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LightAutoML: AutoML Solution for a Large Financial Services Ecosystem

Unite.AI

Second, the LightAutoML framework limits the range of machine learning models purposefully to only two types: linear models, and GBMs or gradient boosted decision trees, instead of implementing large ensembles of different algorithms. Finally, the CV Preset works with image data with the help of some basic tools.

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Google Research, 2022 & beyond: Algorithmic advances

Google Research AI blog

Robust algorithm design is the backbone of systems across Google, particularly for our ML and AI models. Hence, developing algorithms with improved efficiency, performance and speed remains a high priority as it empowers services ranging from Search and Ads to Maps and YouTube. You can find other posts in the series here.)

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Human Pose Estimation with Deep Learning – Ultimate Overview in 2024

Viso.ai

This article will explore the latest advances in pose analytics algorithms and AI vision techniques, their applications and use cases, and their limitations. However, modern deep learning based approaches have achieved major breakthroughs by improving the performance significantly for both single-person and multi-person pose estimation.

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TinyML: Applications, Limitations, and It’s Use in IoT & Edge Devices

Unite.AI

Furthermore, ML models are often dependent on Deep Learning, Deep Neural Networks, Application Specific Integrated Circuits (ASICs) and Graphic Processing Units (GPUs) for processing the data, and they often have a higher power & memory requirement.

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How to Create Synthetic Data to Train Deep Learning Algorithms?

Dlabs.ai

How to use deep learning (even if you lack the data)? To train a computer algorithm when you don’t have any data. Read on to learn how to use deep learning in the absence of real data. What is deep learning? First, let’s (briefly) tackle an important question: What is deep learning?

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Leveraging Time-Series Segmentation and Machine Learning for Better Forecasting Accuracy

ODSC - Open Data Science

At the end of the day, why not use an AutoML package (Automated Machine Learning) or an Auto-Forecasting tool and let it do the job for you? However, we already know that: Machine Learning models deliver better results in terms of accuracy when we are dealing with interrelated series and complex patterns in our data.

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Breaking Boundaries in 3D Instance Segmentation: An Open-World Approach with Improved Pseudo-Labeling and Realistic Scenarios

Marktechpost

By providing object instance-level classification and semantic labeling, 3D semantic instance segmentation tries to identify items in a given 3D scene represented by a point cloud or mesh. The unknown classes are ignored by current techniques that learn on a fixed set and are also watched over and given the background label.