Zygote.jl
pcopy
Zygote.jl | pcopy | |
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9 | 17 | |
1,439 | 304 | |
0.4% | - | |
8.1 | 2.6 | |
about 1 month ago | about 1 year ago | |
Julia | Go | |
GNU General Public License v3.0 or later | Apache License 2.0 |
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For example, an activity of 9.0 indicates that a project is amongst the top 10% of the most actively developed projects that we are tracking.
Zygote.jl
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Yann Lecun: ML would have advanced if other lang had been adopted versus Python
If you look at Julia open source projects you'll see that the projects tend to have a lot more contributors than the Python counterparts, even over smaller time periods. A package for defining statistical distributions has had 202 contributors (https://github.com/JuliaStats/Distributions.jl), etc. Julia Base even has had over 1,300 contributors (https://github.com/JuliaLang/julia) which is quite a lot for a core language, and that's mostly because the majority of the core is in Julia itself.
This is one of the things that was noted quite a bit at this SIAM CSE conference, that Julia development tends to have a lot more code reuse than other ecosystems like Python. For example, the various machine learning libraries like Flux.jl and Lux.jl share a lot of layer intrinsics in NNlib.jl (https://github.com/FluxML/NNlib.jl), the same GPU libraries (https://github.com/JuliaGPU/CUDA.jl), the same automatic differentiation library (https://github.com/FluxML/Zygote.jl), and of course the same JIT compiler (Julia itself). These two libraries are far enough apart that people say "Flux is to PyTorch as Lux is to JAX/flax", but while in the Python world those share almost 0 code or implementation, in the Julia world they share >90% of the core internals but have different higher levels APIs.
If one hasn't participated in this space it's a bit hard to fathom how much code reuse goes on and how that is influenced by the design of multiple dispatch. This is one of the reasons there is so much cohesion in the community since it doesn't matter if one person is an ecologist and the other is a financial engineer, you may both be contributing to the same library like Distances.jl just adding a distance function which is then used in thousands of places. With the Python ecosystem you tend to have a lot more "megapackages", PyTorch, SciPy, etc. where the barrier to entry is generally a lot higher (and sometimes requires handling the build systems, fun times). But in the Julia ecosystem you have a lot of core development happening in "small" but central libraries, like Distances.jl or Distributions.jl, which are simple enough for an undergrad to get productive in a week but is then used everywhere (Distributions.jl for example is used in every statistics package, and definitions of prior distributions for Turing.jl's probabilistic programming language, etc.).
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How long till Julia could be the default language to learn ML?
I think julia has a lot going for it. I feel like autograd is one of the bigger ones given that it's a language feature basically (https://github.com/FluxML/Zygote.jl for reference). I think the ecosystem is a bit of an uphill battle though.
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Neural networks with automatic differentiation.
Also check out https://github.com/FluxML/Zygote.jl which is the AD engine
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PyTorch 1.8 release with AMD ROCm support
> There's sadly no performant autodiff system for general purpose Python.
Like there is for general purpose Julia? (https://github.com/FluxML/Zygote.jl)
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The KimKlone Microcomputer
Thanks again. Like you said it is fun to dream (ask the "Scheme Machine" guys sometime about how they would go about it now), but practically with technology like Julia's Zygote:
https://github.com/FluxML/Zygote.jl
the efficiency of autodiff might be similar to that of an opcode anyway.
So, how did DEC do on the Alpha processor? I always heard good things about it--IIRC it was based on the VAX, but 64 bit. I learned PDP-11 assembler at RPI, during their college program for high school students in about 1984. We hand assembled code and really got to know the architecture.
- FluxML/Zygote.jl -- v0.6.3 should implement a `jacobian` function but doesn't?
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Did the makers of Zygote.jl use category theory to define their approach to computable autodiff?
and make that computable. It seems like line 88 --> 90 of this file in Zygote does that: https://github.com/FluxML/Zygote.jl/blob/master/src/compiler/chainrules.jl
- Study group: Structure and Interpretation of Classical Mechanics in Clojure
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Ask HN: Show me your Half Baked project
It's super powerful
For example Zygote.jl (https://github.com/FluxML/Zygote.jl) implements reverse mode automatic differentiation, by defining a function that is a generated transformation of the function being differentiated.
pcopy
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File share via HTTP link?
nopaste/pcopy, that you can selfhost. Just a single binary file.
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Self Hosted Pastebin Website
Heyy I made a thing like that. https://github.com/binwiederhier/pcopy
- Show HN: A tool to send push notifications to your phone, written in Go
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Show me your REST APIs 😊
And another one here:https://github.com/binwiederhier/pcopy (same, see server.go)
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Looking for Docker based Self Hosted Pastebin
I host a version of it on https://nopaste.net
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Question about bytes and ioutil.ReadAll
re 1: as fellow gopher has said, `io.CopyN` is your friend, though I have recently implemented a similar thing that may be interesting to you. I implemented a `Peak()` method that will read up to N bytes and return a reader that can be read as if it's the original reader, but you'll be able to get the `PeakedBytes` from it too: https://github.com/binwiederhier/pcopy/blob/master/util/peak.go
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Transfer.sh – Easy file sharing from the command line
Since we're listing alternatives, here's the one I made: https://nopaste.net -- It's open source and available on https://github.com/binwiederhier/pcopy
curl usage is available via: "curl nopaste.net".
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I made a temporary file host, nopaste and clipboard across machines. It can be used from the Web UI, via a CLI or without a client by using curl. It's open source, and I host a demo on https://nopaste.net
I have an issue on github (https://github.com/binwiederhier/pcopy/issues/20) to "modernize" the JS code a little, i.e. use "class"es, modules, strict mode, consts, exports, ...
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Any way of reducing the verbosity at the web development with Go?
If you want to see them implemented, see https://github.com/binwiederhier/pcopy/blob/284b6502fa736951b4ace0dfc62152ff707639ae/server.go
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pcopy: secure copy/paste across machines, with a web UI
Source is here: https://github.com/binwiederhier/pcopy
What are some alternatives?
Enzyme - High-performance automatic differentiation of LLVM and MLIR.
meross-local-mqtt - A pyscript-based management of Meross devices connected to a local MQTT broker
ForwardDiff.jl - Forward Mode Automatic Differentiation for Julia
pastefy - Pastefy is an Open Source self-hostable Pastebin.
Tullio.jl - â…€
tinyjam - A radically simple, zero-configuration static site generator in JavaScript
TensorFlow.jl - A Julia wrapper for TensorFlow
ffsend - :mailbox_with_mail: Easily and securely share files from the command line. A fully featured Firefox Send client.
Flux.jl - Relax! Flux is the ML library that doesn't make you tensor
wcp
InvertibleNetworks.jl - A Julia framework for invertible neural networks
godbledger - Accounting Software with GRPC endpoints and SQL Backends