scispace - formally typeset
Search or ask a question

Answers from top 8 papers

More filters
Papers (8)Insight
We also describe a HyperX packaging scheme that reduces system cost.
Based on these findings, potential applications for this alloy are being explored and further work is being done to assess the use of this alloy in various structural forms.
Simulations show that HyperX can provide performance as good as a folded Clos, with fewer switches.
So the microencapsulation of the alloy powders improves the performances of the alloy electrode.
These results suggest that cubic Mg 3 AlNi 2 alloy maybe a promising hydrogen storage material for future use in hydrogen storage systems and Ni–MH batteries.
Among the three alloy systems, Cr–TaCr 2 alloys possess the best combination of mechanical and metallurgical properties for structural use at elevated temperatures.
Our analysis of efficiency, performance, and packaging demonstrates that the HyperX is a strong competitor for exascale networks.
Our main contributions include a formal descriptive framework, enabling a search method that finds optimal HyperX configurations; DAL; and a low cost packaging strategy for an exascale HyperX.

Related Questions

How to obtain high entropy alloy?5 answersHigh entropy alloys (HEAs) can be obtained through various methods such as ball milling elemental powders for a specific duration to form the desired alloy composition. Another approach involves utilizing a step-alloying strategy to synthesize HEA nanoparticles with a wide range of elements, where the initial liquid phase reaction forms seed cores for subsequent thermal diffusion. Additionally, the preparation of HEAs can involve creating multi-component alloys with ordered structures, leading to unique properties like ferromagnetism. Furthermore, the synthesis of HEA nanoparticles can be achieved through solution approaches, allowing for the colocalization of multiple elements and tunable compositions by adjusting their ratios, ultimately expanding the compositional space of metal alloys. Overall, these diverse methods contribute to the broadening of the material library and the potential for tailored properties in high entropy alloys.
How to develop a motherboard with MXM module for HPC ?5 answersTo develop a motherboard with an MXM module for HPC, a few key steps can be followed. First, a motherboard can be designed with a through-hole in a region where the module will be mounted, allowing for quick dissipation of heat. This helps to prevent uneven temperature distribution and warping of the module and motherboard, ensuring a stable connection. Additionally, the motherboard can include a memory slot and pins that are coupled to memory ranks. This allows for the transmission of control signals from a memory channel to the memory ranks, facilitating efficient data processing. Furthermore, the motherboard can be equipped with an expansion card slot and fixing holes to accommodate an M.2 expansion card. This enables the configuration of the expansion card and its secure attachment to the motherboard. By following these steps, a motherboard with an MXM module can be developed for HPC applications.
How crypto market caps works ?5 answersCryptocurrency market caps work by determining the total value of a cryptocurrency based on its circulating supply and current market price. Market caps are calculated by multiplying the price of a single unit of the cryptocurrency by the total number of units in circulation. This metric is used to rank cryptocurrencies and assess their overall market value. Market caps provide investors and traders with an indication of the size and potential of a cryptocurrency. They are also used to compare different cryptocurrencies and track their performance over time. Understanding market caps is crucial for analyzing the cryptocurrency market and making informed investment decisions.
What is the procedure in making fork cap lock?5 answersThe procedure for making a fork cap lock involves several steps. First, a cap-receiving groove is formed on the external surface of a cylindrical lock body, with undercut sides to create overlying flanges. An elongated cap is then inserted into the groove, with edge portions offset downward from the central portion. The edge portions of the cap project outward to engage the side flanges of the groove, securing the cap in place. Additionally, a small recess is formed in one side of the groove, and the elongated cap includes a complementary side protrusion to engage the recess, preventing longitudinal movement of the cap. To mount the cap, one edge of the cap is engaged beneath one side flange, and force is applied to the opposite edge to pass the opposite flange and secure the cap in place. This procedure ensures that the cap remains securely attached to the cylindrical lock body.
Do membrane keycaps exist?10 answers
How can I make my alloy wheels shine?9 answers

