The project provides the memory_consumer
python package together with example time-dependent characteristics of memory consumption collected in the patterns directory.
The memory_consumer
app consumes memory according to the specified time characteristics (patterns).
The memory_consumer
app is useful when there is a need to model a workload that consumes memory in a controlled way on a local machine, virtual machine or k8s cluster node.
The app cyclically (within consecutive timeslots) reads an amount of memory to be allocated at the current timestamp (REQUIRED_MEMORY
). The memory to be allocated is read from a specified pattern.
Depending on the actual amount of allocated
memory (ACTUAL_MEMORY
):
if REQUIRED_MEMORY > ACTUAL_MEMORY
- the app allocates additional amount of memory (
REQUIRED_MEMORY - ACTUAL_MEMORY
)
- the app allocates additional amount of memory (
if REQUIRED_MEMORY < ACTUAL_MEMORY
- the app deallocates exceeding amount of memory (
ACTUAL_MEMORY - REQUIRED_MEMORY
)
- the app deallocates exceeding amount of memory (
By default, the app is running as an infinite loop, until the user stops it (CTRL+C).
The command displays the arguments for the app
python memory_consumer/start_mem_consumer.py -h
usage: start_mem_consumer.py [-h] -f PATTERN_FILE [-n NOISE_PERCENT] [-m MAX_RAM_MEGA] [-t TIME_SLOT_SEC]
[-s SLOPE_LINEAR_TREND] [-b] [-d DURATION_MIN]
Memory consumer
options:
options:
-h, --help show this help message and exit
-f PATTERN_FILE, --pattern_file PATTERN_FILE
Csv file with a memory consumption pattern (time-stamped percent of maximal memory to be
allocated).
-n NOISE_PERCENT, --noise_percent NOISE_PERCENT
Noise in percent introduced to the values in memory consumption pattern. Default=0, no noise.
-m MAX_RAM_MEGA, --max_ram_mega MAX_RAM_MEGA
Memory allocated when the memory consumption pattern value is 100 (default: 1000). Memory
allocated for a pattern value = x is (x/100)*MAX_RAM_MEGA
-t TIME_SLOT_SEC, --time_slot_sec TIME_SLOT_SEC
Period in seconds (default: 5), the memory consumption is changed.
-s SLOPE_LINEAR_TREND, --slope_linear_trend SLOPE_LINEAR_TREND
A slope of the linear trend, that is added to the pattern values. Slope value is expressed
for the period of the memory consumption process. Default is 0.0
-b, --start_from_beginning
Start from the beginning of the memory consumption pattern. If set, the memory consumption
will follow the pattern since its beginning no matter the time the app has started. If not
set (default), the memory consumption will follow the pattern since the time the app has
started.
-d DURATION_SEC, --duration_sec DURATION_SEC
Execution time of the memory consumer app in seconds. Default=-1 - which means app is working
continuously until CTRL+C.
python memory_consumer/start_mem_consumer.py -f patterns/s/high_start_1mT.csv
In order to start the app, the path to file name containing a memory consumption pattern is required, e.g. -f patterns/s/high_start_1mT.csv
. The pattern used in the following example has a form of csv file high_start_1mT.csv. It is 60s long pattern, containing percents (int
) of the maximum memory (default=1000MB) to be allocated at a given second.
More details about memory usage patterns can be found in the Memory Consumption Patterns section.
After start, the app logs to stdout:
- details on the memory consumption pattern:
MemPattern: patterns/s/high_start_1mT.csv, type=['s'], noise +/- 0%, smallest unit resolution=1s, pattern size=60 points, pattern duration (period)=60s
- details about the arguments of the
memory_consumer
app:
MemConsumer: maximum memory: 1000MB, allocation change interval: 5s, memory chunk size: 10MB, linear trend slope 0.0, start from pattern beginning: False, duration: infinite
- details about the initially allocated memory by the OS for the
memory_consumer
app:
MemConsumer: initial allocation: 30MB, correction rest: 0MB
- application start time:
Start time: 2023-10-02 11:57:26
Next, the app is logging to stdout its consecutive memory allocation events/steps:
2023-10-02 11:57:26, Allocated 100% of 1000 MB, (in memory array) 1000 MB, (in process) 1000 MB for 5 sec
2023-10-02 11:57:31, Allocated 90% of 1000 MB, (in memory array) 900 MB, (in process) 900 MB for 5 sec
2023-10-02 11:57:36, Allocated 72% of 1000 MB, (in memory array) 720 MB, (in process) 720 MB for 5 sec
2023-10-02 11:57:41, Allocated 50% of 1000 MB, (in memory array) 500 MB, (in process) 500 MB for 5 sec
2023-10-02 11:57:46, Allocated 41% of 1000 MB, (in memory array) 410 MB, (in process) 410 MB for 5 sec
...
