Seeq Supports the use of Machine Learning InnovationSeeq Expands Machine Learning Features for Process Engineering and Data Science IntegrationNew Seeq extensibility features facilitate machine learning initiatives by bridging IT and OT organizations, enabling end user access to data scientist algorithms.Seeq, a leader in
manufacturing and Industrial Internet of Things (IIoT) advanced analytics
software, announces the release of R52 with new features to support the use of
machine learning innovation in process manufacturing organizations. These
features enable organizations to deploy their own or third-party machine
learning algorithms into the advanced analytics applications used by front line
process engineers and subject matter experts, thus scaling the efforts of a
single data scientist to many front-line OT employees.
New Seeq capabilities include Add-on Tools, Display Panes, and User-defined Functions, each of which extend Seeq’s predictive, diagnostic, and descriptive analytics. The result is faster development and deployment of easy-to-use algorithms and visualizations for process engineers. With R52, end users will also be able to schedule Seeq Data Lab notebooks to run in the background, fulfilling a top customer request. Seeq customers include companies in the oil and gas, pharmaceutical, chemical, energy, mining, food and beverage, and other process industries. Investors in Seeq—which has raised over $100M to date—include Insight Ventures, Saudi Aramco Energy Ventures, Altira Group, Chevron Technology Ventures, Cisco Investments, and Next47, the venture group for Siemens. As a compliment to the new extensibility features, Seeq data scientists are working with customers to develop and deploy machine learning algorithms tailored to the industrial process domain. Current areas of focus include automatically detecting performance changes in monitored assets, identifying causal relationships among process variables, and improved diagnostics by identifying and labeling patterns within a data set. For example, a super-major oil & gas company is using Seeq extensibility features to enable easy access by process engineers to a neural-network algorithm created by their data science team, helping reduce greenhouse gas emissions. “Analytics software for manufacturing organizations is an area overdue for innovation,” says Steve Sliwa, CEO and Co-Founder of Seeq. “Spreadsheets replaced pen and paper 30 years ago for analytics and haven’t changed much since. By leveraging big data, machine learning and computer science innovations, Seeq is enabling a new generation of software-led insights.” Seeq first shipped easy to use machine learning-enabled features in 2017 in Seeq Workbench, and then in 2020 introduced Seeq Data Lab for Python scripting and access to any machine learning algorithm. This support for multiple audiences—with no code/low code features for process engineers and a scripting environment for data scientists engaged in feature engineering and data reduction efforts—democratized access to machine learning innovation. Seeq’s approach to integrating machine learning features in its applications addresses many of the reasons data science initiative fail in manufacturing organizations.
In addition to Seeq Data Lab support for machine learning code and libraries, Seeq also enables access to the Seeq/Python library by third-party machine learning solutions including Microsoft Azure Machine Learning, Amazon SageMaker, and open source offerings such as Apache Anaconda. For example, a manufacturer using Amazon SageMaker is evaluating their machine learning insights with Seeq to create work orders in their SAP system. Seeq is available worldwide through a global partner network of system integrators, which provides training and resale support for Seeq in over 40 countries, in addition to its direct sales organization in North America and Europe. Source: Seeq media announcement |