Director of Artificial Intelligence

Lone Rider
11 months ago
Applications closed

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Position:Director of AI Productivity & Innovation


Location:Remote (Full-Time)


Reports to:CEO


Are you passionate about the limitless possibilities of AI and want to be at the forefront of its integration into a rapidly growing global company?


At Lone Rider, we are seeking anextremely motivated professional with the skills to solve complex problemsto join us asDirector of AI Productivity & Innovation.


We are looking for a highly skilled professional with a background indata analysis, software engineering, AI engineering, machine learning, automation, or similar technical fields, who thrives in a fast-paced, cutting-edge environment.


This is a full-time, high-impact position where you’ll work directly with the CEO to implement AI-driven solutions in logistics, customer service, marketing, finance, and more. 


Key Responsibilities


1.AI Development and Integration

  • Design and deploy AI solutions to automate business processes and enhance operational efficiency.
  • Collaborate with cross-functional teams to identify automation opportunities and implement AI tools tailored to specific needs.
  • Example:Develop scripts to clean and process logistics data, ensuring error-free order management and cost savings.


2.Data Analysis and Optimization

  • Leverage AI and coding skills to analyze large datasets, identify trends, and drive informed decision-making.
  • Example:Use Python or SQL to create dashboards tracking sales performance, logistics efficiency, and customer engagement.
  • Build predictive models for finance, inventory, and marketing.


3.IT and Systems Development

  • Implement and maintain AI-based systems that streamline company workflows.
  • Example:Develop automated translation systems for website localization and real-time multilingual customer support.
  • Create API integrations to connect existing tools and enable seamless data flow across systems.


4.Company-Wide Productivity Enhancements

  • Introduce AI-driven solutions to empower team members with advanced tools for their specific roles.
  • Example:Equip customer service agents with AI-powered chatbots or decision trees for faster query resolution.
  • Establish company standards for AI use and provide training to employees on best practices.


5.Problem Solving and Innovation

  • Stay ahead of the latest developments in AI and emerging technologies, applying them creatively to solve business challenges.
  • Example:Use AI tools to predict inventory shortages or identify potential operational bottlenecks.


Candidate Requirements


  • Strong background indata analysis, software engineering, or IT, with a proven track record of solving complex problems.
  • Hands-on experience with AI tools like ChatGPT, Google Gemini, or similar technologies.
  • Proficiency in programming languages (e.g., Python, R, SQL, JavaScript) and data manipulation frameworks.
  • Familiarity with APIs, automation scripts, and workflow optimization.
  • Excellent analytical and problem-solving skills, with a proactive mindset.
  • Excellent English proficiencyis required for communication with the global team.
  • Passion for innovation, continuous learning, and making a measurable impact.


What We Offer


  • A chance to work directly with the CEO in shaping the future of a fast-growing company.
  • An opportunity to pioneer AI integration and develop innovative solutions that touch every department.
  • A collaborative, remote-first work environment with a global reach.


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