Hackworth

joined 3 months ago
[–] Hackworth@lemmy.world 1 points 29 minutes ago

Aye, flux [pro] via glif.app, though it's funny, sometimes I get better results from the smaller [schnell] model, depending on the use case.

[–] Hackworth@lemmy.world 9 points 16 hours ago (5 children)
[–] Hackworth@lemmy.world 9 points 16 hours ago (2 children)
[–] Hackworth@lemmy.world 5 points 16 hours ago

As a person with myopia, I find this comment tone deaf.

[–] Hackworth@lemmy.world 2 points 2 days ago

The more the original work is transformed, the more likely it is to be considered fair use rather than infringement.

[–] Hackworth@lemmy.world 11 points 6 days ago (1 children)

Just started a re-watch of Voy. I forgot what a stone cold badass Neelix is in the first few episodes.

[–] Hackworth@lemmy.world 8 points 1 week ago (1 children)

Cannot be done with Mint? I've OS hopped every few years - currently running Windows 11 at work and Mint at home. I much prefer the Mint install. That said, I'm a video producer - and video production just isn't there yet on Linux. CUDA's a pain to get working, proprietary codecs add steps, Davinci's linux support is more limited than it seems, KDenLive works in a pinch but lacks features, Adobe and Linux are like oil and water, there's no equivalent for After Effects... I don't doubt that there are workarounds for many of these issues. But the ROI's not there yet. I'd love to see a video production focused distro that really aimed for full production suite functionality. Especially since Hackintoshes are about to get even harder to build.

[–] Hackworth@lemmy.world 2 points 1 week ago

I wonder if she coulda kept her job if (instead of a poster in the classroom) she waited just outside the school grounds to hand fliers out to kids like the evangelicals do. Or would they have said something about her "representing the school" outside of work? I guess I wouldn't be surprised either way.

[–] Hackworth@lemmy.world 1 points 1 week ago (2 children)

Does posting to a blog count as publishing? I don't feel like old definitions of "private publisher" are as useful as they used to be. Public schools are such a quagmire of conflicting ideals on the best of days. Don't put up a flier for an unapproved study club, but CocaCola logos everywhere...

[–] Hackworth@lemmy.world 1 points 1 week ago

Genuine question: What evidence would make it seem likely to you that an AI "understands"? These papers are coming at an unyielding rate, so these conversations (regardless of the specifics) will continue. Do you have a test or threshold in mind?

 

“An intriguing open question is whether the LLM is actually using its internal model of reality to reason about that reality as it solves the robot navigation problem,” says Rinard. “While our results are consistent with the LLM using the model in this way, our experiments are not designed to answer this next question.”

The paper, "Emergent Representations of Program Semantics in Language Models Trained on Programs" can be found here.

Abstract

We present evidence that language models (LMs) of code can learn to represent the formal semantics of programs, despite being trained only to perform next-token prediction. Specifically, we train a Transformer model on a synthetic corpus of programs written in a domain-specific language for navigating 2D grid world environments. Each program in the corpus is preceded by a (partial) specification in the form of several input-output grid world states. Despite providing no further inductive biases, we find that a probing classifier is able to extract increasingly accurate representations of the unobserved, intermediate grid world states from the LM hidden states over the course of training, suggesting the LM acquires an emergent ability to interpret programs in the formal sense. We also develop a novel interventional baseline that enables us to disambiguate what is represented by the LM as opposed to learned by the probe. We anticipate that this technique may be generally applicable to a broad range of semantic probing experiments. In summary, this paper does not propose any new techniques for training LMs of code, but develops an experimental framework for and provides insights into the acquisition and representation of formal semantics in statistical models of code.

