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51 changes: 51 additions & 0 deletions detections/endpoint/macos_account_created.yml
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name: MacOS Account Created
id: 491004ae-694f-453e-b1e0-fc1e65daeea1
version: 1
date: '2026-02-26'
author: Raven Tait, Splunk
status: production
type: Anomaly
description: The following analytic detects the creation of a new local user account on a MacOS system. It leverages osquery logs to identify this activity. Monitoring the creation of local accounts is crucial for a SOC as it can indicate unauthorized access or lateral movement within the network. If confirmed malicious, this activity could allow an attacker to establish persistence, escalate privileges, or gain unauthorized access to sensitive systems and data.
data_source:
- osquery
search: '| tstats `security_content_summariesonly` count min(_time) as firstTime max(_time) as lastTime from datamodel=Endpoint.Processes where Processes.process IN ("*sysadminctl","*createhomedir*","*dseditgroup*") OR (Processes.process = "*dscl*" AND Processes.process IN ("*-create*","*-passwd*")) by Processes.dest Processes.original_file_name Processes.parent_process_id Processes.process Processes.process_exec Processes.process_guid Processes.process_hash Processes.process_id Processes.process_current_directory Processes.process_name Processes.process_path Processes.user Processes.user_id Processes.vendor_product | `drop_dm_object_name(Processes)` | `security_content_ctime(firstTime)` | `security_content_ctime(lastTime)` | `macos_account_created_filter`'
how_to_implement: This detection uses osquery and endpoint security on MacOS. Follow the link in references, which describes how to setup process auditing in MacOS with endpoint security and osquery. Also the [TA-OSquery](https://github.com/d1vious/TA-osquery) must be deployed across your indexers and universal forwarders in order to have the osquery data populate the data models.
known_false_positives: Creating new accounts after initial endpoint management should be rare in most environments.
references:
- https://osquery.readthedocs.io/en/stable/deployment/process-auditing/
drilldown_searches:
- name: View the detection results for - "$user$" and "$dest$"
search: '%original_detection_search% | search user = "$user$" dest = "$dest$"'
earliest_offset: $info_min_time$
latest_offset: $info_max_time$
- name: View risk events for the last 7 days for - "$user$" and "$dest$"
search: '| from datamodel Risk.All_Risk | search normalized_risk_object IN ("$user$", "$dest$") starthoursago=168 | stats count min(_time) as firstTime max(_time) as lastTime values(search_name) as "Search Name" values(risk_message) as "Risk Message" values(analyticstories) as "Analytic Stories" values(annotations._all) as "Annotations" values(annotations.mitre_attack.mitre_tactic) as "ATT&CK Tactics" by normalized_risk_object | `security_content_ctime(firstTime)` | `security_content_ctime(lastTime)`'
earliest_offset: $info_min_time$
latest_offset: $info_max_time$
rba:
message: New local account created on $dest$ by $user$
risk_objects:
- field: user
type: user
score: 18
- field: dest
type: system
score: 18
threat_objects: []
tags:
analytic_story:
- MacOS Persistence Techniques
asset_type: Endpoint
mitre_attack_id:
- T1136
product:
- Splunk Enterprise
- Splunk Enterprise Security
- Splunk Cloud
security_domain: endpoint
tests:
- name: True Positive Test
attack_data:
- data: https://media.githubusercontent.com/media/splunk/attack_data/master/datasets/attack_techniques/T1136/osquery_account_creation/osquery.log
source: osquery
sourcetype: osquery:results
51 changes: 51 additions & 0 deletions detections/endpoint/macos_data_chunking.yml
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name: MacOS Data Chunking
id: 7f1c8bed-9bd4-40b0-a1df-c262cbade0fc
version: 1
date: '2026-02-26'
author: Raven Tait, Splunk
status: production
type: Anomaly
description: The following analytic detects suspicious data chunking activities that involve the use of split or dd, potentially indicating an attempt to evade detection by breaking large files into smaller parts. Attackers may use this technique to bypass size-based security controls, facilitating the covert exfiltration of sensitive data. By monitoring for unusual or unauthorized use of these commands, this analytic helps identify potential data exfiltration attempts, allowing security teams to intervene and prevent the unauthorized transfer of critical information from the network.
