Wroclaw
- South America > Chile > Santiago Metropolitan Region > Santiago Province > Santiago (0.04)
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.04)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.04)
- Europe > Poland > Lower Silesia Province > Wroclaw (0.04)
- Information Technology > Artificial Intelligence > Natural Language (1.00)
- Information Technology > Artificial Intelligence > Speech (0.69)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (0.68)
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning > Clustering (0.47)
- North America > United States > Minnesota > Hennepin County > Minneapolis (0.14)
- Asia > Middle East > Qatar (0.04)
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LLMSQL: Upgrading WikiSQL for the LLM Era of Text-to-SQL
Pihulski, Dzmitry, Charchut, Karol, Novogrodskaia, Viktoria, Kocoń, Jan
Converting natural language questions into SQL queries enables non-expert users to interact with relational databases and has long been a central task for natural language interfaces to data. While the WikiSQL dataset played a key role in early text-to-SQL research, its usage has declined due to structural and annotation issues, including case sensitivity inconsistencies, data type mismatches, syntax errors, and unanswered questions. We present LLMSQL, a systematic revision and transformation of WikiSQL designed for the large language model era. We classify these errors and implement automated methods for cleaning and re-annotation. To assess the impact of these improvements, we evaluated multiple large language models, including Gemma 3, LLaMA 3.2, Mistral 7B, gpt-oss 20B, Phi-3.5 Mini, Qwen 2.5, OpenAI o4-mini, DeepSeek-R1, and others. Notably, DeepSeek-R1 achieves 88.40% accuracy in a zero-shot setting, and models under 10B parameters surpass 90% accuracy after fine-tuning. Rather than serving as an update, LLMSQL is introduced as an LLM-ready benchmark. Unlike the original WikiSQL, which was tailored for pointer-network models selecting tokens from input, LLMSQL provides clean natural language questions and full SQL queries as plain text, enabling straightforward generation and evaluation for modern natural-language-to-SQL models.
- North America > United States > California > Alameda County > Berkeley (0.14)
- Europe > United Kingdom (0.14)
- Europe > Poland > Lower Silesia Province > Wroclaw (0.05)
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The Impact of Artificial Intelligence on Enterprise Decision-Making Process
Górka, Ernest, Baran, Dariusz, Wojak, Gabriela, Ćwiąkała, Michał, Zupok, Sebastian, Starkowski, Dariusz, Reśko, Dariusz, Okrasa, Oliwia
Artificial intelligence improves enterprise decision-making by accelerating data analysis, reducing human error, and supporting evidence-based choices. A quantitative survey of 92 companies across multiple industries examines how AI adoption influences managerial performance, decision efficiency, and organizational barriers. Results show that 93 percent of firms use AI, primarily in customer service, data forecasting, and decision support. AI systems increase the speed and clarity of managerial decisions, yet implementation faces challenges. The most frequent barriers include employee resistance, high costs, and regulatory ambiguity. Respondents indicate that organizational factors are more significant than technological limitations. Critical competencies for successful AI use include understanding algorithmic mechanisms and change management. Technical skills such as programming play a smaller role. Employees report difficulties in adapting to AI tools, especially when formulating prompts or accepting system outputs. The study highlights the importance of integrating AI with human judgment and communication practices. When supported by adaptive leadership and transparent processes, AI adoption enhances organizational agility and strengthens decision-making performance. These findings contribute to ongoing research on how digital technologies reshape management and the evolution of hybrid human-machine decision environments.
