Generative AI Instructor

Jellyfish
London
1 year ago
Applications closed

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Company Description

At Jellyfish, we believe in the power of diverse perspectives and inclusive collaboration. We welcome individuals who excel in collaborative, varied teams and value the unique contributions that each person brings to the table.

Jellyfish is a global digital marketing agency; a unique fusion of tech enthusiasts, creative minds, and media and data experts all united to empower our clients along their digital journey. Our commitment to embracing diverse perspectives fuels our innovation and strategies that challenge the status quo, reinvent media activation, and craft influential stories for our global clients and their customers. Join us in shaping a future where business growth and personal fulfilment go hand in hand.

Job Description

Jellyfish Training is a forward-thinking training organization focused on delivering high-quality education in emerging technologies. We are seeking a Technical Instructor with deep expertise in Generative AI to teach courses on various generative AI topics and tools. This is a fantastic opportunity for an instructor who is passionate about artificial intelligence and eager to share knowledge on cutting-edge tools and models like GPT, DALL·E, and others.

As a Generative AI Technical Instructor, you will design and deliver hands-on, technical training on topics such as text generation, image and audio generation, AI for code, and generative design. You will guide learners through the use of popular generative AI tools and help them master the concepts, methodologies, and applications that are shaping industries.

Responsibilities

Course Delivery: Deliver dynamic, engaging, and effective training sessions on generative AI topics, including but not limited to text generation, image generation, music and audio creation, code generation, and design tools. Hands-On Learning: Provide real-world examples and interactive labs that enable students to work with tools like OpenAI GPT (ChatGPT), DALL·E, MidJourney, GitHub Copilot, Runway ML, and others to generate content, code, and creative media. Curriculum Development: Work with instructional design teams to develop and update curriculum that incorporates both foundational AI knowledge and practical, hands-on experience with generative AI tools. Assessments & Feedback: Create assessments, quizzes, and coding challenges to evaluate learner progress, and provide constructive feedback to help students refine their skills. Mentorship & Support: Offer personalized guidance and support to students, providing expert troubleshooting and advice on project work using generative AI tools like Google Gemini, Claude, and Hugging Face. Stay Current: Keep up-to-date with the latest advancements in generative AI, incorporating emerging tools and techniques into course offerings. Collaborate with Teams: Work closely with the sales team to support the development of opportunities and the marketing team to ensure that training materials align with industry needs and learner expectations.

Qualifications

Has a good knowledge of how Generative AI can be used for digital marketing applications, and is comfortable learning and talking about tools that are used in this space. Technical Expertise: Strong working knowledge of generative AI tools Hands-On Experience: Practical experience using generative AI tools for creating content, coding, designing, or developing AI-based solutions. Teaching/Instruction Experience: Proven ability to explain complex technical concepts to diverse audiences. Strong Communication Skills: Ability to effectively explain advanced AI concepts in an accessible and engaging manner, both in person and in remote settings. Educational Background: A degree in Computer Science, Data Science, AI, Machine Learning, or a related field. Certifications or training in AI/ML are a plus. Problem-Solving Abilities: Ability to troubleshoot issues students may encounter while using generative AI tools and provide clear, actionable solutions. Adaptability: Willingness to continuously update course content as new generative AI tools and techniques emerge in the field.AdvantageousExperience with online learning platforms and tools (, Zoom, Google Meet, etc.). Comfortable teaching across different modalities, including live virtual courses, pre-recorded content, and self-paced modules. Flexible with working across different time zones and travel where required.

Additional Information

Join Jellyfish and experience a workplace where we prioritise your growth, celebrate your contributions, and empower you to tailor your work environment to suit your needs.

Custom Work Environment: Work remotely for up to 60% of your days and shape your day between 8am. and 6:30pm with flexible working hours.

Growth, Your Way: Grow your career with one paid day each month for self-development and access to LinkedIn Learningwith unlimited online courses.

Family Support: Enjoy 14 weeks of paid leave for primary caregivers and 4 weeks of paid leave for secondary caregivers. We also provide £1000 (or equivalent) towards courses for returning primary caregivers to support your transition back into work.

Unfortunately, there has been an increase in fake recruiters impersonating Jellyfish and unlawfully using our brand name. If you are unsure if an email with a job offer you have received is genuinely from Jellyfish, or if you suspect any fraudulent activity, please report it to .

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