Data Science / Image Analysis / GIS portfolios
- Using ENVI and MATLAB to evaluate lunar spectral signitures for identifying selected minerals
- ENVI: 5.3 MATLAB 6.5
- Packages/Libraries: MMM, Lunar Spectral Library, JMUSTARD, TLROUSH, RVMORRIS, ISAACSON, EXCEL, DEM
- Datasize >100 GB
Keywords: planetary geology, PSR, water ice, artemis, space exploration, ENVI, Matlab, spectral signitures
- Created a tool deployed on AWS Sagemaker that predicts the likelyhood of bank customers making a purchase
- Using XG-BoostML_Algorithms to train, test and predict employing a confusion matrix.
- Python Version: 3.7
- Packages/Libraries: boto3, re, sys, math, json, os, sagemaker, urllib.request, numpy, pandas, matplotlib, pyplot
- Dataframe Shape (28831, 61) (12357, 61)
- Cleaned datasets can be implemented from IoT devices
- We format your data for time series analysis.
- You will gain;
- How your sensors perform,
- We find anomalies which can identify IoT sensors at risk.
- Python code which can be run on AWS Sagemaker or a desktop Jupyter notebook
- Python Version: 3.7
- Packages/Libraries: pandas, numpy, matplotlib, pyplot, seaborn, sklearn, LabelEncoder, train_test_split, LogisticRegression, confusion_matrix, classification_report, accuracy_score
- Dataframe Shape: (220320, 52)
- Additional References
- Techniques to Handle Imbalanced Data
- Failure of Accuracy
Project 4: Data Science Python, Keras A.I., TensorFlow, and SQL tool to analyze, manipulate, and predict missing data: Project Overview
- Any dataset of three or more time series can be implemented to predict the gaps in one of the datasets
- This project can help you to learn:
- how to analyze, manipulate, and predict missing data,
- how to label, plot, and visualize data,
- how to detect correlations,
- how to transform or scale data,
- how to use Keras A.I. libraries for training data and predicting missing observations,
- python code which can be run on AWS Sagemaker or a desktop Jupyter notebook