Python Data Products for Predictive Analytics Specialization
This Specialization refines Python competencies for predictive analytics and the implementation of machine learning models, equipping learners for advanced positions in the AI sector.
Description for Python Data Products for Predictive Analytics Specialization
Advanced Python for Predictive Analytics: Acquire proficiency in Python for predictive analytics, as utilized by prominent technology firms to improve everyday products and services.
Data Strategy and Workflow Formulation: Formulate your first data strategy, construct statistical models, and establish data-driven workflows to enhance business and research insights.
Design Thinking and Data Science Methodologies: Employ design thinking and data science techniques to derive meaningful insights from various data sources.
In-Demand Skills for the AI Industry: Acquire advanced Python competencies, emphasizing machine learning implementation and precise predictive analytics for commercial applications.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 1
Offered by: On Coursera provided by Coursera Project Network
Duration: 2 hours
Schedule: Hands-on learning
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