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product#llm📝 BlogAnalyzed: Jan 20, 2026 02:45

AI Gaming Insights: A Fresh Perspective on Game Development

Published:Jan 20, 2026 01:39
1 min read
Zenn Claude

Analysis

This article explores the exciting potential of using AI for game analysis, offering a unique look at how AI can provide feedback on game design. The author's experiment opens doors for developers to gain fresh insights and potentially improve their games through AI-driven critique.
Reference

The article highlights the potential of using AI to provide feedback on game design, showcasing a unique perspective on game development.

research#llm📝 BlogAnalyzed: Jan 20, 2026 01:30

AI Writes Itself: LLM Crafts Qiita Articles from Notebooks!

Published:Jan 20, 2026 01:23
1 min read
Qiita ML

Analysis

This is an exciting exploration of how Large Language Models (LLMs) can generate high-quality content. By feeding a notebook into an LLM, the system is able to automatically produce an entire Qiita article! This demonstrates the impressive potential of LLMs to automate technical writing and content creation.
Reference

This article explores the use of Transformers, embeddings, and decoding to create articles.

research#ai development📝 BlogAnalyzed: Jan 18, 2026 21:00

AI-Powered Development: A Glimpse into the Future

Published:Jan 18, 2026 17:06
1 min read
Zenn AI

Analysis

This article offers a fascinating look at the evolving landscape of AI-driven development! The initial euphoria of creating with AI is explored, highlighting the transformative potential of these tools and hinting at exciting new possibilities.
Reference

AI development felt like magic at first, the author reports.

product#agent📝 BlogAnalyzed: Jan 18, 2026 09:15

Supercharge Your AI Agent Development: TypeScript Gets a Boost!

Published:Jan 18, 2026 09:09
1 min read
Qiita AI

Analysis

This is fantastic news! Leveraging TypeScript for AI agent development offers a seamless integration with existing JavaScript/TypeScript environments. This innovative approach promises to streamline workflows and accelerate the adoption of AI agents for developers already familiar with these technologies.
Reference

The author is excited to jump on the AI agent bandwagon without having to set up a new Python environment.

business#machine learning📝 BlogAnalyzed: Jan 17, 2026 20:45

AI-Powered Short-Term Investment: A New Frontier for Traders

Published:Jan 17, 2026 20:19
1 min read
Zenn AI

Analysis

This article explores the exciting potential of using machine learning to predict stock movements for short-term investment strategies. It's a fantastic look at how AI can potentially provide quicker feedback and insights for individual investors, offering a fresh perspective on market analysis.
Reference

The article aims to explore how machine learning can be utilized in short-term investments, focusing on providing quicker results for the investor.

research#data analysis📝 BlogAnalyzed: Jan 17, 2026 20:15

Supercharging Data Analysis with AI: Morphological Filtering Magic!

Published:Jan 17, 2026 20:11
1 min read
Qiita AI

Analysis

This article dives into the exciting world of data preprocessing using AI, specifically focusing on morphological analysis and part-of-speech filtering. It's fantastic to see how AI is being used to refine data, making it cleaner and more ready for insightful analysis. The integration of Gemini is a promising step forward in leveraging cutting-edge technology!
Reference

This article explores data preprocessing with AI.

product#llm📝 BlogAnalyzed: Jan 17, 2026 08:30

AI-Powered Music Creation: A Symphony of Innovation!

Published:Jan 17, 2026 06:16
1 min read
Zenn AI

Analysis

This piece delves into the exciting potential of AI in music creation! It highlights the journey of a developer leveraging AI to bring their musical visions to life, exploring how Large Language Models are becoming powerful tools for generating melodies and more. This is an inspiring look at the future of creative collaboration between humans and AI.
Reference

"I wanted to make music with AI!"

product#voice🏛️ OfficialAnalyzed: Jan 16, 2026 10:45

Real-time AI Transcription: Unlocking Conversational Power!

