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Detection & Response (D&R) Rules are similar to Google Cloud Functions or AWS Lambda.
They allow you to push D&R rules to the LimaCharlie cloud where the rules will be applied
in real-time to data coming from the sensors.
D&R rules can also be applied to Artifact Collection, but for now we will focus
on the simple case where it is applied to sensor events.
For a full list of all rule operators and detailed documentation see the Detection and Response section.
Life of a Rule
D&R rules are generally applied on a per-event basis. When the rule is applied, the "detection"
component of the rule is processed to determine if it matches. If there is a match, the "response"
component is applied.
The detection is processed one step at a time, starting at the root of the detection. If the
root matches, the rule is considered to be matching.
The detection component is composed of "nodes", where each node has an operator describing the
logical evaluation. Most operators are simple, like is
, starts with
etc. These simple nodes
can be combined with boolean (true/false) logic using the and
and or
operators, which
themselves reference a series of nodes. The and
node matches if all the sub-nodes match, while
the or
node matches if any one of the sub-nodes matches.
When evaluating an or
, as soon as the first matching sub-node is found, the rest of the sub-nodes
are skipped since they will have no impact on the final matching state of the "or". Similarly, failure of a sub-node in an "and" node will immediately terminate its evaluation.
If the "detection" component is matched, then the "response" evaluation begins.
The "response" component is a list of actions that should be taken. When an action refers to a
sensor, that sensor is assumed to be the sensor the event being evaluated is coming from.
The best general strategy for D&R rules is to put the parts of the rule most likely
to eliminate the event at the begining of the rule, so that LC may move on to the next event
as quickly as possible.
Introduction
Goal
The goal of is code lab will be to create a D&R rule to detect the MITRE ATT&CK framework
Control Panel Items execution.
Services Used
This code lab will use the Replay service to validate and test the rule prior to pushing it to production.
Setup and Requirements
This code lab assumes you have access to a Linux host (MacOS terminal with brew
). This
code lab also assumes you have "owner" access to an LC organization. If you don't have
one already, create one, this code lab is compatible with the free tier that comes with
all organizations.
Install CLI
Interacting with LC can always be done via the web app but
day to day operations and automation can be done via the Command Line Interface (CLI). This
will make following this code lab easier.
Install the CLI: pip install limacharlie --user
. If you don't have pip
installed, install
it, the exact instructions will depend on your Linux distribution.
Create REST API Key
We need to create an API key we can use in the CLI to authenticate with LC. To do so, go
to the REST API section of the web app.
- In the REST API section, click the "+" button in the top right of the page.
- Give your key a name.
- For simplicity, click the "Select All" button to enable all permissions. Obviously this would not be a recommended in a production environment,
- Click the copy-to-clipboard button for the new key and take note of it (pasting it in a temporary text note for example).
- Back on the REST API page, copy the "Organization ID" at the top of the page and keep note of it like the API key in the previous step.
The Organization ID (OID) identifies uniquely your organization while the API key grants specific permissions to this organization.
Login to the CLI
Back in your terminal, log in with your credentials: limacharlie login
.
- When asked for the Organization ID, paste your OID from the previous step.
- When asked for a name for this access, you can leave it blank to set the default credentials.
- When asked for the secret API key, enter the key you got from the previous step.
You're done! If you issue a limacharlie dr list
you should not get any errors.
Draft Rule
To draft our rule, open your prefered text editor and save the rule to a file, we'll call it T1196.rule
.
The format of a rule is YAML, if you are unfamiliar with it, there is benefit to spending a few minutes getting familiar. It won't take long as it is not overly complex.
For our rules based on the T1196 technique, we need
to apply the following constraints:
- It only applies to Windows.
- The event is a module (DLL for example on Windows) loading.
- The module loading ends with
.cpl
(control panel extension). - The module is loading from outside of the
C:\windows\
directory.
LC supports a lot of different event types, this means that the first thing we should strive to
do to try to make the rule fail as quickly as possible is to filter all events we don't care about.