data_source:
- osquery
search: '| tstats `security_content_summariesonly` count min(_time) as firstTime max(_time) as lastTime from datamodel=Endpoint.Processes where Processes.process IN ("dd *","*split *") by Processes.dest Processes.original_file_name Processes.parent_process_id Processes.process Processes.process_exec Processes.process_guid Processes.process_hash Processes.process_id Processes.process_current_directory Processes.process_name Processes.process_path Processes.user Processes.user_id Processes.vendor_product | `drop_dm_object_name(Processes)` | `security_content_ctime(firstTime)` | `security_content_ctime(lastTime)` | `macos_data_chunking_filter`'
how_to_implement: This detection uses osquery and endpoint security on MacOS. Follow the link in references, which describes how to setup process auditing in MacOS with endpoint security and osquery. Also the [TA-OSquery](https://github.com/d1vious/TA-osquery) must be deployed across your indexers and universal forwarders in order to have the osquery data populate the data models.
known_false_positives: Administrator or network operator can use this application for automation purposes. Please update the filter macros to remove false positives.
references:
- https://osquery.readthedocs.io/en/stable/deployment/process-auditing/
drilldown_searches:
- name: View the detection results for - "$user$" and "$dest$"
search: '%original_detection_search% | search user = "$user$" dest = "$dest$"'
earliest_offset: $info_min_time$
latest_offset: $info_max_time$
- name: View risk events for the last 7 days for - "$user$" and "$dest$"
search: '| from datamodel Risk.All_Risk | search normalized_risk_object IN ("$user$", "$dest$") starthoursago=168 | stats count min(_time) as firstTime max(_time) as lastTime values(search_name) as "Search Name" values(risk_message) as "Risk Message" values(analyticstories) as "Analytic Stories" values(annotations._all) as "Annotations" values(annotations.mitre_attack.mitre_tactic) as "ATT&CK Tactics" by normalized_risk_object | `security_content_ctime(firstTime)` | `security_content_ctime(lastTime)`'
earliest_offset: $info_min_time$
latest_offset: $info_max_time$
rba:
message: A file was split on $dest$ by $user$
risk_objects:
- field: user
type: user
score: 49
- field: dest
type: system
score: 49
threat_objects: []
tags:
analytic_story:
- MacOS Post-Exploitation
asset_type: Endpoint
mitre_attack_id:
- T1030
product:
- Splunk Enterprise
- Splunk Enterprise Security
- Splunk Cloud
security_domain: endpoint
tests:
- name: True Positive Test
attack_data:
- data: https://media.githubusercontent.com/media/splunk/attack_data/master/datasets/attack_techniques/T1030/osquery_data_chunking/osquery.log
source: osquery
sourcetype: osquery:results
53 changes: 53 additions & 0 deletions detections/endpoint/macos_gatekeeper_bypass.yml
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name: MacOS Gatekeeper Bypass
id: 2c9346f3-bbeb-48ce-8411-fc13d09d83a5
version: 1
date: '2026-02-26'
author: Raven Tait, Splunk
status: production
type: TTP
description: Detects known MacOS security bypass techniques that may be used to enable malicious code execution. Specifically monitors for attempts to remove the com.apple.quarantine attribute using xattr, or to disable Gatekeeper protections via spctl --master-disable, both of which can allow untrusted or malicious applications to execute without standard system safeguards.
data_source:
- osquery
search: '| tstats `security_content_summariesonly` count min(_time) as firstTime max(_time) as lastTime from datamodel=Endpoint.Processes where (Processes.process = "*xattr*" AND Processes.process = "*com.apple.quarantine*") OR (Processes.process = "*spctl*" AND Processes.process = "*master-disable*") by Processes.dest Processes.original_file_name Processes.parent_process_id Processes.process Processes.process_exec Processes.process_guid Processes.process_hash Processes.process_id Processes.process_current_directory Processes.process_name Processes.process_path Processes.user Processes.user_id Processes.vendor_product | `drop_dm_object_name(Processes)` | `security_content_ctime(firstTime)` | `security_content_ctime(lastTime)`| `macos_gatekeeper_bypass_filter`'
how_to_implement: This detection uses osquery and endpoint security on MacOS. Follow the link in references, which describes how to setup process auditing in MacOS with endpoint security and osquery. Also the [TA-OSquery](https://github.com/d1vious/TA-osquery) must be deployed across your indexers and universal forwarders in order to have the osquery data populate the data models.
known_false_positives: Administrators or power users may need to disable Gatekeeper to install unsigned tools.
