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AI/ML Applications on Gadi - Astronomy
AI/ML Applications on Gadi - Astronomy
Course Information
Content Information
Astronomy Background and Usage of Summary Statistics (16:16)
Basics of Neutral Networks - Neurons, Activation Functions and Types of Networks (21:35)
Continue Basics of Neural Networks - Loss Functions, Learning Rate and the Optimiser; Introduce the Bayesian Inference and Samplers (22:45)
Launching ARE and Inspecting the HERA Dataset (24:23)
Continue Inspecting the HERA Dataset; Introduce the Published Inference Using 21cm FAST (21:23)
Clean and Build Training Datasets (23:05)
Further Data Preparation (13:24)
Train the Network (23:08)
Continue Training the Network and Inspecting the Training Progress (20:37)
Make Predictions Using the Training Emulator (15:37)
Write Scripts to Do Bayesian Inference Using EMCEE (20:50)
Continue Setup of EMCEE and Running MCMC (14:10)
Inspect the MCMC Results and a Brief Introduction to the MultiNest Sampler (22:41)
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Make Predictions Using the Training Emulator
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