- Видео 15
- Просмотров 29 854
Jonathan Yarkoni
Добавлен 1 дек 2023
AI First Business in the era of Generative AI
Businesses must have a strategy for adopting Generative AI. Natural Intelligence does. Lior Schachter shares how he as the CTO of NI is driving an AI First Business approach.
Linkedin: www.linkedin.com/in/liorschachter/
Meetup: www.meetup.com/meetup-group-ddasngqy/
Business info: info@reachlatent.com
#generativeai
Linkedin: www.linkedin.com/in/liorschachter/
Meetup: www.meetup.com/meetup-group-ddasngqy/
Business info: info@reachlatent.com
#generativeai
Просмотров: 182
Видео
Fireside chat #1 - Controlling LLM agents with Nir Diamant
Просмотров 1044 месяца назад
Linkedin: www.linkedin.com/in/jonathanyarkoni/ www.linkedin.com/in/nir-diamant-759323134/ Meetup: www.meetup.com/meetup-group-ddasngqy/ Business email: info@reachlatent.com #generativeai #llm #llmagents #agentgpt
Controlling RAG with an Agent
Просмотров 5174 месяца назад
Meetup group: www.meetup.com/meetup-group-d... Nir Diamant: www.linkedin.com/in/nir-diamant-759323134/ Repository: github.com/NirDiamant/Controllable-RAG-Agent Many companies and businesses today seek the ability to interact with their data using Retrieval-Augmented Generation (RAG) solutions. However, what happens when the questions you ask your data are non-trivial, and simple retrieval based...
Multi Agents in production (creator of GPT researcher - 14k stars)
Просмотров 1 тыс.4 месяца назад
Meetup group: www.meetup.com/meetup-group-d... GPTresearcher has 14k stars on github - github.com/assafelovic/gpt-researcher Details In this talk, Assaf, the founder of GPTR (GPT researcher- gptr.dev/ ), will take us through what is needed to build a successful multi agent system GPT Researcher is the leading autonomous agent that takes care of everything from accurate source gathering to organ...
Reducing the cost of LLMs in production
Просмотров 1,2 тыс.6 месяцев назад
Per 1 million tokens GPT4 costs $60 per token while Mistral 7b costs $0.25. openai.com/api/pricing mistral.ai/technology/ This talk is about different methods for reducing the cost of LLM consumption. Join our meetup: www.meetup.com/meetup-group-ddasngqy/ Reach out: info@reachlatent.com www.linkedin.com/in/jonathanyarkoni/ Demos: 1. Chunkviz - chunkviz.up.railway.app/ Greg's channel - www.youtu...
Building Agents for Production
Просмотров 2,6 тыс.8 месяцев назад
Join our meetup: www.meetup.com/meetup-group-d... Demo repo: github.com/galprz Why Gal: Developed 10 agents in the past year. Agents for various domains - Law enforcement, Customer support, Interior design, and more. Handled the integration of tracing and monitoring systems for these agents, concentrating on evaluating and enhancing their performance. Session Agenda: What is an agent Types of A...
Building an AI Search Engine with Gen AI - By Shai Alon
Просмотров 1,8 тыс.8 месяцев назад
Join our meetup: www.meetup.com/meetup-group-ddasngqy/ Demo repo: github.com/shaialon/ai-search Follow Shai: www.linkedin.com/in/shaialon/ About Shai: Shai Alon, Orca Security's Director of AI Innovation, spearheads the AI search engine development, a hallmark and distinct feature at Orca. His entrepreneurial background includes founding two tech ventures, from advancing AI chatbots at Chat Lea...
Gen AI implementation story - Tastewise (Prompting pipeline)
Просмотров 7949 месяцев назад
Lior Magen, Head of data science at Tastewise, a long time Data science practitioner walks us through building Tastewise's Generative AI pipeline. Tastewise adopted Gen AI back in February 2023. Intro - ruclips.net/video/FT04AdIgTrE/видео.html Demo - ruclips.net/video/FT04AdIgTrE/видео.html?t=480 Architecture - ruclips.net/video/FT04AdIgTrE/видео.html?t=700 Prompt structure - ruclips.net/video/...
