Company Description
Since 2020, AlmaBetter has been a pioneer in online technical education, specializing in Data Science and Web Development. With a community of over 50,000 learners and 2000+ successful placements, we bridge the skill gap and empower the tech workforce for a better tomorrow. Gain access to industry professionals from top companies like LinkedIn, Google, Microsoft, Netflix, and Airbnb. With live classes, coding problems, mock interviews, real-world projects, and a pay-after-placement program, we offer a practical and immersive learning experience. Choose AlmaBetter as your trusted partner for tech education and excel in the fast-paced tech industry.
Role Overview:
We are looking for a passionate GenAI Instructor who thrives at the intersection of cutting-edge Generative AI technologies and impactful education. As a GenAI Instructor, you will shape the future of AI education by delivering industry-aligned content, mentoring learners, and fostering the mindset to build real-world AI systems using LLMs, AI agents, RAG pipelines, LangChain, LangGraph, AutoGen, CrewAI, Stable Diffusion, and more.
Note: A strong background in Machine Learning (ML) and Deep Learning (DL) is non-negotiable. Familiarity with MLOps tools and workflows is considered a strong plus.
Key Responsibilities
1. Curriculum Ownership & Development
- Lead the design and iteration of a world-class curriculum around:
> Applied Deep Learning
> Applied Machine Learning
> LLMs and Prompt Engineering
> LangChain and LangGraph
> AI Agents using CrewAI and AutoGen
> RAG pipelines using LlamaIndex
> Fine-tuning, RLHF, and MLOps
> Stable Diffusion models
> Multi-agent real-world AI projects
- Continuously update content based on emerging industry trends.
2. Instructional Excellence
- Deliver live, recorded, or blended sessions that simplify complex GenAI concepts.
- Foster project-based learning environments with real-world AI use cases (e.g., hotel agent systems, ecommerce RAG agents).
- Break down challenging tools like LangGraph, AutoGen, and Stable Diffusion for learners of all backgrounds.
3. Student Mentorship & Evaluation
- Guide students in capstone projects covering agentic design, RAG, and GenAI deployments.
- Provide timely and actionable feedback on assignments and presentations.
- Mentor learners in building AI-first thinking and problem-solving skills.
4. Continuous Innovation
- Integrate cutting-edge tools and APIs (Gemini, OpenRouter, HuggingFace, etc.) into the teaching stack.
- Collaborate with internal teams to improve delivery, curriculum flow, and learning outcomes.
5. Industry Collaboration & Engagement
- Engage in communities around open-source GenAI tooling and contribute thought leadership.
- Stay active on platforms like GitHub, LinkedIn, Hugging Face, and LangChain community forums.
Core Topics You'll Be Expected to Teach
As a GenAI Instructor, you will be responsible for delivering comprehensive instruction and project-based learning across the following domains:
1. Applied Deep Learning
- Neural networks, CNNs, RNNs using PyTorch
- NLP and Computer Vision foundations for GenAI
- Integrating DL models with LLM pipelines
2. Applied Machine Learning
- Core supervised and unsupervised ML algorithms
- Feature engineering, model evaluation, and pipeline design
- ML system design for GenAI-backed applications
3. Programming & Data Foundations
- Python and Python Libraries (e.g., NumPy, Pandas, Scikit-learn, Transformers)
- Applied SQL for querying structured data in GenAI workflows
- Applied Statistics for data-driven decision-making and model evaluation
4. Foundations of Generative AI
- Introduction to Generative AI concepts and ecosystem
- Ethical and responsible use of AI technologies
- AI safety and alignment in the GenAI era
5. Large Language Models (LLMs) & Prompt Engineering
- Understanding LLMs and transformer-based architectures
- Crafting effective prompts for zero-shot and few-shot tasks
- Hands-on projects using LangChain for LLM-based workflows
6. Building Agentic AI Applications
- Developing applications using LangGraph, AutoGen, and CrewAI
- Designing, orchestrating, and scaling AI agents and multi-agent systems
- Implementing agent memory, tools, routing, and RAG workflows
7. Retrieval-Augmented Generation (RAG) Systems
- RAG system architecture and design principles
- Implementing vector search and indexing using LlamaIndex
- Building production-ready GenAI applications with RAG pipelines
8. Fine-tuning and RLHF
- Finetuning pre-trained LLMs for custom tasks
- Training LLMs from scratch with small to medium datasets
- Reinforcement Learning with Human Feedback (RLHF) fundamentals
9. MLOps for GenAI Applications
- LLMOps: Building, monitoring, and deploying GenAI systems
- AgentOps: Managing lifecycle of deployed AI agents
- CI/CD pipelines, version control, evaluation, and scaling
10. Business & Strategic Applications of GenAI
- Structuring AI solutions for real-world business use cases
- Building GenAI strategies for domains like eCommerce, hospitality, and productivity
- GenAI for leaders: frameworks, risks, and competitive positioning
Qualifications
- Minimum 2 years of experience in GenAI, AI/ML engineering, or Data Science Instructional roles.
- Proven expertise in:
- LLMs, LangChain, LangGraph, AutoGen, CrewAI
- RAG systems (LlamaIndex, vector databases)
- Stable Diffusion, Reinforcement Learning, RLHF
- Python, PyTorch, APIs, Prompt Engineering
- Strong foundation in Machine Learning and Deep Learning is mandatory.
- Familiarity with MLOps workflows (e.g., CI/CD, monitoring, deployment) is a strong advantage.
- Hands-on experience building or mentoring real-world GenAI applications.
- Excellent verbal and written communication skills.
- Demonstrated ability to break down complex technical systems into teachable components.
Preferred Skills
- Prior teaching/training experience in AI/ML/GenAI.
- Active contributor to open-source GenAI tools or frameworks.
- Experience with platform deployment, LLMOps, and agent orchestration.
- Familiarity with product-led education or startup ecosystems.