Description for Master in AI
Introduction to Artificial Intelligence: Gain an understanding of the fundamental concepts of AI and investigate career prospects in the field.
Responsibilities of an AI Engineer: Comprehend the primary responsibilities and tasks associated with the position of an AI Engineer.
Developing and Deploying AI Models: Acquire the practical skills necessary to develop and deploy machine learning and deep learning models for business applications.
The Road to Success as an AI Engineer: Acquire the fundamental skills and knowledge required to achieve success as an AI Engineer and effectively meet project objectives.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 1
Offered by: On Udemy provided by Arun Singhal
Duration: 7h 55m
Schedule: Full Lifetime Access
Pricing for Master in AI
Use Cases for Master in AI
FAQs for Master in AI
Reviews for Master in AI
0 / 5
from 0 reviews
Ease of Use
Ease of Customization
Intuitive Interface
Value for Money
Support Team Responsiveness
Alternative Tools for Master in AI
The AI tool provides a comprehensive solution for managing AI vision intelligence, offering sophisticated computer vision systems, complete automation in horticulture robotics, and user administration features for seamless operation and control.
NovaceneAI streamlines the organization of unstructured text data with AI algorithms, offering dedicated cloud hosting, adaptability across sectors, and robust data privacy measures.
Coginiti's AI-Assisted SQL Development boosts SQL development efficiency with instant query assistance and optimization, alongside on-demand learning resources, while facing integration restrictions and an initial learning curve.
Posit offers a comprehensive platform with enterprise solutions, cloud applications, community resources, and deployment solutions to enhance productivity in data science teams.
Accubits provides tailored blockchain and AI solutions, offering expert technology consulting and enterprise solutions, recognized for industry leadership and innovation, catering to a diverse clientele but potentially overwhelming for small-scale enterprises.
Abacus.ai offers end-to-end MLOps capabilities and advanced AI methodologies, including neural networks, to provide precise models for enterprise data analysis needs, along with comprehensive monitoring and real-time machine learning features.
Nuclia is a cloud-based platform that creates AI-powered search engines, utilizing sophisticated algorithms for efficient data retrieval and offering features like NLP, automated data enrichment, and custom analytics.
Codesquire is an AI code writing tool that offers real-time code completion suggestions, a Chrome extension, and support for various coding tasks, making it ideal for analysts, engineers, and data scientists.
ChainGPT offers AI-driven solutions for blockchain industries, including intelligent contract creation, AI-generated news, NFT generation, blockchain analytics, AI trading, API & SDK access, ChainGPT Pad for early-stage AI initiatives, and a security extension for Web3 protection.
H2O AI, a leading AI cloud platform, offers intuitive interfaces, automated machine learning, distributed computation, industry-specific solutions, model management, cloud agnosticism, and security features for organizations to leverage AI capabilities across various sectors.
Featured Tools
Gain a comprehensive understanding of AI concepts and practical skills by utilizing Python and visual tools to apply them to real-world tasks such as natural language processing, computer vision, and machine learning.
With an emphasis on fairness measurement methods, the course teaches students how to use the Aequitas Tool to identify bias in machine learning models.
Gain a comprehensive understanding of Azure Cognitive Services and prepare for the Microsoft AI-100 exam by utilizing practical demonstrations and acquiring a comprehensive understanding of APIs and services.
Learn to identify suitable applications for machine learning, integrate human-centered design principles for privacy and ethical considerations in AI product development, and lead machine learning projects following data science methodology and industry standards.
Learn to use generative AI tools to improve data science workflows, enhance datasets, and refine machine learning models through practical projects.


