Company patents
D5AI LLC
D5AI LLC's patent strategy is heavily concentrated in computing, with Machine Learning & AI representing 95.2% of its portfolio. While patenting in core areas like Machine Learning & AI and Pattern Recognition & ML Models saw significant year-over-year growth in 2025 (90.9% and 175.0% respectively), the company also shows an emerging focus on Web & Cloud Service Protocols and Databases & Information Retrieval, both experiencing a remarkable 300.0% YoY growth in 2025, suggesting a strategic expansion into cloud-based AI applications despite a general decline in patent filings so far in 2026 across most categories.
Patent Trend by Technology Area
Yearly patent publications since 2023
Product themes
Product-level themes inferred from filings since 2023, with category chips showing where each theme appears. Select a theme to filter the patents below.
63 US filings (since 2023) · 7 categories · 7 themes
Systems leveraging artificial intelligence and machine learning to dynamically adjust educational content, learning paths, goals, or feedback based on individual user performance, progress, or physiological data. This includes generating personalized exercises, recommendations, and adaptive sequencing of knowledge points.
Utilizing machine learning, particularly deep learning, to analyze medical data such as images, sensor readings, or physiological signals for disease prediction, diagnosis, or treatment assessment.
Application of machine learning models to process complex data and generate actionable insights, predictions, or classifications that inform or automate decision-making processes in various domains like healthcare, business, or industrial control.
Techniques for generating human-like text or other content using large pre-trained models, often involving prompt engineering, speculative decoding, or multi-modal inputs for content creation.
Applying artificial intelligence and machine learning techniques to enhance cryptographic systems, such as generating encryption models, improving zero-trust architectures, or enabling privacy-preserving computations like federated learning.
Specialized hardware, architectural designs, and computational methods to improve the speed, efficiency, and security of artificial intelligence and machine learning model execution, particularly for inference and data processing.
Methods for training machine learning models across multiple decentralized devices or servers while keeping data localized, often involving aggregation of model parameters and secure communication.
Patents
Showing 41-50 of 110