High Paying Entry Level AI Jobs

entry level ai jobs

Starting a career in artificial intelligence might seem daunting, but there are many entry-level AI jobs that can help you get your foot in the door.

These roles often offer attractive salaries and the chance to work on cutting-edge projects and many of these positions allow you to work remotely, providing flexibility to match your lifestyle.

Entry-level AI positions span various job roles, including data science, AI engineering, and data labeling. Some roles offer hourly rates up to $50, while others boast annual salaries reaching up to $180,000.

These jobs often differ in required skill sets and day-to-day tasks, making it important to find the right fit for your capabilities and interests.

Entry Level AI Jobs That Pay Well

Job TitleAverage Salary (USD)
AI/ML Engineer$114,000 – $212,000
Data Scientist$100,000 – $130,000
AI Researcher$90,000 – $150,000
Data Analyst$70,000 – $90,000
Machine Learning Engineer$110,000 – $130,000
AI Ethics Specialist$80,000 – $100,000
AI Software Developer$85,000 – $120,000
Business Intelligence Developer$95,000 – $105,000
NLP Engineer$105,000 – $125,000
Robotics Engineer$100,000 – $120,000

Gaining the necessary skills for these jobs doesn’t always require a computer science degree. Online courses, coding bootcamps, and hands-on projects can prepare you for many entry-level AI roles.

Practical experience with machine learning tools and a good understanding of programming languages like Python can significantly boost your chances of landing your first AI job.

Exploring Entry-Level AI Job Roles

Entry-level AI jobs are booming with lots of opportunities in various fields like healthcare, marketing, and social media.

Here are some key roles you might consider if you’re looking to start your career in AI.

AI/ML Engineer

An AI/ML Engineer develops models and algorithms to process data and make decisions.

Tasks include building models in Python and using cloud services for model deployment. You’ll need strong programming skills and a good grasp of machine learning concepts. Engineers often collaborate with data scientists and software developers.

Key Skills:

  • Programming (Python, Java)
  • Data preprocessing
  • Model training and evaluation
  • Knowledge of cloud platforms

Common Industries:

  • Healthcare: Predictive models for patient care
  • Marketing: Targeted advertising algorithms
  • Social Media: Content recommendation systems

Data Scientist

A Data Scientist analyzes large datasets to find trends and insights.

You’ll need expertise in data science techniques, analytics, and machine learning. Your work will involve gathering data from various sources, cleaning it, and creating visualizations.

Key Skills:

  • Statistical analysis
  • Data visualization
  • Machine learning algorithms
  • Use of tools like R, Python, and SQL

Common Industries:

  • Healthcare: Patient data analysis
  • Finance: Risk modeling
  • Retail: Customer behavior analysis

AI Researcher

An AI Researcher focuses on developing new AI algorithms and models.

You will work on cutting-edge projects that aim to push the boundaries of what’s possible. This role often requires a strong academic background and involves publishing your findings.

Key Skills:

  • Advanced machine learning knowledge
  • Creativity in problem-solving
  • Experience in programming and data handling
  • Research and writing skills

Common Industries:

  • Academic and corporate research labs
  • Tech companies focusing on AGI (Artificial General Intelligence)
  • Government and defense sectors

Skill Sets and Requirements for Aspiring AI Professionals

Aspiring AI professionals need both technical and soft skills to excel in their roles. You’ll also need to commit to continuous learning to keep up with this rapidly evolving field.

Technical and Analytical Skills

You should be proficient in programming languages like Python and R. It’s also important to know about machine learning models and algorithms, particularly as these help in developing AI systems.

Knowledge of natural language processing (NLP) is another key area. NLP allows you to create applications that can understand and respond to human language. Familiarity with cloud computing platforms like AWS helps since many AI models run on these systems.

Learning to use various AI tools designed to streamline development and increase productivity can also help. This familiarity with the tools will give you a solid foundation to tackle complex tasks and projects.

Soft Skills and Interpersonal Abilities

You can’t overlook the importance of soft skills:

  • Communication skills are crucial because explaining complex ideas to those without a technical background is often necessary. You’ll need to clearly describe your findings and the impact on business goals.
  • Organizational skills help you manage multiple projects and deadlines effectively. Being able to set priorities and work efficiently is key in this fast-paced field.
  • Skills in collaboration are essential since AI projects often involve working with multidisciplinary teams to meet shared goals.
  • Urgency and adaptability are also valuable. Technology evolves quickly, and being able to adapt to new tools and methods will set you apart from your peers.

Educational Pathways and Lifelong Learning

A solid foundation typically includes a bachelor’s degree in information technology, computer science, or a related field. Certifications and courses can keep you updated on the latest trends and tools:

Pursuing further education can lead to specialist roles that often come with higher compensation and more significant responsibilities.

The most important thing in AI is to embrace lifelong learning to stay current. Regularly updating your skills will ensure you remain relevant and effective in your mission and professional goals.


Frequently Asked Questions

What qualifications are needed to land an entry-level AI job?

To get an entry-level AI job, you typically need a bachelor’s degree in fields like computer science, electrical engineering, or information technology. Some positions may also consider equivalent practical experience. Relevant courses in machine learning, programming, and data science are highly beneficial.

What are some common job titles for entry-level positions in the AI field?

Common job titles include AI engineer, machine learning engineer, data scientist, and AI research assistant. Other roles might be AI analyst, junior machine learning developer, or algorithm engineer.

How does one start a career in AI with no practical experience?

You can begin by taking online courses or boot camps in AI and machine learning. Participating in open-source projects, internships, and online competitions like Kaggle can help you gain practical skills and build your portfolio.

Can you pursue a career in AI without having a formal degree?

Yes, it’s possible. Many professionals transition into AI through self-study, online courses, and certifications. Practical experience and a robust portfolio can often substitute for a formal degree, depending on the employer.

james waite face
About the Author

James Waite

Founder of Remoteopia, James has worked in remote roles for 6 years. After a stint in recruitment, he now works as a director of website strategy in tech.

Leave a Reply

Your email address will not be published. Required fields are marked *