DNN-decompiler
glow
DNN-decompiler | glow | |
---|---|---|
4 | 6 | |
180 | 3,168 | |
- | 1.5% | |
0.8 | 8.2 | |
about 1 year ago | 10 days ago | |
Python | C++ | |
GNU General Public License v3.0 or later | Apache License 2.0 |
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DNN-decompiler
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Optimizing ML to run on the edge? [D]
Check out BTD, which targets "eight versions of three production DL compil- ers, TVM [22], Glow [85], NNFusion [64], which are de- veloped by Amazon, Facebook, and Microsoft, respectively." From there you can understand the internals of DL compilers.
- Decompiling x86 Deep Neural Network Executables
glow
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Accelerating AI inference?
Pytorch supports other kinds of accelerators (e.g. FPGA, and https://github.com/pytorch/glow), but unless you want to become a ML systems engineer and have money and time to throw away, or a business case to fund it, it is not worth it. In general, both pytorch and tensorflow have hardware abstractions that will compile down to device code. (XLA, https://github.com/pytorch/xla, https://github.com/pytorch/glow). TPUs and GPUs have very different strengths; so getting top performance requires a lot of manual optimizations. Considering the the cost of training LLM, it is time well spent.
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Decompiling x86 Deep Neural Network Executables
It's pretty clear its referring to the output of Apache TVM and Meta's Glow
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US government bans export of NVIDIA A100 to China and Russia, effective immediately
I also disagree with this. For example, Meta seems desperate about AI accelerators, and in fact is already doing "hardware customers develop software stack themselves" I mentioned above: Glow is that stack. Meta is doing Glow even if there is no promising AI accelerators right now, they are that desperate.
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If data science uses a lot of computational power, then why is python the most used programming language?
For reference: In Tensorflow and JAX, for example, the tensor gets compiled to the intermediate XLA format (https://www.tensorflow.org/xla), then passed to the XLA complier (https://github.com/tensorflow/tensorflow/tree/master/tensorflow/compiler/xla/service) or the new TFRT runtime (https://github.com/tensorflow/runtime/blob/master/documents/tfrt_host_runtime_design.md), or some more esoteric hardware (https://github.com/pytorch/glow).
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Esperanto Champions the Efficiency of Its 1,092-Core RISC-V Chip
The main reasons are hiring, and depth and breadth of the product.
Compilers are hard, device support is hard, the compiler community is small and closed source compilers quickly become weird tech islands.
https://github.com/pytorch/glow
- From Julia to Rust
What are some alternatives?
tvm - Open deep learning compiler stack for cpu, gpu and specialized accelerators
binsync - A reversing plugin for cross-decompiler collaboration, built on git.
serving - A flexible, high-performance serving system for machine learning models
XLA.jl - Julia on TPUs
StaticArrays.jl - Statically sized arrays for Julia
egg - egg is a flexible, high-performance e-graph library
runtime - A performant and modular runtime for TensorFlow
Catlab.jl - A framework for applied category theory in the Julia language
IRTools.jl - Mike's Little Intermediate Representation
Metatheory.jl - Makes Julia reason with equations. General purpose metaprogramming, symbolic computation and algebraic equational reasoning library for the Julia programming language: E-Graphs & equality saturation, term rewriting and more.
MacroTools.jl - MacroTools provides a library of tools for working with Julia code and expressions.