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Stock Analysis with AI Agents, using CrewAI 🚣 Using tools + LangSmith, running on Replit ⠕ A researcher, an analyst and an investment advisor Agents come together to built a recommendation on any stock out there ✨ lmk if you like and want more of this! 😉

128,808 次观看 • 2 年前 •via X (Twitter)

57 条评论

søren 的头像
søren2 年前

@LangChainAI @Replit awesome. stock analyzer bots were some of the first things i built + hosted on replit in 2020/2021. @notjustinshaw throwback to the days of scraping SPACs on and gpt-2 summarization.

Alger 的头像
Alger1 年前

Looking to invest in the Enablers and Adopters of AI? Consider an actively managed fund investing in companies actively involved in developing and implementing AI technologies.

Mayo Oshin 的头像
Mayo Oshin2 年前

@LangChainAI @Replit Good job 👏 how can this approach be applied for general research on any topic?

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit Pretty easy actually, just a matter of updating the agents and tasks, so it would be only updating prompts, maybe adding / removing agents depending on what you want. I’ll share another example this week of a trip planner crew as well with similar setup

Richard 的头像
Richard2 年前

@hwchase17 @LangChainAI @Replit Code?

João Moura 的头像
João Moura2 年前

@hwchase17 @LangChainAI @Replit dropping it next week, probably Tuesday together with a couple articles

Juancho 的头像
Juancho2 年前

@LangChainAI @Replit I did something similar to this but the analysis is still too basic in my opinion, specifically if you really want to do a serious investment. I was thinking to probably create 1K agents to bring this to the next level

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit I think it’s maybe just a matter of having specific crews for what kind of analysis one would want, I tried to make this more generic, but if you want go deep and broad multiple crews are the way to go

PaulTheBully 的头像
PaulTheBully2 年前

@LangChainAI @Replit Is there a link to this tutorial?

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit Not yet, I will be posting in the next couple days together with a couple articles

Pete Sena 的头像
Pete Sena2 年前

@LangChainAI @Replit Super cool use of AI agents

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit right? Was pretty fun to build as well, but I have more cool examples to drop later this week 😎👉👉

Dave Hayes 的头像
Dave Hayes2 年前

@LangChainAI @Replit Certified dope.

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit 🫡 I’ll keep it coming

Justin McCarty 的头像
Justin McCarty2 年前

@LangChainAI @Replit What is crew ai

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit A thin framework to build groups of AI Agents ✨

João Moura 的头像
João Moura2 年前

idk if you saw this but another cool example similar to what we talked the other day

Evil Genius 的头像
Evil Genius2 年前

@LangChainAI @Replit Currently building something similar… Integrating into our platform…

Pablo Arango 的头像
Pablo Arango2 年前

@LangChainAI @Replit Hello, what is the software you use to record this kind of videos ?

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit Screen Studio, pretty swett!

Jan 的头像
Jan2 年前

@LangChainAI @Replit Thanks for video. Really good explanation what's going on.

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit Glad you linked Jan! So many great examples of things to build with AI Agents

Dog LLM 的头像
Dog LLM2 年前

@LangChainAI @Replit where’s source code

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit Dropping in the few days together with a couple articles 🫡

João Moura 的头像
João Moura2 年前

check this one out, I think you might like it 😉

Troublemaker 的头像
Troublemaker2 年前

@LangChainAI @Replit Any code for this Stock Analysis AI Crew? Sounds like fun.

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit will be sharing it later this week on the 21st together with a couple articles

Jason Ferrell 的头像
Jason Ferrell2 年前

@LangChainAI @Replit Cool, I built something similar using OpenAI’s assistant API. I found OpenAI to be rather slow, >1m per task run in GPT-4-turbo. Looks like you cut the demo for processing - how long do your agents take to complete their task runs?

