@@ -21,25 +21,30 @@ image: ./preview.png
21
21
22
22
![ FluxNinja joins CodeRabbit] ( ./preview.png )
23
23
24
- We are excited to announce that CodeRabbit has acquired FluxNinja, a startup
25
- that provides a platform for building scalable generative AI applications. This
26
- acquisition will allow us to ship new use cases at an industrial scale while
27
- sustaining our rapidly growing user base. FluxNinja's Aperture product provides
28
- advanced rate-limiting, caching, and request prioritization capabilities for
29
- building reliable and cost-effective AI workflows.
24
+ We are excited to announce that CodeRabbit has acquired
25
+ [ FluxNinja] ( https://fluxninja.com ) , a startup that provides a platform for
26
+ building scalable generative AI applications. This acquisition will allow us to
27
+ ship new use cases at an industrial scale while sustaining our rapidly growing
28
+ user base. FluxNinja's Aperture product provides advanced rate-limiting,
29
+ caching, and request prioritization capabilities for building reliable and
30
+ cost-effective AI workflows.
30
31
31
32
<!-- truncate-->
32
33
33
- Since our launch, Aperture's open-source core engine has been critical to our
34
- infrastructure. Our initial use case centered around mitigating aggressive rate
35
- limits imposed by OpenAI, allowing us to prioritize paid and real-time chat
36
- users during peak load hours while queuing requests from the free users.
37
- Further, we used Aperture's caching and rate-limiting capabilities to offer
38
- open-source developers a fully featured free tier while minimizing abuse. These
39
- capabilities allowed us to scale our user base without ever putting up a
40
- waitlist and at a price point that is sustainable for us. With Aperture's help,
41
- CodeRabbit has scaled to over 100K repositories and several thousand
42
- organizations under its review in a short period.
34
+ Since our launch,
35
+ [ Aperture's open-source] ( https://github.com/fluxninja/aperture ) core engine has
36
+ been critical to our infrastructure. Our initial use case centered around
37
+ [ mitigating aggressive rate limits] ( ../openai-rate-limits-2023-10-23/blog.md )
38
+ imposed by OpenAI, allowing us to prioritize paid and real-time chat users
39
+ during peak load hours while queuing requests from the free users. Further, we
40
+ used Aperture's
41
+ [ caching and rate-limiting capabilities] ( ../how-we-built-cost-effective-generative-ai-application-2023-12-23/blog.md )
42
+ to manage costs that in turn allowed us to offer open-source developers a fully
43
+ featured free tier by minimizing abuse. These capabilities allowed us to scale
44
+ our user base without ever putting up a waitlist and at a price point that is
45
+ sustainable for us. With Aperture's help, CodeRabbit has scaled to over 100K
46
+ repositories and several thousand organizations under its review in a short
47
+ period.
43
48
44
49
We started CodeRabbit with a vision to build an AI-first developer tooling
45
50
company from the ground up. Building enterprise-ready applied AI tech is unlike
0 commit comments