Below is a list of Data Science software that integrates with JMP Statistical Software. Use the filters above to refine your search for Data Science software that is compatible with JMP Statistical Software. The list below displays Data Science software products that have a native integration with JMP Statistical Software.
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MATLAB
The MathWorks
Empower your design and analysis with seamless computational solutions.
MATLAB® provides a specialized desktop environment designed for iterative design and analysis, complemented by a programming language that facilitates the straightforward expression of matrix and array computations. It includes the Live Editor, which allows users to craft scripts that seamlessly integrate code, outputs, and formatted text within an interactive notebook format. The toolboxes offered by MATLAB are carefully crafted, rigorously tested, and extensively documented for user convenience. Moreover, MATLAB applications enable users to visualize the interactions between various algorithms and their datasets. Users can enhance their outcomes through iterative processes and can easily create a MATLAB program to replicate or automate their workflows. Additionally, the platform supports scaling analyses across clusters, GPUs, and cloud environments with little adjustment to existing code. There is no necessity to completely change your programming habits or to learn intricate big data techniques. MATLAB allows for the automatic conversion of algorithms into C/C++, HDL, and CUDA code, permitting execution on embedded processors or FPGA/ASIC systems. In addition, when combined with Simulink, MATLAB bolsters the support for Model-Based Design methodologies, proving to be a flexible tool for both engineers and researchers. This versatility underscores MATLAB as a vital asset for addressing a broad spectrum of computational issues, ensuring that users can effectively tackle their specific challenges with confidence.
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IBM® SPSS® Statistics software is utilized by diverse clients to address specific business challenges within various industries, ultimately enhancing the quality of decision-making processes.
The platform encompasses sophisticated statistical analysis, an extensive collection of machine learning algorithms, capabilities for text analysis, open-source integration, compatibility with big data, and effortless application deployment.
Notably, its user-friendly interface, adaptability, and scalability ensure that SPSS remains accessible to individuals with varying levels of expertise. Furthermore, it is well-suited for projects ranging from small-scale tasks to complex initiatives, enabling users to uncover new opportunities, boost operational efficiency, and reduce potential risks.
In addition, the software's robust features make it a valuable tool for organizations looking to enhance their analytical capabilities.
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SAS Viya
SAS
Unify data management, analytics, and AI for success.
SAS Viya is a comprehensive cloud-native data and AI platform that helps organizations unify analytics, artificial intelligence, data management, and governance within a single connected environment. The platform is built to support the complete data-to-decision lifecycle, allowing businesses to access, manage, analyze, deploy, and govern data-driven insights at enterprise scale. SAS Viya enables organizations to connect to data from multiple sources while maintaining transparency, auditability, lineage tracking, and compliance throughout AI and analytics workflows. Businesses can build, validate, and operationalize machine learning and AI models faster while ensuring fairness, explainability, and responsible governance practices. The platform also includes the SAS Viya MCP Server, which allows AI agents and copilots to securely leverage SAS capabilities for automated and intelligent decision-making. SAS Viya supports flexible deployment options across cloud, hybrid, and on-premises environments, giving organizations greater control over infrastructure and security requirements. The platform is designed to simplify complex workflows and improve collaboration between data scientists, analysts, developers, and business teams. SAS Viya accelerates productivity by streamlining model training, analytics deployment, and operational decision processes within one scalable ecosystem. Organizations across banking, healthcare, life sciences, government, and manufacturing use SAS Viya for applications such as fraud detection, forecasting, customer intelligence, inventory optimization, and clinical trial analytics. The platform also delivers advanced governance capabilities that help businesses maintain policy enforcement, legal defensibility, and regulatory compliance across the AI lifecycle. With built-in automation, extensive analytics functionality, and enterprise-grade governance, SAS Viya helps organizations turn data into trusted and actionable business outcomes.
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Effectively uncover emerging trends and patterns by accessing, analyzing, and manipulating data. SAS Visual Data Science offers a comprehensive self-service platform that facilitates the creation and sharing of insightful visualizations along with interactive reports. By utilizing machine learning, text analytics, and econometric methods, users can improve forecasting and optimization abilities while managing both SAS and open-source models, whether within projects or as standalone entities. This tool is essential for visualizing relationships within data, enabling users to generate and share interactive reports and dashboards, and leveraging self-service analytics to swiftly assess potential outcomes for more informed, data-driven choices. Engage in data exploration and build or modify predictive analytical models using this integrated solution with SAS® Viya®. Promoting collaboration among data scientists, statisticians, and analysts allows teams to continuously refine models designed for specific segments or groups, resulting in decisions grounded in accurate insights. This collaborative framework not only boosts model precision but also significantly speeds up the overall decision-making process, ultimately driving better business outcomes. Additionally, the ability to quickly iterate on models fosters an environment of innovation and adaptability, ensuring that strategies remain relevant in a rapidly changing landscape.