Product Management: Capstone Project
Develop essential product development artifacts, create a personal portfolio demonstrating product management skills, and assess readiness for the AIPMM Certified Product Manager (CPM) certification exam.
Description for Product Management: Capstone Project
Level: Advanced
Certification Degree: Yes
Languages the Course is Available: 21
Offered by: On Coursera provided by IBM
Duration: 16 hours (approximately)
Schedule: Flexible
Pricing for Product Management: Capstone Project
Use Cases for Product Management: Capstone Project
FAQs for Product Management: Capstone Project
Reviews for Product Management: Capstone Project
0 / 5
from 0 reviews
Ease of Use
Ease of Customization
Intuitive Interface
Value for Money
Support Team Responsiveness
Alternative Tools for Product Management: Capstone Project
Enhance your Product Manager career with Gen AI. Boost your Product Manager career in under two months by developing hands-on, in-demand generative AI skills. No prior experience is required to initiate the process.
Begin your professional journey as an AI Product Manager. Develop generative AI and product management skills that are in high demand to be job-ready in six months or less.
Learn to identify suitable applications for machine learning, integrate human-centered design principles for privacy and ethical considerations in AI product development, and lead machine learning projects following data science methodology and industry standards.
Alloy is an AI-powered prototyping tool for product managers that enables instant, high-fidelity prototypes directly within existing product pages, combining realism, speed, and collaboration.
Featured Tools
Learn to develop, assess, and enhance machine learning models using Python libraries, covering introductory deep learning, supervised, and unsupervised learning algorithms.
This course offers practical information regarding the ethical implications, applications, and categories of machine learning.
Learn to clean, prepare, analyze, and manipulate data with Python, utilize libraries for exploratory data analysis, and develop regression models for prediction and decision-making using scikit-learn.
The course's topics including the distinction between deep learning, machine learning, and artificial intelligence, the process of developing machine learning models, the difference between supervised and unsupervised learning, and the use of metrics for evaluating classification models.
Understand how AI improves decision-making accuracy, automates processes for increased efficiency, and impacts your industry to maximize benefits and avoid pitfalls.