Blog

Release Notes

Barbara platform release 3.0.0: From Legacy to Full Edge AI - VMs and Stronger AI Native Integration Now Available

We’ve just launched Barbara platform v3.0.0, a major update focused on giving users the power to orchestrate any app no matter if they are legacy or containerized and any AI model regardless the framework used.

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

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

Barbara platform release 2.4.0: Virtual Nodes arrive to Barbara!

This release, version 2.4.0, of the Barbara platform introduces significant enhancements that will expedite your proof of concepts and production deployments. Additionally, we have revamped various views and cards to improve the platform's usability, making interactions smoother and faster.

Release Notes

CIRED 2023. Why virtualization is instrumental for DSOs to gain full value from their assets

Companies are increasingly interested in virtualizing electrical equipment because it offers a range of benefits for their operations. Virtualization reduces the need for physical infrastructure, which can result in cost savings, reduced maintenance requirements, and increased safety. We will be at CIRED 2023, showcasing how to virtualize substations from Transmission to Middle and Low Voltage networks through Edge Computing Technology.

Smart Grid

Edge AI: Deploying AI flexibility algorithm in Substations

With the increased number of distributed energy resources DERs onto the grid, energy operators need a predictive system based on consumption and production patterns to help them avoid congestion and overvoltage events in the grid. In this article, we cover a specific project we are running under the i-nergy programme, an EU-funded initiative aiming to support and develop new AI-based Energy Services.

Smart Grid

Edge AI for Computer Vision: What Industry Needs to Know About Optimizing Operations with Edge Computer Vision

In today's fast-paced and competitive landscape, optimizing operations is crucial for success. With the advent of cutting-edge technologies like Edge Computer Vision, businesses can gain a significant advantage by leveraging real-time data analysis and decision-making. In this article, we will explore what industries need to know about optimizing operations with Edge Computer Vision and how this transformative technology can propel their growth.

Industry at the Edge

What Companies Need to do to be EU AI Compliance

Artificial Intelligence (AI) is revolutionizing all industries, providing new opportunities and challenges for growth and innovation. However, with great power comes greater responsibility. The European Union (EU) has recognized the urgent need for ethical and transparent AI practices to protect individuals' rights and to ensure fair and accountable use of AI technologies. This article aims to guide companies on what they must do to comply with EU AI regulations.

Technology

MLOps at the Edge: Advantages and Challenges of Deploying Machine Learning Models in Edge Computing Environments

‍‍In today's fast-paced business landscape, artificial intelligence (AI) and machine learning (ML) have become instrumental in many business processes. MLOps is a rapidly growing field that is revolutionizing the way Machine Learning models are being deployed and managed. By using MLOps in the Edge, organizations can take advantage of the benefits of local processing, increased security and privacy, and reduced bandwidth usage. This article delves into the advantages and challenges of deploying ML in the Edge.

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