Neural Networks with Keras: Practical Deep Learning in Python and R

Master the fundamentals of artificial neural networks and build predictive models for business applications using Keras and TensorFlow in both Python and R.

4.5 (1,027) ⏱ 1 godz 21 min 📚 8 lekcji 🎧 Wersja audio

O tym kursie

Neural networks power the world's most sophisticated AI systems, but you do not need a advanced degree in mathematics to start building them. This written course bridges the gap between deep learning theory and practical implementation, teaching you how to solve real-world prediction problems. You will transition from understanding core neural network concepts to confidently programming, training, and evaluating models. By implementing solutions in both Python and R using Keras and TensorFlow, you will gain a versatile skill set highly valued in data science and business analytics. What you'll learn: - Understand the foundational architecture of artificial neural networks, including neurons, layers, and activation functions. - Master the mechanics of model training, including forward propagation, backpropagation, and gradient descent optimization. - Build and compile predictive deep learning models using Keras and TensorFlow in both Python and R. - Evaluate model performance using key metrics and address common training issues like overfitting. - Apply modern workflows, including setting up clean virtual environments and tracking training metrics for basic model management. - Translate business problems into structured data tasks suitable for neural network classification and regression. The curriculum starts with fundamental terminology and neural network theory before guiding you through step-by-step code implementations. You will read clear explanations of the math-light theory, examine parallel code snippets in Python and R, and learn how to interpret model results for business decision-making. This course is designed for aspiring data scientists, business analysts, and students who want a practical entry point into deep learning. No prior experience with neural networks is required, though a basic familiarity with Python or R programming is helpful. Begin reading today to master the core engine of modern artificial intelligence.

Co otrzymasz

  • 📜 Certyfikat ukończenia
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  • 📱 Telefon lub komputer
    Działa wszędzie, na każdym urządzeniu
  • 💸 Zwrot w 30 dni
    Bez pytań
  • Krótko i konkretnie
    1 godz 21 min praktycznej treści

Recenzje (4)

Sofía González CL Zweryfikowany kursant
★ 4 · 2025-12-10T16:11:53+00:00

Good introduction. I appreciated the clear steps, although some of the later modules could have used more examples.

Ibrahim Mohammed ET
★ 3 · 2025-11-10T04:27:53+00:00

Hmm, I'm not sure this is for absolute beginners. It assumes a bit of prior knowledge that wasn't explicitly taught. Some examples were confusing.

Valeria Torres EC
★ 5 · 2025-04-25T00:56:53+00:00

This course exceeded my expectations. The real-world applications discussed are incredibly useful. Great job!

أحمد العلي JO Zweryfikowany kursant
★ 5 · 2024-12-29T15:43:53+00:00

Brilliant course! The flow of information was perfect, and the examples really solidified the concepts. Loved it!

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Najczęstsze pytania

Czego potrzebuję, by wziąć udział w tym kursie? +

Wystarczy telefon lub komputer z internetem. Bez instalacji i specjalnego sprzętu.

Jak zapłacić? +

Kartą przez Stripe lub kryptowalutą. Nie przechowujemy danych karty — robi to bezpiecznie Stripe.

Czy mogę otrzymać zwrot? +

Tak — pełen zwrot w 30 dni, bez pytań.

Jak długo będę mieć dostęp? +

Na zawsze. Po zakupie kurs jest twój — wracaj, kiedy chcesz.

Czy dostanę certyfikat? +

Tak. Po ukończeniu otrzymasz certyfikat, który możesz dodać do profilu LinkedIn.

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