ML Aplicado ao Marketing Specialization
Master the art of driving digital marketing transformation by utilizing data science, artificial intelligence, and innovative strategies to enhance business performance and consumer engagement.
Description for ML Aplicado ao Marketing Specialization
Examination of Digital Transformation in Marketing: Gain an understanding of the ways in which data management and connected applications are being used to transform marketing by prominent technology companies such as Apple and Google.
Integration of Data Science into Marketing: Acquire the ability to utilize data science and data engineering tools to enhance marketing strategies and analyze customer behaviors.
Foundations of Artificial Intelligence in Marketing: Explore the fundamentals of artificial intelligence and its application to improve the consumer experience and revenue growth.
Marketing Challenges: Strategic Development: Acquire the ability to develop customized strategies that are specifically designed to resolve specific marketing challenges by utilizing sophisticated digital tools and methodologies.
Level: Intermediate
Certification Degree: Yes
Languages the Course is Available: 21
Offered by: On Coursera provided by CertNexus
Duration: 3 weeks at 9 hours a week
Schedule: Flexible
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