AI Submissions for Thu Apr 25 2024
Why AI is failing at giving good advice
Submission URL | 28 points | by mxmzb | 33 comments
In a thought-provoking examination, Maxim Zubarev delves into why AI often falls short in offering meaningful advice. Drawing on the limitations inherent in machine learning models like ChatGPT, which rely on statistical probabilities derived from vast amounts of internet data, Zubarev asserts that the resulting advice tends to be generic, lacking the depth and nuance that human experience and empathy can impart. Through a fascinating exploration of how ChatGPT processes language input mathematically, Zubarev highlights the inherent constraints of relying on text-based algorithms for personalized guidance. The article underscores that while AI excels at explaining concepts, it struggles to provide truly insightful, tailored advice that resonates with individuals on a deep level.
By dissecting a public experiment where ChatGPT was tasked with generating money-making strategies, Zubarev exposes the disconnect between algorithmic responses and real-world success. Despite the AI's ability to regurgitate popular online narratives, its recommendations often lack practicality and genuine understanding of complex human endeavors like entrepreneurship. Ultimately, Zubarev argues that AI, although proficient at processing information, falls short in replicating the nuanced guidance and empathy offered by human mentors or teachers. While AI may excel at certain tasks, the art of providing genuinely helpful and personalized advice remains a realm where human intuition and experience still reign supreme.
The discussion on the Hacker News submission primarily revolves around the limitations and capabilities of AI models like ChatGPT in providing meaningful advice to users. NiagaraThistle brings up Pieter Levels as an example of successful AI-driven therapy and suggests that AI can offer good results but may not be perfect. Joker_vD discusses how rephrasing or paraphrasing internet-related text can lead to ambiguous answers. In response, mxmzb mentions the importance of giving individuals helpful and specific advice.
tv talks about how people tend to trust their friends and coworkers more than a device like ChatGPT when it comes to providing accurate information. In contrast, ltxr points out that people may confidently provide incorrect information, emphasizing the importance of learning from mistakes and correcting them. vbrsl highlights the value of AI in certain tasks but argues that true personalized guidance comes from human understanding and empathy. On the other hand, vsrg delves into the nature of AI models and their ability to learn from feedback to improve over time.
CuriouslyC discusses the perspective of GPT in providing advice based on varying viewpoints. asp_hornet brings up the challenge of AI understanding alternative perspectives. jkthgy shares a personal experience where traditional therapy was more helpful compared to AI solutions like GPT.
Overall, the discussion reflects a mix of viewpoints on the abilities and limitations of AI in providing personalized, insightful advice compared to human mentors or therapists.
Quaternion Knowledge Graph Embeddings (2019)
Submission URL | 95 points | by teleforce | 39 comments
The paper titled "Quaternion Knowledge Graph Embeddings" by Shuai Zhang, Yi Tay, Lina Yao, and Qi Liu proposes a novel approach using quaternion embeddings to represent entities and relations in knowledge graphs. By utilizing hypercomplex-valued embeddings with three imaginary components, the authors aim to capture latent inter-dependencies and enable expressive rotation in a four-dimensional space. The proposed method outperformed existing approaches on well-established knowledge graph completion benchmarks, showcasing its effectiveness. This work was accepted by NeurIPS 2019 and offers a promising direction in relational representation learning.
The discussion on the submission "Quaternion Knowledge Graph Embeddings" sparked various interesting conversations on Hacker News. Here is a summary of some of the key points:
- One user expressed skepticism about the embedding method's significance and argued that simple graph representations using techniques like subgraph embeddings might yield substantial results.
- Another user pointed out that linear algebra-based embeddings could be slower in certain cases than the proposed Quaternion embeddings, highlighting the benefits of Poincaré Embeddings and querying embeddings efficiently.
- There was a mention of the implementation of QuatE in the PyKEEN library for knowledge graph embedding.
- A user discussed the complexity and advantages of Quaternions in representing rotations and interpolations, emphasizing their efficiency and compactness compared to matrices in certain operations.
- A user talked about the mathematical abstraction and historical context of Quaternions, reflecting on the intricacies and practical applications of these concepts in various fields.
- The conversation delved into the educational aspects of understanding Quaternions, especially in the context of 3D graphics, with insights on learning difficulties and resources for further exploration.
- Lastly, there was a discussion on the significance of understanding multiple types of embeddings to grasp complex mathematical models effectively, drawing parallels to other domains like Transformers in natural language processing.
The expansive discussion touched upon the technical nuances, historical backgrounds, practical applications, and educational challenges related to Quaternion embeddings, providing diverse perspectives on this novel approach in knowledge graph representation.
