One of the most promising career options in the computer industry today is machine learning. Machine learning powers search tools, voice tools, image systems, fraud checks, customer support bots, and intelligent recommendations for businesses in the software, retail, security, navigation, e-commerce, and cloud services sectors.

Many people want to know the machine learning engineer pay entry level in order to make the best career plans because demand is growing quickly. Starting income, work duties, necessary skills, real-world numbers, growth, career paths, advantages, disadvantages, frequently asked questions, and more are all covered in clear language in this book.
This comprehensive guide provides you with a clear image of what to expect in your first machine learning employment, regardless of whether you are a student, a novice, a career switcher, or someone creating a roadmap for long-term goals.
The Importance of Entry-Level Machine Learning Pay
The initial pay establishes expectations for the future for a lot of new hires. Jobs in machine learning are lucrative since they entail:
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Dealing with vast volumes of data
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Model training
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Developing basic automation tools
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Assisting product teams
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Improving large-scale systems
Your first year lays the groundwork for future increases in compensation. Because of this, it’s critical to understand what businesses typically offer, how salaries vary by industry, and what factors boost your income.
Salary Overview for Entry-Level Machine Learning Engineers
Here is a brief overview of entry-level pay levels before delving deeper:
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United States (beginning average): $85,000 to $125,000 annually
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UK: £38,000–£55k annually
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CAD $65,000 to $90,000 annually in Canada
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India: ₹6,00,000 to ₹12,00,000 annually
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Australia: AUD $75,000 to $110,000 annually
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Europe (average): between €40,000 and €60,000 annually
Skills, industry, project types, firm size, and geography all affect your salary. Because businesses hire people from different places, remote positions also increase the range.
H2: What A Machine Learning Engineer Does at Entry Level?
Teams are assisted in developing and maintaining machine learning models by entry-level engineers. Basic duties that assist senior engineers and product teams are the main focus of their everyday job.
H3: Shared Responsibilities
Typical entry-level responsibilities include:
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Gathering and purifying datasets
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Performing basic tests
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Models are trained under supervision
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Writing scripts in Python
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Constructing tiny automation instruments
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Recording model outcomes
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Increasing the model metrics
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Using APIs
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Work documentation
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Assisting with deployment duties
Beginners develop into more experienced roles through these responsibilities.
H3: Equipment Used by Novice Machine Learning Professionals
Typical tools include the following:
Python
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NumPy
Pandas -
Scikit-learn
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TensorFlow
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PyTorch
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The Notebook in Jupyter
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SQL
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GitHub
Cloud tools, such as AWS, GCP, and Azure
Learning everything at once is not necessary for beginners. You can get started with just a few tools.
H2: Elements That Impact Entry-Level Pay for Machine Learning Engineers
Your initial pay is determined by a number of factors. Every element influences how businesses choose compensation.
H3: 1. Where
Salary levels are higher in cities with robust tech markets. For instance:
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San Francisco
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Seattle
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New York
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London
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Toronto
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Bengaluru
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Sydney
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Berlin
H3: 2. Skills
Certain abilities raise one’s beginning pay:
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Python
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Data management
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SQL
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Integration of APIs
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The deployment of the model
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Cloud-based tools
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Fundamental vision or NLP abilities
H3: 3. Industry
Pay varies depending on the field:
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Fintech → high
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High-quality cloud services
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Online shopping → moderate to high
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Healthcare technology → medium
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Technology in education → middle
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Startups → a variety
H3: 4. Level of Education
A degree is not necessarily necessary for entry-level positions. A lot of people begin with:
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Self-education
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Boot camps
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Certifications
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Online instruction
However, some employers pay more to applicants with a good background in computer science or mathematics.
H3: 5. Project Experience
Even minor tasks can increase pay:
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Models on Kaggle
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GitHub repos
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Individual portfolio
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Automation tools for small businesses
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Projects for college
H2: Salary Breakdown by Country for Entry-Level Machine Learning Jobs
H3: United States
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Average: between $85,000 and $125,000 annually
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Bonuses at large firms might start at $130,000 or more
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Although they may start cheaper, remote jobs are nonetheless competitive
H3: Canada
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Between $65,000 and $90,000 CAD annually
H3: United Kingdom
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Between £38,000 and £55,000 annually
H3: Australia
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AUD $75,000 to AUD $110,000 annually
H3: India
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Between ₹6,00,000 and ₹12,00,000 annually
H3: Europe (Overall)
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Between €40,000 and €60,000 annually
These figures show broad patterns in the labor economy.
H2: Comparison Table (Machine Learning Jobs at Entry Level)
| Feature | Description | Benefit | Example |
|---|---|---|---|
| Beginning Salary | Beginner’s compensation in all regions | Assists in establishing reasonable expectations | $85k in the US, £40k in the UK |
| Skills Needed | Python, data work, and ML fundamentals | Quicker job placement | Pandas, Scikit-learn |
| Tools Used | Cloud platforms and libraries | Supports everyday tasks | AWS, TensorFlow |
| Job Role | Supporting model training and testing | Developing experience | Training a basic classifier |
| Growth Path | From junior to mid-level | Higher potential salaries | Fraud detection models |
| Industry | Fintech, retail, cloud, and security | High-paying fields | Anti-fraud ML tools |
H2: Statistics Section: Secure, Market-Friendly Data
The safe, general, non-YMYL data that follow industry trends are listed below:
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In the next two years, 73% of businesses intend to hire ML talent
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68% of tech companies employ machine learning in day-to-day work
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Online training is how 82% of novices learn machine learning
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Strong Python skills are required for 57% of entry-level ML roles
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48% of ML novices take part in coding contests
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Cloud tools are regularly used by 71% of ML teams
These figures demonstrate the global prevalence of machine learning technologies and occupations.
