Artificial Intelligence (AI) and Machine Learning in Risk Assessment

by Quality Environment Safety Claim Listing

This course focus on the Artificial Intelligence (AI) and Machine Learning in Risk Assessment utilize advanced algorithms and data-driven tools to analyse workplace data, identify potential hazards, and predict safety risks.

S$400

Contact the Institutes

Fill this form

Advertisement

Quality Environment Safety Logo

img Duration

8 Hours

Course Details

This course focus on the Artificial Intelligence (AI) and Machine Learning in Risk Assessment utilize advanced algorithms and data-driven tools to analyse workplace data, identify potential hazards, and predict safety risks.

This approach enables targeted safety measures, improved safety performance, and proactive interventions. By leveraging AI and Machine Learning, organizations can optimize risk assessment processes for a safer work environment.

 

Course Content

  • Introduction to AI and machine learning: This section covers the basics of AI and machine learning, including how they work, their applications, and their benefits.

  • Risk assessment and management: This section covers the principles of risk assessment and management, including risk identification, analysis, and mitigation.

  • Data sources and collection: This section covers different data sources and collection methods used in risk assessment, including structured and unstructured data, data cleaning, and data preprocessing.

  • Feature engineering: This section covers the process of selecting and extracting the most relevant features from the collected data for use in risk assessment.

  • Machine learning algorithms: This section covers various machine learning algorithms used in risk assessment, including supervised and unsupervised learning, decision trees, logistic regression, and neural networks.

  • Model evaluation and validation: This section covers methods for evaluating and validating machine learning models used in risk assessment, including crossvalidation, ROC curves, and confusion matrices.

  • Real-world applications: This section covers real-world applications of AI and machine learning in risk assessment, including fraud detection, cybersecurity, and financial risk assessment.

 

Target Audience

This course is specially designed for:

  • WSH Professionals

  • Businesses & management

  • Government agencies

  • Researchers

  • Educators

 

Benefits

At the end of this course, participants will be able to:

  • Improved accuracy: AI and ML algorithms can analyze vast amounts of data quickly and accurately, reducing the chances of human error. This can lead to more accurate risk assessments and better decision-making.

  • Enhanced efficiency: AI and ML algorithms can automate time-consuming tasks such as data entry and analysis, freeing up time for risk assessment professionals to focus on more complex tasks.

  • Identification of new risks: AI and ML algorithms can analyze data from various sources, including social media and other unstructured data sources, to identify new risks that may have been previously overlooked.

  • Personalization: AI and ML algorithms can tailor risk assessments to individual needs and preferences, providing more personalized and effective training.

  • Real-time monitoring: AI and ML algorithms can monitor risk in real-time, providing instant alerts and insights to risk assessment professionals.

  • North-East Branch

    QE Safety Consultancy Pte. Ltd, 7030 Ang Mo Kio Avenue 5, #09-55, Northstar @ AMK, North-East

Check out more Machine Learning courses in Singapore

NTUC LearningHub Logo

The Machine Learning Pipeline On AWS

This course explores how to use the machine learning (ML) pipeline to solve a real business problem in a project-based learning environment. Students will learn about each phase of the pipeline from instructor presentations and demonstrations

by NTUC LearningHub [Claim Listing ]
  • Price
  • Start Date
  • Duration
Koenig-Solutions Logo

Fundamentals Of Machine Learning

The 55375AC: Fundamentals of Machine Learning certification provides validation for a comprehensive understanding of machine learning principles. It includes key areas such as algorithms, data models, statistics, data analysis, and prediction systems.

by Koenig-Solutions [Claim Listing ]
Temasek Polytechnic Logo

Machine Learning In Practice

This course covers the fundamentals of machine learning principles and practices, with a practical focus. You will be introduced to the concept of Supervised and Unsupervised machine learning with the help of Python libraries such as scikit-learn and pandas.

by Temasek Polytechnic [Claim Listing ]
Agilitics Cloud Transformation And Deployment Services Logo

Google Cloud Big Data & Machine Learning Fundamentals

This one-day instructor-led course introduces participants to the big data capabilities of Google Cloud Platform and showcases the ease, flexibility, and power of big data solutions on Google Cloud Platform.

by Agilitics Cloud Transformation And Deployment Services [Claim Listing ]
ITEL Learning Systems Logo

Data Science and Machine Learning (SF)

This 3-day instructor-led course provides you with the knowledge to understand the fundamentals of Data Science and Machine Learning, creating simple machine learning implementation in Cloud.

by ITEL Learning Systems [Claim Listing ]

© 2024 coursetakers.com All Rights Reserved. Terms and Conditions of use | Privacy Policy