Flow-Logs to Metrics (a.k.a. FL2M) is an observability tool that consumes raw network flow-logs and transforms them from their original format (NetFlow or IPFIX) into prometheus numeric metrics format. FL2M allows to define mathematical transformations to generate condense metrics that encapsulate network domain knowledge.
In addition, FL2M decorates the metrics with context, allowing visualization layers and analytics frameworks to present network insights to SRE’s, cloud operators and network experts.
Along with Prometheus and its ecosystem tools such as Thanos, Cortex etc., FL2M provides efficient scalable multi-cloud solution for comprehensive network analytics that rely solely based on metrics data-source.
Default metrics are documented here docs/metrics.md.
Note: prometheus eco-system tools such as Alert Manager can be used with FL2M to generate alerts and provide big-picture insights.
Expose network flow-logs from metrics
Usage:
flowlogs2metrics [flags]
Flags:
--config string config file (default is $HOME/.flowlogs2metrics)
-h, --help help for flowlogs2metrics
--log-level string Log level: debug, info, warning, error (default "error")
--pipeLine.ingest.collector string Ingest collector API
--pipeline.decode.aws string aws fields
--pipeline.decode.type string Decode type: aws, json, none (default "none")
--pipeline.encode.prom string Prometheus encode API
--pipeline.encode.type string Encode type: prom, none (default "none")
--pipeline.extract.aggregates string Aggregates (see docs)
--pipeline.extract.type string Extract type: aggregates, none (default "none")
--pipeline.ingest.file.filename string Ingest filename (file)
--pipeline.ingest.type string Ingest type: file, collector,file_loop (required)
--pipeline.transform string Transforms (list) API (default "[{"type": "none"}]")
--pipeline.write.type string Write type: stdout, none (default "none")
Note: for API details refer to docs/api.md.
flowlogs2metrics network metrics configuration ( --config
flag) can be generated automatically using
the confGenerator
utility. confGenerator
aggregates information from multiple user provided network metric
definitions into flowlogs2metrics configuration. More details on confGenerator
can be found
in docs/confGenrator.md.
To generate flowlogs2metrics configuration execute:
make generate-configuration
make dashboards
To deploy FL2M on OCP perform the following steps:
- Deploy OCP and make sure
kubectl
works with the cluster
kubectl get namespace openshift
- Deploy FL2M (into
default
namespace)
kubectl config set-context --current --namespace=default
make deploy
- Enable export OCP flowlogs into FL2M
flowlogs2metrics_svc_ip=$(kubectl get svc flowlogs2metrics -o jsonpath='{.spec.clusterIP}')
./hack/enable-ocp-flow-export.sh $flowlogs2metrics_svc_ip
- Verify flowlogs are captured
kubectl logs -l app=flowlogs2metrics -f
These instructions apply for deploying FL2M development and exploration environment with kind and netflow-simulator, tested on Ubuntu 20.4 and Fedora 34.
- Make sure the following commands are installed and can be run from the current shell:
- make
- go (version 1.17)
- docker
- To deploy the full simulated environment which includes a kind cluster with FL2M, Prometheus, Grafana, and
netflow-simulator, run (note that depending on your user permissions, you may have to run this command under sudo):
If the command is successful, the metrics will get generated and can be observed by running (note that depending on your user permissions, you may have to run this command under sudo):
make local-deploy
The metrics you see upon deployment are default and can be modified through configuration described later.kubectl logs -l app=flowlogs2metrics -f
FL2M is a framework. The main FL2M object is the pipeline. FL2M pipeline can be configured (see Configuration section) to extract the flow-log records from a source in a standard format such as NetFLow or IPFIX, apply custom processing, and output the result as metrics (e.g., in Prometheus format).
The pipeline is constructed of a sequence of stages:
- ingest - obtain flows from some source, one entry per line
- decode - parse input lines into a known format, e.g., dictionary (map) of AWS or goflow data
- transform - convert entries into a standard format; can include multiple transform stages
- extract - derive a set of metrics from the imported flows
- encode - make the data available in appropriate format (e.g. prometheus)
- write - provide the means to transfer the data to some target, e.g. prometheus, object store, standard output, etc
The encode and write stages may be combined in some cases (as in prometheus), in which case write is set to none
It is expected that the ingest module will receive flows every so often, and this ingestion event will then trigger the rest of the pipeline. So, it is the responsibility of the ingest module to provide the timing of when (and how often) the pipeline will run.
It is possible to configure flowlogs2metrics using command-line-parameters, configuration file, environment variables, or any combination of those options.
