| Documentations | Chat | taichi-nightly | taichi-nightly-cuda-10-0 | taichi-nightly-cuda-10-1 |
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# Python 3.6/3.7 needed# CPU only. No GPU/CUDA needed. (Linux, OS X and Windows) python3 -m pip install taichi-nightly # With GPU (CUDA 10.0) support (Linux only) python3 -m pip install taichi-nightly-cuda-10-0 # With GPU (CUDA 10.1) support (Linux only) python3 -m pip install taichi-nightly-cuda-10-1| Linux (CUDA) | OS X (10.14) | Windows | |
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| PyPI |
- (SIGGRAPH Asia 2019) High-Performance Computation on Sparse Data Structures[Video][BibTex]
- by Yuanming Hu, Tzu-Mao Li, Luke Anderson, Jonathan Ragan-Kelley, and Frédo Durand
- (ICLR 2020) Differentiable Programming for Physical Simulation[Video][BibTex][Code]
- by Yuanming Hu, Luke Anderson, Tzu-Mao Li, Qi Sun, Nathan Carr, Jonathan Ragan-Kelley, and Frédo Durand
- (Done) Fully implement the LLVM backend to replace the legacy source-to-source C++/CUDA backends (By Dec 2019)
- The only missing features compared to the old source-to-source backends:
- Vectorization on CPUs. Given most users who want performance are using GPUs (CUDA), this is given low priprity.
- Automatic shared memory utilization. Postponed until Feb/March 2020.
- The only missing features compared to the old source-to-source backends:
- (WIP) Tune the performance of the LLVM backend to match that of the legacy source-to-source backends (By the end of Jan 2020)
- (WIP) Redesign memory allocator
- (Jan 3, 2020) v0.3.20 released.
- Support for loops with
ti.static(ti.grouped(ti.ndrange(...)))
- Support for loops with
- (Jan 2, 2020) v0.3.19 released.
- Added
ti.atan2(y, x) - Improved error msg when using float point numbers as tensor indices
- Added
- (Jan 1, 2020) v0.3.18 released.
- Added
ti.GUIclass - Improved the performance of performance
ti.Matrix.fill
- Added
- (Dec 31, 2019) v0.3.17 released.
- Fixed cuda context conflict with PyTorch (thanks to @Xingzhe He for reporting)
- Support
ti.Matrix.T()for transposing a matrix - Iteratable
ti.static(ti.ndrange) - Fixed
ti.Matrix.identity() - Added
ti.Matrix.one()(create a matrix with 1 as all the entries) - Improved
ir_printeron SNodes - Better support for
dynamicSNodes.Struct-for'sondynamicnodes supportedti.lengthandti.appendto query and manipulate dynamic nodes
- (Dec 29, 2019) v0.3.16 released.
- Fixed ndrange-fors with local variables (thanks to Xingzhe He for reporting this issue)
- (Dec 28, 2019) v0.3.15 released.
- Multi-dimensional parallel range-for using
ti.ndrange:
- Multi-dimensional parallel range-for using
@ti.kerneldeffill_3d(): # Parallelized for all 3 <= i < 8, 1 <= j < 6, 0 <= k < 9fori, j, kinti.ndrange((3, 8), (1, 6), 9): x[i, j, k] =i+j+k- (Dec 28, 2019) v0.3.14 released.
- GPU random number generator support for more than 1024x1024 threads
- Parallelized element list generation on GPUs. Struct-fors significantly sped up.
tiandtid(debug mode) CLI commands
- (Dec 26, 2019) v0.3.13 released.
ti.appendnow returns the list length before appending- Fixed for loops with 0 iterations
- Set
ti.get_runtime().set_verbose_kernel_launch(True)to log kernel launches - Distinguish
/and//following the Python convention - Allow using local variables as kernel argument type annotations
- (Dec 25, 2019) v0.3.11 released.
- Support multiple kernels with the same name, especially in the OOP cases where multiple member kernels share the same name
- Basic
dynamicnode support (ti.append,ti.length) in the new LLVM backend - Fixed struct-for loops on 0-D tensors
- (Dec 24, 2019) v0.3.10 released.
assert <condition>statement supported in Taichi kernels.- Comparison operator chaining (e.g.
1 < x <3) supported in Taichi kernels.
- (Dec 24, 2019) v0.3.9 released.
ti.classfuncdecorator for functions within adata_orientedclass[Expr/Vector/Matrix].to_torchnow has a extra argumentdevice, which specifies the device placement for returned torch tensor, and should have typetorch.device. Default=None.- Cross-device (CPU/GPU) taichi/PyTorch interaction support, when using
to_torch/from_torch. - #kernels compiled during external array IO significantly reduced (from
matrix sizeto1)
- (Dec 23, 2019) v0.3.8 released.
