Artificial Intelligence That Can Evolve on Its Own Is Being Tested by Google Scientists – Newsweek
Computer scientists working for a high-tech division of Google are testing how machine learning algorithms can be created from scratch, then evolve naturally, based on simple math.
Experts behind Google's AutoML suite of artificial intelligence tools have now showcased fresh research which suggests the existing software could potentially be updated to "automatically discover" completely unknown algorithms while also reducing human bias during the data input process.
Read more
According to ScienceMag, the software, known as AutoML-Zero, resembles the process of evolution, with code improving every generation with little human interaction.
Machine learning tools are "trained" to find patterns in vast amounts of data while automating such processes and constantly being refined based on past experience.
But researchers say this comes with drawbacks that AutoML-Zero aims to fix. Namely, the introduction of bias.
"Human-designed components bias the search results in favor of human-designed algorithms, possibly reducing the innovation potential of AutoML," their team's paper states. "Innovation is also limited by having fewer options: you cannot discover what you cannot search for."
The analysis, which was published last month on arXiv, is titled "Evolving Machine Learning Algorithms From Scratch" and is credited to a team working for Google Brain division.
"The nice thing about this kind of AI is that it can be left to its own devices without any pre-defined parameters, and is able to plug away 24/7 working on developing new algorithms," Ray Walsh, a computer expert and digital researcher at ProPrivacy, told Newsweek.
As noted by ScienceMag, AutoML-Zero is designed to create a population of 100 "candidate algorithms" by combining basic random math, then testing the results on simple tasks such as image differentiation. The best performing algorithms then "evolve" by randomly changing their code.
The resultswhich will be variants of the most successful algorithmsthen get added to the general population, as older and less successful algorithms get left behind, and the process continues to repeat. The network grows significantly, in turn giving the system more natural algorithms to work with.
Haran Jackson, the chief technology officer (CTO) at Techspert, who has a PhD in Computing from the University of Cambridge, told Newsweek that AutoML tools are typically used to "identify and extract" the most useful features from datasetsand this approach is a welcome development.
"As exciting as AutoML is, it is restricted to finding top-performing algorithms out of the, admittedly large, assortment of algorithms that we already know of," he said.
"There is a sense amongst many members of the community that the most impressive feats of artificial intelligence will only be achieved with the invention of new algorithms that are fundamentally different to those that we as a species have so far devised.
"This is what makes the aforementioned paper so interesting. It presents a method by which we can automatically construct and test completely novel machine learning algorithms."
Jackson, too, said the approach taken was similar to the facts of evolution first proposed by Charles Darwin, noting how the Google team was able to induce "mutations" into the set of algorithms.
"The mutated algorithms that did a better job of solving real-world problems were kept alive, with the poorly-performing ones being discarded," he elaborated.
"This was done repeatedly, until a set of high-performing algorithms was found. One intriguing aspect of the study is that this process 'rediscovered' some of the neural network algorithms that we already know and use. It's extremely exciting to see if it can turn up any algorithms that we haven't even thought of yet, the impact of which to our daily lives may be enormous." Google has been contacted for comment.
The development of AutoML was previously praised by Alphabet's CEO Sundar Pichai, who said it had been used to improve an algorithm that could detect the spread of breast cancer to adjacent lymph nodes. "It's inspiring to see how AI is starting to bear fruit," he wrote in a 2018 blog post.
The Google Brain team members who collaborated on the paper said the concepts in the most recent research were a solid starting point, but stressed that the project is far from over.
"Starting from empty component functions and using only basic mathematical operations, we evolved linear regressors, neural networks, gradient descent... multiplicative interactions. These results are promising, but there is still much work to be done," the scientists' preprint paper noted.
Walsh told Newsweek: "The developers of AutoML-Zero believe they have produced a system that has the ability to output algorithms human developers may never have thought of.
"According to the developers, due to its lack of human intervention AutoML-Zero has the potential to produce algorithms that are more free from human biases. This theoretically could result in cutting-edge algorithms that businesses could rely on to improve their efficiency.
"However, it is worth bearing in mind that for the time being the AI is still proof of concept and it will be some time before it is able to output the complex kinds of algorithms currently in use. On the other hand, the research [demonstrates how] the future of AI may be algorithms produced by other machines."
