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Author SHA1 Message Date
Trygve
352173995f Exercise 6 2024-10-28 12:27:14 +01:00
Trygve
bb9f20981a uke4 2024-10-01 14:15:03 +02:00
Trygve
16ced51fa8 uke3 2024 2024-09-29 18:45:21 +02:00
Trygve
366fe4df73 uke2 2024 2024-09-20 21:08:35 +02:00
Trygve
081483ed4f csv 2024-09-12 08:27:31 +02:00
Trygve
20bed45e10 Samla uke 1 i en fil 2024-09-12 08:26:47 +02:00
82e193a278 Fjerna en lock fil 2023-11-15 10:15:19 +00:00
9961df1c90 La til requirements.txt 2023-10-30 14:17:09 +01:00
fa9f0faf62 Ferdig med oppgave 6: MNIST modell 2023-10-30 14:11:48 +01:00
29bbee4165 Ferdig med deloppgave 2 uke 6. Nettverket funker 🥳 2023-10-26 09:28:10 +02:00
ea9bf70eaa Vet ikke hva jeg gjør 2023-10-26 09:04:31 +02:00
d5c072ba3f starta på uke6 2023-10-25 14:12:43 +02:00
dbd0506e4c uke5 2023-10-25 14:12:34 +02:00
001702b010 Ferdig uke 3 2023-09-29 12:32:02 +02:00
23 changed files with 1785 additions and 163 deletions

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-0.3120380938053131 0.057060789316892624 0.5383008718490601 -0.4334142804145813 0.20545503497123718 0.8229865431785583 0.26446419954299927 1.3929160833358765 0.40466466546058655 -0.06923668831586838

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#!/usr/bin/env python3
# -*- coding: utf-8 -*-
"""
Created on Thu Sep 28 08:23:56 2023
@author: Mohamad Mohannad al Kawadri (mohamad.mohannad.al.kawadri@nmbu.no), Trygve Børte Nomeland (trygve.borte.nomeland@nmbu.no)
"""
from abc import ABC, abstractmethod
import numpy as np
from copy import deepcopy
from torchvision import datasets, transforms
class Network:
def __init__(self, layers, W_file_list, b_file_list):
self.layers = layers
self.W_file_list = W_file_list
self.b_file_list = b_file_list
self.x = input
def run(self, x):
result = x
for n, W_file, b_file in zip(self.layers, self.W_file_list, self.b_file_list):
y = deepcopy(result)
l = n(y, W_file = W_file, b_file = b_file)
result = l.run()
return result
def evaluate(self, x, expected_value):
result = list(self.run(x))
max_value_index = result.index(max(result))
return int(max_value_index) == expected_value
class Layer:
def __init__(self, x, W_file, b_file):
self.x = x
files = read(W_file, b_file)
self.W = files.get('W')
self.b = files.get('b')
@abstractmethod
def run(self):
pass
class SigmaLayer(Layer):
def run(self):
return layer(self.W, self.x, self.b)
class ReluLayer(Layer):
def run(self):
return relu_layer(self.W, self.x, self.b)
def read(W_file, b_file):
return {'W': np.loadtxt(W_file), 'b': np.loadtxt(b_file)}
# define activation function
def sigma(y):
if y > 0:
return y
else:
return 0
sigma_vec = np.vectorize(sigma)
def relu_scalar(x):
if x > 0:
return x
else:
return 0
relu = np.vectorize(relu_scalar)
# define layer function for given weight matrix, input and bias
def layer(W, x, b):
return sigma_vec(W @ x + b)
def relu_layer(W, x, b):
return sigma_vec(W @ x + b)
# Function from example file "read.py"
def get_mnist():
return datasets.MNIST(root='./data', train=True, transform=transforms.ToTensor(), download=True)
# Function from example file "read.py"
def return_image(image_index, mnist_dataset):
image, label = mnist_dataset[image_index]
image_matrix = image[0].detach().numpy() # Grayscale image, so we select the first channel (index 0)
return image_matrix.reshape(image_matrix.size), image_matrix, label
def evalualte_on_mnist(image_index, expected_value):
mnist_dataset = get_mnist()
x, image, label = return_image(image_index, mnist_dataset)
network = Network([ReluLayer, ReluLayer, ReluLayer], ['W_1.txt', 'W_2.txt', 'W_3.txt'], ['b_1.txt', 'b_2.txt', 'b_3.txt'])
return network.evaluate(x, expected_value)
def run_on_mnist(image_index):
mnist_dataset = get_mnist()
x, image, label = return_image(image_index, mnist_dataset)
network = Network([ReluLayer, ReluLayer, ReluLayer], ['W_1.txt', 'W_2.txt', 'W_3.txt'], ['b_1.txt', 'b_2.txt', 'b_3.txt'])
return network.run(x)
def main():
print(f'Check if network works on image 19961 (number 4): {evalualte_on_mnist(19961, 4)}')
print(f'Check if network works on image 10003 (number 9): {evalualte_on_mnist(10003, 9)}')
print(f'Check if network works on image 117 (number 2): {evalualte_on_mnist(117, 2)}')
print(f'Check if network works on image 1145 (number 3): {evalualte_on_mnist(1145, 3)}')
print(f'Values image 19961 (number 4): {run_on_mnist(19961)}')
if __name__ == '__main__':
main()

