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Posted 09 July, 2026

Easebuzz - Data Scientist

Nexthire
Pune, MH, IN Full Time
Reference: fb1a44d0d1b918f0

Job Description

Job Summary

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We are seeking a passionate and detail-oriented Data Scientist to join our team with strong expertise in statistical modeling, machine learning, and data-driven problem-solving. Skilled in transforming complex datasets into actionable insights that drive product, business, and operational decisions. Proficient in Python, SQL, predictive modeling, and data visualization. Adept at building end-to-end ML pipelines and communicating analytical findings to technical and non-technical stakeholders.

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Key Responsibilities:

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• Develop, deploy, and fine-tune LLMs (Large Language Models) and work on cutting-edge GenAI applications.

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• Develop and optimize RAG (Retrieval-Augmented Generation) pipelines.

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• Apply traditional machine learning techniques to develop regression and classificationmodels for scoring engines and decision support systems.

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• Design, execute, and iterate on rapid Proof-of-Concepts (POCs) for new features andtechnologies.

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• Work extensively with Python and SQL for data analysis, manipulation, and modeldevelopment.

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• Leverage AWS ecosystem for scalable model training and deployment (BedRock,Sagemaker, EC2, Lambda etc).

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• Handle Natural Language Processing (NLP) tasks like entity recognition, sentiment analysis, and text generation.

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• Collaborate with cross-functional teams to integrate ML solutions into fintech products.

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• Stay updated with the latest advancements in AI/ML and proactively propose new ideas and solutions.

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Required Skills:

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• Exposure to building Agentic RAG, Graph RAG pipelines, and tuning it.

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• Good exposure to a broad range of machine learning algorithms and a solid

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understanding of the foundations as well.

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• Excellent understanding of ML lifecycle: training, deploying, and monitoring ML models.

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• Proficiency in frameworks like Tensorflow, PyTorch, Scikit-learn, Langchain, Llamaindex etc.

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• Exposure to traditional algorithms such as Linear & Logistic Regression, Random Forest, XGBoost, Naive Bayes, SVM, ARIMA, SARIMAX.

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• Good understanding of NLP, LLMS, VLM (Llama, Anthropic).

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• Ability to write and debug complex SQL queries.

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• High level of comfort in the AWS ecosystem (EC2, Lambda, Bedrock, Cloudwatch),

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• Strong problem-solving and analytical skills with an aptitude to learn and adapt in a fast- paced environment.

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• Demonstrated ability to execute rapid POCs and iterate efficiently.

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• Prior experience in the fintech domain is a plus.

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• Good to have: Docker, Flask, MLFLOW, Airflow, K8s

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Eligibility & Qualifications

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• Bachelor's degree in Computer Science, Statistics, Mathematics, Engineering, or arelated quantitative discipline.

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• A master's degree is a plus.

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• 1 - 5 Years (Junior & Seniors).

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Why Join Us:

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• Opportunity to work on impactful data projects in the fintech domain.

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• Collaborative and growth-oriented work culture.

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• Exposure to cutting-edge tools and technologies in data analytics and automation.

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