See what other people are reading

What is microsoft fabric?
7 answers
Microsoft's Service Fabric (SF) is a comprehensive distributed platform designed to facilitate the development, deployment, and maintenance of microservice applications in the cloud. SF distinguishes itself by its extensive use in production environments for over a decade, underpinning many of Microsoft's critical services. The platform is built on a foundation of key design principles that prioritize modularity and support for robust semantics, including fault tolerance and consistency across its architectural components. This approach enables SF to offer a reliable and efficient environment for running large-scale services, as evidenced by lessons learned and experimental results derived from production data. SF's architecture is not just about running services; it also emphasizes the creation and management of these services through a bottom-up approach, focusing on the intricate details of its low-level components. This meticulous attention to the underlying structure ensures that each element of SF contributes to the overall goal of providing a resilient and adaptable platform for microservices. In the broader context of distributed systems and fabric-based solutions, SF's role is part of a larger ecosystem that includes various fabric technologies aimed at enhancing the security, efficiency, and scalability of distributed information systems and cloud computing environments. These technologies range from systems like Fabric, which focuses on building secure distributed information systems with a high-level programming language, to infrastructures like FABRIC, which enables experimental research in networking and distributed computing at a national scale. Additionally, solutions like Scalable Fabric address desktop complexity and task management, while innovative platforms like the Forward Fabric platform system integrate with data center platforms for enhanced connectivity and management. Furthermore, the FABRIC project aims to integrate middleware standards for high-quality streaming over heterogeneous networks, and the FABRIC scheme proposes secure cloud data sharing through proxy re-encryption. Together, these fabric-based technologies, including Microsoft's Service Fabric, represent a multifaceted approach to tackling the challenges of modern computing environments, from cloud services to secure data sharing and beyond.
What is vector search?
5 answers
Vector search involves searching for similarities between vectors in large-scale information retrieval and machine learning systems. It plays a crucial role in search engines like Google and Bing, processing numerous queries per second on massive document datasets by evaluating vector similarities between encoded query texts and web documents. Various approaches to vector search include utilizing hardware accelerators like FPGAs to enhance performance, implementing specialized algorithms for efficient searching, and developing fast-search algorithms to reduce computational demands in methods like vector quantization. These methods aim to improve search efficiency, reduce execution time, and enhance the scalability of vector search systems, paving the way for future integration of advanced technologies in data centers and AI supercomputers.
What can other companies learn from Amazon's performance metrics decision making strategy?
5 answers
Other companies can learn from Amazon's performance metrics decision-making strategy by focusing on key elements such as cost optimization, product variation, technical innovation, topological information, performance metrics, predictive analytics, and customer-driven metrics. Amazon's success is attributed to factors like lower marginal physical cost, diverse product offerings, and innovative technological outcomes. Companies can emulate Amazon's approach by utilizing topological and performance data to make informed decisions, especially in scenarios like Content Delivery Network deployments. Learning from Amazon's use of advanced predictive analytics and prescriptive analytics can help healthcare sectors enhance decision support tools and customer satisfaction. Additionally, adopting a methodology for acquiring performance metrics from e-commerce websites, like Amazon, can aid in comparative studies with physical resources. Amazon's emphasis on customer-driven metrics and real-time measurement can inspire a culture of customer value obsession within other companies.
What is the subnet mask used for the IP address range 192.168.1.158/28?
5 answers
The subnet mask used for the IP address range 192.168.1.158/28 is 255.255.255.240. This subnet mask allows for efficient addressing by dividing the IP address space into smaller subnets. Subnet masks play a crucial role in network communication, enabling devices to determine which part of an IP address represents the network and which part represents the host. In some cases, subnet masks can be automatically determined by network nodes based on communication patterns within the network. Different subnetting methods like VLSM, FLSM, AFLSM, and HFLSM offer varying levels of efficiency and address utilization. The subnet mask structure can vary, with layers of non-woven fabrics designed for specific filtration purposes.
Red-s is just for athlets?
5 answers
Relative Energy Deficiency Syndrome in Sport (RED-S) primarily affects athletes, leading to health and performance issues due to low energy availability. Research indicates that RED-S is prevalent among both young and elite athletes, with a high percentage showing related symptoms. While RED-S predominantly impacts athletes, it is crucial to note that the syndrome's effects extend beyond the physical realm. Psychological distress accompanies the physiological impairments experienced by athletes with RED-S, highlighting the complex interplay between physiological and psychological components of the syndrome. Although RED-S is commonly associated with athletes, it is essential to recognize the need for comprehensive prevention and awareness interventions involving various support personnel, such as coaches, dieticians, and sports medicine staff, to address the syndrome effectively.
