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@@ -48,13 +48,14 @@ es = Elasticsearch(hosts=[{'host': '223.194.92.152', 'port': 9200}], scheme="htt
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urllib3.disable_warnings(urllib3.exceptions.InsecureRequestWarning)
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-# In[135]:
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+# In[347]:
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######## 2020, 1 year ########
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+######## There are no MTM data in 2018, 2019 ########
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body = {
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- "size" : 100,
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+ "size" : 10000,
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"query": {
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"range":{
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"TW_COLLECT_DT":{
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@@ -62,14 +63,18 @@ body = {
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"lte":"2020-12-31T00:00:00.625+09:00" ################
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}
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}
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- }
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+ },
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+ "sort":[{
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+ "_id":"asc"
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+ }]
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}
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res = es.search(index = 'ts_data_accident-2020', body=body)
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data = res['hits']['hits']
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+nxt=res["hit"]["hit"][-1]["sort"][0]
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total = res['hits']['total']
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-print(total)
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+# print(total)
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accident = []
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for da in data:
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@@ -78,39 +83,88 @@ for da in data:
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accident.append(att_type)
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# df = pd.DataFrame(accident,dtype=str)
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-df = pd.DataFrame(accident)
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+df_10000 = pd.DataFrame(accident)
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-print(df.head())
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+print(df_10000.head())
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-# In[136]:
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+# In[ ]:
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+
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+
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+######## 2020, 1 year ########
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+######## There are no MTM data in 2018, 2019 ########
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+
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+body = {
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+ "size" : 10000,
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+ "search_after":[nxt],
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+ "query": {
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+ "range":{
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+ "TW_COLLECT_DT":{
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+ "gte":"2020-01-01T00:00:00.625+09:00",
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+ "lte":"2020-12-31T00:00:00.625+09:00" ################
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+ }
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+ }
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+ },
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+ "sort":[{
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+ "_id":"asc"
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+ }]
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+}
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+
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+res = es.search(index = 'ts_data_accident-2020', body=body)
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+data = res['hits']['hits']
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+nxt=res["hit"]["hit"][-1]["sort"][0]
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+total = res['hits']['total']
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+
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+# print(total)
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+
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+accident = []
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+for da in data:
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+ att_type = da['_source']
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+ # att_type["POL_NM"]=att_type["SCEN_INFOS"][0]["POL_NM"]
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+ accident.append(att_type)
