em360tech image

Artificial intelligence (AI) is taking the enterprise world by storm – and for good reason! The explosive launch of OpenAI’s ChatGPT has opened up a whole new world of fascinating possibilities for businesses, spurring a new technological revolution with AI at its epicentre. 

As this advanced tech grips Silicon Valley, the demand for skilled professionals in the tech industry has never been greater. 

The number of artifical intelligence jobs listings posted online in 2023 is more than double than in 2021, with 204 million jobs being posted in May 2023 alone according to data from the jobs site Indeed

And with AI predicted to create more than 97 million jobs by 2025 – and tech giants like Google, Microsoft and Meta struggling to find qualified people that can create, train and maintain AI systems – the future has never looked brighter for those looking for a career in AI. 

But which skills and professions are at the forefront of this bright future for AI? In this top 10, we’re counting down the best AI jobs for 2023, shedding light on the role each job plays in the AI revolution that promises to shape society as we know it. 

Deep Learning Engineer

Deep Learning Engineers specialise in designing, developing, and implementing deep learning algorithms and models. The primary responsibility of a Deep Learning Engineer is to create and optimise neural networks that can process vast datasets and learn from them. They work on complex problems such as image recognition, natural language processing, speech recognition, and recommendation systems, using tools like TensorFlow, PyTorch, and Keras to build deep learning models and fine-tune them to achieve high accuracy and efficiency.

 

As AI continues to expand its reach across industries, the role of a Deep Learning Engineer has become increasingly vital in the development of cutting-edge AI applications. Deep Learning algorithms have demonstrated their exceptional capabilities in various real-world applications of AI, ranging from autonomous vehicles and medical diagnoses to virtual assistants and personalised marketing. As organisations increasingly recognise the value of AI-driven solutions, the demand for skilled Deep Learning Engineers who can develop and deploy these advanced models has skyrocketed.

AI researcher 

AI researchers sit at the forefront of advancing already rapidly evolving AI technologies through groundbreaking research and innovation. Tasked with pushing the boundaries of AI, their role is crucial to discovering new algorithms and developing cutting-edge AI technologies that have the potential to revolutionise various industries. This primarily entails exploring and experimenting with new ideas, theories, and methodologies to solve complex AI challenges. They work on a wide range of topics, including machine learning, natural language processing, computer vision, and robotics, conducting in-depth analysis and experiments, to improve existing AI models or invent new ones that perform better, faster, and with increased accuracy.

 

As AI technology continuously evolves, AI researchers play a crucial role in driving its progress by consistently offering innovative solutions to real-world challenges, enhancing AI's effectiveness and adaptability. AI researchers are the architects of groundbreaking discoveries and paradigm shifts, reshaping the limits of AI's capabilities and unlocking novel opportunities for diverse applications. And in 2023, the nature of AI applications across industries – from healthcare to finance – demands tailored solutions to address unique sector-specific demands, intensifying the need for skilled AI researchers. 

Natural Language Processing (NLP) Engineer

Bridging the gap between machines and human communication, the Natural Language Processing (NLP) Engineer uses sophisticated algorithms, statistical models, and computational linguistics to enable machines to process, analyse, and respond to natural language data in a contextually accurate manner. This multifaceted role involves creating machine learning models for tasks such as sentiment analysis, language translation, speech recognition, and chatbot development, thus making NLP essential across a wide array of industries and applications. 

 

Given the exponential growth of unstructured data, such as social media posts, emails, and audio transcripts, AI models require robust NLP solutions to derive actionable insights from this wealth of textual and spoken content, skyrocketing the demand for NLP engineers. This, paired with the surge in AI-powered virtual assistants and chatbots requires NLP expertise to enable seamless and intuitive human-computer interactions. As businesses seek to enhance customer service and automate processes, NLP Engineers become invaluable in building conversational AI systems that can understand and respond to user queries with accuracy.

AI product manager

An AI Product Manager holds a challenging and multifaceted role in the development of AI systems, acting as a driving force behind the successful development, deployment, and evolution of AI-powered products and services. Combining technical expertise with business acumen, the AI Product Manager collaborates with cross-functional teams, including engineers, data scientists, designers, and stakeholders, to define product visions, strategies, and roadmaps. They are responsible for identifying market opportunities, conducting competitor analysis, and translating customer needs into product requirements, ensuring that the final AI solution aligns with both user expectations and business goals. 

 

With the increasing integration of AI into various industries, the demand for AI Product Managers is soaring. The complexity of AI projects requires skilled professionals capable of understanding technical nuances and translating them into tangible, user-focused solutions, and as businesses recognise the transformative potential of AI, they are looking for AI Product Managers who can envision and execute AI strategies to gain a competitive edge.

Robotics Engineer

Responsible for designing, building, and programming robotic systems that can operate autonomously or collaboratively with humans, A Robotics Engineer holds a pivotal role at the intersection of AI and engineering. This multidisciplinary role combines expertise in mechanical engineering, electronics, computer programming, and AI o create machines that can perceive their environment through sensors, make intelligent decisions using AI algorithms, and execute precise movements to perform tasks in various industries, such as manufacturing, healthcare, logistics, and even space exploration. 

