Who we are

The birth of 2Neuron

2Neuron emerged in 2021 in a context where many companies face unscheduled downtime, production losses and high corrective maintenance costs.

Recognizing that efficient predictive maintenance makes it possible to identify faults early and make assertive decisions, we have developed an innovative solution that integrates quality data and artificial intelligence to optimize this process and provide crucial insights into the state of the machines.

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Ultronline:
The complete solution!

Despite advances in remote sensing and the advent of the Internet of Things, many companies still face challenges in obtaining quality data from the shop floor and integrating it reliably with the cloud.

That's why we chose to develop a complete solution, covering everything from hardware and software to machine intelligence and the online platform.

This is how Ultronline was born, a complete solution for online asset monitoring, with accurate and consistent data, a robust system and assertive diagnosis of electrical and mechanical faults.

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Our difference

Although conventional vibration sensors provide information on the condition of assets, they have several limitations. They are sensitive to the harsh conditions of the industrial environment, such as high temperatures and intense vibrations, which shortens their useful life and restricts their applications. Furthermore, in many scenarios, they are simply not viable, such as in the case of submerged assets or those subject to high levels of vibration. In contrast, our solution collects electrical current and voltage data directly from the electrical panel, enabling continuous monitoring, regardless of the asset's location.

The impulse

In 2022, we obtained an angel investment to boost the development of our solution. With this, we established our own laboratory and brought together a highly qualified team, made up of professionals with a solid academic background and extensive experience in maintenance in various industries. After conducting high-level research to improve our solution and validating the product on test benches, we moved into industry.

Our purpose

Today, already validated in the industry, we offer the most complete and comprehensive solution on the market. Our purpose is to increase reliability and guarantee greater asset availability, increase operational safety and contribute to a more sustainable industry. With Ultronline, we are redefining efficiency and safety in the industry.

Mission

Developing artificial intelligence solutions for industry, with the aim of making the work of maintenance professionals safer and more efficient.

Vision

To be an industry changer, promoting operational excellence and sustainability on a global scale.

Values

We constantly seek innovative solutions that meet our customers' needs and desires, ensuring that each product and service provides them with real value.

We believe in the power of collaboration and the value of working together to achieve common goals. We value the contribution of each team member and understand that together we are stronger.

We are always open to learning and growing. We see challenges as learning opportunities and believe that the humility to learn from mistakes is essential for our continuous development.

We base our decisions on concrete analysis and solid information. Data orientation allows us to make more informed and strategic decisions, contributing to our success.

We are passionate about innovation and the advancement of science and technology. We have a deep interest in exploring the potential of data to drive innovative solutions and positively impact the world around us.

We cultivate an environment where respect is fundamental. We value the perspectives and experiences of all team members and promote a space where everyone feels valued and heard.

We act transparently and ethically in all our interactions. Integrity and honesty are fundamental to building trust and maintaining lasting relationships with our clients, partners and colleagues.

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