
Product
Introducing Data Exports
Export Socket alert data to your own cloud storage in JSON, CSV, or Parquet, with flexible snapshot or incremental delivery.
simpful
Advanced tools
A Python library for fuzzy logic reasoning, designed to provide a simple and lightweight API, as close as possible to natural language. Simpful supports Mamdani and Sugeno reasoning of any order, parsing any complex fuzzy rules involving AND, OR, and NOT operators, using arbitrarily shaped fuzzy sets. For more information on its usage, try out the example scripts in this repository or check our online documentation.
pip install simpful
If you find Simpful useful for your research, please cite our work as follows:
Spolaor S., Fuchs C., Cazzaniga P., Kaymak U., Besozzi D., Nobile M.S.: Simpful: a user-friendly Python library for fuzzy logic, International Journal of Computational Intelligence Systems, 13(1):1687–1698, 2020 DOI:10.2991/ijcis.d.201012.002
This example shows how to specify the information about the linguistic variables, fuzzy sets, fuzzy rules, and input values to Simpful. The last line of code prints the result of the fuzzy reasoning.
import simpful as sf
# A simple fuzzy model describing how the heating power of a gas burner depends on the oxygen supply.
FS = sf.FuzzySystem()
# Define a linguistic variable.
S_1 = sf.FuzzySet( points=[[0, 1.], [1., 1.], [1.5, 0]], term="low_flow" )
S_2 = sf.FuzzySet( points=[[0.5, 0], [1.5, 1.], [2.5, 1], [3., 0]], term="medium_flow" )
S_3 = sf.FuzzySet( points=[[2., 0], [2.5, 1.], [3., 1.]], term="high_flow" )
FS.add_linguistic_variable("OXI", sf.LinguisticVariable( [S_1, S_2, S_3] ))
# Define consequents.
FS.set_crisp_output_value("LOW_POWER", 0)
FS.set_crisp_output_value("MEDIUM_POWER", 25)
FS.set_output_function("HIGH_FUN", "OXI**2")
# Define fuzzy rules.
RULE1 = "IF (OXI IS low_flow) THEN (POWER IS LOW_POWER)"
RULE2 = "IF (OXI IS medium_flow) THEN (POWER IS MEDIUM_POWER)"
RULE3 = "IF (NOT (OXI IS low_flow)) THEN (POWER IS HIGH_FUN)"
FS.add_rules([RULE1, RULE2, RULE3])
# Set antecedents values, perform Sugeno inference and print output values.
FS.set_variable("OXI", .51)
print (FS.Sugeno_inference(['POWER']))
This second example shows how to model a FIS using Mamdani inference. It also shows some facilities that make modeling more concise and clear: automatic Triangles (i.e., pre-baked linguistic variables with equally spaced triangular fuzzy sets) and the automatic detection of the inference method.
from simpful import *
FS = FuzzySystem()
TLV = AutoTriangle(3, terms=['poor', 'average', 'good'], universe_of_discourse=[0,10])
FS.add_linguistic_variable("service", TLV)
FS.add_linguistic_variable("quality", TLV)
O1 = TriangleFuzzySet(0,0,13, term="low")
O2 = TriangleFuzzySet(0,13,25, term="medium")
O3 = TriangleFuzzySet(13,25,25, term="high")
FS.add_linguistic_variable("tip", LinguisticVariable([O1, O2, O3], universe_of_discourse=[0,25]))
FS.add_rules([
"IF (quality IS poor) OR (service IS poor) THEN (tip IS low)",
"IF (service IS average) THEN (tip IS medium)",
"IF (quality IS good) OR (service IS good) THEN (tip IS high)"
])
FS.set_variable("quality", 6.5)
FS.set_variable("service", 9.8)
tip = FS.inference()
Additional example scripts are available in the examples folder of this GitHub and in our Code Ocean capsule.
Created by Marco S. Nobile at the Eindhoven University of Technology and Simone Spolaor at the University of Milano-Bicocca.
If you need further information, please write an e-mail at: marco.nobile@unive.it.
FAQs
A user-friendly Python library for fuzzy logic
We found that simpful demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago. It has 2 open source maintainers collaborating on the project.
Did you know?

Socket for GitHub automatically highlights issues in each pull request and monitors the health of all your open source dependencies. Discover the contents of your packages and block harmful activity before you install or update your dependencies.

Product
Export Socket alert data to your own cloud storage in JSON, CSV, or Parquet, with flexible snapshot or incremental delivery.

Research
/Security News
Bitwarden CLI 2026.4.0 was compromised in the Checkmarx supply chain campaign after attackers abused a GitHub Action in Bitwarden’s CI/CD pipeline.

Research
/Security News
Docker and Socket have uncovered malicious Checkmarx KICS images and suspicious code extension releases in a broader supply chain compromise.