In this case, we only care about CODE_IDENTITY events. We also know that
our rule will use more than one criteria, and those criteria will be AND-ed together because we only
want to match when they all match.
op: and
event: CODE_IDENTITY
rules:
-
The above sets up the criteria #2 preceding it, with the AND-ing that will follow. Since the AND is at the
top of our rule, and it has an event:
clause, it will ensure that any event processed by this rule
but is NOT a CODE_IDENTITY
event will be skipped over right away.
Next, we should look at the other criteria, and add them to the rules:
list, which are all the sub-nodes
that will be AND-ed together.
Criteria #1 was to limit to Windows, that's easy:
op: and
event: CODE_IDENTITY
rules:
- op: is windows
-
Next up is criteria #3 and #4. Both of those can be determined using the FILE_PATH
component of the
CODE_IDENTITY
event. If you are unure what those events look like, the best way to get a positive confirmation
of the structure is simply to open the Historic View, start a new process on that specific host and look for
the relevant event. If we were to do this on a Windows host, we'd get an example like this one:
{
"routing": {
"parent": "...",
"this": "...",
"hostname": "WIN-...",
"event_type": "CODE_IDENTITY",
"event_time": 1567438408423,
"ext_ip": "XXX.176.XX.148",
"event_id": "11111111-1111-1111-1111-111111111111",
"oid": "11111111-1111-1111-1111-111111111111",
"plat": 268435456,
"iid": "11111111-1111-1111-1111-111111111111",
"sid": "11111111-1111-1111-1111-111111111111",
"int_ip": "172.XX.223.XXX",
"arch": 2,
"tags": [
"..."
],
"moduleid": 2
},
"ts": "2019-09-02 15:33:28",
"event": {
"HASH_MD5": "7812c2c0a46d1f0a1cf8f2b23cd67341",
"HASH": "d1d59eefe1aeea20d25a848c2c4ee4ffa93becaa3089745253f9131aedc48515",
"ERROR": 0,
"FILE_INFO": "10.0.17134.1",
"HASH_SHA1": "000067ac70f0e38f46ce7f93923c6f5f06ecef7b",
"SIGNATURE": {
"FILE_CERT_IS_VERIFIED_LOCAL": 1,
"CERT_SUBJECT": "C=US, S=Washington, L=Redmond, O=Microsoft Corporation, CN=Microsoft Windows",
"FILE_PATH": "C:\\Windows\\System32\\setupcln.dll",
"FILE_IS_SIGNED": 1,
"CERT_ISSUER": "C=US, S=Washington, L=Redmond, O=Microsoft Corporation, CN=Microsoft Windows Production PCA 2011"
},
"FILE_PATH": "C:\\Windows\\System32\\setupcln.dll"
}
}
This means what we want is to apply rules to the event/FILE_PATH
. First part, #3 is easy, we just want
to test for the event/FILE_PATH
ends in .cpl
, we can do this using the ends with
operator.
Most operators will use a path
and a value
. General convention is the path
describes
how to get to a value we want to compare within the event. So event/FILE_PATH
says "starting in the event
then get the FILE_PATH
. The value
generally represents a value we want to compare to the element found
in the path
. How it is compared depends on the operator.
op: and
event: CODE_IDENTITY
rules:
- op: is windows
- op: ends with
path: event/FILE_PATH
value: .cpl
That was easy, but we're missing a critical component! By default, D&R rules operate in a case sensitive mode.
This means that the above node we added will match .cpl
but will NOT match .cPl
. To fix this, we just add
the case sensitive: false
statement.
op: and
event: CODE_IDENTITY
rules:
- op: is windows
- op: ends with
path: event/FILE_PATH
value: .cpl
case sensitive: false
-
Finally, we want to make sure the event/FILE_PATH
is NOT in the windows
directory. To do this, we will use
a regular expression with a matches
operator. But in this case, we want to EXCLUDE the paths that include
the windows
directory, so we want to "invert" the match. We can do this with the not: true
statement.
op: and
event: CODE_IDENTITY
rules:
- op: is windows
- op: ends with
path: event/FILE_PATH
value: .cpl
case sensitive: false
- op: matches
path: event/FILE_PATH
re: ^.\:\\windows\\
case sensitive: false
not: true
Here we go, we're done drafting our first rule.
