Hidden State podcast artwork

PODCAST · arts

Hidden State

Hidden State is the podcast where books reveal their secrets. Each episode, we dive deep into the pages of book — and explore the layers that live beneath the surface. From hidden layers we unpack the ideas that linger long after the last chapter. Whether you’re a curious reader, or just someone who craves a deeper look into the written word, Hidden State invites you to read between the lines, narrated by AI

  1. 4

    Situational Awareness: Counting Orders of Magnitude in AI Progress

    The source, titled "Situational Awareness: The Decade Ahead," by Leopold Aschenbrenner, discusses the author's perspective on the rapid advancements and potential future of artificial intelligence, dedicating the work to Ilya Sutskever. Aschenbrenner argues that a small group of people, primarily within AI labs, possess a unique situational awareness of these developments, having correctly predicted recent progress based on trendlines in compute and algorithmic efficiencies. The text projects a significant leap by 2027, potentially leading to AGI (Artificial General Intelligence) equivalent to a smart high-schooler, and the author further posits that AGI could quickly lead to superintelligence through accelerated AI research, compressing years of progress into months. The author identifies major challenges and potential pitfalls, including the immense capital buildout required for compute clusters, the critical need to secure AI secrets and weights from state actors like the CCP, the complex technical problem of superalignment to ensure AI systems are controllable, and the geopolitical race for dominance with authoritarian powers. Ultimately, Aschenbrenner suggests that the development of superintelligence will necessitate a government-led project, akin to the Manhattan Project, due to the national security implications and the scale of the required resources and security measures.

  2. 3

    Build a Large Language Model (From Scratch)

    This compilation of excerpts focuses on the practical implementation of large language models (LLMs), particularly those resembling the GPT architecture, from the foundational concepts upwards using PyTorch. It explains key components such as tokenization, embeddings, attention mechanisms, and transformer blocks, detailing how they contribute to building these models. The text also covers crucial processes for LLM development including pretraining and fine-tuning for various tasks, like text classification and instruction following, highlighting practical aspects such as handling datasets, managing hardware limitations, and utilizing pre-trained weights. Furthermore, it introduces methods for evaluating model performance and generating text, discussing techniques like greedy decoding and probabilistic sampling, and provides insights into advanced training techniques like parameter-efficient fine-tuning.Build a Large Language Model (From Scratch) -https://amzn.to/42uzzZR

  3. 2

    AI Engineering with Foundation Models

    This collection of excerpts offers a detailed exploration of AI Engineering, focusing on the practical aspects of building and deploying applications using foundation models. It discusses the evolution of AI models, from traditional ML to large language and multimodal models, outlining their capabilities and the challenges they present. The text covers key areas like evaluation methodologies, different model architectures and scaling factors, prompt engineering best practices for guiding model behavior, and advanced techniques such as Retrieval Augmented Generation (RAG) and the use of agents. Furthermore, it addresses crucial considerations for production systems, including finetuning models, dataset engineering (curation, synthesis, and processing), inference optimization for efficiency, and designing robust AI engineering architectures that incorporate feedback mechanisms.AI Engineering with Foundation Models - https://amzn.to/3YMqoS9

  4. 1

    Understanding Deep Learning

    This comprehensive textbook, "Understanding Deep Learning" by Simon J.D. Prince aims to provide newcomers with a strong conceptual foundation of deep learning principles without heavy mathematical proofs or extensive coding. It systematically introduces core concepts, starting with supervised learning and shallow neural networks, and then progresses to more advanced architectures like convolutional networks, residual networks, and transformers. The book also explores key aspects of deep learning algorithms, including loss functions, optimization, regularization, and unsupervised and reinforcement learning techniques. Furthermore, it addresses important ethical considerations and potential societal impacts of this rapidly evolving field.Understanding Deep Learning - https://amzn.to/3YEVZ8g

Type above to search every episode's transcript for a word or phrase. Matches are scoped to this podcast.

Searching…

We're indexing this podcast's transcripts for the first time — this can take a minute or two. We'll show results as soon as they're ready.

No matches for "" in this podcast's transcripts.

Showing of matches

No topics indexed yet for this podcast.

Loading reviews...

ABOUT THIS SHOW

Hidden State is the podcast where books reveal their secrets. Each episode, we dive deep into the pages of book — and explore the layers that live beneath the surface. From hidden layers we unpack the ideas that linger long after the last chapter. Whether you’re a curious reader, or just someone who craves a deeper look into the written word, Hidden State invites you to read between the lines, narrated by AI

HOSTED BY

Hidden State

CATEGORIES

Frequently Asked Questions

How many episodes does Hidden State have?

Hidden State currently has 4 episodes available on PodParley. New episodes are automatically indexed when they're published to the podcast feed.

What is Hidden State about?

Hidden State is the podcast where books reveal their secrets. Each episode, we dive deep into the pages of book — and explore the layers that live beneath the surface. From hidden layers we unpack the ideas that linger long after the last chapter. Whether you’re a curious reader, or just someone...

How often does Hidden State release new episodes?

Hidden State has 4 episodes. Check the episode list to see recent publication dates and frequency.

Where can I listen to Hidden State?

You can listen to Hidden State on PodParley by clicking any episode. We provide an embedded audio player for direct listening, and you can also subscribe via your preferred podcast app using the RSS feed.

Who hosts Hidden State?

Hidden State is created and hosted by Hidden State.
URL copied to clipboard!