Symbolica aims to preempt the AI arms race by investing in symbolic models

Symbolica AI, founded by ex-Tesla engineer George Morgan, aims to address the limitations of current AI methods, particularly in deep learning and generative language models. Morgan’s experiences at Tesla led him to recognize the unsustainable nature of scaling compute for AI advancements and the need for alternative approaches to achieve greater accuracy, efficiency, and transparency in AI models.

Traditional deep learning and generative language models rely heavily on scaling compute power, leading to significant costs and resource requirements without necessarily yielding proportional performance improvements. Morgan’s vision for Symbolica AI is to develop novel AI models that incorporate structured reasoning, encoding the underlying structure of data rather than relying solely on vast datasets and compute power. By marrying deep mathematical toolkits with breakthroughs in deep learning, Symbolica aims to achieve superior performance using less overall compute.

Bill Karr on LinkedIn: Symbolica hopes to head off the AI arms race by  betting on symbolic models…

Symbolic AI, although not a new concept, holds promise in combining symbolic reasoning with neural networks to leverage the strengths of both approaches. While neural networks excel at tasks like image generation and language understanding, symbolic AI offers greater reliability, transparency, and accountability in reasoning and decision-making processes.

Symbolica AI’s focus on structured reasoning capabilities has significant commercial potential, particularly in areas such as code generation, where existing AI offerings may fall short. By enabling efficient reasoning over large codebases and generating useful code, Symbolica AI aims to revolutionize software development and other industries where structured reasoning is essential.

Overall, Symbolica AI represents a promising endeavor to pioneer new AI paradigms that prioritize efficiency, transparency, and reliability, addressing the challenges posed by current AI methods and advancing the field towards more sustainable and impactful solutions.