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Lab V2 is an ASU Lab focused on the intersection of symbolic AI and machine learning. Lab V2 is directed by @pshak02
Homepagehttps://labs.engineering.asu.edu/labv2/
Deep Symbolic Policy (DSP) Learning https://youtu.be/VINzkp1y0R0 via @YouTube
Deep Symbolic Policy (DSP) Learning

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(Pt.3) CLEVRER: Reasoning about events in video https://youtu.be/Wyq16bijnxg via @YouTube
(Pt.3) CLEVRER: Reasoning about events in video

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(Pt.2) CLEVRER: Reasoning about events in video https://youtu.be/CUb_xomGHAc via @YouTube
(Pt.2) CLEVRER: Reasoning about events in video

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(Pt.1) CLEVRER: Reasoning about events in video https://youtu.be/AVMZ6zOPVRY via @YouTube
(Pt.1) CLEVRER: Reasoning about events in video

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ChatGPT Math Problem Challenge! (AAAI-MAKE 2023) https://youtu.be/iRhbOE9U_Tk via @YouTube
ChatGPT Math Problem Challenge! (AAAI-MAKE 2023)

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RT @gerrysimari
"Scalable Query Answering Under Uncertainty to Neuroscientific Ontological Knowledge: The NeuroLang Approach"
Fascinating interdisciplinary collaboration with @demwassermann +team @Inria_Saclay, and @ComputacionUBA @vaniMartinez82
#AI
@UNSDCIC @icic_uns
https://link.springer.com/article/10.1007/s12021-022-09612-4
Scalable Query Answering Under Uncertainty to Neuroscientific Ontological Knowledge: The NeuroLang Approach - Neuroinformatics

Researchers in neuroscience have a growing number of datasets available to study the brain, which is made possible by recent technological advances. Given the extent to which the brain has been studied, there is also available ontological knowledge encoding the current state of the art regarding its different areas, activation patterns, keywords associated with studies, etc. Furthermore, there is inherent uncertainty associated with brain scans arising from the mapping between voxels—3D pixels—and actual points in different individual brains. Unfortunately, there is currently no unifying framework for accessing such collections of rich heterogeneous data under uncertainty, making it necessary for researchers to rely on ad hoc tools. In particular, one major weakness of current tools that attempt to address this task is that only very limited propositional query languages have been developed. In this paper we present NeuroLang, a probabilistic language based on first-order logic with existential rules, probabilistic uncertainty, ontologies integration under the open world assumption, and built-in mechanisms to guarantee tractable query answering over very large datasets. NeuroLang’s primary objective is to provide a unified framework to seamlessly integrate heterogeneous data, such as ontologies, and map fine-grained cognitive domains to brain regions through a set of formal criteria, promoting shareable and highly reproducible research. After presenting the language and its general query answering architecture, we discuss real-world use cases showing how NeuroLang can be applied to practical scenarios.

SpringerLink
Training Challenges in Deep Learning https://youtu.be/M_Q005CXf1c via @YouTube
Training Challenges in Deep Learning

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Deep Symbolic Regression https://youtu.be/M-BmMUy6wMo via @YouTube
Deep Symbolic Regression

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Symbolic Regression with Transformers https://youtu.be/_gdmCbUvb2w via @YouTube
Symbolic Regression with Transformers

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Markov Random Fields, Markov Chains, Markov Logic Networks, and more https://youtu.be/bY8hLSdS6jk via @YouTube
Markov Random Fields, Markov Chains, Markov Logic Networks, and more

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