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Analysis

This paper addresses the limitations of existing experimental designs in industry, which often suffer from poor space-filling properties and bias. It proposes a multi-objective optimization approach that combines surrogate model predictions with a space-filling criterion (intensified Morris-Mitchell) to improve design quality and optimize experimental results. The use of Python packages and a case study from compressor development demonstrates the practical application and effectiveness of the proposed methodology in balancing exploration and exploitation.
Reference

The methodology effectively balances the exploration-exploitation trade-off in multi-objective optimization.

Research#llm📝 BlogAnalyzed: Dec 25, 2025 16:37

Are We Testing AI’s Intelligence the Wrong Way?

Published:Dec 4, 2025 23:30
1 min read
IEEE Spectrum

Analysis

This article highlights a critical perspective on how we evaluate AI intelligence. Melanie Mitchell argues that current methods may be inadequate, suggesting that AI systems should be studied more like nonverbal minds, drawing inspiration from developmental and comparative psychology. The concept of "alien intelligences" is used to bridge the gap between AI and biological minds like babies and animals, emphasizing the need for better experimental methods to measure machine cognition. The article points to a potential shift in how AI research is conducted, focusing on understanding rather than simply achieving high scores on specific tasks. This approach could lead to more robust and generalizable AI systems.
Reference

I’m quoting from a paper by [the neural network pioneer] Terrence Sejnowski where he talks about ChatGPT as being like a space alien that can communicate with us and seems intelligent.

Research#llm📝 BlogAnalyzed: Jan 3, 2026 07:12

Prof. Melanie Mitchell 2.0 - AI Benchmarks are Broken!

Published:Sep 10, 2023 18:28
1 min read
ML Street Talk Pod

Analysis

The article summarizes Prof. Melanie Mitchell's critique of current AI benchmarks. She argues that the concept of 'understanding' in AI is poorly defined and that current benchmarks, which often rely on task performance, are insufficient. She emphasizes the need for more rigorous testing methods from cognitive science, focusing on generalization and the limitations of large language models. The core argument is that current AI, despite impressive performance on some tasks, lacks common sense and a grounded understanding of the world, suggesting a fundamentally different form of intelligence than human intelligence.
Reference

Prof. Mitchell argues intelligence is situated, domain-specific and grounded in physical experience and evolution.

Research#AI Ethics📝 BlogAnalyzed: Dec 29, 2025 07:42

Data Rights, Quantification and Governance for Ethical AI with Margaret Mitchell - #572

Published:May 12, 2022 16:43
1 min read
Practical AI

Analysis

This article from Practical AI discusses ethical considerations in AI development, focusing on data rights, governance, and responsible data practices. It features an interview with Meg Mitchell, a prominent figure in AI ethics, who discusses her work at Hugging Face and her involvement in the WikiM3L Workshop. The conversation covers data curation, inclusive dataset sharing, model performance across subpopulations, and the evolution of data protection laws. The article highlights the importance of Model Cards and Data Cards in promoting responsible AI development and lowering barriers to entry for informed data sharing.
Reference

We explore her thoughts on the work happening in the fields of data curation and data governance, her interest in the inclusive sharing of datasets and creation of models that don't disproportionately underperform or exploit subpopulations, and how data collection practices have changed over the years.

Research#llm📝 BlogAnalyzed: Dec 29, 2025 09:35

Machine Learning Experts - Margaret Mitchell

Published:Mar 23, 2022 00:00
1 min read
Hugging Face

Analysis

This article, sourced from Hugging Face, likely focuses on Margaret Mitchell, a prominent figure in machine learning. The content will probably delve into her expertise, contributions, and possibly her current work or research interests. Given the source, it's reasonable to expect a focus on open-source AI, ethical considerations, and the practical applications of machine learning. The article's value lies in providing insights into a leading expert and potentially highlighting advancements in the field.
Reference

This section is missing from the provided article, so no quote can be provided.

