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Mojo 1.0 Beta (mojolang.org)
totalperspectiv 2 hours ago [-]
Having written a lot of Mojo over the last two year, just for fun, it's a really cool language. Ownership model adjacent to Rust, comptime that is more powerful than Zig, Rich type system, first class SIMD support, etc.

Performance wise it's the first language in long time that isn't just an LLVM wrapper. LLVM is still involved, but they are using it differently than say, Rust or Zig.

Very excited for Mojo once it's open sourced later this year.

ainch 16 hours ago [-]
As someone in ML who's interested in performance, I'm keen for Mojo to succeed - especially the prospect of mixing GPU and CPU code in the same language. But I do wonder if the changes they're making will dissuade Python devs. The last time I booted it up, I tried to do some basic string manipulation just to test stuff out, but spent an hour puzzling out why `var x = 'hello'; print(x[3])` didn't work, and neither did `len(x)` (turns out they'd opted for more specific byte-vs-codepoint representations, but the docs contradicted the actual implementation).

Hopefully they get Mojo to a good place for more general ML, but at the moment it still feels quite limited - they've actually deprecated some of the nice builtins they had for Tensors etc... For now I'll stick with JAX and check in periodically, fingers crossed.

sureglymop 14 hours ago [-]
Mojo is cool but I just don't understand the python backwards compat thing. They're holding themselves back with that.

All the flaws I can think of in Kotlin are due to the Java compatibility. They could've made it work here by being more explicit but the way it currently works seems doomed.

geodel 5 hours ago [-]
> All the flaws I can think of in Kotlin are due to the Java compatibility.

All the use of Kotlin in industry are due to Java compatibility. Else there would be ~0% marketshare of Kotlin.

loglog 2 hours ago [-]
Mojo is NOT Python compatible (although they initially wanted it to be). So they got all downsides without the upsides.
jasonjmcghee 2 hours ago [-]
There is unfortunately likely a lot of truth to this. I like Kotlin, but, anecdotally, I've only ever chosen it due to needing JVM
davidatbu 5 hours ago [-]
I'm pretty sure that they have decided that backwards-compat is not the best path for Mojo. Matter of fact, the following is the _last_ item on the roadmap on the home page:

> Supporting more of Python's dynamic features like classes, inheritance, and untyped variables to maximize compatibility with Python code.

What's more, note how it says "to maximize compatibility" not "to achieve full compatibility."

pjmlp 10 hours ago [-]
Same story with C and Objective-C, C and C++, JavaScript and TypeScript, Java and Scala, Java and Clojure,.....

Yes the underlying platform they based their compatibility on, is the reason they got some design flaws, some more than other.

However that compatibility is the reason they won wide adoption in first place.

tasuki 10 hours ago [-]
They coulda made it Scala!
digdugdirk 4 hours ago [-]
It does almost seem like they're trying to recreate the Nim programming language in this regard.
coldtea 14 hours ago [-]
>As someone in ML who's interested in performance, I'm keen for Mojo to succeed - especially the prospect of mixing GPU and CPU code in the same language. But I do wonder if the changes they're making will dissuade Python devs.

Unless it's open sourced, it's a moot point, as most Python devs wont come anyway.

ktm5j 5 hours ago [-]
I'm really not sure that's true.. I can't think of a single Python dev I've worked with who cared about opensource. All they cared about is the language being easy and free to use.
physicsguy 2 hours ago [-]
The people that write the libraries care, why do you think Python is where we’re writing ML code and not MATLAB?
zbentley 49 minutes ago [-]
Mojo is free, though. MATLAB costing money is a bigger issue than it being closed source. R was too late to the game and catered too much to professional math/stats/datascience people rather than programming generalists. Python (with native code interop) hit the sweet spot for breadth/accessibility to the market and capability.
IshKebab 50 minutes ago [-]
Because MATLAB isn't free to use...

(Among other reasons, but that's easily the main one.)

flakiness 5 hours ago [-]
https://mojolang.org/docs/roadmap/#contributing-to-mojo

> We're committed to open-sourcing all of Mojo, but the language is still very young and we believe a tight-knit group of engineers with a common vision moves faster than a community-driven effort. So we will continue to plan and prioritize the Mojo roadmap within Modular until more of its internal architecture is fleshed out.

I hope they stick to their original promise. And the 1.0 release would be a great time to deliver this.

chrislattner 2 hours ago [-]
Indeed, this fall 100%
bmandale 4 hours ago [-]
open source does not mean open community. you can just throw tarballs over the wall
adamnemecek 5 hours ago [-]
This is exactly how the open sourcing of Swift went so I imagine it will be the same.
otabdeveloper4 4 hours ago [-]
> We're committed to open-sourcing all of Mojo

Translated from corporatese it means "it will never happen".

jlundberg 3 hours ago [-]
With Chris Lattners track record, there is little reason to doubt they actually will open source this.
ModernMech 3 hours ago [-]
It’s not Chris Lattner who gets to make the call though. He has investors to the tune of $300 million, and making them happy is the reason it hasn’t been done yet. A lot of people, very reasonably, relieve it’s not possible to satisfy them and also the development community, and when when push comes to shove it’ll be the investors who win because they have the money. So it’s not Chris Lattner’s track record that makes people worried — it’s the track record of investors choosing control over openness, which is a pretty solid record.
MohamedMabrouk 3 hours ago [-]
how is it in investors self interest to keep a programming language (some thing which no one makes money on today) closed? It also means that library authors can't reason about their code well enough because they don't know the language internals, this also hurts ecosystem growth. Their is no money to be made with a closed language that no body uses. probably modular investors know this.
Certhas 14 hours ago [-]
This is a bit ironic, given that people seem to have no problem using CUDA all over the place... Plus they promise to open source with the 1.0 release. We'll see...
pjmlp 5 hours ago [-]
CUDA won because AMD and Intel made a mess out of OpenCL, and Khronos had no vision to support anything beyond C99 dialect until it was too late.