A look at the early impact of Meta Llama 3
Submission URL | 29 points | by magoghm | 10 comments
Meta Llama 3 is making waves in the AI community just a week after its release. The response has been incredible, with developers pushing the boundaries of innovation across various applications and tools. The models have been downloaded over 1.2 million times, and the community has shared over 600 derivative models on Hugging Face. Partners are already deploying Llama 3, including a fine-tuned version for medicine developed by Yale and EPFL. This is just the beginning; future releases will bring new capabilities like multimodality and multilingual conversations. Stay tuned for more exciting developments in the world of Meta Llama 3! Subscribe to their newsletter to stay updated on the latest news and events.
- mrgrczynsk expressed skepticism towards OpenAI Anthropic's sudden offering that resembles Meta Llama's offerings, highlighting concerns about the large-scale use of pretrained models. They also mentioned the significant financial implications of these developments in the commercial space.
- hyr shared positive feedback about Llama 3 8B locally and Llama's technical capabilities, emphasizing the usefulness of ChatGPT. They also mentioned not subscribing to Llama 3 but acknowledged its value.
- thjzzmn expressed a wish for GPT-like results from Llama 3 and highlighted the importance of continuous model development and modernizing prompting techniques.
- mritchie712 provided a command for finding formatting prompts in LLM and mentioned using it for startup savings.
- GaggiX mentioned the cost of using Llama 3 70B tokens and highlighted similar providers like FireworksAI and TogetherAI. They also discussed issues related to API limits and scaling projects.
Overall, the discussion touched on the technical aspects, financial implications, and practical applications of Meta Llama 3 in the AI community.
Researchers Showcase Decentralized AI-Powered Torrent Search Engine
Submission URL | 72 points | by HieronymusBosch | 18 comments
Researchers at Delft University have unveiled a decentralized AI-powered torrent search engine that could revolutionize how content is shared online. The Tribler research group, with nearly two decades of experience, aims to empower users by removing power from companies and governments. Their new framework, "De-DSI," combines large language models with decentralized search, allowing users to find content across a peer-to-peer network without central servers. While still in early stages, the project shows promise in creating a global brain to combat spam and censorship. The team's idealism and dedication to decentralization signal a new chapter in the battle for internet control, aligning with the ethos of early pioneers in peer-to-peer file-sharing.
The discussion on the submission about the decentralized AI-powered torrent search engine by researchers at Delft University covers various aspects:
- Technology and Strategy: There is a general question about the working strategy, technologies, and counter-culture nature of the internet cybersecurity establishment. The discussion delves into the difficulty of working on CyberPunk 20 topics and the critical reliance on funding and strategy decisions. The relevance of various technologies like decentralized systems, Bandwidth currency, Bitcoin, and decentralized machine learning is highlighted.
- Implementation and Suggestions: Users discuss practical aspects such as the massive instances management of 150m+ torrents over the years within the Tribler server with UI. Suggestions are made to try using specific tools for DHT indexing and predictions.
- Decentralized Search and Trust: There is interest in the idea of decentralized search, with comments about it being an essentially diverse problem that tends towards providing a trust framework. The discussion includes the impact on spam, the role of decentralized trust algorithms, and the release version of Tribler that aims to combat spammers.
- Comparisons and Suggestions: A comparison is drawn with other decentralized torrent search engines like Magnetico and Bitmagnet. It is pointed out that Magnetico's simplicity and effectiveness stand out, especially in providing a decentralized trust framework. Tribler, with its focus on decentralized trust and multiple generations of failure-resilient public thinking, is also explored.
- Further Insights and Challenges: Users talk about torrent tracker websites providing management links for local search functions, the vulnerabilities of locally computing environments, and the challenges of achieving decentralized storage systems efficiently. Considerations are also made regarding the costs of burning management links on the Ethereum blockchain and how ML search engines could have additional benefits.
Overall, the discussion covers a wide range of topics, from practical implementations to the theoretical foundations and challenges of decentralized search and trust frameworks in the context of torrent sharing.
Ex-athletic director arrested for framing principal with AI-generated voice
Submission URL | 183 points | by timcobb | 80 comments
In a shocking turn of events, the former athletic director of Pikesville High School, Dazhon Darien, was arrested for allegedly using artificial intelligence to frame Principal Eric Eiswert with racist and antisemitic comments. Darien's actions led to widespread outrage and disruptions in the school community after circulating fake audio clips impersonating Eiswert. The incident unfolded after Eiswert initiated an investigation into improper payments made by Darien to a school athletics coach. In retaliation, Darien allegedly created the fabricated recording to discredit Eiswert, leading to his temporary removal from the school. Darien was apprehended at BWI Airport with a gun while attempting to board a flight to Houston. He faces charges of disrupting school activities, theft, and retaliating against a witness. Despite being released on bond, the repercussions of his actions have raised questions about the authenticity of the audio and the use of AI technology. As the investigation continues, the school community grapples with the aftermath of this deceitful scheme that has tarnished reputations and sowed discord. The Baltimore Banner will continue to follow this developing story as more details emerge.