Published:Jan 16, 2026 09:07
1 min read
Zenn OpenAI

Analysis

This article dives into the exciting possibilities of real-time transcription using OpenAI's Realtime API! It explores how to seamlessly convert live audio from push-to-talk systems into text, opening doors to innovative applications in communication and accessibility. This is a game-changer for interactive voice experiences!
Reference

The article focuses on utilizing the Realtime API to transcribe microphone input audio in real-time.

research#llm📝 BlogAnalyzed: Jan 16, 2026 01:15

AI-Powered Access Control: Rethinking Security with LLMs

Published:Jan 15, 2026 15:19
1 min read
Zenn LLM

Analysis

This article dives into an exciting exploration of using Large Language Models (LLMs) to revolutionize access control systems! The work proposes a memory-based approach, promising more efficient and adaptable security policies. It's a fantastic example of AI pushing the boundaries of information security.
Reference

The article's core focuses on the application of LLMs in access control policy retrieval, suggesting a novel perspective on security.

research#llm📝 BlogAnalyzed: Jan 6, 2026 07:14

Gemini 3.0 Pro for Tabular Data: A 'Vibe Modeling' Experiment

Published:Jan 5, 2026 23:00
1 min read
Zenn Gemini

Analysis

The article previews an experiment using Gemini 3.0 Pro for tabular data, specifically focusing on 'vibe modeling' or its equivalent. The value lies in assessing the model's ability to generate code for model training and inference, potentially streamlining data science workflows. The article's impact hinges on the depth of the experiment and the clarity of the results presented.

Key Takeaways

Reference

In the previous article, I examined the quality of generated code when producing model training and inference code for tabular data in a single shot.

product#codegen🏛️ OfficialAnalyzed: Jan 6, 2026 07:17

OpenAI Codex Automates Go Inventory App Development: A 50-Minute Experiment

Published:Jan 5, 2026 17:25
1 min read
Qiita OpenAI

Analysis

This article presents a practical, albeit brief, experiment on the capabilities of OpenAI Codex in generating a Go-based inventory management application. The focus on a real-world application provides valuable insights into the current limitations and potential of AI-assisted code generation for business solutions. Further analysis of the generated code's quality, maintainability, and security would enhance the study's value.
Reference

とりあえずは「ほぼ」デフォルト設定のまま実行しました。

business#llm📝 BlogAnalyzed: Jan 4, 2026 02:51

Gemini CLI for Core Systems: Double-Entry Bookkeeping and Credit Creation

Published:Jan 4, 2026 02:33
1 min read
Qiita LLM

Analysis

This article explores the potential of using Gemini CLI to build core business systems, specifically focusing on double-entry bookkeeping and credit creation. While the concept is intriguing, the article lacks technical depth and practical implementation details, making it difficult to assess the feasibility and scalability of such a system. The reliance on natural language input for accounting tasks raises concerns about accuracy and security.
Reference

今回は、プログラミングの専門知識がなくても、対話AI(Gemini CLI)を使って基幹システムに挑戦です。

product#preprocessing📝 BlogAnalyzed: Jan 3, 2026 14:45

Equal-Width Binning in Data Preprocessing with AI

Published:Jan 3, 2026 14:43
1 min read
Qiita AI

Analysis

This article likely explores the implementation of equal-width binning, a common data preprocessing technique, using Python and potentially leveraging AI tools like Gemini for analysis. The value lies in its practical application and code examples, but its impact depends on the depth of explanation and novelty of the approach. The article's focus on a fundamental technique suggests it's geared towards beginners or those seeking a refresher.
Reference

AIでデータ分析-データ前処理AIでデータ分析-データ前処理(42)-ビニング:等幅ビニング

research#llm📝 BlogAnalyzed: Jan 3, 2026 12:27

Exploring LLMs' Ability to Infer Lightroom Photo Editing Parameters with DSPy

Published:Jan 3, 2026 12:22
1 min read
Qiita LLM

Analysis

This article likely investigates the potential of LLMs, specifically using the DSPy framework, to reverse-engineer photo editing parameters from images processed in Adobe Lightroom. The research could reveal insights into the LLM's understanding of aesthetic adjustments and its ability to learn complex relationships between image features and editing settings. The practical applications could range from automated style transfer to AI-assisted photo editing workflows.
Reference

自分はプログラミングに加えてカメラ・写真が趣味で,Adobe Lightroomで写真の編集(現像)をしています.Lightroomでは以下のようなパネルがあり,写真のパラメータを変更することができます.

Research#AI Evaluation📝 BlogAnalyzed: Jan 3, 2026 06:14

Investigating the Use of AI for Paper Evaluation

Published:Jan 2, 2026 23:59
1 min read
Qiita ChatGPT

Analysis

The article introduces the author's interest in using AI to evaluate and correct documents, highlighting the subjectivity and potential biases in human evaluation. It sets the stage for an investigation into whether AI can provide a more objective and consistent assessment.

