Manycore Tech Open-Sources SpatialLM for Embodied Intelligence

March 20, 2025
Manycore Tech Inc. has made its SpatialLM model open-source, aiming to advance embodied intelligence training by providing a framework for understanding 3D environments.

Manycore Tech Inc. has announced the open-sourcing of its multimodal spatial comprehension model, SpatialLM, at the GTC 2025 event, as stated in a press release. This move is intended to lower barriers for training embodied intelligence by providing a foundational framework for practitioners to fine-tune the model for specific scenarios.

SpatialLM is designed to enhance robots' understanding of 3D environments by overcoming the limitations of traditional large language models. It can generate structured 3D scenes from videos using point cloud data, allowing for accurate recognition and translation into 3D layouts. Developers can access SpatialLM on platforms like Hugging Face, GitHub, and ModelScope.

Manycore Tech also highlighted its SpatialVerse platform, which complements SpatialLM by enabling the training of content-generation models in virtual settings. This combination provides a versatile system for digital simulations, enriching training data while maintaining high dataset quality. The company has established cooperation agreements with global players in the embodied intelligence sector to further this initiative.

We hope you enjoyed this article.

Consider subscribing to one of our newsletters like Daily AI Brief.

Also, consider following us on social media:

Subscribe to Daily AI Brief

Daily report covering major AI developments and industry news, with both top stories and complete market updates

Market report

AI’s Time-to-Market Quagmire: Why Enterprises Struggle to Scale AI Innovation

ModelOp

The 2025 AI Governance Benchmark Report by ModelOp provides insights from 100 senior AI and data leaders across various industries, highlighting the challenges enterprises face in scaling AI initiatives. The report emphasizes the importance of AI governance and automation in overcoming fragmented systems and inconsistent practices, showcasing how early adoption correlates with faster deployment and stronger ROI.

Read more