Solving Gen AI Hallucinations
Просмотров 3,2 тыс.9 месяцев назад
Meetup group: www.meetup.com/meetup-group-ddasngqy/ Follow me for regular content: x.com: jon_yarkoni Linkedin: www.linkedin.com/in/jonathanyarkoni/ Colab w/ Demos: colab.research.google.com/drive/11S7fxAjiBi7abhzTOyZscGAEzsRRUEoT #genai #llm #ai #prompting #enterprisesolutions Generative AI models hallucinate and it’s a problem. It’s the main reason holding back consumer facing imp...
Gen AI Journey to Production - Expert Panel
Просмотров 80610 месяцев назад
In this video I interview a panel of experts from Wix, JFrog and SDR-GPT. We discuss what it takes to successfuly develop and implement Gen AI tech in production. Assaf, Amos and Shaked share lots of great tips and challenges. Join our meetup where we host bi monthly sessions - www.meetup.com/meetup-group-ddasngqy/ #prompting #genai #ai #enterprisesolutions
Gen AI 2023 Enterprise Use Cases Summary
Просмотров 1,5 тыс.10 месяцев назад
Meetup group: www.meetup.com/meetup-group-ddasngqy/ Twitter (x.com): jon_yarkoni Linkedin: www.linkedin.com/in/jonathanyarkoni/ A survey of Gen AI enterprise use case, or in other words 'what other large companies have done with Gen AI in the past year'. We've surveyed over 100 publicized use cases and share the most interesting 25.
Prompt Engineering Techniques (extended version)
Просмотров 15 тыс.11 месяцев назад
Meetup group: www.meetup.com/meetup-group-ddasngqy/ Resources: Deck - docs.google.com/presentation/d/1fboeXSrRhMBDuNKhs8ctKntTnIE5c4BqUAUt48TAvGE/edit#slide=id.gb5f82cfcb7_0_3703 Colab: colab.research.google.com/drive/1Xz8hUTztWJgqLOzCPT4D0UznPBc_DPo_?authuser=5#scrollTo=WTsFzMQp6VCb Business Email: jonathan@shujin.ai
Unlocking the power of LLM benchmarks - part 3
Просмотров 22211 месяцев назад
Unlock the Power of LLM Benchmarks! 📊 🧪 How to rigorously test LLMs for your unique use case? 🔍 What exactly are ARC, HellSwag, and MMLU? 🤝 Who are the masterminds behind these benchmarks? 💪 How robust are these benchmarks, and why does it matter? 🔍 Which benchmark should you choose for your specific needs?
Unlocking the power of LLM benchmarks - part 2
Просмотров 20911 месяцев назад
Unlock the Power of LLM Benchmarks! 📊 Join us this week for a deep dive into "Making Sense of Different LLM Benchmarks": 🧪 How to rigorously test LLMs for your unique use case? 🔍 What exactly are ARC, HellSwag, and MMLU? 🤝 Who are the masterminds behind these benchmarks? 💪 How robust are these benchmarks, and why does it matter? 🔍 Which benchmark should you choose for your specific needs?
Unlocking the power of LLM benchmarks - part 1
Просмотров 68611 месяцев назад
Unlock the Power of LLM Benchmarks! 📊 Join us this week for a deep dive into "Making Sense of Different LLM Benchmarks": 🧪 How to rigorously test LLMs for your unique use case? 🔍 What exactly are ARC, HellSwag, and MMLU? 🤝 Who are the masterminds behind these benchmarks? 💪 How robust are these benchmarks, and why does it matter? 🔍 Which benchmark should you choose for your specific needs?
despite using a tree or graph system you will notice that this is not how to conduct sucessful researcch as well as not the required steps to produce a paper ? its more like a sumarized websearcher ! ust because it may have 1000 words does not maake it a paper !!! you nned to be implemeting Preffered research methods as stated on any universtay TA website ! this is where you begin when desiging such tools ! HOw much tokens are passed lol ! << In fact by using a state and passing that state betwen agents you can build any template , such as a dissertation with full detailed sections based on the methodology stated on may websites ( uini _ ) and let the agents fill the task : i fact your supposed to only pass small tasks to the writer to write sections , not tooo large to raise the quqelity of the response and not make them write such long context in which they fail ! by implementing a state to pass betewee agent you can resrict the information given to th emodel to the specific data it weuires for the task ! Later your reviewer can review each chapter ! and not the overall paper ! as again the context its too large before it becoems a point of failure !
super straightforward, thx for the video 😁👍
Great discussion:)
Great content, thanks
Really nice, thanks for sharing
Can you share the demo repo?
