Predicting Partner’s Digital Transformation Based on Artificial Intelligence

Author:

He Chenggang,H. Q. Ding Chris

Abstract

Partner’s digital transformation is one of the most important metrics for businesses, particularly for businesses in the subscription world. Hence, how to predict partner transformation is a consistent focus in the industry. In this paper, we use an AI (Artificial Intelligence) relevant algorithm to analyze partner’s digital transformation issues and propose a novel method, named the hybrid VKR (VAE, K-means, and random forest) algorithm, to predict partner transformation. We apply our algorithm to partner transformation issues. First, we show the prediction of about 5980 partners from 25,689 partners, who are transformed and sorted according to important indicators. Secondly, we recap the tremendous effort that was required by the company to obtain high-quality results for economic change when a partner is transforming along with one or many of the transformation dimensions. Finally, we identify unethical behavior by looking through deal transaction data. Overall, our work sheds light on several potential problems in partner transformation and calls for improved scientific practices in this area.

Funder

National Natural Science Foundation of China

NSFC Key Project of International (Regional) Cooperation and Exchanges

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

Reference34 articles.

1. AWS Partner Transformation [EB/OL]https://aws.amazon.com/partners/partner-transformation

2. Microsoft Partner Transformation [EB/OL]https://partner.microsoft.com/en-us/solutions/digital-transformation

3. NetApp Partner Transformation [EB/OL]https://www.comparethecloud.net/articles/the-value-of-partnership-in-digital-transformation

4. Cisco Resellers Add Value

5. Trends in Free Time with a Partner: A Transformation of Intimacy?

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