serverless framework with multiple requirements.txt files - serverless-framework

I have a python project with structure as below:
/project/
/function-group-1/
lambda-A.py
requirements.txt
/function-group-2/
lambda-B.py
lambda-C.py
requirements.txt
Can you have some ways to install packages from requirements.txt, then packaging it as separated layers? I used serverless-python-requirements plugin, but maybe it not help to create multiple layers with multiple requirements.txt files

Related

What is the setup.py file in github repository used for?

How can I run the code in this repository without following their steps, I want to run the main.py file, from the Demo, directly.
What are the setup.py and install.sh files used for?
setup.py is the canonical name for the installer of a Python package. For example, when you run pip install x, pip runs the setup.py of the package you installed. In this case, install.sh is just a shortcut for running setup.py.
There's no way to use a package without installing it, since it won't have what it needs to operate properly.

How could I build tensorflow-serving-api myself?

I have added some custom code in serving and I want to build my own tensorflow-serving-api for the customized serving, especially ReloadConfig API. But I have no idea how to build it myself. It seems that I could only install tensorflow-serving-api from pip.
Any suggestions? Thanks.
Here's an example of how to do this:
# Pull the latest source code (or pick a release branch)
$ git clone https://github.com/tensorflow/serving .
# Make changes you'd want to make
# Build the pip package using the latest nightly docker build
$ tools/bazel_in_docker.sh bazel build --color=yes tensorflow_serving/tools/pip_package:build_pip_package
# Run the pip package builder using the latest nightly docker build
$ tools/bazel_in_docker.sh bazel-bin/tensorflow_serving/tools/pip_package/build_pip_package $(pwd)/pip
# Install the package that has your custom code
$ pip --no-cache-dir install --upgrade $(pwd)/pip/tensorflow_serving*.whl
# Clean up your extracted folder (optional)
$ rm -rf $(pwd)/pip

translate.py can't be found in /rnn/translate folder

I installed tensorflow with method:
export TF_BINARY_URL=https://storage.googleapis.com/tensorflow/linux/cpu/tensorflow-0.10.0-cp27-none-linux_x86_64.whl
sudo pip install --upgrade $TF_BINARY_URL
But when I go into the tensorflow folder, I can't found the translate.py file in translate folder, all the files in the translate are list:
It seems that example files were excluded from the pip installation packages of tensorflow (see issue #4574) without updating the docs.
Cloning the model repo should help as it contains all the tutorial files.

