Deep learning has revolutionized the field of natural language processing and led to many state-of-the-art results. This course introduces students to neural network models and training algorithms frequently used in natural language processing. At the end of this course, learners will be able to explain and implement feedforward networks, recurrent neural networks, and transformers. They will also have an understanding of transfer learning and the inner workings of large language models.

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Empfohlene Erfahrung
Was Sie lernen werden
Define feedforward networks, recurrent neural networks, attention, and transformers.
Implement and train feedforward networks, recurrent neural networks, attention, and transformers.
Describe the idea behind transfer learning and frequently used transfer learning algorithms.
Design and implement their own neural network architectures for natural language processing tasks.
Wichtige Details

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März 2025
16 Aufgaben
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In diesem Kurs gibt es 4 Module
This first week introduces the fundamental concepts of feedforward and recurrent neural networks (RNNs), focusing on their architectures, mathematical foundations, and applications in natural language processing (NLP). We'll will begin with an exploration of feedforward networks and their role in sentence embeddings and sentiment analysis. We then progresses to RNNs, covering sequence modeling techniques such as LSTMs, GRUs, and bidirectional RNNs, along with their implementation in Python. Finally, you will examine training techniques, gaining hands-on experience in optimizing neural language models.
Das ist alles enthalten
15 Videos5 Lektüren4 Aufgaben1 Programmieraufgabe1 Unbewertetes Labor
This week we'll explore sequence-to-sequence models in natural language processing (NLP), beginning with recurrent neural network (RNN)-based architectures and the introduction of attention mechanisms for improved alignment in tasks like machine translation. The module also covers best practices for training neural networks, including regularization, optimization strategies, and efficient model training. At the end of the week, you will gain practical experience in implementing and training sequence-to-sequence models.
Das ist alles enthalten
10 Videos1 Lektüre4 Aufgaben1 Programmieraufgabe
This week explores transfer learning techniques in NLP, focusing on pretraining, finetuning, and multilingual models. You will first examine the role of pretrained language models like GPT, GPT-2, and BERT, and their challenges. We then explore multitask training and data augmentation, highlighting strategies like parameter sharing and loss weighting to improve model generalization across tasks. Finally, you will dive into crosslingual transfer learning, exploring methods like translate-train vs. translate-test, as well as zero-shot, one-shot, and few-shot learning for multilingual NLP.
Das ist alles enthalten
17 Videos4 Aufgaben1 Programmieraufgabe
This final week introduces large language models (LLMs) and how they can be effectively used through techniques like prompt engineering, in-context learning, and parameter-efficient finetuning. You will explore language-and-vision models, understanding how multimodal architectures extend beyond text to integrate visual and other data modalities. We will also examine non-functional properties of LLMs, including challenges such as hallucinations, fairness, resource efficiency, privacy, and interpretability.
Das ist alles enthalten
12 Videos4 Aufgaben1 Programmieraufgabe
Dozent

Empfohlen, wenn Sie sich für Algorithms interessieren
University of Colorado Boulder
DeepLearning.AI
University of Colorado Boulder
University of Colorado Boulder
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Dieses Kurs ist Teil des/der folgenden Studiengangs/Studiengänge, die von University of Colorado Boulderangeboten werden. Wenn Sie zugelassen werden und sich immatrikulieren, können Ihre abgeschlossenen Kurse auf Ihren Studienabschluss angerechnet werden und Ihre Fortschritte können mit Ihnen übertragen werden.¹
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