RapidMiner Studio 是一个基于Java的应用程序,旨在为您提供用于数据分析任务的多种工具。该程序可以帮助您浏览数据并创建模型,以便轻松识别趋势。当您处理大型数据库时,识别两个事件之间的联系可能很困难,甚至不可能。由于有多个企业依赖于可用信息来做出重要决策,因此数据分析师正在使用专门的应用程序来可视化和理解数据。
RapidMiner Studio is a visual workflow designer that makes data scientists more productive, from the rapid prototyping of ideas to designing mission-critical predictive models.
Visual Workflow Designer
Use RapidMiner’s powerful visual analytics workflows to empower users of all skills levels, enable them to work together on projects, and establish a single source of truth for every model your teams create.
Automated Data Science
Fully automated data science makes projects accessible to non-coding domain experts and enhances productivity for seasoned data scientists.
Code base Data Science
Data scientists can create custom solutions in a fully integrated notebook environment and package them for reuse within drag-and-drop workflows.
More Capabilities
RapidMiner supports your entire team across the full analytics lifecycle—which means there’s no shortage of features and capabilities to talk about.
What’s New and Bug Fixes
New Features
Bias detection & mitigation: Receive bias warnings in every part of the RapidMiner platform including Turbo Prep, Model Simulator and more. When Studio thinks you have a column that could lead to model bias, you’ll receive a warning along with an in-platform callout that explains what it was triggered by.
Streaming & IIOT advancements: Mix and match RapidMiner with Python in low latency (50-100ms) use-cases, such as scoring large volumes of sensor data. Additionally, leverage a new function-fitting operator to fit data with custom functions when creating models for anomaly detection on devices, modeling physical behavior based on data, and more.
Security enhancements: Support for Docker Rootless mode along with enhanced security in Kubernetes environments both raise our overall security standards. Security for containerized platforms is also improved through regular updates of Docker images with the newest secure components.
Time series forecasting: Automate forecasting future values of univariate time series based on historical data in RapidMiner Go. Track advanced and seasonal trends when forecasting sales or staffing requirements and use intuitive visualizations to compare the results of competing models.
NLP extension: Leverage a new RapidMiner extension for natural language processing to extract part-of-speech tags and recognize people, cities, organizations, and other entities within free text. This is typically used as a pre-processing method to determine the contents of documents, website text, etc.
Bugfixes
The core Pivot operator now runs as expected inside a SparkRM operator.
Updated heuristics for Hive table reads in Radoop Spark jobs to prevent failing Spark jobs when hidden Hive staging directories are present.