SC01 Machine Learning Techniques for Engineering and Characterization
Sponsored by: SEG
Friday, 17 June – Saturday, 18 June 2022, 8:00 a.m.–5:00 p.m. | Houston, Texas
Who Should Attend
Entry Level and Intermediate
Prerequisites (Knowledge/Experience/Education required)
Basic Computer Programming, Numerical Methods, Statistics, Familiarity with concepts like regression, interpolation, and curve fitting.
Objectives
- Participants can perform exploratory data analysis on large datasets containing numerical and categorical data.
- Participants can perform exploratory data analysis on time-series data and unsupervised transformations.
- Participants will be proficient with using Decision Tree Classifiers, kNN classifier, Random forest tree classifier, and K-Means Clustering on various datasets.
- Participants can construct training, testing, cross validation, feature elimination, feature ranking, parameter selection, and anomaly detection tasks.
- Participants can implement advanced clustering, regression, and classification techniques, such as DBSCAN, Hierarchical Clustering, neural networks, ElasticNet, and Support Vector Machines.
- Participants can construct deep neural networks for time-series analysis.
Course Content
Equipment/Software Requirements
The instructor will use Windows OS during the course. Participants will execute python and tensorflow modules/codes to understand various Machine Learning concepts. All software used for the course is open source, so participants should bring computers where they can install the open-source software. Participants need at least 4GB of storage and 4GB RAM on their computer.
Course Outline
- Basics of Machine Learning in Python
- Supervised Learning – Classification
- Case Study #1 – Identifying Rock Type
- Supervised Learning – Regression
- Case Study #2 – Saturation Estimation
- Model Evaluation
- Case Study #3 – Image Analysis and Segmentation
- Cross Validation; Hyper-parameter Selection
- Case Study #4 – Shear Traveltime Prediction
- Unsupervised Learning – Transformation
- Feature Engineering and Feature Selection
- Case Study #5 – Waveform Analysis and Clustering
- · Neural Networks
Fees
- Pricing:
- Members - $500
- Non-Members - $600
- Students - $250
- Room Assignment:
- Online at Zoom
- Attendee Limit:
- 16 People
- Education Credits:
- 1.6 CEU
Venue
George R. Brown Convention Center
1001 Avenida De Las Americas
Houston,
Texas
77010
United States
(713) 853-8000
Instructor