Navya Mehta (navyamehta)

navyamehta

Geek Repo

Location:Waterloo, ON., Canada

Home Page:www.linkedin.com/in/navya-mehta-uj

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Navya Mehta's repositories

dividend-forecast-simulation

We attempt to build predictive ML models to help investors create dividend forecasts for S&P500 companies. By building a proprietary data pipeline, we perform data preprocessing, cleaning and feature engineering on historic financial data to derive market insights.

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jane-street-electronic-trading-comp

This project attempts to design a proprietary data processing system to algorithmically simulate equity trading strategies on Jane Street's electronic investment platform. Combining strategies ranging from pennying and MACD to arbitrage, we work towards building a healthy financial portfolio with prudent liquidity management.

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data-sentiment-NLP

This project attempts to use a mix of traditional NLP techniques including trigrams, HNNs, and SVDs with attempts at LSTM and BERT architectures to predict and analyze sentiment projects - macroeconomic news relevance and Twitter subtext extraction.

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optimization-algorithms

Amalgamation of intriguing research questions surrounding combinatorial optimization across domains

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AI-credit-modelling

As a team of 4, we intend to use machine learning and artificial intelligence (with the context of statistical modelling) for social good, to evaluate credit risk and improve the access and fairness of credit to reach underserved communities.

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ai-research-projects

OpenAI Gym's gaming simulation environments including Atari are used to train RL agents with Deep Q-Networks, policy parameterization and Actor-Critic Approaches to auto-play.

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CFM-HACK-2018

We intend to use algorithmic trading tools, built on analysis of SMA, EMA and the golden cross, to drive portfolio analytics of TSX60 stocks.

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enhancedgamedev

Enhanced C++ Game Development with Pattern Implementations

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functional-system-design

I worked on developing "Faux Racket" compilers, interpreters and assemblers in Scheme to work with programs across the spectrum from simple imperative languages to assembly-level code.

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recommendation-engines

The repository explores varied mathematical approaches to recommendation engines over diverse user data sets.

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signoz-template-celery-opentelemetry

Opentelemetry with Celery

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ShortStocks

We use machine learning to customize news articles about companies to particular investing styles, to better support investor decision making and facilitate information transfer.

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