Key Takeaways

Reference

The author mentions the need to correct and evaluate documents created by others, and the potential for evaluator preferences and experiences to influence the assessment, leading to inconsistencies.

Research#llm📝 BlogAnalyzed: Jan 3, 2026 06:04

Koog Application - Building an AI Agent in a Local Environment with Ollama

Published:Jan 2, 2026 03:53
1 min read
Zenn AI

Analysis

The article focuses on integrating Ollama, a local LLM, with Koog to create a fully local AI agent. It addresses concerns about API costs and data privacy by offering a solution that operates entirely within a local environment. The article assumes prior knowledge of Ollama and directs readers to the official documentation for installation and basic usage.

Key Takeaways

Reference

The article mentions concerns about API costs and data privacy as the motivation for using Ollama.

Does Using ChatGPT Make You Stupid?

Published:Jan 1, 2026 23:00
1 min read
Gigazine

Analysis

The article discusses the potential negative cognitive impacts of relying on AI like ChatGPT. It references a study by Aaron French, an assistant professor at Kennesaw State University, who explores the question of whether using ChatGPT leads to a decline in intellectual abilities. The article's focus is on the societal implications of widespread AI usage and its effect on critical thinking and information processing.

Key Takeaways

Reference

The article mentions Aaron French, an assistant professor at Kennesaw State University, who is exploring the question of whether using ChatGPT makes you stupid.

Research#llm👥 CommunityAnalyzed: Jan 3, 2026 06:33

Building an internal agent: Code-driven vs. LLM-driven workflows

Published:Jan 1, 2026 18:34
1 min read
Hacker News

Analysis

The article discusses two approaches to building internal agents: code-driven and LLM-driven workflows. It likely compares and contrasts the advantages and disadvantages of each approach, potentially focusing on aspects like flexibility, control, and ease of development. The Hacker News context suggests a technical audience interested in practical implementation details.
Reference

The article's content is likely to include comparisons of the two approaches, potentially with examples or case studies. It might delve into the trade-offs between using code for precise control and leveraging LLMs for flexibility and adaptability.

Analysis

This article presents a hypothetical scenario, posing a thought experiment about the potential impact of AI on human well-being. It explores the ethical considerations of using AI to create a drug that enhances happiness and calmness, addressing potential objections related to the 'unnatural' aspect. The article emphasizes the rapid pace of technological change and its potential impact on human adaptation, drawing parallels to the industrial revolution and referencing Alvin Toffler's 'Future Shock'. The core argument revolves around the idea that AI's ultimate goal is to improve human happiness and reduce suffering, and this hypothetical drug is a direct manifestation of that goal.
Reference

If AI led to a new medical drug that makes the average person 40 to 50% more calm and happier, and had fewer side effects than coffee, would you take this new medicine?

research#agent🏛️ OfficialAnalyzed: Jan 5, 2026 09:06

Replicating Claude Code's Plan Mode with Codex Skills: A Feasibility Study

Published:Jan 1, 2026 09:27
1 min read
Zenn OpenAI

Analysis

This article explores the challenges of replicating Claude Code's sophisticated planning capabilities using OpenAI's Codex CLI Skills. The core issue lies in the lack of autonomous skill chaining within Codex, requiring user intervention at each step, which hinders the creation of a truly self-directed 'investigate-plan-reinvestigate' loop. This highlights a key difference in the agentic capabilities of the two platforms.
Reference

Claude Code の plan mode は、計画フェーズ中に Plan subagent へ調査を委任し、探索を差し込む仕組みを持つ。

Paper#LLM Forecasting🔬 ResearchAnalyzed: Jan 3, 2026 06:10

LLM Forecasting for Future Prediction

Published:Dec 31, 2025 18:59
1 min read
ArXiv

Analysis

This paper addresses the critical challenge of future prediction using language models, a crucial aspect of high-stakes decision-making. The authors tackle the data scarcity problem by synthesizing a large-scale forecasting dataset from news events. They demonstrate the effectiveness of their approach, OpenForesight, by training Qwen3 models and achieving competitive performance with smaller models compared to larger proprietary ones. The open-sourcing of models, code, and data promotes reproducibility and accessibility, which is a significant contribution to the field.
Reference

OpenForecaster 8B matches much larger proprietary models, with our training improving the accuracy, calibration, and consistency of predictions.