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+
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+# df = pd.DataFrame(accident,dtype=str)
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+df_20000 = pd.DataFrame(accident)
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+
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+print(df_20000.head())
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+
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+
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+# In[348]:
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-df=df[['RISK_V2','INST_NM','DRULE_ATT_TYPE_CODE1','TW_ATT_IP','TW_ATT_PORT','TW_DMG_IP','TW_DMG_PORT','ACCD_DMG_PROTO_NM','TW_ATT_CT_NM','ACCD_FIND_MTD_CODE']]
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+df=df[['RISK_V2','INST_NM','DRULE_ATT_TYPE_CODE1','TW_ATT_IP','TW_ATT_PORT','TW_DMG_IP','TW_DMG_PORT','ACCD_DMG_PROTO_NM','TW_ATT_CT_NM','ACCD_FIND_MTD_CODE','DRULE_NM']].dropna()
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+len(df)
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df.head()
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-# In[248]:
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+# In[349]:
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-# import ast
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+##################### NTM section #####################
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+
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+
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+# In[350]:
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+
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+
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+NTM_df=df[df['ACCD_FIND_MTD_CODE']=='1']
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+len(NTM_df)
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+
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+
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+# In[351]:
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+
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# Pick out it in order to get the asset, risk, intent, black IP out
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-RISK_V2=df['RISK_V2']
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-# risk_values=RISK_V2.values
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-# print(risk_values)
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+RISK_V2=NTM_df['RISK_V2']
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+RISK_V2_FILTERED=RISK_V2.dropna()
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+print(RISK_V2.size)
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+print(RISK_V2_FILTERED.size)
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-# print(type(risk_value[0]))
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-# risk_v2_zero=RISK_V2[0]
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-# print(RISK_V2.values[:2])
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-# dict_risk_v2=ast.literal_eval(RISK_V2[0])
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-# print(dict[0])
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-# In[229]:
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+# In[352]:
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def filter_assets_value(risk):
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@@ -118,7 +172,8 @@ def filter_assets_value(risk):
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try:
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for risk_key in risk:
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if 'ASSETS_VAL_' in risk_key and risk[risk_key]:
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- risks.append(risk_key)
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+ risk_key_desc = 'RISK_V2.' + risk_key + '=' + get_asset_desc(risk_key)
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+ risks.append(risk_key_desc)
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except:
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print(risk)
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print(type(risk))
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@@ -128,24 +183,393 @@ def filter_assets_value(risk):
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-# In[106]:
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+# In[353]:
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-# # modified
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-# def filter_assets_value(risk):
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-# risks=[]
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-# for risk_key in risk:
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-# if 'ASSETS_VAL_' in risk_key and risk[risk_key]:
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-# risk_key_desc = 'RISK_V2.' + risk_key + '=' + get_asset_desc(risk_key)
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-# risks.append(risk_key_desc)
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-# return risks
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+# modified
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+def get_asset_desc(asset_field):
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+ if asset_field == 'ASSETS_VAL_1':
