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Introduction

This is a tool that tries to discover all AWS resources created in an account. AWS has many products (a.k.a. services) with new ones constantly being added and existing ones expanded with new features. The ecosystem allows users to piece together many different services to form a customized cloud experience. The ability to instantly spin up services at scale comes with a manageability cost. It can quickly become difficult to audit an AWS account for the resources being used. It is not only important for billing purposes, but also for security. Dormant resources and unknown resources are more prone to security configuration weaknesses. Additionally, resources with unexpected dependencies pose availability, access control, and authorization issues.

It uses botocore to discover AWS services and what regions they run in. It is also used in invoking the service APIs. The APIs that are invoked are those which should list or describe resources. The results can be printed to stdout in JSON format. They can also be written across several files:

  • Raw responses from API endpoints can be written to a file specified on the commandline. The file format is Python pickle.
  • Exceptions raised during tool execution can be written to a file specified on the commandline. The file format is Python pickle.
  • gui/aws_inventory_data-<environment_name>.json - JSON format. Parsed responses structured for input to the GUI.

Prerequisites and Installation

First, you should have python 3.10 with tk support I use pyenv for switching between multiple versions of Python.

PYTHON_CONFIGURE_OPTS="--with-tcltk-includes='-I/usr/local/opt/tcl-tk/include' --with-tcltk-libs='-L/usr/local/opt/tcl-tk/lib -ltcl8.6 -ltk8.6' --enable-shared --enable-framework" pyenv install 3.8.6

There is a small GUI for displaying progress which uses the standard Python Tkinter module. However, the underlying native library code for Tcl/Tk may need extra steps to install. Then,

pip3 install -r requirements.txt

MacOS

brew install [email protected]

Windows

Use the Python installer to install Tkinter/Tcl/Tk.

Linux

Use your OS package manager:

Ubuntu / Debian

sudo apt-get install python-tk

Usage

You can run the script without any parameters. It will search for your AWS creds in your shell environment, instance metadata, config file, then credentials file. You can also provide a CSV file, containing your creds, on the commandline. You will want a user that has permissions like the AWS managed policy ViewOnlyAccess. If you are feeling lucky, you could just pipe the output of the tool to a JSON parser like jq.

The tool could take a long time (dozens of minutes) to complete if no restrictions are placed on which operations to invoke for each service across each region. Filtering by service and region can be done on the commandline while filtering by service operation can be done via configuration file. A pre-configured file was created and checked into the repository. It will be used by default.

Aside from the commandline output, you can view the results locally in a React single-page app. No web server needed. Just open the HTML file in a browser and select the generated JSON file when prompted.

The app uses jsTree to display the data in a hierarchical, tree-like structure. There is also a search feature.

NOTE: When invoking APIs, those that raise an exception are not used again regardless of region. Known causes of exceptions are:

  • required API parameter not specified in service model (or the tool is not properly reading model?)
  • insufficient authorization for the selected credentials
  • network error

Examples

  • Run with defaults.

$ python3 aws_inventory.py

  • List AWS services known to botocore. This is all done locally by reading service model files.
$ python3 aws_inventory.py --list-svcs
acm
apigateway
application-autoscaling
appstream
autoscaling
batch
budgets
clouddirectory
cloudformation
cloudfront
.
.
.
  • List service operations known to botocore. This is all done locally by reading service model files.
$ python3 aws_inventory.py --list-operations
[shield]
DescribeSubscription
ListAttacks
ListProtections

[datapipeline]
ListPipelines

[firehose]
ListDeliveryStreams
.
.
.
[glacier]
# NONE

[stepfunctions]
ListActivities
ListStateMachines

Total operations to invoke: 4045
  • Print what APIs would be called for a service. This is all done locally.

$ python3 aws_inventory.py --debug --dry-run

Frontend

In order to launch the frontend you need nvm installed: You can run below commands

  • Install nvm:
curl -o- https://raw.githubusercontent.com/nvm-sh/nvm/v0.39.3/install.sh | bash

export NVM_DIR="$([ -z "${XDG_CONFIG_HOME-}" ] && printf %s "${HOME}/.nvm" || printf %s "${XDG_CONFIG_HOME}/nvm")"
[ -s "$NVM_DIR/nvm.sh" ] && \. "$NVM_DIR/nvm.sh" # This loads nvm
  • Run the ReactJS frontend UI:
cd gui/src
nvm install 16
nvm use 16
npm install
npm start

Alt text

This fork based on cool script from Nccgroup guys, i'm only migrate script from python 2 to python 3.11