49 research outputs found
CompeteAI: Understanding the Competition Behaviors in Large Language Model-based Agents
Large language models (LLMs) have been widely used as agents to complete
different tasks, such as personal assistance or event planning. While most work
has focused on cooperation and collaboration between agents, little work
explores competition, another important mechanism that fosters the development
of society and economy. In this paper, we seek to examine the competition
behaviors in LLM-based agents. We first propose a general framework to study
the competition between agents. Then, we implement a practical competitive
environment using GPT-4 to simulate a virtual town with two types of agents,
including restaurant agents and customer agents. Specifically, restaurant
agents compete with each other to attract more customers, where the competition
fosters them to transform, such as cultivating new operating strategies. The
results of our experiments reveal several interesting findings ranging from
social learning to Matthew Effect, which aligns well with existing sociological
and economic theories. We believe that competition between agents deserves
further investigation to help us understand society better. The code will be
released soon.Comment: Technical report; 21 page
A Health Monitoring System Based on Flexible Triboelectric Sensors for Intelligence Medical Internet of Things and its Applications in Virtual Reality
The Internet of Medical Things (IoMT) is a platform that combines Internet of
Things (IoT) technology with medical applications, enabling the realization of
precision medicine, intelligent healthcare, and telemedicine in the era of
digitalization and intelligence. However, the IoMT faces various challenges,
including sustainable power supply, human adaptability of sensors and the
intelligence of sensors. In this study, we designed a robust and intelligent
IoMT system through the synergistic integration of flexible wearable
triboelectric sensors and deep learning-assisted data analytics. We embedded
four triboelectric sensors into a wristband to detect and analyze limb
movements in patients suffering from Parkinson's Disease (PD). By further
integrating deep learning-assisted data analytics, we actualized an intelligent
healthcare monitoring system for the surveillance and interaction of PD
patients, which includes location/trajectory tracking, heart monitoring and
identity recognition. This innovative approach enabled us to accurately capture
and scrutinize the subtle movements and fine motor of PD patients, thus
providing insightful feedback and comprehensive assessment of the patients
conditions. This monitoring system is cost-effective, easily fabricated, highly
sensitive, and intelligent, consequently underscores the immense potential of
human body sensing technology in a Health 4.0 society
ELM of ELM-WD: An extremely low mass hot donor star discovered in LAMOST survey
The Extremely Low Mass White Dwarfs (ELM WDs) and pre-ELM WDs are helium core
white dwarfs with mass . They are formed in close binaries
and have lost over half of their initial masses via Common Envelope (CE)
ejection or stable Roche Lobe Over Flow (RLOF). Both evolution simulations and
observations show that a lower mass limit for ELM WDs exists at
. Here we report the discovery of an extremely low mass
ELM WD, ID70904216 in LAMOST survey, that may be lower than the ELM WD mass
limit. Based on LAMOST and P200 spectroscopic observations, ID70904216 shows
orbital period 0.219658 days and radial velocity semi-amplitude
, which gives the mass function of 0.73, indicating
the companion is a compact star. The low resolution spectra shows a F type star
with without emission features. The temperature is
consistent with that derived from SED fitting() and multi-color light
curve solution(). The optical light curves, in ZTF g, r and i bands and
Catalina V band, show ellipsoidal variability with amplitudes ,
suggesting that the visible companion is heavily tidal distorted. Combining
with the distance from Gaia survey, the WD code modeling estimates that the
mass of the visible star is , and the mass of
the invisible star is . The radius of the
visible donor is . The inclination angle is constrained
between 60 and 90. The observations indicate the system is
a pre-ELM WD + WD/NS binary system with an extremely low mass hot donor below
the theoretical limit.Comment: 16 pages, 10 figure
Orbital parameters for an ELM white dwarf with a white dwarf companion: LAMOST J033847.06+413424.2
Double white dwarf systems are of great astrophysical importance in the field
of gravitational wave and Type Ia supernova. While the binary fraction of CO
core white dwarf is about a few percents, the extremely low mass white dwarfs
are all thought to be within binary systems. In this work, we report the
orbital solution of a double degenerate system: J033847.06+413424.24, an
extremely low mass He core white dwarf orbiting a CO core white dwarf. With
LAMOST and P200, time domain spectroscopic observations have been made and
spectral atmosphere parameters are estimated to be K and
log dex. Combining Gaia parallax, 3D extinction, and evolution
tracks, we estimate a radius of and a mass of
. With the 37 single exposure spectra, the radial velocities are
measured and the orbital parameters are estimated to be days,
km/s and km/s. The radial velocity based system
ephemeris is also provided. The light curves from several photometric surveys
show no orbital modulation. The orbital solution suggests that the invisible
companion has a minimum mass of about 0.60 and is
for an inclination of , indicating most probably a CO
core white dwarf. The system is expected to merge in about 1 Gyr. With present
period and distance ( pc) it can not irradiate strong enough
gravitational wave for LISA. More double degenerate systems are expected to be
discovered and parameterized as the LAMOST survey goes on.Comment: 12 pages, 11 figure
Single-cell atlas reveals different immune environments between stable and vulnerable atherosclerotic plaques
IntroductionRegardless of the degree of stenosis, vulnerable plaque is an important cause of ischemic stroke and thrombotic complications. The changes of the immune microenvironment within plaques seem to be an important factor affecting the characteristics of the plaque. However, the differences of immune microenvironment between stable and vulnerable plaques were remained unknown.MethodsIn this study, RNA-sequencing was performed on superficial temporal arteries from 5 traumatic patients and plaques from 3 atherosclerotic patients to preliminary identify the key immune response processes in plaques. Mass cytometry (CyTOF) technology was used to explore differences in immune composition between 9 vulnerable plaques and 12 stable plaques. Finally, immunofluorescence technique was used to validate our findings in the previous analysis.ResultsOur results showed that more CD86+CD68+ M1 pro-inflammatory macrophages were found in vulnerable plaques, while CD4+T memory cells were mainly found in stable plaques. In addition, a CD11c+ subset of CD4+T cells with higher IFN-r secretion was found within the vulnerable plaque. In two subsets of B cells, CD19+CD20-B cells in vulnerable plaques secreted more TNF-a and IL-6, while CD19-CD20+B cells expressed more PD-1 molecules.ConclusionIn conclusion, our study suggested that M1-like macrophages are the major cell subset affecting plaque stability, while functional B cells may also contribute to plaque stability