• Chris Deotte: Kaggle Competitions, LLM models and techniques, PhD and Technical Career

  • 2024/10/17
  • 再生時間: 2 時間 1 分
  • ポッドキャスト

Chris Deotte: Kaggle Competitions, LLM models and techniques, PhD and Technical Career

  • サマリー

  • Kaggle Grandmaster Chris Deotte, he is currently ranked 1 on notebooks and discussions on Kaggle and is part of the KGMON team, Kaggle Grandmasters of NVIDIA. We’ll be discussing GEN AI and personalization, optimizing your kaggle game and other strategies to make progress in your career.

    Solution: https://arxiv.org/pdf/2408.04658

    Mark Moyou, PhD Socials:
    LinkedIn: https://www.linkedin.com/in/markmoyou/
    Twitter: https://twitter.com/MarkMoyou

    Chapters:
    00:00 Intro
    01:51 Current Gen AI
    04:40 Evolution of Conceptualization in ML Models
    06:59 Measuring Tonality in Data Sets
    08:51 Multi-Modal Data Sets in Text Based Models
    11:56 Large Vs Small Language Models
    13:46 KDD 2024 Competition
    23:28 Prompt Formatting and Bribing the Model
    28:08 Qwen2 Vs LLama
    30:39 WiSE - FT
    33:53 LoRA on all the layers
    35:43 Logit Preprocessor
    42:05 Personality of Small Vs Large Model
    44:02 Models Understanding Shopping Concepts for E-Commerce
    47:26 Offline Purchase Data in E-Commerce Personalization
    55:56 Navigating the Problem with Required Data
    58:33 Constraining LLM Output
    01:00:45 LLMs in Search and Personalization
    01:02:03 Kaggle Grandmaster
    01:09:45 Gen AI in Kaggle Competition
    01:13:07 Learning ML in Non-Traditional Way
    01:16:15 Thoughts on doing PhD
    01:17:58 Mathematics
    01:22:22 Advice for PhD students
    01:24:32 Hardest Kaggle Competition
    01:27:32 Level of Grit in Competitions
    01:32:59 Career Optimization Function
    01:35:00 Management vs Technical IC Roles
    01:37:27 Making Progress
    01:39:48 Book Recommendations
    01:44:43 Thoughts on Writing Book
    01:46:20 Advice for High Schooler, College Students and Professionals
    01:52:20 Rapid Round

    続きを読む 一部表示

あらすじ・解説

Kaggle Grandmaster Chris Deotte, he is currently ranked 1 on notebooks and discussions on Kaggle and is part of the KGMON team, Kaggle Grandmasters of NVIDIA. We’ll be discussing GEN AI and personalization, optimizing your kaggle game and other strategies to make progress in your career.

Solution: https://arxiv.org/pdf/2408.04658

Mark Moyou, PhD Socials:
LinkedIn: https://www.linkedin.com/in/markmoyou/
Twitter: https://twitter.com/MarkMoyou

Chapters:
00:00 Intro
01:51 Current Gen AI
04:40 Evolution of Conceptualization in ML Models
06:59 Measuring Tonality in Data Sets
08:51 Multi-Modal Data Sets in Text Based Models
11:56 Large Vs Small Language Models
13:46 KDD 2024 Competition
23:28 Prompt Formatting and Bribing the Model
28:08 Qwen2 Vs LLama
30:39 WiSE - FT
33:53 LoRA on all the layers
35:43 Logit Preprocessor
42:05 Personality of Small Vs Large Model
44:02 Models Understanding Shopping Concepts for E-Commerce
47:26 Offline Purchase Data in E-Commerce Personalization
55:56 Navigating the Problem with Required Data
58:33 Constraining LLM Output
01:00:45 LLMs in Search and Personalization
01:02:03 Kaggle Grandmaster
01:09:45 Gen AI in Kaggle Competition
01:13:07 Learning ML in Non-Traditional Way
01:16:15 Thoughts on doing PhD
01:17:58 Mathematics
01:22:22 Advice for PhD students
01:24:32 Hardest Kaggle Competition
01:27:32 Level of Grit in Competitions
01:32:59 Career Optimization Function
01:35:00 Management vs Technical IC Roles
01:37:27 Making Progress
01:39:48 Book Recommendations
01:44:43 Thoughts on Writing Book
01:46:20 Advice for High Schooler, College Students and Professionals
01:52:20 Rapid Round

Chris Deotte: Kaggle Competitions, LLM models and techniques, PhD and Technical Careerに寄せられたリスナーの声

カスタマーレビュー:以下のタブを選択することで、他のサイトのレビューをご覧になれます。