Deep Learning at Mote Scale
- Dhrubojyoti Roy, Pranshu Jain | Ohio State University, IIT Delhi
- Microsoft Research Summer Workshop 2018: Machine Learning on Constrained Devices
The Internet of Things (IoT) is poised to revolutionize our world. Billions of microcontrollers and sensors have already been deployed for predictive maintenance, connected cars, precision agriculture, personalized fitness and wearables, smart housing, cities, healthcare, etc. The dominant paradigm in these applications is that the IoT device is dumb – it just senses its environment and transmits the sensor readings to the cloud where all the intelligence resides and the decision making happens.
We envision an alternative paradigm where even tiny, resource-constrained IoT devices can run machine learning algorithms locally without necessarily connecting to the cloud. This enables a number of critical scenarios, beyond the pale of the traditional paradigm, where it is not desirable to send data to the cloud due to concerns about latency, connectivity, energy, privacy and security.
-
-
Harsha Simhadri
Principal Researcher
-
-
Watch Next
-
-
Multimodal & Embodied Intelligence (S1), Panel on Multimodal AI: Progress, Pitfalls, Possibilities
- Madhava Krishna,
- Sriram Ganapathy,
- Somak Aditya
-
Session on Compute & Trust (Security)
- Krishna Pillutla,
- Danish Pruthi
-
-
Session on Reasoning
- Hongxiang Fan,
- Nagarajan Natarajan
-
-
Session on Retrieval
- Lokesh Nagalapatti,
- Soumen Chakrabarti
-
Session on Inclusive AI: Data, Models, Evaluation
- Niloy Ganguly,
- Danish Pruthi,
- Sunayana Sitaram
-
-