Compare commits

..

14 Commits

Author SHA1 Message Date
gorky1234 f464f6166a corection bug figsize
continuous-integration/drone/push Build is passing Details
10 months ago
Clément FRÉVILLE 3038bd9841 Merge pull request 'Use cluster strategies and support PCA' (#15) from clustering-strategy into main
continuous-integration/drone/push Build is passing Details
10 months ago
Clément FRÉVILLE 7cb0d55969 Allow using PCA to reduce dataset dimensions
continuous-integration/drone/push Build is passing Details
10 months ago
Clément FRÉVILLE 01ef19a2f8 Merge files using strategies
continuous-integration/drone/push Build is passing Details
10 months ago
Bastien OLLIER 86bd285193 Merge pull request 'stat_prediction' (#14) from stat_prediction into main
continuous-integration/drone/push Build is passing Details
10 months ago
Bastien OLLIER 9bc9e21e45 add r2 score
continuous-integration/drone/push Build is passing Details
10 months ago
Bastien OLLIER da1e97f07f add r2 score
continuous-integration/drone/push Build is passing Details
10 months ago
Bastien OLLIER 27e69b2af8 add confusion_matrix
continuous-integration/drone/push Build is passing Details
10 months ago
bastien 4054395641 update
continuous-integration/drone/push Build is failing Details
10 months ago
bastien 01168f3588 add visu to prediction regression
continuous-integration/drone/push Build is failing Details
10 months ago
Bastien OLLIER 9da6e2d594 Add cluster stats (#13)
continuous-integration/drone/push Build is passing Details
10 months ago
Clément FRÉVILLE 4d82767c68 Add SkLearn to requirements.txt
continuous-integration/drone/push Build is passing Details
10 months ago
Bastien OLLIER 9cb0d90eb1 Add CI/CD (#9)
continuous-integration/drone/push Build is passing Details
10 months ago
Bastien OLLIER 3eac3f6b8d Merge pull request 'Support multiple column delimiters' (#10) from csv-delimiters into main
10 months ago

@ -0,0 +1,44 @@
kind: pipeline
name: default
type: docker
trigger:
event:
- push
steps:
- name: lint
image: python:3.12
commands:
- pip install --root-user-action=ignore -r requirements.txt
- ruff check .
- name: docker-image
image: plugins/docker
settings:
dockerfile: Dockerfile
registry: hub.codefirst.iut.uca.fr
repo: hub.codefirst.iut.uca.fr/bastien.ollier/miner
username:
from_secret: REGISTRY_USER
password:
from_secret: REGISTRY_PASSWORD
cache_from:
- hub.codefirst.iut.uca.fr/bastien.ollier/miner:latest
depends_on: [ lint ]
- name: deploy-miner
image: hub.codefirst.iut.uca.fr/clement.freville2/codefirst-dockerproxy-clientdrone:latest
settings:
image: hub.codefirst.iut.uca.fr/bastien.ollier/miner:latest
container: miner
command: create
overwrite: true
admins: bastienollier,clementfreville2,hugopradier2
environment:
DRONE_REPO_OWNER: bastien.ollier
depends_on: [ docker-image ]
when:
branch:
- main
- ci/*

@ -0,0 +1,9 @@
FROM python:3.12-slim
WORKDIR /app
COPY . .
RUN pip3 install -r requirements.txt
EXPOSE 80
ENTRYPOINT ["streamlit", "run", "frontend/exploration.py", "--server.port=80", "--server.address=0.0.0.0", "--server.baseUrlPath=/containers/bastienollier-miner"]

