Data/ML Engineer
Hoopla
This job is no longer accepting applications
See open jobs at Hoopla.See open jobs similar to "Data/ML Engineer" Trinity Ventures.About Raydiant
Raydiant is on a mission to create amazing experiences for people everywhere they go.
Using a first-of-its-kind technology, Raydiant reimagines and transforms customer and employee experiences through dynamic and interactive digital signage. Some of the nation’s most recognizable brick-and-mortar companies, including Chick-Fil-A, First Bank, Harvard University, Thomson Reuters, and Wahlburgers use Raydiant to keep employees engaged and customers coming back, all while driving revenue.
Built with both people and businesses in mind, Raydiant focuses on the experience so companies can focus on their products. Franchise managers, IT, marketing, and communications executives can effectively scale their brick-and-mortar operations while eliminating outdated technology. Our superior product, service, and integrations seamlessly create more engaging and personalized in-store experiences that keep customers coming back and buying more.
About the role
Our team is great, but you can help make it better.
Join a team of Data Engineers to build the next-gen data platform at Raydiant; collaborate, manage, coach, and develop the members of the group to ensure that it is both effective and efficient in its mission. Fully hands-on position as Data Engineer.
The role is remote, but ideally, candidates will be based in the Vancouver area, where Raydiant already has a presence.
What You Will Be Doing
- Hands-On data engineer and analyst to implement and verify production machine learning algorithms and pipelines
- Design, build, and maintain data pipelines for both batch and real-time processing in a processing environment
- Maintain and optimize the data infrastructure required for ETL workloads
- Develop new ETL processes to help extract and manipulate data from multiple sources
- Automate data workflows such as data ingestion, aggregation, and ETL processing
- Process raw data in Data Warehouses into a consumable dataset for both technical and non-technical stakeholders
- Partner with data scientists and functional leaders in sales, marketing, and product to deploy machine learning models in production
- Build, maintain, and deploy data products for analytics and data science teams on cloud platforms (e.g. AWS, GCP)
- Ensure data accuracy, integrity, privacy, security, and compliance through quality control procedures
- Monitor data systems performance and implement optimization strategies
- Leverage data controls to maintain data privacy, security, compliance, and quality for allocated areas of ownership
- Create, qualify, and manage Big Data opportunities through to the completion
- Build and maintain strong links with other engineering members, and product management to enable both understand and influence the company’s technology strategy
- Develop approaches to establish, validate, and extend complex datasets used to train and evaluate statistical models
What We Are Looking For
Bachelor's degree in Computer Science or related field
A minimum of 5 years hands-on experience as a Data Engineer
Formal qualifications in one of the following disciplines Computer Science, Data Science, Statistics, Mathematical Modelling
Proven skill development and applying machine learning or algorithms to large-scale business problems.
Advanced SQL skills and experience with relational databases and database design
Experience working with cloud Data Warehouse solutions (e.g., Redshift, BigQuery, Snowflake, Databricks, etc.)
Experience working with data ingestion tools such as Kinesis Firehose, Kafka, Stitch, or Matillion
Working knowledge of public clouds (e.g. AWS, GCP)
Experience building and deploying data lakes
Experience building and deploying machine learning models in production
Strong proficiency in object-oriented languages: Python, Go
Strong proficiency in scripting languages like Bash
Strong proficiency in data pipeline and workflow management tools (e.g., AWS Glue, Airflow)
Experience working with IaC frameworks such as Terraform, AWS CDK
Good understanding of NoSQL databases like Redis, Cassandra, MongoDB, and DynamoDB
Expertise with popular off the shelf machine learning toolkits and APIs
Experience with R&D agile methodologies
Experience with CI/CD pipelines
Strong project management and organizational skills
Excellent problem-solving, communication, and organizational skills
Ability to explain/evangelize machine learning and statistical concepts to software engineers, project managers, team members, executives, and technical managers
Proven ability to work independently and with a team
Agile, enthusiastic self-starter who takes pride in being on top of the technology bleeding edge and recognized as a knowledge source within the community
- Experience working with multiple customer and partner data sets
- Experience building customer-facing data products
Bonus Point For
- Strong knowledge of AWS Analytics services
- Experience working with AWS Glue data pipeline services
- Knowledge of building data mesh architectures with AWS lake formation.
- Knowledge of data governance with AWS.
- Experience working with Amazon SageMaker.
- Experience with working on large data sets and distributed computing (e.g.Amazon EMR, Hive/Hadoop/Spark).
- Experience with GenAI
- Experience working with LLMs
- Experience with RAG architectures
Perks/Benefits at Raydiant
- Platinum medical, dental, & vision plan through Manulife
- Flexible PTO and paid holidays
- Be a part of low ego, high-performance team
- One of the first 150 people in a very fast-growing company
This job is no longer accepting applications
See open jobs at Hoopla.See open jobs similar to "Data/ML Engineer" Trinity Ventures.