8000 sharangdev75 (Sharang Srivastava) Β· GitHub
[go: up one dir, main page]
More Web Proxy on the site http://driver.im/
Skip to content
View sharangdev75's full-sized avatar
πŸ’»
Coding
πŸ’»
Coding

Block or report sharangdev75

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Please don't include any personal information such as legal names or email addresses. Maximum 100 characters, markdown supported. This note will be visible to only you.
Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
sharangdev75/README.md

Hi, I'm Sharang Srivastava πŸ‘‹

Enthusiastic Data Scientist/Analyst

πŸ”­ Current Projects:

  • Football Player Performance Analysis πŸ“Š:

    • Evaluating ⚽ football players' performance.
    • Analyzing statistics like ⚽ goals, πŸ…°οΈ assists, and defensive actions.
    • Using advanced metrics like 🎯 expected goals (xG) and πŸ“Š passing accuracy.
    • Providing insights for πŸ† clubs, πŸ” scouts, and πŸ‘₯ fans.
    • Utilizing Python-based tools for data analysis.
  • 🌱 I’m currently learning **πŸ“Š AWS Data Analytics πŸš€. As part of my ongoing learning in AWS Data Analytics 8000 , I am gaining expertise in several essential AWS services. Here's a summary of what I am currently learning:

    • Amazon Kinesis Data Firehose πŸ”₯: I am exploring Amazon Kinesis Data Firehose, which is a fully managed service that can capture, transform, and load (ETL) streaming data in real-time. It enables seamless integration with various AWS services, including Amazon S3 and Amazon Redshift, making it ideal for ingesting and processing large volumes of data streams efficiently.
    • AWS Glue ETL 🧩: AWS Glue is a fully managed extract, transform, and load (ETL) service that simplifies the process of preparing and loading data for analytics. I am learning how to use AWS Glue to automate data transformation tasks, making data ready for analysis in services like Amazon Redshift and Amazon Athena.
    • Amazon Athena πŸ“Š: Amazon Athena is a serverless, interactive query service that allows for querying data in Amazon S3 using SQL. I am acquiring skills to perform ad-hoc queries and gain insights from data stored in Amazon S3 using Athena's powerful querying capabilities.
    • Amazon S3 (Simple Storage Service) πŸ“¦: I am learning how to effectively use Amazon S3 as a scalable and secure storage solution for data. It's a fundamental component in AWS data analytics, providing a reliable and cost-effective way to store and access data.
    • Amazon QuickSight πŸ“ˆ: Amazon QuickSight is a cloud-native business intelligence (BI) service that I am exploring to create interactive dashboards and visualizations. It enables me to gain insights from data stored in AWS services and present them in a user-friendly manner.
    • Amazon DynamoDB πŸ’‘: I am also learning about Amazon DynamoDB, a fully managed NoSQL database service. It's crucial for handling structured data and is often used in conjunction with other AWS data analytics services.
  • πŸ”­ I’m currently working on examining how sentiments expressed on Twitter (X) affect the stock market. I collect and analyze tweets related to specific companies and their stock symbols. πŸ“Š Natural language processing techniques are used to determine sentiment (positive, negative, neutral) and assess the overall market sentiment. This analysis is valuable for traders, investors, and financial institutions seeking to gauge market sentiment in real-time. πŸ’ΌπŸ“‰ Both analyses involve data collection, cleaning, and utilizing tools such as 🐍 Python and πŸ“ˆ Tableau for visualization. The goal is to provide actionable insights based on data-driven analysis. πŸ“ˆπŸ”

  • Sentiment Analysis on Twitter for Stock Market πŸ“Š:

    • Analyzing tweets related to specific companies and stock symbols.
    • Using Natural Language Processing to determine sentiment.
    • Utilizing Python and Tableau for visualization.