Analysis

This paper explores the use of Wehrl entropy, derived from the Husimi distribution, to analyze the entanglement structure of the proton in deep inelastic scattering, going beyond traditional longitudinal entanglement measures. It aims to incorporate transverse degrees of freedom, providing a more complete picture of the proton's phase space structure. The study's significance lies in its potential to improve our understanding of hadronic multiplicity and the internal structure of the proton.
Reference

The entanglement entropy naturally emerges from the normalization condition of the Husimi distribution within this framework.

Analysis

This paper explores the use of Denoising Diffusion Probabilistic Models (DDPMs) to reconstruct turbulent flow dynamics between sparse snapshots. This is significant because it offers a potential surrogate model for computationally expensive simulations of turbulent flows, which are crucial in many scientific and engineering applications. The focus on statistical accuracy and the analysis of generated flow sequences through metrics like turbulent kinetic energy spectra and temporal decay of turbulent structures demonstrates a rigorous approach to validating the method's effectiveness.
Reference

The paper demonstrates a proof-of-concept generative surrogate for reconstructing coherent turbulent dynamics between sparse snapshots.

Modular Flavor Symmetry for Lepton Textures

Published:Dec 31, 2025 11:47
1 min read
ArXiv

Analysis

This paper explores a specific extension of the Standard Model using modular flavor symmetry (specifically S3) to explain lepton masses and mixing. The authors focus on constructing models near fixed points in the modular space, leveraging residual symmetries and non-holomorphic modular forms to generate Yukawa textures. The key advantage is the potential to build economical models without the need for flavon fields, a common feature in flavor models. The paper's significance lies in its exploration of a novel approach to flavor physics, potentially leading to testable predictions, particularly regarding neutrino mass ordering.
Reference

The models strongly prefer the inverted ordering for the neutrino masses.

Analysis

This paper addresses the growing threat of steganography using diffusion models, a significant concern due to the ease of creating synthetic media. It proposes a novel, training-free defense mechanism called Adversarial Diffusion Sanitization (ADS) to neutralize hidden payloads in images, rather than simply detecting them. The approach is particularly relevant because it tackles coverless steganography, which is harder to detect. The paper's focus on a practical threat model and its evaluation against state-of-the-art methods, like Pulsar, suggests a strong contribution to the field of security.
Reference

ADS drives decoder success rates to near zero with minimal perceptual impact.

Analysis

This paper explores the use of spectroscopy to understand and control quantum phase slips in parametrically driven oscillators, which are promising for next-generation qubits. The key is visualizing real-time instantons, which govern phase-slip events and limit qubit coherence. The research suggests a new method for efficient qubit control by analyzing the system's response to AC perturbations.
Reference

The spectrum of the system's response -- captured by the so-called logarithmic susceptibility (LS) -- enables a direct observation of characteristic features of real-time instantons.

Analysis

This paper explores the use of the non-backtracking transition probability matrix for node clustering in graphs. It leverages the relationship between the eigenvalues of this matrix and the non-backtracking Laplacian, developing techniques like "inflation-deflation" to cluster nodes. The work is relevant to clustering problems arising from sparse stochastic block models.
Reference

The paper focuses on the real eigenvalues of the non-backtracking matrix and their relation to the non-backtracking Laplacian for node clustering.

Analysis

This paper addresses the computational challenges of optimizing nonlinear objectives using neural networks as surrogates, particularly for large models. It focuses on improving the efficiency of local search methods, which are crucial for finding good solutions within practical time limits. The core contribution lies in developing a gradient-based algorithm with reduced per-iteration cost and further optimizing it for ReLU networks. The paper's significance is highlighted by its competitive and eventually dominant performance compared to existing local search methods as model size increases.
Reference

The paper proposes a gradient-based algorithm with lower per-iteration cost than existing methods and adapts it to exploit the piecewise-linear structure of ReLU networks.