For example:
- Using command line parameters:
./flowlogs2metrics --pipeline.ingest.type file --pipeline.ingest.file.filename hack/examples/ocp-ipfix-flowlogs.json
- Using configuration file:
- create under $HOME/.flowlogs2metrics.yaml the file:
pipeline:
ingest:
type: file
file:
filename: hack/examples/ocp-ipfix-flowlogs.json
- execute
./flowlogs2metrics
- using environment variables:
- set environment variables
export FLOWLOGS2METRICS_PIPELINE_INGEST_TYPE=file
export FLOWLOGS2METRICS_PIPELINE_INGEST_FILE_FILENAME=hack/examples/ocp-ipfix-flowlogs.json
- execute
./flowlogs2metrics
Supported options and stage types are provided by running:
flowlogs2metrics --help
Different types of inputs come with different sets of keys. The transform stage allows changing the names of the keys and deriving new keys from old ones. Multiple transforms may be specified, and they are applied in the order of specification. The output from one transform becomes the input to the next transform.
The generic transform module maps the input json keys into another set of keys. This allows to perform subsequent operations using a uniform set of keys. In some use cases, only a subset of the provided fields are required. Using the generic transform, we may specify those particular fields that interest us.
For example, suppose we have a flow log with the following syntax:
{"Bytes":20800,"DstAddr":"10.130.2.2","DstPort":36936,"Packets":400,"Proto":6,"SequenceNum":1919,"SrcAddr":"10.130.2.13","SrcHostIP":"10.0.197.206","SrcPort":3100,"TCPFlags":0,"TimeFlowStart":0,"TimeReceived":1637501832}
Suppose further that we are only interested in fields with source/destination addresses and ports, together with bytes and packets transferred. The yaml specification for these parameters would look like this:
pipeline:
transform:
- type: generic
generic:
rules:
- input: Bytes
output: bytes
- input: DstAddr
output: dstAddr
- input: DstPort
output: dstPort
- input: Packets
output: packets
- input: SrcAddr
output: srcAddr
- input: SrcPort
output: srcPort
- input: TimeReceived
output: timestamp
Each field specified by input
is translated into a field specified by the corresponding output
.
Only those specified fields are saved for further processing in the pipeline.
Further stages in the pipeline should use these new field names.
This mechanism allows us to translate from any flow-log layout to a standard set of field names.
If the input
and output
fields are identical, then that field is simply passed to the next stage.
For example:
pipeline:
transform:
- type: generic
generic:
rules:
- input: DstAddr
output: dstAddr
- input: SrcAddr
output: srcAddr
- type: generic
generic:
rules:
- input: dstAddr
output: dstIP
- input: dstAddr
output: dstAddr
- input: srcAddr
output: srcIP
- input: srcAddr
output: srcAddr
Before the first transform suppose we have the keys DstAddr
and SrcAddr
.
After the first transform, we have the keys dstAddr
and srcAddr
.
After the second transform, we have the keys dstAddr
, dstIP
, srcAddr
, and srcIP
.
transform network
provides specific functionality that is useful for transformation of network flow-logs:
- Resolve subnet from IP addresses
- Resolve known network service names from port numbers and protocols
- Perform simple mathematical transformations on field values
- Compute geo-location from IP addresses
- Resolve kubernetes information from IP addresses
- Perform regex operations on field values
Example configuration:
pipeline:
transform:
- type: network
network:
KubeConfigPath: /tmp/config
rules:
- input: srcIP
output: srcSubnet
type: add_subnet
parameters: /24
- input: value
output: value_smaller_than10
type: add_if
parameters: <10
- input: dstPort
output: service
type: add_service
parameters: protocol
- input: dstIP
output: dstLocation
type: add_location
- input: srcIP
output: srcK8S
type: add_kubernetes
- input: srcSubnet
output: match-10.0
type: add_regex_if
parameters: 10.0.*
- input: "{{.srcIP}},{{.srcPort}},{{.dstIP}},{{.dstPort}},{{.protocol}}"
output: isNewFlow
type: conn_tracking
parameters: "1"
The first rule add_subnet
generates a new field named srcSubnet
with the
subnet of srcIP
calculated based on prefix length from the parameters
field
The second add_if
generates a new field named value_smaller_than10
that contains
the contents of the value
field for entries that satisfy the condition specified
in the parameters
variable (smaller than 10 in the example above). In addition, the
field value_smaller_than10_Evaluate
with value true
is added to all satisfied
entries
The third rule add_service
generates a new field named service
with the known network
service name of dstPort
port and protocol
protocol. Unrecognized ports are ignored
Note:
protocol
can be either network protocol name or number
The fourth rule add_location
generates new fields with the geo-location information retrieved
from DB ip2location based on dstIP
IP.
