Blog

Edge MLOps

MLOps at the Edge: Predicting Solar Radiation in Photovoltaic Plants

This article takes you inside a real-world deployment where MLOps at the edge powers hourly solar radiation forecasts in a photovoltaic plant. By combining AI with real-time data flows, and cloud integration, the solution delivers higher prediction accuracy, faster response times, and optimized plant performance. Discover how Edge MLOps is transforming solar forecasting.

Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.

Edge Computing as a solution to achieve the convergence between IT, OT and ET

Edge Computing helps in integrating Information, Operation, and Engineering technologies since it converts data into valid information for real-time decision-making and can relate data coming from IT, OT, and ET systems, which can be difficult to integrate due to their very different origins. In this article written by Daniel Garrote, we dig into the different systems and the role of Edge Computing in helping integrate all these systems.

Technology

Adaptive AI and the Role of Edge Computing

As artificial intelligence continues to advance, the need for real-time, adaptive, and efficient AI systems becomes increasingly critical. In this article, we dig in into how edge computing complements and enhances adaptive AI, enabling intelligent applications to thrive in diverse and dynamic environments. Join us as we explore the revolutionary synergy between edge computing and adaptive AI.

Technology

How Edge Computing drives Maritime Business Revolution through Energy Optimization

Edge Computing plays a pivotal role in revolutionizing the marine business, particularly in the domain of energy optimization. By bringing computing resources closer to the data source, edge computing enables real-time data processing and analysis onboard ships and marine installations. This paradigm shift allows for more efficient energy management and optimization, leading to significant cost reductions and a reduced environmental impact.

Technology

Barbara platform release 2.5.0: Unleashing the Power of Edge Applications with Barbara Marketplace

Whether you're an AI developer, an industrial solutions provider, or a forward-thinking company seeking to optimize operations, the Barbara Marketplace connects you to a world of possibilities. Take your business to the next level by joining the Barbara Marketplace, a hub for cutting-edge solutions designed to transform industries with Edge AI.

Release Notes

Overcoming the Challenges of Deploying Computer Vision Models at Scale

Deploying computer vision models in production is a complex endeavour that requires a holistic approach that encompasses data, models, infrastructure, and processes. By addressing the challenges of data acquisition, model selection, infrastructure, CI/CD, monitoring, and ethical considerations, organizations can successfully deploy computer vision models at scale. Thibaut Lucas, CEO and Co-founder at Picsellia shares his view on both, the business and technical aspects surrounding the challenges of deploying Computer Vision at scale.

Computer Vision

Smart and cybersecure machines with Edge technology: A vision of the industrial future.

As thousands of millions of assets are connected to the Internet the industrial world faces new challenges when it comes to connectivity and cybersecurity for real-time automation and decision making . In this talk we address the key role of an Edge Platform as a solution to overcome the Data Gravity issue of the Cloud.

Smart Manufacturing

TinyML: Detecting Harmful Chemicals in Hostile Environments

TinyML has proven to be a powerful tool for implementing machine learning models in devices and environments with limited resources. In this article, we explore its potential in the refinery and chemical sector.

Industry at the Edge

Edge AI Revolution: Exploiting the Growing Market Opportunity for Machine Learning

By 2025, a staggering 75% of enterprise data will be created at the edge. Moreover, by 2027, deep learning will be in over 65% of edge use cases. As the volume of data continues to increase, computing is shifting towards the edge. This presents a unique opportunity for AI /ML Teams to learn and adopt best practices in implementing Machine Learning in the Edge. Learn more and replay our webinar on The Cutting Edge of MLOps.

Industry at the Edge

Edge-AI Business Models Driving Tangible Value

The use of AI in Edge Computing opens up exciting opportunities across industries, offering benefits like real-time decision-making, low latency inferencing, and enhanced data security. However, quantifying these benefits and demonstrating tangible returns on investment remains a challenge for many companies.‍

Technology
Sorry, we couldn't find a match for that. Try adjusting the filters above to expand the results.

Resources

Industrial Energy Efficiency Plan 2023

Download

How Edge Computing is changing the Industrial sector

Download

The state of cybersecurity in industry (only available in Spanish)

Download