TY - JOUR
T1 - Laboratory Glassware Identification: Supervised Machine Learning Example for Science Students
AU - Sharma, Arun K.
PY - 2021/1
Y1 - 2021/1
N2 - This paper provides a supervised machine learning example to
identify laboratory glassware. This project was implemented in an
Introduction to Scientific Computing course for first-year students
at our institution. The goal of the exercise was to present a typical
machine learning task in the context of a chemistry laboratory to
engage students with computing and its applications to scientific
projects. This is an end-to-end data science experience with students creating the dataset, training a neural network, and analyzing
the performance of the trained network. The students collected
pictures of various glassware in a chemistry laboratory. Four pretrained neural networks, Inception-V1, Inception-V3, ResNet-50,
and ResNet-101 were trained to distinguish between the objects in
the pictures. The Wolfram Language was used to carry out the training of neural networks and testing the performance of the classifier.
The students received hands-on training in the Wolfram Language
and an elementary introduction to image classification tasks in the
machine learning domain. Students enjoyed the introduction to machine learning applications and the hands-on experience of building
and testing an image classifier to identify laboratory equipment
AB - This paper provides a supervised machine learning example to
identify laboratory glassware. This project was implemented in an
Introduction to Scientific Computing course for first-year students
at our institution. The goal of the exercise was to present a typical
machine learning task in the context of a chemistry laboratory to
engage students with computing and its applications to scientific
projects. This is an end-to-end data science experience with students creating the dataset, training a neural network, and analyzing
the performance of the trained network. The students collected
pictures of various glassware in a chemistry laboratory. Four pretrained neural networks, Inception-V1, Inception-V3, ResNet-50,
and ResNet-101 were trained to distinguish between the objects in
the pictures. The Wolfram Language was used to carry out the training of neural networks and testing the performance of the classifier.
The students received hands-on training in the Wolfram Language
and an elementary introduction to image classification tasks in the
machine learning domain. Students enjoyed the introduction to machine learning applications and the hands-on experience of building
and testing an image classifier to identify laboratory equipment
UR - https://www.mendeley.com/catalogue/832ca6fe-190f-352f-b821-8b52ff471939/
U2 - 10.22369/issn.2153-4136/12/1/2
DO - 10.22369/issn.2153-4136/12/1/2
M3 - Article
VL - 12
SP - 8
EP - 15
JO - The Journal of Computational Science Education
JF - The Journal of Computational Science Education
IS - 1
ER -