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tanhtra/README.md

Hello traveller!

My name is Nick Tantra

I am an analytics engineer with years of experience as a systems analyst and front-end developer. I love problem solving and building sustainable systems.

🔭 I’m currently working on :

  • Phase 2 of Aligulac Analytics

Skills:

Development: Python (Pandas, Numpy, Requests, etc), R, SQL, Git, Docker, Cloud (AWS, GCP, Azure), JSON

Tools: AirByte, dbt, PySpark, Apache Kafka - Confluent, MageAI, Airflow, Prefect, Terraform

Data Infrastructure: PostgreSQL, Snowflake, Databricks, BigQuery

Visualization & ML: Python (matplotlib, Altair, ggplot, Folium, etc), Streamlit, Tableau, PowerBI, Scikit-Learn, Tensorflow

Projects

Here are some projects developed during my spare time:

  • Aligulac (Starcraft 2 Matches) Analytics Near end-to-end pipeline used to extract match data from Aligulac.com, store the data in (GCP) Cloud Storage Bucket. Data are then transformed using dbt and MageAI with Streamlit as the end visualisation dashboard.
  • Pipeline Places and Properties End-to-end pipeline that combines data extracted from a custom web-scraper piped in using Confluent-Kafka. Uses Snowflake as a backend with dbt as the transformation tool to merge the scraped data with the API and custom-seed transit data. Streamlit was used for the visualisation layer.

Pinned Loading

  1. data-engineer-handbook data-engineer-handbook Public

    Forked from DataExpert-io/data-engineer-handbook

    This is a repo with links to everything you'd ever want to learn about data engineering

    Jupyter Notebook