Overview
About RocketFrog.ai
RocketFrog.ai is an AI Studio for Business, delivering real-world impact through advanced AI solutions. We specialize in Agentic AI, Deep Learning, and full-stack AI-first product development with applications across industries such as Healthcare, Pharma, Banking, Finance, Insurance, and Hi-Tech.
๐ Ready to take a Rocket Leap with Science?
Role Overview
We are seeking a high-potential Machine Learning Engineer with 2+ years of experience and a strong academic background to join our AI Innovation team. You will design and implement models that drive intelligent automation and AI-first products for enterprise-grade use cases.
Key Responsibilities
- Design, develop, and optimize machine learning models for applications in NLP, Computer Vision, Speech, or multi-modal domains
- Build scalable pipelines for data preprocessing, training, and evaluation
- Propose research-backed approaches for addressing key business challenges.
- Translate academic research and ideas into efficient, production-ready implementations
- Collaborate with product, engineering, and domain teams to align ML systems with business needs
- Stay up-to-date with the latest developments in ML frameworks, tooling, and deployment strategies
Required Skills & Expertise
- Strong knowledge of Linear Algebra, Probability, and Statistics
- Machine Learning Proficiency: Hands-on experience with training and deploying ML/AI models such as deep neural networks, fine-tune foundation language models such as LLMs, VLMs, etc.
- Model Training Workflows: Familiarity with training-validation pipelines, k-fold cross-validation, early stopping,hyperparameter tuning, etc.
- Evaluation Metrics: Experience evaluating models using confusion matrix, PR curves, F1 score, accuracy, ROC-AUC, etc.
- Frameworks: Proficient in Python and PyTorch with strong coding practices (clean, modular, testable)
- Tools: Experience with model libraries and hubs such as Hugging Face Transformers, TorchVision, etc.
- Data Handling: Ability to manage large datasets, custom data loaders, and data augmentation workflows
- Deployment: Experience with model packaging (TorchScript, ONNX) and serving (FastAPI, TorchServe)
- Experimentation & Reproducibility: Familiarity with tools like Weights & Biases, MLflow, or equivalent
Desirable Skills
- Exposure to Agentic AI or orchestration frameworks like LangChain, LangGraph etc.
- Understanding of vector databases, embedding stores, and RAG pipelines
- Apply inference optimization techniques such as quantization, pruning, and distillation
- Hands-on with knowledge distillation and other model compression techniques
- Contributions to open-source ML projects or academic research
- Cloud AI Platforms: Preference for experience with Amazon SageMaker, Azure AI Services, Google Vertex AI, or Azure AI Foundry
๐ Education Requirement:
- B.Tech. / M.Tech. / MS in Computer Science or related technical disciplines.
What We Look For
- Strong foundations in Mathematics, algorithmic thinking, and ML system design
- Curiosity-driven mindset and a passion for solving complex problems
- Ability to convert ideas into scalable and efficient solutions
- Desire to learn and grow in a high-performance, innovation-first environment
- Clear communication and collaborative problem-solving skills