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Supervised Machine Learning: Regression and Classification
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Link Type
Training url
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Target audience
Digital skills for the labour force.Digital technology / specialisation
Artificial IntelligenceDigital skill level
BasicGeographic Scope - Country
European UnionIndustry - Field of Education and Training
Generic programmes and qualifications not further definedTarget language
EnglishType of initiative
International initiative
Event setting
Target group
Persons requiring employment retrainingTypology of training opportunities
Course
Learning activity
lab / simulation / practice coursework
Assessment type
Classroom basedTraining duration
Up to 1 week
Organization
Association of Information Technology & Communications Enterprises of Greece (SEPE)Is this course free
No
Is the certificate/credential free
No
Type of training record
Single offer
Effort
Part time light
Credential offered
Learning activity
Self-paced course
No
Take part in the Supervised Machine Learning: Regression and Classification to gain foundational knowledge of modern machine learning and develop skills and competencies from industry experts. This course provides participants a broad introduction into supervised learning, unsupervised learning, as well as best practices from the industry.
This is the first of three courses within the Machine Learning Specialization offered by Coursera, created in collaboration with DeepLearning.AI and Stanford Online and taught by Andrew Ng. This programme is designed for beginners to give them a basic understanding of machine learning and how these techniques can be used to build real-world Artificial Intelligence (AI) applications.
Course overview
The beginner course is estimated to take 33 hours to complete, and includes 9 assessments. It is split up into three modules:
- Introduction to Machine Learning (7 hours)
- Regression with multiple input variables (9 hours)
- Classification (16 hours)
Learners will be equipped with the tools to:
- Build machine learning models in Python using popular machine learning libraries NumPy and scikit-learn
- Build and train supervised machine learning models for prediction and binary classification tasks
Participants will receive a shareable certificate after completion.
Next steps
After completing the Supervised Machine Learning: Regression and Classification course, participants can take part in the next two courses of the Machine Learning Specialization:
- Advanced Learning Algorithms (34 hours)
- Unsupervised Learning, Recommenders, Reinforcement Learning (27 hours)