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Mixture of Predictive Agents (MoPA) - The Wisdom of Many AI Agents Architecture 

All About AI
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28 авг 2024

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Комментарии : 18   
@AlenaHampsteadsmith
@AlenaHampsteadsmith 2 месяца назад
Predictive deep learning technology is the BOMB 💣💣💣 make sure to add Lemon AI into your mixture, if you need to optimize ad campaigns and bring your marketing game to the next level
@Nifty-Stuff
@Nifty-Stuff 2 месяца назад
This architecture is BRILLIANT and so close to my dream system/process! For the last year I've wondered: "Why hasn't anybody developed a system/app that takes API's from the top LLMs, and created agents for each... and then have these agents all work together to brainstorm, debate, review, and solve problems, and then present me with the best solution / answer that they (mostly) agree on?!?!?" I often get 4 different answers from 4 LLMs, so why not have them all setup as agents "in one room" working together to come up with the "best" solution. I can't find anybody that's tried this... why not? Wouldn't having the "top minds" (LLMs) working together produce better results? I have to imagine some very creative coders could create the logic, limits, instructions, roles, etc., to guide how the LLMs interact, balancing enough "discussion" to get to a good answer. Your architecture is so close to this!
@j0hnny_R3db34rd
@j0hnny_R3db34rd 2 месяца назад
We've had agentic systems running for almost a decade LMFAO
@panicpanic9324
@panicpanic9324 2 месяца назад
@@j0hnny_R3db34rd got this lmao
@paelnever
@paelnever 2 месяца назад
In real world bitcoin prices depend on thousands of different factors like energy price or asic hardware price, it would be much more clever to analyze those factors than simply the past prices.
@klammer75
@klammer75 2 месяца назад
Great work as always Kris! Keep em coming!🥳🤩🦾
@DJPapzin
@DJPapzin 26 дней назад
Great concept
@jasonedward
@jasonedward 2 месяца назад
I love the idea that you could aggregate predictions and then back test on past data to course correct. Thinking what else this could apply to besides trading
@dawmro
@dawmro 2 месяца назад
I am curious what would happen if you don't tell the model to be slightly negative, would the price prediction be better?
@ryanjames3907
@ryanjames3907 2 месяца назад
here we go, to the moon !!! great work thanks for sharing,
@ewasteredux
@ewasteredux 2 месяца назад
Hey Kris! I was looking for the source for this (MoPA) and am having issues locating it. Am I just overlooking it or has it not been uploaded yet?
@tonywhite4476
@tonywhite4476 2 месяца назад
It's coin operated.
@watchdog163
@watchdog163 2 месяца назад
How you gonna predict based on 30 day historical prices? You need tons of measurements, like social media presence, price since beginning of time, wallets created, technology interest, fear & greed, etc etc etc.
@zimpot1690
@zimpot1690 2 месяца назад
Where can I get the code
@iceiceisaac
@iceiceisaac 2 месяца назад
This is what I’m talking about
@Ms.Robot.
@Ms.Robot. 2 месяца назад
I love this mixin❤
@fnice1971
@fnice1971 2 месяца назад
Did you know? that chatGPT can do what other models don't offer yet? creating full project and then zip's the files and folders, largest project chatgpt has created for me, was about 6mb zipped, unzipped little over 15mb project files and folders. it's all about the prompt's. I'm sure much larger projects could be created with the correct prompt's.
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