Read more from the original source:
Artificial Intelligence That Can Evolve on Its Own Is Being Tested by Google Scientists - Newsweek
- The Nvidia AI interview: Inside DLSS 4 and machine learning with Bryan Catanzaro - Eurogamer - January 22nd, 2025 [January 22nd, 2025]
- The wide use of machine learning VFX techniques on Here - befores & afters - January 22nd, 2025 [January 22nd, 2025]
- .NET Core: Pioneering the Future of AI and Machine Learning - TechBullion - January 22nd, 2025 [January 22nd, 2025]
- Development and validation of a machine learning-based prediction model for hepatorenal syndrome in liver cirrhosis patients using MIMIC-IV and eICU... - January 22nd, 2025 [January 22nd, 2025]
- A comparative study on different machine learning approaches with periodic items for the forecasting of GPS satellites clock bias - Nature.com - January 22nd, 2025 [January 22nd, 2025]
- Machine learning based prediction models for the prognosis of COVID-19 patients with DKA - Nature.com - January 22nd, 2025 [January 22nd, 2025]
- A scoping review of robustness concepts for machine learning in healthcare - Nature.com - January 22nd, 2025 [January 22nd, 2025]
- How AI and machine learning led to mind blowing progress in understanding animal communication - WHYY - January 22nd, 2025 [January 22nd, 2025]
- 3 Predictions For Predictive AI In 2025 - The Machine Learning Times - January 22nd, 2025 [January 22nd, 2025]
- AI and Machine Learning - WEF report offers practical steps for inclusive AI adoption - SmartCitiesWorld - January 22nd, 2025 [January 22nd, 2025]
- Learnings from a Machine Learning Engineer Part 3: The Evaluation | by David Martin | Jan, 2025 - Towards Data Science - January 22nd, 2025 [January 22nd, 2025]
- Google AI Research Introduces Titans: A New Machine Learning Architecture with Attention and a Meta in-Context Memory that Learns How to Memorize at... - January 22nd, 2025 [January 22nd, 2025]
- Improving BrainMachine Interfaces with Machine Learning ... - eeNews Europe - January 22nd, 2025 [January 22nd, 2025]
- Powered by machine learning, a new blood test can enable early detection of multiple cancers - Medical Xpress - January 15th, 2025 [January 15th, 2025]
- Mapping the Edges of Mass Spectral Prediction: Evaluation of Machine Learning EIMS Prediction for Xeno Amino Acids - Astrobiology News - January 15th, 2025 [January 15th, 2025]
- Development of an interpretable machine learning model based on CT radiomics for the prediction of post acute pancreatitis diabetes mellitus -... - January 15th, 2025 [January 15th, 2025]
- Understanding the spread of agriculture in the Western Mediterranean (6th-3rd millennia BC) with Machine Learning tools - Nature.com - January 15th, 2025 [January 15th, 2025]
- "From 'Food Rules' to Food Reality: Machine Learning Unveils the Ultra-Processed Truth in Our Grocery Carts" - American Council on Science... - January 15th, 2025 [January 15th, 2025]
- AI and Machine Learning in Business Market is Predicted to Reach $190.5 Billion at a CAGR of 32% by 2032 - EIN News - January 15th, 2025 [January 15th, 2025]
- QT Imaging Holdings Introduces Machine Learning-Enabled Image Interpolation Algorithm to Substantially Reduce Scan Time - Business Wire - January 15th, 2025 [January 15th, 2025]
- Global Tiny Machine Learning (TinyML) Market to Reach USD 3.4 Billion by 2030 - Key Drivers and Opportunities | Valuates Reports - PR Newswire UK - January 15th, 2025 [January 15th, 2025]
- Machine learning in mental health getting better all the time - Nature.com - January 15th, 2025 [January 15th, 2025]
- Signature-based intrusion detection using machine learning and deep learning approaches empowered with fuzzy clustering - Nature.com - January 15th, 2025 [January 15th, 2025]
- Machine learning and multi-omics in precision medicine for ME/CFS - Journal of Translational Medicine - January 15th, 2025 [January 15th, 2025]
- Exploring the influence of age on the causes of death in advanced nasopharyngeal carcinoma patients undergoing chemoradiotherapy using machine... - January 15th, 2025 [January 15th, 2025]
- 3D Shape Tokenization - Apple Machine Learning Research - January 9th, 2025 [January 9th, 2025]
