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Add README.md configuration

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@@ -1,3 +1,13 @@
 
 
 
 
 
 
 
 
 
 
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  # SummVis
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  SummVis is an open-source visualization tool that supports fine-grained analysis of summarization models, data, and evaluation
@@ -95,14 +105,7 @@ is omitted for copyright reasons). The `preprocessing.py` script can be used for
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  #### Deanonymize 10 examples:
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  ```shell
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- python preprocessing.py \
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- --deanonymize \
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- --dataset_rg preprocessing/cnn_dailymail_1000.validation.anonymized \
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- --dataset cnn_dailymail \
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- --version 3.0.0 \
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- --split validation \
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- --processed_dataset_path data/10:cnn_dailymail_1000.validation \
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- --n_samples 10
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  ```
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  This will take either a few seconds or a few minutes depending on whether you've previously loaded CNN/DailyMail from
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  the Datasets library.
@@ -149,48 +152,22 @@ Set the `--n_samples` argument and name the `--processed_dataset_path` output fi
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  #### Example: Deanonymize 100 examples from CNN / Daily Mail:
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  ```shell
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- python preprocessing.py \
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- --deanonymize \
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- --dataset_rg preprocessing/cnn_dailymail_1000.validation.anonymized \
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- --dataset cnn_dailymail \
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- --version 3.0.0 \
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- --split validation \
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- --processed_dataset_path data/100:cnn_dailymail_1000.validation \
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- --n_samples 100
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  ```
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  #### Example: Deanonymize all pre-loaded examples from CNN / Daily Mail (1000 examples dataset):
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  ```shell
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- python preprocessing.py \
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- --deanonymize \
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- --dataset_rg preprocessing/cnn_dailymail_1000.validation.anonymized \
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- --dataset cnn_dailymail \
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- --version 3.0.0 \
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- --split validation \
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- --processed_dataset_path data/full:cnn_dailymail_1000.validation \
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- --n_samples 1000
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  ```
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  #### Example: Deanonymize all pre-loaded examples from CNN / Daily Mail (full dataset):
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  ```shell
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- python preprocessing.py \
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- --deanonymize \
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- --dataset_rg preprocessing/cnn_dailymail.validation.anonymized \
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- --dataset cnn_dailymail \
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- --version 3.0.0 \
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- --split validation \
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- --processed_dataset_path data/full:cnn_dailymail.validation
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  ```
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  #### Example: Deanonymize all pre-loaded examples from XSum (1000 examples dataset):
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  ```shell
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- python preprocessing.py \
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- --deanonymize \
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- --dataset_rg preprocessing/xsum_1000.validation.anonymized \
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- --dataset xsum \
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- --split validation \
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- --processed_dataset_path data/full:xsum_1000.validation \
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- --n_samples 1000
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  ```
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  ### 3. Run SummVis
@@ -244,10 +221,7 @@ You may run `preprocessing.py` to precompute all data required in the interface
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  1. Run preprocessing script to generate cache file
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  ```shell
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- python preprocessing.py \
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- --workflow \
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- --dataset_jsonl path/to/my_dataset.jsonl \
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- --processed_dataset_path path/to/my_cache_file
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  ```
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  You may wish to first try it with a subset of your data by adding the following argument: `--n_samples <number_of_samples>`.
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@@ -278,20 +252,12 @@ standardized format with columns for `document` and `summary:reference`.
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  ##### Example: Save CNN / Daily Mail validation split to disk as a jsonl file.
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  ```shell
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- python preprocessing.py \
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- --standardize \
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- --dataset cnn_dailymail \
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- --version 3.0.0 \
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- --split validation \
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- --save_jsonl_path preprocessing/cnn_dailymail.validation.jsonl
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  ```
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  ##### Example: Load custom `my_dataset.jsonl`, standardize, and save.
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  ```shell
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- python preprocessing.py \
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- --standardize \
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- --dataset_jsonl path/to/my_dataset.jsonl \
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- --save_jsonl_path preprocessing/my_dataset.jsonl
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  ```
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  Expected format of `my_dataset.jsonl`:
@@ -313,17 +279,7 @@ You may also generate your own predictions using this [this script](generation.p
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  ##### Example: Add 6 prediction files for PEGASUS and BART to the dataset.
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  ```shell
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- python preprocessing.py \
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- --join_predictions \
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- --dataset_jsonl preprocessing/cnn_dailymail.validation.jsonl \
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- --prediction_jsonls \
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- predictions/bart-cnndm.cnndm.validation.results.anonymized \
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- predictions/bart-xsum.cnndm.validation.results.anonymized \
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- predictions/pegasus-cnndm.cnndm.validation.results.anonymized \
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- predictions/pegasus-multinews.cnndm.validation.results.anonymized \
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- predictions/pegasus-newsroom.cnndm.validation.results.anonymized \
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- predictions/pegasus-xsum.cnndm.validation.results.anonymized \
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- --save_jsonl_path preprocessing/cnn_dailymail.validation.jsonl
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  ```
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  #### 3. Run the preprocessing workflow and save the dataset.
@@ -333,19 +289,12 @@ and stores the processed dataset back to disk.
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  ##### Example: Autorun with default settings on a few examples to try it.
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  ```shell
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- python preprocessing.py \
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- --workflow \
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- --dataset_jsonl preprocessing/cnn_dailymail.validation.jsonl \
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- --processed_dataset_path data/cnn_dailymail.validation \
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- --try_it
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  ```
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343
  ##### Example: Autorun with default settings on all examples.
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  ```shell
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- python preprocessing.py \
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- --workflow \
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- --dataset_jsonl preprocessing/cnn_dailymail.validation.jsonl \
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- --processed_dataset_path data/cnn_dailymail
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  ```
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+ ---
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+ title: Summvis
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+ emoji: πŸ“š
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+ colorFrom: yellow
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+ colorTo: green
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+ sdk: streamlit
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+ app_file: app.py
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+ pinned: false
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+ ---
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+
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  # SummVis
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13
  SummVis is an open-source visualization tool that supports fine-grained analysis of summarization models, data, and evaluation
105
 