- North America > United States > New Mexico > Bernalillo County > Albuquerque (0.04)
- North America > United States > New Jersey > Hudson County > Hoboken (0.04)
- North America > United States > California > Santa Clara County > Palo Alto (0.04)
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Statistical Arbitrage in Polish Equities Market Using Deep Learning Techniques
Adamczyk, Marek, Dąbrowski, Michał
We study a systematic approach to a popular Statistical Arbitrage technique: Pairs Trading. Instead of relying on two highly correlated assets, we replace the second asset with a replication of the first using risk factor representations. These factors are obtained through Principal Components Analysis (PCA), exchange traded funds (ETFs), and, as our main contribution, Long Short Term Memory networks (LSTMs). Residuals between the main asset and its replication are examined for mean reversion properties, and trading signals are generated for sufficiently fast mean reverting portfolios. Beyond introducing a deep learning based replication method, we adapt the framework of Avellaneda and Lee (2008) to the Polish market. Accordingly, components of WIG20, mWIG40, and selected sector indices replace the original S&P500 universe, and market parameters such as the risk free rate and transaction costs are updated to reflect local conditions. We outline the full strategy pipeline: risk factor construction, residual modeling via the Ornstein Uhlenbeck process, and signal generation. Each replication technique is described together with its practical implementation. Strategy performance is evaluated over two periods: 2017-2019 and the recessive year 2020. All methods yield profits in 2017-2019, with PCA achieving roughly 20 percent cumulative return and an annualized Sharpe ratio of up to 2.63. Despite multiple adaptations, our conclusions remain consistent with those of the original paper. During the COVID-19 recession, only the ETF based approach remains profitable (about 5 percent annual return), while PCA and LSTM methods underperform. LSTM results, although negative, are promising and indicate potential for future optimization.
- Europe > Poland > Masovia Province > Warsaw (0.04)
- Europe > Poland > Lower Silesia Province > Wroclaw (0.04)
- North America > United States > New York > New York County > New York City (0.04)
- Banking & Finance > Trading (1.00)
- Health & Medicine > Therapeutic Area > Immunology (0.48)
- Health & Medicine > Therapeutic Area > Infections and Infectious Diseases (0.34)
AEGIS: Preserving privacy of 3D Facial Avatars with Adversarial Perturbations
Wolkiewicz, Dawid, Pechko, Anastasiya, Spurek, Przemysław, Syga, Piotr
The growing adoption of photorealistic 3D facial avatars, particularly those utilizing efficient 3D Gaussian Splatting representations, introduces new risks of online identity theft, especially in systems that rely on biometric authentication. While effective adversarial masking methods have been developed for 2D images, a significant gap remains in achieving robust, viewpoint-consistent identity protection for dynamic 3D avatars. To address this, we present AEGIS, the first privacy-preserving identity masking framework for 3D Gaussian Avatars that maintains the subject's perceived characteristics. Our method aims to conceal identity-related facial features while preserving the avatar's perceptual realism and functional integrity. AEGIS applies adversarial perturbations to the Gaussian color coefficients, guided by a pre-trained face verification network, ensuring consistent protection across multiple viewpoints without retraining or modifying the avatar's geometry. AEGIS achieves complete de-identification, reducing face retrieval and verification accuracy to 0%, while maintaining high perceptual quality (SSIM = 0.9555, PSNR = 35.52 dB). It also preserves key facial attributes such as age, race, gender, and emotion, demonstrating strong privacy protection with minimal visual distortion.
- Europe > Poland > Lower Silesia Province > Wroclaw (0.76)
- Europe > Poland > Lesser Poland Province > Kraków (0.04)
- Asia (0.04)
A novel strategy for multi-resource load balancing in agent-based systems
Sliwko, Leszek, Zgrzywa, Aleksander
The paper presents a multi-resource load balancing strategy which can be utilised within an agent-based system. This approach can assist system designers in their attempts to optimise the structure for complex enterprise architectures. In this system, the social behaviour of the agent and its adaptation abilities are applied to determine an optimal setup for a given configuration. All the methods have been developed to allow the agent's self-assessment. The proposed agent system has been implemented and the experiment results are presented here.
- Europe > Poland > Lower Silesia Province > Wroclaw (0.04)
- North America > United States > Ohio (0.04)
- Asia > Japan (0.04)
Robot joint characterisation and control using a magneto-optical rotary encoder
Guo, Yunlong, Canning, John, Chaczko, Zenon, Peng, Gang-Ding
-- A robust and compact magneto - optical rotary encoder for the characterisation of robotic rotary joints is demonstrated. The system employs magnetic field - induced optical attenuation in a double - pass configuration using rotating nonuniform magnets around an optical circulator operating in reflection . The encoder tracks continuous 360 rotation with rotation sweep rates from ν = 135 /s to ν = 3 70 /s, and an angular resolution of Δ θ = 0. 3 . I NTRODUCTION OTARY encoders convert rotation into electromagnetic signals, most commonly electrical. Examples include precision monitoring and control of steering wheels [1], [2], motors of autopilot vehicles [2], [3], robot ics [4], [5], and prosthetic arms [6] . In robotics, the encoder is a crucial part of the positional feedback needed to perform precision movements.