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+ return '공인-전체IP대역(유선)'
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+ elif asset_field == 'ASSETS_VAL_2':
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+ return '공인-전체IP대역(무선)'
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+ elif asset_field == 'ASSETS_VAL_3':
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+ return '공인-WEB서버'
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+ elif asset_field == 'ASSETS_VAL_4':
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+ return '공인-내부응용서버'
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+ elif asset_field == 'ASSETS_VAL_5':
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+ return '공인-DB서버'
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+ elif asset_field == 'ASSETS_VAL_6':
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+ return '공인-패치서버'
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+ elif asset_field == 'ASSETS_VAL_7':
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+ return '공인-네트워크'
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+ elif asset_field == 'ASSETS_VAL_8':
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+ return '공인-보안'
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+ elif asset_field == 'ASSETS_VAL_9':
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+ return '공인-업무용PC'
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+ elif asset_field == 'ASSETS_VAL_10':
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+ return '공인-비업무용PC'
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+ elif asset_field == 'ASSETS_VAL_11':
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+ return '공인-기타'
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+ elif asset_field == 'ASSETS_VAL_12':
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+ return '사설-전체IP대역(유선)'
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+ elif asset_field == 'ASSETS_VAL_13':
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+ return '사설-전체IP대역(무선)'
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+ elif asset_field == 'ASSETS_VAL_14':
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+ return '사설-WEB서버'
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+ elif asset_field == 'ASSETS_VAL_15':
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+ return '사설-내부응용서버'
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+ elif asset_field == 'ASSETS_VAL_16':
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+ return '사설-DB서버'
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+ elif asset_field == 'ASSETS_VAL_17':
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+ return '사설-패치서버'
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+ elif asset_field == 'ASSETS_VAL_18':
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+ return '사설-네트워크'
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+ elif asset_field == 'ASSETS_VAL_19':
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+ return '사설-보안'
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+ elif asset_field == 'ASSETS_VAL_20':
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+ return '사설-업무용PC'
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+ elif asset_field == 'ASSETS_VAL_21':
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+ return '사설-비업무용PC'
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+ elif asset_field == 'ASSETS_VAL_22':
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+ return '사설-기타'
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+ else:
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+ return ''
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+
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+
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+# In[354]:
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+
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+
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+# New assets column
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243
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+NTM_df['ASSETS_VAL']=list(map(filter_assets_value, RISK_V2_FILTERED))
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244
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+NTM_df['ASSETS_VAL']=NTM_df['ASSETS_VAL'].astype(str)
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+NTM_df[:1]
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246
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143
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247
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-# In[115]:
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+# In[355]:
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250
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251
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# modified
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148
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-def get_asset_desc(asset_field):
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252
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+def filter_intent(intent):
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253
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+ intents=[]
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254
