The world is moving in the direction of new technology. New AI and machine learning technologies have a high rate of adoption. Artificial intelligence (AI) has the potential to deliver some of the most important and transformative inventions of our century.
Self-driving cars, robot help, and digital disease diagnoses are all products of the new AI revolution, and they will change the way we live and work. And, with the need for trained engineers having more than doubled in recent years, individuals who want to be at the forefront of AI research and development have a plethora of options. AI and machine learning engineers will create a plethora of future job prospects.
According to Gartner’s analysis, Artificial Intelligence will pave the way for up to 2.3 million new opportunities by 2020. (AI). Moreover, vacancies in artificial intelligence have doubled in the last three years. According to a related survey by Indeed, the most in-demand roles in artificial intelligence are Machine Learning developers, software technologists, and data scientists.
OCCUPATION |
PERCENTAGE GROWTH (2015-2019) |
Machine Learning Engineer | 344% |
Robotics Engineer | 128% |
Computer Vision Engineer | 116% |
Data Scientist | 78% |
Source:Indeed |
“As more and more artificial intelligence enters the world, more and more emotional intelligence must come into leadership,” said Amit Ray, a famous AI scientist and author of Compassionate Artificial Intelligence.
And due to this increase in AI Implementation various industries and sectors got impacted in a positive manner. Here is a list of prospective employment roles for AI and machine learning engineers to advance their knowledge, experience, and art of life.
- Data Scientist:
We are currently confident that you understand the functions and responsibilities of data scientists. They concentrate on data gathering, analysis, and interpretation for conclusions and observations, as well as the development of successful market solutions. Machine learning and artificial intelligence are key components of data science, which use methodologies such as regression, predictive analysis, and more to generate insights.
- Machine Learning Engineer:
Machine learning engineers are equipped with a wide range of skills, including language analysis, statistics, arithmetic, and more. Engineers are involved in the construction and management of self-operating programmes that support machine learning initiatives. It is preferable to have a master’s degree in mathematics or computer science. Python, R, Scala, and Java are the required technological stacks. Companies are always in demand, and there are rarely any job openings. They work in the areas of identity and speech recognition, as well as theft detection, client insight, and risk management.
- Research Scientist:
Machine learning and computational intelligence systems are being studied in depth by researchers. Applicants must have a PhD or a Master’s Degree in Mathematics or Informatics to be considered. The remuneration of a research scientist is very high, and organisations are looking for people with a strong AI experience. It is apparent that the worth of researchers will not decline in the coming decade.
- Business Intelligence Developer:
In addition to AI, the Business Intelligence Developer’s market knowledge must be considered. They analyse vast data sets to discover various market patterns. The work is well compensated, and the market for it isn’t going away anytime soon. You’ll have an easier time finding job if you have a formal bachelor’s degree in computer science, mathematics, or engineering. The problem-solving abilities and intellectual competence of the candidates should be exceptional.
- AI Data Analyst:
To work as an IA data analyst, you must have a bachelor’s degree in mathematics or computer science. It is necessary to have a thorough understanding of regression and the ability to utilise MS Excel. In comparison to other AI occupations, the salary for an AI data analyst is low. Although there is a consistent demand for AI data analysts, their future is uncertain.
- Big data engineering:
The objective of a Big Data Engineer is to create an environment in which business processes can communicate successfully. The position is suitable for those who appreciate experimenting with cutting-edge technology. You’ll need to study computer languages like Python, R, and Java if you want to pursue a career in AI. In comparison to other AI occupations, the salary for an AI data analyst is low. Although there is a consistent demand for AI data analysts, their future is uncertain. In comparison to other AI occupations, becoming a big data engineer would be a lucrative career. Applicants with a PhD in Computer Science or Mathematics have a better chance of being hired. It goes without saying that becoming a Big Data engineer will aid one’s career advancement.
- Robotics Scientist:
In the field of AI, the introduction of robots would effectively cut work. On the other hand, as robotics scientists work to programme their robots from important sectors, employment will increase. Such functions are efficiently performed by robots. A master’s degree in robotics, computing, or engineering is required. The median salary for a robotics scientist is relatively high. Despite the fact that robots prefer automation, skilled builders should be included. This reduces the likelihood of job cuts.
- AI engineer:
AI engineers are problem solvers who develop, test, and deploy Artificial Intelligence models. It is necessary to have a bachelor’s or master’s degree in data science, computer science, or statistics. Skills in programming languages like Python, R, or C++ are essential. The compensation scale is excellent due to the growing need for AI engineers.
Starting personal projects is a great opportunity to put your skills to the test — and learn new ones. Don’t be afraid if these requirements appear daunting at first. Artificial intelligence is a mansion with many rooms, and acquiring the necessary talents and specialisations will take time and maturity. Prospective careers would demand a drive to be interested and take risks more than anything else.