To allow us to deploy a Tensorflow model on Lambda, I will pull concepts together from my previous articles.
- To build a Lambda function large enough to hold the
Tensorflow
library, we will need to deploy our Lambda function using a Docker container stored on ECR. - To improve prediction times, we can store our models in a filesystem attached to our Lambda function. This mostly avoids having to load the models from
S3
. - To get prediction results, we will use Lambda function URLs to expose an HTTPS endpoint we can query using HTTP GET (another option is to use an API Gateway).
- To save and load our models, we will use Joblib.
The Dev.to article can be found here.
mkdir project && cd project
cdk init --language python
- Follow instructions below to activate venv, install libraries.
- Make sure you have activated your AWS credentials and
cdk deploy
This is a blank project for Python development with CDK.
The cdk.json
file tells the CDK Toolkit how to execute your app.
This project is set up like a standard Python project. The initialization
process also creates a virtualenv within this project, stored under the .venv
directory. To create the virtualenv it assumes that there is a python3
(or python
for Windows) executable in your path with access to the venv
package. If for any reason the automatic creation of the virtualenv fails,
you can create the virtualenv manually.
To manually create a virtualenv on MacOS and Linux:
$ python -m venv .venv
After the init process completes and the virtualenv is created, you can use the following step to activate your virtualenv.
$ source .venv/bin/activate
If you are a Windows platform, you would activate the virtualenv like this:
% .venv\Scripts\activate.bat
Once the virtualenv is activated, you can install the required dependencies.
$ pip install -r requirements.txt
At this point you can now synthesize the CloudFormation template for this code.
$ cdk synth
To add additional dependencies, for example other CDK libraries, just add
them to your setup.py
file and rerun the pip install -r requirements.txt
command.
cdk ls
list all stacks in the appcdk synth
emits the synthesized CloudFormation templatecdk deploy
deploy this stack to your default AWS account/regioncdk diff
compare deployed stack with current statecdk docs
open CDK documentation
Enjoy!