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+ for intent_key in intent:
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255
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+ if 'INTENT_VAL_' in intent_key and intent[intent_key]:
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256
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+ intent_key_desc = 'RISK_V2.' + intent_key + '=' + get_intent_desc(intent_key)
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257
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+ intents.append(intent_key_desc)
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+ return intents
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+
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260
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+
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261
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+# In[356]:
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+
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263
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+
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264
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+def get_intent_desc(intent_field):
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265
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+ if intent_field == 'INTENT_VAL_1':
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266
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+ return '파괴'
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267
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+ elif intent_field == 'INTENT_VAL_2':
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268
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+ return '유출'
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269
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+ elif intent_field == 'INTENT_VAL_3':
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270
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+ return '지연'
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271
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+ elif intent_field == 'INTENT_VAL_4':
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272
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+ return '잠복'
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273
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+ elif intent_field == 'INTENT_VAL_5':
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274
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+ return '단순침입'
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275
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+ elif intent_field == 'INTENT_VAL_6':
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276
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+ return 'MD5'
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277
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+ elif intent_field == 'INTENT_VAL_0':
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278
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+ return 'Default'
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279
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+ else:
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280
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+ return ''
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281
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+
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282
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+
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283
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+# In[357]:
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284
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+
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285
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+
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286
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+# New column of intent value
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287
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+NTM_df['INTENT_VAL']=list(map(filter_intent, RISK_V2_FILTERED))
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288
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+NTM_df['INTENT_VAL']=NTM_df['INTENT_VAL'].astype(str)
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289
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+NTM_df[:1]
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290
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+
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291
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+
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292
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+# In[358]:
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293
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+
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294
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+
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295
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+# modified
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296
