Amazon Proposes “Backward-Compatible Training” for Computer Vision Models

  • The framework details a way for AI models to learn from images that are compatible with previously computed ones.

  • Researchers explained visual classifiacation is often accomplished by mapping each image onto a vector space — a collection of objects called vectors — using a machine learning model.

  • The researchers’ approach enables new models to be deployed without having to re-index existing image collections.


In a paper published this week on the preprint server Arxiv.org, Amazon scientists detail a way for AI models to learn features from images that are compatible with previously computed ones. They say it enables old models to bypass computing features for all previously seen images every time new ones are added, which could save enterprises developing computer vision-enabled applications valuable time and compute power.


As the researchers explain, visual classification is often accomplished by mapping each image onto a vector space — a collection of objects called vectors — using a machine learning model. As images of a new class become available, their vectors are used to spawn a new cluster, which is used to identify the closest to one or a set of input images. Over time, the data sets grow and their quality improves with newly trained models, but in order to harvest the benefit of these new models, the new models must reprocess all images in the set to generate their vectors and create the clusters.


By contrast, the researchers’ approach enables new models to be deployed without having to re-index existing image collections. They say that it doesn’t require modification of the models’ architecture nor of the parameters of the old model — i.e., the configuration variables internal to the model whose values can be estimated from the given data. Perhaps more importantly, they also claim that it doesn’t sacrifice accuracy.


READ MORE: UBER AI SCIENTISTS DESCRIBE FIBER, A FRAMEWORK FOR DISTRIBUTED AI MODEL TRAINING


In experiments, the researchers used the IMDB-Face data set (which contains about 1.7 million images of 59,000 celebrities) to train AI models and the IJB-C face recognition data set (which has around 130,000 images from 3,531 identities) to validate them. The models were then given two tasks: (1) deciding given a pair of templates (one or more face images from the same person) whether they belong to the same person and (2) using a template to search across a set of indexed templates.


The team says that their approach maintained a baseline level of accuracy, but they concede that it has several limitations.


Backward compatibility is critical to quickly deploy new embedding models that leverage ever-growing large-scale training data sets and improvements in deep learning architectures and training methods, [but there’s an] accuracy gap of the new models trained with [our technique] relative to the new model oblivious of previous constraints. Though the gap is reduced by slightly more sophisticated forms of BCT, there is still work to be done in characterizing and achieving the attainable accuracy limits.

- Amazon


READ MORE: GOOGLE DETAILS AN AI MODEL CALLED METNET, BETTER THAN NOAA FOR PREDICTING PRECIPITATION

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AI and Big Data Expo North America announces leading Speaker Lineup

TechEx Events | March 07, 2024

AI and Big Data Expo North America announces new speakers! SANTA CLARA, CALIFORNIA, UNITED STATES, February 26, 2024 /EINPresswire.com/ -- TheAI and Big Expo North America, the leading event for Enterprise AI, Machine Learning, Security, Ethical AI, Deep Learning, Data Ecosystems, and NLP, has announced a fresh cohort of distinguishedspeakersfor its upcoming conference at the Santa Clara Convention Center on June 5-6, 2024. Some of the top industry speakers set to take the stage are: - Sam Hamilton - Head of Data & AI – Visa - Dr Astha Purohit - Director - Product (Tech) Ops – Walmart - Noorddin Taj - Head of Architecture and Design of Intelligent Operations - BP - Temi Odesanya - Director - AI Governance Automation - Thomson Reuters - Katie Sanders - Assistant Vice President – Tech - Union Pacific Railroad - Prasanth Nandanuru – SVP - Wells Fargo - Rodney Brooks - Professor Emeritus - MIT These esteemed speakers bring a wealth of knowledge and expertise to an already impressive lineup, promising attendees a truly enlightening experience. In addition to the speakers, theAI and Big Data Expo North Americawill feature a series of presentations covering a diverse range of topics in AI and Big Data exploring the latest innovations, implementations and strategies across a range of industries. Attendees can expect to gain valuable insights and practical strategies from presentations such as: How Gen AI Positively Augments Workforce Capabilities Trends in Computer Vision: Applications, Datasets, and Models Getting to Production-Ready: Challenges and Best Practices for Deploying AI Ensuring Your AI is Responsible and Ethical Mitigating Bias and Promoting Fairness in AI Systems Security Challenges in the Era of Gen AI and Data Science AI for Good: Social Impact and Ethics Selling Data Democratization to Executives Spreading Data Insights across the Business Barriers to Overcome: People, Processes, and Technology Optimizing the Customer Experience with AI Using AI to Drive Growth in a Regulated Industry Building an MLOps Foundation for AI at Scale The Expo offers a platform for exploration and discovery, showcasing how cutting-edge technologies are reshaping a myriad of industries, including manufacturing, transport, supply chain, government, legal sectors, financial services, energy, utilities, insurance, healthcare, retail, and more. Attendees will have the chance to witness firsthand the transformative power of AI and Big Data across various sectors, gaining insights that are crucial for staying ahead in today's rapidly evolving technological landscape. Anticipating a turnout of over 7000 attendees and featuring 200 speakers across various tracks, AI and Big Data Expo North America offers a unique opportunity for CTO’s, CDO’s, CIO’s , Heads of IOT, AI /ML, IT Directors and tech enthusiasts to stay abreast of the latest trends and innovations in AI, Big Data and related technologies. Organized by TechEx Events, the conference will also feature six co-located events, including the IoT Tech Expo, Intelligent Automation Conference, Cyber Security & Cloud Congress, Digital Transformation Week, and Edge Computing Expo, ensuring a comprehensive exploration of the technological landscape. Attendees can choose from various ticket options, providing access to engaging sessions, the bustling expo floor, premium tracks featuring industry leaders, a VIP networking party, and a sophisticated networking app facilitating connections ahead of the event. Secure your ticket with a 25% discount on tickets, available until March 31st, 2024. Save up to $300 on your ticket and be part of the conversation shaping the future of AI and Big Data technologies. For more information and to secure your place at AI and Big Data Expo North America, please visit https://www.ai-expo.net/northamerica/. About AI and Big Data Expo North America: The AI and Big Data Expo North America is a leading event in the AI and Big Data landscape, serving as a nexus for professionals, industry experts, and enthusiasts to explore and navigate the ever-evolving technological frontier. Through its focus on education, networking, and collaboration, the Expo continues to be a beacon for those eager to stay at the forefront of technological innovation. “AI and Big Data Expo North Americais a part ofTechEx. For more information regardingTechExplease see onlinehere.”

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