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MNIST/requirements.txt Normal file
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numpy
setuptools
torchvision

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class Person:
def __init__(self, name: str, age: int, email: str) -> None:
self._name: str = name
self._age: int = age
self._email: str = email
def get_details(self) -> str:
return f"Name: {self._name}, Age: {self._age}, Email: {self._email}"
class Student(Person):
def __init__(self, name: str, age: int, email: str, student_id: int) -> None:
super().__init__(name, age, email)
self._student_id: int = student_id
self._courses: list = []
self._grades: dict[str, str] = {}
def enroll_in_course(self, course: 'Course') -> None:
self._courses.append(course)
def assign_grade(self, course_name: str, grade: str) -> None:
self._grades[course_name] = grade
def get_grades(self) -> dict[str, str]:
return self._grades
class Teacher(Person):
def __init__(self, name: str, age: int, email: str, subject: str) -> None:
super().__init__(name, age, email)
self._subject: str = subject
def assign_grade(self, student: Student, course: 'Course', grade: str) -> None:
student.assign_grade(course._course_name, grade)
class Course:
def __init__(self, course_name: str, course_code: str) -> None:
self._course_name: str = course_name
self._course_code: str = course_code
self._enrolled_students: list[Student] = []
def add_student(self, student: Student) -> None:
self._enrolled_students.append(student)
student.enroll_in_course(self)
def list_students(self) -> list[str]:
return [x.get_details() for x in self._enrolled_students]
def main() -> None:
thorvald = Student("Thorvald", 28, "thorvald@example.com", 456)
johannes = Student("Johannes", 19, "Johannes@example.com", 35198)
tora = Student("Tora", 21, "Tora@example.com", 984555)
ola = Teacher("Ola Normann", 56, "ola_normann@example.com", "FYS101")
kari = Teacher("Kari Normann", 104, "kari.normann@example.com", "MATH999")
FYS101 = Course("Mekanikk", "FYS101")
MATH999 = Course("Matte", "MATH999")
students = [thorvald, johannes, tora]
for student in students:
FYS101.add_student(student)
MATH999.add_student(student)
ola.assign_grade(thorvald, FYS101, "F")
ola.assign_grade(johannes, FYS101, "E")
ola.assign_grade(tora, FYS101, "A")
kari.assign_grade(thorvald, MATH999, "B")
kari.assign_grade(johannes, MATH999, "D")
kari.assign_grade(tora, MATH999, "A+")
print(f"{thorvald._name}'s grades: {thorvald.get_grades()}")
print(f"{thorvald._name}'s grades: {johannes.get_grades()}")
print(f"{tora._name}'s grades: {tora.get_grades()}")
print("Students in FYS101:")
for student in FYS101.list_students():
print(student)
if __name__ == "__main__":
main()