Doesn't matter if it was closed, when the alternatives were much worse.

physicsguy 2 hours ago [-]
Plus NVIDIA clocked that it was also the developer library ecosystem and even now there just aren’t equivalents. The AMD rocFFT library wasn’t even complete compared to FFTW until very recently and cuFFT did that more than a decade ago
zozbot234 5 hours ago [-]
SYCL is the de facto successor to OpenCL that supports higher level languages. So the vision was and is there.
pjmlp 5 hours ago [-]
As mentioned, Khronos only changed their mind when it was too late.

I can also recite the whole story, the missteps in OpenCL 2. , OpenCL C++, the OpenCL 3.0 reboot, how SYCL came to, CodePlay only proper available implementation, Intel acquisition of CodePlay and everything else.

_aavaa_ 11 hours ago [-]
I don’t see irony there. We’re locked into CUDA due to past decisions. And in new decisions we don’t want to repeat that mistake.
5 hours ago [-]
MohamedMabrouk 13 hours ago [-]
I think that plan is to open source the compiler with 1.0 which is expected to be this summer. so in ~3-4 months time.
coppsilgold 2 hours ago [-]
Python is basically the master glue language at this point.

If more than a few percent of execution time is spent in Python you are probably doing it wrong.

Personally I don't even understand why Cython is a thing, just write performance critical functions in other languages:

<https://pypi.org/project/rustimport/>

<https://pypi.org/project/import-zig/>

Note that you can even start threads in those languages and use function calls as pseudo-RPC. All without an overly complex build system.

sirfz 11 minutes ago [-]
Cython is a no-brainer really. You write the same language with immense speedup (matching what the "other languages" can achieve at much less effort).

Also tools like numba can beat them all at way less effort.

Imho, dropping into other languages should be the last resort in any project.

MohamedMabrouk 2 hours ago [-]
Mojo aims to be this (other language) arguably with easier programming model that rust, familiar syntax to python devs, and a modern design in general. Its stated goal now, is the easiest way to extend python. it provides the same interface for zero-hassle import of .mojo files
physicsguy 2 hours ago [-]
Cython and PyBind and Nanobind are good for wrapping an existing library written in C++ and crafting an interface that doesn’t feel like it’s a C++ one. They were a big step from ctypes and SWIG
modeless 16 hours ago [-]
When I first heard about Mojo I somehow got the impression that they intended to make it compatible with existing Python code. But it seems like they are very far away from that for the foreseeable future. I guess you can call back and forth between Python and Mojo but Mojo itself can't run existing Python code.
ainch 16 hours ago [-]
In their original pitch that was definitely part of it: take Python code, add type hints, get a big speedup. As they've built it out it seems to have diverged.
melodyogonna 3 hours ago [-]
It was always going to be a long-term thing, if it were even possible. You can't make a compiler that can compile Python into efficient machine code in just a year (which was how long Mojo had been in development when it was announced).

The messaging was changed because people got sold too hard on that, and kept trying Mojo with the expectation that it could compile existing Python code when it couldn't. What Modular did was change the messaging to reflect what Mojo is today, and provide a roadmap[1] of what they hope it'll turn into in the future. As it evolves, the messaging will evolve with it to continue reflecting current capabilities.

1. https://mojolang.org/docs/roadmap/

dtj1123 15 hours ago [-]
They also advertised a 36,000x speedup over equivalent Python if I remember correctly, without at any point clarifying that this could only be true in extreme edge cases. Feels more like a pump-dump cryptography scheme than an honest attempt to improve the Python ecosystem.
jdiaz97 5 hours ago [-]
The modern way to advertise: lie a lot.
dtj1123 2 hours ago [-]
Crypto*
boxed 15 hours ago [-]
Well... the article made self deprecating fun of the click bait title, showed the code every step of the way, and actually did achieve the claim (albeit with wall clock time, not CPU/GPU time).

And it wasn't "equivalent python", whatever that means, they did loop unrolling and SIMD and stuff. That can't be done in pure python at all, so there literally is no equivalent python.

dtj1123 1 hours ago [-]
Watch Chris Lattner's interview with Lex Fridman. He talks about mojo as a 36,000x speedup over Python without any indication that you need to think about vectorization to achieve it.
Certhas 14 hours ago [-]
If you paid very close attention it was actually clear from the start that the idea was to build a next gen systems language, taking the lessons from Swift and Rust, targeting CPU/GPU/Heterogeneous targets, and building around MLIR. But then also building it with an eye towards eventually embedding/extending Python relatively easily. The Python framing almost certainly helped raise money.

Chris Lattner talked more about the relationship between MLIR and Mojo than Python and Mojo.

pjmlp 13 hours ago [-]
So basically Chapel, which is actually being used in HPC.
Certhas 9 hours ago [-]
I don't know Chapel in detail, I was more thinking Hylo. I don't think Chapel has a clear value/reference semantics or ownership/lifetime story? Am I wrong here?

