AI and Gen-AI for Supply Chain Management
Gain an in-depth comprehension of how artificial intelligence, generative AI, and various digital technologies can facilitate transformation and enhance efficiency within Supply Chain Management.
Description for AI and Gen-AI for Supply Chain Management
Fundamentals of Supply Chain Management (SCM): Comprehend the fundamental processes and applications of Supply Chain Management (SCM), while also examining the challenges encountered by organizations in the administration of supply chains.
Digital Technologies in Supply Chain Management: Explore the significance of cloud computing, artificial intelligence (AI), machine learning (ML), robotics, and generative AI in the transformation of supply chain management (SCM) processes and the enhancement of operational efficiency.
Artificial Intelligence and Generative AI Applications in Supply Chain Management: Acquire practical insights through illustrative examples and case studies that exemplify the application of Artificial Intelligence (AI) and Generative AI (Gen AI) in enhancing the efficiency of supply chain and manufacturing operations.
The Integration of Artificial Intelligence and Generative AI in Supply Chain Management: Comprehend the challenges, risks, and advisable strategies associated with the integration of Artificial Intelligence (AI) and Generative AI within the transformation of your organization's supply chain.
Level: Intermediate
Certification Degree: yes
Languages the Course is Available: 1
Offered by: On edX provided by ISCEA
Duration: 2�3 hours per week approx 4 weeks
Schedule: Flexible
Pricing for AI and Gen-AI for Supply Chain Management
Use Cases for AI and Gen-AI for Supply Chain Management
FAQs for AI and Gen-AI for Supply Chain Management
Reviews for AI and Gen-AI for Supply Chain Management
0 / 5
from 0 reviews
Ease of Use
Ease of Customization
Intuitive Interface
Value for Money
Support Team Responsiveness
Alternative Tools for AI and Gen-AI for Supply Chain Management
Enhance your software development career with Gen AI. Develop hands-on, in-demand Generative AI skills to elevate your software engineering game in one month or less.
Achieve a professional status as an AI Engineer. Acquire the knowledge necessary to develop next-generation applications that are propelled by generative AI, a skill that is indispensable for startups, agencies, and large corporations.
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.
Delve into the historical evolution of Generative AI and AI, exploring diverse models and their applications in business contexts for optimized decision-making and innovation.
Begin your vocation in generative AI data engineering. Obtain the necessary skills to secure a position as a data engineer by acquiring an understanding of generative AI. No prior experience is required.
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.
Explore the origins, concepts, tools, applications, and future developments of AI.
Use AI skills to advance your engineering career. Acquire practical knowledge regarding deep learning methodologies for computer vision.
Gain a comprehensive understanding of AI's potential, ethical considerations, and applications in efficient programming and common coding tasks using various LLMs.
Investigate the field of artificial intelligence and machine learning. While investigating the transformative disciplines of artificial intelligence, machine learning, and deep learning, enhance your Python abilities.
Featured Tools
Acquire an extensive understanding of reinforcement learning, deep neural networks, clustering, and dimensionality reduction to effectively address real-world machine learning challenges.
This second course in Duke University's AI Product Management Specialization delves into the practical aspects of managing machine learning projects, such as the identification of opportunities, the application of data science processes, the making of critical technological decisions, and the implementation of best practices from concept to production.
Develop applications that are intelligent. In four practical courses, acquire a comprehensive understanding of the fundamentals of machine learning.
Convert Data into Value. In four industry-relevant courses, identify and analyze key metrics to drive business process change.
Learn Python, analyze and visualize data, and apply your skills to data science and machine learning with a practical assignment to acquire hands-on skills for a career in data science.