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+def filter_source(source):
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297
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+ sources=[]
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298
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+ for source_key in source:
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299
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+ if 'SOURCE_VAL_' in source_key and source[source_key]:
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300
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+ source_key_desc='RISK_V2.' + source_key + '=' + get_source_desc(source_key)
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301
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+ sources.append(source_key_desc)
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302
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+ return sources
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303
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+
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304
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+
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305
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+# In[359]:
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306
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+
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307
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+
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308
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+def get_source_desc(source_field):
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309
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+ if source_field=='SOURCE_VAL_1':
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310
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+ return '북한IP'
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311
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+ if source_field=='SOURCE_VAL_3':
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312
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+ return 'ECSC Black IP'
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313
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+ else:
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314
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+ return ''
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315
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+
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316
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+
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317
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+# In[360]:
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318
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+
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319
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+
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320
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+# New column of SOURCE_VAL value
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321
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+NTM_df['SOURCE_VAL']=list(map(filter_source, RISK_V2_FILTERED))
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322
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+NTM_df['SOURCE_VAL']=NTM_df['SOURCE_VAL'].astype(str)
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323
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+NTM_df[:5]
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324
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+
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325
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+
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326
|
+# In[361]:
|
|
|
327
|
+
|
|
|
328
|
+
|
|
|
329
|
+NTM_df.drop(columns=['RISK_V2'], inplace=True)
|
|
|
330
|
+NTM_df.columns
|
|
|
331
|
+
|
|
|
332
|
+
|
|
|
333
|
+# In[362]:
|
|
|
334
|
+
|
|
|
335
|
+
|
|
|
336
|
+# It should be 13 columns in total
|
|
|
337
|
+
|
|
|
338
|
+# 1. 기관 INST_NM
|
|
|
339
|
+# 2. 공격 DRULE_ATT_TYPE_CODE1
|
|
|
340
|
+# 3. 자산 ASSETS_VAL
|
|
|
341
|
+# 4. 위협공격ip TW_ATT_IP
|
|
|
342
|
+# 5. 위협공격port TW_ATT_PORT
|
|
|
343
|
+# 6. 위협피해ip TW_DMG_IP
|
|
|
344
|
+# 7. 위협피해port TW_DMG_PORT
|
|
|
345
|
+# 8. 위협피해프로토콜 ACCD_DMG_PROTO_NM
|
|
|
346
|
+# 9. 공격국가 TW_ATT_CT_NM
|
|
|
347
|
+# 10. 의도(7개) INTENT_VAL
|
|
|
348
|
+# 11. IP/URL 가중치 SOURCE_VAL
|
|
|
349
|
+# 12. 장비 ACCD_FIND_MTD_CODE
|
|
|
350
|
+# 13. 탐지규칙명 DRULE_NM
|
|
|
351
|
+
|
|
|
352
|
+
|
|
|
353
|
+#
|
|
|
354
|
+
|
|
|
355
|
+# In[363]:
|
|
|
356
|
+
|
|
|
357
|
+
|
|
|
358
|
+NTM_df.isna().sum()
|
|
|
359
|
+
|
|
|
360
|
+
|
|
|
361
|
+# In[364]:
|
|
|
362
|
+
|
|
|
363
|
+
|
|
|
364
|
+# Change the Nan to zero
|
|
|
365
|
+NTM_df['ACCD_DMG_PROTO_NM']=NTM_df['ACCD_DMG_PROTO_NM'].replace(np.nan,'')
|
|
|
366
|
+NTM_df['INST_NM']=NTM_df['INST_NM'].replace(np.nan,'')
|
|
|
367
|
+NTM_df['DRULE_ATT_TYPE_CODE1']=NTM_df['DRULE_ATT_TYPE_CODE1'].replace(np.nan,'')
|
|
|
368
|
+NTM_df['TW_ATT_IP']=NTM_df['TW_ATT_IP'].replace(np.nan,0)
|
|
|
369
|
+NTM_df['TW_ATT_PORT']=NTM_df['TW_ATT_PORT'].replace(np.nan,0)
|
|
|
370
|
+NTM_df['TW_DMG_IP']=NTM_df['TW_DMG_IP'].replace(np.nan,0)