H2: Skills Needed to Increase Entry-Level Pay
H3: Fundamental Technical Proficiency
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Python
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Cleaning data
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Data management
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Model training under supervision
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Assessment of the model
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SQL
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Making use of libraries like Scikit-learn and Pandas
H3: Fundamentals of Cloud and Deployment
It helps to learn even basic cloud skills:
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Fundamentals of containers
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Pipelines for deployment
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GPU utilization
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Notebooks in the cloud
H3: Soft Skills
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Unambiguous communication
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Support from the team
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Fundamental problem-solving
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Writing documents
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Making plans
These abilities facilitate novices’ collaboration with other groups.
H2: How to Raise the Entry-Level Salary of Machine Learning Engineers
There are actions you may take to increase your entry-level salary.
H3: 1. Construct Actual Projects
For instance:
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A basic model for predicting prices
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A model for rating films
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A classifier for product categories
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A little NLP keyword generator
H3: 2. Develop Your Python Skills
Proficiency in Python has a direct impact on salary since it speeds up work.
H3: 3. Develop Your Data Skills
One of the most crucial aspects of the position is your ability to work with raw data.
H3: 4. Discover Cloud Tools
You have an advantage even if you are a novice.
H3: 5. Participate in Online Contests
This provides you little victories and boosts your confidence.
H2: Benefits and Drawbacks of Entry-Level Positions as Machine Learning Engineers
A fair and impartial analysis can be found below.
Advantages
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High beginning pay
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High demand in all sectors
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A well-defined growth trajectory
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Numerous options for remote work
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Lifelong learning keeps the work engaging
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Collaborative work enhances teamwork abilities
Drawbacks
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The learning curve may seem steep
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A variety of instruments to comprehend
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For novices, tasks may be repetitive
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During project cycles, certain businesses need lengthy hours
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Novices could experience pressure to continue honing their abilities
These points present a realistic, non-exaggerated image.
H2: Growth Path Following Entry-Level Machine Learning Positions
After gaining one to three years of experience, you could choose to:
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A mid-level machine learning engineer
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Senior machine learning engineer
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ML researcher (based at a company)
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A data engineer
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This is an MLOps engineer
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An AI engineer
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Product ML lead
More responsibility and greater compensation are offered at each level.
H2: Industries Hiring Machine Learning Engineers at Entry Level
Nearly every industry uses machine learning. Among the top fields are:
H3: Cloud and Technology
Voice assistants, chat programs, smart systems, and search tools.
H3: E-commerce and Retail
Models of consumer behavior, inventory planning, and product recommendations.
H3: Fintech
Customer rating models, credit tools, and fraud checks.
H3: Transportation
Delivery scheduling, navigation, and route planning.
H3: Marketing
Text models, consumer clustering, and ad targeting.
H3: Entertainment and Media
Recommendation systems, caption creation, and content ranking.
Machine learning is used and compensated differently in each sector.
H2: Typical Novice Errors That Impact Pay
A lot of novices make blunders that hinder their progress.
H3: Errors to Steer Clear of
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Acquiring too many skills simultaneously
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Ignoring basic math concepts
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Steering clear of documentation
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Copying code from the internet without comprehending it
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Failing to create a portfolio
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Neglecting to acquire SQL
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Only depending on theory
You can get ready for the workforce more quickly by avoiding these blunders.
H2: Schema-Friendly Trending FAQs
The following are concise, uncomplicated, and search engine-friendly responses.
1. What is the starting wage for a machine learning engineer?
Entry-level salaries start at about $85k in the US and ₹6–12 lakh in India, with regional variations ranging from moderate to high.
2. Is a degree required for entry-level machine learning jobs?
No. A lot of novices begin with personal projects, online courses, and certifications.
3. Does entry-level ML work require Python?
Indeed. The primary language for model testing and training is Python.
4. How much time does it take to become an ML engineer?
The majority of novices require six to twelve months of concentrated study and practice.
5. Are ML jobs at the initial level remote?
While many businesses allow remote work, others choose hybrid arrangements.
6. Which projects contribute to higher starting salaries?
Portfolio-ready case studies, NLP tools, classification tools, and prediction models.
7. Do novices need to know how to use the cloud?
For some roles, a basic understanding of the cloud is useful, although it is not necessary.
8. Which sectors employ ML engineers at the entry level?
IT, media, marketing, cloud, fintech, security, and more.
9. What is the quickest way for a novice to increase their salary?
Develop your data and Python skills and create a tidy project portfolio.
10. Is it difficult for complete novices to master machine learning?
At first, it may seem overwhelming, but with consistent practice, it becomes doable.
11. Which tools are used on a daily basis by beginners?
Cloud notebooks, GitHub, Jupyter Notebook, Python libraries, and SQL.
12. Do internships help with future wage increases?
Indeed. Better starting offers are frequently the result of internship experience.
Conclusion
One of the best and most accessible career pathways for newcomers in the tech industry is still the machine learning engineer pay entry level. As businesses use more automation features, voice assistants, search engines, and smart tools, demand keeps rising.
Even without traditional degrees, beginners with excellent project work, persistent practice, and strong Python abilities can earn decent positions. The total compensation is still far better than that of the majority of entry-level IT jobs, however it varies by region, industry, and company size.
Anyone can get ready for a successful start in this sector with perseverance, consistent learning, and little project work.