No video

LLMs will Transform Data Science - Here's How

  Рет қаралды 4,985

Rabbitmetrics

Rabbitmetrics

Күн бұрын

Пікірлер: 11
@bobk3
@bobk3 7 ай бұрын
I like the use case and I think it's missing an important point. Sure it's faster to bootstrap a GenAI model to classify personas in the beginning especially when you have no or little unlabeled data, but surely in time after collecting e-commerce data a trad supervised learning model (perhaps even with GenAI extracted features) will outperform GenAI. Would be interesting to see how this could be used with in a human in the loop system to review GenAI classifications or even use sales performance to label a data set.
@ranjancse26
@ranjancse26 7 ай бұрын
Agree with you, Anything to deal with the LLM is the costliest option ever. Although one could easily do with the LLM, however I don't think it's the best option either.
@rabbitmetrics
@rabbitmetrics 7 ай бұрын
Hi, thanks for the comment. A few thoughts: When you say, 'A traditional supervised ML model will outperform GenAI,' what does 'outperform' refer to in this context? Predictive accuracy? It's important to note that there are no persona labels available, nor will there be in the future. Predicting personas is not the primary business objective. The goal is to engineer tailored messaging that boosts conversion rates and value. Achieving this requires experimentally learning the function that maps features and messages to desired outcomes. The LLM approach will help speed up this experimentation process. If there are pre-existing messages or campaigns, their outcomes can be modeled using supervised learning, while carefully controlling for biases through A/B testing or causal ML. Additionally, with LLMs, there's the option to fine-tune them using Reinforcement Learning from Human Feedback (RLHF), which could potentially enhance the model's ability to generate messages that more effectively convert customers over time.
@pawanbhatt314
@pawanbhatt314 7 ай бұрын
Super informative video. And is this what 21st century surveillance looks like ?
@rabbitmetrics
@rabbitmetrics 7 ай бұрын
LLMs are likely already in use for surveillance purposes in some places. In this particular use case, however, email marketing with Klaviyo is done with full marketing consent that can be redacted at any time.
@kaanguul8552
@kaanguul8552 7 ай бұрын
IMO GNN/GCN suits better for many of the things done here. NLP LLMs are very good as a Semantic layer and will probably stay so?
@Jonathan-rm6kt
@Jonathan-rm6kt 7 ай бұрын
Interesting idea but I don't think a company would ever use LLMs to determine personas due to the lack of explainability. It would be an absolute nightmare to explain to leadership why 5% of your high value customers shifted after the last model update.
@rabbitmetrics
@rabbitmetrics 7 ай бұрын
LLMs can explain why a customer falls into a given category much better than traditional ML. You put business rules on top of the persona classification to make sure you're changing the "effective persona" and the messaging at the right time. No different than the challenges you face when personalizing without LLMs.
@jmo7327
@jmo7327 7 ай бұрын
Wrong lol. You obviously don’t know infra ML. Too slow.
Learn LangChain in 7 Easy Steps - Full Interactive Beginner Tutorial
41:37
"okay, but I want Llama 3 for my specific use case" - Here's how
24:20
Gli occhiali da sole non mi hanno coperto! 😎
00:13
Senza Limiti
Рет қаралды 17 МЛН
Meet the one boy from the Ronaldo edit in India
00:30
Younes Zarou
Рет қаралды 15 МЛН
Challenge matching picture with Alfredo Larin family! 😁
00:21
BigSchool
Рет қаралды 41 МЛН
LangChain Explained in 13 Minutes | QuickStart Tutorial for Beginners
12:44
Personalizing LLMs: Step-by-Step with LangChain
20:04
Rabbitmetrics
Рет қаралды 4,1 М.
LLM for data analytics: text-to-sql 3 architecture patterns
6:59
Denys on Data
Рет қаралды 1,3 М.
Robust Text-to-SQL With LangChain: Claude 3 vs GPT-4
19:40
Rabbitmetrics
Рет қаралды 4,3 М.
Data Analysis with Llama 3: Smart, Fast AND Private
7:49
Rabbitmetrics
Рет қаралды 8 М.
A Hackers' Guide to Language Models
1:31:13
Jeremy Howard
Рет қаралды 521 М.
DSPy Explained!
54:16
Connor Shorten
Рет қаралды 57 М.
$0 Embeddings (OpenAI vs. free & open source)
1:24:42
Rabbit Hole Syndrome
Рет қаралды 257 М.
HackerGPT Was Trained For Cyber Security (Use with CAUTION!!)
6:44
Matthew Berman
Рет қаралды 184 М.
ChatGPT for Data Analytics: Full Course
3:35:30
Luke Barousse
Рет қаралды 251 М.
Gli occhiali da sole non mi hanno coperto! 😎
00:13
Senza Limiti
Рет қаралды 17 МЛН