Every single log line reports the state after the memory allocation in each step:
- datetime of allocation step (
2023-10-02 11:57:26
) - memory allocation percent of maximum memory (
Allocated 100% of 1000 MB
) - memory allocated in the app's internal array (
(in memory array) 1000 MB
) - memory allocated for the app process, read from OS level (
(in process) 1000 MB
) - duration to the next allocation step (
for 5 sec
)
In each allocation step, every 5s (default value for argument -t TIME_SLOT_SEC
), the app reads, from the memory consumption pattern file, the percent of maximum memory (default=1000MB) to be allocated at the current time. As the memory consumption pattern represents the percents in each second, the app first reads the percent value since its start time (2023-10-02 11:57:26
) for the 26th second (100), next for the 31st (90), the 36th (72), the 41st (50), the 46th (41) and so on. As the pattern is 60s long, the memory consumption pattern is repeated for each consecutive minute. The effect of the memory allocation of 5-minute run of the memory_consumer
can be seen below.
Setting the argument --max_ram_mega 2000
or -m 2000
allows to control the amount of memory allocated for 100%
pattern value. The default value is 1000MB
.
python memory_consumer/start_mem_consumer.py -f patterns/s/high_start_1mT.csv -m 2000
The effect of the memory allocation of 3-minute run of the memory_consumer
with increased maximum memory (2000MB) can be seen below.
By default, the time between the consecutive memory allocation steps is 5s
. Setting the argument --time-slot-sec 3
or -t 3
allows to control the period between consecutive memory allocation steps (3s in this example).
python memory_consumer/start_mem_consumer.py -f patterns/s/high_start_1mT.csv -t 3
The effect of the memory allocation of 3-minute run of the memory_consumer
with decreased --time_slot_sec 3
(3s) can be seen below (more frequent allocation steps).
By default, the app is running infinitely until a user stops it (CTRL+C). Setting the argument --duration_sec 150
or -d 150
allows to control the app's execution time (150s in this example).
python memory_consumer/start_mem_consumer.py -f patterns/s/high_start_1mT.csv -d 150
The effect of limited execution time can be seen in the figure below.
By default, the app is allocating the percent of maximum memory according to the values from the memory consumption pattern. Setting the argument --noise_percent 20
or -n 20
allows for introducing some noise. If a pattern value is 90%
and --noise_percent
is set to 20
, the app will uniformly random the final value within the scope <72%:108%>
, 90%+-18% (20%*90%)
.
python memory_consumer/start_mem_consumer.py -f patterns/s/high_start_1mT.csv -n 20
The effect of adding 20%
noise to the pattern can be seen in the following figure.
By default, the app allocates the percent of maximum memory according to the values from the memory consumption pattern. It is possible to apply a linear trend to those values, by defining a slope, i.e. setting the --slope_linear_trend 0.1
or -s 0.1
argument. As the duration of the example pattern lasts 60s
, the values will be increased by 10% (0.1)
every minute.
python memory_consumer/start_mem_consumer.py -f patterns/s/high_start_1mT.csv -s 0.1
The effect of applying the linear trend with slope 0.1
can be seen below.
The pattern used in all examples has a form of csv file high_start_1mT.csv and is presented in the figure:
By default, the app starts allocating the memory using the pattern value corresponding to the start time of the app. For example, if the start time is 20:40:41, the first pattern value taken for memory allocation will be equal to 47% since that is the value corresponding to 41st second, as can be seen in the figure above (the app start time).
python memory_consumer/start_mem_consumer.py -f patterns/s/high_start_1mT.csv
MemPattern: patterns/s/high_start_1mT.csv, type=['s'], noise +/- 0%, smallest unit resolution=1s, pattern size=60 points, pattern duration (period)=60s
MemConsumer: maximum memory: 1000MB, allocation change interval: 5s, memory chunk size: 10MB, linear trend slope 0.0, start from pattern beginning: False, duration: 120s
MemConsumer: initial allocation: 30MB, correction rest: 0MB
Start time: 2023-10-02 20:40:41
2023-10-02 20:40:42, Allocated 47% of 1000 MB, (in memory array) 470 MB, (in process) 470 MB for 5 sec
2023-10-02 20:40:47, Allocated 40% of 1000 MB, (in memory array) 400 MB, (in process) 400 MB for 5 sec
2023-10-02 20:40:52, Allocated 25% of 1000 MB, (in memory array) 250 MB, (in process) 250 MB for 5 sec
The effect can be seen in the figure below:
However, it is possible to force the app to use the pattern values from the very beginning of the pattern, by setting the flag --start_from_beginning
or -b
. Then, no matter when the app starts, it will follow the memory consumption pattern from its beginning.
python memory_consumer/start_mem_consumer.py -f patterns/s/high_start_1mT.csv -b
The effect of -b
flag set can be seen in the figure below:
Time characteristics of memory consumption (also called patterns) contain the percent of maximum memory for specific days of week (d
), hours (h
), minutes (m
) and seconds (s
). The first columns in the csv file indicate specific time markers d
, h
, m
or s
. The last column mem
contains the percent of memory to be allocated. However, not all markers must be present within the pattern. It all depends on how long the memory consumption pattern you want to model.
