Pre-screened and vetted.
“Data science/NLP practitioner with experience at NVIDIA and Microsoft building production-grade NLP and data-linking systems. Has delivered high-performing pipelines (e.g., F1 0.92) and large-scale entity resolution (F1 0.89), plus semantic search using embeddings and Pinecone with ~30–40% relevance gains, backed by rigorous validation (A/B tests, ROUGE, MRR) and strong MLOps/workflow tooling (Airflow, Databricks, FastAPI, MLflow, Prometheus/ELK).”
Intern Software Engineer specializing in full-stack development and machine learning
Senior Applied Scientist specializing in LLMs, GenAI, and agentic systems
Mid-level Machine Learning Engineer specializing in real-time fraud detection and edge AI
Mid-Level Software Engineer specializing in FinTech payments and risk platforms
Senior Full-Stack Engineer specializing in Python, cloud platforms, and scalable web systems
Mid-level Machine Learning Engineer specializing in MLOps, RAG, and real-time personalization
Mid-Level Backend/Full-Stack Software Developer specializing in Java, AWS, and cloud-native APIs
Mid-level Full-Stack Java Developer specializing in microservices and cloud on AWS
Mid-Level Full-Stack Software Engineer specializing in AWS and automation
Intern Software Engineer specializing in AI/ML and LLM applications
Senior .NET Developer specializing in cloud-native microservices for healthcare and FinTech
Mid-level AI/ML Engineer specializing in GenAI agents and production ML systems
Mid-level Machine Learning Engineer specializing in fraud detection and recommendations
Intern Backend/Full-Stack Software Engineer specializing in cloud-native web systems
Mid-level Full-Stack Developer specializing in cloud-native backend services and real-time data platforms
“Backend/data engineering candidate with Netflix experience designing and migrating analytics platforms from batch to real-time streaming (Kafka/Flink) across AWS and GCP. Delivered measurable improvements (40% lower data delay, 99.9% accuracy) using phased rollouts, automated data validation (Great Expectations), and strong observability (Prometheus/Grafana), and proactively hardened pipelines with idempotency to prevent duplicate Kafka processing.”
Intern Data Scientist specializing in GenAI (LLMs, RAG) and ML model optimization
“Built and deployed a production LLM-powered risk assistant for KPMG and Freddie Mac that lets analysts query a confidential Neo4j risk graph in natural language (no Cypher), turning multi-day analysis into minutes with traceable, cited answers. Implemented rigorous guardrails, deterministic verification, RBAC/security controls, and a full eval/observability stack, cutting query error rate by ~50% and iterating through weekly UAT with non-technical risk analysts.”
Junior ML Engineer specializing in Generative AI and LLM applications
“Built a production internal knowledge assistant using a RAG pipeline over large spreadsheets, PDFs, and support documents, using transformer embeddings stored in FAISS. Focused on real-world production challenges—format normalization, retrieval quality, hallucination reduction (context-only + citations), and latency—using hybrid retrieval, quantization, and containerized deployment, and communicated the workflow to non-technical stakeholders using simple analogies.”
“Machine learning software engineer intern experience at Amazon, where they built a production testing framework to inject frames/videos onto devices to measure embedded CV model inference and ensure broad model compatibility via automatic NNA metadata handling. Also built side projects spanning LLM/RAG orchestration (LangChain/LangGraph with reranking and citations) and applied CV/healthcare work (nail disease detection, medical retrieval chatbot).”
Mid-level Machine Learning Engineer specializing in deep learning, MLOps, and real-time inference