Skip to content
View rloredo's full-sized avatar

Block or report rloredo

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
rloredo/README.md

Hi there 👋

I'm Rodrigo, a data analyst, scientist, engineer, guru, sherpa... currently living in Amsterdam, NL (originally from Argentina).

I’m currently working at Vinted as a Analytics Engineer.

Before that, I worked at Felyx as an Analytics Engineer too. I've also worked at Amberscript setting up the analytics-BI department. I was in charge of the whole analytics ecosystem, from ingestion to visualization and insight-sharing. I've also worked as a Data Scientist for Tiendanube & Nuvemshop, a B2B, SaaS company, for almost two years. In that job I had to handle big amounts of data, implement supervised and unsupervised ML models, report insights to key stakeholders, and lead a team of four data scientists. You can read a little bit more about those projects here.

My journey to Data Science began when I started my Ph.D. in psycho and neurolinguistics. In that process, I realized that what I loved most was designing and implementing experiments, and modeling data to analyze the results. Thus, I started studying descriptive and inferential statistics, machine learning, and learning to code.

In my free time, I like to read, study, and write about data science & analytics, human skills, and other things. I also love outdoor sports like rock climbing, sailing, and playing football. I also enjoy building things, woodworking, and gardening. I fixed a 12ft. sailboat and I've been building a 14ft. wooden boat!

Projects

I have worked on, or supervised projects about:

  • Topic modelling and tagging of customer support conversations
  • Customer clustering using Amplitude events and product configurations
  • Chatbot for customer support
  • Data Science toolkit for our team
  • Quality lead predictor: predict if a trial will pay after trial period
  • Quality partner predictor: predict if a commercial partner will bring a new client
  • Churn analysis: failed predictor project =(
  • Perfect client modelling to find out what our best clients do and how we can make recommendations based on those practices to other clients
  • Market basket analysis for apps marketplace
  • Customer journey visualization using Amplitude events and sankey diagrams
  • A/B tests of user onboarding
  • A/B tests of e-commerce checkout page
  • Crawling of instagram and twitter metrics, competitors, churned clients, etc.
  • Attribution models for performance marketing
  • Allocation of revenue and financial consolidation
  • Unit economics and PnL (CAC, LTV, etc.)
  • And many more!

Gists

Check out my gists with useful snippets for NLP and discrete event simulations.

Personal website

In my blog I share some thoughts and stories about Data Science and Analytics.

Pinned Loading

  1. elementary-data/elementary elementary-data/elementary Public

    The dbt-native data observability solution for data & analytics engineers. Monitor your data pipelines in minutes. Available as self-hosted or cloud service with premium features.

    HTML 1.9k 165

  2. git-jira git-jira Public

    A git addon to manage jira from git

    Python

  3. whatido whatido Public

    Resources for my blog: whatido.com.ar

    Jupyter Notebook

  4. LDA-explanation-and-example LDA-explanation-and-example Public

    A quick intro to LDA with examples

    Jupyter Notebook

  5. pln-uba-2019 pln-uba-2019 Public

    Forked from PLN-FaMAF/pln-uba-2019

    Introducción al Procesamiento de Lenguaje Natural - UBA 2019

    Jupyter Notebook

  6. StatisticalAnalysisExp StatisticalAnalysisExp Public

    Statistical Analysis with R: Rapid access to scalar implicatures