|
|
|
371
|
+NTM_df['TW_DMG_PORT']=NTM_df['TW_DMG_PORT'].replace(np.nan,0)
|
|
|
372
|
+NTM_df['TW_ATT_CT_NM']=NTM_df['TW_ATT_CT_NM'].replace(np.nan,'')
|
|
|
373
|
+NTM_df['ASSETS_VAL']=NTM_df['ASSETS_VAL'].replace(np.nan,0)
|
|
|
374
|
+NTM_df['INTENT_VAL']=NTM_df['INTENT_VAL'].replace(np.nan,0)
|
|
|
375
|
+NTM_df['SOURCE_VAL']=NTM_df['SOURCE_VAL'].replace(np.nan,0)
|
|
|
376
|
+NTM_df['DRULE_NM']=NTM_df['DRULE_NM'].replace(np.nan,'')
|
|
|
377
|
+
|
|
|
378
|
+
|
|
|
379
|
+# In[365]:
|
|
|
380
|
+
|
|
|
381
|
+
|
|
|
382
|
+# Check NaN out again
|
|
|
383
|
+NTM_df.isna().sum()
|
|
|
384
|
+
|
|
|
385
|
+
|
|
|
386
|
+# In[366]:
|
|
|
387
|
+
|
|
|
388
|
+
|
|
|
389
|
+# # Merge all
|
|
|
390
|
+
|
|
|
391
|
+# # Make one string from all of elements
|
|
|
392
|
+NTM_df['Combined']=NTM_df['INST_NM'].astype(str)+' '+NTM_df['TW_ATT_IP'].astype(str)
|
|
|
393
|
++' '+NTM_df['TW_ATT_PORT'].astype(str)+' '+NTM_df['TW_DMG_IP'].astype(str)+' '
|
|
|
394
|
++NTM_df['TW_DMG_PORT'].astype(str) +' '+NTM_df['ACCD_DMG_PROTO_NM'].astype(str)
|
|
|
395
|
++' '+NTM_df['TW_ATT_CT_NM']+' '+NTM_df['ASSETS_VAL']+' '+NTM_df['INTENT_VAL']+' '
|
|
|
396
|
++NTM_df['SOURCE_VAL']+' '+NTM_df['DRULE_ATT_TYPE_CODE1']+' '+NTM_df['DRULE_NM']
|
|
|
397
|
+
|
|
|
398
|
+NTM_com=NTM_df['Combined']
|
|
|
399
|
+NTM_com[:10]
|
|
|
400
|
+
|
|
|
401
|
+
|
|
|
402
|
+# In[367]:
|
|
|
403
|
+
|
|
|
404
|
+
|
|
|
405
|
+# Change the type to DataFrame
|
|
|
406
|
+NTM_to_df=pd.DataFrame(NTM_com)
|
|
|
407
|
+NTM_to_df[:5]
|
|
|
408
|
+
|
|
|
409
|
+
|
|
|
410
|
+# In[368]:
|
|
|
411
|
+
|
|
|
412
|
+
|
|
|
413
|
+# Change the type to list in order to apply the algorithm(nested list)
|
|
|
414
|
+NTM_tolist=NTM_to_df.values.tolist()
|
|
|
415
|
+NTM_tolist[:5]
|
|
|
416
|
+
|
|
|
417
|
+
|
|
|
418
|
+# In[369]:
|
|
|
419
|
+
|
|
|
420
|
+
|
|
|
421
|
+from prefixspan import PrefixSpan
|
|
|
422
|
+
|
|
|
423
|
+
|
|
|
424
|
+# In[370]:
|
|
|
425
|
+
|
|
|
426
|
+
|
|
|
427
|
+# Apply prefixspan
|
|
|
428
|
+PrefixSpan_NTM = PrefixSpan(NTM_tolist)
|
|
|
429
|
+
|
|
|
430
|
+###### Interchangeable ######
|
|
|
431
|
+# Get any over frequency 1
|
|
|
432
|
+prefix_NTM=PrefixSpan_NTM.frequent(1)
|
|
|
433
|
+prefix_NTM[:3]
|
|
|
434
|
+
|
|
|
435
|
+
|
|
|
436
|
+# In[371]:
|
|
|
437
|
+
|
|
|
438
|
+
|
|
|
439
|
+# Put the result to DataFrame
|
|
|
440
|
+prefix_NTM_df=pd.DataFrame(prefix_NTM)
|
|
|
441
|
+prefix_NTM_df[:5]
|
|
|
442
|
+
|
|
|
443
|
+
|
|
|
444
|
+# In[372]:
|
|
|
445
|
+
|
|
|
446
|
+
|
|
|
447
|
+# Change the columns name
|
|
|
448
|
+prefix_NTM_df.rename(columns={0:'Frequency',1:'Cause'},inplace=True)
|
|
|
449
|
+
|
|
|
450
|
+# Make the new column for filling the Effect
|
|
|
451
|
+prefix_NTM_df['Effect']=np.nan
|
|
|
452
|
+
|
|
|
453
|
+# Change the order of columns
|
|
|
454
|
+prefix_NTM_df=prefix_NTM_df[['Cause','Effect','Frequency']]
|
|
|
455
|
+prefix_NTM_df[:2]
|
|
|
456
|
+
|
|
|
457
|
+
|
|
|
458
|
+# In[373]:
|
|
|
459
|
+
|
|
|
460
|
+
|
|
|
461
|
+# Define the function that find the rule name
|
|
|
462
|
+def generate_cause(cell):
|
|
|
463
|
+ drules=['Attack','DDOS','HACK','MAIL','Malwr','WEB']
|
|
|
464
|
+ for drule in drules:
|
|
|
465
|
+ if ' '+drule in cell[0]:
|
|
|
466
|
+ return drule
|
|
|
467
|
+ return ''
|
|
|
468
|
+
|
|
|
469
|
+# Mapping the rule name with cause that is the effect
|
|
|
470
|
+effect=list(map(generate_cause, prefix_NTM_df.Cause))
|
|
|
471
|
+
|
|
|
472
|
+# Assign the rule name as an effect
|
|
|
473
|
+prefix_NTM_df['Effect']=effect
|
|
|
474
|
+prefix_NTM_df.sort_values(by=['Frequency'],ascending=False)
|
|
|
475
|
+
|
|
|
476
|
+
|
|
|
477
|
+# In[374]:
|
|
|
478
|
+
|
|
|
479
|
+
|
|
|
480
|
+# Attack Filter
|
|
|
481
|
+def Attack_filter(ps):
|
|
|
482
|
+ return ' Attack' in ps[0]
|
|
|
483
|
+
|
|
|
484
|
+att_filter=prefix_NTM_df[list(map(Attack_filter, prefix_NTM_df.Cause))].fillna('Attack')
|
|
|
485
|
+
|
|
|
486
|
+# Malwr Filter
|
|
|
487
|
+def Malwr_filter(ps):
|
|
|
488
|
+ return ' Malwr' in ps[0]
|
|
|
489
|
+
|
|
|
490
|
+mal_filter=prefix_NTM_df[list(map(Malwr_filter, prefix_NTM_df.Cause))].fillna('Malwr')
|
|
|
491
|
+
|
|
|
492
|
+# DDOS Filter
|
|
|
493
|
+def DDOS_filter(ps):
|
|
|
494
|
+ return ' DDOS' in ps[0]
|
|
|
495
|
+
|
|
|
496
|
+dd_filter=prefix_NTM_df[list(map(DDOS_filter, prefix_NTM_df.Cause))].fillna('DDOS')
|
|
|
497
|
+
|
|
|
498
|
+# HACK Filter
|
|
|
499
|
+def HACK_filter(ps):
|
|
|
500
|
+ return ' HACK' in ps[0]
|
|
|
501
|
+
|
|
|
502
|
+hack_filter=prefix_NTM_df[list(map(HACK_filter, prefix_NTM_df.Cause))].fillna('HACK')
|
|
|
503
|
+
|
|
|
504
|
+# MAIL Filter
|
|
|
505
|
+def MAIL_filter(ps):
|
|
|
506
|
+ return ' MAIL' in ps[0]
|
|
|
507
|
+
|
|
|
508
|
+mail_filter=prefix_NTM_df[list(map(MAIL_filter, prefix_NTM_df.Cause))].fillna('MAIL')
|
|
|
509
|
+
|
|
|
510
|
+# WEB Filter
|
|
|
511
|
+def WEB_filter(ps):
|
|
|
512
|
+ return ' WEB' in ps[0]
|
|
|
513
|
+prefix_NTM_df
|
|
|
514
|
+web_filter=prefix_NTM_df[list(map(WEB_filter, prefix_NTM_df.Cause))].fillna('WEB')
|
|
|
515
|
+
|
|
|
516
|
+frames = [att_filter, mal_filter, dd_filter, hack_filter, mail_filter, web_filter]
|
|
|
517
|
+result = pd.concat(frames)
|
|
|
518
|
+result.sort_values(by=['Frequency'],ascending=False)
|
|
|
519
|
+
|
|
|
520
|
+
|
|
|
521
|
+# In[ ]:
|
|
|
522
|
+
|
|
|
523
|
+
|
|
|
524
|
+##################### NTM section End #####################