references:
- https://osquery.readthedocs.io/en/stable/deployment/process-auditing/
drilldown_searches:
- name: View the detection results for - "$user$" and "$dest$"
search: '%original_detection_search% | search user = "$user$" dest = "$dest$"'
earliest_offset: $info_min_time$
latest_offset: $info_max_time$
- name: View risk events for the last 7 days for - "$user$" and "$dest$"
search: '| from datamodel Risk.All_Risk | search normalized_risk_object IN ("$user$", "$dest$") starthoursago=168 | stats count min(_time) as firstTime max(_time) as lastTime values(search_name) as "Search Name" values(risk_message) as "Risk Message" values(analyticstories) as "Analytic Stories" values(annotations._all) as "Annotations" values(annotations.mitre_attack.mitre_tactic) as "ATT&CK Tactics" by normalized_risk_object | `security_content_ctime(firstTime)` | `security_content_ctime(lastTime)`'
earliest_offset: $info_min_time$
latest_offset: $info_max_time$
rba:
message: Attempt to bypass gatekeeper protections on $dest$ by $user$
risk_objects:
- field: user
type: user
score: 55
- field: dest
type: system
score: 55
threat_objects: []
tags:
analytic_story:
- MacOS Privilege Escalation
- MacOS Post-Exploitation
- MacOS Persistence Techniques
asset_type: Endpoint
mitre_attack_id:
- T1553.001
product:
- Splunk Enterprise
- Splunk Enterprise Security
- Splunk Cloud
security_domain: endpoint
tests:
- name: True Positive Test
attack_data:
- data: https://media.githubusercontent.com/media/splunk/attack_data/master/datasets/attack_techniques/T1553.001/osquery_gatekeeper/osquery.log
source: osquery
sourcetype: osquery:results
51 changes: 51 additions & 0 deletions detections/endpoint/macos_hidden_files_and_directories.yml
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name: MacOS Hidden Files and Directories
id: 51c43b7b-e406-45d2-9bad-5c67f07e6528
version: 1
date: '2026-02-26'
author: Raven Tait, Splunk
status: production
type: Anomaly
description: The following analytic detects suspicious creation of hidden files and directories, which may indicate an attacker's attempt to conceal malicious activities or unauthorized data. Hidden files and directories are often used to evade detection by security tools and administrators, providing a stealthy means for storing malware, logs, or sensitive information. By monitoring for unusual or unauthorized creation of hidden files and directories, this analytic helps identify potential attempts to hide or unauthorized creation of hidden files and directories, and helps identify potential attempts to hide malicious operations, enabling security teams to uncover and address hidden threats effectively.
data_source:
- osquery
search: '| tstats `security_content_summariesonly` count min(_time) as firstTime max(_time) as lastTime from datamodel=Endpoint.Processes where (Processes.process="*chflags *" AND Processes.process="* hidden*") OR (Processes.process="*xattr *" AND Processes.process="* -c *") by Processes.dest Processes.original_file_name Processes.parent_process_id Processes.process Processes.process_exec Processes.process_guid Processes.process_hash Processes.process_id Processes.process_current_directory Processes.process_name Processes.process_path Processes.user Processes.user_id Processes.vendor_product | `drop_dm_object_name(Processes)` | `security_content_ctime(firstTime)` | `security_content_ctime(lastTime)` | `macos_hidden_files_and_directories_filter`'
how_to_implement: This detection uses osquery and endpoint security on MacOS. Follow the link in references, which describes how to setup process auditing in MacOS with endpoint security and osquery. Also the [TA-OSquery](https://github.com/d1vious/TA-osquery) must be deployed across your indexers and universal forwarders in order to have the osquery data populate the data models.
known_false_positives: Power users or developers utilizing build tools or CI/CD tools could trigger this activity.
