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SHAP Programming Tutorials & Engineering Articles
29 SHAP tutorials, guides, and engineering insights from NVIDIA, Uber, Cloudflare, and more
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This article discusses how Uber has integrated explainability into its machine learning platform, Michelangelo, using Integrated Gradients (IG) to provide interpretable attributions for deep learni...
Hugh Chen, Eric Wang, Gaoyuan Huang, Howard Yu, Jia Li, Sally Lee
14 min read
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This article provides insights into GPU-accelerating machine learning model training using CUDA-X Data Science, focusing on tree-based models like XGBoost, LightGBM, and CatBoost.
The article discusses the significance of ML observability at Netflix, emphasizing its role in monitoring and understanding machine learning models, particularly in payment processing.
Netflix Technology Blog
10 min read
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The article discusses the advancements in XGBoost 3. 0, particularly its ability to train with terabyte-scale datasets on a single NVIDIA Grace Hopper Superchip.
NVIDIA utilizes data science and machine learning to enhance chip manufacturing processes, focusing on optimizing workflows through the use of CUDA-X libraries like cuDF and cuML.
Divyansh Jain
8 min read
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The article discusses the use of GPU acceleration to enhance performance in Apache Spark applications, highlighting the challenges of migrating workloads from CPUs to GPUs.
Matt Ahrens
9 min read
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The article discusses the use of machine learning to detect bot attacks that utilize residential proxies, highlighting the challenges faced by security engineers in identifying such threats.
The article discusses a novel approach to clustering large and diverse datasets by combining dimensionality reduction, recursion, and supervised machine learning.
This article discusses a Machine Learning (ML) based approach to proactively prevent advertiser churn at Pinterest.
Pinterest Engineering
8 min read
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The article discusses the importance of explainability in machine learning models, particularly through the use of SHAP (SHapley Additive Explanations) and its GPU-accelerated variant, GPUTreeShap.
Parul Pandey
14 min read
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The article discusses the challenges of deploying AI models in production and how NVIDIA Triton Inference Server addresses these challenges.
Shankar Chandrasekaran
11 min read
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The article discusses the Recommend API developed by Slack, which serves as a unified framework for generating recommendations using machine learning.
Katrina Ni
13 min read
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The article discusses the application of graph machine learning at Airbnb, highlighting how graph structures can enhance machine learning models by providing contextual information about users.
Devin Soni
12 min read
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The article discusses the importance of explainable AI (XAI) and how synthetic data can enhance model validation and transparency in AI systems.
This article provides a comprehensive step-by-step guide for building a machine learning application using RAPIDS, a suite of open-source software libraries that leverage GPU acceleration.
Paul Mahler
10 min read
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The article discusses the evolution of Cloudflare's machine learning models aimed at detecting mobile bots, highlighting the shift from desktop to mobile traffic and the challenges faced in accurat...
Arushi Shah
9 min read
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The article introduces FastTreeSHAP, an open-source Python package designed to accelerate SHAP value computations for tree-based models.
Jilei Yang
19 min read
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The article discusses the European Union's Artificial Intelligence Act and its implications for high-risk AI systems, particularly in credit risk management.
Jochen Papenbrock
12 min read
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This article explores the comparison between deep learning and machine learning models for predicting default risk, emphasizing the importance of explainability in model predictions.
Emanuel Scoullos
17 min read
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The article discusses NVIDIA's vision for achieving multi-Million-X speedups in computational performance, which could significantly enhance data-intensive research across various fields.
Joseph Chandler
6 min read
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The article discusses LinkedIn's approach to building transparent and explainable AI systems, emphasizing the importance of trust, fairness, and user understanding in AI applications.
Kinjal Basu
8 min read
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The article discusses how Munich Re Markets leverages interpretable machine learning to enhance portfolio construction strategies in the Life and Pension industry.
The article discusses the importance of model interpretability in machine learning and presents a GPU-accelerated implementation of SHAP (SHapley Additive exPlanations) using RAPIDS on Microsoft Az...
Nanthini Balasubramanian
9 min read
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The article discusses how to accelerate XGBoost on GPU clusters using Dask, highlighting the new Dask interface introduced in XGBoost 1. 4.
Belen Tegegn
11 min read
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The article discusses Optimal Feature Discovery, a method developed by Uber AI to enhance machine learning models by efficiently identifying and selecting relevant features while minimizing redunda...
Adam Wang, Olcay Cirit, Amit Nene, Niel Teng Hu
12 min read
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NASA and NVIDIA are collaborating to enhance scientific data workflows using RAPIDS and GPU acceleration.
The article discusses how RAPIDS and NVIDIA GPUs are accelerating automated and explainable machine learning, making it more accessible and efficient for enterprises.
Nefi Alarcon
3 min read
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The article discusses the application of machine learning (ML) to predict loan delinquencies, emphasizing the importance of model explainability and the benefits of GPU acceleration in enhancing pr...
Mark J. Bennett
15 min read
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The article discusses the challenges and solutions involved in productionizing distributed XGBoost for training deep tree models on large datasets at Uber.
Joseph Wang, Anne Holler, Mingshi Wang, Michael Mui
14 min read
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