@ -0,0 +1,83 @@
from sklearn.cluster import DBSCAN, KMeans
import numpy as np
from dataclasses import dataclass
from abc import ABC, abstractmethod
from typing import Any, Optional
@dataclass
class ClusterResult:
labels: np.array
centers: Optional[np.array]
statistics: list[dict[str, Any]]
class Cluster(ABC):
@abstractmethod
def run(self, data: np.array) -> ClusterResult:
pass
class DBSCANCluster(Cluster):
def __init__(self, eps: float = 0.5, min_samples: int = 5):
self.eps = eps
self.min_samples = min_samples
#@typing.override
def run(self, data: np.array) -> ClusterResult:
dbscan = DBSCAN(eps=self.eps, min_samples=self.min_samples)
labels = dbscan.fit_predict(data)
return ClusterResult(labels, None, self.get_statistics(data, labels))
def get_statistics(self, data: np.array, labels: np.array) -> list[dict[str, Any]]:
unique_labels = np.unique(labels)
stats = []
for label in unique_labels:
if label == -1:
continue
cluster_points = data[labels == label]
num_points = len(cluster_points)
density = num_points / (np.max(cluster_points, axis=0) - np.min(cluster_points, axis=0)).prod()
stats.append({
"cluster": label,
"num_points": num_points,
"density": density
})
return stats
def __str__(self) -> str:
return "DBScan"
class KMeansCluster(Cluster):
def __init__(self, n_clusters: int = 8, n_init: int = 1, max_iter: int = 300):
self.n_clusters = n_clusters
self.n_init = n_init
self.max_iter = max_iter
#@typing.override
def run(self, data: np.array) -> ClusterResult:
kmeans = KMeans(n_clusters=self.n_clusters, init="random", n_init=self.n_init, max_iter=self.max_iter, random_state=111)
labels = kmeans.fit_predict(data)
centers = kmeans.cluster_centers_
return ClusterResult(labels, centers, self.get_statistics(data, labels, centers))
def get_statistics(self, data: np.array, labels: np.array, centers: np.array) -> list[dict[str, Any]]:
unique_labels = np.unique(labels)
stats = []
for label in unique_labels:
cluster_points = data[labels == label]
num_points = len(cluster_points)
center = centers[label]
stats.append({
"cluster": label,
"num_points": num_points,
"center": center,
})
return stats
def __str__(self) -> str:
return "KMeans"
CLUSTERING_STRATEGIES = [DBSCANCluster(), KMeansCluster()]

@ -0,0 +1,86 @@
import streamlit as st
import matplotlib.pyplot as plt
from clusters import DBSCANCluster, KMeansCluster, CLUSTERING_STRATEGIES
from sklearn.decomposition import PCA
from sklearn.metrics import silhouette_score
import numpy as np
st.header("Clustering")
if "data" in st.session_state:
data = st.session_state.data
general_row = st.columns([1, 1, 1])
clustering = general_row[0].selectbox("Clustering method", CLUSTERING_STRATEGIES)
data_name = general_row[1].multiselect("Columns", data.select_dtypes(include="number").columns)
n_components = general_row[2].number_input("Reduce dimensions to (PCA)", min_value=1, max_value=3, value=2)
with st.form("cluster_form"):
if isinstance(clustering, KMeansCluster):
row1 = st.columns([1, 1, 1])
clustering.n_clusters = row1[0].number_input("Number of clusters", min_value=1, max_value=data.shape[0], value=clustering.n_clusters)
clustering.n_init = row1[1].number_input("n_init", min_value=1, value=clustering.n_init)
clustering.max_iter = row1[2].number_input("max_iter", min_value=1, value=clustering.max_iter)
elif isinstance(clustering, DBSCANCluster):
row1 = st.columns([1, 1])
clustering.eps = row1[0].slider("eps", min_value=0.0001, max_value=1.0, step=0.05, value=clustering.eps)
clustering.min_samples = row1[1].number_input("min_samples", min_value=1, value=clustering.min_samples)
st.form_submit_button("Launch")
if len(data_name) > 0:
x = data[data_name].to_numpy()
n_components = min(n_components, len(data_name))
if len(data_name) > n_components:
pca = PCA(n_components)
x = pca.fit_transform(x)
if n_components == 2:
(fig, ax) = plt.subplots(figsize=(8, 8))
for i in range(0, pca.components_.shape[1]):
ax.arrow(
0,
0,
pca.components_[0, i],
pca.components_[1, i],
head_width=0.1,
head_length=0.1
)
plt.text(
pca.components_[0, i] + 0.05,
pca.components_[1, i] + 0.05,
data_name[i]
)
circle = plt.Circle((0, 0), radius=1, edgecolor='b', facecolor='None')
ax.add_patch(circle)
plt.axis("equal")
ax.set_title("PCA result - Correlation circle")
st.pyplot(fig)
result = clustering.run(x)
st.write("## Cluster stats")
st.table(result.statistics)
st.write("## Graphical representation")
fig = plt.figure()
if n_components == 1:
plt.scatter(x, np.zeros_like(x))
elif n_components == 2:
ax = fig.add_subplot(projection='rectilinear')
plt.scatter(x[:, 0], x[:, 1], c=result.labels, s=50, cmap="viridis")
if result.centers is not None:
plt.scatter(result.centers[:, 0], result.centers[:, 1], c="black", s=200, marker="X")
else:
ax = fig.add_subplot(projection='3d')
ax.scatter(x[:, 0], x[:, 1],x[:, 2], c=result.labels, s=50, cmap="viridis")
if result.centers is not None:
ax.scatter(result.centers[:, 0], result.centers[:, 1], result.centers[:, 2], c="black", s=200, marker="X")
st.pyplot(fig)
if not (result.labels == 0).all():
st.write("Silhouette score:", silhouette_score(x, result.labels))
else:
st.error("Select at least one column")
else:
st.error("file not loaded")