The Mojo docs include two sections dedicated to these topics:

https://mojolang.org/docs/manual/values/

https://mojolang.org/docs/manual/lifecycle/

The metaprogramming story seems to take inspiration from Zig, but the way comptime, parameters and ownership blend in Mojo seems relatively novel to me (as a spectator/layman):

https://mojolang.org/docs/manual/metaprogramming/

I was sort of paying attention to all these ideas and concepts two-three years ago from the sidelines (partially with the idea to learn how Julia could potentially evolve) but it's far from my area of expertise, I might well be getting stuff wrong.

pjmlp 9 hours ago [-]
You make use of 'owned', 'shared', 'unmanaged', 'borrowed'.

https://chapel-lang.org/docs/language/spec/classes.html#clas...

Certhas 9 hours ago [-]
I see, seems like the design is not complete and a work in progress (which is the same for Mojos Origins concept I think):

"The details of lifetime checking are not yet finalized or specified. Additional syntax to specify the lifetimes of function returns will probably be needed."

I think Rust proved that lifetimes, ownership and borrow checking can be useful for a mainstream language. The discussions in the Mojo context revolve on how to improve the ergonomics of these versus Rust.

pjmlp 8 hours ago [-]
Contrary to Mojo, plenty of people are using it in HPC, and is open source.

https://hpsf.io/blog/2026/hpsf-project-communities-to-gather...

https://developer.hpe.com/platform/chapel/home

See "Projects Powered by Chapel".

Certhas 7 hours ago [-]
So? What point are you making? A different language with different design philosophy, has success in a different niche than Mojo is targeting?
pjmlp 7 hours ago [-]
One is used in production already by key laboratories in HPC research, the other wants to be and is far away from being 1.0.

Chapel current version is 2.8.0.

MohamedMabrouk 6 hours ago [-]
I don't understand this framing, so? Cpp, Julia are more widely adopted, used in HPC. it does not mean that people shouldn't start, learn new languages.
pjmlp 5 hours ago [-]
In the LLM age, maybe the focus should be elsewhere instead of syntax.
MohamedMabrouk 4 hours ago [-]
is that so? People are still reading their code to understand it and ask (or make modifications). even in the (LLM age) language design, readability is still as relevant as before.

I don't see the superficial comparisons between why this new Y when we have X are not really helpful. Languages and system got adopted not for their stated goal only, but for the underlying details capabilities, good design which translates to better user experience and ecosystem growth.

melodyogonna 6 hours ago [-]
Mojo isn't that far away from 1.0. Some point this year is the target
mastermage 15 hours ago [-]
That was what was originaly advertised, they wanted to be what Kotlin is to Java but for Python. They quickly turned tails on this.

That and the not completely open source development model is what has always felt very vaporwary to me.

victorio 15 hours ago [-]
From the site:

Python interop > Mojo natively interoperates with Python so you can eliminate performance bottlenecks in existing code without rewriting everything. You can start with one function, and scale up as needed to move performance-critical code into Mojo. Your Mojo code imports naturally into Python and packages together for distribution. Likewise, you can import libraries from the Python ecosystem into your Mojo code.

fwip 4 hours ago [-]
That's because Mojo told you that. https://web.archive.org/web/20231221132631/https://docs.modu...

> Our long-term goal is to make Mojo a superset of Python (that is, to make Mojo compatible with existing Python programs). Python programmers should be able to use Mojo immediately, and be able to access the huge ecosystem of Python packages that are available today.

simplyvibecode 2 hours ago [-]
Mojo has refocused on Python interoperability vs. superset, though yes, the original idea was being a superset.

It's possible the language evolves to that in the longterm, but it's not the short term goal.

We published a Mojo roadmap on Mojolang.org that helps contextualize this: https://mojolang.org/docs/roadmap/

Note: I work at Modular

pansa2 14 hours ago [-]
> they intended to make it compatible with existing Python code

That was the original claim, but it was quietly removed from the website. (Did they fall for the common “Python is a simple language” misconception?).

Now they promise I can “write like Python”, but don’t even support fundamentals like classes (which are part of stage 3 of the roadmap, but they’re still working on stage 1).

Maybe Mojo will achieve all its goals, but so far has been over-promising and under-delivering - it’s starting to remind me of the V language.

simplyvibecode 2 hours ago [-]
[dead]
samuell 16 hours ago [-]
The communication had me try to run some very simple python code assuming it of course should run (reading files line by line), which didn't work at all.

For me this was a big disappointment, and I wonder how much this has backfired across developers.

kjsingh 15 hours ago [-]
isn't that achieved by Codon?
haskman 16 hours ago [-]
Really the only thing good about Python is its ecosystem.
coldtea 14 hours ago [-]
Nah, it's also a very fine language for getting an idea down quickly.

Might not have the niceties purists like, but perhaps that's exactly it's a great language for that.

It's like executable pseudocode, and unlike other languages, all the ceremony is optional.

People flocked to it way before it became a "must" for ML and CS thanks to that ecosystem becoming dominant.

mastermage 15 hours ago [-]
but that ecosystem is realy good.
haskman 6 hours ago [-]
That it is
jdiaz97 5 hours ago [-]
They just lie a lot, they make fake blogs with fake benchmarks and then they delete them
fibonacci112358 16 hours ago [-]
Sadly for them, Nvidia didn't stay still in the meantime and created the next generation of CUDA, CuTile for Python and soon for C++, through CUDA Tile IR (using a similar compiler stack based on MLIR).

