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include module summary in quickstart notebook #113

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Summary: add module summary in quickstart notebook

Differential Revision: D42155039

Summary: add module summary in quickstart notebook

Differential Revision: D42155039

fbshipit-source-id: a0bddaa388f4c0f44d2e6b46baaf22e36d02f63f
@facebook-github-bot facebook-github-bot added CLA Signed This label is managed by the Facebook bot. Authors need to sign the CLA before a PR can be reviewed. fb-exported labels Dec 19, 2022
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This pull request was exported from Phabricator. Differential Revision: D42155039

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codecov bot commented Dec 19, 2022

Codecov Report

Merging #113 (9cd2075) into main (4518e74) will not change coverage.
The diff coverage is n/a.

@@           Coverage Diff           @@
##             main     #113   +/-   ##
=======================================
  Coverage   95.47%   95.47%           
=======================================
  Files         143      143           
  Lines        8390     8390           
=======================================
  Hits         8010     8010           
  Misses        380      380           

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bobakfb added a commit to bobakfb/torcheval that referenced this pull request Jan 25, 2023
Summary:
# TorchEval Version 0.0.6

## Change Log

 - New metrics:
   - AUC
   - Binary, Multiclass, Multilabel AUPRC (also called Average Precision) pytorch#108 pytorch#109
   - Multilabel Precision Recall Curve pytorch#87
   - Recall at Fixed Precision pytorch#88 pytorch#91
   - Windowed Mean Square Error pytorch#72 pytorch#86
   - Blue Score pytorch#93 pytorch#95
   - Perplexity pytorch#90
   - Word Error Rate pytorch#97
   - Word Information Loss pytorch#111
   - Word Information Preserved pytorch#110
 - Features
   - Added Sync for Dictionaries of Metrics pytorch#98
   - Improved FLOPS counter pytorch#81
   - Improved Module Summary, added forward elapsed times pytorch#100 pytorch#103 pytorch#104 pytorch#105 pytorch#114
   - AUROC now supports weighted inputs pytorch#94
 - Other
   - Improved Documentation pytorch#80 pytorch#117 pytorch#121
   - Added Module Summary to Quickstart pytorch#113
   - Updates several unit tests pytorch#77 pytorch#96 pytorch#101 pytorch#73
   - Docs Automatically Add New Metrics pytorch#118
   - Several Aggregation Metrics now Support fp64 pytorch#116 pytorch#123

### [BETA] Sync Dictionaries of Metrics

We're looking forward to building tooling for metric collections. The first important feature towards this end is collective syncing of groups of metrics. In the example below, we show how easy it is to sync all your metrics at the same time with `sync_and_compute_collection`.

This method is not only for convenience, on the backend we only use one torch distributed sync collective for the entire group of metrics, meaning that the overhead from repeated network directives is maximally reduced.

```python
import torch
from torcheval.metrics import BinaryAUPRC, BinaryAUROC, BinaryAccuracy
from torcheval.metrics.toolkit import sync_and_compute_collection, reset_metrics

# Collections should be Dict[str, Metric]
train_metrics = {
    "train_auprc": BinaryAUPRC(),
    "train_auroc": BinaryAUROC(),
    "train_accuracy": BinaryAccuracy(),
}

# Hydrate metrics with some random data
preds = torch.rand(size=(100,))
targets = torch.randint(low=0, high=2, size=(100,))

for name, metric in train_metrics.items():
    metric.update(preds, targets)

# Sync the whole group with a single gather
print(sync_and_compute_collection(train_metrics))
>>> {'train_auprc': tensor(0.5913), 'train_auroc': tensor(0.5161, dtype=torch.float64), 'train_accuracy': tensor(0.5100)}

# reset all metrics in collection
reset_metrics(train_metrics.values())
```

Be on the lookout for more metric collection code coming in future releases.

## Contributors

We're grateful for our community, which helps us improving torcheval by highlighting issues and contributing code. The following persons have contributed patches for this release: Rohit Alekar lindawangg Julia Reinspach jingchi-wang Ekta Sardana williamhufb @\andreasfloros Erika Lal samiwilf

Reviewed By: ananthsub

Differential Revision: D42737308

fbshipit-source-id: 4c9d72ce73a35636d7cd6421926a23a80250e267
@bobakfb bobakfb mentioned this pull request Jan 25, 2023
facebook-github-bot pushed a commit that referenced this pull request Jan 25, 2023
Summary:
Pull Request resolved: #124

# TorchEval Version 0.0.6

## Change Log

 - New metrics:
   - AUC
   - Binary, Multiclass, Multilabel AUPRC (also called Average Precision) #108 #109
   - Multilabel Precision Recall Curve #87
   - Recall at Fixed Precision #88 #91
   - Windowed Mean Square Error #72 #86
   - Blue Score #93 #95
   - Perplexity #90
   - Word Error Rate #97
   - Word Information Loss #111
   - Word Information Preserved #110
 - Features
   - Added Sync for Dictionaries of Metrics #98
   - Improved FLOPS counter #81
   - Improved Module Summary, added forward elapsed times #100 #103 #104 #105 #114
   - AUROC now supports weighted inputs #94
 - Other
   - Improved Documentation #80 #117 #121
   - Added Module Summary to Quickstart #113
   - Updates several unit tests #77 #96 #101 #73
   - Docs Automatically Add New Metrics #118
   - Several Aggregation Metrics now Support fp64 #116 #123

### [BETA] Sync Dictionaries of Metrics

We're looking forward to building tooling for metric collections. The first important feature towards this end is collective syncing of groups of metrics. In the example below, we show how easy it is to sync all your metrics at the same time with `sync_and_compute_collection`.

This method is not only for convenience, on the backend we only use one torch distributed sync collective for the entire group of metrics, meaning that the overhead from repeated network directives is maximally reduced.

```python
import torch
from torcheval.metrics import BinaryAUPRC, BinaryAUROC, BinaryAccuracy
from torcheval.metrics.toolkit import sync_and_compute_collection, reset_metrics

# Collections should be Dict[str, Metric]
train_metrics = {
    "train_auprc": BinaryAUPRC(),
    "train_auroc": BinaryAUROC(),
    "train_accuracy": BinaryAccuracy(),
}

# Hydrate metrics with some random data
preds = torch.rand(size=(100,))
targets = torch.randint(low=0, high=2, size=(100,))

for name, metric in train_metrics.items():
    metric.update(preds, targets)

# Sync the whole group with a single gather
print(sync_and_compute_collection(train_metrics))
>>> {'train_auprc': tensor(0.5913), 'train_auroc': tensor(0.5161, dtype=torch.float64), 'train_accuracy': tensor(0.5100)}

# reset all metrics in collection
reset_metrics(train_metrics.values())
```

Be on the lookout for more metric collection code coming in future releases.

## Contributors

We're grateful for our community, which helps us improving torcheval by highlighting issues and contributing code. The following persons have contributed patches for this release: Rohit Alekar lindawangg Julia Reinspach jingchi-wang Ekta Sardana williamhufb @\andreasfloros Erika Lal samiwilf

Reviewed By: ananthsub

Differential Revision: D42737308

fbshipit-source-id: dfd852345e1a9f3069ea33b056f5a60a3adde5aa
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