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Data Annotation Specialist Jobs in Illinois (NOW HIRING)

Data Annotation AI Specialist The Fitch Group Emerging technology AI group is seeking a Data Annotation AI Specialist to be part of a team that will be dedicated to build and support Generative AI ...

As an AI Banking Data Specialist , you will help shape how advanced AI models understand and reason ... annotation tools and workflows tailored for financial datasets Identify and analyze complex ...

Prior experience with data annotation, data quality evaluation, or AI training workflows ... Experience translating genomic research findings for non-specialist audiences Why Join Us * Work on ...

Nursing Informatics Specialist (AI Training) About the Role Your clinical expertise is more ... Background in data annotation, quality evaluation, or clinical decision support * Familiarity with ...

Applied Physics Specialist (AI Training) About the Role What if your expertise in physics could ... Experience with data annotation, scientific dataset evaluation, or quality assurance workflows

Lead and mentor a team of Business Analysts and Content Specialists producing AI training content ... Experience with data annotation, data quality, or content evaluation systems * Background in case ...

Lead and mentor a team of Business Analysts and Content Specialists producing AI training content ... Experience with data annotation, data quality, or content evaluation systems * Background in case ...

Lead, mentor, and collaborate with a team of Business Analysts and Content Specialists producing AI ... Experience with data annotation, data quality evaluation, or content assessment workflows

Data Annotation Specialist information

See Illinois salary details

$27.1K

$70.7K

$85.3K

How much do data annotation specialist jobs pay per year?

As of May 28, 2026, the average yearly pay for data annotation specialist in Illinois is $70,687.00, according to ZipRecruiter salary data. Most workers in this role earn between $50,400.00 and $84,300.00 per year, depending on experience, location, and employer.

What are the key skills and qualifications needed to thrive as a Data Annotation Specialist, and why are they important?

To thrive as a Data Annotation Specialist, you need a keen attention to detail, strong analytical abilities, and basic knowledge of data labeling concepts, often supported by a high school diploma or relevant coursework. Familiarity with data annotation tools (such as Labelbox or Supervisely), basic computer skills, and sometimes an understanding of programming languages like Python are valuable. Excellent communication, time management, and the ability to follow guidelines precisely help you stand out in this position. These skills ensure accurate and consistent data labeling, which is essential for training reliable machine learning models.

What are some common challenges a Data Annotation Specialist faces, and how can they be addressed?

Data Annotation Specialists often encounter challenges such as maintaining high accuracy while labeling large volumes of data, managing repetitive tasks, and understanding complex annotation guidelines. To overcome these, it's important to stay detail-oriented, take regular breaks to avoid fatigue, and seek clarification on ambiguous instructions. Collaborating with team members and participating in quality review sessions can also help ensure consistency and improve annotation quality over time.

What are Data Annotation Specialists?

Data Annotation Specialists are professionals who label and categorize data—such as images, text, audio, or video—to make it usable for machine learning models and artificial intelligence systems. Their work ensures that algorithms can accurately interpret data by providing clear examples of what different data points represent. Tasks may include drawing bounding boxes on images, transcribing audio, or tagging keywords in text. This role is crucial for improving the accuracy and reliability of AI applications across various industries.

What is a data annotation specialist?

A data annotation specialist is a professional who labels and tags data such as images, text, or videos to help train machine learning models. They use tools and follow guidelines to ensure data is accurately annotated, which is essential for developing AI systems. Attention to detail and understanding of data types are important skills for this role.

What is the difference between Data Annotation Specialist vs Data Labeler?

AspectData Annotation SpecialistData Labeler
CredentialsHigh school diploma or equivalent; some roles may prefer certifications in data management or annotation toolsTypically high school diploma or equivalent; minimal formal requirements
Work EnvironmentOffice or remote; often involves using specialized annotation softwarePrimarily remote or in-house; focuses on labeling data within specific datasets
Industry UsageUsed across AI, machine learning, and data science projectsPrimarily in AI and machine learning industries for training data
Job FocusInvolves detailed annotation, quality control, and understanding project guidelinesFocuses on labeling data accurately according to instructions

While both roles involve working with data to train AI models, Data Annotation Specialists typically handle more complex annotation tasks and quality assurance, whereas Data Labelers focus on straightforward labeling tasks. The Specialist role often requires a deeper understanding of project guidelines and may involve using advanced annotation tools.

What are the most commonly searched types of Data Annotation Specialist jobs in Illinois? The most popular types of Data Annotation Specialist jobs in Illinois are:
What are popular job titles related to Data Annotation Specialist jobs in Illinois? For Data Annotation Specialist jobs in Illinois, the most frequently searched job titles are:
What cities in Illinois are hiring for Data Annotation Specialist jobs? Cities in Illinois with the most Data Annotation Specialist job openings:
Infographic showing various Data Annotation Specialist job openings in Illinois as of May 2026, with employment types broken down into 1% As Needed, 87% Full Time, 8% Part Time, and 4% Contract. Highlights an 19% Physical, 22% Hybrid, and 59% Remote job distribution, with an average salary of $70,687 per year, or $34 per hour.