|
|
|
525
|
+
|
|
|
526
|
+
|
|
|
527
|
+# In[ ]:
|
|
|
528
|
+
|
|
|
529
|
+
|
|
|
530
|
+##################### MTM section #####################
|
|
|
531
|
+
|
|
|
532
|
+
|
|
|
533
|
+# In[375]:
|
|
|
534
|
+
|
|
|
535
|
+
|
|
|
536
|
+MTM_df=df[df['ACCD_FIND_MTD_CODE']=='2']
|
|
|
537
|
+len(MTM_df)
|
|
|
538
|
+
|
|
|
539
|
+
|
|
|
540
|
+# In[376]:
|
|
|
541
|
+
|
|
|
542
|
+
|
|
|
543
|
+# Pick out it in order to get the asset, risk, intent, black IP out
|
|
|
544
|
+RISK_V2_MTM=MTM_df['RISK_V2']
|
|
|
545
|
+
|
|
|
546
|
+RISK_V2_FILTERED_MTM=RISK_V2_MTM.dropna()
|
|
|
547
|
+print(RISK_V2_MTM.size)
|
|
|
548
|
+print(RISK_V2_FILTERED_MTM.size)
|
|
|
549
|
+
|
|
|
550
|
+
|
|
|
551
|
+# In[377]:
|
|
|
552
|
+
|
|
|
553
|
+
|
|
|
554
|
+def filter_assets_value_MTM(risk):
|
|
|
555
|
+ risks=[]
|
|
|
556
|
+ try:
|
|
|
557
|
+ for risk_key in risk:
|
|
|
558
|
+ if 'ASSETS_VAL_' in risk_key and risk[risk_key]:
|
|
|
559
|
+ risk_key_desc = 'RISK_V2.' + risk_key + '=' + get_asset_desc(risk_key)
|
|
|
560
|
+ risks.append(risk_key_desc)
|
|
|
561
|
+ except:
|
|
|
562
|
+ print(risk)
|
|
|
563
|
+ print(type(risk))
|
|
|
564
|
+ finally:
|
|
|
565
|
+ return risks
|
|
|
566
|
+
|
|
|
567
|
+
|
|
|
568
|
+# In[378]:
|
|
|
569
|
+
|
|
|
570
|
+
|
|
|
571
|
+# modified
|
|
|
572
|
+def get_asset_desc_MTM(asset_field):
|
|
149
|
573
|
if asset_field == 'ASSETS_VAL_1':
|
|
150
|
574
|
return '공인-전체IP대역(유선)'
|
|
151
|
575
|
elif asset_field == 'ASSETS_VAL_2':
|
|
|
@@ -194,13 +618,255 @@ def get_asset_desc(asset_field):
|
|
194
|
618
|
return ''
|
|
195
|
619
|
|
|
196
|
620
|
|
|
197
|
|
-# In[250]:
|
|
|
621
|
+# In[379]:
|
|
198
|
622
|
|
|
199
|
623
|
|
|
200
|
624
|
# New assets column
|
|
201
|
|
-x=list(map(filter_assets_value, RISK_V2))
|
|
202
|
|
-# print(list(filter(lambda n:n!='None',df['ASSETS_VAL'])))
|
|
203
|
|
-len(x)
|
|
|
625
|
+MTM_df['ASSETS_VAL']=list(map(filter_assets_value_MTM, RISK_V2_FILTERED_MTM))
|
|
|
626
|
+MTM_df['ASSETS_VAL']=MTM_df['ASSETS_VAL'].astype(str)
|
|
|
627
|
+MTM_df[:1]
|
|
|
628
|
+
|
|
|
629
|
+
|
|
|
630
|
+# In[381]:
|
|
|
631
|
+
|
|
|
632
|
+
|
|
|
633
|
+# modified
|
|
|
634
|
+def filter_intent_MTM(intent):
|
|
|
635
|
+ intents=[]
|
|
|
636
|
+ for intent_key in intent:
|
|
|
637
|
+ if 'INTENT_VAL_' in intent_key and intent[intent_key]:
|
|
|
638
|
+ intent_key_desc = 'RISK_V2.' + intent_key + '=' + get_intent_desc(intent_key)
|
|
|
639
|
+ intents.append(intent_key_desc)
|
|
|
640
|
+ return intents
|
|
|
641
|
+
|
|
|
642
|
+
|
|
|
643
|
+# In[382]:
|
|
|
644
|
+
|
|
|
645
|
+
|
|
|
646
|
+def get_intent_desc_MTM(intent_field):
|
|
|
647
|
+ if intent_field == 'INTENT_VAL_1':
|
|
|
648
|
+ return '파괴'
|
|
|
649
|
+ elif intent_field == 'INTENT_VAL_2':
|
|
|
650
|
+ return '유출'
|
|
|
651
|
+ elif intent_field == 'INTENT_VAL_3':
|
|
|
652
|
+ return '지연'
|
|
|
653
|
+ elif intent_field == 'INTENT_VAL_4':
|
|
|
654
|
+ return '잠복'
|
|
|
655
|
+ elif intent_field == 'INTENT_VAL_5':
|
|
|
656
|
+ return '단순침입'
|
|
|
657
|
+ elif intent_field == 'INTENT_VAL_6':
|
|
|
658
|
+ return 'MD5'
|
|
|
659
|
+ elif intent_field == 'INTENT_VAL_0':
|
|
|
660
|
+ return 'Default'
|
|
|
661
|
+ else:
|
|
|
662
|
+ return ''
|
|
|
663
|
+
|
|
|
664
|
+
|
|
|
665
|
+# In[383]:
|
|
|
666
|
+
|
|
|
667
|
+
|
|
|
668
|
+# New column of intent value
|
|
|
669
|
+MTM_df['INTENT_VAL']=list(map(filter_intent_MTM, RISK_V2_FILTERED_MTM))
|
|
|
670
|
+MTM_df['INTENT_VAL']=MTM_df['INTENT_VAL'].astype(str)
|
|
|
671
|
+MTM_df[:1]
|
|
|
672
|
+
|
|
|
673
|
+
|
|
|
674
|
+# In[384]:
|
|
|
675
|
+
|
|
|
676
|
+
|
|
|
677
|
+# modified
|
|
|
678
|
+def filter_source_MTM(source):
|
|
|
679
|
+ sources=[]
|
|
|
680
|
+ for source_key in source:
|
|
|
681
|
+ if 'SOURCE_VAL_' in source_key and source[source_key]:
|
|
|
682
|
+ source_key_desc='RISK_V2.' + source_key + '=' + get_source_desc(source_key)
|
|
|
683
|
+ sources.append(source_key_desc)
|
|
|
684
|
+ return sources
|
|
|
685
|
+
|
|
|
686
|
+
|
|
|
687
|
+# In[385]:
|
|
|
688
|
+
|
|
|
689
|
+
|
|
|
690
|
+def get_source_desc_MTM(source_field):
|
|
|
691
|
+ if source_field=='SOURCE_VAL_1':
|
|
|
692
|
+ return '북한IP'
|
|
|
693
|
+ if source_field=='SOURCE_VAL_3':
|
|
|
694
|
+ return 'ECSC Black IP'
|
|
|
695
|
+ else:
|
|
|
696
|
+ return ''
|
|
|
697
|
+
|
|
|
698
|
+
|
|
|
699
|
+# In[386]:
|
|
|
700
|
+
|
|
|
701
|
+
|
|
|
702
|
+# New column of SOURCE_VAL value
|
|
|
703
|
+MTM_df['SOURCE_VAL']=list(map(filter_source_MTM, RISK_V2_FILTERED_MTM))
|
|
|
704
|
+MTM_df['SOURCE_VAL']=MTM_df['SOURCE_VAL'].astype(str)
|
|
|
705
|
+MTM_df[:5]
|
|
|
706
|
+
|
|
|
707
|
+
|
|
|
708
|
+# In[387]:
|
|
|
709
|
+
|
|
|
710
|
+
|
|
|
711
|
+MTM_df.drop(columns=['RISK_V2'], inplace=True)
|
|
|
712
|
+MTM_df.columns
|
|
|
713
|
+
|
|
|
714
|
+
|
|
|
715
|
+# In[388]:
|
|
|
716
|
+
|
|
|
717
|
+
|
|
|
718
|
+MTM_df.isna().sum()
|
|
|
719
|
+
|
|
|
720
|
+
|
|
|
721
|
+# In[389]:
|
|
|
722
|
+
|
|
|
723
|
+
|
|
|
724
|
+# Change the Nan to zero
|
|
|
725
|
+MTM_df['ACCD_DMG_PROTO_NM']=MTM_df['ACCD_DMG_PROTO_NM'].replace(np.nan,'')
|
|
|
726
|
+MTM_df['INST_NM']=MTM_df['INST_NM'].replace(np.nan,'')
|
|
|
727
|
+MTM_df['DRULE_ATT_TYPE_CODE1']=MTM_df['DRULE_ATT_TYPE_CODE1'].replace(np.nan,'')
|
|
|
728
|
+MTM_df['TW_ATT_IP']=MTM_df['TW_ATT_IP'].replace(np.nan,0)
|
|
|
729
|