- Oceania > Australia > New South Wales > Sydney (0.14)
- Asia > China > Shanghai > Shanghai (0.05)
- Europe > Poland > Lower Silesia Province > Wroclaw (0.04)
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Unboxing the Black Box: Mechanistic Interpretability for Algorithmic Understanding of Neural Networks
Kowalska, Bianka, Kwaśnicka, Halina
Artificial intelligence (AI) is increasingly assisting us in a wide range of tasks, from everyday applications like recommendation systems to high-risk domains such as bio-metric recognition, autonomous vehicles, and medical diagnosis [1]. In particular, the rise of transformer-based models, such as those used in natural language processing (NLP), has significantly accelerated AI's adoption and visibility in society, enabling breakthroughs in fields like text generation, translation, and image understanding [2]. The size, complexity, and opacity of deep learning models are growing exponentially, further outpacing the ability of researchers to understand the black box. As deep neural networks are increasingly deployed in real-world applications with more advanced use cases, the impact of AI continues to grow. This growing influence, coupled with the often opaque, black-box nature of most AI systems, has led to a heightened demand for AI models that are both faithful and explainable. The validation of AI's decisions is especially critical in high-risks areas, such as law or medicine [3, 4]. As a result, Explainable AI (XAI) emerged as a direct response to companies' and researchers' demands to interpret, explain and validate neural networks to make AI systems trustworthy. XAI encompasses all methods, approaches and efforts to uncover the reasoning and behavior of artificial intelligence systems [1]. Thus, it is important to establish an understanding of common terms used in the XAI literature, despite the lack of universally accepted definitions.
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- North America > United States > Minnesota > Hennepin County > Minneapolis (0.14)
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The PLLuM Instruction Corpus
Pęzik, Piotr, Żarnecki, Filip, Kaczyński, Konrad, Cichosz, Anna, Deckert, Zuzanna, Garnys, Monika, Grabarczyk, Izabela, Janowski, Wojciech, Karasińska, Sylwia, Kujawiak, Aleksandra, Misztela, Piotr, Szymańska, Maria, Walkusz, Karolina, Siek, Igor, Chrabąszcz, Maciej, Kołos, Anna, Karlińska, Agnieszka, Seweryn, Karolina, Krasnodębska, Aleksandra, Betscher, Paula, Cieślińska, Zofia, Kowol, Katarzyna, Wilczek, Artur, Trzciński, Maciej, Dziewulska, Katarzyna, Roszko, Roman, Bernaś, Tomasz, Vaičenonienė, Jurgita, Roszko, Danuta, Levchuk, Paweł, Kowalski, Paweł, Prawdzic-Jankowska, Irena, Kozłowski, Marek, Dadas, Sławomir, Poświata, Rafał, Wróblewska, Alina, Krasnowska-Kieraś, Katarzyna, Ogrodniczuk, Maciej, Rudolf, Michał, Rybak, Piotr, Saputa, Karolina, Wołoszyn, Joanna, Oleksy, Marcin, Koptyra, Bartłomiej, Ferdinan, Teddy, Woźniak, Stanisław, Piasecki, Maciej, Walkowiak, Paweł, Wojtasik, Konrad, Janz, Arkadiusz, Kazienko, Przemysław, Moska, Julia, Kocoń, Jan
This paper describes the instruction dataset used to fine-tune a set of transformer-based large language models (LLMs) developed in the PLLuM (Polish Large Language Model) project. We present a functional typology of the organic, converted, and synthetic instructions used in PLLuM and share some observations about the implications of using human-authored versus synthetic instruction datasets in the linguistic adaptation of base LLMs. Additionally, we release the first representative subset of the PLLuM instruction corpus (PLLuMIC), which we believe to be useful in guiding and planning the development of similar datasets for other LLMs.
- Europe > France > Provence-Alpes-Côte d'Azur > Bouches-du-Rhône > Marseille (0.04)
- Europe > Poland > Masovia Province > Warsaw (0.04)
- Europe > Poland > Lower Silesia Province > Wroclaw (0.04)
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