IBM AI Developer Professional Certificate
Begin your professional journey in the field of artificial intelligence. Develop job-ready skills in AI technologies, generative AI models, and programming, and acquire the ability to develop AI-powered chatbots and applications in a mere six months.
Description for IBM AI Developer Professional Certificate
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 22
Offered by: On Coursera provided by IBM
Duration: 6 months Approx. 4 hours a week
Schedule: Flexible
Pricing for IBM AI Developer Professional Certificate
Use Cases for IBM AI Developer Professional Certificate
FAQs for IBM AI Developer Professional Certificate
Reviews for IBM AI Developer Professional Certificate
0 / 5
from 0 reviews
Ease of Use
Ease of Customization
Intuitive Interface
Value for Money
Support Team Responsiveness
Alternative Tools for IBM AI Developer Professional Certificate
Ingest AI simplifies the creation of generative AI applications for organizations, offering swift deployment, secure environments, cost reduction, and scalability, despite potential challenges such as complexity for novices and dependence on the platform.
Google Gemini offers a sophisticated AI model with multimodal capabilities, leading performance benchmarks, and optimization for various applications, aiming to empower users with advanced AI technology while posing challenges in complexity and availability for some users.
Chatbase offers a sophisticated platform to create customized chatbots for websites, optimizing user engagement and customer support through robust AI models. Despite its effectiveness, the tool's performance may vary based on data quality and user proficiency in customization and optimization.
Vondy is an AI powerhouse designed to transform engagement with AI technology, offering custom solutions, real-time performance, and user-centric design, though novices may face a learning curve and resource-intensive functionalities.
Wonderchat offers rapid creation of AI-driven chatbots, enhancing customer support and engagement, though users may face a learning curve and limited trial period.
Generative AI Technology streamlines information retrieval through a conversational interface, offering direct answers and optimized browsing, yet it relies on modern browsers and presents a learning curve for some users.
Monica, an advanced Chrome extension powered by AI models like GPT-4, enhances productivity across tasks online with features including an AI chatbot, quick actions, diverse content tools, multilingual assistance, and PDF processing, although it has usage limitations for free users and is restricted to Chrome browsers.
The AI collaboration tool fosters teamwork and productivity by enabling prompt annotation, chat collaboration, and efficient prompt management, though it has limitations in AI integration and pricing transparency.
Clevis simplifies AI application development without coding, offering templates, revenue opportunities, and customization options, though it has limited AI model support and requires users to manage a learning curve and credit-based system carefully.
PromptFolder streamlines AI prompt management for users, offering categorization, integration with ChatGPT, advanced editing, and access to trending prompts, enhancing efficiency and collaboration.
Featured Tools
The training equips students to use state-of-the-art AI frameworks and technologies to create sophisticated, interactive Q&A chatbots.
Explore the transformative impact of generative AI on businesses and careers, and its potential to enhance productivity across various sectors.
Begin your professional journey as an AI Product Manager. Develop generative AI and product management skills that are in high demand to be job-ready in six months or less.
Utilizing Vertex AI Studio for model management, integrating with Gemini multimodal capabilities, employing effective prompts, and optimizing models through tuning methods are all topics addressed on the course page.
Learn to describe and implement various machine learning algorithms in Python, including classification and regression techniques, and evaluate their performance using appropriate metrics.