Research#AI Challenges📝 BlogAnalyzed: Jan 3, 2026 07:16

Why AI is harder than we think

Published:Jul 25, 2021 15:40
1 min read
ML Street Talk Pod

Analysis

The article discusses the cyclical nature of AI development, highlighting periods of optimism followed by disappointment. It attributes this to a limited understanding of intelligence, as explained by Professor Melanie Mitchell. The piece focuses on the challenges in realizing long-promised AI technologies like self-driving cars and conversational companions.
Reference

Professor Melanie Mitchell thinks one reason for these repeating cycles is our limited understanding of the nature and complexity of intelligence itself.

Research#llm📝 BlogAnalyzed: Dec 29, 2025 07:53

Can Language Models Be Too Big? A Discussion with Emily Bender and Margaret Mitchell

Published:Mar 24, 2021 16:11
1 min read
Practical AI

Analysis

This article summarizes a podcast episode from Practical AI featuring Emily Bender and Margaret Mitchell, co-authors of the paper "On the Dangers of Stochastic Parrots: Can Language Models Be Too Big?" The discussion centers on the paper's core arguments, exploring the potential downsides of increasingly large language models. The episode covers the historical context of the paper, the costs (both financial and environmental) associated with training these models, the biases they can perpetuate, and the ethical considerations surrounding their development and deployment. The conversation also touches upon the importance of critical evaluation and pre-mortem analysis in the field of AI.
Reference

The episode focuses on the message of the paper itself, discussing the many reasons why the ever-growing datasets and models are not necessarily the direction we should be going.

Research#llm📝 BlogAnalyzed: Dec 29, 2025 07:54

Complexity and Intelligence with Melanie Mitchell - #464

Published:Mar 15, 2021 17:46
1 min read
Practical AI

Analysis

This article summarizes a podcast episode featuring Melanie Mitchell, a prominent researcher in artificial intelligence. The discussion centers on complex systems, the nature of intelligence, and Mitchell's work on enabling AI systems to perform analogies. The episode explores social learning in the context of AI, potential frameworks for analogy understanding in machines, and the current state of AI development. The conversation touches upon benchmarks for analogy and whether social learning can aid in achieving human-like intelligence in AI. The article highlights the key topics covered in the podcast, offering a glimpse into the challenges and advancements in the field.
Reference

We explore examples of social learning, and how it applies to AI contextually, and defining intelligence.

Research#llm📝 BlogAnalyzed: Dec 29, 2025 17:42

Melanie Mitchell: Concepts, Analogies, Common Sense & Future of AI

Published:Dec 28, 2019 18:42
1 min read
Lex Fridman Podcast

Analysis

This article summarizes a podcast episode featuring Melanie Mitchell, a computer science professor, discussing AI. The conversation covers various aspects of AI, including the definition of AI, the distinction between weak and strong AI, and the motivations behind AI development. Mitchell's expertise in areas like adaptive complex systems and cognitive architecture, particularly her work on analogy-making, is highlighted. The article also provides links to the podcast and Mitchell's book, "Artificial Intelligence: A Guide for Thinking Humans."
Reference

This conversation is part of the Artificial Intelligence podcast.

Education#Machine Learning👥 CommunityAnalyzed: Jan 3, 2026 09:51

Machine Learning Course by Tom Mitchell

Published:Dec 19, 2014 04:33
1 min read
Hacker News

Analysis

This is a very brief announcement. It highlights a machine learning course by a well-known figure, Tom Mitchell. The lack of detail makes it difficult to analyze further. The significance depends entirely on the context of Hacker News and the reputation of Tom Mitchell.
Reference

Research#llm👥 CommunityAnalyzed: Jan 4, 2026 11:55

Tom Mitchell working on new Machine Learning chapters

Published:Jun 23, 2013 04:37
1 min read
Hacker News

Analysis

This headline indicates that a prominent figure in the field of Machine Learning, Tom Mitchell, is updating or creating new content related to the subject. The source, Hacker News, suggests the information is likely to be of interest to a technical audience. The lack of further detail makes it difficult to assess the significance without more context.

Key Takeaways

    Reference

    Research#llm👥 CommunityAnalyzed: Jan 3, 2026 09:51

    Online graduate-level machine learning course from CMU's Tom Mitchell

    Published:Nov 5, 2011 13:41
    1 min read
    Hacker News

    Analysis

    The article announces an online graduate-level machine learning course. The source is Hacker News, suggesting it's likely of interest to a technical audience. The summary is concise and directly states the core information.
    Reference