Event though it's not portable, it will likely have far greater usage than Mojo just by being heavely promoted by Nvidia, integrated in dev tools and working alongside existing CUDA code.

Tile IR was more likely a response to the threat of Triton rather than Mojo, at least from the pov of how easy is to write a decently performing LLM kernel.

pjmlp 13 hours ago [-]
And for not staying behind, Intel and AMD are doing similar efforts, and then we have the whole CPython JIT finally happening after so many attempts.

Not to mention efforts like GraalPy and PyPy.

And all these efforts work today in Windows, which is quite relevant in companies where that is the assigned device to most employees, even if the servers run Linux distros.

I keep wondering if this isn't going to be another Swift for Tensorflow kind of outcome.

IshKebab 3 hours ago [-]
The CPython JIT has barely had any impact on its performance. CPython is always going to be dog slow.
melodyogonna 15 hours ago [-]
People keep mistaking Mojo as good syntax for writing GPU code, and so imagine Nvidia's Python frameworks already do that. But... would CuTile work on AMD GPUs and Apple Silicon? Whatever Nvidia does will still have vendor lock-in.
pjmlp 13 hours ago [-]
Indeed, but Intel and AMD are also upping their Python JIT game, and in the end Mojo code isn't portable anyway.

You always need to touch the hardware/platform APIs at some level, because even if the same code executes the same, the observed performance, or in the case of GPUs the numeric accuracy has visible side effects.

melodyogonna 10 hours ago [-]
It is portable in that you can write code to target multiple platforms in the same codebase. Mojo has powerful compile-time metaprogramming that allows you to tell the compiler how to specialise using a compile-time conditional, e.g. https://github.com/modular/modular/blob/9b9fc007378f16148cfa...

Of course, this won't be necessary in most cases if you're building on top of abstractions provided by Modular.

You don't get this choice using vendor-specific libraries; you're locked into this or that.

pjmlp 10 hours ago [-]
Yes you do, you get PyTorch or whatever else, built on top of those vendor-specific libraries.

That is the thing with Mojo, when it arrives as 1.0, the LLM progress and the investment that is being done in GPU JITs for Python, make it largely irrelevant for large scale adoption.

Sure some customers might stay around, and keep Modular going, the gold question is how many.

melodyogonna 6 hours ago [-]
Pytorch is built on an amalgamation of these different frameworks, not on one of them used to target different vendors.
pjmlp 5 hours ago [-]
The point still stands as middleware.
melodyogonna 5 hours ago [-]
Have you ever wondered how much work would have been saved by the Pytorch team if they could have used just Cuda for all the platforms they support? If they didn't have to write compatibility abstractions or layers, and instead just focused on the problem of training neural networks? What if all the primitives they used from Cuda and cuDNN worked just as well on AMD GPUs, Apple GPUs, and probably Google's TPUs as they did on Nvidia GPUs?

Mojo and Modular's Max platform would do to heterogeneous compute what LLVM did to programming language development. People who dismiss the real value offering here know nothing. Modular have already raised $350m+ from industry giants (including Nvidia and Google) to solve this, and I believe they will.

brcmthrowaway 15 hours ago [-]
Interesting, how big impact is CuTile?
pjmlp 13 hours ago [-]
Julia is more mature for the same purposes, and since last year NVidia is having feature parity between Python and C++ tooling on CUDA.

Python cuTile JIT compiler allows writing CUDA kernels in straight Python.

AMD and Intel are following up with similar approaches.

If Mojo will still arrive on time to gain wider adoption remains to be seen.

adev_ 8 hours ago [-]
> Python cuTile JIT compiler allows writing CUDA kernels in straight Python.

It is currently not straight Python and will never be.

All these "Performance friendly" python dialects (Tryton, Pythran, CuTile, Numba, Pycell, cuPy, ...) appears like Python but are nothing like Python as soon as you scratch the surface.

They are DSL with a python-looking syntax but made to be optimized, typed and inferred properly. And it feels like it when you use it: in each of them, there is many (most?) python features you simply can not use while you still suffer of inherent python issues.

Lets not lie to ourself: Python is inherently bad for efficiency and performance.

And that goes way beyond the GIL: dynamic typing, reference semantics, monkey patching, ultra-dynamic object model, CPython ABI, BigInt by default, runtime module system, ... are all technical choices that makes sense for a small scripting language but terribly sucks for HPC and efficiency.

The entire Numpy/scipy ecosystem itself is already just a hack around Python limitations for simple CPU bound tensor arithmetics. Mainly because builtin python performance sucks so much that a simple for loop would make Excel looks like a race horse.

Mojo is different.

Mojo tries to start from a clean sheet instead of hacking the existing crap.

And tries to provide a "Python like experience" but on top of a well designed language constructed over past language design experience (Python is >30y old)

And just for that, I wish them success.

jdiaz97 5 hours ago [-]
> Mojo tries to start from a clean sheet instead of hacking the existing crap.

Their whole original pitch was to be a superset of Python btw.

adev_ 3 hours ago [-]
> Their whole original pitch was to be a superset of Python btw.

To my understanding, they offer a full python compatibility but guide the user to something else.

