applicant
Email Verified Aishwarya Pawar
Member since October 27, 2025

Data Scientist

70

Bachelor GPA (%)

100

Master GPA (%)

--

English Score

0

Conferences

0

Academic gap years

0

Publications

51.6

a-index (PhD)

--

a-index (master)

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Educations

Education
University of Wisconsin-Stevens Point
Overall GPA (%):  100
Education

List of Publications (Papers, Book Chapters, Reviews, etc.)

Time Series Analysis: Bitcoin and S&P 500 Data

Data Analysis Using Statistical Methods

Work Experience(s)

Data Scientist

  •  TATA Elxsi
  •  Sep 2018 - Nov 2023

• Developed deep learning pipelines (PyTorch) for predictive maintenance and anomaly detection on sensor data; leveraged NNs and LSTMs to achieve 93.8% accuracy
• Deployed ML services via Docker and Flask on AWS EC2/Lambda, delivering real-time predictive insights to clients; introduced MLflow for reproducibility and monitoring, cutting debugging time by 25%
• Applied NLP with BERT embeddings and PySpark pipelines (cutting processing time by 35%) to classify and cluster financial transactions, enabling customer segmentation and fraud-risk detection

Quant Finance Research Intern

  •  Basis Point Global Solutions
  •  Sep 2019 - Jan 2023

• Researched equity strategies using company fundamentals and income statement data, applying factor models to enhance stock selection across cross-sector investments and portfolio optimization
• Developed sector, price, and volume-based trading screens, implemented back-tests and evaluated risk-adjusted returns
• Leveraged Value at Risk (VaR), Monte Carlo simulations, and ML models (Random Forest, LSTM) to predict market trends, assess risks, and evaluate portfolio returns, supporting data-driven investment strategies

ML Engineer (Software Engineer)

  •  CrowdDoing
  •  Sep 2023 - Apr 2026

• Collaborated to build a survey intelligence pipeline using LLM embeddings and RAG retrieval over government/NGO datasets, fine-tuning BERT classifiers for demographic tagging
• Delivered low-latency inference APIs with FastAPI, Docker to host predictive models, improving response time by 40%
• Created MLOps lifecycle with MLflow, CI/CD, and SageMaker, deploying production models with 99.9% uptime

Data Analyst (Credit and Risk)

  •  One Park Financial
  •  Jun 2024 - Sep 2020

• Designed, backtested, and deployed credit score binning models with SHAP/LIME explainability; containerized via Docker and deployed on AWS, boosting funding volume by 40%
• Applied AI/ML, statical and NLP (BERT) models to link borrower behavior with macroeconomic indicators; built risk-optimized funding grids using LGD and PD models that reduced portfolio exposure by 6% across $250M in assets
• Forecasted leads using time-series models (Prophet, SARIMA) and Media Mix Model to optimize spend allocation
• Engineered automated reporting pipelines with SQL and Power BI dashboards, delivering real-time KPI tracking for 120+ metrics used by C-suite execs for credit and risk decisions

AI Engineer (Data Scientist)

  •  US Bank
  •  May 2025 - Present

• Architected an LLM-powered chatbot that ingested large enterprise documents, stored embeddings in FAISS, and applied summarization (Flan-T5, Llama-2 fine-tuned); deployed via FastAPI on AWS, reducing support resolution time by 35%
• Built predictive models (XGBoost, Random Forest) for churn and growth decomposition; guided a targeted retention campaign whose A/B test showed a 9% reduction in churn
• Developed customer segmentation models with clustering (k-means) and enhanced via embedding-based retrieval (RAG) and LoRA-tuned BERT models, improving customer classification precision and enabling targeted outreach

Teaching Experience(s)

Graduate Teaching Assistant

  •  Stevens Institute of Technolog
  •  Jan 2022 - May 2023

• Assisted students with Applied Time Series Analysis and Probability Theory concepts, created and graded HWs and exams