Analysis

This paper addresses the problem of evaluating the impact of counterfactual policies, like changing treatment assignment, using instrumental variables. It provides a computationally efficient framework for bounding the effects of such policies, without relying on the often-restrictive monotonicity assumption. The work is significant because it offers a more robust approach to policy evaluation, especially in scenarios where traditional IV methods might be unreliable. The applications to real-world datasets (bail judges and prosecutors) further enhance the paper's practical relevance.
Reference

The paper develops a general and computationally tractable framework for computing sharp bounds on the effects of counterfactual policies.

Analysis

This paper explores the use of Mermin devices to analyze and characterize entangled states, specifically focusing on W-states, GHZ states, and generalized Dicke states. The authors derive new results by bounding the expected values of Bell-Mermin operators and investigate whether the behavior of these entangled states can be fully explained by Mermin's instructional sets. The key contribution is the analysis of Mermin devices for Dicke states and the determination of which states allow for a local hidden variable description.
Reference

The paper shows that the GHZ and Dicke states of three qubits and the GHZ state of four qubits do not allow a description based on Mermin's instructional sets, while one of the generalized Dicke states of four qubits does allow such a description.

Analysis

This paper addresses a fundamental contradiction in the study of sensorimotor synchronization using paced finger tapping. It highlights that responses to different types of period perturbations (step changes vs. phase shifts) are dynamically incompatible when presented in separate experiments, leading to contradictory results in the literature. The key finding is that the temporal context of the experiment recalibrates the error-correction mechanism, making responses to different perturbation types compatible only when presented randomly within the same experiment. This has implications for how we design and interpret finger-tapping experiments and model the underlying cognitive processes.
Reference

Responses to different perturbation types are dynamically incompatible when they occur in separate experiments... On the other hand, if both perturbation types are presented at random during the same experiment then the responses are compatible with each other and can be construed as produced by a unique underlying mechanism.

Fire Detection in RGB-NIR Cameras

Published:Dec 29, 2025 16:48
1 min read
ArXiv

Analysis

This paper addresses the challenge of fire detection, particularly at night, using RGB-NIR cameras. It highlights the limitations of existing models in distinguishing fire from artificial lights and proposes solutions including a new NIR dataset, a two-stage detection model (YOLOv11 and EfficientNetV2-B0), and Patched-YOLO for improved accuracy, especially for small and distant fire objects. The focus on data augmentation and addressing false positives is a key strength.
Reference

The paper introduces a two-stage pipeline combining YOLOv11 and EfficientNetV2-B0 to improve night-time fire detection accuracy while reducing false positives caused by artificial lights.

Analysis

This article likely discusses the challenges and limitations of using extracellular vesicles (EVs) containing MAGE-A proteins for detecting tumors in close proximity. The focus is on the physical constraints that impact the effectiveness of this detection method. The source being ArXiv suggests this is a pre-print or research paper.
Reference

Analysis

This paper addresses the challenges of using Physics-Informed Neural Networks (PINNs) for solving electromagnetic wave propagation problems. It highlights the limitations of PINNs compared to established methods like FDTD and FEM, particularly in accuracy and energy conservation. The study's significance lies in its development of hybrid training strategies to improve PINN performance, bringing them closer to FDTD-level accuracy. This is important because it demonstrates the potential of PINNs as a viable alternative to traditional methods, especially given their mesh-free nature and applicability to inverse problems.
Reference

The study demonstrates hybrid training strategies can bring PINNs closer to FDTD-level accuracy and energy consistency.

Analysis

This paper addresses the challenging tasks of micro-gesture recognition and behavior-based emotion prediction using multimodal learning. It leverages video and skeletal pose data, integrating RGB and 3D pose information for micro-gesture classification and facial/contextual embeddings for emotion recognition. The work's significance lies in its application to the iMiGUE dataset and its competitive performance in the MiGA 2025 Challenge, securing 2nd place in emotion prediction. The paper highlights the effectiveness of cross-modal fusion techniques for capturing nuanced human behaviors.
Reference

The approach secured 2nd place in the behavior-based emotion prediction task.

