This course teaches advanced techniques in Natural Language Processing (NLP) using spaCy and spaCy-LLM. You’ll learn how to integrate LLMs into your NLP workflows, creating custom components and models.

Genießen Sie unbegrenztes Wachstum mit einem Jahr Coursera Plus für 199 $ (regulär 399 $). Jetzt sparen.

Empfohlene Erfahrung
Was Sie lernen werden
Build custom NLP components and integrate them into spaCy workflows
Fine-tune transformer models for specialized NLP tasks
Develop end-to-end NLP workflows using spaCy-LLM and FastAPI
Apply advanced NLP techniques for semantic extraction and coreference resolution
Kompetenzen, die Sie erwerben
- Kategorie: Model Evaluation
- Kategorie: Workflow Management
- Kategorie: Data Processing
- Kategorie: Application Deployment
- Kategorie: Model Deployment
- Kategorie: Artificial Intelligence and Machine Learning (AI/ML)
- Kategorie: Large Language Modeling
- Kategorie: Software Installation
- Kategorie: Natural Language Processing
- Kategorie: Python Programming
- Kategorie: Embeddings
- Kategorie: Application Programming Interface (API)
- Kategorie: Automation
- Kategorie: Transfer Learning
Wichtige Details

Zu Ihrem LinkedIn-Profil hinzufügen
Dezember 2025
11 Aufgaben
Erfahren Sie, wie Mitarbeiter führender Unternehmen gefragte Kompetenzen erwerben.

In diesem Kurs gibt es 11 Module
In this section, we install spaCy and its language models, configure the environment, employ displaCy to visualize entities and dependencies, and assess spaCy's suitability for production-level Python NLP workflows.
Das ist alles enthalten
2 Videos2 Lektüren1 Aufgabe
In this section, we build a spaCy NLP pipeline, customize the Tokenizer, segment sentences, apply lemmatization, and explore Doc, Span, and Token containers to strengthen everyday language processing skills.
Das ist alles enthalten
1 Video4 Lektüren1 Aufgabe
In this section, we walk through spaCy workflows for Part-of-Speech tagging, dependency parsing, and Named Entity Recognition, then merge or split tokens to supply clean linguistic features to applications.
Das ist alles enthalten
1 Video3 Lektüren1 Aufgabe
In this section, we design token and phrase patterns using spaCy's Matcher, PhraseMatcher, and SpanRuler, employ POS, morphology, and regex operators, then integrate rules with NER to extract domain-specific entities.
Das ist alles enthalten
1 Video5 Lektüren1 Aufgabe
In this section, we build SpanRuler rules for LOCATION extraction, craft DependencyMatcher intent patterns, and assemble a custom spaCy pipeline leveraging Language.pipe() to efficiently process large ATIS datasets.
Das ist alles enthalten
1 Video4 Lektüren1 Aufgabe
In this section, we integrate transformer-based transfer learning into spaCy, examine BERT and RoBERTa architectures, and prepare config files to train an accurate TextCategorizer for production NLP pipelines.
Das ist alles enthalten
1 Video6 Lektüren1 Aufgabe
In this section, we integrate spaCy and LLM components, build a summarization pipe, design Jinja-based prompts for context-aware extraction, and embed these custom tasks to enhance NLP performance.
Das ist alles enthalten
1 Video3 Lektüren1 Aufgabe
In this section, we assess spaCy's default NER on domain texts, annotate entities using Prodigy and nertk, then configure, train and integrate multiple custom NER components for accurate, specialized pipelines.
Das ist alles enthalten
1 Video2 Lektüren1 Aufgabe
In this section, we clone a Weasel spaCy template, customize it for varied NLP tasks, then integrate DVC Studio to version data, track experiments, and enable reproducible production pipelines.
Das ist alles enthalten
1 Video4 Lektüren1 Aufgabe
In this section, we configure spaCy's pipeline to train an EntityLinker, craft high-quality annotated corpora, and evaluate linking accuracy with a custom reader for knowledge-base integration.
Das ist alles enthalten
1 Video2 Lektüren1 Aufgabe
In this section, we connect spaCy models to Streamlit and FastAPI, building an interactive NER web app and a type-hinted REST API that serves entity extraction for production use.
Das ist alles enthalten
1 Video2 Lektüren1 Aufgabe
Dozent

von
Mehr von Software Development entdecken
Status: Kostenloser TestzeitraumBoard Infinity
Status: Kostenloser Testzeitraum
Status: Kostenloser Testzeitraum
Warum entscheiden sich Menschen für Coursera für ihre Karriere?




Häufig gestellte Fragen
Yes, you can preview the first video and view the syllabus before you enroll. You must purchase the course to access content not included in the preview.
If you decide to enroll in the course before the session start date, you will have access to all of the lecture videos and readings for the course. You’ll be able to submit assignments once the session starts.
Once you enroll and your session begins, you will have access to all videos and other resources, including reading items and the course discussion forum. You’ll be able to view and submit practice assessments, and complete required graded assignments to earn a grade and a Course Certificate.
Weitere Fragen
Finanzielle Unterstützung verfügbar,





