Gen AI Assisting Data Scientists
Utilize generative AI to advance in the field of data science. Develop hands-on generative AI skills that are in high demand to accelerate your data science career in under one month.
Description for Gen AI Assisting Data Scientists
- Recognize the practical applications of generative AI and identify the most commonly used models and tools for text, code, image, audio, and video by applying your skills.
- Comprehend the concepts, examples, and common tools of generative AI prompt engineering and acquire the skills necessary to develop effective, impactful prompts.
- Acquire the ability to recognize the most suitable generative AI tools for data science applications.
- Utilize generative AI prompt techniques to create and enhance datasets, as well as to refine and develop machine learning models.
Level: Intermediate
Certification Degree: Yes
Languages the Course is Available: 22
Offered by: On Coursera offered by IBM
Duration: 1 month at 10 hours a week
Schedule: Flexible
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Reviews for Gen AI Assisting Data Scientists
4.4 / 5
from 5 reviews
Ease of Use
Ease of Customization
Intuitive Interface
Value for Money
Support Team Responsiveness
Sian Bell
I trust its suggestions more than some older tools I�ve used.
Isla Tate
No steep learning curve�usable right out of the box.
Lana Webb
Has noticeably improved my output quality with minimal extra effort.
Otto Pierce
Doesn�t interrupt�just enhances. That�s what makes it special.
Amira Pike
Minimal bugs, fast results, and easy onboarding experience.
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