How does Bloom's Taxonomy categorize cognitive learning into four distinct roles?
4 answers
Bloom's Taxonomy categorizes cognitive learning into six distinct roles: remembering, understanding, applying, analyzing, evaluating, and creating. This classification is essential for educators to develop learning objectives and assessments that target different levels of cognitive complexity. The taxonomy emphasizes the progression from lower-order cognition to higher-order cognition, guiding the design of educational objectives, tests, and curricula for over fifty years. Each level in the cognitive domain represents a different depth of understanding and thinking skills, with the ultimate goal of fostering critical thinking and problem-solving abilities in students. Bloom's Taxonomy provides a structured framework for educators to ensure that learning experiences encompass a comprehensive range of cognitive skills and knowledge acquisition levels.
How optymalize long flight drone?
4 answers
To optimize long-flight drones, various factors need consideration. One approach involves designing efficient system configurations based on drone range requirements and base locations for operations. Additionally, for solar-powered High Altitude Long Endurance Unmanned Aerial Vehicles (HALE UAVs), proper design considerations and selection of the electrical system are crucial for maintaining energy balance during flight. Furthermore, optimizing the energy system parameters, including power input/output, cruise thrust, and battery capacity, is essential for long-endurance UAV flights, especially for solar-powered aircraft. Autonomous soaring flight systems can also enhance long-duration flights by utilizing atmospheric energy sources like thermals, wave, orographic lift, and dynamic soaring, which can significantly extend flight times and distances for small UAVs. Integrating these strategies can lead to the optimization of long-flight drones for various applications.
What is the role of molecular docking in predicting the binding affinity of methoxyflavone to the TGF-beta receptor?
5 answers
Molecular docking plays a crucial role in predicting the binding affinity of compounds like methoxyflavone to the TGF-beta receptor. It is a computational tool used to estimate binding poses and affinities of small molecules within specific receptor targets. Studies have shown that molecular docking, coupled with molecular dynamics simulations, can identify lead compounds with high binding affinities to the TGF-beta receptor, such as Epicatechin, Fisetin, Luteolin, Curcumin, Curcumin Pyrazole, and Demethoxycurcumin. These compounds exhibit strong interactions with the receptor and show promising potential for therapeutic development against conditions like kidney fibrosis and oral sub-mucous fibrosis. By utilizing docking methodologies, researchers can screen and identify potential drug candidates with optimal binding affinities to target receptors, paving the way for the development of effective treatments for various diseases.
How has innovative vehicle solutions within last mile logistics literature evolved?
5 answers
Innovative vehicle solutions within last-mile logistics literature have evolved significantly, with a focus on addressing challenges posed by increased urban freight demands. Strategies such as urban consolidation centers, freight bicycles, and collaborative logistics have garnered attention for their operational, environmental, social, and economic impacts. Additionally, emerging technologies like drones, smart parcel stations, robots, and crowdsourcing have been explored as alternatives to traditional truck-based deliveries, especially in the context of the growing e-commerce sector. The literature also highlights the potential of autonomous vehicles, specifically drones, in enhancing the efficiency of last-mile deliveries through optimization models and AI-based approaches. Overall, the evolution of innovative vehicle solutions underscores the ongoing efforts to improve the effectiveness and sustainability of last-mile logistics operations.
What is Delaunay Tessellation Field Estimator?
4 answers
The Delaunay Tessellation Field Estimator (DTFE) is a method used for reconstructing continuous density fields from discrete point distributions, such as particles in simulations or galaxies in surveys. It involves generating an ensemble of point realizations by perturbing the original points based on geometric constraints imposed by Delaunay tessellation. DTFE is known for its self-adaptive scale, mass conservation, and continuity, allowing it to capture even faint structures in point distributions while reducing artifacts. Additionally, advancements have been made to enhance the accuracy and efficiency of DTFE, such as utilizing adaptive triangular meshes for integration and implementing load balancing schemes for large-scale reconstructions. The DTFE public software provides a tool for reconstructing fields from discrete samples, offering various options for analyzing 2D and 3D data in cosmological studies and other fields.
What are the current state-of-the-art techniques used in digital beamforming?
4 answers
The current state-of-the-art techniques in digital beamforming involve advanced signal processing methods to enhance communication systems. These techniques include incorporating antenna arrays to steer electromagnetic waves towards desired directions, utilizing machine learning for complex beamforming problems, exploring artificial intelligence applications for optimal beamforming performance, and employing digital beamforming to improve power and spectral efficiencies in cellular and satellite services. Additionally, beamforming methods focus on adapting irradiation patterns, canceling interference, and enhancing system performance through linear processing methods. The evolution of beamforming has shifted from convex/nonconvex optimization to optimization-to-learning approaches, showcasing a diverse range of applications in radar, communications, medical imaging, and more. Researchers are addressing challenges and exploring opportunities to further enhance beamforming technologies for future advancements.