For instance, Mojo itself is statically typed.

loglog 2 hours ago [-]
> on top of a well designed language constructed over past language design experience

While I believe that Chris Lattner is a great compiler designer, his language design record has been less stellar. Swift bidirectional type inference for instance feels like it was implemented because they had a compiler algorithm that they wanted to use, rather than a genuine need, and is just a completely avoidable problem. Trying to make a HPC language that is also Python compatible was doomed from the start. Hopefully the damage from going into this direction will remain limited.

kstrauser 7 hours ago [-]
> All these "Performance friendly" python dialects (Tryton, Pythran, CuTile, Numba, Pycell, cuPy, ...) appears like Python but are nothing like Python as soon as you scratch the surface.

Which is the whole point. Python has properties that make it bad for massive, fast number twiddling. However, it’s exceptionally nice for doing all the command line parsing and file loading and setup and other wrapping tasks required to run those pipelines.

Fortran’s fantastic at math stuff. I’d sure hate to have to write all the related non-math stuff in it.

And yes, Python’s slower than other languages. But in production, most Python code spends a huge chunk of its time waiting for other code to execute. It takes more CPU for Python to parse an HTTP request or load data files than an AOT language would take, but it’s as efficient sitting there twiddling its thumbs waiting for a DB query or numeric library to finish.

IshKebab 52 minutes ago [-]
I wouldn't call it "exceptionally nice". Decentish if you use uv & strict Pyright... sure.

> most Python code spends a huge chunk of its time waiting for other code to execute.

Highly dependent on what you are doing. That hasn't been my experience most of the time.

pjmlp 8 hours ago [-]
I love when dialects for C and C++ count as being proper C and C++, are even argued as being more relevant than ISO standards by themselves, but anyone else that does the same, it is no longer the same language.

As for Python not being the ideal, there we agree, but the solutions with proper performance already exist, Lisp, Scheme, Julia, Futhark,...

Heck maybe someone could dig out StarLisp.

adev_ 7 hours ago [-]
> I love when dialects for C and C++ count as being proper C and C++, are even argued as being more relevant than ISO standards by themselves

I did not argue about CUDA being proper C++ :)

I honestly believe that the best days of C++ as an accelerator language are behind.

That is the main problem currently: We do miss a modern language for system programming that play well with accelerators. C++ is not (really) one of them (Hello aliasing).

I do not know if Mojo will succeed there, but I wish them good luck.

pjmlp 5 hours ago [-]
I would argue Chapel or Futhark could be such languages, but they aren't cool.
adev_ 3 hours ago [-]
Chapel maybe, but it is too low level to attract a large public outside of the HPC community.
taylorallred 4 hours ago [-]
I know Mojo is aimed at ML, but I'm actually really interested in trying it for game development :)
totalperspectiv 2 hours ago [-]
Me too! I've been using it for bioinformatics related work, and it is absolutely fantastic. I can't wait for it to hit fully open source status so it can be easily recommended.
simplyvibecode 2 hours ago [-]
Full open source Mojo 1.0 coming this fall!
armchairhacker 15 hours ago [-]
> We have committed to open-sourcing Mojo in Fall 2026.

https://docs.modular.com/mojo/faq/#will-mojo-be-open-sourced

jlundberg 3 hours ago [-]
Good catch in the noise. Thanks!
smartmic 15 hours ago [-]
Advertising prominently with "AI native" seems necessary today, at least for some folks. To me, that's kind of off-putting, since it doesn't really say anything.

Can anyone of the AI enthusiasts here explain, why, or, what is meant by

> As a compiled, statically-typed language, it's also ideal for agentic programming.

Derbasti 3 hours ago [-]
Current LLMs have been trained on extensive libraries of past code. Therefore, LLMs will for the foreseeable future work better for established languages than new ones. Especially languages with a lot of open source code available, like Python. That's a big problem for incumbents without any existing code to train LLMs on.

Thus this desparate "AI native" marketing is probably necessary to even be considered relevant in an "agentic" world. Whether it's enough, only time will tell.

jpnc 15 hours ago [-]
It's been really interesting to see all the desperation on hero pages for all these products and services ever since AI came into prominence. I think the funniest for me was opening IBM DB2 product page and seeing it labeled as 'AI database'. Hysterical.

> why, or, what is meant by More errors caught at compile time means an agent can quickly check their work statically without unit and other tests.

kstrauser 7 hours ago [-]
It’s the new “…on the blockchain”.

Python+ruff+pycheck and TypeScript are compiled to bytecode instead of machine code. They’re not statically typed in the Rust sense. And yet, I’ve watched model crank out good, valid in both of those without needing to be either strictly “compiled” or “statically typed”. Turns out AI couldn’t care less about those properties as long as you have good tooling to quickly check the code and iterate.

fuzztester 8 minutes ago [-]
>It’s the new “…on the blockchain”.

yes, except it's more ... on the same lines, just to hammer the point home:

it's web 2, it's SaaS, it's the latest weekly, er, sorry, daily, hottest JS framework, its the latest rap / punk / hippie / dreadlock / crewcut / swami / grunge/ guru hairstyle, it's agile, it's functional programming, it's OOP, it's OOAD, it's UML, its the Unix philosophy, its Booch notation, it's CASE tools, ... going back even further, it's structured programming, it's high-level languages, it's assemblers, its veganism, it's the keto diet, it's the Atkins diet, it's the paleo diet, it's cholesterol is bad, no, it's good, etc etc etc.

fuzztester 5 minutes ago [-]
iow, it's the equivalent of your common or garden variety of teenager proclaiming that this new thing they just found is gr8, all else is shite, only to jump on the next bandwagon next week, month, or more rarely, year.
chillfox 15 hours ago [-]
I don’t really consider myself an “AI enthusiasts”, but I do use it.

