About Adalat AIAdalat AI is a legal-tech nonprofit revolutionizing the Indian judicial system through cutting-edge AI. We are building the country’s first end-to-end justice tech stack — from speech-to-text transcription in courtrooms to intelligent legal assistants — to eliminate judicial delays and make justice more accessible.We currently operate across 10 Indian states and are backed by some of the world’s largest foundations. Our AI systems, including state-of-the-art ASR models for Indian languages, are deployed in multiple high courts — most recently at the Delhi High Court.Founded by technologists and legal experts fromHarvard, Oxford, MIT, and IIIT-Hyderabad , we’re earning recognition alongside India’s most important digital public infrastructure (like UPI and Aadhaar) and are featured in major outlets like Fast Company, Indian Express, and Times of India.Role OverviewAs aStaff Machine Learning Engineer , you will play a central role in driving the core ML research and engineering at Adalat AI. You will work across the ML lifecycle — from data design to training and deployment — and serve as a technical mentor to a growing team of ML engineers and researchers. This role is ideal for someone with deep experience in training large models, especially in low-resource settings, and who thrives on ownership, autonomy, and real-world impact. You will help build systems that touch millions of lives by improving the functioning of the world’s largest court system.Key Responsibilities Research & Systems BuildingDesign, train, and deploy models for speech recognition, summarization, legal Q&A, retrieval, and translation. Build scalable ML systems using LLMs, transformers, and custom architectures. Train large models from scratch (or from base checkpoints) when needed, including curating and managing data pipelines. Contribute to original research; submit to top-tier conferences (A*STAR/CORE-ranked such as ACL, NeurIPS, ICML, EMNLP, or similar).Technical LeadershipMentor junior engineers and researchers on ML design, experimentation, and deployment practices. Lead technical design discussions and decisions on modeling strategies, data pipelines, and infrastructure. Set up best practices for reproducibility, evaluation, and documentation across ML projects.Cross-functional CollaborationTranslate product and legal requirements into technical architecture and model specs. Work with linguists, annotation teams, and legal domain experts to define data needs and ensure model reliability. Collaborate with backend engineers to ensure seamless integration of models into production systems.Ideal ProfilePhD in ML, NLP, Speech, or a related fieldOR equivalent experience working on cutting-edge ML projects at scale. Experience publishing intop-tier A*STAR-ranked AI/ML conferences(e.g., NeurIPS, ACL, EMNLP, ICML, CVPR, ICLR). Strongtrack record of building and deploying production-grade ML systems , ideally in low-resource or domain-specific environments. Proven experience trainingLLMs or ASR models from scratch , including buildingcustom datasets and pipelines . Familiarity withML system optimization , including inference serving, model quantization, and latency reduction. Bonus: experience working in civic tech, public infrastructure, or legal-tech is highly appreciated.You Might Thrive Here If You Are...A hands-onbuilder and researcher , not afraid of messy data, ambiguous specs, or field deployments. A naturalmentor , who enjoys helping others level up while maintaining high technical standards. Excited aboutjustice techand the chance to build systems that improve governance at population scale. Comfortable moving betweenexperimentation and shipping , and betweendeep work and scrappy MVPs .Nice to HaveExperience with annotation team workflows and building training datasets in-house. Experience with retrieval-augmented generation (RAG), fine-tuning strategies, or few-shot learning. Familiarity with tools like Hugging Face Transformers, Weights & Biases, Ray, Triton, or ONNX. Background in legal, civic, or public policy work.Benefits & PerksFully remote with flexible hours Unlimited paid time off Maternity and paternity leave Access to Harvard / MIT / Oxford research and professional networks Generous L&D resources and mentorship Friendly, humble, mission-driven peers Autonomy, ownership, and the chance to solve real-world problemsMedia & RecognitionAdalat AI pitch at Fast Forward Fast Company : 4 Best International Tech Innovations of 2024 Indian Express: AI in Courtrooms Times of India: AI to Cut Court Delays LinkedIn
Job Title
Staff ML Engineer