Advanced Data Handling and Reactive Programming Concepts

Coursera Courses ↗ · Coursera

Open Course on Coursera

Free to audit · Opens on Coursera

Advanced Data Handling and Reactive Programming Concepts

Coursera · Advanced ·🔍 RAG & Vector Search ·1mo ago
This Advanced Data Handling and Reactive Programming Concepts course equips you with advanced techniques to build, scale, and maintain Angular applications. You will focus on data management, reactive programming, performance optimization, security, accessibility, and internationalization. Learn to leverage RxJS for asynchronous operations, design dynamic forms with advanced validation, and manage application state effectively using NgRx. You’ll also gain hands-on expertise in optimizing app performance, securing applications, and ensuring inclusivity through accessibility and multilingual support. By the end of this course, you’ll be able to: - Apply RxJS and NgRx to manage complex data and create reactive Angular applications. - Design dynamic forms and evaluate advanced validation techniques to enhance user interaction. - Analyze application performance and implement security strategies to mitigate common vulnerabilities. - Build inclusive applications by implementing accessibility standards and internationalization features. Who should take this course: This course is ideal for front-end developers, web developers, software engineers focused on building complex and scalable Angular applications, and professionals aiming to deepen their expertise in advanced Angular development practices. Prerequisites: A fundamental understanding of Angular fundamentals, including components, services, modules, and basic data binding, is required to take this course. Enroll in this course to acquire the skills necessary for optimizing your Angular applications, making them high-performing, secure, and accessible.
Watch on Coursera ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related AI Lessons

When Should You Use Text2Cypher in a GraphRAG Pipeline
Learn when to use Text2Cypher in a GraphRAG pipeline to retrieve precise graph results from natural language questions
Dev.to AI
How to build a production RAG pipeline in Python (without a vector database)
Learn to build a production-ready RAG pipeline in Python without relying on a vector database, and understand the key considerations for a scalable and efficient implementation
Dev.to · Ayi NEDJIMI
Architecting Sub-150ms Hybrid RAG for Voice Agents: Combining pgvector, BM25, and Async FastAPI…
Learn how to architect a sub-150ms hybrid RAG for voice agents using pgvector, BM25, and Async FastAPI to serve large industrial catalogs
Medium · Python
Security Controls in Enterprise RAG: Keys, Audit Logs, and the Hierarchy That Prevents Role Elevation
Implement security controls in Enterprise RAG to prevent role elevation and ensure data integrity
Dev.to · Manjunath
Up next
Watch this before applying for jobs as a developer.
Tech With Tim
Watch →