The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence) – Détails, épisodes et analyse

Détails du podcast

Informations techniques et générales issues du flux RSS du podcast.

The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence)

The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence)

Sam Charrington

Technology
News
Science

Fréquence : 1 épisode/4j. Total Éps: 758

Megaphone
Machine learning and artificial intelligence are dramatically changing the way businesses operate and people live. The TWIML AI Podcast brings the top minds and ideas from the world of ML and AI to a broad and influential community of ML/AI researchers, data scientists, engineers and tech-savvy business and IT leaders. Hosted by Sam Charrington, a sought after industry analyst, speaker, commentator and thought leader. Technologies covered include machine learning, artificial intelligence, deep learning, natural language processing, neural networks, analytics, computer science, data science and more.
Site
RSS
Apple

Classements récents

Dernières positions dans les classements Apple Podcasts et Spotify.

Apple Podcasts
  • 🇨🇦 Canada - technology

    28/07/2025
    #49
  • 🇬🇧 Grande Bretagne - technology

    28/07/2025
    #93
  • 🇺🇸 États-Unis - technology

    28/07/2025
    #69
  • 🇨🇦 Canada - technology

    27/07/2025
    #64
  • 🇬🇧 Grande Bretagne - technology

    27/07/2025
    #57
  • 🇺🇸 États-Unis - technology

    27/07/2025
    #75
  • 🇬🇧 Grande Bretagne - technology

    26/07/2025
    #78
  • 🇺🇸 États-Unis - technology

    26/07/2025
    #71
  • 🇨🇦 Canada - technology

    25/07/2025
    #63
  • 🇬🇧 Grande Bretagne - technology

    25/07/2025
    #69
Spotify

    Aucun classement récent disponible



Qualité et score du flux RSS

Évaluation technique de la qualité et de la structure du flux RSS.

See all
Qualité du flux RSS
À améliorer

Score global : 48%


Historique des publications

Répartition mensuelle des publications d'épisodes au fil des années.

Episodes published by month in

Derniers épisodes publiés

Liste des épisodes récents, avec titres, durées et descriptions.

See all

Automated Design of Agentic Systems with Shengran Hu - #700

Épisode 700

lundi 2 septembre 2024Durée 59:30

Today, we're joined by Shengran Hu, a PhD student at the University of British Columbia, to discuss Automated Design of Agentic Systems (ADAS), an approach focused on automatically creating agentic system designs. We explore the spectrum of agentic behaviors, the motivation for learning all aspects of agentic system design, the key components of the ADAS approach, and how it uses LLMs to design novel agent architectures in code. We also cover the iterative process of ADAS, its potential to shed light on the behavior of foundation models, the higher-level meta-behaviors that emerge in agentic systems, and how ADAS uncovers novel design patterns through emergent behaviors, particularly in complex tasks like the ARC challenge. Finally, we touch on the practical applications of ADAS and its potential use in system optimization for real-world tasks. The complete show notes for this episode can be found at https://twimlai.com/go/700.

The EU AI Act and Mitigating Bias in Automated Decisioning with Peter van der Putten - #699

Épisode 699

mardi 27 août 2024Durée 45:34

Today, we're joined by Peter van der Putten, director of the AI Lab at Pega and assistant professor of AI at Leiden University. We discuss the newly adopted European AI Act and the challenges of applying academic fairness metrics in real-world AI applications. We dig into the key ethical principles behind the Act, its broad definition of AI, and how it categorizes various AI risks. We also discuss the practical challenges of implementing fairness and bias metrics in real-world scenarios, and the importance of a risk-based approach in regulating AI systems. Finally, we cover how the EU AI Act might influence global practices, similar to the GDPR's effect on data privacy, and explore strategies for closing bias gaps in real-world automated decision-making. The complete show notes for this episode can be found at https://twimlai.com/go/699.

Long Context Language Models and their Biological Applications with Eric Nguyen - #690

Épisode 690

mardi 25 juin 2024Durée 45:41

Today, we're joined by Eric Nguyen, PhD student at Stanford University. In our conversation, we explore his research on long context foundation models and their application to biology particularly Hyena, and its evolution into Hyena DNA and Evo models. We discuss Hyena, a convolutional-based language model developed to tackle the challenges posed by long context lengths in language modeling. We dig into the limitations of transformers in dealing with longer sequences, the motivation for using convolutional models over transformers, its model training and architecture, the role of FFT in computational optimizations, and model explainability in long-sequence convolutions. We also talked about Hyena DNA, a genomic foundation model pre-trained on 1 million tokens, designed to capture long-range dependencies in DNA sequences. Finally, Eric introduces Evo, a 7 billion parameter hybrid model integrating attention layers with Hyena DNA's convolutional framework. We cover generating and designing DNA with language models, hallucinations in DNA models, evaluation benchmarks, the trade-offs between state-of-the-art models, zero-shot versus a few-shot performance, and the exciting potential in areas like CRISPR-Cas gene editing. The complete show notes for this episode can be found at https://twimlai.com/go/690.

Engineering Production NLP Systems at T-Mobile with Heather Nolis - #600

Épisode 600

lundi 21 novembre 2022Durée 43:53

Today we’re joined by Heather Nolis, a principal machine learning engineer at T-Mobile. In our conversation with Heather, we explored her machine learning journey at T-Mobile, including their initial proof of concept project, which held the goal of putting their first real-time deep learning model into production. We discuss the use case, which aimed to build a model customer intent model that would pull relevant information about a customer during conversations with customer support. This process has now become widely known as blank assist. We also discuss the decision to use supervised learning to solve this problem and the challenges they faced when developing a taxonomy. Finally, we explore the idea of using small models vs uber-large models, the hardware being used to stand up their infrastructure, and how Heather thinks about the age-old question of build vs buy. 

