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Remote No Experience Image Annotation Jobs (NOW HIRING)

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Remote No Experience Image Annotation information

See salary details

$81.5K

$134.1K

$183K

How much do remote no experience image annotation jobs pay per year?

As of Jun 18, 2026, the average yearly pay for remote no experience image annotation in the United States is $134,126.00, according to ZipRecruiter salary data. Most workers in this role earn between $111,000.00 and $157,500.00 per year, depending on experience, location, and employer.

What is the difference between Remote No Experience Image Annotation vs Remote No Experience Data Labeling?

AspectRemote No Experience Image AnnotationRemote No Experience Data Labeling
CredentialsNo certifications requiredNo certifications required
Work EnvironmentRemote, computer-basedRemote, computer-based
Industry UsageAI, machine learning, autonomous vehiclesAI, machine learning, data processing
Search IntentJobs involving image annotation tasksJobs involving data labeling tasks

Remote No Experience Image Annotation involves labeling images for AI training, while Remote No Experience Data Labeling covers a broader range of data types. Both roles are entry-level, remote, and do not require prior experience, making them accessible options for beginners interested in AI and data processing fields.

More about Remote No Experience Image Annotation jobs
What cities are hiring for Remote No Experience Image Annotation jobs? Cities with the most Remote No Experience Image Annotation job openings:
What are the most commonly searched types of Remote Image Annotation jobs? The most popular types of Remote Image Annotation jobs are:
What states have the most Remote No Experience Image Annotation jobs? States with the most job openings for Remote No Experience Image Annotation jobs include:
Infographic showing various Remote No Experience Image Annotation job openings in the United States as of June 2026, with employment types broken down into 3% As Needed, 66% Full Time, 26% Part Time, and 5% Contract. Highlights an 95% Physical, 1% Hybrid, and 4% Remote job distribution, with an average salary of $134,126 per year, or $64.5 per hour.

AI Training Specialist (Data Annotation)

Remote Talent Cloud

New York, NY • Remote

$20/hr

Full-time, Part-time

Posted 9 days ago


Job description

As an AI Training Specialist (Data Annotation), you’ll play a key role in helping train and improve artificial intelligence (AI) systems. Your work will directly support how AI models learn to recognize text, images, and other data accurately.

Your main responsibilities will include:

  • Labeling and categorizing data (such as text, images, or short videos) according to detailed project guidelines
  • Reviewing and verifying data for accuracy, consistency, and completeness
  • Identifying and flagging any errors, inconsistencies, or unclear data
  • Following clear annotation instructions to ensure high-quality results
  • Meeting productivity and accuracy goals within project timelines
  • Maintaining confidentiality and adhering to all data security standards

Requirements

We’re looking for detail-oriented individuals who are comfortable working independently and enjoy structured, accuracy-focused tasks. The ideal candidate will have:

  • This is a fully remote position, but you must be located within the United States
  • Excellent attention to detail and strong organizational skills
  • A reliable Internet connection and computer
  • The ability to focus for extended periods and follow detailed written instructions
  • Strong written communication skills in English
  • Previous data annotation, labeling, or transcription experience is a plus, but not required

Benefits

  • Fully remote: work from anywhere within the United States
  • Full-time and part-time available
  • Competitive hourly pay from $20/hr
  • Training provided for all annotation tools and workflows
  • Gain hands-on experience supporting real-world AI training projects
  • Be part of a growing remote team working on cutting-edge technology