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Internship Ai Fact Checking Jobs (NOW HIRING)

Conduct fact-checking using trusted public sources and external tools . * Generate high-quality ... Work independently and asynchronously to meet deadlines while improving AI model performance

... internships, student media leadership, university publications, freelance work, or professional roles. * Foundational knowledge of journalism principles, editorial standards, fact-checking practices ...

... internships, student media leadership, university publications, freelance work, or professional roles. * Foundational knowledge of journalism principles, editorial standards, fact-checking practices ...

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How much do internship ai fact checking jobs pay per hour?

As of Jul 7, 2026, the average hourly pay for internship ai fact checking in the United States is $19.31, according to ZipRecruiter salary data. Most workers in this role earn between $16.11 and $20.91 per hour, depending on experience, location, and employer.

What is the difference between Internship Ai Fact Checking vs Data Analyst Intern?

AspectInternship Ai Fact CheckingData Analyst Intern
Required CredentialsBasic understanding of AI, data literacy, relevant courseworkStatistics, data analysis, programming skills
Work EnvironmentTech companies, AI startups, research labsBusiness, finance, tech firms, consulting
Employer & Industry UsageAI development, content verification, fact-checkingData interpretation, reporting, decision support

Internship Ai Fact Checking focuses on verifying AI-generated content and ensuring accuracy in AI systems, often requiring knowledge of AI tools and fact-checking processes. Data Analyst Internships involve analyzing datasets to extract insights, supporting business decisions, and require skills in statistics and data visualization. While both roles involve data and technology, they serve different functions within the tech and data industries.

More about Internship Ai Fact Checking jobs
What cities are hiring for Internship Ai Fact Checking jobs? Cities with the most Internship Ai Fact Checking job openings:
What are the most commonly searched types of Ai Fact Checking jobs? The most popular types of Ai Fact Checking jobs are:
What states have the most Internship Ai Fact Checking jobs? States with the most job openings for Internship Ai Fact Checking jobs include:
Infographic showing various Internship Ai Fact Checking job openings in the United States as of July 2026, with employment types broken down into 75% Full Time, 22% Part Time, and 3% Contract. Highlights an 66% Physical, 3% Hybrid, and 31% Remote job distribution, with an average salary of $40,174 per year, or $19.3 per hour.

AI Platform Engineer

Tror AI for everyone

Charlotte, NC • On-site

Contractor

Posted 2 days ago


Job description

Role : AI Platform Engineer (Guardrails, Observability & Evaluation Infrastructure)

Location : Charlotte NC (100% onsite)

AI Platform Engineer to design and build the foundational components that power enterprise-scale GenAI

applications. This includes data guardrails, model safety tooling, observability pipelines, evaluation harnesses, and

standardized logging/monitoring frameworks. This role is critical for enabling safe, reliable, and compliant AI

development across multiple use cases, teams, and business units. Idea is to create the common platform services

that AI team will build upon. Key Responsibilities1. Guardrails, Safety & Governance

● Design and implement data guardrail frameworks (pre-processing, redaction, PII/PHI filtering, DLP

integration, prompt defenses).

● Build "Model Armor" components such as:

○ Input validation & sanitization

○ Prompt-injection defenses

○ Harmful content detection & policy enforcement

○ Output filtering, factchecking, grounding checks

● Integrate safety tooling (policy engines, classifiers, DLP APIs/safety models).

● Collaborate with Security, Compliance, and Data Privacy teams to ensure frameworks meet enterprise

governance requirements.

2. Observability Frameworks

● Build and maintain observability pipelines using tools like Arize AI (tracing, quality metrics, dataset

drift/hallucination tracking, embedding monitoring).

● Define and enforce platform-wide standards for:

○ Tracing LLM calls

○ Token usage and cost monitoring

○ Latency and reliability metrics

○ Prompt/model version tracking

● Provide reusable SDKs or middleware for engineering teams to adopt observability with minimal friction.

3. Logging, Monitoring & Telemetry

● Design standardized LLM-specific logging schemas, including:

○ Inputs/outputs

○ Model metadata

○ Retrieval metadata

○ Safety flags

○ User context and attribution

● Build monitoring dashboards for performance, cost, anomalies, errors, and safety events.

● Implement alerting and SLOs/SLIs for LLM inference systems.

4. Evaluation Infrastructure

● Architect and maintain evaluation harnesses for GenAI systems, including:

○ RAG evaluation (faithfulness, relevance, hallucination risk)

○ Summarization/QA evaluation

○ Human-in-the-loop review workflows

○ Automated eval pipelines integrated into CI/CD

● Support frameworks such as RAGAS, G-Eval, rubric scoring, pairwise comparisons, and test case

generation.

● Build reusable tooling for teams to write, run, and track model evaluations.

5. Platform Engineering & Reusable Components

● Develop shared libraries, APIs, and services for:

○ Prompt management/versioning

○ Embedding pipelines and model wrappers

○ Retrieval adapters

○ Common data loaders and document preprocessing

○ Tool/function schemas

● Drive consistency across teams with standards, reference architectures, and best practices.

● Review system designs across use cases to ensure alignment to platform patterns.

6. Collaboration & Enablement

● Partner with AI engineers, product teams, and data scientists to understand cross-cutting needs and convert

them into reusable platform features.

● Create documentation, onboarding guides, examples, and developer tooling.

● Provide internal training (brown bags, workshops) on guardrails, observability, and evaluation frameworks.

Required Qualifications Technical Skills

● 5-10+ years software engineering or ML infrastructure experience.

● Strong Python engineering fundamentals (FastAPI, async, typing/Pydantic, testing).

● Experience with model safety/guardrails approaches (prompt injection defense, PII redaction, toxicity filters, policy enforcement).

● Hands-on with Arize AI, LangSmith, or similar LLM observability platforms.

● Experience creating evaluation frameworks using RAGAS, G-Eval, or custom rubric systems.

● Strong familiarity with vector databases (Pinecone, Weaviate, Milvus), embeddings, and retrieval pipelines.

● Solid understanding of LLM architectures, tokenization, embeddings, context limits, and RAG patterns.

● Experience in cloud (GCP preferred), Kubernetes/GE, containers, and CI/CD.

● Strong understanding of security, governance, DLP, data privacy, RBAC, and enterprise compliance requirements.

Soft Skills

● Strong documentation and communication skills.

● Ability to influence engineering teams and standardize best practices.

● Comfortable working across multiple stakeholders—platform, security, ML engineering, product.

Nice to Have

● Experience with LangChain/LangGraph or Llamalndex orchestrations.

● Experience with Guardrails.ai, Rebuff, Protect AI, or similar LLM security tooling.

● Experience with GCP Vertex AI pipelines, Model Monitoring, and Vector Search.

● Familiarity with knowledge graphs, grounding models, fact-checking models.

● Building SDKs or developer frameworks adopted across multiple teams.

● On-prem or hybrid AI deployment experience.