- Breaking change:
ti.data_orienteddecorator introduced. Please decorate all your Taichi data-oriented objects using this decorator. To invoke the gradient versions ofclassmethod, for example,A.forward, simply useA.forward.grad()instead ofA.forward(__gradient=True)(obsolete).
- Breaking change:
- (Dec 22, 2019) v0.3.5 released.
- Maximum tensor dimensionality is 8 now (used to be 4). I.e., you can now allocate up to 8-D tensors.
- (Dec 22, 2019) v0.3.4 released.
- 2D and 3D polar decomposition (
R, S = ti.polar_decompose(A, ti.f32)) and svd (U, sigma, V = ti.svd(A, ti.f32)) support. Note thatsigmais a3x3diagonal matrix. - Fixed documentation versioning
- Allow
expr_initwithti.core.DataTypeas inputs, so thatti.core.DataTypecan be used asti.funcparameter
- 2D and 3D polar decomposition (
- (Dec 20, 2019) v0.3.3 released.
- Loud failure message when calling nested kernels. Closed #310
DiffTaichiexamples moved to a standalone repo- Fixed documentation versioning
- Correctly differentiating kernels with multiple offloaded statements
- (Dec 18, 2019) v0.3.2 released
Vector.normnow comes with a parametereps(=0by default), and returnssqrt(\sum_i(x_i ^ 2) + eps). A non-zeroepssafe guards the operator's gradient on zero vectors during differentiable programming.
- (Dec 17, 2019) v0.3.1 released.
- Removed dependency on
glibc 2.27
- Removed dependency on
- (Dec 17, 2019) v0.3.0 released.
- Documentation significantly improved
breakstatements supported in while loops- CPU multithreading enabled by default
- (Dec 16, 2019) v0.2.6 released.
ti.GUI.set_image(np.ndarray/Taichi tensor)- Inplace adds are atomic by default. E.g.,
x[i] += jis equivalent toti.atomic_add(x[i], j) ti.funcarguments are forced to pass by valuemin/maxcan now take more than two arguments, e.g.max(a, b, c, d)- Matrix operators
transposed,trace,polar_decompose,determinantpromoted totiscope. I.e., users can now useti.transposed(M)instead ofti.Matrix.transposed(M) ti.get_runtime().set_verbose(False)to eliminate verbose outputs- LLVM backend now supports multithreading on CPUs
- LLVM backend now supports random number generators (
ti.random(ti.i32/i64/f32/f64)
- (Dec 5, 2019) v0.2.3 released.
- Simplified interaction between
Taichi,numpyandPyTorchtaichi_scalar_tensor.to_numpy()/from_numpy(numpy_array)taichi_scalar_tensor.to_torch()/from_torch(torch_array)
- Simplified interaction between
- (Dec 4, 2019) v0.2.2 released.
- Argument type
ti.ext_arr()now takes PyTorch tensors
- Argument type
- (Dec 3, 2019) v0.2.1 released.
- Improved type mismatch error message
- native
min/maxsupprt - Tensor access index dimensionality checking
Matrix.to_numpy,Matrix.zero,Matrix.identity,Matrix.fill- Warning instead of error on lossy stores
- Added some initial support for cross-referencing local variables in different offloaded blocks.
- (Nov 28, 2019) v0.2.0 released.
- More friendly syntax error when passing non-compile-time-constant values to
ti.static - Systematically resolved the variable name resolution issue
- Better interaction with numpy:
numpyarrays passed as ati.ext_arr()[examples]i32/f32/i64/f64data type support for numpy- Multidimensional numpy arrays now supported in Taichi kernels
Tensor.to_numpy()andTensor.from_numpy(numpy.ndarray)supported [examples]- Corresponding PyTorch tensor interaction will be supported very soon. Now only 1D f32 PyTorch tensors supproted when using
ti.ext_arr(). Please use numpy arrays as intermediate buffers for now
- Indexing arrays with an incorrect number of indices now results in a syntax error
- Tensor shape reflection: [examples]
Tensor.dim()to retrieve the dimensionality of a global tensorTensor.shape()to retrieve the shape of a global tensor- Note the above queries will cause data structures to be materialized
struct-for(e.g.for i, j in x) now supports iterating over tensors with non power-of-two dimensions- Handy tensor filling: [examples]
Tensor.fill(x)to set all entries toxMatrix.fill(x)to set all entries tox, wherexcan be a scalar orti.Matrixof the same size
- Reduced python package size
struct-forwith grouped indices for better metaprogramming, especially in writing dimensionality-independent code, in e.g. physical simulation: [examples]
- More friendly syntax error when passing non-compile-time-constant values to
forIinti.grouped(x): # I is a vector of size x.dim() and data type i32x[I] =0# If tensor x is 2D forIinti.grouped(x): # I is a vector of size x.dim() and data type i32y[I+ti.Vector([0, 1])] =I[0] +I[1] # is equivalent tofori, jinx: y[i, j+1] =i+j(Nov 27, 2019) v0.1.5 released.