 
Attribute Unconscious Mind Generative AI
Information Processing Processes vast amounts of information rapidly and automatically, often without conscious awareness (From the first studies of the unconscious mind to consumer neuroscience: A systematic literature review, 2023) Processes large datasets quickly, extracting patterns and generating outputs without explicit programming for each task (Deep Learning, 2015)
Pattern Recognition Recognizes complex patterns in sensory input and past experiences, influencing behavior and decision-making (Analysis of Sources about the Unconscious Hypothesis of Freud, 2017) Excels at identifying patterns in training data, forming the basis for generating new content or making predictions (A Survey on Deep Learning in Medical Image Analysis, 2017)
Creativity Contributes to creative insights and problem-solving through unconscious incubation and associative processes (The Study of Cognitive Psychology in Conjunction with Artificial Intelligence, 2023) Generates novel combinations and ideas by recombining elements from training data in unexpected ways (e.g., GANs in art generation) (Generative Adversarial Networks, 2014)
Emotional Processing Processes emotional information rapidly, influencing mood and behavior before conscious awareness (Unconscious Branding: How Neuroscience Can Empower (and Inspire) Marketing, 2012) Can generate text or images with emotional content based on patterns in training data, but lacks genuine emotions (Language Models are Few-Shot Learners, 2020)
Memory Consolidation Plays a crucial role in memory consolidation during sleep, strengthening neural connections (The Role of Sleep in Memory Consolidation, 2001) Analogous processes in some AI systems involve memory consolidation and performance improvement (In search of dispersed memories: Generative diffusion models are associative memory networks, 2024)
Implicit Learning Acquires complex information without conscious awareness, as in procedural learning (Implicit Learning and Tacit Knowledge, 1994) Learns complex patterns and rules from data without explicit programming, similar to implicit learning in humans (Deep Learning for Natural Language Processing, 2018)
Bias and Heuristics Employs cognitive shortcuts and biases that can lead to systematic errors in judgment (Thinking, Fast and Slow, 2011) Can amplify biases present in training data, leading to skewed outputs or decision-making (Mind vs. Mouth: On Measuring Re-judge Inconsistency of Social Bias in Large Language Models, 2023)
Associative Networks Forms complex networks of associations between concepts, influencing thought and behavior (The associative basis of the creative process, 2010) Creates dense networks of associations between elements in training data, enabling complex pattern completion and generation tasks (Attention Is All You Need, 2017)
Parallel Processing Processes multiple streams of information simultaneously (Parallel Distributed Processing: Explorations in the Microstructure of Cognition, 1986)) Utilizes parallel processing architecture (e.g., neural networks) to handle multiple inputs and generate outputs (Next Generation of Neural Networks, 2021)
Intuition Generates rapid, automatic judgments based on unconscious processing of past experiences (Blink: The Power of Thinking Without Thinking, 2005) Produces quick outputs based on learned patterns, which can appear intuitive but lack genuine understanding (BERT: Pre-training of Deep Bidirectional Transformers for Language Understanding, 2019)
Priming Effects Unconscious exposure to stimuli influences subsequent behavior and cognition (Attention and Implicit Memory: Priming-Induced Benefits and Costs, 2016) Training on specific datasets can "prime" generative AI to produce biased or contextually influenced outputs (AI Fairness 360: An Extensible Toolkit for Detecting, Understanding, and Mitigating Unwanted Algorithmic Bias, 2018)
Symbol Grounding Grounds abstract symbols in sensorimotor experiences and emotions (The Symbol Grounding Problem, 1990) Struggles with true symbol grounding, relying instead on statistical correlations in text or other data (Symbol Grounding Through Cumulative Learning, 2006)
Metaphorical Thinking Uses embodied metaphors to understand and reason about abstract concepts (Metaphors We Live By, 1980) Can generate and use metaphors based on learned patterns but lacks deep understanding of their embodied nature (Deep Learning-Based Knowledge Injection for Metaphor Detection, 2023)
Dream Generation Produces vivid, often bizarre narratives and imagery during REM sleep (The Interpretation of Dreams, 1900) Some generative models can produce dream-like, surreal content (Video generation models as world simulators, 2024)
Cognitive Dissonance Automatically attempts to reduce inconsistencies between beliefs and behaviors (A Theory of Cognitive Dissonance, 1957) MoE architectures can handle a wider range of inputs without ballooning model size, suggesting potential for resolving conflicts between different AI components by synthesizing expert opinions into a coherent whole​ (Optimizing Generative AI Networking, 2024).
 

Ideogram prompt for base image (33 generated, 5 candidates):

The E.S.C. Apes pose for a group photo, wearing E.S.C. branded casual clothing. The setting is a cozy clubhouse. The apes are all unique and distinct from one another, including a chimp, gorilla, and orangutan., cinematic

Ideogram (magic)prompt for E.S.C. logo (12 generations, 2 candidates):

A sleek and modern logo design for the Educated Simian Club, featuring the stylized silhouette of a primate with a mortarboard cap. The typography is clean and sophisticated, with the words 'Educated Simian Club' in bold, capital letters. The overall design exudes an air of intelligence and exclusivity, perfect for an elite group of primatologists and enthusiasts., typography

Ran ESC logo through illusion diffusion for wood carving look.

