COMMUNITYAskapro

Developing a Machine Learning Model for High-Accuracy Classification of Celestial Objects

Achieved an 80% accuracy rate in classifying celestial objects as Stars, Galaxies, or Quasi-Stellar Objects using a machine learning model that analyzes solar data. It was done through Data Collection, Data Preprocessing, Model Optimization, Iterative Improvement and Documentation.I Gathered a comprehensive dataset of solar data, including various features and attributes. I then Cleaned the dataset by handling missing values and outliers. Further Chosing appropriate machine learning algorithms for classification tasks and then Fine-tune hyperparameters of the model using techniques like grid search or random search to improve its performance. Lastly, Documented the entire process, including data sources, preprocessing steps, model architecture, and results, to facilitate reproducibility and collaboration.

Junior Machine Learning Engineer
Tech knowledge
Data analysis
Business analysis
AI
Data
The USA
ML Celestial Objects identifyer
Python
Pytorch
Tensorflow
Scikit-learn
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Dyimah

Machine Learning Engineer at Freelancer

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