Description for Applied GitHub Platform
Activating and Deactivating GitHub Copilot for Specific Files: Acquire knowledge on how to activate and deactivate GitHub Copilot for particular files, thereby tailoring its functionality to suit your development environment.
Configuring Development Environments with GitHub Codespaces: Acquire expertise in establishing and configuring development environments utilizing GitHub Codespaces to facilitate efficient coding practices.
Managing the Lifecycle of GitHub Codespaces: Comprehend the methodologies for proficiently overseeing the lifecycle of GitHub Codespaces, thereby assuring optimal resource utilization and effective project management.
Applying Slash Commands and Agents in GitHub Copilot: Acquire proficiency in utilizing slash commands within GitHub Copilot and harness the capabilities of agents for designated tasks to enhance productivity and optimize code generation.
Level: Beginner
Certification Degree: yes
Languages the Course is Available: 1
Offered by: On edX provided by AI
Duration: 3�6 hours per week 4 weeks (approximately)
Schedule: Flexible
Pricing for Applied GitHub Platform
Use Cases for Applied GitHub Platform
FAQs for Applied GitHub Platform
Reviews for Applied GitHub Platform
0 / 5
from 0 reviews
Ease of Use
Ease of Customization
Intuitive Interface
Value for Money
Support Team Responsiveness
Alternative Tools for Applied GitHub Platform
The AI tool is an open-source platform that simplifies AI agent development with features like Forge Template and Benchmarking Tool, enhancing accessibility for users of all technical levels.
The AI tool enables users to create interactive voice applications effortlessly through a visual interface, but may have limitations in complexity and customization compared to coding-based approaches.
The AI platform offers exceptional integration with OpenAI, personalized user dashboard, versatile SDKs, and a thriving marketplace for AI components, while also providing cloud-based accessibility and community support, with potential drawbacks including a learning curve and dependence on OpenAI API.
Plexo is an open-source project management tool with customizable features, integrated messaging, sophisticated reporting, and productivity optimization capabilities.
GPTBots offers AI-driven chatbot tools with robust NLP, seamless integration, customization options, and extensive analytics, enhancing user engagement and providing scalability, albeit with requirements for technical expertise and potential integration complexity.
Instill AI enhances AI application development with its no-code/low-code platform, versatile data pipeline, and pre-built components, offering accelerated development, adaptability, community support, while facing challenges like initial learning and platform dependence.
Pluto, powered by AI, offers precise investment insights and real-time market data, featuring automated trading strategies, tailored automations, educational seminars, and conversational AI with Plato, catering to investors of all levels.
Superflows integrates an AI copilot into software products, offering in-app support via conversational messaging to streamline user interactions, enhance productivity, and improve overall user experience, albeit requiring thorough API documentation and initial setup investment.
OSS Insight leverages AI-generated SQL to extract insights from GitHub event data, catering to various user roles while offering real-time updates and interactive visualization, yet requiring proficiency adjustment for novice users and being constrained to public GitHub data.
ReliableGPT enhances system dependability by integrating with OpenAI's GPT models, ensuring uninterrupted operations for critical applications while offering advanced error handling and open-source community support.
Featured Tools
Learn to clean, prepare, analyze, and manipulate data with Python, utilize libraries for exploratory data analysis, and develop regression models for prediction and decision-making using scikit-learn.
Learn the fundamentals of artificial intelligence (AI) and machine learning. Formulate a deployment strategy that capitalizes on the most advanced technologies to integrate AI, ML, and Big Data into your organization.
Using the complete machine learning pipeline in computer vision, this course teaches students how to use MATLAB for object detection and classification in images.
This learning path provides a thorough overview of generative AI. This specialization delves into the ethical considerations that are essential for the responsible development and deployment of AI, as well as the foundations of large language models (LLMs) and their diverse applications.
A comprehensive course on machine learning using Python, covering deep learning, GANs, image processing, various algorithms, and industrial applications, accessible to all skill levels.