Solana™ is a new blockchain architecture built from the ground up for scale. The architecture supports up to 710 thousand transactions per second on a gigabit network.
All claims, content, designs, algorithms, estimates, roadmaps, specifications, and performance measurements described in this project are done with the author's best effort. It is up to the reader to check and validate their accuracy and truthfulness. Furthermore nothing in this project constitutes a solicitation for investment.
It's possible for a centralized database to process 710,000 transactions per second on a standard gigabit network if the transactions are, on average, no more than 176 bytes. A centralized database can also replicate itself and maintain high availability without significantly compromising that transaction rate using the distributed system technique known as Optimistic Concurrency Control [H.T.Kung, J.T.Robinson (1981)]. At Solana, we're demonstrating that these same theoretical limits apply just as well to blockchain on an adversarial network. The key ingredient? Finding a way to share time when nodes can't trust one-another. Once nodes can trust time, suddenly ~40 years of distributed systems research becomes applicable to blockchain!
Perhaps the most striking difference between algorithms obtained by our method and ones based upon timeout is that using timeout produces a traditional distributed algorithm in which the processes operate asynchronously, while our method produces a globally synchronous one in which every process does the same thing at (approximately) the same time. Our method seems to contradict the whole purpose of distributed processing, which is to permit different processes to operate independently and perform different functions. However, if a distributed system is really a single system, then the processes must be synchronized in some way. Conceptually, the easiest way to synchronize processes is to get them all to do the same thing at the same time. Therefore, our method is used to implement a kernel that performs the necessary synchronization--for example, making sure that two different processes do not try to modify a file at the same time. Processes might spend only a small fraction of their time executing the synchronizing kernel; the rest of the time, they can operate independently--e.g., accessing different files. This is an approach we have advocated even when fault-tolerance is not required. The method's basic simplicity makes it easier to understand the precise properties of a system, which is crucial if one is to know just how fault-tolerant the system is. [L.Lamport (1984)]
Furthermore, and much to our surprise, it can be implemented using a mechanism that has existed in Bitcoin since day one. The Bitcoin feature is called nLocktime and it can be used to postdate transactions using block height instead of a timestamp. As a Bitcoin client, you'd use block height instead of a timestamp if you don't trust the network. Block height turns out to be an instance of what's being called a Verifiable Delay Function in cryptography circles. It's a cryptographically secure way to say time has passed. In Solana, we use a far more granular verifiable delay function, a SHA 256 hash chain, to checkpoint the ledger and coordinate consensus. With it, we implement Optimistic Concurrency Control and are now well en route towards that theoretical limit of 710,000 transactions per second.
Before you jump into the code, review the online book Solana: Blockchain Rebuilt for Scale.
Install rustc, cargo and rustfmt:
$ curl https://sh.rustup.rs -sSf | sh
$ source $HOME/.cargo/env
$ rustup component add rustfmt-preview
If your rustc version is lower than 1.31.0, please update it:
$ rustup update
On Linux systems you may need to install libssl-dev, pkg-config, zlib1g-dev, etc. On Ubuntu:
$ sudo apt-get install libssl-dev pkg-config zlib1g-dev llvm clang
Download the source code:
$ git clone https://github.com/solana-labs/solana.git
$ cd solana
Build
$ cargo build --all
Run the test suite:
$ cargo test --all
To emulate all the tests that will run on a Pull Request, run:
$ ./ci/run-local.sh
Start your own testnet locally, instructions are in the book Solana: Blockchain Rebuild for Scale: Getting Started.
We maintain several testnets:
testnet
- public stable testnet accessible via testnet.solana.com, with an https proxy for web apps at api.testnet.solana.com. Runs 24/7testnet-beta
- public beta channel testnet accessible via beta.testnet.solana.com. Runs 24/7testnet-edge
- public edge channel testnet accessible via edge.testnet.solana.com. Runs 24/7testnet-perf
- permissioned stable testnet running a 24/7 soak testtestnet-beta-perf
- permissioned beta channel testnet running a multi-hour soak test weekday morningstestnet-edge-perf
- permissioned edge channel testnet running a multi-hour soak test weekday mornings
They are deployed with the ci/testnet-manager.sh
script through a list of scheduled
buildkite jobs.
Each testnet can be manually manipulated from buildkite as well. The -perf
testnets use a release tarball while the non-perf
builds use the snap build
(we've observed that the snap build runs slower than a tarball but this has yet
to be root caused).
Manually trigger the testnet-management pipeline and when prompted select the desired testnet
Increase the TX rate by increasing the number of cores on the client machine which is running
bench-tps
or run multiple clients. Decrease by lowering cores or using the rayon env
variable RAYON_NUM_THREADS=<xx>
Currently, a merged PR is the only way to test a change on the testnet. But you
can run your own testnet using the scripts in the net/
directory.
Edit ci/testnet-manager.sh
First install the nightly build of rustc. cargo bench
requires unstable features:
$ rustup install nightly
Run the benchmarks:
$ cargo +nightly bench --features="unstable"
The release process for this project is described here.
To generate code coverage statistics:
$ scripts/coverage.sh
$ open target/cov/lcov-local/index.html
Why coverage? While most see coverage as a code quality metric, we see it primarily as a developer productivity metric. When a developer makes a change to the codebase, presumably it's a solution to some problem. Our unit-test suite is how we encode the set of problems the codebase solves. Running the test suite should indicate that your change didn't infringe on anyone else's solutions. Adding a test protects your solution from future changes. Say you don't understand why a line of code exists, try deleting it and running the unit-tests. The nearest test failure should tell you what problem was solved by that code. If no test fails, go ahead and submit a Pull Request that asks, "what problem is solved by this code?" On the other hand, if a test does fail and you can think of a better way to solve the same problem, a Pull Request with your solution would most certainly be welcome! Likewise, if rewriting a test can better communicate what code it's protecting, please send us that patch!