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LFX Mentorship 2023 01-Mar-May Challenge - for #48 #54
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Hello, I am Aryan here. I have a doubt in task 1. What specific algorithms should be used for benchmarking the dataset? Do we need to use Ianvs for benchmarking? |
Ok sir |
Good day. Please am i allowed to use the dataset information provided here at the CITYSCAPES website on my benchmark site too. |
First, algorithms for benchmarking are totally designed and developed by applicants. Second, in task 1, we recommend that applicants utilize Ianvs for benchmarking but it is not mandatory. |
Sure, if it is helpful for you. |
Also since the CITYSCAPES dataset is available in Tensorflow flow datasets, is it okay if we load the dataset from it. |
I suggest that you use the cityscapes we provide. Based on the same dataset, we can compare the mIoU among all the submitted algorithms. |
@luosiqi for the task 1, do we have to benchmark the dataset on the model we trained in task2? |
@luosiqi also in task2 do we have to implement only one type of learning? |
Yes. You can use the model of task 2 for task 1's benchmarking. |
In task 2, just do as much as you can. At the end, we calculate total scores of the two tasks as the final score of each applicant. |
Introduction
For those who want to apply for LFX mentorship for #48, this is a selection test for the application. This LFX mentorship aims to build lifelong learning benchmarking on KubeEdge-Ianvs which is a distributed synergy AI benchmarking platform. Based on Ianvs, we designed this challenge to evaluate the candidates.
Requirements
Each applicant of LFX Mentorship can try out the following two tasks and gain a total accumulated score according to completeness. In the end, we'll publish the top five applicants and their total scores. Finally, the one with the highest score will successfully become the mentee of this LFX Mentorship project. All the titles of task output such as pull requests (PRs) should be prefixed with LFX Mentorship.
Task 1
Content
Table 1. Task 1 overview
Resources
Task 2
Content
Resources
Rating
Task 1
All the items that should be completed in task 1 are listed in Table 2 and item scores will be accumulated as the total score of this task.
Table 2. Task 1 scoring rules
Task 2
Table 3. Task 2 scoring rules
Deadline
According to the timeline of LFX mentorship 2023 01-Mar-May, the admission decision deadline is March 7th. Since we have to process the internal review and decide, the final date for PR submissions of the pretest will be March 5th, 8:00 AM PDT.
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