acus
Data Center Cooling System Optimization Using Offline Reinforcement Learning
Zhan, Xianyuan, Zhu, Xiangyu, Cheng, Peng, Hu, Xiao, He, Ziteng, Geng, Hanfei, Leng, Jichao, Zheng, Huiwen, Liu, Chenhui, Hong, Tianshun, Liang, Yan, Liu, Yunxin, Zhao, Feng
The recent advances in information technology and artificial intelligence have fueled a rapid expansion of the data center (DC) industry worldwide, accompanied by an immense appetite for electricity to power the DCs. In a typical DC, around 30~40% of the energy is spent on the cooling system rather than on computer servers, posing a pressing need for developing new energy-saving optimization technologies for DC cooling systems. However, optimizing such real-world industrial systems faces numerous challenges, including but not limited to a lack of reliable simulation environments, limited historical data, and stringent safety and control robustness requirements. In this work, we present a novel physics-informed offline reinforcement learning (RL) framework for energy efficiency optimization of DC cooling systems. The proposed framework models the complex dynamical patterns and physical dependencies inside a server room using a purposely designed graph neural network architecture that is compliant with the fundamental time-reversal symmetry. Because of its well-behaved and generalizable state-action representations, the model enables sample-efficient and robust latent space offline policy learning using limited real-world operational data. Our framework has been successfully deployed and verified in a large-scale production DC for closed-loop control of its air-cooling units (ACUs). We conducted a total of 2000 hours of short and long-term experiments in the production DC environment. The results show that our method achieves 14~21% energy savings in the DC cooling system, without any violation of the safety or operational constraints. Our results have demonstrated the significant potential of offline RL in solving a broad range of data-limited, safety-critical real-world industrial control problems.
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.04)
- Asia > China > Shanghai > Shanghai (0.04)
- Energy (1.00)
- Construction & Engineering > HVAC (1.00)
NovAScore: A New Automated Metric for Evaluating Document Level Novelty
Ai, Lin, Gong, Ziwei, Deshpande, Harshsaiprasad, Johnson, Alexander, Phung, Emmy, Emami, Ahmad, Hirschberg, Julia
The rapid expansion of online content has intensified the issue of information redundancy, underscoring the need for solutions that can identify genuinely new information. Despite this challenge, the research community has seen a decline in focus on novelty detection, particularly with the rise of large language models (LLMs). Additionally, previous approaches have relied heavily on human annotation, which is time-consuming, costly, and particularly challenging when annotators must compare a target document against a vast number of historical documents. In this work, we introduce NovAScore (Novelty Evaluation in Atomicity Score), an automated metric for evaluating document-level novelty. NovAScore aggregates the novelty and salience scores of atomic information, providing high interpretability and a detailed analysis of a document's novelty. With its dynamic weight adjustment scheme, NovAScore offers enhanced flexibility and an additional dimension to assess both the novelty level and the importance of information within a document. Our experiments show that NovAScore strongly correlates with human judgments of novelty, achieving a 0.626 Point-Biserial correlation on the TAP-DLND 1.0 dataset and a 0.920 Pearson correlation on an internal human-annotated dataset.
- North America > Canada > Ontario > Toronto (0.04)
- North America > Canada > British Columbia (0.04)
- Asia > Singapore (0.04)
- (9 more...)
- Information Technology > Artificial Intelligence > Machine Learning (1.00)
- Information Technology > Artificial Intelligence > Natural Language > Text Processing (0.94)
- Information Technology > Artificial Intelligence > Natural Language > Large Language Model (0.70)
- Information Technology > Data Science > Data Mining > Anomaly Detection (0.58)
Towards Interpretable and Efficient Automatic Reference-Based Summarization Evaluation
Liu, Yixin, Fabbri, Alexander R., Zhao, Yilun, Liu, Pengfei, Joty, Shafiq, Wu, Chien-Sheng, Xiong, Caiming, Radev, Dragomir
Interpretability and efficiency are two important considerations for the adoption of neural automatic metrics. In this work, we develop strong-performing automatic metrics for reference-based summarization evaluation, based on a two-stage evaluation pipeline that first extracts basic information units from one text sequence and then checks the extracted units in another sequence. The metrics we developed include two-stage metrics that can provide high interpretability at both the fine-grained unit level and summary level, and one-stage metrics that achieve a balance between efficiency and interpretability. We make the developed tools publicly available at https://github.com/Yale-LILY/AutoACU.
- North America > United States > Minnesota > Hennepin County > Minneapolis (0.14)
- North America > United States > Washington > King County > Seattle (0.04)
- North America > United States > Pennsylvania > Philadelphia County > Philadelphia (0.04)
- (14 more...)
Will AI ever be smart enough to decipher federal regulations?
Center for AI Safety Director Dan Hendrycks explains concerns about how the rapid growth of artificial intelligence could impact society. A federal agency is pondering whether artificial intelligence might someday be used to help the government identify duplicative or overly burdensome federal rules that need to be cut back. But officials are already hearing from skeptics who doubt AI will ever be powerful enough to wade through and understand the hundreds of thousands of pages of detailed federal rules. The Administrative Conference of the United States (ACUS) is an independent federal agency that works to increase the efficiency and fairness of regulations. In early May, ACUS released a report it commissioned on how AI and other algorithmic tools might be used to conduct retrospective reviews of federal rules to improve them.
- Law > Statutes (1.00)
- Government > Regional Government > North America Government > United States Government (1.00)
MAC: A Meta-Learning Approach for Feature Learning and Recombination
Tiwari, S., Gogoi, M., Verma, S., Singh, K. P.
Optimization-based meta-learning aims to learn an initialization so that a new unseen task can be learned within a few gradient updates. Model Agnostic Meta-Learning (MAML) is a benchmark algorithm comprising two optimization loops. The inner loop is dedicated to learning a new task and the outer loop leads to meta-initialization. However, ANIL (almost no inner loop) algorithm shows that feature reuse is an alternative to rapid learning in MAML. Thus, the meta-initialization phase makes MAML primed for feature reuse and obviates the need for rapid learning. Contrary to ANIL, we hypothesize that there may be a need to learn new features during meta-testing. A new unseen task from non-similar distribution would necessitate rapid learning in addition reuse and recombination of existing features. In this paper, we invoke the width-depth duality of neural networks, wherein, we increase the width of the network by adding extra computational units (ACU). The ACUs enable the learning of new atomic features in the meta-testing task, and the associated increased width facilitates information propagation in the forwarding pass. The newly learnt features combine with existing features in the last layer for meta-learning. Experimental results show that our proposed MAC method outperformed existing ANIL algorithm for non-similar task distribution by approximately 13% (5-shot task setting)
Using Artificial Intelligence in Administrative Agencies
ACUS issues a statement to help agencies make more informed decisions about artificial intelligence. Federal agencies increasingly rely on artificial intelligence (AI) tools to do their work and carry out their missions. Nearly half the federal agencies surveyed for a recent report commissioned by the Administrative Conference of the United States (ACUS) employ or have experimented with AI tools. The agencies used AI tools across an array of governance tasks, including adjudication, enforcement, data collection and analysis, internal management, and public communications. Agencies' interest in AI tools is not surprising.
- North America > United States > Pennsylvania (0.05)
- North America > United States > California (0.05)
- Law (0.98)
- Information Technology > Security & Privacy (0.72)
- Government > Regional Government > North America Government > United States Government (0.52)