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit The whole thing takes around 5-10m, but that's doesn't bother me as much as I face it as basically time back for myself to do other things as it runs. That said smaller local models would be faster but lower quality. You can use them through @OLLAMA super good for simpelr tasks

Muratcan Koylan 的头像
Muratcan Koylan2 年前

@LangChainAI @Replit Great Job! Working on a similar project and CrewAI is really helpful 💫

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit Thanks 🙏 I really appreciate hearing back from people using it ✨

Preet 的头像
Preet2 年前

@LangChainAI @Replit Good work brother.

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit Thanks buddy! Was really fun to build!

Dr Shrivastava A(Generative AI Consultant) 的头像
Dr Shrivastava A(Generative AI Consultant)2 年前

@LangChainAI @Replit Super

Quang Dinh 的头像
Quang Dinh2 年前

@LangChainAI @Replit Great Job, I hope can try it.

João Moura 的头像
João Moura2 年前

@QuanginhNgc1 @LangChainAI @Replit Glad you liked it! CrewAI is opensource so feel free to give it a try, this example will be open sourced this week as well together with a couple articles I’ve been working on

Farid Safi 的头像
Farid Safi2 年前

@LangChainAI @Replit Good. Which software do you use for recording your camera ?

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit Screen studio, pretty cool

Jeff Burke ⠕ 的头像
Jeff Burke ⠕2 年前

@LangChainAI @Replit This is cool! Is the Repl public to fork?

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit Will publish this week together with an article 😉

Daniel Kempe 的头像
Daniel Kempe2 年前

@LangChainAI @Replit 👍

Dariel Noel 🏆 的头像
Dariel Noel 🏆2 年前

@LangChainAI @Replit Wow😍 how do you ensure the accuracy and reliability of recommendations from these ai agents?

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit Usually I'd measure this agains a testing set but a lot of this is built on live data, so I guess the best approach could be to have the report include all references for the data so you can double check if needed, if you include it in the prompt it should be able to do it

Fabian 的头像
Fabian2 年前

@LangChainAI @Replit this is awesome! great job with this chain.

The Content 的头像
The Content2 年前

@LangChainAI @Replit @memdotai mem it

推文点赞|网站:mf8.xyz 的头像
推文点赞|网站:mf8.xyz2 年前

@LangChainAI @Replit 🔘🔳🔲,northerners are all cowards. one or two battles will end the

stagflacja 的头像
stagflacja2 年前

@LangChainAI @Replit Very cool. What takes the longest in this process - getting openai chat responses / generating embeddings / getting additional data from the internet? BTW is this app related to your framework, or just coincidence :)

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit depends, because it's a non-linear process so sometimes it might do many embedding searches others not so much, but overall the OpenAI responses take the longest. Just a coincidence haha

hindu_interest 的头像
hindu_interest2 年前

@LangChainAI @Replit how to use this, website link please. Thank you

Danish Khan 的头像
Danish Khan2 年前

@LangChainAI @Replit What can be done to make the UI better?

Attila-IBS 的头像
Attila-IBS2 年前

@LangChainAI @Replit Has the stucked loop issue been fixed? I like this project, so I'd like to keep testing it, especially with Mixtral 8x7B

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit It seems that stuck loop was me putting together a very bad readme example I didn't really tested 🙃 I updated the test but still didn't close the issue as I wanna add guardrails to prevent that. I'm super curious to try it with Mixtral as well! Thinking about fine tuning it

DongNan 的头像
DongNan2 年前

@LangChainAI @Replit .

▓▒░cнroмυн░▒▓ 的头像
▓▒░cнroмυн░▒▓2 年前

@LangChainAI @Replit How much did it cost for generating this?

João Moura 的头像
João Moura2 年前

@LangChainAI @Replit seems it was < $1 but I'll run more tests and report back

José 的头像
José2 年前

@LangChainAI @Replit @NotionAddon

Ryan Lisse 的头像
Ryan Lisse2 年前

@LangChainAI @Replit @memdotai mem it

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