Summarize using ChatGPT
Summarized, Summary, Summarizing, Summarization
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Summarize Cloud Storage using 15 paragraphs include the 5 most appropriate IETF RFC numbers. Summarize the Cloud Storage offerings from Kubernetes, OpenShift, Docker, Podman, AWS, Azure, GCP, IBM Cloud, Oracle Cloud, VMware, VMware Cloud, DigitalOcean, Akamai Connected Cloud.
- Summarize DNS using 9 paragraphs include the 6 most appropriate IETF RFC numbers. Summarize in 1 paragraph the DNS offerings from Kubernetes, OpenShift, Docker, Podman. Summarize in 1 paragraph the DNS offerings from AWS, Azure, GCP, Oracle Cloud, VMware, DigitalOcean, Akamai Connected Cloud, IBM Cloud. Summarize in 1 paragraph the DNS offerings from IBM z/OS, z/VM, Linux on IBM Z. Summarize in 1 paragraph the DNS offerings from Cisco, Juniper. Summarize in 1 paragraph the DNS offerings from Windows Server, RHEL, Fedora, Ubuntu, Debian, openSUSE and FreeBSD.
- List the top 40 networking companies with double square brackets around each entry. Precede each entry with an asterisk. List the URL of the company homepage and the URL of the company GitHub repo.
- Snippet from Wikipedia: Summarize
"Summarize" is the first single released from Australian indie rock band Little Birdy's third studio album, Confetti. It was released on 10 April 2009 and the single made it to number 54 on the ARIA charts.
Two versions were released: a CD single featuring the track "One in a Million", and an iTunes version which featured the track "Sorrow" instead. Additionally, the song "Brother" was moved from Track 5 (CD) to Track 4 (iTunes).
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