Anomaly Detection with Local Outlier Factor and PyCaret โ€” LearnFlat

Anomaly Detection with Local Outlier Factor and PyCaret

Learn to identify data anomalies and outliers by building and evaluating Local Outlier Factor models using PyCaret and modern Python workflows.

โฑ 55 min ๐Ÿ“š 8 lezioni

Informazioni sul corso

In today's data-driven world, identifying unusual patterns, fraud, and system errors requires robust anomaly detection techniques. Local Outlier Factor (LOF) is a powerful density-based algorithm designed to pinpoint these hidden anomalies within complex datasets. This text-based course guides you through the process of setting up, training, and evaluating LOF models. You will transition from understanding foundational outlier concepts to implementing structured anomaly detection pipelines using PyCaret, a low-code machine learning library in Python. By the end of this course, you will be able to confidently prepare data, extract outliers, and interpret model results to make data-backed decisions. What you'll learn: 1. Understand the core mathematical concepts behind density-based anomaly detection and Local Outlier Factor. 2. Configure data preprocessing pipelines using PyCaret to clean and scale features for outlier analysis. 3. Build and train Local Outlier Factor models to assign anomaly scores to complex datasets. 4. Evaluate model performance using modern metrics and classification techniques. 5. Deploy anomaly detection pipelines to flag and extract outlier data points in real-world scenarios. 6. Apply clean coding practices, including Python type hints and structured data manipulation. The course begins with essential terminology, exploring how density-based algorithms differ from traditional distance-based methods. You will then progress step-by-step through practical written tutorials, executing PyCaret commands and analyzing data outputs. This course is designed for aspiring data analysts, beginner data scientists, and Python developers who want to learn anomaly detection without complex prerequisites. Start reading today to master density-based anomaly detection and uncover critical insights in your data.

Cosa otterrai

  • ๐Ÿ“œ Certificato di completamento
    Aggiungilo al tuo profilo LinkedIn
  • ๐Ÿ’ฌ Tutor AI personale
    Bloccato su una lezione? Chiedi al tuo tutor integrato qualsiasi cosa, in qualsiasi momento.
  • โ™พ๏ธ Accesso a vita
    Torna quando vuoi, senza scadenza
  • ๐Ÿ“ฑ Telefono o computer
    Funziona ovunque, su qualsiasi dispositivo
  • ๐Ÿ’ธ Rimborso entro 14 giorni
    Senza domande
  • โšก Breve e mirato
    55 min di contenuto pratico

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Cosa serve per seguire questo corso? +

Basta un telefono o un computer con internet. Niente installazioni, nessun hardware speciale.

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Con carta via Stripe. Non conserviamo i dati della carta โ€” Stripe li gestisce in sicurezza.

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Sรฌ โ€” rimborso completo entro 14 giorni, senza domande.

Per quanto tempo avrรฒ accesso? +

Per sempre. Una volta acquistato, il corso รจ tuo e puoi rivederlo quando vuoi.

Riceverรฒ un certificato? +

Sรฌ. Al completamento riceverai un certificato da aggiungere al tuo profilo LinkedIn.

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