Serg Masís

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Serg Masís

Serg Masís

@smasis

Data Scientist in Ag 🌱 Environmentalist 🦥 Boba drinker🧋 Bestselling Author 📚 of "Interpretable Machine Learning with Python" and upcoming "𝘿𝙄𝙔 𝘼𝙄"

Raleigh, NC 🇺🇸 from 🇨🇷 Katılım Eylül 2009
786 Takip Edilen956 Takipçiler
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Serg Masís
Serg Masís@smasis·
🤯 I don't know what's crazier: that 98-yr-old Kissinger has an #ArtificialIntelligence book, or my book is ⅓ of the top 6 for #AI books in Amazon! I'd like to thank everyone that's supported me. And @PacktPub has a holiday sale 25% off bestselling titles packt.link/h4dGd
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Serg Masís
Serg Masís@smasis·
@rohanbhise836 - LLM Engineer's Handbook - AI Engineering - Hands-On Large Language Models - Causal Inference in Python - RAG-Driven Generative AI - Python Feature Engineering - Decoding Large Language Models
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Serg Masís
Serg Masís@smasis·
Pretty amazing to find my book featured in Santiago’s stack of ML books 🤩
Santiago@svpino

10 lessons you need to become an AI/ML engineer: 1. Framing machine learning problems 2. Weak supervision and active learning 3. Processing, training, deploying, inference pipelines 4. Offline evaluation and testing in production 5. Performing error analysis. Where to work next 6. Distributed training. Data and model parallelism 7. Pruning, quantization, and knowledge distillation 8. Serving predictions. Online and batch inference 9. Monitoring models and data distribution shifts 10. Automatic retraining and evaluation of models We cover everything on this list in my program, "Building Machine Learning Systems." And this is just the tip of the iceberg! My program is different from everything you've seen before. It's live. It's pretty hard-core. It's going to challenge you. The program consists of 14 hours of live classes, 8 hours of recordings, 30 assignments, 30 multi-choice questions, and a class project. Multiple companies in the space are hosting exclusive sessions for members (Google, Cleanlab, and Giskard are coming next!) My guarantee is simple: you'll learn more than you've ever done before. • Cohort #9 starts on December 4th • Cohort #10 starts on January 8th • Cohort #11 starts on February 5th Join the community here: ml.school. You will join another 1,000+ engineers who have already gone through the program. To join, you pay once and get lifetime access to every program and session we run. There are no recurrent fees. Ever. Here is the link to join: ml.school. Starting in January, the price will go up. Reply below with any questions.

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harpreet
harpreet@DataScienceHarp·
I'll be in San Francisco next week hosting an in-person meetup featuring a line-up that includes @seldo from @llama_index and @jayrodge15 from NVIDIA. @seldo will explain why RAG is insufficient: to get the best possible results, you have to take an agentic approach. Laurie will explain why and show you how to do it in LlamaIndex. @jayrodge15 will show us how to supercharge multimodal Retrieval-Augmented Generation (RAG) pipelines by combining NVIDIA’s GPU-accelerated tools with powerful open-source technologies. And some schmuck named @DataScienceHarp will show you the potential of vector search beyond RAG for large language models by exploring 5 handy ways to use embeddings for Visual AI. Hope to see you there! Details 👇🏼
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Serg Masís
Serg Masís@smasis·
@Vana48515321 @KirkDBorne @PacktPublishing It wasnt designed for beginners but it could be beginner friendly if said beginner is resourceful and looks for the few machine learning concepts I don’t explain from ground zero.
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Ваня
Ваня@Vana48515321·
@KirkDBorne @PacktPublishing @smasis Definitely looks like an incredible book. What level of knowledge would you need to read this? As in is this beginner-friendly? or does one need a base in AI/Python?
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Mickey (Miki)
Mickey (Miki)@BazeleyMikiko·
Honestly I have no intention of going after the Top Voice badge - I'm tired of the content treadmill. It supports neither a roof over my head, clothes on my back, or fulfillment in my soul. I'm going to be following @karenxcheng 's quotation of Ziad K. Abdelnour in her talk "The Artist vs The Algorithm" youtu.be/dZvLZf3Jn4s?si… - “Seek respect, not attention. It lasts longer.”
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Gift Ojeabulu
Gift Ojeabulu@GiftOjeabulu_·
This was what I noticed and I didn't contribute anymore. @LinkedIn should be build a better pipeline to make this better so it doesn't loose its value. Anyone can just answer multiple questions with chatGPT and get the top voice badge What do you think ?
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Santiago
Santiago@svpino·
@smasis Haven’t finished it yet. I should be done with it this week. Pretty awesome!
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Serg Masís retweetledi
harpreet
harpreet@DataScienceHarp·
Just as humans have always relied on tools, from the primitive hammer to the modern smartphone, to enhance our capabilities, so do agents in LangChain. In LangChain, agents harness various tools to perform tasks, retrieve information, and interface with external systems. Langchain offers: 🔧 Native Built-in Tools: • SerpAPIWrapper: Web searches & results retrieval. • OpenAI: Natural language responses via OpenAI models. • LLMChain: Text generation from language model prompts. • Bing & Google Search: Web search capabilities. • Python REPL: Execute Python code & interact with libraries. • Requests: Initiate HTTP requests to APIs. • Wolfram Alpha: Computation & knowledge access. But what if you have unique requirements? LangChain's got you covered. 🛠 Custom Tools: • Custom API Wrapper: Interface with specific APIs. • Database Connector: Connect & query custom databases. • Web Scraping Tool: Extract data from websites. Whether using native tools or creating custom ones, LangChain ensures agents are equipped to handle diverse tasks. Imagine the possibilities when your agents can be tailored to specific needs, integrating seamlessly with existing systems. Learn more and get hands-on with the notebook I've prepared for you 👇🏽
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Valeriy M., PhD, MBA, CQF
Valeriy M., PhD, MBA, CQF@predict_addict·
@smasis talks about his frustrations with responsible AI and discusses uncertainty quantification using #conformalprediction (27 min onwards) and how it gives people better understanding of what data scientists are predicting rather than fooling everyone (including themselves) with giving point forecasts. “Talking to Serg Masis, author of Interpretable Machine Learning, on the prospects for designing responsible and ethical AI systems.” youtube.com/watch?v=jIt3zi… #conformalprediction #machinelearning
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Serg Masís
Serg Masís@smasis·
Why does Python package popularity matter? Because it impacts how well it is maintained! 🙁 So, sadly, of the 60+ Responsible AI packages, about 25% haven’t been updated in the last 2 yrs. Some of these poorly maintained packages make it to the list of most popular ones🧵 5/5
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Serg Masís
Serg Masís@smasis·
SHAP can’t replace the entire Responsible AI toolset: bias mitigation, adversarial robustness, privacy-preserving machine learning, error analysis, uncertainty quantification, or training interpretable machine learning models, to name a few. 🧵 4/5
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Serg Masís
Serg Masís@smasis·
𝐩𝐢𝐩, which stands for Python Package Index, has over 540k Python packages. I searched my personal & work computer for requirements files. I have installed 450+ of them over the last 4 years. Then I gathered stats for the open-source ones. What I found was intriguing! 🤔 🧵 1/3
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