from IPython.core.magic import register_cell_magic
from IPython.display import Markdown
import datetime
from datetime import date
import glob
import json
import logging
import matplotlib.pyplot as plt
import numpy as np
import pandas as pd
import plotly
import warnings
import calplot
from itables import init_notebook_mode, show
import itables.options as opt
opt.dom = "tpir"
opt.style = "table-layout:auto;width:auto"
init_notebook_mode(all_interactive=True, connected=True)
@register_cell_magic
def markdown(line, cell):
return Markdown(cell.format(**globals()))
logging.getLogger('matplotlib.font_manager').disabled = True
warnings.filterwarnings("ignore")
pd.set_option('display.width', 500)
pd.set_option('display.max_rows', 50)
pd.set_option('display.max_columns', 10)
row_accumulator = []
for filename in glob.glob('nvd.jsonl'):
with open(filename, 'r', encoding='utf-8') as f:
nvd_data = json.load(f)
for entry in nvd_data:
cve = entry['cve']['id']
try:
assigner = entry['cve']['sourceIdentifier']
except KeyError:
assigner = 'Missing_Data'
try:
published_date = entry['cve']['published']
except KeyError:
published_date = 'Missing_Data'
try:
attack_vector = entry['cve']['metrics']['cvssMetricV31'][0]['cvssData']['attackVector']
except KeyError:
attack_vector = 'Missing_Data'
try:
attack_complexity = entry['cve']['metrics']['cvssMetricV31'][0]['cvssData']['attackComplexity']
except KeyError:
attack_complexity = 'Missing_Data'
try:
privileges_required = entry['cve']['metrics']['cvssMetricV31'][0]['cvssData']['privilegesRequired']
except KeyError:
privileges_required = 'Missing_Data'
try:
user_interaction = entry['cve']['metrics']['cvssMetricV31'][0]['cvssData']['userInteraction']
except KeyError:
user_interaction = 'Missing_Data'
try:
scope = entry['cve']['metrics']['cvssMetricV31'][0]['cvssData']['scope']
except KeyError:
scope = 'Missing_Data'
try:
confidentiality_impact = entry['cve']['metrics']['cvssMetricV31'][0]['cvssData']['confidentialityImpact']
except KeyError:
confidentiality_impact = 'Missing_Data'
try:
integrity_impact = entry['cve']['metrics']['cvssMetricV31'][0]['cvssData']['integrityImpact']
except KeyError:
integrity_impact = 'Missing_Data'
try:
availability_impact = entry['cve']['metrics']['cvssMetricV31'][0]['cvssData']['availabilityImpact']
except KeyError:
availability_impact = 'Missing_Data'
try:
base_score = entry['cve']['metrics']['cvssMetricV31'][0]['cvssData']['baseScore']
except KeyError:
base_score = '0.0'
try:
base_severity = entry['cve']['metrics']['cvssMetricV31'][0]['cvssData']['baseSeverity']
except KeyError:
base_severity = 'Missing_Data'
try:
exploitability_score = entry['cve']['metrics']['cvssMetricV31'][0]['exploitabilityScore']
except KeyError:
exploitability_score = 'Missing_Data'
try:
impact_score = entry['cve']['metrics']['cvssMetricV31'][0]['impactScore']
except KeyError:
impact_score = 'Missing_Data'
try:
cwe = entry['cve']['weaknesses'][0]['description'][0]['value']
except KeyError:
cwe = 'Missing_Data'
try:
description = entry['cve']['descriptions'][0]['value']
except IndexError:
description = ''
new_row = {
'CVE': cve,
'Published': published_date,
'AttackVector': attack_vector,
'AttackComplexity': attack_complexity,
'PrivilegesRequired': privileges_required,
'UserInteraction': user_interaction,
'Scope': scope,
'ConfidentialityImpact': confidentiality_impact,
'IntegrityImpact': integrity_impact,
'AvailabilityImpact': availability_impact,
'BaseScore': base_score,
'BaseSeverity': base_severity,
'ExploitabilityScore': exploitability_score,
'ImpactScore': impact_score,
'CWE': cwe,
'Description': description,
'Assigner' : assigner
}
if not description.startswith('rejected reason'):
row_accumulator.append(new_row)
nvd = pd.DataFrame(row_accumulator)
nvd['Published'] = pd.to_datetime(nvd['Published'])
thisyear = ((nvd['Published'] > '2019-01-01') & (nvd['Published'] < '2020-01-01'))
nvd = nvd.loc[thisyear]
nvd = nvd.sort_values(by=['Published'])
nvd = nvd.reset_index(drop=True)
nvd['BaseScore'] = pd.to_numeric(nvd['BaseScore']);
nvd['BaseScore'] = pd.to_numeric(nvd['BaseScore']);
nvd['BaseScore'] = nvd['BaseScore'].replace(0, np.NaN);
nvdcount = nvd['Published'].count()
nvdunique = nvd['Published'].nunique()
startdate = date(2019, 1, 1)
enddate = date(2019, 12, 31)
numberofdays = enddate - startdate
per_day = nvdcount/numberofdays.days
Markdown(f"Total Number of CVEs: **{nvd['CVE'].count()}**<br />Average CVEs Per Day: **{per_day.round(2)}**<br />Average CVSS Score: **{nvd['BaseScore'].mean().round(2)}**")
Total Number of CVEs: 18938
Average CVEs Per Day: 52.03
Average CVSS Score: 7.16
