I made the commitment to play exclusively midrange weapons (effective range 130-260) without melee on my first playthrough.
This boss felt like bullshit. Balseus was a challenge, this was simply a matter completely changing your build/playstyle, or you’re gonna hit a wall.
After ~12 tries, I google a build: tank base (which I swore to never touch in my first playthrough) 2 gatling guns and two songbirds.
With that, completely melted the boss on the first try. It was trivial, just hit it with the songbirds and continue building up stagger with the gatling guns. It felt like bullshit.
I know that maybe you’re supposed to adapt and slightly change my build, but everything should be viable and fun.
If anyone with a mid-range built (no melee, only bipedal) was able to kill it, would really like to know how.
I just beat it with what I would consider mid range, I did use the starting blade for critical hits though. Mostly being in the air a lot is what helped, full blowing the altitude to avoid the claw attacks really helps. https://i.imgur.com/ydgLYuT.jpg
While that is a nice service and a great resource it’s not what I meant. I was looking for shows produced by Amazon or the like explicitly for the German market.
It could be a honeypot. While this likely won’t be the case, if you connect to a website and download directly from there, depending on your browser and os, general privavy and anonymity, they might be able to fingerprint you. Check against some other databases from sites that you visited today that have your real name and you’re bust. Unlikely, but possible.
If the website gets shut down because of suspicion of malicious activity and they intentified visitors, again, through a fingerprint or similar, it’s beasically the same as a honeypot.
So basically, the complexity of modern web browsing is the general issue. How do you circumvent this? Ideally you don’t. Just use a torrent with a p2p VPN in a secure and anonymous manner and you don’t even have to worry about your Javascript canvas.
You lay out a highly sophisticated attack when it’s simple to adjust the downloaded software to call home. Why would anyone invest that much into something like that (you left out where “some other databases” would be and how reliable they would be) when there are much simpler and more reliable approaches?
I do not miss the grid at all, I hate being conformed to grids instead of more fluid real movement. It’s just more immersive to order my troops to move as a real person could move, not slide on a rail and stand there in this open space like a chess piece
Your comment doesn’t make sense. There’s no relation between a grid and standing out in the open. With free movement, if you order the character to finish their movement in the open, they’re going to be out in the open.
And I also don’t see the relation between grids and “sliding”.
As of right now I can go to civitai and get hundreds of models created by users to be used with Stable Diffusion. Are we assuming that these closed source models are even able to be run on localized hardware? In my experience, once you reach a certain size there's nothing that layusers can do on our hardware, and the corpos aren't using AI running on a 3080, or even a set of 4090's or whatever. They're using stacks of A100's with more VRAM than everyone's GPU in this thread.
If we're talking the whole of LLM's to include visual and textual based AI... Frankly, while I entirely support and agree with your premise, I can't quite see how anyone can feasibly utilize these (models). For the moment anything that's too heavy to run locally is pushed off to something like Collab or Jupiter and it'd need to be built with the model in mind (from my limited Collab understanding - I only run locally so I am likely wrong here).
Whether we'll even want these models is a whole different story too. We know that more data = more results but we also know that too much data fuzzes specifics. If the model is, say, the entirety of the Internet while it may sound good in theory in practice getting usable results will be hell. You want a model with specifics - all dogs and everything dogs, all cats, all kitchen and cookware, etc.
It's easier to split the data this way for the end user as this way we can direct the AI to put together an image of a German Shepard wearing a chefs had cooking in the kitchen, with the subject using the dog-Model and the background using the kitchen-Model.
So while we may even be able to grab these models from corpos, without the hardware and without any parsing, it's entirely possible that this data will be useless to us.
The point about GPU’s is pretty dumb, you can rent a stack of A100 pretty cheaply for a few hours. I have done it a few times now, on runpod it’s 0.79 USD per HR per A100.
On the other hand the freely available models are really great and there hasn’t been a need for the closed source ones for me personally.
0.79 dollars per hour is still $568 a month if you’re running it 24/7 as a service.
Which open source models have you used? I’ve heard that open source image generation with stable diffusion is on par with closed source models, but it’s different with large language models because of the sheer size and type of data they need to train it.
I have used it mainly for dreambooth, textual inversion and hypernetworks, just using it for stable diffusion. For models i have used the base stable diffusion models, waifu diffusion, dreamshaper, Anything v3 and a few others.
The 0.79 USD is charged only for the time you use it, if you turn off the container you are charged for storage only. So, it is not run 24/7, only when you use it. Also, have you seen the price of those GPUs? That 568$/month is a bargain if the GPU won’t be in continuous use for a period of years.