106
  #### Deanonymize 10 examples:
107
  ```shell
108
+ python preprocessing.py \\n--deanonymize \\n--dataset_rg preprocessing/cnn_dailymail_1000.validation.anonymized \\n--dataset cnn_dailymail \\n--version 3.0.0 \\n--split validation \\n--processed_dataset_path data/10:cnn_dailymail_1000.validation \\n--n_samples 10
 
 
 
 
 
 
 
109
  ```
110
  This will take either a few seconds or a few minutes depending on whether you've previously loaded CNN/DailyMail from
111
  the Datasets library.
152
 
153
  #### Example: Deanonymize 100 examples from CNN / Daily Mail:
154
  ```shell
155
+ python preprocessing.py \\n--deanonymize \\n--dataset_rg preprocessing/cnn_dailymail_1000.validation.anonymized \\n--dataset cnn_dailymail \\n--version 3.0.0 \\n--split validation \\n--processed_dataset_path data/100:cnn_dailymail_1000.validation \\n--n_samples 100
 
 
 
 
 
 
 
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  ```
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158
  #### Example: Deanonymize all pre-loaded examples from CNN / Daily Mail (1000 examples dataset):
159
  ```shell
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+ python preprocessing.py \\n--deanonymize \\n--dataset_rg preprocessing/cnn_dailymail_1000.validation.anonymized \\n--dataset cnn_dailymail \\n--version 3.0.0 \\n--split validation \\n--processed_dataset_path data/full:cnn_dailymail_1000.validation \\n--n_samples 1000
 
 
 
 
 
 
 
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  ```
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  #### Example: Deanonymize all pre-loaded examples from CNN / Daily Mail (full dataset):
164
  ```shell
165
+ python preprocessing.py \\n--deanonymize \\n--dataset_rg preprocessing/cnn_dailymail.validation.anonymized \\n--dataset cnn_dailymail \\n--version 3.0.0 \\n--split validation \\n--processed_dataset_path data/full:cnn_dailymail.validation
 
 
 
 
 
 
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  ```
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  #### Example: Deanonymize all pre-loaded examples from XSum (1000 examples dataset):
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  ```shell
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+ python preprocessing.py \\n--deanonymize \\n--dataset_rg preprocessing/xsum_1000.validation.anonymized \\n--dataset xsum \\n--split validation \\n--processed_dataset_path data/full:xsum_1000.validation \\n--n_samples 1000
 
 
 
 
 
 
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  ```
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  ### 3. Run SummVis
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222
  1. Run preprocessing script to generate cache file
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  ```shell
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+ python preprocessing.py \\n --workflow \\n --dataset_jsonl path/to/my_dataset.jsonl \\n --processed_dataset_path path/to/my_cache_file
 
 
 
225
  ```
226
  You may wish to first try it with a subset of your data by adding the following argument: `--n_samples <number_of_samples>`.
227
 
252
 
253
  ##### Example: Save CNN / Daily Mail validation split to disk as a jsonl file.
254
  ```shell
255
+ python preprocessing.py \\n--standardize \\n--dataset cnn_dailymail \\n--version 3.0.0 \\n--split validation \\n--save_jsonl_path preprocessing/cnn_dailymail.validation.jsonl
 
 
 
 
 
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  ```
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258
  ##### Example: Load custom `my_dataset.jsonl`, standardize, and save.
259
  ```shell
260
+ python preprocessing.py \\n--standardize \\n--dataset_jsonl path/to/my_dataset.jsonl \\n--save_jsonl_path preprocessing/my_dataset.jsonl
 
 
 
261
  ```
262
 
263
  Expected format of `my_dataset.jsonl`:
279
 
280
  ##### Example: Add 6 prediction files for PEGASUS and BART to the dataset.
281
  ```shell
282
+ python preprocessing.py \\n--join_predictions \\n--dataset_jsonl preprocessing/cnn_dailymail.validation.jsonl \\n--prediction_jsonls \\npredictions/bart-cnndm.cnndm.validation.results.anonymized \\npredictions/bart-xsum.cnndm.validation.results.anonymized \\npredictions/pegasus-cnndm.cnndm.validation.results.anonymized \\npredictions/pegasus-multinews.cnndm.validation.results.anonymized \\npredictions/pegasus-newsroom.cnndm.validation.results.anonymized \\npredictions/pegasus-xsum.cnndm.validation.results.anonymized \\n--save_jsonl_path preprocessing/cnn_dailymail.validation.jsonl
 
 
 
 
 
 
 
 
 
 
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  ```
284
 
285
  #### 3. Run the preprocessing workflow and save the dataset.
289
 
290
  ##### Example: Autorun with default settings on a few examples to try it.
291
  ```shell
292
+ python preprocessing.py \\n--workflow \\n--dataset_jsonl preprocessing/cnn_dailymail.validation.jsonl \\n--processed_dataset_path data/cnn_dailymail.validation \\n--try_it
 
 
 
 
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  ```
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295
  ##### Example: Autorun with default settings on all examples.
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  ```shell
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+ python preprocessing.py \\n--workflow \\n--dataset_jsonl preprocessing/cnn_dailymail.validation.jsonl \\n--processed_dataset_path data/cnn_dailymail
 
 
 
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  ```
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