DaemonMode.jl
actix-web
DaemonMode.jl | actix-web | |
---|---|---|
22 | 171 | |
269 | 20,290 | |
- | 1.2% | |
4.7 | 9.1 | |
5 months ago | 3 days ago | |
Julia | Rust | |
MIT License | Apache License 2.0 |
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DaemonMode.jl
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Potential of the Julia programming language for high energy physics computing
Thats for an entry point, you can search `Base.@main` to see a little summary of it. Later it will be able to be callable with `juliax` and `juliac` i.e. `~juliax test.jl` in shell.
DynamicalSystems looks like a heavy project. I don't think you can do much more on your own. There have been recent features in 1.10 that lets you just use the portion you need (just a weak dependency), and there is precompiletools.jl but these are on your side.
You can also look into https://github.com/dmolina/DaemonMode.jl for running a Julia process in the background and do your stuff in the shell without startup time until the standalone binaries are there.
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Julia 1.9.0 lives up to its promise
> If I were to use e.g. Rust with polars, load time would be virtually none.
Because you're compiling...
And if you need to do the same in Julia, you should also pre-compile or some other method like https://github.com/dmolina/DaemonMode.jl (their demo shows loading a database, with subsequent loads after the first one taking roughly ~0.2% of the first)
- Administrative Scripting with Julia
- GNU Octave 8.1
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Ask HN: Why is Julia so underrated?
Well, not nicely certainly, but:
https://github.com/dmolina/DaemonMode.jl
> portable
Neither is python - it just relies on universal availability. Over time…
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Is Julia suitable today as a scripting language?
You can get around a lot of these problems with DaemonMode.jl though.
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Julia performance, startup.jl, and sysimages
You might want DaemonMode.jl
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Can I execute code in Julia REPL if I'm connected to a remote server?
https://github.com/dmolina/DaemonMode.jl can possibly help in the future. Leaving it here so that people know this is planned.
- Ask HN: Why hasn't the Deep Learning community embraced Julia yet?
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Compile for faster execution?
If you strongly prefer to run scripts though, then you can use the package https://github.com/dmolina/DaemonMode.jl in order to re-use a Julia session between multiple scripts, saving you recompilation time.
actix-web
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Empowering Web Privacy with Rust: Building a Decentralized Identity Management System
Actix Web Documentation: Detailed documentation on using Actix-web, including examples and best practices for building web applications with Rust.
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Ntex: Powerful, pragmatic, fast framework for composable networking services
I can't speak to the "is it any good" part, but (after a bit of research) I can share what I've found. I'll try to represent things as best as I understand, but I may have some finer details mixed up.
ntex is written by the same person that started actix-web, Nikolay Kim (fafhrd91 on GitHub). There was a bunch of drama a while back due to actix-web using (what many reasoned to be) avoidable unsafe code, which was later found to be buggy. Nikolay was pilloried online, resulting in him transferring leadership of actix-web to someone else. ntex is, as I understand it, essentially Nikolay picking back up on his ideals for what could have been actix-web, if people hadn't pushed him out of his own project.
How ntex compares to the pre-/post-leadership change of actix-web, I don't know.
Here are some jumping points if you want more of the backstory.
https://www.theregister.com/2020/01/21/rust_actix_web_framew...
https://steveklabnik.com/writing/a-sad-day-for-rust
https://github.com/actix/actix-web/issues/1289
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Building a REST API for Math Operations (+, *, /) with Rust, Actix, and Rhai🦀
Are you ready to embark on another journey in Rust? Today, we'll explore how to create a REST API that performs basic mathematical operations: addition, multiplication, and division. We'll use Actix, a powerful web framework for Rust, together with Rhai, a lightweight scripting language, to achieve our goal.
- Actix-Web: v4.5.0
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Getting Started with Actix Web - The Battle-tested Rust Framework
Within actix-web, middleware is used as a medium for being able to add general functionality to a (set of) route(s) by taking the request before the handler function runs, carrying out some operations, running the actual handler function itself and then the middleware does additional processing (if required). By default, actix-web has several default middlewares that we can use, including logging, path normalisation, access external services and modifying application state (through the ServiceRequest type).
- Show HN: Play Euchre with AI Bots
- Actix-Web: v4.4.0
- Choosing the Right Rust Web Framework: An Overview
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Building a Rust app with Perseus
Rust is a popular system programming language, known for its robust memory safety features and exceptional performance. While Rust was originally a system programming language, its application has evolved. Now you can see Rust in different app platforms, mobile apps, and of course, in web apps — both in the frontend and backend, with frameworks like Rocket, Axum, and Actix making it even easier to build web applications with Rust.
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Introducing SQLPage : write websites entirely in SQL
actix to handle HTTP requests
What are some alternatives?
julia - The Julia Programming Language
axum - Ergonomic and modular web framework built with Tokio, Tower, and Hyper
Makie.jl - Interactive data visualizations and plotting in Julia
Rocket - A web framework for Rust.
HTTP.jl - HTTP for Julia
Tide - Fast and friendly HTTP server framework for async Rust
FromFile.jl - Julia enhancement proposal (Julep) for implicit per file module in Julia
tonic - A native gRPC client & server implementation with async/await support.
julia-numpy-fortran-test - Comparing Julia vs Numpy vs Fortran for performance and code simplicity
hyper - An HTTP library for Rust
DataFramesMeta.jl - Metaprogramming tools for DataFrames
salvo - A powerful web framework built with a simplified design.