RAR-files |
linkedin.learning.aws.machine.learning.building.an.expense.tracker.using.amazon.textract-xqzt.rar |
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56725AE0 |
linkedin.learning.aws.machine.learning.building.an.expense.tracker.using.amazon.textract-xqzt.r00 |
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Total size: |
92,330,071 |
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Archived
files |
01.01-machine_learning_for_optical_character_recognition.mkv
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10,922,441 |
3F9B5841 |
02.01-textract_concepts.mkv
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11,648,583 |
579CD6B6 |
02.02-aws_textract_overview.mkv
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5,358,348 |
CAC88809 |
02.03-expense_tracker_architecture.mkv
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6,576,502 |
AD0917D4 |
03.01-implementing_an_aws_blueprint_to_integrate_lambda_with_s3.mkv
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6,900,412 |
15885D90 |
03.02-using_s3_uploads_to_trigger_a_lambda_function.mkv
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4,544,499 |
16B56BAA |
03.03-integrating_textract_into_the_python_lambda.mkv
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4,065,088 |
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03.04-using_textract_in_python_to_process_an_image.mkv
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9,201,521 |
46611C1D |
04.01-parsing_textract_metadata_to_get_the_required_information.mkv
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4,974,483 |
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04.02-using_regular_expressions_to_find_the_desired_values.mkv
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3,866,979 |
03BFAC80 |
04.03-looking_for_keywords_within_the_extracted_text.mkv
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4,198,211 |
D8E66783 |
05.01-updating_json_file_with_the_current_receipt_total.mkv
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4,964,498 |
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05.02-using_s3_as_persistent_storage_for_receipt_details.mkv
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5,177,822 |
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05.03-validating_and_summarizing_several_executions_of_the_code.mkv
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4,966,795 |
16AB2019 |
06.01-next_steps.mkv
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4,836,811 |
4C7399EC |
Ex_Files_AWS_Textract.zip |
125,515 |
DFB53067 |
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Total size: |
92,328,508 |
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