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Petalisp | lish | |
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17 | 24 | |
424 | 101 | |
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8.5 | 7.0 | |
about 2 months ago | 5 months ago | |
Common Lisp | Common Lisp | |
GNU Affero General Public License v3.0 | GNU General Public License v3.0 only |
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Petalisp
- Petalisp: Elegant High Performance Computing
- Is there a tutorial for automatic differentiation with petalisp?
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Is there a language with lisp syntax but C semantics?
While not "as fast as C" (C is not the absolute pinnacle of performance), Common Lisp is incredibly fast compared to the majority of programming languages around today. There is even a huge amount of ongoing work being done to make it faster still. We are seeing many interesting projects that make better use of the hardware in your computer (e.g. https://github.com/marcoheisig/Petalisp).
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Common Lisp Implementations in 2023
i think lisp-stat library is actually being developed. however one numerical cl library that doesnt get enough mention and is being constantly developed is petalisp for HPC
https://github.com/marcoheisig/Petalisp
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numericals - Performance of NumPy with the goodness of Common Lisp
However, if you have a lisp library that puts those semantics to use, then you could get it to employ magicl/ext-blas and cl-bmas to speed it up. (petalisp looks relevant, but I lack the background to compare it with APL.)
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New Lisp-Stat Release
> his means cl pagckages can be "done".
this is true if there is nothing functional that can be added to a package. however its very much not true for ml frameworks right now. new things are being added all the time in the field. however even in the package i linked you have the necessary ingredients for any deep learning model: cuda and back propagation. the other person mentioned convolution which i think is pretty trivial to implement but still, if you expect everything for you to be ready made then you should probably stick to tf and pytorch. if you want to explore the cutting edge and push the boundaries then i think common lisp is a good tool. as an aside it might also be interesting to note that a common lisp package (Petalisp) is being used for high performance computing by a german university
https://github.com/marcoheisig/Petalisp
- The Julia language has a number of correctness flaws
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When a young programmer who has been using C for several years is convinced that C is the best possible programming language and that people who don't prefer it just haven't use it enough, what is the best argument for Lisp vs C, given that they're already convinced in favor of C?
One trick is that Common Lisp can generate and compile code at runtime, whereas static languages typically do not have a compiler available at runtime. This lets you make your own lazy person's JIT/staged compiler, which is useful if some part of the problem is not known at compile-time. Such an approach has been used at least for array munging, type munging and regular expression munging.
lish
- Sharpscript: Lisp for Scripting
- Getting started with lisp
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Show HN: Mount Unix system into Common Lisp image
Wow, that's crazy O_o
Related:
- Lish allows to mix&match shell and Lisp code, with regular syntax. https://github.com/nibbula/lish/
$ echo ,*package*
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Improving REPL experience in terminal?
Now, it's only personal, but I like to fire one-off shell commands⦠can we escape the Lisp REPL or not? If not, we could use a shell pass-through, for example "! ls" with clesh. Ruricolist's cmd is nice to have too. This is becoming an heresy, but what if we could fire a shell command and interpret its result with a Lisp function, or mix and match the two? Lish is doing an awesome work already, although it's a difficult field. Interactive commands like sudo and htop work there, at least. It ships a Lisp REPL and a debugger for the terminal too (similar to Roswell, then).
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Can i use a lisp image as my init process?
The docs are here: https://github.com/nibbula/lish/tree/master/docs
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McCLIM respository migrates to Codeberg.
Common lisp shell that manages to bridge the unix world and commonlisp in an attractive way: https://github.com/nibbula/lish
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Lisp for scripting
Take a look at Lish, Common Lisp Shell: https://github.com/nibbula/lish/
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Using one executable image for everything
Github: https://github.com/vindarel/lish-init Docs: https://github.com/nibbula/lish/blob/master/docs/doc.org Examples: https://github.com/nibbula/lish/blob/master/docs/lish-examples.md Special notes: Beware the authors warning to not use it on a production system, it may eat file.
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Terminal Emulators Written in Common Lisp?
maybe see: https://github.com/nibbula/lish, via https://www.reddit.com/r/lisp/comments/ve3z3z/better_replshell/
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Any projects want/need help?
Hi there. I'd enjoy help on anything web development for openbookstore: https://github.com/OpenBookStore/openbookstore (especially now: setting up i18n) Or, we could work on the terminal REPL experience for the CIEL meta-package: https://github.com/ciel-lang/CIEL/ We could use a better base like cl-repl or better yet, Lish.
What are some alternatives?
awesome-cl - A curated list of awesome Common Lisp frameworks, libraries and other shiny stuff.
Programming-Language-Benchmarks - Yet another implementation of computer language benchmarks game
JWM - Cross-platform window management and OS integration library for Java
clesh - CLESH a very short and simple program, written in Common Lisp, that extends Common Lisp to embed shell code in a manner similar to perl's backtick.
cl-cuda - Cl-cuda is a library to use NVIDIA CUDA in Common Lisp programs.
shcl - SHell in Common Lisp
magicl - Matrix Algebra proGrams In Common Lisp.
nexus
StatsBase.jl - Basic statistics for Julia
CLFM - Common Lisp File Manager
Optimization.jl - Mathematical Optimization in Julia. Local, global, gradient-based and derivative-free. Linear, Quadratic, Convex, Mixed-Integer, and Nonlinear Optimization in one simple, fast, and differentiable interface.
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