Another important distinction is that LLMs are a whole different beast, running them even when renting isn’t justifiable unless you have a large number of paying users. For the really good versions of LLM with large number of parameters you need a lot of things than just a good GPU, you need at least 10 of the NVIDIA A100 80GB (Meta’s needs 16 blog.apnic.net/…/large-language-models-the-hardwa…) running for the model to work. This is where the price to pirate and run yourself cannot be justified. It would be cheaper to pay for a closed LLM than to run a pirated instance.
I was thinking the same thing. Would you think there’d be a way to take an existing model and pool our computational resources to produce a result?
All the AI models right now assume there is one beefy computer doing the inference, instead of multiple computers working in parallel. I wonder if there’s a way to “hack” existing models right now so it can be used to infer with multiple computers working in parallel.
Or maybe, a new type of AI should specifically be developed to be able to achieve this. But yes, getting the models is half the battle. The other half will be to figure out how to pool our computation to run the thing.
I'm not sure about for expanded models, but pooling GPU's is effectively what the Stable Diffusion servers have set up for the AI bots. Bunch of volunteers/mods run a SD public server and are used as needed - for a 400,000+ discord server I was part of moderating this is quite necessary to keep the bots running with a reasonable upkeep for requests.
I think the best we'll be able to hope for is whatever hardware MythicAI was working on with their analog chip.
Analog computing went out of fashion due to it's ~97% accuracy rate and need to be build for specific purposes. For example building a computer to calculate the trajectory of a hurricane or tornado - the results when repeated are all chaos but that's effectively what a tornado is anyway.
MythicAI went on a limb and the shortcomings of analog computing are actually strengths for readings models. If you're 97% sure something is a dog, it's probably a dog and the 3% error rate of the computer is lower than humans by far. They developed these chips to be used in cameras for tracking but the premise is promising for any LLM, it just has to be adapted for them. Because of the nature of how they were used and the nature of analog computers in general, they use way less energy and are way more efficient at the task.
Which means that theoretically one day we could see hardware-accelerated AI via analog computers. No need for VRAM and 400+ watts, MythicAI's chips can take the model request, sift through it, send that analog data to a digital converter and our computer has the data.
Veritasium has a decent video on the subject, and while I think it's a pipe dream to one day have these analog chips be integrated as PC parts, it's a pretty cool one and is the best thing that we can hope for as consumers. Pretty much regardless of cost it would be a better alternative to what we're currently doing, as AI takes a boatload of energy that it doesn't need to be taking. Rather than thinking about how we can all pool thousands of watts and hundreds of gigs of VRAM, we should be investigating alternate routes to utilizing this technology.
Akshually, while training models requires (at the moment) massive parallelization and consequently stacks of A100s, inference can be distributed pretty well (see petals for example). A pirate ‘ChatGPT’ network of people sharing consumer graphics cards could probably indeed work if the data was sourced. It bears thinking about. It really does.
You definitely can train models locally, I am doing so myself on a 3080 and we wouldn't be as many seeing public ones online if that were the case! But in terms of speed you're definitely right, it's a slow process for us.
I was thinking more of training the base models, LLAMA(2), and more topically GPT4 etc. You’re doing LoRA or augmenting with a local corpus of documents, no?
Ah yeah my mistake I'm always mixing up language and image based AI models. Training text based models is much less feasible locally lol.
There's no model for my art so I'm creating a checkpoint model using xformers to bypass the VRAM requirement and then from there I'll be able to speed up variants of my process using LORA's but that won't be for some time, I want a good model first.
Besides that, in my experience movies with foreign languages usually have the subtitles embedded in the file itself (usually as ASS / SSA format), so maybe try to download movies with embedded subtitles.
Anyone know how long this game takes on average to beat? I have about two weeks of free time but then I won’t have much time for gaming for around 2 months so wondering if I can fit this in or not?
You know, I realize I dunno who uploads their details to these kinda sites, but I’m glad people do. I consult HLTB a lot and it’s always been really useful for judging the time investment a game will take, how worthwhile DLCs will be, and for understanding what kind of game something is (longer is often better in my book, but not always, since games like AC Valhalla have actually gone too long, since I can’t help myself but to play mostly completionist).
Story is really what I care about the most from RPGs, though I’m also a sucker for old school RPG battle systems. I’ve never heard of this or the studio, but reviews liken it to Chrono Trigger and Final Fantasy, which is a very good look in my book.
It seems like an especially great year for gaming. I can’t remember the last time there was so many highly rated games coming out (and there’s still more to come – I’m most excited for Starfield).
xManager for Android. For downloading songs in my Spotify playlist, I use Spowlo for Android. It downloads songs at the specified quality (I choose 320 kbps and but you can download even in FLAC; I chose FLAC for some songs). So far, it has been able to download all my 1910 songs from my personal playlist.
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Aktywne