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Check with seller Data Mining Lecturer / Specialist
- Location: Can Tho City, vietnam
Data Mining Lecturer / Specialist
Job Overview
We are seeking an analytical and detail-oriented Data Mining Lecturer to join our faculty. In an era where organizations are drowning in data but starving for insights, your role will be to teach students the methodologies and techniques required to extract hidden patterns, correlations, and knowledge from large, complex datasets. You will be the bridge between raw, unstructured information and high-level strategic intelligence, preparing students to be the "detectives" of the digital age.
Job Responsibilities
Instructional Delivery: Lead courses on the fundamental and advanced concepts of data mining, including Association Rule Mining, Classification, Clustering, Anomaly Detection, and Sequential Pattern Mining.
Curriculum Development: Architect a curriculum that balances the theoretical underpinnings of data mining (e.g., set theory, graph theory) with modern practical application using tools such as Python (pandas, scikit-learn), Weka, R, or SQL/NoSQL platforms.
Hands-on Lab Management: Oversee coding workshops where students apply mining algorithms to diverse, real-world datasets (e.g., retail transaction logs, social media sentiment, web usage data).
Research & Mentorship: Guide students through capstone projects that require them to clean, prepare, and mine data to answer complex questions. Mentor graduate students in research projects focused on knowledge discovery.
Assessment & Evaluation: Create challenging assessments that test a student’s ability to select the right algorithm for a specific problem and interpret the validity of the discovered patterns.
Data Integrity & Ethics: Teach the critical importance of data privacy, bias identification, and the ethical implications of data mining in society.
Industry Engagement: Maintain connections with industry to ensure students understand the real-world applications of data mining in areas like fraud detection, marketing personalization, and predictive maintenance.
Job Requirements
Education: Master’s degree in Computer Science, Data Science, Statistics, or a related field; a PhD is highly preferred.
Experience: 3+ years of experience in data analysis, data mining, or research, combined with a strong aptitude for teaching and mentorship.
Technical Skills:
Core Knowledge: Deep understanding of data preprocessing, feature selection, and the KDD (Knowledge Discovery in Databases) process.
Algorithmic Proficiency: Hands-on experience with clustering algorithms (e.g., K-Means, DBSCAN), classification (e.g., Decision Trees, SVM), and association rules (e.g., Apriori).
Tooling: Strong proficiency in data mining software and programming languages (Python is essential; R or SQL are highly valued).
Soft Skills:
Curiosity: A natural desire to "dig deeper" and a passion for finding patterns in chaos.
Clarity: Ability to explain abstract mining concepts clearly, avoiding unnecessary complexity while maintaining academic rigor.
Analytical Thinking: A logical, structured approach to evaluating the results of data mining experiments.
Patience: The ability to guide students through the often-tedious stages of data cleaning and validation before they reach the exciting discovery phase.
Benefits
Competitive Compensation: Attractive salary package with opportunities for research grants and consulting.
Professional Development: Support for attending top-tier data science and research conferences, publishing papers, and pursuing advanced certifications.
Intellectual Environment: An opportunity to contribute to the field of knowledge discovery and mentor the next generation of data specialists.
Comprehensive Benefits: Full insurance coverage, academic leave, and retirement benefits in accordance with local labor laws.
Career Growth: Defined pathways to Tenured Professor, Data Lab Director, or Lead Research Consultant.
Data Mining Lecturer, Knowledge Discovery Faculty, Data Mining Specialist (Instructor), Data Analytics Professor, Pattern Recognition Instructor.
Industry Keywords: Knowledge Discovery in Databases (KDD), Association Rules, Clustering, Classification, Anomaly Detection, Feature Engineering, Data Preprocessing, Predictive Analytics.
Attributes: Inquisitive, Logical, Analytical, Articulate, Patient, Detail-oriented.
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