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is there a data loader for the IBM cross domain challenge? (Cross-Domain Few-Shot Learning (CD-FSL) Benchmark) #285

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brando90 opened this issue Nov 18, 2021 · 3 comments
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good first issue Good for newcomers help wanted Extra attention is needed

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@brando90
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Hi,

I was wondering if there was a data loader using l2l ideally for the Cross-Domain Few-Shot Learning (CD-FSL) Benchmark? References:

ideally with an l2l model/example would be great!

@seba-1511
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Hi @brando90,

We don’t have a plan to add this dataset yet. Would you be interested in contributing it?

@brando90
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Hi @brando90,

We don’t have a plan to add this dataset yet. Would you be interested in contributing it?

it's not in my critical path at the moment, but I think in a few months it will be. I would be more than happy to contribute it once I have it ready.

@brando90
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brando90 commented Mar 1, 2022

the best way to test the implementation would be to build a testloader for it. Right?

e.g. this line

    tasksets = l2l.vision.benchmarks.get_tasksets('mini-imagenet',
                                                  train_samples=2*shots,
                                                  train_ways=ways,
                                                  test_samples=2*shots,
                                                  test_ways=ways,
                                                  root='~/data',
    )

tasksets = l2l.vision.benchmarks.get_tasksets('mini-imagenet',

@seba-1511 seba-1511 added help wanted Extra attention is needed good first issue Good for newcomers labels May 29, 2023
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