references:
- https://osquery.readthedocs.io/en/stable/deployment/process-auditing/
drilldown_searches:
- name: View the detection results for - "$user$" and "$dest$"
search: '%original_detection_search% | search user = "$user$" dest = "$dest$"'
earliest_offset: $info_min_time$
latest_offset: $info_max_time$
- name: View risk events for the last 7 days for - "$user$" and "$dest$"
search: '| from datamodel Risk.All_Risk | search normalized_risk_object IN ("$user$", "$dest$") starthoursago=168 | stats count min(_time) as firstTime max(_time) as lastTime values(search_name) as "Search Name" values(risk_message) as "Risk Message" values(analyticstories) as "Analytic Stories" values(annotations._all) as "Annotations" values(annotations.mitre_attack.mitre_tactic) as "ATT&CK Tactics" by normalized_risk_object | `security_content_ctime(firstTime)` | `security_content_ctime(lastTime)`'
earliest_offset: $info_min_time$
latest_offset: $info_max_time$
rba:
message: Attempt to hide files on $dest$ by $user$
risk_objects:
- field: user
type: user
score: 35
- field: dest
type: system
score: 35
threat_objects: []
tags:
analytic_story:
- MacOS Persistence Techniques
asset_type: Endpoint
mitre_attack_id:
- T1564.001
product:
- Splunk Enterprise
- Splunk Enterprise Security
- Splunk Cloud
security_domain: endpoint
tests:
- name: True Positive Test
attack_data:
- data: https://media.githubusercontent.com/media/splunk/attack_data/master/datasets/attack_techniques/T1564.001/osquery_hidden_files/osquery.log
source: osquery
sourcetype: osquery:results
52 changes: 52 additions & 0 deletions detections/endpoint/macos_kextload_usage.yml
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name: MacOS Kextload Usage
id: 9d680775-84a6-4625-a8ea-8182b9427ce4
version: 1
date: '2026-02-26'
author: Raven Tait, Splunk
status: production
type: TTP
description: Detects execution of the kextload command on macOS systems. The kextload utility is used to manually load kernel extensions (KEXTs) into the macOS kernel, which can introduce privileged code at the kernel level. While legitimate for driver installation and system administration, misuse may indicate attempts to install unauthorized, malicious, or persistence-enabling kernel extensions.
data_source:
- osquery
search: '| tstats `security_content_summariesonly` count min(_time) as firstTime max(_time) as lastTime from datamodel=Endpoint.Processes where Processes.process_name = "kextload" by Processes.dest Processes.original_file_name Processes.parent_process_id Processes.process Processes.process_exec Processes.process_guid Processes.process_hash Processes.process_id Processes.process_current_directory Processes.process_name Processes.process_path Processes.user Processes.user_id Processes.vendor_product | `drop_dm_object_name(Processes)` | `security_content_ctime(firstTime)` | `security_content_ctime(lastTime)` | `macos_kextload_usage_filter`'
how_to_implement: This detection uses osquery and endpoint security on MacOS. Follow the link in references, which describes how to setup process auditing in MacOS with endpoint security and osquery. Also the [TA-OSquery](https://github.com/d1vious/TA-osquery) must be deployed across your indexers and universal forwarders in order to have the osquery data populate the data models.
known_false_positives: Administrators installing new drivers could use this application.
references:
- https://osquery.readthedocs.io/en/stable/deployment/process-auditing/
drilldown_searches:
- name: View the detection results for - "$user$" and "$dest$"
search: '%original_detection_search% | search user = "$user$" dest = "$dest$"'
earliest_offset: $info_min_time$
latest_offset: $info_max_time$
- name: View risk events for the last 7 days for - "$user$" and "$dest$"
search: '| from datamodel Risk.All_Risk | search normalized_risk_object IN ("$user$", "$dest$") starthoursago=168 | stats count min(_time) as firstTime max(_time) as lastTime values(search_name) as "Search Name" values(risk_message) as "Risk Message" values(analyticstories) as "Analytic Stories" values(annotations._all) as "Annotations" values(annotations.mitre_attack.mitre_tactic) as "ATT&CK Tactics" by normalized_risk_object | `security_content_ctime(firstTime)` | `security_content_ctime(lastTime)`'
earliest_offset: $info_min_time$
latest_offset: $info_max_time$
rba:
message: Possible kernel extension loaded on $dest$ by $user$
risk_objects:
- field: user
type: user
score: 55
- field: dest
type: system
score: 55
threat_objects: []
tags:
analytic_story:
- MacOS Privilege Escalation
- MacOS Persistence Techniques
asset_type: Endpoint
mitre_attack_id:
- T1543
product:
- Splunk Enterprise
- Splunk Enterprise Security
- Splunk Cloud
security_domain: endpoint
tests:
- name: True Positive Test
attack_data:
- data: https://media.githubusercontent.com/media/splunk/attack_data/master/datasets/attack_techniques/T1543/osquery_ketxload/osquery.log
source: osquery
sourcetype: osquery:results
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