The discussion on Hacker News regarding the submitted story about the former athletic director of Pikesville High School, Dazhon Darien, involves various aspects of the incident. Users discussed the intricacies of the case, including Darien's alleged actions to frame Principal Eric Eiswert, the use of AI technology in creating fake recordings, and the repercussions of such deceitful schemes within the school community. Some users pointed out the potential implications of AI-generated content in cases like this, emphasizing the need for verifying the authenticity of recordings and the challenges in trusting such technology. Additionally, there were discussions about the role of investigators and the importance of thorough examination of evidence to avoid jumping to premature conclusions. Furthermore, the conversation touched upon topics such as the risks associated with relying on AI for detection and the potential misuse of technology in criminal cases. Users also highlighted the significance of thorough investigative processes and the evolving landscape of technological advancements impacting various aspects of society.
The "it" in AI models is the dataset
Submission URL | 101 points | by alvivar | 69 comments
OpenAI's researcher, reflecting on a year of training generative models, realizes that regardless of different configurations and hyperparameters, the models all converge to similar results by approximating their datasets extremely well. This remarkable finding suggests that with enough complexity, all models narrow down to the same point when trained on the same data for a sufficient duration. Surprisingly, it's not the architecture or training choices that determine a model's behavior, but the dataset itself. This insight implies that the key to model differences lies in the data rather than in the model's structure, shedding light on how models like Lambda, ChatGPT, Bard, or Claude are essentially representations of their datasets, not just their weights.
The discussion on the submission revolves around the significance of model architecture and hyperparameters in machine learning. Some commenters emphasize the importance of the right architecture in achieving success, while others argue that the dataset plays a more critical role in determining model behavior. There is a debate on whether large generative language models, such as LLMs, are primarily defined by their architecture or the training data they are exposed to. Additionally, the discussion touches on the role of model choices in machine learning competitions like Kaggle and the potential future directions of ML with regards to model architecture and data. The conversation also references the insights of prominent figures in the field, such as Yi Tay of Reka AI and Andrew Ng.
The Nimble File Format by Meta
Submission URL | 48 points | by zzulus | 19 comments
Introducing Nimble, a new file format for storing large columnar datasets developed by Meta. Nimble aims to surpass formats like Apache Parquet and ORC with features tailored for wide workloads, extensibility through customizable encodings, parallel processing capabilities, and a unified library approach to prevent fragmentation. While still under active development, Nimble boasts lighter metadata organization, support for cascading encodings, and pluggable encoding selection policies. The self-sufficient CMake build system makes compiling Nimble straightforward, with dependencies including gtest, glog, folly, abseil, and velox. Testing has been conducted with clang 15 and 16, and the Apache 2.0 License governs Nimble's usage. Watch out for future updates on this promising project!
The discussion on Hacker News about the submission regarding the new file format Nimble had several interesting points raised by the community:
- Some users expressed a preference for writing parsers with fewer dependencies to avoid potential environmental fragmentation, emphasizing the importance of a unified specification in Nimble to prevent this issue and encourage developers to leverage the library bindings provided by Nimble for high-quality integration.
- Others highlighted the challenges of documentation and clear communication in open-source projects, drawing parallels with popular projects like Puppet and Chef where incomplete or outdated documentation can hinder adoption and understanding, stressing the need for clear context and curated learning resources.
- There was a debate about the need for multiple implementations for testing, emphasizing the importance of a single implementation to avoid discrepancies between specification and implementation that could arise with multiple independent implementations.
- Concerns were raised about untrusted file parsing in C++ and potential vulnerabilities that may arise, with a reference to a future timeframe, 2024.
- A user shared a video link in the comments section and others discussed the differences between Nimble and Arrow/Parquet, with references to Lance and its potential advantages over legacy formats, noting the clarity and performance benefits of Nimble.
- Some users discussed benchmarking and optimization strategies for Nimble, including preliminary benchmarks presented in a video focusing on machine learning sequential scenarios compared to analytical workloads.
- The conversation also touched upon the benefits of MergeTree, ClickHouse's data format, and a humorous mention of the xkcd comic related to choosing data formats, suggesting a review of available options for comparison and Meta's potential involvement in the file format landscape.
Overall, the discussion provided insights into the community's perspectives on Nimble's features, potential challenges, and comparisons with existing file formats, highlighting the interest and areas of focus in further development and adoption of Nimble.