Hören und Lesen

Tritt ein in eine Welt voller Geschichten

  • Mehr als 600.000 Hörbücher und E-Book
  • Jederzeit kündbar
  • Exklusive Titel und Originals
  • komfortabler Kinder-Modus
Abonniere jetzt
se-device-image-1200x1200

Machine Learning System Design for Beginners: Building Machine Learning Systems. A Beginner's Guide to Design and Implementation

Dauer
3h 6m
Sprache
Englisch
Format
Kategorie

Sachbuch

Designing and building machine learning (ML) systems can seem daunting for beginners, but understanding the foundational steps and principles can simplify the process. At its core, ML system design involves a series of well-defined steps that guide the transformation of raw data into valuable insights through predictive models. Here’s a beginner’s guide to understanding and implementing these steps effectively.

The first step in designing an ML system is problem definition. Clearly defining the problem you aim to solve is crucial. This involves understanding the business context, identifying the goals, and determining the type of problem—whether it is classification, regression, clustering, or another ML task. A well-defined problem ensures that the subsequent steps are aligned with the desired outcomes.

Once the problem is defined, the next step is data collection and preprocessing. Data is the backbone of any ML system, and its quality significantly impacts the performance of the models. Collect data from various sources and ensure it is relevant to the problem. Data preprocessing involves cleaning the data to handle missing values, removing duplicates, and normalizing the data. It also includes feature engineering, which involves selecting, modifying, or creating new features that enhance the predictive power of the model.

Finally, the deployment and monitoring phase ensures that the ML model is operational and continues to perform well over time. Deploy the model to a production environment where it can make real-time predictions or be used in batch processing. Implement monitoring systems to track the model’s performance and detect any drift in data distribution that might require retraining the model. Regularly update the model with new data to maintain its accuracy and relevance.

© 2024 James Ferry (Hörbuch): 9798882443640

Erscheinungsdatum

Hörbuch: 9. Juli 2024

Wähle dein Abo-Modell

  • Über 600.000 Titel

  • Lade Titel herunter mit dem Offline Modus

  • Exklusive Titel und Storytel Originals

  • Sicher für Kinder (Kindermodus)

  • Einfach jederzeit kündbar

Am beliebtesten!

Unlimited

Für alle, die unbegrenzt hören und lesen möchten.

18.90 € /Monat
7 Tage kostenlos
  • 1 Konto

  • Unbegrenzter Zugriff

  • Jederzeit kündbar

  • Wechsel zu Basic jederzeit möglich

Jetzt ausprobieren

Basic

Für alle, die gelegentlich hören und lesen.

7.90 € /Monat
7 Tage kostenlos
  • 1 Konto

  • 20 Stunden/pro Monat

  • Jederzeit kündbar

  • Abo-Upgrade jederzeit möglich

Jetzt ausprobieren