Detection rules › Splunk

ASL AWS Detect Users creating keys with encrypt policy without MFA

Status
production
Severity
medium
Group by
"actor.user.account.uid", "actor.user.uid", "api.operation", "api.request.data", "api.service.name", "cloud.provider", "cloud.region", "http_request.user_agent", "src_endpoint.ip"
Author
Patrick Bareiss, Splunk
Source
github.com/splunk/security_content

The following analytic detects the creation of AWS KMS keys with an encryption policy accessible to everyone, including external entities. It leverages AWS CloudTrail logs from Amazon Security Lake to identify CreateKey or PutKeyPolicy events where the kms:Encrypt action is granted to all principals. This activity is significant as it may indicate a compromised account, allowing an attacker to misuse the encryption key to target other organizations. If confirmed malicious, this could lead to unauthorized data encryption, potentially disrupting operations and compromising sensitive information across multiple entities.

MITRE ATT&CK coverage

TacticTechniques
ImpactT1486 Data Encrypted for Impact

Rules detecting the same action

Other rules on this platform that filter on the same API call or operation.

Rule body splunk

name: ASL AWS Detect Users creating keys with encrypt policy without MFA
id: 16ae9076-d1d5-411c-8fdd-457504b33dac
version: 8
creation_date: '2020-10-27'
modification_date: '2026-05-13'
author: Patrick Bareiss, Splunk
status: production
type: TTP
description: The following analytic detects the creation of AWS KMS keys with an encryption policy accessible to everyone, including external entities. It leverages AWS CloudTrail logs from Amazon Security Lake to identify `CreateKey` or `PutKeyPolicy` events where the `kms:Encrypt` action is granted to all principals. This activity is significant as it may indicate a compromised account, allowing an attacker to misuse the encryption key to target other organizations. If confirmed malicious, this could lead to unauthorized data encryption, potentially disrupting operations and compromising sensitive information across multiple entities.
data_source:
    - ASL AWS CloudTrail
search: |-
    `amazon_security_lake` api.operation=PutKeyPolicy OR api.operation=CreateKey
      | spath input=api.request.data path=policy output=policy
      | spath input=policy
      | rename Statement{}.Action as Action, Statement{}.Principal as Principal
      | eval Statement=mvzip(Action,Principal,"
      | ")
      | mvexpand Statement
      | eval action=mvindex(split(Statement, "
      | "), 0)
      | eval principal=mvindex(split(Statement, "
      | "), 1)
      | search action=kms*
      | regex principal="\*"
      | fillnull
      | stats count min(_time) as firstTime max(_time) as lastTime
        BY actor.user.uid api.operation api.service.name
           http_request.user_agent src_endpoint.ip actor.user.account.uid
           cloud.provider cloud.region api.request.data
      | rename actor.user.uid as user api.operation as action api.service.name as dest http_request.user_agent as user_agent src_endpoint.ip as src actor.user.account.uid as vendor_account cloud.provider as vendor_product cloud.region as vendor_region
      | `security_content_ctime(firstTime)`
      | `security_content_ctime(lastTime)`
      | `asl_aws_detect_users_creating_keys_with_encrypt_policy_without_mfa_filter`
how_to_implement: The detection is based on Cloudtrail events from Amazon Security Lake events from Amazon Web Services (AWS), which is a centralized data lake that provides security-related data from AWS services. To use this detection, you must ingest CloudTrail logs from Amazon Security Lake into Splunk. To run this search, ensure that you ingest events using the latest version of Splunk Add-on for Amazon Web Services (https://splunkbase.splunk.com/app/1876) or the Federated Analytics App.
known_false_positives: No false positives have been identified at this time.
references:
    - https://rhinosecuritylabs.com/aws/s3-ransomware-part-1-attack-vector/
    - https://github.com/d1vious/git-wild-hunt
    - https://www.youtube.com/watch?v=PgzNib37g0M
drilldown_searches:
    - name: View the detection results for - "$user$"
      search: '%original_detection_search% | search  user = "$user$"'
      earliest_offset: $info_min_time$
      latest_offset: $info_max_time$
    - name: View risk events for the last 7 days for - "$user$"
      search: '| from datamodel Risk.All_Risk | search normalized_risk_object IN ("$user$") | 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: 7d
      latest_offset: "0"
finding:
    title: AWS account is potentially compromised and user $user$ is trying to compromise other accounts
    entity:
        field: user
        type: user
        score: 50
analytic_story:
    - Ransomware Cloud
asset_type: AWS Account
mitre_attack_id:
    - T1486
product:
    - Splunk Enterprise
    - Splunk Enterprise Security
    - Splunk Cloud
category: cloud
security_domain: threat
tests:
    - name: True Positive Test
      attack_data:
        - data: https://media.githubusercontent.com/media/splunk/attack_data/master/datasets/attack_techniques/T1486/aws_kms_key/asl_ocsf_cloudtrail.json
          sourcetype: aws:asl
          source: aws_asl
      test_type: unit

Stages and Predicates

Stage 1: search

`amazon_security_lake` api.operation=PutKeyPolicy OR api.operation=CreateKey

Stage 2: spath

| spath input=api.request.data path=policy output=policy

Stage 3: spath

| spath input=policy

Stage 4: rename

| rename Statement{}.Action as Action, Statement{}.Principal as Principal

Stage 5: eval

| eval Statement=mvzip(Action,Principal,"
  | ")

Stage 6: mvexpand

| mvexpand Statement

Stage 7: eval

| eval action=mvindex(split(Statement, "
  | "), 0)

Stage 8: eval

| eval principal=mvindex(split(Statement, "
  | "), 1)

Stage 9: search

| search action=kms*

Stage 10: regex

| regex principal="\*"

Stage 11: fillnull

| fillnull

Stage 12: stats

| stats count min(_time) as firstTime max(_time) as lastTime
    BY actor.user.uid api.operation api.service.name
       http_request.user_agent src_endpoint.ip actor.user.account.uid
       cloud.provider cloud.region api.request.data

Stage 13: rename

| rename actor.user.uid as user api.operation as action api.service.name as dest http_request.user_agent as user_agent src_endpoint.ip as src actor.user.account.uid as vendor_account cloud.provider as vendor_product cloud.region as vendor_region

Stage 14: search

| `security_content_ctime(firstTime)`

Stage 15: search

| `security_content_ctime(lastTime)`

Stage 16: search

| `asl_aws_detect_users_creating_keys_with_encrypt_policy_without_mfa_filter`

Indicators

Each row is a field, operator, and value that the rule matches. The corpus column counts how many other rules in the catalog look for the same combination: high numbers point to widely-used, community-vetted indicators. Blank or 1 shows that the indicator is specific to this rule.

FieldKindValues
actioneq
  • kms*
api.operationeq
  • CreateKey
  • PutKeyPolicy
principalregex_match
  • "*"
sourcetypeeq
  • aws:asl