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An open source python library for automated feature engineering
An open source Python framework for automated feature engineering. Featuretools automatically creates features from temporal and relational datasets. Featuretools uses DFS for automated feature engineering. You can combine your raw data with what you know about your data to build meaningful features for machine learning and predictive modeling. Featuretools provides APIs to ensure only valid data is used for calculations, keeping your feature vectors safe from common label leakage problems. You can specify prediction times row-by-row. ...
(RoboSim) Java based Robot Localization and Path Planner Simulator.
...Source : https://github.com/habsoft/robosim
Blog : https://robosimblog.wordpress.com
Note : Use jre 1.7 to run it.
1.Histogram Filter
2.Histogram Filter with Sonar Range Finder (Experimental)
3.Kalman Filter
4.Particles Filter
5.Path Planning
6.Path Smoothing
7.PID Controller
Path Planning Algorithms
1.BFS
2.DFS
3.A Star
4. Dynamic Programming
Heuristics
i. Euclidean Distance
ii. Euclidean Distance(+)
iii. Euclidean Distance(*)
iv. Euclidean Distance Squared
v. Manhattan Distance
vi. Chebyshev Distance