_wrapper
from job_shop_lib.dispatching import DispatchingRuleSolver, DispatchingRule
plt.style.use("ggplot")
mwkr_solver = DispatchingRuleSolver("most_work_remaining")
plot_function = plot_gantt_chart_wrapper(
title="Solution with Most Work Remaining Rule"
)
create_gif(
gif_path="ft06_optimized.gif",
instance=ft06,
solver=mwkr_solver,
plot_function=plot_function,
fps=4,
)
The dashed red line represents the current time step, which is computed as the earliest time when the next operation can start.
Tip
You can change the style of the gantt chart with plt.style.use("name-of-the-style")
.
Personally, I consider the ggplot
style to be the cleanest.
One of the main purposes of this library is to provide an easy way to encode instances as graphs. This can be very useful, not only for visualization purposes but also for developing Graph Neural Network-based algorithms.
A graph is represented by the JobShopGraph
class, which internally stores a networkx.DiGraph
object.
The disjunctive graph is created by first adding nodes representing each operation in the jobs, along with two special nodes: a source
Additionally, the graph includes disjunctive edges between operations that use the same machine but belong to different jobs. These edges are bidirectional, indicating that either of the connected operations can be performed first. The disjunctive edges thus represent the scheduling choices available: the order in which operations sharing a machine can be processed. Solving the Job Shop Scheduling problem involves choosing a direction for each disjunctive edge such that the overall processing time is minimized.
from job_shop_lib.visualization import plot_disjunctive_graph
fig = plot_disjunctive_graph(instance)
plt.show()
Tip
Installing the optional dependency PyGraphViz is recommended.
The JobShopGraph
class provides easy access to the nodes, for example, to get all the nodes of a specific type:
from job_shop_lib.graphs import build_disjunctive_graph
disjunctive_graph = build_disjunctive_graph(instance)
>>> disjunctive_graph.nodes_by_type
defaultdict(list,
{<NodeType.OPERATION: 1>: [Node(node_type=OPERATION, value=O(m=0, d=1, j=0, p=0), id=0),
Node(node_type=OPERATION, value=O(m=1, d=1, j=0, p=1), id=1),
Node(node_type=OPERATION, value=O(m=2, d=7, j=0, p=2), id=2),
Node(node_type=OPERATION, value=O(m=1, d=5, j=1, p=0), id=3),
Node(node_type=OPERATION, value=O(m=2, d=1, j=1, p=1), id=4),
Node(node_type=OPERATION, value=O(m=0, d=1, j=1, p=2), id=5),
Node(node_type=OPERATION, value=O(m=2, d=1, j=2, p=0), id=6),
Node(node_type=OPERATION, value=O(m=0, d=3, j=2, p=1), id=7),
Node(node_type=OPERATION, value=O(m=1, d=2, j=2, p=2), id=8)],
<NodeType.SOURCE: 5>: [Node(node_type=SOURCE, value=None, id=9)],
<NodeType.SINK: 6>: [Node(node_type=SINK, value=None, id=10)]})
Other attributes include:
nodes
: A list of all nodes in the graph.nodes_by_machine
: A nested list mapping each machine to its associated operation nodes, aiding in machine-specific analysis.nodes_by_job
: Similar tonodes_by_machine
, but maps jobs to their operation nodes, useful for job-specific traversal.
Introduced in the paper "ScheduleNet: Learn to solve multi-agent scheduling problems with reinforcement learning" by Park et al. (2021), the Agent-Task Graph is a graph that represents the scheduling problem as a multi-agent reinforcement learning problem.
In contrast to the disjunctive graph, instead of connecting operations that share the same resources directly by disjunctive edges, operation nodes are connected with machine ones.
All machine nodes are connected between them, and all operation nodes from the same job are connected by non-directed edges too.
from job_shop_lib.graphs import (
build_complete_agent_task_graph,
build_agent_task_graph_with_jobs,
build_agent_task_graph,
)
from job_shop_lib.visualization import plot_agent_task_graph
complete_agent_task_graph = build_complete_agent_task_graph(instance)
fig = plot_agent_task_graph(complete_agent_task_graph)
plt.show()
For more details, check the examples folder.
- Clone the repository.
git clone https://github.com/Pabloo22/job_shop_lib.git
cd job_shop_lib
- Install poetry if you don't have it already:
pip install poetry
- Install dependencies:
make poetry_install_all
This project is licensed under the MIT License - see the LICENSE file for details.
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J. Adams, E. Balas, and D. Zawack, "The shifting bottleneck procedure for job shop scheduling," Management Science, vol. 34, no. 3, pp. 391–401, 1988.
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J.F. Muth and G.L. Thompson, Industrial scheduling. Englewood Cliffs, NJ: Prentice-Hall, 1963.
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S. Lawrence, "Resource constrained project scheduling: An experimental investigation of heuristic scheduling techniques (Supplement)," Carnegie-Mellon University, Graduate School of Industrial Administration, Pittsburgh, Pennsylvania, 1984.
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D. Applegate and W. Cook, "A computational study of job-shop scheduling," ORSA Journal on Computer, vol. 3, no. 2, pp. 149–156, 1991.
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R.H. Storer, S.D. Wu, and R. Vaccari, "New search spaces for sequencing problems with applications to job-shop scheduling," Management Science, vol. 38, no. 10, pp. 1495–1509, 1992.
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T. Yamada and R. Nakano, "A genetic algorithm applicable to large-scale job-shop problems," in Proceedings of the Second International Workshop on Parallel Problem Solving from Nature (PPSN'2), Brussels, Belgium, pp. 281–290, 1992.
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E. Taillard, "Benchmarks for basic scheduling problems," European Journal of Operational Research, vol. 64, no. 2, pp. 278–285, 1993.
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Park, Junyoung, Sanjar Bakhtiyar, and Jinkyoo Park. "ScheduleNet: Learn to solve multi-agent scheduling problems with reinforcement learning." arXiv preprint arXiv:2106.03051, 2021.