About this job
This opportunity will allow you to work on an open analytics platform leading a big data services initiative as a Data Engineer or Full-Stack Data Scientist.
30,000 ft Platform Overview:
Cloud-based data platform built entirely from open source components that provides the user with the ability to efficient ingest, process, store, and access datasets without compromising ease of use, governance, or security. The platform was conceived to provide a simple tool to store files that reside on local computer drives and file shares into a central repository. Besides a user-friendly file ingestion interface, the original tool also gathered metadata both through user input and automatic parsing of files, and the uploaded content was immediately made available via an API. From those humble beginnings, this platform has now turned into a full-blown well-managed data lake and is continuously being enhanced with new features.
Providing batch, streaming, and API-based ingestion in addition to simple file ingestion. As data is ingested, metadata is collected at the time of ingestion, making datasets immediately searchable in other tools such as: enterprise metadata management system and the enterprise data catalog. The platform can be accessed via an API or SQL queries. Security on datasets is controlled through an existing entitlement workflow based on virtual directory services. Even though the system is relatively young, it is already being used by several predictive models that query data out of this platform using an access API. In addition, descriptive analytics have been enabled via ODBC/JDBCconnectivity, allowing traditional BI tools to interact with the datasets directly, thus increasing the utility of the platform.
Working as a Data Engineering / Tech Lead. Your focus will be involving a Hadoop platform\related tools, and with leading teams to deliver complex products.
• Build new data pipelines, identify existing data gaps and provide automated solutions to deliver analytical capabilities and enriched data to applications.
• Develop Hadoop applications to analyze massive data collections, processing framework to detect conditions, and techniques that will be geared towards supporting trends and analytic decision-making processes.
• Design, build, and manage analytics infrastructure that can be utilized by data analysts, data scientists, and non-technical data consumers.
Programming: Java, Scala, Go, or Python [Any]
- Hadoop [HDFS, Hive, MapReduce, Sqoop, Oozie etc]
- Hbase/Phoenix, Spark/PySpark, Kafka
Nice to Have:
- Containers: Kubernetes and Docker expertise
- Orchestration Processes | Aggregation Strategies | Microservice architecture
- Vault authorizations [nice to have]
- Experience with continuous integration and build tools [CI/CD]
*Thank you very much for taking the time to check this out*
Life at Colaberry Data Analytics
About Colaberry Data Analytics
We deliver empowering advanced analytics and smart data-driven solutions. At Colaberry we typically engage with our clients to solve their most difficult and complex R&D projects within the data Engineering & Data Science arena.
On the Ed-Tech/Training side, we work with our engineers to upskill / train them in Data Analytics --> Check out our Data Science & Data Engineering Training Platform RefactorEd.ai / Microservices & Scala Training
1. Full-Stack / Data Engineering
As a Full-Stack Engineer / Data Engineer you will work with our customers using bleeding-edge tech to assist with transitioning to the Cloud using a Streaming Data Platform, making data accessible through various API's (Microservices), or designing and building processing pipelines at scale, to name a few. All of which encompass building production back-end or web systems.
2. Data Science / Machine Learning / Artificial Intelligence
Many of our clients are using our data science services & capabilities to strengthen competitive positions, improve processes, and increase customer satisfaction. Many organization operations are producing huge amounts of data and those that are harnessing the power of Data Science are monetizing insights to gain greater efficiencies in execution.
Our approach to Data Science is to turn our client’s digital assets into opportunities that create financial outcomes. This involves thought leadership into integrating advanced analytical methods into our clients overall operating model.
- Vacation / Days Off
- Health Benefits
- Professional Development Sponsorship (RefactorEd.ai)
- Annual Bonus
- Education Sponsorship
- Signing Bonus / Relocation