Sim2Real and Optimus, the Humanoid Robot with Ken Goldberg - #599

lundi 14 novembre 2022Durée 47:11

Today we’re joined by return guest Ken Goldberg, a professor at UC Berkeley and the chief scientist at Ambi Robotics. It’s been a few years since our initial conversation with Ken, so we spent a bit of time talking through the progress that has been made in robotics in the time that has passed. We discuss Ken’s recent work, including the paper Autonomously Untangling Long Cables, which won Best Systems Paper at the RSS conference earlier this year, including the complexity of the problem and why it is classified as a systems challenge, as well as the advancements in hardware that made solving this problem possible. We also explore Ken’s thoughts on the push towards simulation by research entities and large tech companies, and the potential for causal modeling to find its way into robotics. Finally, we discuss the recent showcase of Optimus, Tesla, and Elon Musk’s “humanoid” robot and how far we are from it being a viable piece of technology. The complete show notes for this episode can be found at twimlai.com/go/599.

The Evolution of the NLP Landscape with Oren Etzioni - #598

Épisode 598

lundi 7 novembre 2022Durée 53:15

Today friend of the show and esteemed guest host John Bohannon is back with another great interview, this time around joined by Oren Etzioni, former CEO of the Allen Institute for AI, where he is currently an advisor. In our conversation with Oren, we discuss his philosophy as a researcher and how that has manifested in his pivot to institution builder. We also explore his thoughts on the current landscape of NLP, including the emergence of LLMs and the hype being built up around AI systems from folks like Elon Musk. Finally, we explore some of the research coming out of AI2, including Semantic Scholar, an AI-powered research tool analogous to arxiv, and the somewhat controversial Delphi project, a research prototype designed to model people’s moral judgments on a variety of everyday situations.

Live from TWIMLcon! The Great MLOps Debate: End-to-End ML Platforms vs Specialized Tools - #597

Épisode 597

lundi 31 octobre 2022Durée 47:59

Over the last few years, it’s been established that your ML team needs at least some basic tooling in order to be effective, providing support for various aspects of the machine learning workflow, from data acquisition and management, to model development and optimization, to model deployment and monitoring. But how do you get there? Many tools available off the shelf, both commercial and open source, can help. At the extremes, these tools can fall into one of a couple of buckets. End-to-end platforms that try to provide support for many aspects of the ML lifecycle, and specialized tools that offer deep functionality in a particular domain or area. At TWIMLcon: AI Platforms 2022, our panelists debated the merits of these approaches in The Great MLOps Debate: End-to-End ML Platforms vs Specialized Tools.

Live from TWIMLcon! You're not Facebook. Architecting MLOps for B2B Use Cases with Jacopo Tagliabue - #596

Épisode 596

lundi 24 octobre 2022Durée 49:42

Much of the way we talk and think about MLOps comes from the perspective of large consumer internet companies like Facebook or Google. If you work at a FAANG company, these approaches might work well for you. But what about if you work at one of the many small, B2B companies that stand to benefit through the use of machine learning? How should you be thinking about MLOps and the ML lifecycle in that case? In this live podcast interview from TWIMLcon: AI Platforms 2022, Sam Charrington explores these questions with Jacopo Tagliabue, whose perspectives and contributions on scaling down MLOps have served to make the field more accessible and relevant to a wider array of practitioners.

Building Foundational ML Platforms with Kubernetes and Kubeflow with Ali Rodell - #595

Épisode 595

lundi 17 octobre 2022Durée 43:24

Today we’re joined by Ali Rodell, a senior director of machine learning engineering at Capital One. In our conversation with Ali, we explore his role as the head of model development platforms at Capital One, including how his 25+ years in software development have shaped his view on building platforms and the evolution of the platforms space over the last 10 years. We discuss the importance of a healthy open source tooling ecosystem, Capital One’s use of various open source capabilites like kubeflow and kubernetes to build out platforms, and some of the challenges that come along with modifying/customizing these tools to work for him and his teams. Finally, we explore the range of user personas that need to be accounted for when making decisions about tooling, supporting things like Jupyter notebooks and other low level tools, and how that can be potentially challenging in a highly regulated environment like the financial industry. The complete show notes for this episode can be found at twimlai.com/go/595

AI-Powered Peer Programming with Vasi Philomin - #594

Épisode 594

lundi 10 octobre 2022Durée 35:53

Today we’re joined by Vasi Philomin, vice president of AI services at AWS, joins us for our first in-person interview since 2019! In our conversation with Vasi, we discussed the recently released Amazon Code Whisperer, a developer-focused coding companion. We begin by exploring Vasi’s role and the various products under the banner of cognitive and non-cognitive services, and how those came together where Code Whisperer fits into the equation and some of the differences between Code Whisperer and some of the other recently released coding companions like GitHub Copilot. We also discuss the training corpus for the model, and how they’ve dealt with the potential issues of bias that arise when training LLMs with crawled web data, and Vasi’s thoughts on what the path of innovation looks like for Code Whisperer.  At the end of our conversation, Vasi was gracious enough to share a quick live demo of Code Whisperer, so you can catch that here.

Podcasts Similaires Basées sur le Contenu

Découvrez des podcasts liées à The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence). Explorez des podcasts avec des thèmes, sujets, et formats similaires. Ces similarités sont calculées grâce à des données tangibles, pas d'extrapolations !
Il n'y a pas de contenu associé à ce podcast.
© My Podcast Data