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uke1.py Normal file
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# Task 1
def task1():
name = input("Enter your name here:")
print(f"What's up {name}!")
# Task 2
def putinframe(text):
l = len(text)
print("-"*(l+6))
print(""+" "*(l+4) + "")
print(""+ " " + text + " "+ "")
print(""+" "*(l+4) + "")
print("-"*(l+6))
def task2():
name = input("Type your name:")
putinframe(f"Have a lovely day {name}!")
# Task 3
def square_table(c1, c2, c3):
t = "{:^10}|{:^10}|{:^10}|\n".format(c1[0],c2[0],c3[0])
t += ("-"*len(t)+"\n")
for n in range(1, len(c1)):
t += ("{:^10}|{:^10}|{:^10}|\n".format(c1[n],c2[n],c3[n]))
return(t)
def task3():
n_list = ["x"]
sq_list = [""]
cube_list = [""]
for n in range(11):
n_list.append(n)
sq_list.append(n**2)
cube_list.append(n**3)
print(square_table(n_list, sq_list, cube_list))
# task 4
def district_table(data, head):
# Formats the data into a nice table in a string
t = "{:^25}|{:^10}|\n".format(head[0],head[1])
t += ("-"*len(t)+"\n")
for n,p in data.items():
t += ("{:^25}|{:^10}|\n".format(n, p))
return(t)
def task4():
with open('norway_municipalities_2017.csv') as f:
# we will make a dict where the the kei is the district and the value the population
d = {}
# assume the csv file always has a header
l_iter = iter(f)
l_iter.__next__()
for l in l_iter:
# we get a list where 0 is the kommune name, 1 is what fylke it is in and 2 is the population
ll = l.strip("\n").split(',')
name = ll[1]
if name in d.keys():
d.update({name: d.get(name) + int(ll[2])})
else:
d.update({name: int(ll[2])})
head = ["District", "Population"]
res = {key: val for key, val in sorted(d.items(), key = lambda ele: ele[1], reverse=True)}
print(district_table(res, head))
# Task 5
import matplotlib.pyplot as plt
import numpy as np
def task5():
with open('norway_municipalities_2017.csv') as f:
# we will make a dict where the the kei is the district and the value the population
d = {}
# assume the csv file always has a header
l_iter = iter(f)
l_iter.__next__()
for l in l_iter:
# we get a list where 0 is the kommune name, 1 is what fylke it is in and 2 is the population
ll = l.strip("\n").split(',')
name = ll[1]
if name in d.keys():
d.update({name: d.get(name) + int(ll[2])})
else:
d.update({name: int(ll[2])})
head = ["District", "Population"]
res = {key: val for key, val in sorted(d.items(), key = lambda ele: ele[1], reverse=True)}
n = len(res.keys())
x = 0.5 + np.arange(n)
y = res.values()
fig, ax = plt.subplots()
ax.bar(res.keys(), y, edgecolor="white", linewidth=0.7)
ax.set(xlabel=head[0], ylabel=head[1])
plt.xticks(rotation = 90)
plt.show()
if __name__ == "__main__":
print("Task 1:")
task1()
print("\nTask 2:")
task2()
print("\nTask 3:")
task3()
print("\nTask 4:")
task4()
print("\nTask 5:")
task5()

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name = input("Enter your name here:")
print(f"What's up {name}!")

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def putinframe(text):
l = len(text)
print(l)
print(""*(l+6))
print(""+" "*(l+4) + "")
print(""+ " " + text + " "+ "")
print(""+" "*(l+4) + "")
print(""*(l+6))
def main():
name = input("Type yo name:")
putinframe(f"What's up {name}!")
if __name__ == "__main__":
main()

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def table(c1, c2, c3):
t = "{:^10}|{:^10}|{:^10}|\n".format(c1[0],c2[0],c3[0])
t += ("-"*len(t)+"\n")
for n in range(1, len(c1)):
t += ("{:^10}|{:^10}|{:^10}|\n".format(c1[n],c2[n],c3[n]))
return(t)
def main():
n_list = ["x"]
sq_list = [""]
cube_list = [""]
for n in range(11):
n_list.append(n)
sq_list.append(n**2)
cube_list.append(n**3)
print(table(n_list, sq_list, cube_list))
if __name__ == "__main__":
main()

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@@ -1,30 +0,0 @@
def table(data, head):
# Formats the data into a nice table in a string
t = "{:^25}|{:^10}|\n".format(head[0],head[1])
t += ("-"*len(t)+"\n")
for n,p in data.items():
t += ("{:^25}|{:^10}|\n".format(n, p))
return(t)
def main():
with open('norway_municipalities_2017.csv') as f:
# we will make a dict where the the kei is the district and the value the population
d = {}
# assume the csv file always has a header
l_iter = iter(f)
l_iter.__next__()
for l in l_iter:
# we get a list where 0 is the kommune name, 1 is what fylke it is in and 2 is the population
ll = l.strip("\n").split(',')
name = ll[1]
if name in d.keys():
d.update({name: d.get(name) + int(ll[2])})
else:
d.update({name: int(ll[2])})
head = ["District", "Population"]
res = {key: val for key, val in sorted(d.items(), key = lambda ele: ele[1], reverse=True)}
print(table(res, head))
if __name__ == "__main__":
main()