Pandas & AWS Lambda

Does anyone have a fully compiled version of pandas that is compatible with AWS Lambda?
After searching around for a few hours, I cannot seem to find what I'm looking for and the documentation on this subject is non-existent.
I need access to the package in a lambda function however I have been unsuccessful at getting the package to compile properly for usage in a Lambda function.
In lieu of the compilation can anyone provide reproducible steps to create the binaries?
Unfortunately I have not been able to successfully reproduce any of the guides on the subjects as they mostly combine pandas with scipy which I don't need and adds an extra layer of burden.
I believe you should be able to use the recent pandas version (or likely, the one on your machine). You can create a lambda package with pandas by yourself like this,
First find where the pandas package is installed on your machine i.e. Open a python terminal and type
import pandas
pandas.__file__
That should print something like '/usr/local/lib/python3.4/site-packages/pandas/__init__.py'
Now copy the pandas folder from that location (in this case '/usr/local/lib/python3.4/site-packages/pandas) and place it in your repository.
Package your Lambda code with pandas like this:
zip -r9 my_lambda.zip pandas/
zip -9 my_lambda.zip my_lambda_function.py
You can also deploy your code to S3 and make your Lambda use the code from S3.
aws s3 cp my_lambda.zip s3://dev-code//projectx/lambda_packages/
Here's the repo that will get you started
After some tinkering around and lot's of googling I was able to make everything work and setup a repo that can just be cloned in the future.
Key takeaways:
All static packages have to be compiled on an ec2 amazon Linux instance
The python code needs to load the libraries in the lib/ folder before executing.
Github repo:
https://github.com/moesy/AWS-Lambda-ML-Microservice-Skeleton
The repo mthenw/awesome-layers lists several publicly available aws lambda layers.
In particular, keithrozario/Klayers has pandas+numpy and is up-to-date as of today with pandas 0.25.
Its ARN is arn:aws:lambda:us-east-1:113088814899:layer:Klayers-python37-pandas:1
I know the question was asked a couple years ago and Lambda was on a different stage back then.
I faced similar issues lately and I thought it would be a good idea to add the newest solution here for future users facing the same problem.
It turns out that amazon released the concept of layers in the re:Invent 2018. It is a great feature. This post in medium describes it much better than I could here: Creating New AWS Lambda Layer For Python Pandas Library
The easiest way to get pandas working in a Lambda function is to utilize Lambda Layers and AWS Data Wrangler. A Lambda Layer is a zip archive that contains libraries or dependencies. According to the AWS documentation, using layers keeps your deployment package small, making development easier.
The AWS Data Wrangler is an open source package that extends the power of pandas to AWS services.
Follow the instructions (under AWS Lambda Layer) here.
Another option is to download the pre-compiled wheel files as discussed on this post: https://aws.amazon.com/premiumsupport/knowledge-center/lambda-python-package-compatible/
Essentially, you need to go to the project page on https://pypi.org and download the files named like the following:
For Python 2.7: module-name-version-cp27-cp27mu-manylinux1_x86_64.whl
For Python 3.6: module-name-version-cp36-cp36m-manylinux1_x86_64.whl
Then unzip the .whl files to your project directory and re-zip the contents together with your lambda code.
NOTE: The main Python function file(s) must be in the root folder of the resulting deployment package .zip file. Other Python modules and dependencies can be in sub-folders. Something like:
my_lambda_deployment_package.zip
├───lambda_function.py
├───numpy
│ ├───[subfolders...]
├───pandas
│ ├───[subfolders...]
└───[additional package folders...]
#ashtonium's answer actually works and is most likely the easiest, however, a few additional steps are required. Also, Pandas requires Pytz (mentioned in the link provided by #b3rt0) so that package is needed as well.
Download the whl-files from PyPI (the Pandas file ends with ...manylinux1_x86_64.whl, there is only one Pytz file of relevance)
Unzip the whl-files using terminal command, e.g. unzip filename.whl (Linux/MacOS)
Create a new folder structure python/lib/python3.7/site-packages/ (swap 3.7 for version of your choice)
Move folders from step 2 to site-packages folder in step 3
Zip root folder in new structure, i.e. python
Create a new layer in AWS management console where you upload the zip-file
This is a very common question, I hope my solution helps.
Update on Aug 19, 2020:
Wheel-files aren't available for all packages. In these cases you can skip to step 3, go into the site-packages folder and install the package in there with pip3 install PACKAGE_NAME -t . (no venv required). Some packages are easier than others, some are trickier. Psycopg2 for example, requires you to move only one of the two (as of this writing) package folders.
/Cheers
There are some precompiled packages on github by ryfeus.
My solution has been to maintain 2 requirements.txt style files of packages that go in my layer, one named provided_packages.txt and one named provided_linux_installs.txt
Before deployment (if the packages are not already installed) I run:
pip install -r provided_packages.txt -t layer_name/python/lib/python3.8/site-packages/.
pip download -r provided_linux_installs.txt --platform manylinux1_x86_64 --no-deps -d layer_name/python/lib/python3.8/site-packages
cd layer_name/python/lib/python3.8/site-packages
unzip \*.whl
rm *.whl
Then deploy normally (I am using cdk synth & cdk deploy \* --profile profile_name)