Great talk! 😃
Great talk - thank you:)
Thanks :)
As a newcomer to this, this was incredibly enlightening! My take-way is that yes, with some proper prompts for complex solutions, you get very close to "I might as well have done the whole thing myself". The point is the scaling: you go through these steps, because you then have a "prompt model" that you can use over and over for similar tasks.
cringe
Great Talk!
This is the kind of video where you do the "Fabric - Extract Wisdom" magic on.
Couldn't agree more!
great talk :) thank you
Glad you enjoyed it!
About the guarding post problem: posts, gate, Hasam . . . 3 different words for the same thing. Seems like a rookie misstake to me.
nice:)
nice:)
Thanks but the colab file is not accessible. Kindly check
What is the name of the platform mentioned at 50:38? I can't understand it enough to catch the name, thanks.
Best video I've seen on Prompt Engineering, thanks.
Thank you so much.
love the content, real value no bs no hype... massive knowledge drop thanks
TL;DR? Any top highlights?
I can't access to colab file can somebody help me about it?
Great presentation! Including your channel to my paid subs in tomorrows webinar!
Thanks a lot, I benefited a lot from this seminar.
Great Material! Thanks
Wow ! That was useful. Many thanks Jonathan !
Jonathan, thank you so much for this. I have been at quest where I have been studying many different techniques when it comes to extraction of data in form of products from a database we have. I have now developed a technique, but the hardest part that I have worked with several months is making the llm to update it's chunks from the database as it is a cost/performance balance that we are trying to achieve. We are very close, and we have seen that how we structure our data is as important as the base prompt. We are using retrieval augmented generation also. Can you please comment on this or make a video. I think this will be benifitial to many in the future. Thank you again, very good content.
Your tutorial is superb. If you may, do you have a PDF copy of prompting examples as shown in this video? It would greatly help so we'll just copy and paste to test and actually play with those prompting examples for more interactive learning.
You forgot swearing as a prompt technique. The other day I was prompting a woman with a skirt and kept images of her in a pair of jeans, no matter how many parentheses I put around the word (((skirt))). Finally I lost my patience and wrote "She is wearing a f***ing skirt!" and it worked like a charm :D
Excellent.
Very interesting review of the already available use cases and a great change management approach to achieve real value in the implementation!
Brilliantly clear and covered heaps! Legend
Shai great talk and example. thank you for putting this together. much appreciate.
Thanks for the feedback mate - glad you found it useful!
Exciting to see this high level professionalism and innovation!
Great talk - thank you for sharing:) I agree with the final thoughts - learning AI by doing:)
I finished the whole talk, it's really great to see such wonderful talk. Continue such work and bring experts.😊
Great examples - Thank you for sharing:)
Great presentation - thank you for sharing:)
Behazlaha!
Thanks for your content it is great!
This was amazing. I'ld love to see more content on prompt engineering from you!
Thanks. That is on the roadmap.
Amazing video! I wonder if there any puzzles / challenges for learning prompts? Would be a fun way to learn!
There are! Check out the colab in the description. I wonder if a weekly stream of me prompt engineering hard prompts would be interesting.
@@LatentAI Cool! Yes, I totally think such a stream would be nice. Also a collection / dataset of high quality prompts would be nice. Let me know if you know of any. I am thinking of building an app around this to make it fun to learn.
thank you for tips how to prompt:)
Great session! Keep these coming
just curious, why use chinese word "host" as your channel's logo, and "shujin" sounds a lot like the chinese pronunciation, or the japanese pronunciation?