Validate Rule
What we want to do now is validate the rule. If the rule validates, it doesn't mean it's correct, it
just means that the structure is correct, the operators we use are known, etc. It's the first pass at
detecting possible formatting issues or typos.
To validate, we will simply leverage the Replay service. This service can be used to test rules or replay
historical events against a rule. In this case however, we just want to start by validating.
Up until now we focused on the "detection" part of the rule. But a full rule also contains a "response"
component. So before we proceed, we'll add this structure. For a response, we will use a
simple action: report
. The report
creates a "detection" (alert).
detect:
op: and
event: CODE_IDENTITY
rules:
- op: is windows
- op: ends with
path: event/FILE_PATH
value: .cpl
case sensitive: false
- op: matches
path: event/FILE_PATH
re: ^.\:\\windows\\
case sensitive: false
not: true
respond:
- action: report
name: T1196
Now validate: limacharlie replay --validate --rule-content T1196.rule
After a few seconds, you should see a response with success: true
if the rule
validates properly.
Test rule
Test Plan
Now that we know our rule is generally sound, we need to test it against some events.
Our test plan will take the following approach:
- Test a positive (a
.cpl
loading outside ofwindows
). - Test a negative for the major criteria:
- Test a non-
.cpl
loading outside ofwindows
does not match. - Test a
.cpl
loading withinwindows
does not match.
- Test a non-
- Test on historical data.
With this plan, #1 and #2 lend themselves well to unit tests
while #3 can be done more holistically by using Replay to run historical events
through the rule and evaluate if there are any false positives.
This may be excessive for you, or for certain rules which are very simple, we leave that
evaluation to you. For the sake of this code lab, we will do a light version to demonstrate
how to do tests.
Testing a Single Event
To test #1 and #2, let's just create some synthetic events. It's always better to use
real-world samples, but we'll leave that up to you.
Take the event sample we had in the "Draft Rule" section and copy it to two new files
we will name positive.json
, negative-1.json
and negative-2.json
.
Modify the positive.json
file by renaming the FILE_PATH
at the bottom from
"C:\\Windows\\System32\\setupcln.dll"
to "C:\\temp\\System32\\setupcln.cpl"
so that
the event now describes a .cpl
loading in the temp
directory, which we should detect.
Then modify the negative-1.json
file by changing the same .dll
to .cpl
. This should NOT
match because the path is still in the windows
directory.
Then modify the negative-2.json
file by changing the windows
directory to temp
. This
should still NOT match because it's not a .cpl
.
Now we can run our 3 samples against the rule using Replay,
limacharlie replay --rule-content T1196.rule --events positive.json
should output a result
indicating the event matched (by actioning the report
) like:
{
"num_evals": 4,
"eval_time": 0.00020599365234375,
"num_events": 1,
"responses": [
{
"report": {
"source": "11111111-1111-1111-1111-111111111111.11111111-1111-1111-1111-111111111111.11111111-1111-1111-1111-111111111111.10000000.2",
"routing": {
...
limacharlie replay --rule-content T1196.rule --events negative-1.json
should output a result
indicating the event did NOT match like:
{
"num_evals": 4,
"eval_time": 0.00011777877807617188,
"num_events": 1,
"responses": [],
"errors": []
}
limacharlie replay --rule-content T1196.rule --events negative-2.json
be the same as negative-1.json
.
Testing Historical Data
The final test is to run the rule against historical data. If you are not using an
organization on the free tier, note that the Replay API is billed on usage. In the
following step we will run against all historical data from the organization, so if
your organization is not on the free tier and it is large, there may be non-trivial
costs associated.
Running our rule against the last week of data is simple:
limacharlie replay --rule-content T1196.rule --entire-org --last-seconds 604800
No matches should look like that:
{
"num_evals": 67354,
"eval_time": 1107.2150619029999,
"num_events": 222938,
"responses": [],
"errors": []
}
Publish Rule
Now is the time to push the new rule to production, the easy part.
Simply run limacharlie dr add --rule-name T1196 --rule-file T1196.rule
and confirm it is operational by running limacharlie dr list
.