The format of a csv file containing 1-week pattern with time resolution of 1-minute should be as follows:
d,h,m,mem
0,0,0,28
0,0,1,26
0,0,2,25
0,0,3,24
0,0,4,23
0,0,5,22
...
6,23,59,66
The last time marker (m
in this example) can have different time resolution, as compared to the standard approach,
for instance 5-minute. The format of a csv file containing such a pattern should be as follows:
d,h,m,mem
0,0,0,28
0,0,5,26
0,0,10,25
0,0,15,24
0,0,20,23
...
0,0,55,22
...
6,23,55,66
For example, the running memory_consumer
app doing a memory allocation on Monday (d=0
) at 00:18 (%H:%M)
will use the memory allocation percent value equal to 24
according to the row 0,0,15,24
(the last value before the time of allocation). Example dhm-patterns with time resolution of 5-minute can be found in the patterns/dhm directory.
The format of a csv file containing 1-hour pattern with time resolution of 1-second should be as follows:
m,s,mem
0,0,10
0,1,12
0,2,18
...
0,59,23
1,0,25
...
59,59,56
As you can see, there are time markers only for minutes (m
) and seconds (s
) present here. The format of a csv file containing 1-hour pattern with time resolution of 30 s should be as follows:
m,s,mem
0,0,10
0,30,100
1,0,100
1,30,100
2,0,100
2,30,100
3,0,100
...
57,0,10
57,30,10
58,0,10
58,30,10
59,0,10
59,30,10
Example ms-patterns with the time resolution of 30s can be found in the patterns/ms directory.
In the patterns directory there are some ready to use memory consumption patterns.
- patterns/dhm - weekly patterns, time resolution: 5 minutes
- patterns/m - 1-hour patterns, time resolution: 1 minute
- patterns/ms - 1-hour patterns, time resolution: 30 seconds
- patterns/s - 1-minute patterns, time resolution: 1 second
Use the pip package manager to install the package locally.
pip install .
In order to run tests of the app, use:
make test
In order to show help, use:
make run-help
In order to run the app for an example pattern, use:
make run
In order to build the app docker image, use:
make docker-build
In order to build the app docker image (memory_consumer:version
) and run as docker container, use:
make docker-run
docker run -it --rm memory_consumer:2.0.0 -f patterns/s/high_low_10s.csv -n 10 -m 2000 -t 3 -s 0.1 -b -d 60
apiVersion: v1
kind: Pod
metadata:
generateName: high-low-pod-
labels:
app: mem-consumer
type: high-low
spec:
containers:
- name: mem-consumer-container
image: <image-repository/image-name:image-version>
args: ["-f", "patterns/ms/high_low.csv", "-n", "10", "-m", "1000", "-t", "5"]
resources:
requests:
memory: "100Mi"
cpu: "100m"
imagePullSecrets:
- name: <secrets with credentials to image-repository>
apiVersion: apps/v1
kind: Deployment
metadata:
name: ms-biz-dep
labels:
app: mem-consumer
type: ms-biz
spec:
replicas: 1
selector:
matchLabels:
type: ms-biz
template:
metadata:
name: mem-consumer-pod
labels:
app: mem-consumer
type: ms-biz
spec:
containers:
- name: mem-consumer-container
image: <image-repository/image-name:image-version>
args: ["-f", "patterns/ms/biz.csv", "-n", "10", "-m", "1000", "-t", "5"]
resources:
requests:
memory: "100Mi"
cpu: "100m"
imagePullSecrets:
- name: <secrets with credentials to image-repository>
Below measured memory consumption for k8s Pods running memory_consumer
apps for two different patterns are presented.
The measurements have been collected using the Prometheus framework.
No support at the moment.
No roadmap at the moment.
The author of this code is Tomasz Janaszka (tomasz.janaszka@codilime.com), CodiLime (codilime.com).
- psutil
- Copyright (c) 2009, Jay Loden, Dave Daeschler, Giampaolo Rodola All rights reserved.
- BSD 3-Clause License
The code is written in Python and memory de-allocation depends on the garbage collection process. When running the app locally, especially for short TIME_SLOT_SEC (<3s)
, problems with memory de-allocation may be observed from time to time. When the app was run as a Pod in Kubernetes cluster with TIME_SLOT_SEC (>=5s)
such a behavior was not observed.