The most sought-after professional in the market? Check out the advantages of being an AI professional and the main positions available. Learn how to become an Artificial Intelligence professional and earn up to R$35 per month
Everything seems to be in favor of AI (Artificial Intelligence) professionals, as they are the most sought-after professionals in the market. They rarely need to look for a job and are often targeted by recruiters. They receive salaries above the market average and can also choose where to work. In this article, we will highlight the main steps on how to become an AI professional.
Advantages of working as an AI professional
With the growing value of data for decision-making, knowing how to become an AI professional is crucial, as this is the most sought-after professional on the market, especially for companies that prioritize innovation and efficiency.
However, this is still a rare skill in the market. Few workers know how to effectively implement artificial intelligence in their roles.
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AI professionals are generally among the highest paid in the market. According to the Robert Half Salary Guide 2023, the salary for these professionals in Brazil can vary between R$7 and R$35. The AI field is constantly evolving and this generates several growth opportunities for professionals in the field.
AI professionals can advance their careers into leadership positions by specializing in subfields such as machine learning, natural language processing, or computer vision.
Another great attraction to being the most sought-after professional in the market is the flexibility of work. Many professionals have the option of working remotely, which allows for a better work-life balance. In addition, the digital nature of the work makes it easier to collaborate with international teams and participate in global projects.
How to become an AI professional in 2024?
To become an AI professional, it is recommended that the professional begin their journey through degrees in areas such as Computer Science, Software Engineering and Data Science. After completing the course, the professional can also enroll in a postgraduate course in AI, deepening their knowledge on the subject.
It is important to note that the technology market is constantly evolving. Graduates and specialized professionals can enroll in postgraduate studies in AI, deepening their knowledge on the subject. It is important to mention that the technology market is constantly evolving. Graduates and specialized professionals can participate in training to acquire new skills.
Developing practical projects also contributes to building a solid portfolio. This way, professionals can stand out in job searches and find the best career alternatives as the most sought-after professional in the market.
main positions
Artificial intelligence can be applied in different contexts and for different purposes. Consequently, the job market is divided into specific segments. Among the professions that work with AI, we can list:
Machine Learning Engineer
Machine learning engineers are the architects behind AI systems. They develop machine learning algorithms and models that enable systems to learn from data and improve over time.
Data Scientist
Data scientists are responsible for collecting, cleaning, analyzing, and interpreting data to help organizations make informed decisions. They are experts in extracting insights from large data sets and play a key role in building effective AI models.
Artificial Intelligence Analyst
An artificial intelligence analyst is a professional specialized in the production and development of AIs. Their activities include data collection, algorithm development, model training, system integration and application.