Version 23 (modified by 4 months ago) ( diff ) | ,
---|
Real time, robust and reliable (R3) machine learning over wireless networks
Group Members: Akshar Vedantham, Kirthana Ram, Varun Kota
Advisor: Anand Sarwate
Project Overview
As machine learning applications continue to be developed, more and more computationally intense tasks will have to be performed on mobile devices such as phones, cars, and drones. Mobile devices often offload data to the cloud to help execute these applications. However, offloading this process can result in delays and a lack of latency.
To reduce latency when working with the cloud, several methods have been proposed. The two that we will be focusing on are called split computing and early exiting. Our goal will be to construct AI/ML algorithms, implement them on Orbit nodes using split computing and early exiting, and build a documented codebase while evaluating the efficiency of these algorithms.
Weekly Progress
Week 1 (5/28 - 5/30)
- Phones, cars, and other devices will want to start using ML/AI applications
- Leveraging the cloud to help them with this
- Issues - latency and security
Possible Solution - Early Exiting
Week 2 (6/03 - 6/06)
- Familiarizing ourselves with Machine Learning concepts, PyTorch, neural network architecture, gradient descent, cost function, weights and biases
- Met with our advisors, learned about their work, and discussed what projects we wanted to work on
Week 3 (6/10 - 6/13)
- Created a NN using the MNIST dataset
- Achieved an overall network accuracy of 98.17%
- Worked on an NN for classifying fashion outfits via image recognition
- Read several research papers given to us
- Worked with Orbit to familiarize ourselves with communicating between nodes
Week 4 (6/17 - 6/20)
- Created an NN using the CIFAR-10 dataset
Week 5 (6/24 - 6/27)
- Compared the mean accuracy and standard deviation for different thresholds
- Compared the mean number of early exits and standard deviation for different thresholds
- Set up Nvidia CUDA on orbit nodes
- Training and testing AI models on the nodes (Alternative to Google Colab)
- Encountered hardware issues with measuring latency (PTP)
Week 6 (7/01 - 7/03)
- Used Cosmos SB1, SB2 and Bed
- Got PTP working on Bed, but it doesn’t have wireless connection
- We need PTP AND wireless connection
Week 7 (7/08 - 7/11)
- Experimented with new variables (feature variance and entropy)
- Feature Variance represents the diversity of features detected by CNN layers (e.g., edges, textures, shapes)
- Entropy measures the amount of disorder or uncertainty in a dataset
Week 8 (7/15 - 7/18)