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Amazon Cloud Technology Build On-Amazon Neptune's Knowledge Graph-Based Recommendation Model Building Experience
2022-08-04 06:19:00 【Refers to the sword】
AWS Build On Learning Experience
To be honest, this is the first time I have participated in AWS Build On. When I heard that there was a workshop, I thought it was a workshop provided by all the resources abroad, but the result was a little different. Have you found the registration entrance?Sorry, haha
In the experimental stage, the overall steps are still very simple, all you need to do is to create an s3 bucket, because it is slow to get the information, because there is no registration, so I still found it in the WeChat groupIn the experimental manual, it went well at the beginning, but the cluster cloning went wrong later, and I missed the first place!!!
After repeated inspections, I finally found that the live broadcast was in Chinese, and I used the English version, or I was too careless, but I still recommend that the project team of AWS Build On hold it in the future, and try to delete irrelevant files.If I'm so careless, I'm blind
Open the experiment manual first, you can see the whole experiment process
Amazon Cloud Technology Build On Experiment Manual: https://aws.amazon.com/cn/getting-started/hands-on/neptune-tutorial-details/?trk=3e0d7019-0601-4b37-97c5-50556674f67e&sc_channel=el
Approximate time taken for both experiments:

The first step is to log in to the aws account, select the us-east-1 region, and then create a cloudformation

The first experiment is completed as shown:

The second experiment is a little wrong here (may vary from person to person)

Solution:
After refreshing the kernel, refresh the page and re-run itIn the second experiment, due to my own carelessness, I chose the wrong experiment file and chose the English version, so I have been stuck here
View batch is also stuck
The result is the English version of jobSize:medium when the template is configured, while the Chinese version is small

Generally speaking, the experiment is still very simple. As a whole, you only need to point and click, and Xiaobai can easily get started. The experimental manual is very detailed. As explained by the staff, youJust create the bucket and that's it!
Hope AWS Build On gets better and better!
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