Interactive Python Standard Library
This program will provide you with the competencies necessary to execute real-time updates, develop interactive data visualizations, and refine your data analysis and presentation skills utilizing Python.
Description for Interactive Python Standard Library
Interactive Jupyter: Acquire the skills necessary to utilize Jupyter notebooks for the development of interactive visualizations and the execution of real-time data analysis.
Standard Library in Python: Acquire a comprehensive comprehension of Python's standard library for the management of data and the creation of fundamental visualizations.
Explore Prominent Interactive Libraries: Engage with extensively utilized Python libraries, including Plotly and Bokeh, for the development of dynamic and interactive data visualizations.
Real-Time Data Processing and User Engagement Strategies: Acquire proficiency in techniques for executing real-time data updates and augmenting user interactions within your projects.
Level: Beginner
Certification Degree: yes
Languages the Course is Available: 1
Offered by: On edX provided by AI
Duration: 4�6 hours per week 4 weeks (approximately)
Schedule: Flexible
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