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Anomaly Detection in Time Series #987

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merged 12 commits into from
Nov 10, 2024
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alo7lika
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Pull Request for DL-Simplified 💡

Issue Title: Anomaly Detection in Time Series

  • Info about the related issue (Aim of the project): To develop an effective model for detecting anomalies in time series data, leveraging LSTM networks for improved accuracy and reliability.
  • Name: Alolika Bhowmik
  • GitHub ID: alolikabhowmik
  • Email ID: alolikabhowmik72@gmail.com
  • Identify yourself: GSSoC Contributor

Closes: #967

Describe the add-ons or changes you've made 📃

I have added a model for anomaly detection in time series using LSTM networks. The model uses a synthetic dataset to identify and classify anomalies effectively, and I have also implemented additional models like Facebook Prophet and Isolation Forest for comparison.

Type of change ☑️

What sort of change have you made:

  • New feature (non-breaking change which adds functionality)
  • This change requires a documentation update

How Has This Been Tested? ⚙️

The models have been tested using accuracy scores and classification metrics on the synthetic dataset. I also validated results through exploratory data analysis (EDA) and cross-checked predictions for anomaly classification.

Checklist: ☑️

  • My code follows the guidelines of this project.
  • I have performed a self-review of my own code.
  • I have commented my code, particularly wherever it was hard to understand.
  • I have made corresponding changes to the documentation.
  • My changes generate no new warnings.
  • I have added things that prove my fix is effective or that my feature works.
  • Any dependent changes have been merged and published in downstream modules.

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Our team will soon review your PR. Thanks @alo7lika :)

@alo7lika
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@abhisheks008 ASSIGN THE LABEL " GSSOC-EXT" AND LEVEL ON THE PR AS WELL AS ON THE ISSUE PAGE AND REVIEW IT

@alo7lika
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@abhisheks008 ASSIGN THE LABEL " GSSOC-EXT" AND LEVEL ON THE PR AS WELL AS ON THE ISSUE PAGE AND REVIEW IT

Also assign the task to me , you haven't assigned it

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@abhisheks008 abhisheks008 left a comment

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Approved and level upgraded.
@alo7lika

@abhisheks008 abhisheks008 added Status: Approved Approved PR by the PA. level 3 Level 3 for GSSOC gssoc-ext labels Nov 10, 2024
@abhisheks008 abhisheks008 merged commit a1d16c0 into abhisheks008:main Nov 10, 2024
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Anomaly Detection in Time Series
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