Beamr Boost for Machine Learning: Accelerating Neural Networks Training
20 März 2024 - 12:00PM
Beamr Imaging Ltd. (NASDAQ: BMR), a leader in video optimization
technology and solutions, today announced that it has released the
results of a case study which highlights how Beamr tech enables
accelerated machine learning training by using significantly
smaller video files and without any negative impact on the video
artificial intelligence (AI) process.Machine learning for video is
becoming an increasingly significant technology for businesses. But
the players in this expanding arena face critical pain points, like
storage and bandwidth bottlenecks or the difficulty to reach
acceptable training and inferencing speeds.
In this case study, Beamr’s R&D team showed that training an
AI network using video files compressed and optimized through
Beamr’s Content-Adaptive Bitrate technology produced results that
are as good as training the network with the original, larger
files. The AI network was trained to fulfill the task of action
recognition, such as distinguishing between people who are walking,
running, dancing or doing many other day-to-day actions.
Beamr CTO, Tamar Shoham, explained: “It was important to us to
define a test case that really uses the fact that the content is
video, instead of an image. When viewing individual frames, it is
not possible to differentiate between frames captured during
walking and running, or between someone jumping or dancing.
Therefore, in order to classify videos according to the action they
show, the temporal component is needed, which is why 'action
recognition' was our task of choice”.
The video files used for machine learning training were
optimized by Beamr Cloud, reducing file sizes by 24%-67%. Such a
reduction is beneficial when storing video files for future use and
possibly performing other manipulations on them. Recently-launched
Beamr cloud is an optimization and modernization
software-as-a-service (SaaS) that enables automated, efficient and
fast video processing, through no-code processes or customized
pipelines to meet specific user needs.
Training performed with the smaller video files optimized by
Beamr tech, provided results which were equivalent to those
obtained with the larger and non-optimized files (for more details
about the experiment, see the full case study).
The case study is part of Beamr’s ongoing commitment to
accelerate adoption and increase accessibility of machine learning
for video and video analysis solutions. A previous case study
focused on the AI network inference stage, which is the phase of
drawing conclusions from an AI network that has already been
trained. The previous experiment found that video files that were
downsized by 40% on average streamlined machine learning processes.
This allowed significant savings in storage and costs.
The current case study covers the more challenging task of
training a neural network for action recognition in video. In
coming months, the Beamr R&D team plans to expand the initial
experiment described above to large scale testing, including neural
networks that operate in the cloud using GPUs.
Accelerate the Adoption of Machine Learning for Video
The AI Network was Trained to Distinguish Between People who are
Doing Many Day-to-Day Actions
About
Beamr
Beamr (Nasdaq: BMR) is a world leader in content adaptive video
solutions. Backed by 53 granted patents, and winner of the 2021
Technology and Engineering Emmy® award and the 2021 Seagate Lyve
Innovator of the Year award, Beamr's perceptual optimization
technology enables up to a 50% reduction in bitrate with guaranteed
quality. www.beamr.com
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Investor Contact:
investorrelations@beamr.com
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