@ -1,35 +0,0 @@
import streamlit as st
import matplotlib.pyplot as plt
from sklearn.cluster import DBSCAN
st.header("Clustering: dbscan")
if "data" in st.session_state:
data = st.session_state.data
with st.form("my_form"):
data_name = st.multiselect("Data Name", data.select_dtypes(include="number").columns, max_selections=3)
eps = st.slider("eps", min_value=0.0, max_value=1.0, value=0.5, step=0.01)
min_samples = st.number_input("min_samples", step=1, min_value=1, value=5)
st.form_submit_button("launch")
if len(data_name) >= 2 and len(data_name) <=3:
x = data[data_name].to_numpy()
dbscan = DBSCAN(eps=eps, min_samples=min_samples)
y_dbscan = dbscan.fit_predict(x)
fig = plt.figure()
if len(data_name) == 2:
ax = fig.add_subplot(projection='rectilinear')
plt.scatter(x[:, 0], x[:, 1], c=y_dbscan, s=50, cmap="viridis")
else:
ax = fig.add_subplot(projection='3d')
ax.scatter(x[:, 0], x[:, 1],x[:, 2], c=y_dbscan, s=50, cmap="viridis")
st.pyplot(fig)
else:
st.error("file not loaded")

@ -1,44 +0,0 @@
import streamlit as st
from sklearn.cluster import KMeans
import matplotlib.pyplot as plt
st.header("Clustering: kmeans")
if "data" in st.session_state:
data = st.session_state.data
with st.form("my_form"):
row1 = st.columns([1,1,1])
n_clusters = row1[0].selectbox("Number of clusters", range(1,data.shape[0]))
data_name = row1[1].multiselect("Data Name",data.select_dtypes(include="number").columns, max_selections=3)
n_init = row1[2].number_input("n_init",step=1,min_value=1)
row2 = st.columns([1,1])
max_iter = row1[0].number_input("max_iter",step=1,min_value=1)
st.form_submit_button("launch")
if len(data_name) >= 2 and len(data_name) <=3:
x = data[data_name].to_numpy()
kmeans = KMeans(n_clusters=n_clusters, init="random", n_init=n_init, max_iter=max_iter, random_state=111)
y_kmeans = kmeans.fit_predict(x)
fig = plt.figure()
if len(data_name) == 2:
ax = fig.add_subplot(projection='rectilinear')
plt.scatter(x[:, 0], x[:, 1], c=y_kmeans, s=50, cmap="viridis")
centers = kmeans.cluster_centers_
plt.scatter(centers[:, 0], centers[:, 1], c="black", s=200, marker="X")
else:
ax = fig.add_subplot(projection='3d')
ax.scatter(x[:, 0], x[:, 1],x[:, 2], c=y_kmeans, s=50, cmap="viridis")
centers = kmeans.cluster_centers_
ax.scatter(centers[:, 0], centers[:, 1],centers[:, 2], c="black", s=200, marker="X")
st.pyplot(fig)
else:
st.error("file not loaded")