Analysis

The article describes a research paper exploring the use of Virtual Reality (VR) and Artificial Intelligence (AI) to address homesickness experienced by individuals in space. The focus is on validating a concept for AI-driven interventions within a VR environment. The source is ArXiv, indicating a pre-print or research paper.
Reference

Research#llm📝 BlogAnalyzed: Dec 28, 2025 20:00

Experimenting with AI for Product Photography: Initial Thoughts

Published:Dec 28, 2025 19:29
1 min read
r/Bard

Analysis

This post explores the use of AI, specifically large language models (LLMs), for generating product shoot concepts. The user shares prompts and resulting images, focusing on beauty and fashion products. The experiment aims to leverage AI for visualizing lighting, composition, and overall campaign aesthetics in the early stages of campaign development, potentially reducing the need for physical studio setups initially. The user seeks feedback on the usability and effectiveness of AI-generated concepts, opening a discussion on the potential and limitations of AI in creative workflows for marketing and advertising. The prompts are detailed, indicating a focus on specific visual elements and aesthetic styles.
Reference

Sharing the images along with the prompts I used. Curious to hear what works, what doesn’t, and how usable this feels for early-stage campaign ideas.

Research#llm🏛️ OfficialAnalyzed: Dec 28, 2025 21:58

Testing Context Relevance of RAGAS (Nvidia Metrics)

Published:Dec 28, 2025 15:22
1 min read
Qiita OpenAI

Analysis

This article discusses the use of RAGAS, a metric developed by Nvidia, to evaluate the context relevance of search results in a retrieval-augmented generation (RAG) system. The author aims to automatically assess whether search results provide sufficient evidence to answer a given question using a large language model (LLM). The article highlights the potential of RAGAS for improving search systems by automating the evaluation process, which would otherwise require manual prompting and evaluation. The focus is on the 'context relevance' aspect of RAGAS, suggesting an exploration of how well the retrieved context supports the generated answers.

Key Takeaways

Reference

The author wants to automatically evaluate whether search results provide the basis for answering questions using an LLM.

Analysis

This paper explores the use of shaped ultrafast laser pulses to control the behavior of molecules at conical intersections, which are crucial for understanding chemical reactions and energy transfer. The ability to manipulate quantum yield and branching pathways through pulse shaping is a significant advancement in controlling nonadiabatic processes.
Reference

By systematically varying pulse parameters, we demonstrate that both chirp and pulse duration modulate vibrational coherence and alter branching between competing pathways, leading to controlled changes in quantum yield.

Analysis

This article, the second part of a series, explores the use of NotebookLM for automated slide creation. The author, from Anddot's technical PR team, previously struggled with Gemini for this task. This installment focuses on NotebookLM, highlighting its improvements over Gemini. The article aims to be a helpful resource for those interested in NotebookLM or struggling with slide creation. The disclaimer acknowledges potential inaccuracies due to the use of Gemini for transcribing the audio source. The article's focus is practical, offering a user's perspective on AI-assisted slide creation.
Reference

The author found that the issues encountered with Gemini were largely resolved by NotebookLM.

Analysis

This paper addresses the challenge of long-range weather forecasting using AI. It introduces a novel method called "long-range distillation" to overcome limitations in training data and autoregressive model instability. The core idea is to use a short-timestep, autoregressive "teacher" model to generate a large synthetic dataset, which is then used to train a long-timestep "student" model capable of direct long-range forecasting. This approach allows for training on significantly more data than traditional reanalysis datasets, leading to improved performance and stability in long-range forecasts. The paper's significance lies in its demonstration that AI-generated synthetic data can effectively scale forecast skill, offering a promising avenue for advancing AI-based weather prediction.
Reference

The skill of our distilled models scales with increasing synthetic training data, even when that data is orders of magnitude larger than ERA5. This represents the first demonstration that AI-generated synthetic training data can be used to scale long-range forecast skill.

Analysis

This paper addresses the challenge of detecting cystic hygroma, a high-risk prenatal condition, using ultrasound images. The key contribution is the application of ultrasound-specific self-supervised learning (USF-MAE) to overcome the limitations of small labeled datasets. The results demonstrate significant improvements over a baseline model, highlighting the potential of this approach for early screening and improved patient outcomes.
Reference

USF-MAE outperformed the DenseNet-169 baseline on all evaluation metrics.

Analysis

This paper addresses a crucial problem in the use of Large Language Models (LLMs) for simulating population responses: Social Desirability Bias (SDB). It investigates prompt-based methods to mitigate this bias, which is essential for ensuring the validity and reliability of LLM-based simulations. The study's focus on practical prompt engineering makes the findings directly applicable to researchers and practitioners using LLMs for social science research. The use of established datasets like ANES and rigorous evaluation metrics (Jensen-Shannon Divergence) adds credibility to the study.
Reference

Reformulated prompts most effectively improve alignment by reducing distribution concentration on socially acceptable answers and achieving distributions closer to ANES.