+MTM_df['TW_ATT_PORT']=MTM_df['TW_ATT_PORT'].replace(np.nan,0)
|
|
|
730
|
+MTM_df['TW_DMG_IP']=MTM_df['TW_DMG_IP'].replace(np.nan,0)
|
|
|
731
|
+MTM_df['TW_DMG_PORT']=MTM_df['TW_DMG_PORT'].replace(np.nan,0)
|
|
|
732
|
+MTM_df['TW_ATT_CT_NM']=MTM_df['TW_ATT_CT_NM'].replace(np.nan,'')
|
|
|
733
|
+MTM_df['ASSETS_VAL']=MTM_df['ASSETS_VAL'].replace(np.nan,0)
|
|
|
734
|
+MTM_df['INTENT_VAL']=MTM_df['INTENT_VAL'].replace(np.nan,0)
|
|
|
735
|
+MTM_df['SOURCE_VAL']=MTM_df['SOURCE_VAL'].replace(np.nan,0)
|
|
|
736
|
+MTM_df['DRULE_NM']=MTM_df['DRULE_NM'].replace(np.nan,'')
|
|
|
737
|
+
|
|
|
738
|
+
|
|
|
739
|
+# In[390]:
|
|
|
740
|
+
|
|
|
741
|
+
|
|
|
742
|
+# Check NaN out again
|
|
|
743
|
+MTM_df.isna().sum()
|
|
|
744
|
+
|
|
|
745
|
+
|
|
|
746
|
+# In[391]:
|
|
|
747
|
+
|
|
|
748
|
+
|
|
|
749
|
+# # Merge all
|
|
|
750
|
+
|
|
|
751
|
+# # Make one string from all of elements
|
|
|
752
|
+MTM_df['Combined']=MTM_df['INST_NM'].astype(str)+' '+MTM_df['TW_ATT_IP'].astype(str)+' '+MTM_df['TW_ATT_PORT'].astype(str)+' '+MTM_df['TW_DMG_IP'].astype(str)+' '+MTM_df['TW_DMG_PORT'].astype(str) +' '+MTM_df['ACCD_DMG_PROTO_NM'].astype(str)+' '+MTM_df['TW_ATT_CT_NM']+' '+MTM_df['ASSETS_VAL']+' '+MTM_df['INTENT_VAL']+' '+MTM_df['SOURCE_VAL']+' '+MTM_df['DRULE_ATT_TYPE_CODE1']+' '+MTM_df['DRULE_NM']
|
|
|
753
|
+
|
|
|
754
|
+MTM_com=MTM_df['Combined']
|
|
|
755
|
+MTM_com[:10]
|
|
|
756
|
+
|
|
|
757
|
+
|
|
|
758
|
+# In[392]:
|
|
|
759
|
+
|
|
|
760
|
+
|
|
|
761
|
+# Change the type to DataFrame
|
|
|
762
|
+MTM_to_df=pd.DataFrame(MTM_com)
|
|
|
763
|
+MTM_to_df[:5]
|
|
|
764
|
+
|
|
|
765
|
+
|
|
|
766
|
+# In[393]:
|
|
|
767
|
+
|
|
|
768
|
+
|
|
|
769
|
+# Change the type to list in order to apply the algorithm(nested list)
|
|
|
770
|
+MTM_tolist=MTM_to_df.values.tolist()
|
|
|
771
|
+MTM_tolist[:5]
|
|
|
772
|
+
|
|
|
773
|
+
|
|
|
774
|
+# In[394]:
|
|
|
775
|
+
|
|
|
776
|
+
|
|
|
777
|
+# Apply prefixspan
|
|
|
778
|
+PrefixSpan_MTM = PrefixSpan(MTM_tolist)
|
|
|
779
|
+
|
|
|
780
|
+###### Interchangeable ######
|
|
|
781
|
+# Get any over frequency 1
|
|
|
782
|
+prefix_MTM=PrefixSpan_MTM.frequent(1)
|
|
|
783
|
+prefix_MTM[:3]
|
|
|
784
|
+
|
|
|
785
|
+
|
|
|
786
|
+# In[395]:
|
|
|
787
|
+
|
|
|
788
|
+
|
|
|
789
|
+# Put the result to DataFrame
|
|
|
790
|
+prefix_MTM_df=pd.DataFrame(prefix_MTM)
|
|
|
791
|
+prefix_MTM_df[:5]
|
|
|
792
|
+
|
|
|
793
|
+
|
|
|
794
|
+# In[396]:
|
|
|
795
|
+
|
|
|
796
|
+
|
|
|
797
|
+# Change the columns name
|
|
|
798
|
+prefix_MTM_df.rename(columns={0:'Frequency',1:'Cause'},inplace=True)
|
|
|
799
|
+
|
|
|
800
|
+# Make the new column for filling the Effect
|
|
|
801
|
+prefix_MTM_df['Effect']=np.nan
|
|
|
802
|
+
|
|
|
803
|
+# Change the order of columns
|
|
|
804
|
+prefix_MTM_df=prefix_MTM_df[['Cause','Effect','Frequency']]
|
|
|
805
|
+prefix_MTM_df[:2]
|
|
|
806
|
+
|
|
|
807
|
+
|
|
|
808
|
+# In[397]:
|
|
|
809
|
+
|
|
|
810
|
+
|
|
|
811
|
+# Define the function that find the rule name
|
|
|
812
|
+def generate_cause_MTM(cell):
|
|
|
813
|
+ drules=['Attack','DDOS','HACK','MAIL','Malwr','WEB']
|
|
|
814
|
+ for drule in drules:
|
|
|
815
|
+ if ' '+drule in cell[0]:
|
|
|
816
|
+ return drule
|
|
|
817
|
+ return ''
|
|
|
818
|
+
|
|
|
819
|
+# Mapping the rule name with cause that is the effect
|
|
|
820
|
+effect_MTM=list(map(generate_cause, prefix_MTM_df.Cause))
|
|
|
821
|
+
|
|
|
822
|
+# Assign the rule name as an effect
|
|
|
823
|
+prefix_MTM_df['Effect']=effect_MTM
|
|
|
824
|
+prefix_MTM_df.sort_values(by=['Frequency'],ascending=False)
|
|
|
825
|
+
|
|
|
826
|
+
|
|
|
827
|
+# In[399]:
|
|
|
828
|
+
|
|
|
829
|
+
|
|
|
830
|
+# Attack Filter
|
|
|
831
|
+def Attack_filter_MTM(ps):
|
|
|
832
|
+ return ' Attack' in ps[0]
|
|
|
833
|
+
|
|
|
834
|
+att_filter_MTM=prefix_MTM_df[list(map(Attack_filter_MTM, prefix_MTM_df.Cause))].fillna('Attack')
|
|
|
835
|
+
|
|
|
836
|
+# Malwr Filter
|
|
|
837
|
+def Malwr_filter_MTM(ps):
|
|
|
838
|
+ return ' Malwr' in ps[0]
|
|
|
839
|
+
|
|
|
840
|
+mal_filter_MTM=prefix_MTM_df[list(map(Malwr_filter_MTM, prefix_MTM_df.Cause))].fillna('Malwr')
|
|
|
841
|
+
|
|
|
842
|
+# DDOS Filter
|
|
|
843
|
+def DDOS_filter_MTM(ps):
|
|
|
844
|
+ return ' DDOS' in ps[0]
|
|
|
845
|
+
|
|
|
846
|
+dd_filter_MTM=prefix_MTM_df[list(map(DDOS_filter_MTM, prefix_MTM_df.Cause))].fillna('DDOS')
|
|
|
847
|
+
|
|
|
848
|
+# HACK Filter
|
|
|
849
|
+def HACK_filter_MTM(ps):
|
|
|
850
|
+ return ' HACK' in ps[0]
|
|
|
851
|
+
|
|
|
852
|
+hack_filter_MTM=prefix_MTM_df[list(map(HACK_filter_MTM, prefix_MTM_df.Cause))].fillna('HACK')
|
|
|
853
|
+
|
|
|
854
|
+# MAIL Filter
|
|
|
855
|
+def MAIL_filter_MTM(ps):
|
|
|
856
|
+ return ' MAIL' in ps[0]
|
|
|
857
|
+
|
|
|
858
|
+mail_filter_MTM=prefix_MTM_df[list(map(MAIL_filter_MTM, prefix_MTM_df.Cause))].fillna('MAIL')
|
|
|
859
|
+
|
|
|
860
|
+# WEB Filter
|
|
|
861
|
+def WEB_filter_MTM(ps):
|
|
|
862
|
+ return ' WEB' in ps[0]
|
|
|
863
|
+
|
|
|
864
|
+prefix_MTM_df[:5]
|
|
|
865
|
+web_filter_MTM=prefix_MTM_df[list(map(WEB_filter_MTM, prefix_MTM_df.Cause))].fillna('WEB')
|
|
|
866
|
+
|
|
|
867
|
+frames_MTM = [att_filter_MTM, mal_filter_MTM, dd_filter_MTM, hack_filter_MTM, mail_filter_MTM, web_filter_MTM]
|
|
|
868
|
+result_MTM = pd.concat(frames_MTM)
|
|
|
869
|
+result_MTM.sort_values(by=['Frequency'],ascending=False)
|
|
204
|
870
|
|
|
205
|
871
|
|
|
206
|
872
|
# In[ ]:
|