So, agents tend to do better the more feedback they can get. Type checking is pretty good for catching a bunch of dumb mistakes automatically.

The point is more hints for the agent is more better most of the time.

phyrog 14 hours ago [-]
So just like for humans...
Reubend 15 hours ago [-]
I don't know what they meant by it, and I share your opinion that "AI native" is somewhat meaningless for a programming language like this.

Regarding compilation and static typing, it's extremely helpful to be able to detect issues at compile time when doing agentic programming. That way, you don't run into as many problems at runtime, which of course the agent has more difficulty addressing. Unit tests can help bridge the gap somewhat but not entirely.

What's not stated on their website is that Mojo is likely a bad choice for agentic programming simply because there isn't much Mojo training data yet.

boxed 15 hours ago [-]
I've recently used Claude to write quite a bit of mojo (https://github.com/boxed/TurboKod) and I can quite confidently say that Claude will write deprecated mojo syntax a lot, but the compiler tells it and it fixes it pretty fast too. The only reason I notice is that I look at Claude while it's working and I see the compilation warnings (and sometimes Claude is lazy and doesn't compile so I have to see it).

But yea, to write mojo 1.0 code even after getting errors might take a new training round, so next or even next-next models.

msaelices 48 minutes ago [-]
Have you used the Mojo syntax skill with modern LLMs? It is updated to latest Mojo and I can say nearly 100% of my code is written by AI, with good quality, and the compiler helping it too.
melodyogonna 14 hours ago [-]
rmnclmnt 15 hours ago [-]
Because a coding agent (when instructed well) will try to make a piece of code work in a loop. Static typing and compilation help in the process (no more undefined variables discovered at runtime for instance). But that’s not bullet proof at all as most of us know
Timot05 15 hours ago [-]
I’m relatively new to programming but I wish they had used a functional language syntax rather than an object oriented one as the basis for mojo.

From my experience, AI revolves a lot around building up function pipelines, computing their derivatives, and passing tons of data through them; which composability and higher order functions from functional programming make it a breeze to describe.

I also feel that other fields than AI are moving towards building up large functional pipelines to produce outputs, which would make mojo suitable for those fields as well. I’m building in the space of CAD for example and I’d love to use a “functional mojo” language.

Revanche1367 14 hours ago [-]
The vast majority of real world ML code today is written in languages like Python and C++. Relatively few people outside of academia and online forums are functional language enthusiasts. The industry is also looking like most actual coding is going to be done by LLMs going forward, so it makes little sense to design new languages with a niche potential user base since LLMs need a ton of training data. I’m think that was a factor in deciding to base mojo on Python along with the other reasons they state.
Timot05 13 hours ago [-]
agree with all of this. Though i'd say: since the language is mostly read by humans rather than written, in my opinion, it makes even more sense to have a language syntax that actually matches intent. In the case of Machine Learning, it's mostly connecting functions together and acting on them, which matches functional syntax. LLMs are also already very effective at writing ML-inspired syntax (like ocaml or f#) as they have plenty of data to train on, making llms effective from day one if a similar syntax was chosen.
arikrahman 15 hours ago [-]
I'm in the same boat, this would've been in the family of the first language that neural nets and AI were created with back decades ago, Lisp. Coming from the awesome project of Swift, which to their credit, was a massive undertaking to convince Apple execs, I was still hoping for a functional language approach like Haskell with the practicality of Clojure.
dllu 16 hours ago [-]
I remember reading about this 4 years ago as the new Chris Lattner project and was super excited, though a little skeptical.

I think that nowadays with vibe/agentic coding, high performance Python-like languages become ever more important. Directly using AI agents to code, say, C++, is painful as the verbose nature of the language often causes the context window to explode.

boxed 16 hours ago [-]
Not to mention that C++ basically can't be made to be safe. But Rust is probably fine.
pjmlp 5 hours ago [-]
In theory that is the idea behind profiles, in practice it remains to be seen what will they deliver until C++29, and if matters by then.

Microsoft is invested into using AI for C++ code review, for example.

chrismsimpson 15 hours ago [-]
I do wonder if Mojo was a great idea just a little too late to the party. Porting ‘prototypes’ from Python to lower level languages is fairly trivial now with LLMs.
msaelices 44 minutes ago [-]
Modern LLMs are perfectly capable to learn the syntax of a new language on the fly and write great Code. E.g. there is an official Mojo syntax skill you can use and works well
insumanth 16 hours ago [-]
I was excited when Mojo launched and thought it might grow big quick. I don't see much traction. The pitch is compelling. What could be the issue?
kstrauser 16 hours ago [-]
I have no time for or interest in proprietary compilers. The standard library is Apache 2, but the license link on their home page is to a long terms of service thing. I’d like to be wrong because it looks interesting. Until then, this doesn’t exist in my world.

I bet that’s true for a great many people. There are too many wonderful FOSS languages to bother with one you can’t fix or adapt or share.

samuell 16 hours ago [-]
As someone who would have strong reasons to invest time in Modular (simple high performant language for implementing bioinformatics scripts), I would say primarily the worry that development might be too tied to Modular, the startup behind it, which eventually might pivot into other priorities.

One would want to see either a strong community build up around it, or really hard evidence for a long-term commitment to the language from Modular. And the latter will take a long time to be assured of I think.

