InXiteOut- Data Science Lead (NLP & GenAI)
Job Description
Data Science Lead (NLP & GenAI)
\nSummary
\nWe are seeking a highly experienced and innovative Data Science Lead with 8+ years of expertise in core data science concepts and around 2+ years of focused, hands-on experience in Natural Language Processing (NLP) and Generative AI (GenAI). You will lead strategic AI/ML initiatives, mentor junior data scientists, and deliver intelligent solutions that drive business value using both classical and modern machine learning techniques.
\nKey Responsibilities
\nLead end-to-end design and delivery of data science solutions, from problem definition to deployment.
\nDesign, build, and fine-tune NLP and GenAI models for tasks such as summarization, classification, question answering, translation, and chatbot applications.
\nApply statistical modeling, predictive analytics, and machine learning algorithms on structured and unstructured datasets.
\nCollaborate with product, engineering, and business teams to translate high-level business problems into data science solutions.
\nEnsure scalability, reproducibility, and performance optimization in all machine learning workflows.
\nWork with large-scale data processing tools and frameworks in cloud-based environments.
\nMentor and review work of junior data scientists and collaborate on research and experimentation.
\nTrack advancements in GenAI, LLMs, and NLP frameworks and bring innovation to enterprise AI use cases.
\nMandatory Skills
\nPython: Strong proficiency in Python for data science, modeling, and scripting
\nMachine Learning: Hands-on with classical and ensemble models (e.g., Random Forest, XGBoost)
\nNLP (2+ years): Experience with transformers, tokenization, embeddings, sentiment analysis
\nGenAI & LLMs: Working with GPT-like models, fine-tuning, prompt engineering
\nDeep Learning (PyTorch / TensorFlow): Building and training deep learning models for NLP and other domains
\nModel Deployment: Deploying models via REST APIs, Docker, or cloud-native services
\nSQL & Data Manipulation: Strong ability to query, clean, and process data
\nStatistical Analysis: Applied statistics, hypothesis testing, and A/B testing
\nVersion Control (Git): Experience using Git in collaborative environments
\nOptional/nice-to-have skills
\nVector Databases: Experience with FAISS, Pinecone, or ChromaDB for semantic search
\nRAG Architecture: Building Retrieval-Augmented Generation pipelines
\nLLM Orchestration: LangChain, LlamaIndex, or similar frameworks
\nCloud Platforms (Azure/GCP/AWS): Cloud-based ML workflows, pipelines, and infrastructure
\nMLOps: Model tracking, monitoring, CI/CD with MLflow, Kubeflow, etc.
\nBig Data Tools: Spark, Databricks, or Hadoop ecosystem familiarity
\nExperiment Tracking: Tools like Weights & Biases, MLflow
\nAcademic Research / Publications: Experience publishing whitepapers or research contributions
\nHand-on experience with Databricks, preferably Azure Databricks platform.
\nHand-on experience with Delta Lake, preferably Azure Databricks and ADLS Gen2 platforms.
\nEducational Qualifications
\nMaster's or PhD in Computer Science, Data Science, AI/ML, Statistics, or a related field.
\nCertifications (preferred but not mandatory)
\nGoogle Cloud or Azure AI Engineer / Data Scientist Associate
\nDatabricks Certified Machine Learning Professional
\nDeepLearning.AI Generative AI certification
\nHugging Face Transformers certification