All the geo-location fields will be named by appending output
value
(dstLocation
in the example above) to their names in the [ip2location](https://lite.ip2location.com/ DB
(e.g., CountryName
, CountryLongName
, RegionName
, CityName
, Longitude
and Latitude
)
The fifth rule add_kubernetes
generates new fields with kubernetes information by
matching the input
value (srcIP
in the example above) with k8s nodes
, pods
and services
IPs.
All the kubernetes fields will be named by appending output
value
(srcK8S
in the example above) to the kubernetes metadata field names
(e.g., Type
, Name
and Namespace
)
Note: kubernetes connection is done using the first available method:
- configuration parameter
KubeConfigPath
(in the example above/tmp/config
) or- using
KUBECONFIG
environment variable- using local
~/.kube/config
The sixth rule add_regex_if
generates a new field named match-10.0
that contains
the contents of the srcSubnet
field for entries that match regex expression specified
in the parameters
variable. In addition, the field match-10.0_Matched
with
value true
is added to all matched entries
The seventh rule conn_tracking
generates a new field named isNewFlow
that contains
the contents of the parameters
variable only for new entries (first seen in 120 seconds)
that match hash of template fields from the input
variable.
Note: above example describes all available transform network
Type
options Note: above transform is essential for theaggregation
phase
Aggregates are used to define the transformation of flow-logs from textual/json format into
numeric values to be exported as metrics. Aggregates are dynamically created based
on defined values from fields in the flow-logs and on mathematical functions to be performed
on these values.
The specification of the aggregates details is placed in the extract
stage of the pipeline.
For Example, assuming set of flow-logs, with single sample flow-log that looks like:
{"srcIP": "10.0.0.1",
"dstIP": "20.0.0.2",
"level": "error",
"value": "7",
"message": "test message"}
It is possible to define aggregates per srcIP
or per dstIP
of per the tuple srcIP
xdstIP
to capture the sum
, min
, avg
etc. of the values in the field value
.
For example, configuration record for aggregating field value
as
average for srcIP
xdstIP
tuples will look like this::
pipeline:
extract:
type: aggregates
aggregates:
- Name: "Average key=value for (srcIP, dstIP) pairs"
By:
- "dstIP"
- "srcIP"
Operation: "avg"
RecordKey: "value"
The prometheus encoder specifies which metrics to export to prometheus and which labels should be associated with those metrics.
For example, we may want to report the number of bytes and packets for the reported flows.
For each reported metric, we may specify a different set of labels.
Each metric may be renamed from its internal name.
The internal metric name is specified as input
and the exported name is specified as name
.
A prefix for all exported metrics may be specified, and this prefix is prepended to the name
of each specified metric.
pipeline:
encode:
type: prom
prom:
port: 9103
prefix: test_
metrics:
- name: Bytes
type: gauge
valuekey: bytes
labels:
- srcAddr
- dstAddr
- srcPort
- name: Packets
type: counter
valuekey: packets
labels:
- srcAddr
- dstAddr
- dstPort
In this example, for the bytes
metric we report with the labels which specify srcAddr, dstAddr and srcPort.
Each different combination of label-values is a distinct gauge reported to prometheus.
The name of the prometheus gauge is set to test_Bytes
by concatenating the prefix with the metric name.
The packets
metric is very similar. It makes use of the counter
prometheus type which adds reported values
to prometheus counter.
- Clone this repository from github into a local machine (Linux/X86):
git clone [email protected]:netobserv/flowlogs2metrics.git
- Change directory into flowlogs2metrics into:
cd flowlogs2metrics
- Build the code:
make build
FL2M uses Makefile
to build, tests and deploy. Following is the output of make help
:
Usage:
make <target>
General
help Display this help.
Develop
lint Lint the code
build Build flowlogs2metrics executable and update the docs
dashboards Build grafana dashboards
docs Update flowlogs2metrics documentation
clean Clean
test Test
benchmarks Benchmark
run Run
Docker
push-image Push latest image
kubernetes
deploy Deploy the image
undeploy Undeploy the image
deploy-prometheus Deploy prometheus
undeploy-prometheus Undeploy prometheus
deploy-grafana Deploy grafana
undeploy-grafana Undeploy grafana
deploy-netflow-simulator Deploy netflow simulator
undeploy-netflow-simulator Undeploy netflow simulator
kind
create-kind-cluster Create cluster
delete-kind-cluster Delete cluster
metrics
generate-configuration Generate metrics configuration
End2End
local-deploy Deploy locally on kind (with simulated flowlogs)
local-cleanup Undeploy from local kind
local-redeploy Redeploy locally (on current kind)
ocp-deploy Deploy to OCP
ocp-cleanup Undeploy from OCP
dev-local-deploy Deploy locally with simulated netflows