@ -1,9 +1,11 @@
import streamlit as st
from sklearn.linear_model import LogisticRegression
from sklearn.model_selection import train_test_split
from sklearn.metrics import accuracy_score
from sklearn.metrics import accuracy_score,confusion_matrix
from sklearn.preprocessing import LabelEncoder
import pandas as pd
import matplotlib.pyplot as plt
import seaborn as sns
st.header("Prediction: Classification")
@ -60,5 +62,18 @@ if "data" in st.session_state:
prediction = label_encoders[target_name].inverse_transform(prediction)
st.write("Prediction:", prediction[0])
if len(data_name) == 1:
fig = plt.figure()
y_pred = [model.predict(pd.DataFrame([pred_value[0]], columns=data_name)) for pred_value in X.values.tolist()]
cm = confusion_matrix(y, y_pred)
sns.heatmap(cm, annot=True, fmt="d")
plt.xlabel('Predicted')
plt.ylabel('True')
st.pyplot(fig)
else:
st.error("File not loaded")

@ -1,6 +1,8 @@
import streamlit as st
from sklearn.linear_model import LinearRegression
from sklearn.metrics import r2_score
import pandas as pd
import matplotlib.pyplot as plt
st.header("Prediction: Regression")
@ -25,5 +27,37 @@ if "data" in st.session_state:
prediction = model.predict(pd.DataFrame([pred_values], columns=data_name))
st.write("Prediction:", prediction[0])
fig = plt.figure()
dataframe_sorted = pd.concat([X, y], axis=1).sort_values(by=data_name)
if len(data_name) == 1:
y_pred = [model.predict(pd.DataFrame([pred_value[0]], columns=data_name)) for pred_value in X.values.tolist()]
r2 = r2_score(y, y_pred)
st.write('R-squared score:', r2)
X = dataframe_sorted[data_name[0]]
y = dataframe_sorted[target_name]
prediction_array_y = [
model.predict(pd.DataFrame([[dataframe_sorted[data_name[0]].iloc[i]]], columns=data_name))[0]
for i in range(dataframe_sorted.shape[0])
]
plt.scatter(dataframe_sorted[data_name[0]], dataframe_sorted[target_name], color='b')
plt.plot(dataframe_sorted[data_name[0]], prediction_array_y, color='r')
elif len(data_name) == 2:
ax = fig.add_subplot(111, projection='3d')
prediction_array_y = [
model.predict(pd.DataFrame([[dataframe_sorted[data_name[0]].iloc[i], dataframe_sorted[data_name[1]].iloc[i]]], columns=data_name))[0]
for i in range(dataframe_sorted.shape[0])
]
ax.scatter(dataframe_sorted[data_name[0]], dataframe_sorted[data_name[1]], dataframe_sorted[target_name], color='b')
ax.plot(dataframe_sorted[data_name[0]], dataframe_sorted[data_name[1]], prediction_array_y, color='r')
st.pyplot(fig)
else:
st.error("File not loaded")

@ -0,0 +1,6 @@
matplotlib>=3.5.0
pandas>=1.5.0
seaborn>=0.12.0
scikit-learn>=0.23.0
streamlit>=1.35.0
ruff>=0.4.8
Loading…
Cancel
Save