Essence of AI

Sayan

A podcast focussing on the new and exciting in the fields of computing, machine learning and technology.

Episódios

  1. 24 DE JUN.

    The Software Hippocratic Oath: Alan Kay on Why Your Code Must Not Harm or Fail

    Dive into a thought-provoking keynote by Alan Kay from GOTO 2021 as he tackles the challenging question: "Is Software Engineering Still an Oxymoron?". Drawing on his extensive experience and insights from friends and colleagues, Kay defines true engineering as "designing, making, and repairing things in principled ways". This talk explores the historical evolution of engineering disciplines, from initial tinkering to the sophisticated integration of aesthetics, engineering, mathematics, and science. While much of software engineering today is characterized by "a lot of tinkering" and very little "real engineering, tiny bit of math and... a little bit of science," resembling other fields a century ago, Kay argues for an aspiration towards greater maturity. He critically examines the prevalent attitude of "move fast and break things" and the Dunning-Kruger syndrome (overestimating one's ability) often seen in software development. He cites real-world examples like the Facebook outage – where a lack of a system model and failure to design for potential errors led to huge ramifications – and the tragic Boeing 737 MAX autopilot failures as stark consequences of neglecting fundamental engineering principles and failing to prioritize safety and comprehensive design. Discover the vision for a more robust future, inspired by pioneers like Ivan Sutherland's Sketchpad, which introduced groundbreaking concepts like object-oriented design and constraint solving, and Doug Engelbart's work on augmenting human intellect to better address complex problems. Kay advocates for the widespread adoption of the "CAD Sim Fab" (Design, Simulate, Build) paradigm, emphasizing the critical importance of designing and thoroughly simulating systems before building them, a practice common in other engineering fields but often overlooked in software. Ultimately, he posits that software, which is rapidly reaching everywhere, possesses "the most degrees of freedom," and is "the most dangerous new set of technologies invented" that is "starting to kill people," must embrace a "Hippocratic Oath" – the pledge that "the software must not harm or fail". This is not a fixed destination but a continuous process of striving to become better engineers and a more civilized society. This podcast was generated by NotebookLM from https://youtu.be/D43PlUr1x_E.

    19min
  2. 19 DE JUN.

    Andrej Karpathy: Software Is Changing (Again) – Navigating the Era of AI

    Join Andrej Karpathy, former Director of AI at Tesla, as he reveals the profound shifts fundamentally reshaping software, a transformation more rapid and significant than any in the last 70 years. Discover the evolution of software: Software 1.0: Traditional human-written code like C++.Software 2.0: Neural networks, where the "code" is the network's weights, tuned by data (e.g., image recognizers, Tesla Autopilot's neural nets "ate through the software stack").Software 3.0: The latest paradigm, where Large Language Models (LLMs) are programmed directly by natural language prompts, often in English – a new kind of computer and programming language.Karpathy describes LLMs as: Utilities: Centralized providers (OpenAI, Gemini, Anthropic) train models with massive capital expenditure (capex) and serve intelligence via metered APIs, much like an electricity grid.Fabs: Requiring significant capex and housing rapidly growing "tech trees" of R&D secrets.Operating Systems: Increasingly complex software ecosystems, similar to Windows or Linux, orchestrating memory and compute for problem-solving. We're in a "circa 1960sish era" of LLM computing, where it's expensive and centralized, leading to time-sharing models.Explore the unique "psychology" of LLMs, which he likens to "people spirits": Superhuman capabilities: Possessing "encyclopedic knowledge and memory," able to recall vast amounts of information (like Dustin Hoffman's character in Rainman).Cognitive deficits: Prone to hallucinations, "jagged intelligence" (excelling in some areas, making basic mistakes in others), and "anterograde amnesia" (not natively learning or consolidating knowledge over time, akin to Memento). They are also susceptible to prompt injection risks.Karpathy highlights major opportunities in this new landscape: Partial Autonomy Apps: Building software where humans cooperate with AI. AI generates, and humans verify, with an "autonomy slider" for users to control AI involvement. Examples include Cursor for coding and Perplexity for search, emphasizing fast human-AI generation-verification loops and visual GUIs for auditing."Vibe Coding": Natural language programming makes everyone a programmer, enabling rapid development of custom applications without deep programming language expertise.Building for Agents: Rethinking digital infrastructure to cater to LLM agents as a "new consumer and manipulator of digital information." This includes creating lm.txt files for LLM instructions and transforming documentation into machine-readable Markdown or curl commands.Karpathy concludes that while full autonomy ("Iron Man robots") is still distant, the focus should be on building "Iron Man suits" – augmentations that empower humans with an autonomy slider to gradually increase AI involvement over time. It's an "amazing time to get into the industry" with vast amounts of code to be written and rewritten, working with these "fallible people spirits" of LLMs. This podcast was generated by NotebookLM from https://youtu.be/LCEmiRjPEtQ.

    23min

Sobre

A podcast focussing on the new and exciting in the fields of computing, machine learning and technology.