- Machine Learning Used To Create Scalable Solution for Single-Cell Analysis - Technology Networks - January 9th, 2025 [January 9th, 2025]
- Robotics: machine learning paves the way for intuitive robots - Hello Future - January 9th, 2025 [January 9th, 2025]
- Machine learning-based estimation of crude oil-nitrogen interfacial tension - Nature.com - January 9th, 2025 [January 9th, 2025]
- Machine learning Nomogram for Predicting endometrial lesions after tamoxifen therapy in breast Cancer patients - Nature.com - January 9th, 2025 [January 9th, 2025]
- Staying ahead of the automation, AI and machine learning curve - Creamer Media's Engineering News - January 9th, 2025 [January 9th, 2025]
- Machine Learning and Quantum Computing Predict Which Antibiotic To Prescribe for UTIs - Consult QD - January 9th, 2025 [January 9th, 2025]
- Machine Learning, Innovation, And The Future Of AI: A Conversation With Manoj Bhoyar - International Business Times UK - January 9th, 2025 [January 9th, 2025]
- AMD's FSR 4 will use machine learning but requires an RDNA 4 GPU, promises 'a dramatic improvement in terms of performance and quality' - PC Gamer - January 9th, 2025 [January 9th, 2025]
- Explainable artificial intelligence with UNet based segmentation and Bayesian machine learning for classification of brain tumors using MRI images -... - January 9th, 2025 [January 9th, 2025]
- Understanding the Fundamentals of AI and Machine Learning - Nairobi Wire - January 9th, 2025 [January 9th, 2025]
- Machine learning can help blood tests have a separate normal for each patient - The Hindu - January 1st, 2025 [January 1st, 2025]
- Artificial Intelligence and Machine Learning Programs Introduced this Spring - The Flash Today - January 1st, 2025 [January 1st, 2025]
- Virtual reality-assisted prediction of adult ADHD based on eye tracking, EEG, actigraphy and behavioral indices: a machine learning analysis of... - January 1st, 2025 [January 1st, 2025]
- Open source machine learning systems are highly vulnerable to security threats - TechRadar - December 22nd, 2024 [December 22nd, 2024]
- After the PS5 Pro's less dramatic changes, PlayStation architect Mark Cerny says the next-gen will focus more on CPUs, memory, and machine-learning -... - December 22nd, 2024 [December 22nd, 2024]
- Accelerating LLM Inference on NVIDIA GPUs with ReDrafter - Apple Machine Learning Research - December 22nd, 2024 [December 22nd, 2024]
- Machine learning for the prediction of mortality in patients with sepsis-associated acute kidney injury: a systematic review and meta-analysis - BMC... - December 22nd, 2024 [December 22nd, 2024]
- Machine learning uncovers three osteosarcoma subtypes for targeted treatment - Medical Xpress - December 22nd, 2024 [December 22nd, 2024]
- From Miniatures to Machine Learning: Crafting the VFX of Alien: Romulus - Animation World Network - December 22nd, 2024 [December 22nd, 2024]
- Identification of hub genes, diagnostic model, and immune infiltration in preeclampsia by integrated bioinformatics analysis and machine learning -... - December 22nd, 2024 [December 22nd, 2024]
- This AI Paper from Microsoft and Novartis Introduces Chimera: A Machine Learning Framework for Accurate and Scalable Retrosynthesis Prediction -... - December 18th, 2024 [December 18th, 2024]
- Benefits and Challenges of Integrating AI and Machine Learning into EHR Systems - Healthcare IT Today - December 18th, 2024 [December 18th, 2024]
- The History Of AI: How Machine Learning's Evolution Is Reshaping Everything Around Us - SlashGear - December 18th, 2024 [December 18th, 2024]
- AI and Machine Learning to Enhance Pension Plan Governance and the Investor Experience: New CFA Institute Research - Fintech Finance - December 18th, 2024 [December 18th, 2024]
- Address Common Machine Learning Challenges With Managed MLflow - The New Stack - December 18th, 2024 [December 18th, 2024]
- Machine Learning Used To Classify Fossils Of Extinct Pollen - Offworld Astrobiology Applications? - Astrobiology News - December 18th, 2024 [December 18th, 2024]
- Machine learning model predicts CDK4/6 inhibitor effectiveness in metastatic breast cancer - News-Medical.Net - December 18th, 2024 [December 18th, 2024]
