Amazon Bedrock
Amazon Bedrock serves as a robust platform that simplifies the process of creating and scaling generative AI applications by providing access to a wide array of advanced foundation models (FMs) from leading AI firms like AI21 Labs, Anthropic, Cohere, Meta, Mistral AI, Stability AI, and Amazon itself. Through a streamlined API, developers can delve into these models, tailor them using techniques such as fine-tuning and Retrieval Augmented Generation (RAG), and construct agents capable of interacting with various corporate systems and data repositories. As a serverless option, Amazon Bedrock alleviates the burdens associated with managing infrastructure, allowing for the seamless integration of generative AI features into applications while emphasizing security, privacy, and ethical AI standards. This platform not only accelerates innovation for developers but also significantly enhances the functionality of their applications, contributing to a more vibrant and evolving technology landscape. Moreover, the flexible nature of Bedrock encourages collaboration and experimentation, allowing teams to push the boundaries of what generative AI can achieve.
Learn more
Carbide
Carbide is a tech-enabled solution that helps organizations elevate their information security and privacy management programs. Designed for teams pursuing a mature security posture, Carbide is especially valuable for companies with strict compliance obligations and a need for hands-on expert support.
With features like continuous cloud monitoring and access to Carbide Academy’s educational resources, our platform empowers teams to stay secure and informed. Carbide also supports 100+ technical integrations to streamline evidence collection and satisfy security framework controls, making audit readiness faster and more efficient.
Learn more
Materials Zone
Transforming materials data into exceptional products at an increased speed significantly boosts research and development, simplifies scaling operations, and improves quality control along with supply chain decisions. This method facilitates the identification of groundbreaking materials while employing machine learning to anticipate outcomes, thereby resulting in quicker and more efficient results. As the journey toward production continues, it becomes possible to create a model that tests the limits of your products, which aids in designing cost-effective and durable production lines. Moreover, these models have the capability to predict potential failures by examining the provided materials informatics in conjunction with production line metrics. The Materials Zone platform aggregates information from diverse independent sources, such as materials suppliers and manufacturing plants, ensuring that communication remains secure and efficient. By harnessing machine learning algorithms on your experimental findings, you can discover new materials with specific properties, formulate ‘recipes’ for their creation, develop tools for automated analysis of unique measurements, and extract valuable insights. This comprehensive strategy not only boosts the efficiency of research and development but also encourages collaboration throughout the materials ecosystem, ultimately propelling innovation to new heights. Additionally, by fostering a culture of continuous improvement, organizations can remain agile and responsive to market demands.
Learn more
AQChemSim
AQChemSim, an advanced cloud-based service developed by SandboxAQ, employs Large Quantitative Models (LQMs) rooted in physical and chemical principles to revolutionize the field of materials discovery and improvement. By integrating methodologies such as Density Functional Theory (DFT), Iterative Full Configuration Interaction (iFCI), Generative AI, Bayesian Optimization, and Chemical Foundation Models, AQChemSim enables accurate simulations of molecular and material behavior in practical applications. Its capabilities include predicting performance across various stress scenarios, accelerating formulations through in silico assessments, and exploring environmentally friendly chemical processes. Notably, AQChemSim has made significant strides in the realm of battery technology, reducing the prediction time for the end-of-life of lithium-ion batteries by an impressive 95%, while achieving 35 times greater precision with only a fraction of the previously necessary data. This groundbreaking progress not only enhances the efficiency of research but also opens up opportunities for more sustainable energy solutions in the future. As such, AQChemSim stands at the forefront of innovation, driving advancements that could reshape entire industries.
Learn more