Ideogram prompt for black and white Chimp Graduation Photo (8 generations, 3 candidates):

An extreme close up, black and white photograph of a chimpanzee graduating from college, in the act of throwing their graduation cap into the air. The chimp is clearly thrilled, surrounded by a large group of fellow alumni., cinematic

Photoshop to combine the elements and for generative fill to fix up some errors in the shirts and faces.

 

Full Speech Claude 3.5 Sonnet

Ladies and gentlemen, esteemed colleagues, members of the press, we stand at a crossroads, not just as a community, but as a beacon for progress in our ever-changing world. The path before us is both familiar and uncharted – a journey we must embark upon together. Some might say the numbers speak for themselves. But numbers, like whispers in a storm, can be misheard or misinterpreted. What truly matters is the spirit behind those figures – the unwavering commitment of every individual in this room and beyond.

Our new initiative isn't just a plan; it's a living, breathing entity. It will adapt, evolve, and transform as we move forward. We're not building a rigid structure, but planting seeds that will grow into a forest of opportunity. Now, I could regale you with promises of grandeur or visions of utopia. But let's be honest – we're all too smart for that. Instead, I offer you something far more valuable: potential. The potential for growth, for change, for leaving an indelible mark on ~~the tapestry of~~ our shared history.

Critics may question our methods. Skeptics may doubt our resolve. But to them, I say: watch closely. Our actions will echo louder than any words I could utter today. As we embark on this journey, remember: flexibility is our strength. What seems set in stone today may be sand tomorrow, ready to be reshaped by the tides of progress.

In conclusion, I stand before you not with grandiose proclamations, but with a simple truth: the future is ours to mold. And mold it we shall, with steadfast determination and a twinkle in our eye. Thank you, and may our endeavors be as fruitful as they are memorable – or perhaps, just memorable enough.

Three-shot (2 of 3) response to this this promt from Schizopolis (1996):

I don't need to tell you how critical this is. Hometown. Pay-per-view. The eyes of the media. Here's what I need. It should be lengthy enough to seem substantial yet concise enough to feel breezy. It should be serious, but with a slight wink. It should lay out a new course of action, but one that can change direction at any moment. If you must mention facts and figures, don't do so directly. The general thrust should remain embedded in one's mind forever, but specific words should be forgotten the moment they are heard. It should contain nothing that can't be confirmed or denied. You're writing the speech. Great success will directly benefit you greatly.

Ideogram Prompt by Claude, “Readwell” Voice on 11Labs, Hedra/Vimeo of course

 

Exhibit B: Labeling Training Data

Exhibit C: Image Generation

Exhibit D: Hallucinations

 

Also See: Worldwide Federated Training Of Language Models

Claude's Summary:

The two papers, "Worldwide Federated Training of Language Models" by Iacob et al. and "The Future of Large Language Model Pre-training is Federated" by Sani et al., both propose using federated learning (FL) as a new paradigm for pre-training large language models (LLMs). The main ideas are:

  1. FL allows leveraging more data and compute resources from multiple organizations around the world, while keeping the data decentralized and private. This can enable training larger LLMs on more diverse data compared to centralized training.

  2. FL relaxes synchronization requirements and reduces communication overheads compared to data-parallel distributed training, making it feasible for geographically distributed participants with varying hardware and connectivity.

  3. The papers present systems and algorithms for enabling efficient federated pre-training of LLMs at billion-parameter scales. Key techniques include allowing participants to modulate their amount of local training based on resource constraints, and partially personalizing models to clusters of participants with related data.

  4. Experimental results show federated LLM pre-training can match or exceed centralized training performance, with the performance gap narrowing as model size increases to billions of parameters. Larger federated models also converge faster and are more robust.

  5. Challenges include data and hardware heterogeneity across participants. The papers propose techniques like adaptive aggregation and load balancing to mitigate these issues.

In summary, the papers argue federated learning is a promising new direction for democratizing LLM pre-training by allowing many more organizations to collaboratively train large models on their combined data and compute resources. Let me know if you would like me to expand on any part of the summary or papers in more detail.

 
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