Blockchain.com is hiring a Web3 Machine Learning Engineer
Compensation: $39k - $70k estimated
Location: CA San Francisco, California, United States
We are looking for a Machine Learning Engineer to join our Data Science and Business Intelligence team. Exploiting data is core to our business, and in this role, you will have an opportunity to:
- Enable world-class user experiences across all our products by developing and deploying ML Infrastructure
- Support the organization across a range of areas including experimentation, fraud, market signals, marketing, pricing and many more
- Being responsible for the Machine Learning Infrastructure: feature store, data and model version control system, training pipelines, inference serving, logging, scaling systems, etc.
We are looking for a Machine Learning Engineer who can help to develop ML infrastructure to improve how Blockchain.com operates and how we serve our customers.
Middle
WHAT YOU WILL DO
- Consistently advance the state of ML for your problem, including setting and executing against roadmaps for 6-month+ timeframes.
- Define projects for other engineers to solve and achieve impact based on your direction.
- Own the full ML life cycle for a significant new ML product, including its production quality and continued improvements
- Complement our data scientists by contributing to a reliable, secure and maintainable modelling framework that can be used to deploy models to production easily
- You are a strong advocate for ML excellence
- Code deliverables in tandem with Data Scientists
WHAT YOU WILL NEED
- Experience with developing end-to-end machine learning pipelines that ensure consistency between development and production environments.
- Ability to design ML architectures for scale with site traffic and complexity of features for predictive algorithms.
- Care with regards to model and data versioning, resource allocation and scaling, and logging to build optimal systems.
- Experience with creating systems that monitor and react to faults in resources, data streams and model responses.
Nice to have
- Experience with Airflow or Google Composer
- Experiences with python and other programming languages such as Java, Kotlin or Scala
- Experience with Spark or other Big Data frameworks
- Experience with Kubernetes for data and ML workloads
- Experience working with open-source machine learning libraries
- 2-5 years commercial experience in a related role
- Commonly used ML Libraries experience: Xgboost, lgbm, sklearn
Senior
WHAT YOU WILL DO
- Consistently advance the state of ML for your problem, including setting and executing against roadmaps for 6-month+ timeframes.
- Define projects for other engineers to solve and achieve impact based on your direction.
- Own the full ML life cycle for a significant new ML product, including product quality and continued improvements
- You are a strong advocate for ML excellence
- Code deliverables in tandem with Data Scientists
- Complement our data scientists by providing a reliable, secure and maintainable modelling framework that can be used to deploy models to production easily
- Play a critical role in helping to set up directions and goals for the team
- Build and ship high-quality code, provide thorough code reviews, testing, monitoring and proactive changes to improve stability
- You are the one who implements the hardest part of the system or feature
WHAT YOU WILL NEED
- Ability to lead/coordinate rollout and releases of major initiatives
- Experience with developing end-to-end machine learning pipelines that ensure consistency between development and production environments.
- Experience working with distributed storage systems
- Ability to design ML architectures for scale with site traffic and complexity of features for predictive algorithms.
- Care with regards to model and data versioning, resource allocation and scaling, and logging to build optimal systems.
- Experience with creating systems that monitor and react to faults in resources, data streams and model responses.
- Experience with MLOps tools for scalable, production-level deployment including past work with feature stores, model hosting and versioning, data versioning, prediction and drift monitoring, and automated remediation
Nice to have
- Experience with Airflow or Google Composer
- Experiences with python and other programming languages such as Java, Kotlin or Scala
- Experience with Spark or other Big Data frameworks
- Experience with Kubernetes Engine
- Experience working with open-source machine learning libraries
- 5-8 years of commercial experience in a related role
- Commonly used ML Libraries experience: Xgboost, lgbm, sklearn
Staff
WHAT YOU WILL DO
- Consistently advance the state of ML for your problem, including setting and executing against roadmaps for 6-month+ timeframes.
- Complement our data scientists by designing and implementing a reliable, secure and maintainable modelling framework that can be used to deploy models to production easily.
- Define projects for other engineers to possibly solve and achieve impact based on your direction.
- Own the full ML life cycle for a significant new ML product, including production quality.
- You are a strong advocate for ML excellence.
- Code deliverables in tandem with Data Scientists.
- