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Data Scientist (GenAI) 5yrs+

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As a Senior Data Scientist specializing in AI, you will be a key individual contributor responsible for the research, design, and implementation of advanced generative AI models. You will tackle some of our most complex business challenges, transforming concepts into tangible, high-impact AI solutions.

This role requires a deep technical background in machine learning, Traditional ML, Advance ML, Deep learning, Statistical modelling techniques and a passion for staying on the cutting edge of generative AI techniques, including LLMs, diffusion models, and agentic systems. You will own projects from ideation through to production, applying your expertise to build models that push the boundaries of what's possible.

Required Technical Expertise • Languages & Frameworks

  • Python (core ML/AI language, advanced data structures, async & multiprocessing)
  • Deep learning frameworks: PyTorch, TensorFlow, JAX • HuggingFace Transformers & Diffusers ecosystem
  • LLM/agentic frameworks: LangChain, LangGraph, LlamaIndex, Semantic Kernel • MLOps: MLflow, Weights & Biases, Kubeflow
  • Graph Rag, MCP frameworks • Working with CUDA libraries and optimization (CuGraph, CuPy)
  • Generative & Agentic AI • Retrieval-Augmented Generation (RAG) — standard, graph-based, and vector DB–integrated (FAISS, Pinecone, Weaviate, Milvus)
  • Multi-agent orchestration (LangGraph, AutoGen, Semantic Kernal, tool-calling with OpenAI function APIs)
  • Fine-tuning diffusion & generative models (Stable Diffusion, Flux.1, ControlNet, DreamBooth)
  • LLM fine-tuning (parameter-efficient methods: LoRA, QLoRA, adapters) on models like Llama3, Mistral, CodeLlama, Falcon, Gemma, Azure OpenAI models
  • Advanced prompt engineering with context engineering(system prompting, function calling, safety alignment, guardrails) Machine Learning & Deep Learning
  • Classical ML: tree ensembles (XGBoost, LightGBM, CatBoost), linear/logistic regression, clustering (kmeans, DBSCAN), dimensionality reduction (PCA, t-SNE, UMAP)
  • Deep learning: CNNs (ResNet, EfficientNet), RNNs/LSTMs, GRUs, Transformer architectures (BERT, ViT, GPT) • Graph ML: Graph Neural Networks (GNNs — GraphSAGE, GAT, PyTorch Geometric, DGL)
  • Time Series: forecasting (Prophet, ARIMA, DeepAR, Temporal Fusion Transformer)
  • Reinforcement Learning: RLHF, PPO, DQN, policy gradients Computer Vision • Object detection: YOLO (v5–v8), DETR, Faster R-CNN, SSD
  • OCR: PaddleOCR, Tesseract, EasyOCR, LayoutLM for document understanding • Video analytics: object tracking (DeepSORT, ByteTrack), frame stitching, camera calibration & SLAM pipelines
  • Multi-modal ML: CLIP, BLIP, Florence-2, Segment Anything (SAM), vision-language grounding Optimization & Deployment
  • Model optimization: TensorRT, ONNX Runtime, quantization (INT8, FP16, mixed precision), pruning, distillation
  • Scalable deployment: Dockerized microservices, Kubernetes, REST/gRPC APIs, Azure functions.
  • Cloud: Azure AI/ML services (App Service, Azure OpenAI, AML) • Monitoring: Azure Monitor, Prometheus, Grafana, ELK stack for model drift.

Qualifications • Master’s or Bachelor’s degree in Computer Science or related field

  • 3.5–7 years of experience in AI/ML with demonstrated end-to-end solution delivery • Hands-on experience productionizing ML/LLM solutions (from PoC → scalable deployment → monitoring & maintenance)
  • Strong foundation in ML/DL theory (optimization, loss functions, architectures) • Demonstrated applied research/engineering — publications, open-source contributions, or patents are a plus • Strong analytical, problem-solving, and debugging skills

Job Type: Full-time

Pay: ₹180,000.00 - ₹230,000.00 per year

Work Location: Remote

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