Month_Graph = nvd['Published'].groupby(nvd.Published.dt.to_period("M")).agg('count')
Year_Graph = nvd['Published'].groupby(nvd.Published.dt.to_period("Y")).agg('count')
Week_Graph = nvd['Published'].groupby(nvd.Published.dt.to_period("W")).agg('count')
Day_Graph = nvd['Published'].groupby(nvd.Published.dt.to_period("D")).agg('count')
dfs = nvd['Published'].apply(lambda x: pd.to_datetime(x, errors='coerce', format='%Y/%m/%d'))
df = dfs.value_counts()
df = df.to_frame()
df.index = df.index.strftime('%m/%d/%Y')
df.index = pd.to_datetime(df.index, format='%m/%d/%Y')
calplot.calplot(df.T.squeeze(), cmap='jet', dropzero=True, edgecolor="Grey", textcolor="White", textformat='{:.0f}', textfiller='', suptitle='CVEs Per Day', figsize=(25,3));
cg = Month_Graph.plot.area(colormap='jet', figsize=(16, 8), title='CVEs Per Month')
plt.grid()
cg.set_ylabel("New CVEs");
cg.set_xlabel("Date");
cg = Week_Graph.plot.area(colormap='jet', figsize=(16, 8), title='CVEs Per Week')
plt.grid()
cg.set_ylabel("New CVEs");
cg.set_xlabel("Date");
cg = Day_Graph.plot.area(colormap='jet', figsize=(16, 8), title='CVEs Per Day')
plt.grid()
cg.set_ylabel("New CVEs");
cg.set_xlabel("Date");
nvd['BaseScore'].plot(kind="hist", colormap='jet', figsize=(16, 8), title='CVSS Scores');
nvd_frequency = nvd['Assigner'].value_counts()
nvd_frequency = nvd_frequency.reset_index()
nvd_frequency.columns = ['Assigner', 'CVEs']
nvd_frequency['Percentage'] = round((nvd_frequency['CVEs'] /
nvd_frequency['CVEs'].sum()) * 100)
nvd_frequency[nvd_frequency.CVEs > 100].head(50)
nvd_frequency_no_mitre = nvd_frequency[~nvd_frequency.Assigner.str.contains('cve@mitre.org')]
nvd_frequency_no_mitre = nvd_frequency_no_mitre[nvd_frequency_no_mitre.CVEs > 1].head(20)
plt.figure(figsize=(10,10))
plt.barh("Assigner", "CVEs", data = nvd_frequency_no_mitre, color="#001d82")
plt.xlabel("CVEs");
plt.ylabel("") ;
plt.title("Top 20 CNAs");
nvd_cwe = nvd['CWE'].value_counts()
nvd_cwe = nvd_cwe.reset_index()
nvd_cwe.columns = ['CWE', 'CVEs']
nvd_cwe_graph = nvd_cwe[nvd_cwe.CVEs > 100].head(25)
plt.figure(figsize=(10,10));
plt.barh("CWE", "CVEs", data = nvd_cwe_graph, color="#001d82");
plt.xlabel("CVEs");
plt.ylabel("CWE") ;
plt.title("Most Common CWE in CVE Records");
show(nvd_frequency, scrollY="400px", scrollCollapse=True, paging=False)
Assigner | CVEs | Percentage |
---|---|---|
Loading... (need help?) |
show(nvd_cwe, scrollY="400px", scrollCollapse=True, paging=False)
CWE | CVEs |
---|---|
Loading... (need help?) |
print("CVE-1999:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-1999-')]))
print("CVE-2000:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2000-')]))
print("CVE-2001:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2001-')]))
print("CVE-2002:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2002-')]))
print("CVE-2003:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2003-')]))
print("CVE-2004:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2004-')]))
print("CVE-2005:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2005-')]))
print("CVE-2006:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2006-')]))
print("CVE-2007:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2007-')]))
print("CVE-2008:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2008-')]))
print("CVE-2009:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2009-')]))
print("CVE-2010:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2010-')]))
print("CVE-2011:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2011-')]))
print("CVE-2012:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2012-')]))
print("CVE-2013:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2013-')]))
print("CVE-2014:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2014-')]))
print("CVE-2015:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2015-')]))
print("CVE-2016:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2016-')]))
print("CVE-2017:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2017-')]))
print("CVE-2018:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2018-')]))
print("CVE-2019:\t%s" % len(nvd[nvd['CVE'].str.contains('CVE-2019-')]))
CVE-1999: 0 CVE-2000: 0 CVE-2001: 0 CVE-2002: 3 CVE-2003: 0 CVE-2004: 1 CVE-2005: 8 CVE-2006: 6 CVE-2007: 9 CVE-2008: 6 CVE-2009: 24 CVE-2010: 86 CVE-2011: 115 CVE-2012: 110 CVE-2013: 207 CVE-2014: 131 CVE-2015: 354 CVE-2016: 371 CVE-2017: 844 CVE-2018: 3290 CVE-2019: 13373
Markdown(f"This report is updated automatically every day, last generated on: **{datetime.datetime.now()}**")
This report is updated automatically every day, last generated on: 2024-03-29 08:07:31.807523