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Analysis

This paper addresses the challenge of finding quasars obscured by the Galactic plane, a region where observations are difficult due to dust and source confusion. The authors leverage the Chandra X-ray data, combined with optical and infrared data, and employ a Random Forest classifier to identify quasar candidates. The use of machine learning and multi-wavelength data is a key strength, allowing for the identification of fainter quasars and improving the census of these objects. The paper's significance lies in its contribution to a more complete quasar sample, which is crucial for various astronomical studies, including refining astrometric reference frames and probing the Milky Way's interstellar medium.
Reference

The study identifies 6286 quasar candidates, including 863 Galactic Plane Quasar (GPQ) candidates at |b|<20°, of which 514 are high-confidence candidates.

Research#llm📝 BlogAnalyzed: Dec 26, 2025 10:56

Going Short on Generative AI

Published:Nov 29, 2025 12:57
1 min read
AI Supremacy

Analysis

This article presents a contrarian view on the generative AI hype, suggesting that adoption rates are not increasing as expected. The claim is based on data from the Census Bureau and Ramp via Apollo, implying a potentially significant slowdown or even a decline in the use of generative AI technologies. This challenges the prevailing narrative of rapid and widespread AI integration across industries. Further investigation into the specific data points and methodologies used by these sources is needed to validate the claim and understand the underlying reasons for this apparent trend. It's important to consider factors such as cost, complexity, and actual business value derived from these technologies.

Key Takeaways

Reference

AI adoption is actually flattening and or dropping according to Data from the Census Bureau and Ramp via Apollo.

Research#privacy📝 BlogAnalyzed: Dec 29, 2025 08:27

Differential Privacy Theory & Practice with Aaron Roth - TWiML Talk #132

Published:Apr 30, 2018 14:08
1 min read
Practical AI

Analysis

This article summarizes a podcast episode featuring Aaron Roth, a professor specializing in differential privacy. The conversation delves into the theoretical underpinnings of differential privacy, its application in machine learning, and the associated challenges. Roth provides examples of its practical implementation by companies like Google and Apple, as well as the US Census Bureau. The discussion also touches upon current research directions in the field. The episode aims to educate listeners on the core concepts and real-world applications of differential privacy.
Reference

Aaron discusses quite a few examples of differential privacy in action, including work being done at Google, Apple and the US Census Bureau, along with some of the major research directions currently being explored in the field.

Research#AI Ethics📝 BlogAnalyzed: Dec 29, 2025 08:33

Using Deep Learning and Google Street View to Estimate Demographics with Timnit Gebru

Published:Dec 19, 2017 00:54
1 min read
Practical AI

Analysis

This article discusses a podcast interview with Timnit Gebru, a researcher at Microsoft Research, focusing on her work using deep learning and Google Street View to estimate demographics. The conversation covers the research pipeline, challenges faced in building the model, and the role of social awareness, including domain adaptation and fairness. The interview also touches upon the Black in AI group and Gebru's perspective on fairness research. The article provides a concise overview of the research and its implications, highlighting the intersection of AI, social impact, and ethical considerations.
Reference

Timnit describes the pipeline she developed for this research, and some of the challenges she faced building and end-to-end model based on google street view images, census data and commercial car vendor data.