LLMs AI Jobs

Discover the latest remote and onsite LLMs AI roles across top active AI companies. Updated hourly.

Check out 81 new LLMs AI roles opportunities posted on AI Chopping Block

Data Scientist, People

New
Top rated
Replit
Full-time
Full-time
Posted

Build the analytical foundation to evaluate compensation competitiveness by connecting offer data, band position, acceptance rates, and market benchmarks into a live system that recommends specific adjustments. Develop predictive models and tooling to help managers and recruiters make better and faster decisions, such as a regretted attrition model that flags at-risk employees 90 days in advance. Design and deploy AI agents that draft first-pass recommendations for high-stakes people decisions including compensation, promotion, and hiring, which are then reviewed and adjusted by people leaders. Build recruiting analytics to connect sourcing channels, time-to-hire, first-year performance, and tenure to reallocate recruiting spend and provide weekly insights to recruiting leadership. Analyze organizational effectiveness by examining spans and layers, talent density, and hiring efficiency to identify structural inefficiencies. Partner with finance to transition from spreadsheets to a live workforce model accounting for attrition, hiring velocity, and ramp time by function. Use LLMs and agentic workflows to analyze unstructured people data at scale, including support tickets, exit interviews, performance reviews, and engagement survey responses. Replace recurring reporting cycles with always-on agents that surface insights to leaders as needed. Support high-stakes organizational and talent decisions with rigorous analysis, including executive hiring, retention, and reorganizations.

$210,000 – $350,000
Undisclosed
YEAR

(USD)

Foster City, United States
Maybe global
Hybrid
Python
SQL
Statistical Analysis
AI
LLMs

Full Stack AI Engineer

New
Top rated
Opusclip
Full-time
Full-time
Posted

Architect the AI-native codebase by redesigning the structure of a fast-moving, AI-generated codebase to bring scalability, maintainability, and long-term thinking, and make it production-ready. Exercise strong technical judgment by making smart, opinionated decisions about architecture, tooling, and trade-offs, and leading the team in these decisions. Build full-stack features end to end, owning development from front-end (React) to back-end (Node.js, Django, Python), shipping prototypes to production quickly and ensuring quality follows. Work hands-on with large language models (LLMs), AI agents, tool calling, and memory systems to solve real product challenges as a core responsibility. Collaborate with product and marketing teams to shape the product by defining what gets built, focusing on users and outcomes, not just code.

$220,000 – $270,000
Undisclosed
YEAR

(USD)

Mountain View, United States
Maybe global
Onsite
Python
JavaScript
TypeScript
Hugging Face
Transformers

Forward Deployment Engineer (Minneapolis, MN)

New
Top rated
Hippocratic AI
Full-time
Full-time
Posted

Serve as the technical point of contact for healthcare customers, translating ambiguous problems into scalable solutions. Build and deploy AI systems, including RAG pipelines and multi-agent workflows, and develop real-time conversational AI systems. Work with healthcare data integration standards such as HL7 v2, FHIR, REST APIs, and X12, and build pipelines using Python and SQL. Own the full lifecycle of the AI solutions from design to monitoring, including troubleshooting production issues. Collaborate with product, AI research, and clinical teams. Operate onsite at customer locations in Minneapolis, MN, with occasional travel to Hippocratic AI headquarters for strategic planning and team sessions.

Undisclosed

()

Minneapolis or Palo Alto, United States
Maybe global
Onsite
Python
RAG
Prompt Engineering
LLMs
DevOps

Carefull - Data Scientist / AI Engineer

New
Top rated
Silver.dev
Full-time
Full-time
Posted

Own end-to-end implementation of AI-driven detection features, from discovery to production deployment and iteration. Design and build data enrichment pipelines to extract structured information from messy, real-world financial transaction data. Research fraud and scam typologies relevant to older adults and translate findings into scalable detection logic. Build evaluation frameworks including metrics, error analysis, and model comparisons to measure system performance and drive improvement. Optimize AI pipelines for accuracy, latency, and cost by making informed tradeoffs on model selection and architecture. Collaborate with Customer Service, Go-to-Market, and partner-facing teams to ensure solutions meet real-world needs and deliver measurable impact. Stay current with developments in LLMs, agent architectures, and applied AI to identify practical applications for the domain.

$60,000 – $78,000
Undisclosed
YEAR

(USD)

Argentina
Maybe global
Remote
Python
LangChain
AWS
LLMs
Data Pipelines

Strategy & Operations Manager, Support

New
Top rated
OpenAI
Full-time
Full-time
Posted

This leader will build, scale, and manage OpenAI's User Operations Strategy & Operations function, owning service strategy, planning, forecasting, and execution. They are responsible for embedding AI-native operations, forecasting support needs, evolving support models, driving operational quality, and acting as a senior escalation point across the team.

