AlisQI
AlisQI is a Quality Management platform built for process and batch manufacturers who want operational control without adding administrative overhead.
Where many QMS platforms were designed around document storage and event tracking, AlisQI was architected as a data-first system. Quality, laboratory, and production data are structured and connected in a single operational backbone. This enables teams to see deviations earlier, understand performance trends in context, and act before issues escalate into waste, rework, or customer complaints.
The platform includes modular capabilities across document control, training, deviations, CAPA, audits, risk management, supplier quality, SPC, and EHS. These capabilities are deployed through focused, ready-to-use Solvers that combine workflows, logic, dashboards, and analytics to address specific operational challenges without unnecessary scope.
Because the system is built on structured, connected data, manufacturers can apply practical AI directly inside their workflows. This includes automated extraction of supplier COA data without predefined templates, conversational access to quality records, intelligent rule generation, and pattern recognition across incidents to strengthen corrective action effectiveness.
Solvers are production-ready from the outset and evolve as products, processes, or sites change. Improvements do not require custom development or large IT programs, allowing organizations to modernize quality step by step.
Manufacturers across chemicals, plastics, packaging, food and beverage, automotive, and industrial sectors use AlisQI to reduce firefighting, increase predictability, strengthen compliance, and turn quality data into operational intelligence.
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SciSure
SciSure is revolutionizing laboratories across the globe with innovative digital solutions designed for the future. Our Digital Lab Platform (DLP) integrates essential tools such as Electronic Lab Notebooks (ELN) and Laboratory Information Management Systems (LIMS), alongside cutting-edge technologies like artificial intelligence and machine learning. Engineered for effortless integration with your laboratory's existing hardware and software, this platform significantly boosts flexibility, security, and overall efficiency. By streamlining and optimizing your research and development processes within a secure and compliant framework, we enable researchers to focus more on driving innovation. Our dedicated team of experts is here to assist you throughout every phase of your digital lab transformation journey, ensuring a smooth transition.
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HyperProtein
Hypercube, Inc. has launched HyperProtein, a cutting-edge tool focused on the computational evaluation of protein sequences. This groundbreaking software goes beyond merely assessing one-dimensional sequences, as it also investigates the resulting three-dimensional structures of proteins. A significant feature of HyperProtein is its in-depth examination of the complex connections between a protein's sequence and its structural configuration. Unlike software that is limited to specific tasks such as sequence alignment, HyperProtein unifies a broad spectrum of Bioinformatics and Molecular Modeling tools, offering a holistic approach to the study that starts with a protein's sequence. By merging these various resources, HyperProtein seeks to deepen the understanding of protein functions and interactions at a molecular scale, thus serving as an essential asset for researchers in the scientific community. As a result, it represents a significant advancement in the tools available for protein analysis and modeling.
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Evo 2
Evo 2 is an advanced genomic foundation model that excels in predicting and creating tasks associated with DNA, RNA, and proteins. Utilizing a sophisticated deep learning architecture, it models biological sequences with precision down to single-nucleotide accuracy, demonstrating remarkable scalability in both computational and memory resources as context length expands. The model has been trained on an impressive 40 billion parameters and can handle a context length of 1 megabase, analyzing an immense dataset of over 9 trillion nucleotides derived from diverse eukaryotic and prokaryotic genomes. This extensive training enables Evo 2 to perform zero-shot function predictions across a range of biological types, including DNA, RNA, and proteins, while also generating novel sequences that adhere to plausible genomic frameworks. Its robust capabilities have been highlighted in applications such as the design of efficient CRISPR systems and the identification of potentially disease-causing mutations in human genes. Additionally, Evo 2 is accessible to the public via Arc's GitHub repository and is integrated into the NVIDIA BioNeMo framework, which significantly enhances its availability to researchers and developers. This integration not only broadens the model's reach but also represents a pivotal advancement in the fields of genomic modeling and analysis, paving the way for future innovations in biotechnology.
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