Listed Key Characteristics Of Cloud Computing
38 days ago
Data Science: A Team Spirit
85 days ago
Python Opens The Door For Computer Programming
Follow 5 Easy Steps to Get Implement Machine Learning and Artificial Intelligence in Your Organization
Machine Learning and Artificial Intelligence are getting hype in the technological world. Both artificial Intelligence and machine learning uses data to predict the outcomes. Both the technology offers advantages to almost every industry and organizations are also leveraging AI and ML technologies.
Following are the pointers that help in implementing the Artificial Intelligence and Machine Learning within the organization:
Know how AI and ML will benefit for Organizations:
When formulating to use machine learning, the first thing organizations must do is train lead engineers to have a solid understanding of the technology; how it works and what advantages it can deliver, said Chris Rijnders, CEO and co-founder, Cogisen. For example, Boeing has set up a joint lab project with Carnegie Mellon, he said, "so that its engineers can understand its potential impact in every aspect of design, manufacturing and maintenance." This demonstrates how critical education should be when applying machine learning to complex environments.
Analyze the businesses which have already implemented AI and ML technology:
AI and machine learning are not yet in the DIY category, said Fabio Cardenas, CEO of Sundown AI. It's all still very technical. So, it's worth finding out what other businesses have similar goals, and how they have addressed the issue.
Select right platform:
With Amazon, Baidu, Google, IBM, Microsoft and others all offering machine learning platforms for the enterprise, there is no obvious place to start. Many of these options are similarly priced, and aimed at beginners. Check out the individual articles on these platforms in this special feature to help you decide if one of them is right for your business.
Build healthy strategy:
Data science companies like Boxever can help businesses deploy AI for example, by addressing a question like, 'How can AI improve marketing?' AI could help you make predictions about what happens when customers open an email, for example, based on previous experience. This is an easy way to integrate AI into current operations, said Dave O'Flanagan, Boxever's CEO and co-founder, because it helps "build trust."
We had to introduce a lot of controls on rules to be able to allow organizations to treat the output or deploy their own strategies themselves, O'Flanagan said, and then put their strategies alongside black box or AI strategies to be able to get comfortable with the concept of a machine making decisions about what kind of information to present to a customer.
Prepare an implementation plan:
Before you can get started deploying your product, you need to think about a plan. According to Sundown AI's Cardenas, a multi-region deployment plan using Amazon Web Services (AWS) has a detailed description for users. Setting up the AWS infrastructure would take a few days, assuming that the web application has been tested on such infrastructure previously, he said. If it hasn't, you'd need to set up the web app, database and other related infrastructure on AWS, connecting all the components, Cardenas said which could take a week or two. Additionally, it would require constantly refining the coding for bugs, which would call for additional deployments. Cardenas estimated that the process for a "deploy pipeline" could take another ten days or so.