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Reach out and connect with us — Whether you have questions, feedback, or partnership inquiries, we're happy to hear from you!
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we help you?
we help you?
Our team is here to help you access capital and grow on your terms. Check out the resources below and reach out directly if you have any questions.
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Email
sales@phantasma.global
Address
Am Nordbahnhof 3
10115 Berlin
10115 Berlin
Call Us
+49 176 457 43949
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Have a question or want to learn more about how Phantasma can help optimize factory operations? We'd love to hear from you!
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Latest News
Explore the latest news from Phantasma as well as our articles on Industrial AI, Smart Planning and Production Optimization.
Frequently Asked Questions
How digitally mature should a factory be to able to use our solutions?
We meet you at the point you are at. We can work with inputs coming from Excel sheets or integrate with your existing software.
What type of data is required to get started with customized AI-driven planning?
Thanks to our data-light approach, we only require static data about your production process, including machines, processes, their parameters, routings, and production orders.
How does Phantasma answer to feature requests?
Our proprietary approach has very good generalisation capabilities. Should a specific need not be covered currently, it is extendable and can be added to our roadmap.
Can our solution be scaled for use at multiple production facilities?
Our solution is scalable across multiple factories. We recommend rolling out to one factory during a trial phase and continue the scale up from there.
How does AI-driven production planning help make factories future-proof?
Our solution makes factories better equipped to handle unforeseen scenarios because of our proprietary reinforcement learning approach. When applying reinforcement learning, the AI agent is trained through interaction with a simulated environment, receiving rewards or penalties based on its actions, which allows the AI to learn strategies and policies to achieve the desired outcome, even in unfamiliar situations. Since the simulated environment imitates real-world factory conditions, potential risks can be identified in the training and be addressed proactively.