Also, editing tools need to catch up before very wide adoption of a language with a lot of new syntax.

pjmlp 13 hours ago [-]
- Doesn't support Windows, which is what many companies give their employees, outside Silicon Valey like culture

- The MLIR approach, which was also designed by Chris Lattner while at Google, has proven quite valuable to create Python JIT DSL

- The Python ecosystem now being taken seriously by the main GPU vendors, thanks to MLIR, as all their proprietary compilers are based out of LLVM

- Others remember Swift for Tensorflow

williamstein 16 hours ago [-]
Mojo is still NOT open source (the standard library is but not the compiler). Open source is table stakes for a modern programming language.
tweakimp 16 hours ago [-]
When it was announced it was not generally available for everyone to try out. There was a waitlist phase.
tveita 12 hours ago [-]
Is there any project that showcases Mojo for running neural network models on the GPU - like ideally something like llama.cpp that could run one or more existing models to showcase the readability and performance?
melodyogonna 6 hours ago [-]
0xpgm 16 hours ago [-]
Right now majority of beginners start programming with a high-level language, say Python or JavaScript - then for more advanced system-level tasks pickup C/C++/Rust/Zig etc.

If Mojo succeeds, it could be the one language spanning across those levels, while simplifying heterogeneous hardware programming.

pjmlp 16 hours ago [-]
Still phase one, doesn't do native Windows.

Meanwhile Julia is more mature for the same purposes, and since last year NVidia is having feature parity between Python and C++ tooling on CUDA.

Python cuTile JIT compiler allows writing CUDA kernels in straight Python.

AMD and Intel are following up with similar approaches.

So will Mojo still arrive on time to gain wider adoption?

Time will tell.

AbuAssar 1 hours ago [-]
> AI native

What’s that supposed to mean?

jjice 48 minutes ago [-]
My guess is that they expose first party skills and maybe other agent friendly docs? Not positive though.
noduerme 16 hours ago [-]
Am I old or remembering this wrong... didn't Zuck write the first iteration of Facebook in PHP, and then spend millions to hire people to write something that converted the code to C++?
dtj1123 15 hours ago [-]
CodeArtisan 3 hours ago [-]
Hack came after. Noduerme is referring to https://en.wikipedia.org/wiki/HipHop_for_PHP
dtj1123 2 hours ago [-]
Today I learned
sriram_malhar 13 hours ago [-]
Doesn't anyone here have _one_ kind word to say about its features? Every one seems to be starting with "on the other hand".
pjmlp 13 hours ago [-]
Many of us were already around during Swift for Tensorflow.
DeathArrow 6 hours ago [-]
>As a compiled, statically-typed language, it's also ideal for agentic programming.

Since there is not much Mojo code in the wild so the LLMs were trained on it, I wonder how it will work in practice.

Probably the agents will make lots of mistakes and you will spend 10x the tokens compared to using a language the model are well versed in.

runarberg 16 hours ago [-]
I am actually on a lookout for a low level language which compiles to web assembly to write a (relatively small) supervised learning model which I plan to be good enough for 5 year old phone CPUs. I have a working prototype in Julia and was planning on (eventually) rewrite it in Rust mostly for the web assembly target. I come from a high level language background so the thought of rewriting in rust is a little daunting. So I was excited to learn about Mojo and find out if they had a WebAssembly target in their compiler.

But then I read this:

> AI native

> Mojo is built from the ground up to deliver the best performance on the diverse hardware that powers modern AI systems. As a compiled, statically-typed language, it's also ideal for agentic programming.

Well, no thank you. I know the irony here but I want nothing to do with a language made for robots.

kstrauser 15 hours ago [-]
I’ve written Python for the past 25 years or so. I dig it. But I don’t think I’ve started a new Python project since starting to experiment with Rust. A lot (not all!, but a lot) of Rust patterns look a lot like Python if you squint at it just right. I also think that writing lots of Rust has made me better at writing Python. The things Rust won’t let you get away with are things you shouldn’t be doing almost anywhere else.

Go on, give it a shot. It stops being intimidating soon! And remember that the uv we all love was heavily influenced by Cargo.

frizlab 15 hours ago [-]
If you’re searching for a language that has the same strong memory safety than rust but is a bit easier to write, you should give Swift a go.
kstrauser 7 hours ago [-]
Good call. It’s not the first language I think of for most things but there’s no great reason why not to. I probably reach for Rust first because I’m more familiar with it and the projects I want to work on were already written in it.
pjmlp 13 hours ago [-]
I can't go get coffee so many times per day, there are better compiled languages to chose from, while offering Python like ergonomics.
kibwen 8 hours ago [-]
I can only go get coffee waiting for my Python test suite to finish so many times per day. I write Rust because the strict type system accelerates the iteration speed for producing correct code more than any other language in its class.
pjmlp 8 hours ago [-]
Which is why the solution is to pick neither, rather something with Python like productivity and a mix of JIT/AOT tooling.

Some alternatives are as old as 1958.

runarberg 15 hours ago [-]
I actually have written Rust, but it has been a minute. I think my last project (a backend for a massive online multiplayer theremin jam session [site no longer up; but HN discussion still exists: https://news.ycombinator.com/item?id=10875211] 10 years ago).

I remember Rust very fondly in fact. And I had the same experience as you, learning Rust made me a better Javascript programmer. Lets see if a little neural network can be as fun.

