关于“Maintaining High Availability with Auto Scaling (for Linux)”的评价
评论
Good content. It really helped me understand more about auto scaling.
Nicholas M. · 评论over 7 years之前
Chad P. · 评论over 7 years之前
Joe G. · 评论over 7 years之前
Brett J. · 评论over 7 years之前
Great intro!
Ben L. · 评论over 7 years之前
David B. · 评论over 7 years之前
Excellent lab!!
David S. · 评论over 7 years之前
good lab
Chris C. · 评论over 7 years之前
The scaling down policy may have been too quick an interval at 1 minute to see the instances registered and appear in the ELB. I think instances were scheduled down faster.
MICHAEL R. · 评论over 7 years之前
Now I understood
Juan Jose P. · 评论over 7 years之前
Fred S. · 评论over 7 years之前
Ademola A. · 评论over 7 years之前
Bjoern S. · 评论over 7 years之前
Claire D. · 评论over 7 years之前
Catalin C. · 评论over 7 years之前
Enable Groups Metric Collection needed to be enabled before I could create a CloudWatch Alarm on step 79. Dashboard wasn't configured to show CPUUtilization for the AS-Lab fleet
Nigel L. · 评论over 7 years之前
Gurunath B. · 评论over 7 years之前
train i. · 评论over 7 years之前
EP K. · 评论over 7 years之前
A lot of this was setup "for you" by the lab system, so you miss out on going through the creation of the EC2 instances, the load balancer. Later the Autoscaling is all done via command line. I will have to keep copies of all of the command lines and analyse them later. Also, the lab did not seem to keep track of my time or "score" so I will probably have to relaunch the lab and see if I can change that. I was not very happy with this lab. I am happy about being exposed to the command line options. It was not explained, at all, but I came to understand the reasons for the first "Command line and tools" server. That will be a good thing to remember for the future. It may be a "best practice" to always have at least one instance setup for command line purposes and such.
Aubrey F. · 评论over 7 years之前
Ademola A. · 评论over 7 years之前
A V. · 评论over 7 years之前
Pradeep R. · 评论over 7 years之前
Mark Z. · 评论over 7 years之前
Chris M. · 评论over 7 years之前
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