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import matplotlib.pyplot as plt
import numpy as np
def main():
with open('norway_municipalities_2017.csv') as f:
# we will make a dict where the the kei is the district and the value the population
d = {}
# assume the csv file always has a header
l_iter = iter(f)
l_iter.__next__()
for l in l_iter:
# we get a list where 0 is the kommune name, 1 is what fylke it is in and 2 is the population
ll = l.strip("\n").split(',')
name = ll[1]
if name in d.keys():
d.update({name: d.get(name) + int(ll[2])})
else:
d.update({name: int(ll[2])})
head = ["District", "Population"]
res = {key: val for key, val in sorted(d.items(), key = lambda ele: ele[1], reverse=True)}
n = len(res.keys())
x = 0.5 + np.arange(n)
y = res.values()
fig, ax = plt.subplots()
ax.bar(res.keys(), y, edgecolor="white", linewidth=0.7)
ax.set(xlabel=head[0], ylabel=head[1])
plt.xticks(rotation = 90)
plt.show()
if __name__ == "__main__":
main()

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uke2.py
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@@ -57,30 +57,27 @@ def table_from_votes(file_path, num=None):
return(t) return(t)
# Task 2 # Task 2
def get_friends(text):
friends = []
for s in text:
names = re.findall(r'[A-Z]\w*', s)
if len(names) != 2:
raise ValueError('String does not contain excactly two capitalized words')
friends.append(names)
t = '{:^20}\n'.format('Venner') def print_encoding_info(char):
t += ("-"*len(t)+"\n") char_int = int.from_bytes(bytes(char, 'utf-8'))
for n in friends: print(f"Character: '{char}'")
t += (f'{n[0]:^10}-{n[1]:^10}\n') if char_int < 129:
return(t) print(f"- ASCII representation: {format(char_int, 'b')}")
else:
print("- Not in ASCII range")
print(f"- UTF-8: {' '.join(format(x, 'b') for x in bytearray(char, 'utf-8'))}", end='')
print(f' ({len(bytearray(char, "utf-8"))} bytes)')
print('\n')
def print_encoding_info_list(char_list):
for char in char_list:
print_encoding_info(char)
def main(): def main():
print(table_from_votes('2021-09-14_party distribution_1_st_2021.csv')) print(table_from_votes('2021-09-14_party distribution_1_st_2021.csv'))
print(table_from_votes('2021-09-14_party distribution_1_st_2021.csv', 3)) print(table_from_votes('2021-09-14_party distribution_1_st_2021.csv', 3))
text = [ print_encoding_info_list(["2", "$", "å"])
'Ali and Per and friends.',
'Kari and Joe know each other.',
'James has known Peter since school days.'
]
print(get_friends(text))
if __name__ == '__main__': if __name__ == '__main__':
main() main()

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uke3.py
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#!/usr/bin/env python3
# -*- coding: utf-8 -*-
"""
Created on Thu Sep 28 08:23:56 2023
@author: innagumauri
"""
#%% Task 1
import re import re
def student_information(filename): # Task 1
with open(filename, 'r', newline='', encoding='utf-8') as f: """
lines = f.readlines() Assume that we have sentences of the form
stud=[] - Ali and Per are friends.
for line in lines: - Kari and Joe know each other.
if "#" in line: - James has known Peter since school days.
continue
d=re.findall(r"[^, :\n]+", line)
stud.append({"name":d[0], "age":d[1], "phone number":d[2]})
return stud
print(student_information("data.txt")) The common structure here is that each sentence contains two names and that the names are the only words beginning with capital letters. Create a regular expression that
- matches these sentences (one sentence at a time)
- collects the names in groups
"""
def get_friends(text):
friends = []
for s in text:
names = re.findall(r'[A-Z]\w*', s)
if len(names) != 2:
raise ValueError('String does not contain excactly two capitalized words')
friends.append(names)
t = '{:^20}\n'.format('Venner')
t += ("-"*len(t)+"\n")
for n in friends:
t += (f'{n[0]:^10}-{n[1]:^10}\n')
return(t)
#%% Task 2 # Task 2
"""
Write a Python function validate_password that checks if a given password string is valid based on the following rules:
import re Starts with an uppercase letter from I to Z.
from pathlib import Path Contains at least one word character (a-z, A-Z, 0-9, or underscore).
Has exactly 4 to 5 characters in length.
Ends with a digit.
May contain spaces between the characters but cannot start or end with a space.
The password must end at the string's end.
"""
def validate_password(password):
if re.match('[I-Z]', password) == None:
return False
if re.match('[a-zA-Z0-9|_]', password) == None:
return False
if len(password) < 4 or len(password) > 5:
return False
if re.search('[0-9]$', password) == None:
return False
# Rules 5 and 6 are already fulfilled
return True
def get_imp_file(file): def main():
with open(file, 'r', encoding='utf-8') as f: print('Test task 1:')
txt = f.read() text = [
# re.M gjør at ^ matcher starten av hver linje istedet for bare starten av stringen 'Ali and Per and friends.',
ptr1 = re.compile(r"^import\s(\w+)", flags=re.M) 'Kari and Joe know each other.',
ptr2 = re.compile(r"^from\s(\w+)", flags=re.M) 'James has known Peter since school days.'
imports = re.findall(ptr1, txt) ]
imports += re.findall(ptr2, txt) print(get_friends(text))
# vi filtrerer ut duplikater: print('Test task 1:')
res = [] print('Valid:')
[res.append(x) for x in imports if x not in res] print(f'J1234: {validate_password("J1234")}')
return res print(f'I_ab5: {validate_password("I_ab5")}')
print(f'Z9_w4: {validate_password("Z9_w4")}')
print('\n')
print('Invalid:')
print(f'A1234: {validate_password("A1234")}')
print(f'J12345: {validate_password("J12345")}')
print(f'I__: {validate_password("I__")}')
print(f'?=?=)(=)/&__: {validate_password("?=?=)(=)/&")}')
print(f' J1234: {validate_password(" J1234")}')
def print_imp_dir(path="./"):
p = Path(path)
files = list(p.glob('*.py'))
for f in files:
print(f'{Path.cwd()}+{f}: {get_imp_file(f)}')
print_imp_dir()
# %% if __name__ == '__main__':
main()

