Google Edge TPU is a specialized hardware accelerator designed for running machine learning models on edge devices. It enables low-latency, high-efficiency inferencing for applications such as image recognition, object detection, and natural language processing, directly on devices like IoT gadgets and embedded systems.
Top 5*
Machine Learning Frameworks
About Google Edge TPU
Google Edge TPU was introduced in 2018 by Google to address the need for efficient, low-latency inferencing on edge devices. It was created to enable machine learning applications directly on devices, reducing the dependency on cloud-based processing and enhancing real-time performance for IoT and embedded systems.
Strengths of Google Edge TPU include low power consumption, high efficiency for inferencing, and real-time processing capabilities. Weaknesses include limited support for training models and compatibility primarily with TensorFlow Lite. Competitors include NVIDIA Jetson Nano, Intel Movidius Myriad, and ARM's Ethos-N series.
Hire Google Edge TPU Experts
Work with Howdy to gain access to the top 1% of LatAM Talent.
Share your Needs
Talk requirements with a Howdy Expert.
Choose Talent
We'll provide a list of the best candidates.
Recruit Risk Free
No hidden fees, no upfront costs, start working within 24 hrs.
How to hire a Google Edge TPU expert
A Google Edge TPU expert must have skills in TensorFlow Lite for model optimization, Python programming for scripting and automation, knowledge of embedded systems, experience with machine learning model deployment, and familiarity with edge computing concepts.
*Estimations are based on information from Glassdoor, salary.com and live Howdy data.
USA
$ 224K
Employer Cost
$ 127K
Employer Cost
$ 97K
Benefits + Taxes + Fees
Salary
The Best of the Best Optimized for Your Budget
Thanks to our Cost Calculator, you can estimate how much you're saving when hiring top LatAm talent with no middlemen or hidden fees.