- New Lockheed Martin Subsidiary to Offer Machine Learning Tools to Defense Customers - ExecutiveBiz - December 18th, 2024 [December 18th, 2024]
- How Powerful Will AI and Machine Learning Become? - International Policy Digest - December 18th, 2024 [December 18th, 2024]
- ChatGPT-Assisted Machine Learning for Chronic Disease Classification and Prediction: A Developmental and Validation Study - Cureus - December 18th, 2024 [December 18th, 2024]
- Blood Tests Are Far From Perfect But Machine Learning Could Change That - Inverse - December 18th, 2024 [December 18th, 2024]
- Amazons AGI boss: You dont need a PhD in machine learning to build with AI anymore - Fortune - December 18th, 2024 [December 18th, 2024]
- From Novice to Pro: A Roadmap for Your Machine Learning Career - KDnuggets - December 10th, 2024 [December 10th, 2024]
- Dimension nabs $500M second fund for 'still contrary' intersection of bio and machine learning - Endpoints News - December 10th, 2024 [December 10th, 2024]
- Using Machine Learning to Make A Really Big Detailed Simulation - Astrobites - December 10th, 2024 [December 10th, 2024]
- Driving Business Growth with GreenTomatos Data and Machine Learning Strategy on Generative AI - AWS Blog - December 10th, 2024 [December 10th, 2024]
- Unlocking the power of data analytics and machine learning to drive business performance - WTW - December 10th, 2024 [December 10th, 2024]
- AI and the Ethics of Machine Learning | by Abwahabanjum | Dec, 2024 - Medium - December 10th, 2024 [December 10th, 2024]
- Differentiating Cystic Lesions in the Sellar Region of the Brain Using Artificial Intelligence and Machine Learning for Early Diagnosis: A Prospective... - December 10th, 2024 [December 10th, 2024]
- New Amazon SageMaker AI Innovations Reimagine How Customers Build and Scale Generative AI and Machine Learning Models - Amazon Press Release - December 10th, 2024 [December 10th, 2024]
- What is Machine Learning? 18 Crucial Concepts in AI, ML, and LLMs - Netguru - December 5th, 2024 [December 5th, 2024]
- Machine learning-based prediction of antibiotic resistance in Mycobacterium tuberculosis clinical isolates from Uganda - BMC Infectious Diseases - December 5th, 2024 [December 5th, 2024]
- Interdisciplinary Team Needed to Apply Machine Learning in Epilepsy Surgery: Lara Jehi, MD, MHCDS - Neurology Live - December 5th, 2024 [December 5th, 2024]
- A multimodal machine learning model for the stratification of breast cancer risk - Nature.com - December 5th, 2024 [December 5th, 2024]
- Machine learning based intrusion detection framework for detecting security attacks in internet of things - Nature.com - December 5th, 2024 [December 5th, 2024]
- Machine learning evaluation of a hypertension screening program in a university workforce over five years - Nature.com - December 5th, 2024 [December 5th, 2024]
- Vaultree Introduces VENum Stack: Combining the Power of Machine Learning and Encrypted Data Processing for Secure Innovation - PR Newswire - December 5th, 2024 [December 5th, 2024]
- Direct simulation and machine learning structure identification unravel soft martensitic transformation and twinning dynamics - pnas.org - December 5th, 2024 [December 5th, 2024]
- AI and Machine Learning - Maryland to use AI technology to manage traffic flow - SmartCitiesWorld - December 5th, 2024 [December 5th, 2024]
- Researchers make machine learning breakthrough in lithium-ion tech here's how it could make aging batteries safer - Yahoo! Voices - December 5th, 2024 [December 5th, 2024]
- Integrating IoT and machine learning: Benefits and use cases - TechTarget - December 5th, 2024 [December 5th, 2024]
- Landsat asks industry for artificial intelligence (AI) and machine learning for satellite operations - Military & Aerospace Electronics - December 5th, 2024 [December 5th, 2024]
- Machine learning optimized efficient graphene-based ultra-broadband solar absorber for solar thermal applications - Nature.com - December 5th, 2024 [December 5th, 2024]
- Polymathic AI Releases The Well: 15TB of Machine Learning Datasets Containing Numerical Simulations of a Wide Variety of Spatiotemporal Physical... - December 5th, 2024 [December 5th, 2024]