Emerging architectures for LLM applications

  Рет қаралды 50,145

Superwise

Superwise

Жыл бұрын

Everything from training models from scratch and fine-tuning open-source models to using hosted APIs, with a particular emphasis on the design pattern of in-context learning.
Key topics we'll cover during the session include:
- Data preprocessing and embedding, focusing on the role of contextual data, embeddings, and vector databases in creating effective LLM applications.
- Strategies for prompt construction and retrieval, which are becoming increasingly complex and critical for product differentiation.
- Prompt execution and inference, analyzing the leading language model providers, their models, and tools used for logging, tracking, and evaluation of LLM outputs.
- Hosting solutions for LLMs, comparing the common solutions and emerging tools for easier and more efficient hosting of LLM applications.
Whether you're a seasoned AI professional, a developer beginning your journey with LLMs, or simply an enthusiast interested in the applications of AI, this webinar offers valuable insights that can help you navigate the rapidly evolving landscape of LLMs.
Follow along with the slides here go.superwise.a...

Пікірлер: 33
@MattHabermehl
@MattHabermehl 11 ай бұрын
4k views and only 2 comments. This is the best KZfaq video I've seen by far on these strategies. Great content - thank you so much for sharing your expertise!
@investigativeinterviewing4617
@investigativeinterviewing4617 11 ай бұрын
This is one of the best webinars I have seen on this topic. Great slides and presenters!
@williampourmajidi4710
@williampourmajidi4710 11 ай бұрын
🎯 Key Takeaways for quick navigation: 00:00 📚 Introduction to the topic of emerging architectures for LLM applications. 01:54 🧐 Why focus on LLM architectures. 04:02 📊 Audience poll on LLM use cases. 05:17 🧠 Retrieval Augmented Generation (RAG) as a design pattern. 08:05 💡 Advanced techniques in RAG and architectural considerations. 14:40 📦 Orchestration and addressing complex tasks with LLMs. 23:53 🧩 LLMs in Intermediate Summarization 26:43 📊 Monitoring in LLM Architecture 32:04 🛠️ LLM Agents and Tools 39:05 🔄 Improving LLM Inference Speed 49:26 🛡️ OpenAI's ChatGPT and its relevance in the field, 50:12 🌐 Evolution of ChatGPT and the AI landscape, 51:09 💼 OpenAI's models and their resource allocation, 52:16 🏢 Factors influencing model choice: Engineering, economy, and legal considerations, Made with HARPA AI
@vichitravirdwivedi
@vichitravirdwivedi 6 ай бұрын
crazy
@maria-wh3km
@maria-wh3km 11 күн бұрын
it was awesome, thanks guys, keep up the good work.
@afederici75
@afederici75 11 ай бұрын
This vieo was great! Thank you so much.
@vakman9497
@vakman9497 10 ай бұрын
I was very pleased to see how well everything was broken down! I was also shook to see a lot of the architecture strategies were things we were already implementing at our company so I'm happy to see we are on the right track 😅
@dr-maybe
@dr-maybe 11 ай бұрын
Very interesting, thanks for sharing
@todd-alex
@todd-alex 11 ай бұрын
Very informative. Several layers of LLM architectures need to be simplified like this. Maybe a standard for XAI should be developed based on a simplified architectural stack like this for LLMs.
@sunnychopper6663
@sunnychopper6663 11 ай бұрын
Really informative video. It will be interesting to see how different layers are formed throughout the coming months. Given the complexities of RAG, it'd be interesting to see hosted solutions that can offer competitive pricing on a RAG engine.
@vikassalaria24
@vikassalaria24 11 ай бұрын
Really great presentation.Keep up the good work
@user-wu9xc2ji4f
@user-wu9xc2ji4f 11 ай бұрын
Wonderful video, learns a lot, thanks
@zhw7635
@zhw7635 11 ай бұрын
Nice to see these topics covered, these come up as soon as I was attempting to implement something with llms
@salahuddeenilyasu4018
@salahuddeenilyasu4018 11 ай бұрын
I am curious to know what you are trying to implement.
@mayurpatilprince2936
@mayurpatilprince2936 10 ай бұрын
Informative video ... Waiting for next video :)
@MMABeijing
@MMABeijing 10 ай бұрын
That was very nice, thank you all
@user-qo6ni5sm5p
@user-qo6ni5sm5p 11 ай бұрын
Wonderful video, learns a lot, thanks. This vieo was great! Thank you so much..
@hidroman1993
@hidroman1993 11 ай бұрын
So informative, looking forward to seeing more
@_rjlynch
@_rjlynch 10 ай бұрын
Very informative, thanks!
@billykotsos4642
@billykotsos4642 10 ай бұрын
Great talk !
@vladimirobellini6128
@vladimirobellini6128 7 ай бұрын
great ideas txs!
@RiazLaghari
@RiazLaghari 6 ай бұрын
Great!
@HodgeLukeCEO
@HodgeLukeCEO 11 ай бұрын
Can you make the slides available? I have an issue seeing them and following along.
@superwiseai
@superwiseai 11 ай бұрын
No problem here you go - go.superwise.ai/hubfs/PDF%20assets/LLM%20Architectures_8.8.2023.pdf
@VaibhavPatil-rx7pc
@VaibhavPatil-rx7pc 11 ай бұрын
Excellent detailed information thanks, please share slide details,
@superwiseai
@superwiseai 11 ай бұрын
Thank you! You can access the slides here - go.superwise.ai/hubfs/PDF%20assets/LLM%20Architectures_8.8.2023.pdf
@GigaFro
@GigaFro 11 ай бұрын
Can someone provide an example of how one might introduce time as a factor in the embedding?
@serkanserttop1
@serkanserttop1 11 ай бұрын
It would be in a meta field that you use to filter results, not in the vector embeddings itself.
@Aidev7876
@Aidev7876 11 ай бұрын
Honestly. Not huge value for 55 minutes,,,
@k.8597
@k.8597 10 ай бұрын
these videos seldom are.. lol.
@chirusikar
@chirusikar 8 ай бұрын
Total gibberish in this video
Unraveling prompt engineering
1:07:19
Superwise
Рет қаралды 1,8 М.
لااا! هذه البرتقالة مزعجة جدًا #قصير
00:15
One More Arabic
Рет қаралды 50 МЛН
Jumping off balcony pulls her tooth! 🫣🦷
01:00
Justin Flom
Рет қаралды 35 МЛН
艾莎撒娇得到王子的原谅#艾莎
00:24
在逃的公主
Рет қаралды 45 МЛН
How to Build LLMs on Your Company’s Data While on a Budget
40:37
[Webinar] LLMs for Evaluating LLMs
49:07
Arthur
Рет қаралды 9 М.
Cognitive Architectures for Language Agents
57:16
LangChain
Рет қаралды 10 М.
A Survey of Techniques for Maximizing LLM Performance
45:32
Learn RAG From Scratch - Python AI Tutorial from a LangChain Engineer
2:33:11
#samsung #retrophone #nostalgia #x100
0:14
mobijunk
Рет қаралды 15 МЛН
Что делать если в телефон попала вода?
0:17
Лена Тропоцел
Рет қаралды 4,4 МЛН
📱магазин техники в 2014 vs 2024
0:41
djetics
Рет қаралды 886 М.
Что за "голый" Андройд? #pixel #android
0:40
Не шарю!
Рет қаралды 751 М.
Опасность фирменной зарядки Apple
0:57
SuperCrastan
Рет қаралды 12 МЛН