Certhas 14 hours ago [-]
Mojo has been suffering in their communication from targeting VCs rather than users. They never actually had a clear "Mojo extends Python" MVP or even strategy to get to an MVP anytime soon. And the language started developing before AI Agents were a thing and has more to do with building around state of the art LLVM tooling than AI Agents. But I guess "easier lifetime semantics than Rust and native access to MLIR intrinsics" doesn't raise money...
logicchains 16 hours ago [-]
Very bold of them expecting people to use a language with a closed source compiler in the 2020s.
redlewel 17 minutes ago [-]
WOW. Thanks for the comment I don't need to waste my time. So many choices for programming languages why would I go with something that isn't fully open source?
evertheylen 16 hours ago [-]
If you're looking for a language that aims to solve the "two-language problem" like Mojo, but want something more open, more mature and less influenced by VC funding, check out Julia: https://julialang.org/
runarberg 15 hours ago [-]
I used Julia a lot when I was studying statistics (which I dropped out of) back in 2015, but I recently (like last weekend) came back to it to write a prototype of a supervised learning model, and I have to say, coming back to it was pure joy. And my model prototype was indeed fast enough for me.

Now I will probably rewrite the model in rust if I want to do anything with it (mostly for the web assembly target as I want this thing to run in browsers) but I will for sure be using Julia for further experimentation. Lovely language.

ssivark 50 minutes ago [-]
> mostly for the web assembly target

Funny you should say that... there was recently a very interesting announcement for a Julia-to-WASM compiler and a full-stack signals-based web framework:

https://discourse.julialang.org/t/ann-experimental-wasmtarge...

runarberg 9 minutes ago [-]
I saw that, but then I saw this:

> Both repos were built iteratively with LLM coding agents

I think I would rather just use Rust.

walterlw 16 hours ago [-]
from what I understand the goal for now is not to get the people to use it, but for enthusiasts to try it
kstrauser 16 hours ago [-]
What enthusiast worth getting feedback from is going to tinker with a locked up language?
melodyogonna 15 hours ago [-]
You'd be surprised. Anyway, the compiler will be opened with 1.0 release, that's why reaching beta is exciting.
ainch 16 hours ago [-]
They've said they'll open source the compiler alongside the 1.0 release.
rvz 3 hours ago [-]
CUDA is closed source (and will never be open sourced) and everyone is fine with it.

Modular is giving you at least a public promise that they will open source Mojo it this year but some how here it is a problem.

Unbelievable.

kstrauser 2 hours ago [-]
CUDA is not a programming language. It's a package with adapters for lots of languages. IMO, it's not relevant here at all. Sure proprietary packages exist for just about every language, but most modern languages are open source. You can use them, distribute them, patch them, or whatever else.

For instance, you can write Python without using CUDA. CUDA's existence doesn't make Python less useful. But what do you do when you bump into a bug in Mojo? You have no ability to fix it yourself. At best, you can report it to the authors and hope they care enough about it to put in the work and release an update. If you run into a Python problem, you, or someone in your org, or a paid consultant, can fix it even if the Python core team doesn't care about it.

rvz 2 hours ago [-]
It's not just CUDA and it's runtime. I am talking about its compiler, nvcc and that is closed source. [0]

But somehow it is a problem when Modular gives a single promise to open-source their Mojo compiler?

> For instance, you can write Python without using CUDA. CUDA's existence doesn't make Python less useful. But what do you do when you bump into a bug in Mojo? You have no ability to fix it yourself.

You don't use AI training / inference with bare Python at all.

PyTorch (which almost all AI researchers use) primarily uses CUDA as the default and it is less useful without it (all other backends are slower). If there is a bug in anywhere from PyTorch to the silicon, you need to investigate if it is a PyTorch problem, C++ or Python issue or both, or a CUDA driver issue.

So a bug in one place (Mojo) vs a bug in 4 different places and one of them (CUDA) will never be open source. The latter is worse.

> At best, you can report it to the authors and hope they care enough about it to put in the work and release an update. If you run into a Python problem, you, or someone in your org, or a paid consultant, can fix it even if the Python core team doesn't care about it.

You are assuming Modular will never open source the Mojo compiler, when it is clear that Nvidia has been completely hostile to opening anything related to CUDA and its compiler.

[0] https://en.wikipedia.org/wiki/Nvidia_CUDA_Compiler

thefounder 15 hours ago [-]
Does it have the indentation thing? That would be a no go for a lot of people
IceDane 15 hours ago [-]
Only incredibly inexperienced people think indentation in python is a problem.
redlewel 19 minutes ago [-]
Yes, I remember having a problem with python indentation. For some reason tabs and spaces were causing my code to fail to run!! This was when I was first learning programming and didn't know anything. Once I understood the syntax of the language it hasn't been a problem ever since. Its like being upset that your yaml doesn't work because you have mixed spaces and tabs.
vga1 15 hours ago [-]
I have tons of experience with python, possibly more actual work experience than any other language, and I do think the indentation is a bit of a problem. Obviously not a huge one, but still something I wished they had done differently. Because I like to have a robust format-on-save wired into my editor, and you just cannot quite have that when indentation is meaningful.
tweakimp 14 hours ago [-]
Use black as format on save and you will never have a problem with that. https://github.com/psf/black
vga1 11 hours ago [-]
Sure, black's pretty good and definitely better than nothing.

Just wanted to provide an easy counterpoint to the logical fallacy by IceDane.

11 hours ago [-]
tasuki 10 hours ago [-]
Yes, indeed, indentation is one of the very few things in Python which aren't problematic!
DeathArrow 16 hours ago [-]
>No more choosing between productivity and performance - Mojo gives you both.

That's a very big claim.

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