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BayoAdejare/README.md

Twitter Follow Linkedin: Adebayo Adejare Medium Badge Kaggle Badge

πŸš€ Data/ML Engineer πŸ€– | πŸ‘¨β€πŸ”§ Pipeline Architect | 🐍 Python/Analytics Enthusiast πŸ“Š

About Me πŸ‘‹

Hi, I'm Bayo.

I'm a passionate Data/ML Engineer with a knack for building robust, scalable data pipelines and turning raw data into actionable insights. With years of experience in the field, I've worked on projects ranging from real-time streaming analytics to large-scale batch processing systems. My expertise extends to machine learning, where I've implemented ML pipelines and deployed models at scale, bridging the gap between data engineering and data science.

Learning 🌱

I'm always excited to expand my knowledge and stay up-to-date with the latest trends in data engineering. Currently, I'm focusing on:

  • Generative AI: Exploring applications of generative models in data pipelines and analytics
  • MLOps: Implementing best practices for deploying and maintaining machine learning models in production
  • Graph Databases: Learning Neo4j for handling complex, interconnected data
  • Data Mesh Architecture: Studying decentralized data management approaches

Projects πŸ”­

Real-time Data Processing Pipeline with Spark Streaming

  • Developed a robust real-time data processing pipeline using Apache Spark Streaming and Kafka
  • Ingested high-volume streaming data from IoT devices and processed it in real-time
  • Implemented windowed operations and stateful transformations to analyze time-series data
  • Utilized Spark SQL for complex aggregations and Delta Lake for reliable storage
  • Deployed the pipeline on AWS EMR for scalability and cost-effectiveness

Data Warehouse Optimization

  • Designed and implemented a star schema data model for a large-scale data warehouse
  • Optimized query performance by creating appropriate indexes and partitioning strategies
  • Reduced query execution time by 60% through careful schema design and query tuning

ETL Pipeline Automation

  • Built an automated ETL pipeline using Apache Airflow to process daily batches of data
  • Integrated multiple data sources and implemented data quality checks
  • Reduced manual intervention by 87% and improved data freshness

Stats πŸ“ˆ

GitHub Stats GitHub Stats

Pinned Loading

  1. lightning-containers lightning-containers Public

    Docker powered starter for geospatial analysis of lightning atmospheric data.

    Jupyter Notebook 6 2

  2. lightning-streams lightning-streams Public

    Batch/stream ETL pipeline of NOAA GLM dataset, using Python frameworks: Dagster, PySpark and Parquet storage.

    Python 3

  3. airbyte_dbt_covid19 airbyte_dbt_covid19 Public

    dbt transformations for Snowflake data warehouse.

    Python 7 2

  4. dbt_hmda_data dbt_hmda_data Public

    Trying out dbt python models.

    Python 1

  5. snowflake-clusters snowflake-clusters Public

    Snowflake cluster keys & "micro-partitioning" scheme.

    PLpgSQL

  6. dagster_noaa_goes dagster_noaa_goes Public

    An example orchestration using Dagster.

    Python 2