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uke4.py Normal file
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from pathlib import Path
def generate_exercise_list(project_assignments_start, total_exercises):
return [str(i) for i in range(1, project_assignments_start)] + [f'{i}{part}' for i in range(project_assignments_start, total_exercises + 1) for part in ['a', 'b']]
def create_directories(directory, exercises, students):
parent_directory = Path.cwd() / directory
for exercise in exercises:
exercise_path = parent_directory / Path('exercise_' + exercise)
for student in students:
student_path = exercise_path / student
studentstudent_path.mkdir(parents=True, exist_ok=True)
for directory in parent_directory.glob('**/*'):
print(directory)
def main():
exercises = generate_exercise_list(5, 12)
students = ['Ole', 'Sarah', 'Ferdinand', 'Mattis']
create_directories('projects', exercises, students)
if __name__ == '__main__':
main()

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uke5.py Normal file
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import numpy as np
def relu(y):
return np.maximum(0, y)
def layer(W, x, b):
return relu(W @ x + b)
n = [64,128,128,128,10]
print(f"Dimensions: {n}")
# First layer
x = np.random.rand(n[0])
b = np.random.rand(n[1])
y = np.random.rand(128,64)
y = layer(y, x, b)
for i in range(2, len(n)):
W = np.random.rand(n[i], n[i - 1])
b = np.random.rand(n[i])
y = layer(W, y, b)
print(y)

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uke6.py Normal file
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import numpy as np
from copy import deepcopy
class Network:
def __init__(self, layers, W_file_list, b_file_list):
self.layers = layers
self.W_file_list = W_file_list
self.b_file_list = b_file_list
self.n_layers = 4
self.n_inputs = 784
self.n_outputs = 10
self.n = [self.n_inputs, 512, 256, self.n_outputs]
self.x = np.random.rand(self.n_inputs)
def run(self):
result = self.x
for n, W_file, b_file in zip(self.layers, self.W_file_list, self.b_file_list):
y = deepcopy(result)
l = n(y, W_file = W_file, b_file = b_file)
result = l.run()
return result
class Layer:
def __init__(self, x, W_file, b_file):
self.x = x
files = read(W_file, b_file)
self.W = files.get('W')
self.b = files.get('b')
def run(self):
return layer(self.W, self.x, self.b)
def read(W_file, b_file):
return {'W': np.loadtxt(W_file), 'b': np.loadtxt(b_file)}
# define activation function
def sigma(y):
if y > 0:
return y
else:
return 0
sigma_vec = np.vectorize(sigma)
# define layer function for given weight matrix, input and bias
def layer(W, x, b):
return sigma_vec(W @ x + b)
def main():
network = Network([Layer, Layer, Layer], ['W_1.txt', 'W_2.txt', 'W_3.txt'], ['b_1.txt', 'b_2.txt', 'b_3.txt'])
print(network.run())
if __name__ == '__main__':
main()