In case helpful, my provided_linux_installs.txt looks like this:
pandas==1.1.0
numpy==1.19.1
pytz==2020.1
python-dateutil==2.8.1
I have started to maintain a GitHub repo for easy and quick access to layers. https://github.com/kuharan/Lambda-Layers
I have been using these for my open-source projects and stuff.
I managed to deploy a pandas code in aws lambda using python3.6 runtime . this is the step that i follow :
Add required libraries into requirements.txt
Build project in a docker container (using aws sam cli : sam build --use-container)
Run code (sam local invoke --event test.json)
this is a helper : https://github.com/ysfmag/aws-lambda-py-pandas-template
# all the step are done in AWS EC2 Linux Free tier so that all the Libraries are compatible with the Lambda environment
# install the required packages
mkdir packages
pip3 install -t . pandas
pip3 install -t . numpy --upgrade
pip3 install -t . wikipedia --upgrade
pip3 install -t . sklearn --upgrade
pip3 install -t . pickle-mixin --upgrade
pip3 install -t . fuzzywuzzy --upgrade
# Now remove all unnecessary files
sudo rm -r *.whl *.dist-info __pycache__
# Now make a DIR so that lambda function can reconginzes
sudo mkdir -p build/python/lib/python3.6/site-packages
# Now move all the files from packages folder to site-packages folder
sudo mv /home/ec2-user/packages/* build/python/lib/python3.6/site-packages/
# Now move to the build packages
cd build
# Now zip all the files starting from python folder to site-packages
sudo zip -r python.zip .
upload the zip file to lambda layers
python 3.8 windows 10 lambda aws pandas
You need to do the following steps on a linux machine and python 3.8:
sudo mkdir python
sudo pip3 install --target python pandas
sudo zip -r pandas.zip python
create a public s3 bucket, upload pandas.zip, grab the public URL.
create new lambda layer using s3 URL from above.
add layer to lambda function and import pandas as pd like you normally would
No linux machine? Launch an Ubuntu EC2 instance or container:
sudo apt install python3.8 zip unzip python3-pip
run 1-3 above
Now you need to copy the zip to your local machine. Open a command terminal and change directory to the folder containing your EC2 instance's pem file and run: scp -i yourPemFile.pem ubuntu#'EC2.Instance.IP.Here':/home/path/to/pandas.zip C:\Users\YourUser\Desktop
run steps 4-6 from above
*for number 3 above: you need to grab your EC2 IP and insert it. You may get an error about the permissions on the pem file, if you do then right click the pem file > properties > security > advanced > disable inheritance and make sure only your user is in the "permission entries." Lastly, fix the paths to point to where the pandas.zip file is on the EC2 instance and where you want the file to end up locally.
**pay attention to the python runtime of the lambda function. Make sure it matches the version of python you're using to do the pip stuff (which should be 3.8).
***the original folder name "python" is named that for a reason as per AWS documentation.
After lots of googling on this and messing around, the concept of layers are great and seem to work for me.
This github repo from keithrozario has loads of pre-build layers you can simply add to your lambda via the arn which has some great stuff in there like pandas, requests and sqlalchemy.
I've create a template to compile and upload a layer (containing python dependencies) to lambda using the AWS CLI which you can find in my Gitlab repo here.
I'm running this on an Amazon Linux EC2, using a virtual environment (venv) to install libraries from a requirements.txt file and then load the zipped files to lambda using the AWS CLI.
Note the folder structure my_zip_file/python/binaries which is required for lambda.
Note: Pandas is quite a large library. Your zipped layer file must be below 70mb.
You may also encounter the horrible "OpenBLAS WARNING - could not determine the L2 cache size on this system" error message. I had to increase the memory from the default 128mb in order to the lambda to successfully run.
After searching around for a few hours, I cannot seem to find what I’m looking for and the documentation on this subject is non-existent.
So i decided to build the libraries myself to support the Amazon Linux 2 arch.
Read full blog here https://khanakia.medium.com/add-pandas-and-numpy-python-to-aws-lambda-layers-python-3-7-3-8-694db42f6119

IntelliJ IDEA 12: How can I run pip install to install libraries in virtual environment?

I am using IntelliJ IDEA 12 Ultimate Edition and creating flask project.
I created the virtualenv using IDEA and using that, but my code has dependency on other libraires I as move forward. For example Flask-Restless.
My code in IntelliJ IDEA looks like
Is there a way to install Flak-Restless using IntelliJ IDEA 12?
or
do I need to activate my virtualenv on command-line and install it myself?
Is it something IDEA can provide to me?
In IntelliJ IDEA use Tools | Manage Python Packages dialog to install/uninstall packages for your Python SDK or virtualenv used in project.
Use pip requirements.txt in your repository root. My PyCharm automatically prompt me install absent requirements or if installed versions not equal with requirements.txt.
You can install packages from requirements.txt:
your_python_root_pip install -r requirements.txt
You can get already installed packages with versions:
your_python_root_pip freeze -r requirements.txt
For details see pip help. See requirements.txt example:
flask==0.9
flask-testing==0.4
blinker==1.2
uwsgi==1.4.5
nose
coverage
pep8
You can install all project packages via PyCharm 2017.1 by Tools / Python Integrated Tools / Package requirements file. Get there full path to your requirements.txt file and PyCharm will ask you to install all dependencies.