 

Given the rapidly growing interest in automation and smart technologies across industries, the demand for robotics engineers has exploded. As businesses seek to improve efficiency, productivity, and safety, the possibility of robots working alongside humans collaboratively opens up new possibilities for advanced human-robot interactions, leading to the need for skilled Robotics Engineers who can integrate AI technologies to create seamless human-robot interfaces. As the field of AI evolves, Robotics Engineers are set to play a vital role in pushing the boundaries of innovation, contributing to new applications and breakthroughs in robotics that have the potential to revolutionise industries. 

Big Data Architect 

The multifaceted role of a Big Data Architect involves designing and implementing scalable, efficient, and high-performance data infrastructure to support AI systems. These AI and data experts collaborate with data scientists, AI engineers, and other stakeholders to define data requirements, ensure data quality, and create data pipelines that feed AI algorithms. They must have expertise in various big data technologies, such as Apache Hadoop, Spark, Kafka, and NoSQL databases, and stay updated with emerging tools and best practices to drive innovation.

 

Demand for big data architects is exploding. The proliferation of connected devices, social media, and IoT has resulted in an explosion of data, making it imperative to have skilled Big Data Architects who can handle the complexities of big data and harness its potential for AI applications. And as AI becomes a strategic priority for businesses, they are looking to leverage big data to gain a competitive edge and drive informed decision-making. Big Data Architects are instrumental in this, architecting data platforms that fuel AI-powered analytics and provide valuable insights for better business outcomes. 

Computer Vision Engineer 

Specialising in creating and implementing algorithms that enable sophisticated machines to interpret and understand visual information from the world around them, Computer Vision Engineers hold a critical role in advancing AI development. Their primary responsibility involves developing AI models for tasks such as object detection, image segmentation, facial recognition, and autonomous navigation. They play a key role in enhancing AI capabilities, as vision is a fundamental aspect of human intelligence, and enabling machines to perceive and comprehend visual data to unlock a myriad of applications across industries.

 

The growing need for of cameras and imaging devices, coupled with the increasing availability of big visual datasets, has created an immense amount of visual data to be processed and analysed. Computer Vision Engineers are instrumental in developing algorithms that can efficiently handle this vast and diverse data, enabling AI systems to make sense of their surroundings and take informed actions based on visual cues. computer vision technology is also at the heart of various AI applications – from self-driving cars and industrial automation to medical imaging and augmented reality. As AI development accelerates, the need for skilled Computer Vision Engineers who can design and deploy cutting-edge visual processing systems has become paramount.

Data Scientist 

 In the realm of AI, Data Scientists act as the architects of knowledge, bridging the gap between data and the algorithms that power AI applications. Armed with a combination of analytical prowess, statistical expertise, and programming skills, Data Scientists play a crucial role in AI development by deciphering patterns, trends, and hidden correlations within data that drive intelligent decision-making. By merging domain knowledge with cutting-edge tools and machine learning algorithms, they extract, clean, and transform data, preparing it for AI models' training.

 

The success of AI models heavily relies on the quality of data they are trained on From financial transactions to social media interactions and sensor data, every byte of data represents a potential insight that can drive AI systems to new heights. Data Scientists possess the expertise to identify and curate relevant datasets, ensuring AI systems receive accurate and diverse information to achieve optimal performance. And as the amount of applicable data increases across industries, there is an unprecedented demand for skilled data scientists who can make sense of this influx of information. 

AI Ethics Specialist

As AI technology infiltrates more and more aspects of our lives, there is an increasing need to address the ethical implications and potential dangers associated with AI technologies. At the forefront of this challenge are AI ethics specialists, who play a crucial role in developing guidelines, policies, and best practices that govern the development of AI systems. They work closely with AI researchers, engineers, and policymakers to identify and mitigate the potential risks of AI, engaging with various stakeholders to foster a comprehensive dialogue on the ethical use of AI and establish regulatory frameworks that safeguard against AI misuse. This has been a pivotal challenge for AI companies in recent months, with chatbots like Microsoft’s Bing AI, for instance, receiving complaints from users for sharing biased, inaccurate and sometimes scary responses

 

With big tech, governments and regulatory bodies worldwide recognising the importance of ethical AI, there is an increasing demand for experts who can shape AI policies and regulations that promote responsible AI development and usage. AI applications are rapidly expanding into sensitive areas such as healthcare, criminal justice, and finance, and there is a growing recognition of the need to address the ethical challenges that arise from AI decision-making. Meanwhile, public consciousness about the potential risks associated with societal impact has highlighted the importance of ethical considerations in AI development, driving organisations to demand AI ethics specialists who can navigate and address these complex issues. 

Machine Learning Engineer

Our number one spot goes to the Machine Learning Engineer, whose role blends elements of computer science, data analysis, and statistical modelling to create intelligent systems capable of learning and making decisions from data. Machine Learning Engineers play a crucial role in the design, development, and deployment of machine learning algorithms and models that power AI applications across diverse industries. They work closely with data scientists and domain experts to understand the problem domain, select appropriate algorithms, and preprocess data for training AI models and are responsible for fine-tuning and optimising models to achieve high performance, accuracy, and efficiency.

 

With big data revolutionising the way businesses operate machine learning is the key to unlocking actionable insights from this wealth of information. Machine Learning Engineers are essential in building predictive and prescriptive models that drive data-driven decision-making and enhance operational efficiency. The success of AI applications depends on the quality of their underlying machine learning models, and Machine Learning Engineers' expertise is crucial to ensuring that AI systems can understand patterns, detect anomalies, and make intelligent predictions, making them indispensable for developing robust and effective AI solutions.