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⚡ Madara App Chain Stack

Welcome to Madara, the modular stack to build chains using Cairo and the Starknet technology. Apps like dYdX V3, Immutable and Sorare have been using StarkEx for scaling for a while and now with Madara, it's open source for everyone to use.

Madara is built on the Substrate framework which not only makes it modular but also gives it access to years of dev tooling, libraries and a strong developer community. It is specifically helpful if you want to own more of the stack and get more control over your chain.

📚 Documentation

Get started with our comprehensive documentation, which covers everything from project structure and architecture to benchmarking and running Madara:

📣 Building App Chains

For many use cases, you do not need to fork this repo to build your app chain. By adding changes using forking, you will have to periodically rebase (and solve conflicts) to remain updated with the latest version of Madara. Madara by default provides

  • pallet_starknet: Adds the CairoVM to Substrate which allows you to deploy and execute Cairo contracts.
  • Starknet RPC: Adds all the Starknet RPC calls to your chain so that it's compatible with all RPC tools like starknet-js, wallets, etc.
  • DA Interface: A general interface which allows you to use any DA layer like Avail, Celestia, Ethereum etc.
  • Proving: Running the Starknet OS which is the runtime logic in Cairo so that it can be proven on the L1.

So for many use cases where you want to change common things like

  • Configuration parameters for example block time, maximum steps etc.
  • DA layer
  • Genesis state
  • Add new off chain workers
  • Add new pallets

you don't need to fork the Madara repo. Instead, you can import the relevant code as crates/pallets. We have created an app-chain-template which imports Madara as a library to show an example and would recommend you start from here. For other more detailed use cases like

  • Adding a new syscall to the cairo VM
  • Changing the runtime logic to deviate from Starknet's logic

You should consider forking parts of Madara.

📣 Peripheral repositories

  • Madara Docsite: The source code of the Madara documentation website. Deployed on https://docs.madara.zone.
  • Stark Compass Explorer by the LambdaClass team : An open source block explorer for Starknet based chains.
  • Madara Infra: A collection of scripts and tools to deploy and manage Madara on different environments (e.g. AWS, docker, ansible, etc.). It also contains the Starknet Stack demo docker-compose file.
  • Madara Tsukuyomi: The source code of the Madara Desktop App. A friendly GUI to start a Madara node and interact with it.
  • App Chain Template: A ready to use template that allows you to easily start an app chain.

🌟 Features

  • Starknet sequencer 🐺
  • Built on Substrate 🌐
  • Rust-based for safety and performance 🏎️
  • Custom FRAME pallets for Starknet functionality 🔧
  • Comprehensive documentation 📚
  • Active development and community support 🤝

🏗️ Build & Run

Want to dive straight in? Check out our Getting Started Guide for instructions on how to build and run Madara on your local machine.

Benchmarking

Benchmarking is an essential process in our project development lifecycle, as it helps us to track the performance evolution of Madara over time. It provides us with valuable insights into how well Madara handles transaction throughput, and whether any recent changes have impacted performance.

You can follow the evolution of Madara's performance by visiting our Benchmark Page.

However, it's important to understand that the absolute numbers presented on this page should not be taken as the reference or target numbers for a production environment. The benchmarks are run on a self-hosted GitHub runner, which may not represent the most powerful machine configurations in real-world production scenarios.

Therefore, these numbers primarily serve as a tool to track the relative performance changes over time. They allow us to quickly identify and address any performance regressions, and continuously optimize the system's performance.

In other words, while the absolute throughput numbers may not be reflective of a production environment, the relative changes and trends over time are what we focus on. This way, we can ensure that Madara is always improving, and that we maintain a high standard of performance as the project evolves.

One can use flamegraph-rs to generate flamegraphs and look for the performance bottlenecks of the system by running the following :

./target/release/madara setup
flamegraph --root --open  -- ./target/release/madara --dev

In parallel to that, run some transactions against your node (you can use Gomu Gomu no Gatling benchmarker). Once you stop the node, the flamegraph will open in your browser.

🌐 Connect to the dev webapp

Once your Madara node is up and running, you can connect to our Dev Frontend App to interact with your chain. Connect here!

🤝 Contribute

We're always looking for passionate developers to join our community and contribute to Madara. Check out our contributing guide for more information on how to get started.

📖 License

This project is licensed under the MIT license.

See LICENSE for more information.

Happy coding! 🎉

Contributors ✨

Thanks goes to these wonderful people (emoji key):

</tr>
Abdel @ StarkWare
Abdel @ StarkWare

💻
Timothée Delabrouille
Timothée Delabrouille

💻
0xevolve
0xevolve

💻
Lucas @ StarkWare
Lucas @ StarkWare

💻
Davide Silva
Davide Silva

💻
Finiam
Finiam

💻
Resende
Resende

💻
drspacemn
drspacemn

💻
Tarrence van As
Tarrence van As

💻
Siyuan Han
Siyuan Han

📖
Zé Diogo
Zé Diogo

💻
Matthias Monnier
Matthias Monnier

💻
glihm
glihm

💻
Antoine
Antoine

💻
Clément Walter
Clément Walter

💻
Elias Tazartes
Elias Tazartes

💻
Jonathan LEI
Jonathan LEI

💻
greged93
greged93

💻
Santiago Galván (Dub)
Santiago Galván (Dub)

💻
ftupas
ftupas

💻
Paul-Henry Kajfasz
Paul-Henry Kajfasz

💻
chirag-bgh
chirag-bgh

💻
danilowhk
danilowhk

💻
Harsh Bajpai
Harsh Bajpai

💻
amanusk
amanusk

💻
Damián Piñones
Damián Piñones

💻
marioiordanov
marioiordanov

💻
Daniel Bejarano
Daniel Bejarano

💻
sparqet
sparqet

💻
Robin Straub
Robin Straub

💻
tedison
tedison

💻
lanaivina
lanaivina

💻
Oak
Oak

💻
Pia
Pia

💻
apoorvsadana
apoorvsadana

💻
Francesco Ceccon
Francesco Ceccon

💻
ptisserand
ptisserand

💻
Zizou
Zizou

💻
V.O.T
V.O.T

💻
Abishek Bashyal
Abishek Bashyal

💻
Ammar Arif
Ammar Arif

💻
lambda-0x
lambda-0x

💻
exp_table
exp_table

💻
Pilou
Pilou

💻
hithem
hithem

💻
Chris Lexmond
Chris Lexmond

💻
Tidus91
Tidus91

💻
Veronika S
Veronika S

💻
Asten
Asten

💻
ben2077
ben2077

💻
Michael Zaikin
Michael Zaikin

💻
João Pereira
João Pereira

📖
kasteph
kasteph

💻
Ayush Tomar
Ayush Tomar

💻
tchataigner
tchataigner

💻
Alexander Kalankhodzhaev
Alexander Kalankhodzhaev

💻
antiyro
antiyro

💻
azurwastaken
azurwastaken

💻
azurwastaken
Mrisho Lukamba

💻
Tbelleng
Tbelleng

💻
hhamud
Hamza Hamud

💻
elielnfinic
Eliel Mathe

💻

This project follows the all-contributors specification. Contributions of any kind welcome!