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Weekend Ai Operator Jobs (NOW HIRING)

Marketing Coordinator

San Francisco, CA · On-site

$70K - $90K/yr

About Broccoli Broccoli is building the AI operating system for home service businesses . We work ... Able to travel frequently and work some evenings/weekends during events. * 1-3 years of experience ...

Weekend Loader Operator

Nashville, TN

$16.25 - $21.50/hr

... various operating divisions. We are committed to creating accessible environments for our ... Our recruitment advisors and hiring teams will utilize human screening combined with AI technology ...

Weekend Loader Operator

Nashville Plantation, ME · On-site

$16.75 - $22.25/hr

... various operating divisions. We are committed to creating accessible environments for our ... Our recruitment advisors and hiring teams will utilize human screening combined with AI technology ...

GM of New Verticals

New York, NY · On-site

$180K - $230K/yr

You think in Build-Measure-Learn loops. * You're an AI operator. You are excited by using AI to drive better results and 10x your output. On evenings or weekends, you're on Claude or Codex shipping ...

NC Operator

Stockton, CA · On-site

$22 - $32/hr

Description NC Operator Full-time / Permanent Day, Swing, and Weekend Shifts Available Pay Range ... S.-based manufacturer dedicated to building the precision infrastructure that powers tomorrow's AI.

NC Operator

Stockton, CA · On-site

$22 - $32/hr

NC Operator Full-time / Permanent Day, Swing, and Weekend Shifts Available Pay Range : $22 - $32 ... S.-based manufacturer dedicated to building the precision infrastructure that powers tomorrow's AI.

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Weekend Ai Operator information

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How much do weekend ai operator jobs pay per hour?

As of Jun 8, 2026, the average hourly pay for weekend ai operator in the United States is $20.34, according to ZipRecruiter salary data. Most workers in this role earn between $17.07 and $22.84 per hour, depending on experience, location, and employer.

What is the difference between Weekend Ai Operator vs Weekend Data Annotator?

AspectWeekend Ai OperatorWeekend Data Annotator
Required CredentialsBasic technical skills, training in AI toolsAttention to detail, training in annotation tools
Work EnvironmentRemote or on-site, tech-focusedRemote or on-site, data-focused
Industry UsageAI development, machine learningData labeling, dataset preparation
Common Search IntentAI job roles, weekend AI jobsData annotation jobs, weekend data tasks

The Weekend Ai Operator typically focuses on managing AI systems and performing tasks related to AI model training, requiring basic technical skills. In contrast, the Weekend Data Annotator specializes in labeling and preparing data for AI models, emphasizing attention to detail. Both roles are often remote, industry-specific, and sought after for weekend work opportunities, but they differ mainly in their core responsibilities and skill requirements.

What cities are hiring for Weekend Ai Operator jobs? Cities with the most Weekend Ai Operator job openings:
What are the most commonly searched types of Ai Operator jobs? The most popular types of Ai Operator jobs are:
What states have the most Weekend Ai Operator jobs? States with the most job openings for Weekend Ai Operator jobs include:
What job categories do people searching Weekend Ai Operator jobs look for? The top searched job categories for Weekend Ai Operator jobs are:
Infographic showing various Weekend Ai Operator job openings in the United States as of May 2026, with employment types broken down into 2% Locum Tenens, 51% Full Time, 45% Part Time, 1% Contract, and 1% Nights. Highlights an 64% Physical, 4% Hybrid, and 32% Remote job distribution, with an average salary of $42,306 per year, or $20.3 per hour.

AI/ML Engineer(RL & Physical Systems)

Fluix AI

San Francisco, CA

Other

Medical, Dental, Vision

Posted 2 days ago


Job description

AI/ML Engineer (RL & Physical Systems)

FLUIX is building the AI Operating System for data centers. We deploy autonomous AI that optimizes, predicts, and controls AI factories.

Based in the San Francisco Bay Area, we develop intelligent control systems that enable data centers and power providers to operate faster, cleaner, and more efficiently.

Our mission is simple: help clients double their compute capacity without wasting resources.

We're hiring an AI/ML Engineer (or AI Scientist, depending on experience) with deep reinforcement learning and physics-based modeling expertise.

You'll design, test, and deploy models that interact with the physical world, from thermal systems to power distribution, where milliseconds and megawatts matter.

This is not a research-only position. Your work will touch real chillers, real cooling loops, and real megawatt-scale infrastructure.

Who You'll Work Closely With

Abhi Sastri

Founder & CEO

Chase Overcash

CTO

What You'll Do
  • Design, develop, and deploy reinforcement learning–based control policies for real-world physical systems (cooling, power, airflow, thermodynamics, etc.).

  • Build and refine digital twin and simulation environments to accelerate training, testing, and Sim2Real deployment.

  • Conduct lab-based and field-based experiments to validate model performance under noisy, dynamic, and safety-critical conditions.

  • Analyze telemetry, time-series, and sensor data to evaluate model reliability, interpret failure cases, and propose improvements.

  • Support integration of LLM-based tools and workflows into the AI control pipeline where relevant (knowledge distillation, inference orchestration, etc.).

  • Lead or contribute to scientific documentation: whitepapers, internal reports, and peer-reviewed publications.

  • Push the frontier of physical-world AI, where physics, reinforcement learning, and industrial automation meet.

  • Collaborate with controls, software, and field engineering teams to integrate models into production-scale data centers and energy systems.

Your Background
  • Bachelor's degree required in Computer Science, Mechanical/Electrical Engineering, Applied Physics, Controls, or related field.

    Master's or Ph.D. strongly preferred for the AI Scientist tier.

  • 2+ years of hands-on experience applying ML to real-world physical, robotic, industrial, or control systems.

  • Proficiency in Python and ML frameworks (PyTorch, TensorFlow); experience with RL libraries.

  • Strong grounding in at least one of: control theory, model-predictive control (MPC), system identification, thermal/fluids, power systems, or industrial automation.

  • Experience working with telemetry/sensor data from PLCs, SCADA, IoT, or industrial control systems.

  • Familiarity with cloud or edge deployment (AWS/Azure, on-prem GPUs, embedded compute).

  • Ability to move between research, experimentation, and deployment at startup speed.

Bonus Points
  • Experience deploying AI in data centers, utilities, industrial automation, HVAC, or energy systems.

  • Experience with digital twins, physics engines (Modelica, Simulink, custom simulators).

  • Publications, patents, or open-source work in RL, controls, or applied physical AI.

  • Experience with Sim2Real transfer, safety-critical RL, or physics-informed ML.

  • Experience with LLMs, agentic AI workflows, or hybrid RL + LLM systems.

Culture Fit
  • You are energized by hard problems and high-stakes environments.

  • You want to touch hardware, not just notebooks.

  • You believe AI belongs in the physical world, not just on cloud GPUs.

  • You thrive in "build it, ship it, iterate" environments rather than academic cycles.

  • Due to our mission-critical work, you are eager to help teammates and co-workers during holidays, weekends, and emergencies.

  • You are cordial and over-communicate with teammates, co-workers, and management.

Benefits

Competitive Salary

Attractive compensation package, including equity options.

Benefits

Comprehensive health, dental, and vision insurance, along with other standard benefits.

Work Environment

A dynamic and collaborative San Francisco Bay Area work environment.

Growth Opportunities

Opportunities for professional growth and development, with the chance to shape the future of technology in the industry.