5, 10 or 20 seats+ for your team - learn more
Sigma Corp, a large conglomerate of energy production companies, has recently implemented anomaly detection algorithms and is generally pleased with their performance. However, analysts report that not all anomalies are being identified and the algorithms are too slow at times. As a lead data scientist at Sigma, it’s up to you to address these concerns. To increase the robustness of the algorithms, you’ll implement and optimize the probability-based Empirical Cumulative distribution-based Outlier Detection (ECOD) method, an alternative to statistical methods. You’ll benchmark the ECOD method in order to compare its performance with the statistical MD and PCA methods Sigma is currently using. When you’re finished, you’ll have firsthand experience implementing the highly efficient ECOD method to detect anomalies in multidimensional data.
This liveProject is for beginner data scientists who want to learn how to use the ECOD method to implement an optimized, highly efficient anomaly detection algorithm for multidimensional data. To begin these liveProjects you’ll need to be familiar with the following:
TOOLSgeekle is based on a wordle clone.