• Reinforcement Learning • Spatial Data Mining
🎓 PhD IIIT-D | 🚀 Author: “Reinforcement Learning Explained”
🔬 University of South Dakota AI Research Lab | 📜 Google Scholar | 💼 LinkedIn
- Currently a Postdoctoral Researcher at the University of South Dakota (USD).
- Research interests: Reinforcement Learning (RL), Embodied AI, World Models, Machine Learning in Healthcare, and Pattern Mining.
- Author of the upcoming textbook:
Reinforcement Learning Fundamentals: From Theory to Practice (with companion code repo). - Passionate about teaching, mentoring, and community building in AI.
- ✍️ Writing a comprehensive RL textbook (LaTeX source + reproducible code).
- 🔎 Exploring world models and sample-efficient embodied RL.
- 📊 Working on AI for biomedical computation with collaborators at USD.
- 🎤 Organizing academic events like the AI Symposium @ USD.
- 📚 Reinforcement-Learning-Explained-Code – Companion code for my RL textbook.
- 📖 AI-Symposium – Website for USD AI Symposium.
- 📝 Research paper repositories and proposals (in progress).
- Languages: Python, LaTeX, SQL
- Libraries: PyTorch, TensorFlow, scikit-learn
- Tools: Overleaf, Git, Power Automate, HPC (Lawrence)
- Advanced world model architectures (DreamerV3, AdaWorld).
- Deep RL alignment techniques for LLMs.
- 🌐 Website: AI Research Lab @ USD
- 💼 LinkedIn: linkedin.com/in/srikanth-baride
- 🎓 Google Scholar: Scholar Profile
I enjoy teaching meditation 🧘 alongside AI research — helping people cultivate both clarity of mind and clarity of models.
⭐️ Check out my pinned repositories for active work!