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Job description:
We need a hands-on senior Datascience & AI engineer who can build deep analytics pipelines in Python and implement a GenAI Q&A layer over enterprise data. The work is highly technical: data wrangling, metric computation, anomaly detection/forecasting (light ML), retrieval-augmented generation (RAG), and local LLM inference using Llama + Ollama.
Responsibilities (technical)
Required skills & experience
Nice-to-have
Tools/stack (typical)
Python, pandas, numpy, SQL, scikit-learn, Jupyter, Git, Docker, FastAPI (optional), LangChain/LlamaIndex (optional), Ollama, Llama models, vector DB (FAISS/pgvector/Weaviate), cloud data warehouse (Snowflake or equivalent).
Job ID: 147167261
Skills:
data engineering , Deep Learning, Tensorflow, Nlp, Gcp, Pytorch, Computer Vision, Docker, Opencv, Azure, Kubernetes, Python, AWS, CI CD integration, pipeline automation, MLOps practices, model monitoring tools
Skills:
Summarization, Apis, Tensorflow, Nlp, MLops, Pytorch, Gcp, Docker, Python, AWS, LangChain, LLMs, Hugging Face, Ai, Classification, spaCy, document understanding, NER, LlamaIndex, RESTful ML services
Skills:
snowflake , prophet , Matplotlib, Sql, Azure Sql, Tensorflow, Git, Pytorch, Arima, Spark, Seaborn, Python, LSTM, Temporal Fusion Transformer, Scikit-learn, DeepAR, Dask, Databricks Delta
Skills:
Restful Services, Computer Vision, Deep Learning, Machine Learning, MySQL, Python, Kubernetes, Docker, Apis, MongoDB, Spark, Azure DevOps, Azure machine learning service, Optimization, Amazon Sagemaker, Generative AI, Google Cloud AI
Skills:
Tensorflow, Numpy, MLops, Pandas, Pytorch, XGBoost, Python, experiment tracking, model versioning, model retraining, Monitoring
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