About this job
Colaberry is a developer founded, developer run, company who is looking to add talented & passionate data engineers to their team. Hoping the below synopsis provides you with a solid 30,000 ft view of what this work will entail. You'll perform hands-on, data engineering / back-end software development. Implementing high quality data solutions and applications for data science and data analytics platform(s) in AWS.
Where high-resolution Geospatial imagery is inaccessible and thick as molasses, you're someone who can make it flow like water. You’ll be responsible for - designing and building processing pipelines at scale for UAV and other Geospatial imagery sources with the goal of making this data accessible through various APIs. You'd work with data engineers and scientists to make these big data solutions come to life. Additionally, working with teams to build new tools for crop monitoring that will improve precision agriculture, optimize our food supply, and thus decrease our collective strain on the environment.
You will help transform our customers multi petabyte repositories of data into useful insights for their R&D, Supply Chain, and Commercial teams. This is a great opportunity to help an established global company improve lives around the world yet still enjoy the culture and vibe of a small company. They value people who can bring globally centric, creative solutions and are always ready to embrace the next opportunity. The successful candidate will be responsible to ensure that the platform will be robust and scalable in order to handle increasing volumes and demands from data and analytics.
- Practical cloud computing with AWS technologies (EC2, S3, ECS, etc.) in high performance and data intensive architectures for ingesting, computing, and managing spatial and non-spatial datasets.
- Strong programming skills in one of the following: Python / Scala / Clojure / C or C++. Experience programming with the ability to quickly create prototype solutions on Unix / Linux platforms.
- Strong knowledge of Linux with the ability to be able to build applications via the command line, debug issues, update software on Linux servers & perform system administration tasks.
- Proficiency in multiple facets of software engineering including command-line application development, source control, continuous integration, and automated deployment by employing best practices and employing basic project scaffolding approaches (semantic versioning, security, infrastructure-as-code, etc.).
- Gather and process raw data at scale from multiple data sources via ETL pipelines including implementing storage solutions using S3 and RDBMS (Postgres, MySQL, Oracle, SqlServer) – RDS preferred.
Additional (Not Required --> Nice to Have):
- Working knowledge of Docker container orchestration strategies and best practices for solution development and deployment of large-scale data processing pipelines for data discovery.
- Interest and/or experience in data science and building statistical learning models for data analysis.
- Background in data mining and statistical analysis.
- Additional experience with big data and compute platforms such as Hadoop, Spark, MapReduce are preferred.
- Experience with NoSQL databases preferred.
- Experience in research, life sciences, or in data science is a plus.
*Thank you for checking this out. We look forward to hearing from you and connecting in the near future!
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