Machine Learning Model Development for Material Identification
Main contact


Portals
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Toronto, Ontario, Canada
Project scope
Categories
Machine learningSkills
feature extraction business metrics performance metric algorithms random forest algorithm machine learning model training support vector machine machine learning algorithms machine learning machine learning model monitoring and evaluationIn this project, students will collaborate to develop machine learning models capable of accurately identifying different materials, including resin, dyed materials, natural minerals, and rocks. They will explore various machine learning algorithms and techniques to build robust models for material classification, contributing to the development of a reliable material identification system.
Project Description:
In this project, students will work together to design, train, and evaluate machine learning models for material identification. The project consists of the following key tasks:
Data Preparation:
- Students will start with the dataset of materials, including images, spectroscopic data, or any other relevant features.
- Data preprocessing steps such as normalization, feature extraction, and data augmentation (if applicable) will be applied to prepare the dataset for model training.
Model Selection:
- Students will explore various machine learning algorithms suitable for classification tasks, such as Support Vector Machines (SVM), Random Forests, Convolutional Neural Networks (CNNs), or others depending on the data type.
- Based on the dataset and project requirements, they will select one or more algorithms to build and compare models.
Model Training and Evaluation:
- Implement and train machine learning models using the prepared dataset.
- Evaluate model performance using appropriate metrics (e.g., accuracy, precision, recall, F1-score) through cross-validation or holdout validation.
Hyperparameter Tuning:
- Optimize model hyperparameters to improve performance.
- Experiment with different hyperparameter settings to find the best configuration.
Project Deliverables:
Upon completion of the project, students will deliver the following:
- Trained Machine Learning Models: Machine learning models for material identification based on the selected algorithms, including the code and documentation for model training.
- Model Evaluation Report: A report summarizing the model evaluation results, including performance metrics and insights gained from the evaluation process.
Support for Learners:
To ensure that learners successfully complete this project and achieve the desired learning outcomes, the following support mechanisms will be provided:
- Guidance and Training: Students will receive guidance on machine learning concepts, model selection, and hyperparameter tuning. Access to relevant tutorials and resources will be provided.
- Regular Check-Ins: Periodic check-in sessions with project mentors or instructors will allow students to seek guidance and feedback on their progress.
- Access to Software and Libraries: Access to necessary software tools, machine learning libraries, and computational resources for model development and training.
- Collaborative Environment: Students will have the opportunity to collaborate with peers, share insights, and discuss challenges related to machine learning model development.
By offering these forms of support, learners will be well-equipped to complete the project successfully, contributing to the advancement of the material identification system through the development of accurate and reliable machine learning models.
About the company
Lucentara
Science | Technology | Innovation
Lucentara is a Canadian science and innovation company dedicated to advancing the study and application of ammolite and other natural materials. Founded by Caitlin Furby and Mark Turner, Lucentara operates at the intersection of geology, materials science, and design — exploring how nature’s rarest formations can inspire modern advancements in technology and sustainability.
Through ongoing research partnerships and applied experimentation, Lucentara develops cutting-edge methods for fossil preservation, laser restoration, and structural color analysis. Every discovery contributes to the deeper understanding of ammolite’s optical and geological properties, positioning Lucentara as a pioneer in natural photonics and gemstone science.
Lucentara represents the future of Canadian innovation — where art, science, and nature converge.
Dinosty Fossils
Mining | Restoration | Heritage
Dinosty Fossils is the foundation of Alberta’s ammolite industry — a mining and restoration company co-founded by Mark Turner and Caitlin Furby, specializing in the ethical extraction and preparation of ammonite fossils and gem-grade ammolite from the Bearpaw Formation.
Operating across more than 1,200 hectares of mineable land in Southern Alberta, Dinosty Fossils combines traditional field expertise with modern restoration technology to bring prehistoric treasures back to life. Every specimen is meticulously excavated, stabilized, and restored by hand, honoring both its geological origin and its natural artistry.
Through Dinosty Fossils, Furby and Turner have built one of Canada’s most respected fossil operations — supplying collectors, museums, and jewelers worldwide while preserving the integrity and story of each discovery.
Main contact


Portals
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Toronto, Ontario, Canada