Enhancing Industrial Automation:

Enhancing Industrial Automation:

Micropsi Industries, a leading provider of artificial intelligence (AI) systems for industrial robots, has recently secured $30 million in Series B funding. The funding round was co-led by Metaplanet, VSquared, and Ahren Innovation Capital[1]. This investment will enable Micropsi Industries to further develop and expand its pre-built AI systems, which have the potential to automate previously unautomatable production processes[1]. In this article, we will delve into the significance of this funding round and explore the capabilities of Micropsi’s AI systems.


Enhancing Industrial Automation:

Micropsi Industries’ AI systems are designed to train and control industrial robots using human demonstrations[4]. By capturing and analyzing human movements, these systems can teach robots complex tasks that were previously challenging to automate[4]. This approach is particularly valuable in industries where automation is crucial, such as manufacturing and warehousing. With the increasing strain on supply chains due to the pandemic, there is a growing need for efficient and adaptable automation solutions[4].

Micropsi’s AI systems offer a ready-to-use solution for manufacturers and warehouse operators looking to optimize their production processes. By automating tasks that were previously reliant on human labor, businesses can increase productivity, reduce errors, and improve overall efficiency[3]. The $30 million in Series B funding will allow Micropsi Industries to enhance its AI software and expand its reach in the market[3].

Revolutionizing Industrial Robotics:

What sets Micropsi Industries apart is its utilization of quantum mechanics principles in its AI systems[5]. This innovative approach enables the AI software to process vast amounts of data and make complex decisions in real-time[5]. By leveraging quantum mechanics, Micropsi’s AI systems can optimize robot movements and adapt to changing environments with unparalleled precision[5].

The ability to train industrial robots using human demonstrations is a game-changer for the industry. Traditionally, programming robots required specialized knowledge and extensive coding. With Micropsi’s AI systems, non-technical personnel can easily teach robots new tasks by simply demonstrating the desired movements[4]. This democratization of robot programming opens up new possibilities for automation in various industries.

Series B Funding:

The recent Series B funding round, co-led by Metaplanet, VSquared, and Ahren Innovation Capital, demonstrates the confidence investors have in Micropsi Industries and its AI systems[1]. The $30 million investment will be instrumental in advancing the development of Micropsi’s AI software and expanding its market presence[1]. With this funding, the company aims to further refine its algorithms and enhance the capabilities of its AI systems[2].

Micropsi Industries’ success in securing this funding reflects the growing demand for advanced automation solutions in the industrial sector. As businesses strive to optimize their operations and adapt to changing market dynamics, AI-powered robotics offer a promising path forward. The Series B funding will enable Micropsi Industries to continue pushing the boundaries of industrial automation and drive innovation in the field.


Micropsi Industries’ recent $30 million Series B funding round, co-led by Metaplanet, VSquared, and Ahren Innovation Capital, marks a significant milestone for the company[1]. The investment will fuel the development and expansion of Micropsi’s AI systems, which have the potential to revolutionize industrial automation[1]. By leveraging human demonstrations and quantum mechanics principles, Micropsi’s AI software enables the training and control of industrial robots with unprecedented precision and adaptability[4][5]. This funding will empower Micropsi Industries to further enhance its AI software and meet the increasing demand for advanced automation solutions in various industries.


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