HigherOrderCO/Bend
{ "createdAt": "2023-08-29T20:44:32Z", "defaultBranch": "main", "description": "A massively parallel, high-level programming language", "fullName": "HigherOrderCO/Bend", "homepage": "https://higherorderco.com", "language": "Rust", "name": "Bend", "pushedAt": "2025-06-03T17:36:56Z", "stargazersCount": 19100, "topics": [], "updatedAt": "2025-11-27T03:55:52Z", "url": "https://github.com/HigherOrderCO/Bend"}Bend
A high-level, massively parallel programming language
Introduction
Section titled “Introduction”Bend offers the feel and features of expressive languages like Python and Haskell. This includes fast object allocations, full support for higher-order functions with closures, unrestricted recursion, and even continuations.
Bend scales like CUDA, it runs on massively parallel hardware like GPUs, with nearly linear acceleration based on core count, and without explicit parallelism annotations: no thread creation, locks, mutexes, or atomics.
Bend is powered by the HVM2 runtime.
Important Notes
Section titled “Important Notes”- Bend is designed to excel in scaling performance with cores, supporting over 10000 concurrent threads.
- The current version may have lower single-core performance.
- You can expect substantial improvements in performance as we advance our code generation and optimization techniques.
- We are still working to support Windows. Use WSL2 as an alternative solution.
- We only support NVIDIA Gpus currently.
Install
Section titled “Install”Install dependencies
Section titled “Install dependencies”On Linux
Section titled “On Linux”# Install Rust if you haven't already.curl --proto '=https' --tlsv1.2 -sSf https://sh.rustup.rs | sh
# For the C version of Bend, use GCC. We recommend a version up to 12.x.sudo apt install gccFor the CUDA runtime install the CUDA toolkit for Linux version 12.x.
On Mac
Section titled “On Mac”# Install Rust if you haven't it already.curl --proto '=https' --tlsv1.2 -sSf https://sh.rustup.rs | sh
# For the C version of Bend, use GCC. We recommend a version up to 12.x.brew install gccInstall Bend
Section titled “Install Bend”- Install HVM2 by running:
# HVM2 is HOC's massively parallel Interaction Combinator evaluator.cargo install hvm
# This ensures HVM is correctly installed and accessible.hvm --version- Install Bend by running:
# This command will install Bendcargo install bend-lang
# This ensures Bend is correctly installed and accessible.bend --versionGetting Started
Section titled “Getting Started”Running Bend Programs
Section titled “Running Bend Programs”bend run <file.bend> # uses the C interpreter by default (parallel)bend run-rs <file.bend> # uses the Rust interpreter (sequential)bend run-c <file.bend> # uses the C interpreter (parallel)bend run-cu <file.bend> # uses the CUDA interpreter (massively parallel)
# Notes# You can also compile Bend to standalone C/CUDA files using gen-c and gen-cu for maximum performance.# The code generator is still in its early stages and not as mature as compilers like GCC and GHC.# You can use the -s flag to have more information on # Reductions # Time the code took to run # Interaction per second (In millions)Testing Bend Programs
Section titled “Testing Bend Programs”The example below sums all the numbers in the range from start to target. It can be written in two different methods: one that is inherently sequential (and thus cannot be parallelized), and another that is easily parallelizable. (We will be using the -sflag in most examples, for the sake of visibility)
Sequential version:
Section titled “Sequential version:”First, create a file named sequential_sum.bend
# Write this command on your terminaltouch sequential_sum.bendThen with your text editor, open the file sequential_sum.bend, copy the code below and paste in the file.
# Defines the function Sum with two parameters: start and targetdef Sum(start, target): if start == target: # If the value of start is the same as target, returns start. return start else: # If start is not equal to target, recursively call Sum with # start incremented by 1, and add the result to start. return start + Sum(start + 1, target)
def main(): # This translates to (1 + (2 + (3 + (...... + (999999 + 1000000))))) # Note that this will overflow the maximum value of a number in Bend return Sum(1, 1_000_000)Running the file
Section titled “Running the file”You can run it using Rust interpreter (Sequential)
bend run-rs sequential_sum.bend -sOr you can run it using C interpreter (Sequential)
bend run-c sequential_sum.bend -sIf you have a NVIDIA GPU, you can also run in CUDA (Sequential)
bend run-cu sequential_sum.bend -sIn this version, the next value to be calculated depends on the previous sum, meaning that it cannot proceed until the current computation is complete. Now, let’s look at the easily parallelizable version.