- Better modular programming support
- Disalow the use of
ti.staticoutside Taichi kernels - Documentation improvements (WIP)
- Codegen bug fixes
- Special thanks to Andrew Spielberg and KLozes for bug report and feedback.
(Nov 22, 2019) v0.1.3 released.
- Object-oriented programming. [Example]
- native Python function translation in Taichi kernels:
- Use
printinstead ofti.print - Use
int()instead ofti.cast(x, ti.i32)(orti.cast(x, ti.i64)if your default integer precision is 64 bit) - Use
float()instead ofti.cast(x, ti.f32)(orti.cast(x, ti.f64)if your default float-point precision is 64 bit) - Use
absinstead ofti.abs - Use
ti.static_printfor compile-time printing
- Use
(Nov 16, 2019) v0.1.0 released. Fixed PyTorch interface.
(Nov 12, 2019) v0.0.87 released.
- Added experimental Windows support with a [known issue] regarding virtual memory allocation, which will potentially limit the scalability of Taichi programs (If you are a Windows expert, please let me know how to solve this. Thanks!). Most examples work on Windows now.
- CUDA march autodetection;
- Complex kernel to override autodiff.
(Nov 4, 2019) v0.0.85 released.
ti.stop_gradfor stopping gradients during backpropagation. [Example];- Compatibility improvements on Linux and OS X;
- Minor bug fixes.
(Nov 1, 2019) v0.0.77 released.
- Python wheels now support OS X 10.14+;
- LLVM is now the default backend. No need to install
gcc-7orclang-7anymore. To use legacy backends,export TI_LLVM=0; - LLVM compilation speed is improved by 2x;
- More friendly syntax error messages.
(Oct 30, 2019) v0.0.72 released.
- LLVM GPU backend now as fast as the legacy (yet optimized) CUDA backend. To enable,
export TI_LLVM=1; - Bug fixes: LLVM
struct forlist generation.
- LLVM GPU backend now as fast as the legacy (yet optimized) CUDA backend. To enable,
(Oct 29, 2019) v0.0.71 released. LLVM GPU backend performance greatly improved. Frontend compiler now emits readable syntax error messages.
(Oct 28, 2019) v0.0.70 released. This version comes with experimental LLVM backends for x86_64 and CUDA (via NVVM/PTX). GPU kernel compilation speed is improved by 10x. To enable, update the taichi package and
export TI_LLVM=1.(Oct 24, 2019) Python wheels (v0.0.61) released for Python 3.6/3.7 and CUDA 10.0/10.1 on Ubuntu 16.04+. Contributors of this release include Yuanming Hu, robbertvc, Zhoutong Zhang, Tao Du, Srinivas Kaza, and Kenneth Lozes.
(Oct 22, 2019) Added support for kernel templates. Kernel templates allow users to pass in taichi tensors and compile-time constants as kernel parameters.
(Oct 9, 2019) Compatibility improvements. Added a basic PyTorch interface. [Example].
Notes:
- You still need to clone this repo for demo scripts under
examples. You do not need to executeinstall.pyordev_setup.py. After installation usingpipyou can simply go toexamplesand execute, e.g.,python3 mpm_fluid.py. - Make sure you clear your legacy Taichi installation (if applicable) by cleaning the environment variables (delete
TAICHI_REPO_DIR, and remove legacy taichi fromPYTHONPATH) in your.bashrcor.zshrc. Or you can simply do this in your shell to temporarily clear them:
export PYTHONPATH= export TAICHI_REPO_DIR= The Taichi Library [Legacy branch]
Taichi is an open-source computer graphics library that aims to provide easy-to-use infrastructures for computer graphics R&D. It's written in C++14 and wrapped friendly with Python.
- May 17, 2019: Giga-Voxel SPGrid Topology Optimization Solver is released!
- March 4, 2019: MLS-MPM/CPIC solver is now MIT-licensed!
- August 14, 2018: MLS-MPM/CPIC solver reloaded! It delivers 4-14x performance boost over the previous state of the art on CPUs.