Undisclosed
YEAR

(USD)

Maybe global
On-site
LLMs
Automation
Data Analysis

Software Engineer, Platform

New
Top rated
Glean Work
Full-time
Posted

The AI Outcomes Manager will collaborate with executives and end-users to develop and execute AI transformation strategies using Glean's platform. They will conduct discovery workshops, drive customer engagement, and work closely with Product and R&D to shape product direction based on user feedback.

Undisclosed

()

Maybe global
Remote Solely
AI
LLMs
Prompt Engineering
Enterprise SaaS

AI Agent Evaluation Analyst (Freelance)

New
Top rated
Mindrift
Part-time
Full-time
Posted

You will review and evaluate complex AI agent tasks and scenarios for logic, completeness, and realism, identifying inconsistencies and defining expected behaviors. Collaboration with QA, writers, and developers is essential to suggest task refinements and cover edge cases, ensuring comprehensive agent testing.

Undisclosed
HOUR

(USD)

Maybe global
Remote Solely
JSON
YAML
LLMs
Prompt Engineering
QA

AI Agent Evaluation Analyst (Freelance)

New
Top rated
Mindrift
Part-time
Full-time
Posted

You will review evaluation tasks and scenarios for logic, completeness, and realism, identify inconsistencies or missing assumptions, and help define gold standards for autonomous AI agents. Collaborate with QA, writers, and developers to refine AI agent testing and ensure comprehensive evaluation frameworks.

Undisclosed
HOUR

(USD)

Maybe global
Remote Solely
JSON
YAML
LLMs
QA

AI Agent Evaluation Analyst (Freelance)

New
Top rated
Mindrift
Part-time
Full-time
Posted

The Analyst will review evaluation tasks and scenarios for logic, completeness, and realism while identifying inconsistencies and helping define gold standards for AI agents. They will closely collaborate with QA, writers, or developers to refine processes and ensure robust agent testing.

Undisclosed
HOUR

(USD)

Maybe global
Remote Solely
JSON
YAML
LLMs
Prompt Engineering
QA

AI Agent Evaluation Analyst (Freelance)

New
Top rated
Mindrift
Part-time
Full-time
Posted

Review evaluation tasks, scenarios, and policies for autonomous AI agents focused on logic, completeness, and realism. Annotate reasoning paths, identify inconsistencies, and help define expected behaviors while collaborating with QA, writers, or developers for scenario refinement.

Undisclosed
HOUR

(USD)

Maybe global
Remote Solely
JSON
YAML
LLMs
Prompt Engineering

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[{"question":"What are LLMs AI jobs?","answer":"LLMs AI jobs involve working with large language models in various capacities. These roles include model development and optimization, application integration using techniques like retrieval-augmented generation (RAG), building agentic systems, data generation for fine-tuning, and code generation. Professionals in these positions typically create, deploy, and enhance AI systems that leverage advanced natural language processing capabilities."},{"question":"What roles commonly require LLMs skills?","answer":"Roles that commonly require large language model expertise include AI Researchers who work on model training and innovation, AI Software Engineers who build end-to-end solutions, Natural Language Processing Engineers who design and implement models, Applied AI Engineers who create generative AI solutions, Research Software Engineers focusing on computational efficiency, and LLM Trainers who generate high-quality data for fine-tuning."},{"question":"What skills are typically required alongside LLMs?","answer":"Skills typically paired with large language model expertise include programming (especially Python), prompt engineering, retrieval-augmented generation (RAG) techniques, API integration capabilities, data formatting knowledge (particularly JSON), and fine-tuning methodologies. Strong understanding of natural language processing principles, excellent communication skills, and domain-specific knowledge for particular industries are also valuable complementary skills."},{"question":"What experience level do LLMs AI jobs usually require?","answer":"Senior roles typically require 5+ years building production-grade machine learning systems with measurable impact. Entry-level positions exist for new graduates with strong programming foundations and NLP understanding. Most positions expect demonstrated experience with language models, API integration, or related technologies. Technical assessments often require minimum passing scores of 70-80% to qualify for these positions."},{"question":"What is the salary range for LLMs AI jobs?","answer":"The research provided doesn't include specific salary information for large language model jobs. Compensation typically varies based on role type (researcher, engineer, trainer), experience level, company size, location, and specific technical expertise. As a specialized AI skill, these positions generally command competitive salaries within the broader tech industry."},{"question":"Are LLMs AI jobs in demand?","answer":"Yes, large language model jobs are in high demand across multiple industries. Major technology companies like Google, Apple, and Moody's are actively recruiting for these positions. New job titles like prompt engineers and API integration experts have emerged specifically for this technology. The broad adoption of these models has created hiring needs at all experience levels, from new graduates to senior researchers."},{"question":"What is the difference between LLMs and Traditional Machine Learning in AI roles?","answer":"Large language models focus on generative AI and deep learning, working with text, code, and multimodal content to create new outputs. Traditional machine learning typically involves supervised/unsupervised algorithms like XGBoost that classify, predict, or cluster existing data. LLM roles emphasize prompt engineering, fine-tuning, and retrieval techniques, while traditional ML positions focus more on feature engineering, algorithm selection, and statistical analysis."}]