Parallelizable version:
Section titled “Parallelizable version:”First close the old file and then proceed to your terminal to create parallel_sum.bend
# Write this command on your terminaltouch parallel_sum.bendThen with your text editor, open the file parallel_sum.bend, copy the code below and paste in the file.
# Defines the function Sum with two parameters: start and targetdef Sum(start, target): if start == target: # If the value of start is the same as target, returns start. return start else: # If start is not equal to target, calculate the midpoint (half), # then recursively call Sum on both halves. half = (start + target) / 2 left = Sum(start, half) # (Start -> Half) right = Sum(half + 1, target) return left + right
# A parallelizable sum of numbers from 1 to 1000000def main(): # This translates to (((1 + 2) + (3 + 4)) + ... (999999 + 1000000)...) return Sum(1, 1_000_000)In this example, the (3 + 4) sum does not depend on the (1 + 2), meaning that it can run in parallel because both computations can happen at the same time.
Running the file
Section titled “Running the file”You can run it using Rust interpreter (Sequential)
bend run-rs parallel_sum.bend -sOr you can run it using C interpreter (Parallel)
bend run-c parallel_sum.bend -sIf you have a NVIDIA GPU, you can also run in CUDA (Massively parallel)
bend run-cu parallel_sum.bend -sIn Bend, it can be parallelized by just changing the run command. If your code can run in parallel it will run in parallel.
Speedup Examples
Section titled “Speedup Examples”The code snippet below implements a bitonic sorter with immutable tree rotations. It’s not the type of algorithm you would expect to run fast on GPUs. However, since it uses a divide and conquer approach, which is inherently parallel, Bend will execute it on multiple threads, no thread creation, no explicit lock management.
Bitonic Sorter Benchmark
Section titled “Bitonic Sorter Benchmark”bend run-rs: CPU, Apple M3 Max: 12.15 secondsbend run-c: CPU, Apple M3 Max: 0.96 secondsbend run-cu: GPU, NVIDIA RTX 4090: 0.21 seconds
Click here for the Bitonic Sorter code
# Sorting Network = just rotate trees!def sort(d, s, tree): switch d: case 0: return tree case _: (x,y) = tree lft = sort(d-1, 0, x) rgt = sort(d-1, 1, y) return rots(d, s, (lft, rgt))
# Rotates sub-trees (Blue/Green Box)def rots(d, s, tree): switch d: case 0: return tree case _: (x,y) = tree return down(d, s, warp(d-1, s, x, y))
# Swaps distant values (Red Box)def warp(d, s, a, b): switch d: case 0: return swap(s ^ (a > b), a, b) case _: (a.a, a.b) = a (b.a, b.b) = b (A.a, A.b) = warp(d-1, s, a.a, b.a) (B.a, B.b) = warp(d-1, s, a.b, b.b) return ((A.a,B.a),(A.b,B.b))
# Propagates downwardsdef down(d,s,t): switch d: case 0: return t case _: (t.a, t.b) = t return (rots(d-1, s, t.a), rots(d-1, s, t.b))
# Swaps a single pairdef swap(s, a, b): switch s: case 0: return (a,b) case _: return (b,a)
# Testing# -------
# Generates a big treedef gen(d, x): switch d: case 0: return x case _: return (gen(d-1, x * 2 + 1), gen(d-1, x * 2))
# Sums a big treedef sum(d, t): switch d: case 0: return t case _: (t.a, t.b) = t return sum(d-1, t.a) + sum(d-1, t.b)
# Sorts a big treedef main: return sum(20, sort(20, 0, gen(20, 0)))if you are interested in some other algorithms, you can check our examples folder
Additional Resources
Section titled “Additional Resources”- To understand the technology behind Bend, check out the HVM2 paper.
- We are working on an official documentation, meanwhile for a more in depth explanation check GUIDE.md
- Read about our features at FEATURES.md
- Bend is developed by HigherOrderCO - join our Discord!