Analysis

This paper explores the use of p-adic numbers, a non-Archimedean field, as an alternative to real numbers in machine learning. It challenges the conventional reliance on real-valued representations and Euclidean geometry, proposing a framework based on the hierarchical structure of p-adic numbers. The work is significant because it opens up a new avenue for representation learning, potentially offering advantages in areas like code theory and hierarchical data modeling. The paper's theoretical exploration and the demonstration of representing semantic networks highlight its potential impact.
Reference

The paper establishes the building blocks for classification, regression, and representation learning with the $p$-adics, providing learning models and algorithms.

Gold Price Prediction with LSTM, MLP, and GWO

Published:Dec 27, 2025 14:32
1 min read
ArXiv

Analysis

This paper addresses the challenging task of gold price forecasting using a hybrid AI approach. The combination of LSTM for time series analysis, MLP for integration, and GWO for optimization is a common and potentially effective strategy. The reported 171% return in three months based on a trading strategy is a significant claim, but needs to be viewed with caution without further details on the strategy and backtesting methodology. The use of macroeconomic, energy market, stock, and currency data is appropriate for gold price prediction. The reported MAE values provide a quantitative measure of the model's performance.
Reference

The proposed LSTM-MLP model predicted the daily closing price of gold with the Mean absolute error (MAE) of $ 0.21 and the next month's price with $ 22.23.

Analysis

This paper delves into the impact of asymmetry in homodyne and heterodyne measurements within the context of Gaussian continuous variable quantum key distribution (CVQKD). It explores the use of positive operator-valued measures (POVMs) to analyze these effects and their implications for the asymptotic security of CVQKD protocols. The research likely contributes to a deeper understanding of the practical limitations and potential vulnerabilities in CVQKD systems, particularly those arising from imperfect measurement apparatus.
Reference

The research likely contributes to a deeper understanding of the practical limitations and potential vulnerabilities in CVQKD systems.

Analysis

This article explores the use of periodical embeddings to reveal hidden interdisciplinary relationships within scientific subject classifications. The approach likely involves analyzing co-occurrence patterns of scientific topics across publications to identify unexpected connections and potential areas for cross-disciplinary research. The methodology's effectiveness hinges on the quality of the embedding model and the comprehensiveness of the dataset used.
Reference

The study likely leverages advanced NLP techniques to analyze scientific literature.

Analysis

This paper addresses the challenge of predicting multiple properties of additively manufactured fiber-reinforced composites (CFRC-AM) using a data-efficient approach. The authors combine Latin Hypercube Sampling (LHS) for experimental design with a Squeeze-and-Excitation Wide and Deep Neural Network (SE-WDNN). This is significant because CFRC-AM performance is highly sensitive to manufacturing parameters, making exhaustive experimentation costly. The SE-WDNN model outperforms other machine learning models, demonstrating improved accuracy and interpretability. The use of SHAP analysis to identify the influence of reinforcement strategy is also a key contribution.
Reference

The SE-WDNN model achieved the lowest overall test error (MAPE = 12.33%) and showed statistically significant improvements over the baseline wide and deep neural network.

Research#Tensor🔬 ResearchAnalyzed: Jan 10, 2026 07:10

Exploring Machine Learning Invariants of Tensors

Published:Dec 26, 2025 21:22
1 min read
ArXiv

Analysis

This ArXiv article likely delves into the application of machine learning techniques to identify and leverage invariant properties of tensors. Understanding these invariants could lead to more robust and generalizable machine learning models for various applications.
Reference

The article is based on a submission to ArXiv, implying it presents preliminary research findings.

Research#Physics🔬 ResearchAnalyzed: Jan 10, 2026 17:51

High-pT Physics and Data: Constraining the Shear Viscosity-to-Entropy Ratio

Published:Dec 26, 2025 19:37
1 min read
ArXiv

Analysis

This article explores the use of high-transverse-momentum (high-pT) physics and experimental data to constrain the shear viscosity-to-entropy density ratio (η/s) of the quark-gluon plasma. The research has the potential to refine our understanding of the fundamental properties of this exotic state of matter.
Reference

The article's focus is on utilizing high-pT physics and data to constrain η/s.