Data Annotation AI Specialist

Kasmo Global

Chicago, IL • Hybrid

Other

This job post has expired today. Applications are no longer accepted.


Job description

Data Annotation AI Specialist

The Fitch Group Emerging technology AI group is seeking a Data Annotation AI Specialist to be part of a team that will be dedicated to build and support Generative AI, Machine learning, Deep Learning and Data science solutions across the organization. The position could be based out of our Chicago or NY offices. We are seeking a Data Annotation AI Specialist to lead the evaluation, selection, and onboarding of a data annotation platform, and to establish best-in-class annotation workflows for our NLP and CV initiatives. This role will bridge product, data science, MLOps, and compliance to ensure high-quality labeled datasets that accelerate model development for tasks such as text classification, entity extraction, unstructured data extraction, document summarization, and prompt/response curation.

What We Offer:

  • This will be a high impact role with significant visibility where the candidate will work on some flagship Fitch products
  • The candidate will have an excellent opportunity to work in the cutting-edge field of AI, NLP, Computer vision and MLOPs/LLMOps
  • Fitch promotes an excellent work culture and is known for providing a good work life balance

We'll Count on You To:

  • Platform Evaluation and Onboarding:
    • Assess and compare data annotation platforms (e.g., Labelbox, Prodigy, Snorkel, Scale AI, SuperAnnotate, LightTag, custom open-source stacks) against business and technical requirements.
    • Lead proof-of-concept trials; define evaluation criteria (quality, throughput, cost, security, privacy, compliance, UI/UX, workflow features, integrations, auditability).
    • Drive vendor due diligence, security reviews, and coordinate procurement/contracting with Legal, Security, and Procurement.
    • Plan and execute platform deployment, integrations (SSO, data lakes, MLOps pipelines), and role-based access controls.
  • Workflow and Taxonomy Design:
    • Collaborate with NLP and CV scientists and product owners to define labeling taxonomies, guidelines, and rubrics for tasks such as NER, data extraction, intent classification, topic modeling, toxicity/BI risk tagging, and document QA.
    • Establish annotation protocols, inter-annotator agreement measures (IAA), and quality gates; design multi-pass review processes and adjudication steps.
    • Develop gold standards and calibration sets; maintain versioning and change management of label schemas.
  • Quality Management:
    • Implement QA metrics and dashboards (precision/recall on labeled subsets, IAA, disagreement analysis, drift detection, sampling strategies).
    • Design active learning and human-in-the-loop strategies to continually improve data quality and labeling efficiency.
    • Conduct audits, bias checks, and error analyses; enforce data governance and documentation (data sheets, model cards inputs).
  • Operations and Scale:
    • Build and manage a hybrid workforce model (in-house annotators, expert reviewers, external vendors) including training, SLAs, throughput planning, and budget tracking.
    • Create training materials and onboarding programs for annotators, SMEs, and reviewers; run calibration sessions and periodic refreshers.
    • Optimize throughput and cost with workflow automation, pre-labeling, heuristics, and annotation tooling features.
  • Integration and MLOps:
    • Integrate the annotation platform with data pipelines, model training loops, experiment tracking, and storage (e.g., Databricks, Snowflake, AWS/GCP/Azure, MLflow).
    • Implement programmatic interfaces (APIs/SDKs) for data ingestion/export, schema management, and reproducibility.
    • Collaborate on dataset curation, splitting strategies, and governance (PII handling, encryption, retention policies).

What You Need to Have:

  • 4–7+ years of experience in data annotation, data operations, or applied NLP/CV/ML, with direct responsibility for building and managing labeling programs.
  • Hands-on experience with annotation platforms and workflows for NLP tasks; familiarity with enterprise deployment considerations (SSO, RBAC, audit, SOC2).
  • Strong understanding of NLP and CV techniques: tokenization, embeddings, NER, text classification, sentiment, summarization, prompt engineering, and evaluation.
  • Proficiency in Python and data tooling (Pandas, spaCy, Hugging Face, NLTK); experience using APIs/SDKs to automate annotation and active learning loops.
  • Experience defining label taxonomies, guidelines, and measuring IAA; practical knowledge of QA methodologies and error/bias analysis.
  • Familiarity with cloud platforms (AWS/GCP/Azure), data governance, and secure data handling.
  • Excellent communication skills; ability to collaborate with data scientists, product managers, engineers, SMEs, and vendors.

What Would Make You Stand Out:

  • Experience with large language model (LLM) data curation, RLHF/RLAIF pipelines, and prompt/response quality evaluation.
  • Background in financial services, risk analytics, or regulated industries with strong compliance requirements.
  • Prior experience building hybrid annotation teams and managing external vendors.
  • Knowledge of annotation for multilingual NLP and document-heavy workflows (PDF parsing, OCR)