πŸ’¬ Ask me about:

  • Predictive Modeling in Finance πŸ€–πŸ“Š Predictive Modeling in Finance πŸ€–πŸ“Š:

    • Machine learning models πŸ€–πŸ“Š can predict stock prices or market trends based on historical data by analyzing patterns and relationships in the data. Techniques like time series analysis, regression, and deep learning can be employed to make predictions. πŸ“ˆπŸ“‰***

    • Stock price prediction: Machine learning models can be used to predict future stock prices based on historical data, such as price movements, trading volume, and macroeconomic factors. This can help investors make informed investment decisions.πŸ“ˆπŸ“‰

    • Effective machine learning algorithms for detecting fraudulent financial transactions include Random Forest, Support Vector Machines, and Neural Networks. These algorithms analyze transaction patterns and identify anomalies indicative of fraud. πŸ’³πŸš«

    • Asset allocation: Machine learning models can be used to determine the optimal allocation of assets in a portfolio, such as stocks, bonds, and cash.

    • AWS Glue: Simplifies data preparation and ETL processes for financial data analysis. It automates data transformation tasks, ensuring data is ready for analysis in services like Redshift and Athena.

    • Amazon Athena: A database and analytics service that can handle large-scale financial data. It enables high-performance querying and analysis, making it suitable for financial data analysis and reporting. Amazon QuickSight: A BI service that helps create financial dashboards and visualizations. It allows you to present financial data in a user-friendly manner, aiding in decision-making.

    • Creditworthiness prediction: Machine learning models can be used to predict the likelihood of a borrower repaying a loan. This information can be used by lenders to make informed lending decisions. Risk assessment: Machine learning models can also be used to assess the risk of a loan default. This information can be used by lenders to set interest rates and other terms of the loan. Portfolio Optimization πŸ“ˆπŸ“Š. Machine learning can optimize investment portfolios by considering risk and return. Techniques like Mean-Variance Optimization and Reinforcement Learning can help balance the portfolio for maximum returns with acceptable risk.

    • Risk management: Machine learning models can also be used to manage risk in a portfolio by identifying and mitigating potential risks. AWS Services for Predictive Modeling in Finance β˜οΈπŸ€–πŸ“Š.

    • Credit Scoring πŸ“ŠπŸ’° Machine learning contributes to credit risk assessment by analyzing an applicant's financial history, credit utilization, and other factors. Models like logistic regression and gradient boosting can predict creditworthiness.

    • Rule-based detection: Machine learning models can also be used to create rule-based fraud detection systems. These systems flag transactions that violate certain rules, such as exceeding a spending limit or failing a risk assessment.

    • Amazon SageMaker is a fully managed service for building, training, and deploying machine learning models. In finance, it can be used to develop predictive models for stock prices or fraud detection. SageMaker streamlines the machine learning lifecycle, making it efficient for financial applications. β˜οΈπŸ€–

    • Anomaly detection: Machine learning models can be used to identify anomalous transactions, such as large or unusual purchases, or transactions made from unusual locations. These anomalies may be indicative of fraud.

    • Market trend prediction: Machine learning models can also be used to predict market trends, such as bull and bear markets. This can help investors identify investment opportunities and mitigate risks. Fraud Detection πŸ§πŸ•΅οΈβ€β™‚οΈ.

πŸ“« How to reach me:

πŸ“„ Explore my experiences:

Connect with me:

sharangdev75 sharang75 sharangdev4562

Languages and Tools:

aws elasticsearch kibana mongodb mssql mysql oracle pandas postman python scikit_learn seaborn

Popular repositories Loading

  1. RFM-Values-using-K-Means RFM-Values-using-K-Means Public

    Calculating RFM values

    Jupyter Notebook 3

  2. HR_Domain HR_Domain Public

    Jupyter Notebook 2

  3. ANALYSING-THE-CRIMES-IN-INDIA ANALYSING-THE-CRIMES-IN-INDIA Public

    In the article in the Business Insider, suggests that the crimes in India have cost economic growth. According to an international think tank, the Institute for Economics and Peace, crimes have cos…

    Jupyter Notebook 2

  4. SA_Heart_Disease SA_Heart_Disease Public

    Jupyter Notebook 1

  5. Prediction-on-Religion- Prediction-on-Religion- Public

    R 1

  6. Multiple-Linear-Reg Multiple-Linear-Reg Public

    R 1

0