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Scaling 3D Reasoning with LMMs to Large Robot Mission Environments Using Datagraphs

Meijer, W. J., Kemmeren, A. C., Riemens, E. H. J., Fransman, J. E., van Bekkum, M., Burghouts, G. J., van Mil, J. D.

arXiv.org Artificial Intelligence

This paper addresses the challenge of scaling Large Multimodal Models (LMMs) to expansive 3D environments. Solving this open problem is especially relevant for robot deployment in many first-responder scenarios, such as search-and-rescue missions that cover vast spaces. The use of LMMs in these settings is currently hampered by the strict context windows that limit the LMM's input size. We therefore introduce a novel approach that utilizes a datagraph structure, which allows the LMM to iteratively query smaller sections of a large environment. Using the datagraph in conjunction with graph traversal algorithms, we can prioritize the most relevant locations to the query, thereby improving the scalability of 3D scene language tasks. We illustrate the datagraph using 3D scenes, but these can be easily substituted by other dense modalities that represent the environment, such as pointclouds or Gaussian splats. We demonstrate the potential to use the datagraph for two 3D scene language task use cases, in a search-and-rescue mission example.


PlasmoData.jl -- A Julia Framework for Modeling and Analyzing Complex Data as Graphs

Cole, David L, Zavala, Victor M

arXiv.org Artificial Intelligence

Datasets encountered in scientific and engineering applications appear in complex formats (e.g., images, multivariate time series, molecules, video, text strings, networks). Graph theory provides a unifying framework to model such datasets and enables the use of powerful tools that can help analyze, visualize, and extract value from data. In this work, we present PlasmoData.jl, an open-source, Julia framework that uses concepts of graph theory to facilitate the modeling and analysis of complex datasets. The core of our framework is a general data modeling abstraction, which we call a DataGraph. We show how the abstraction and software implementation can be used to represent diverse data objects as graphs and to enable the use of tools from topology, graph theory, and machine learning (e.g., graph neural networks) to conduct a variety of tasks. We illustrate the versatility of the framework by using real datasets: i) an image classification problem using topological data analysis to extract features from the graph model to train machine learning models; ii) a disease outbreak problem where we model multivariate time series as graphs to detect abnormal events; and iii) a technology pathway analysis problem where we highlight how we can use graphs to navigate connectivity. Our discussion also highlights how PlasmoData.jl leverages native Julia capabilities to enable compact syntax, scalable computations, and interfaces with diverse packages.


Best Stocks To Invest In Right Now? 3 Artificial Intelligence Stocks To Watch

#artificialintelligence

While investors wonder why stocks are dropping today, artificial intelligence (AI) stocks could be worth watching. For starters, they are likely trading lower in today's stock market as tech stocks sell-off amidst inflation and crypto-related issues. While this may be the case, their long-term growth prospects remain unchanged. Accordingly, this is because of the rapid adoption of AI tech in our world today. In fact, Bank of America (NYSE: BAC) equity strategist Felix Tran released a related research note on the "Future of Work" just last week.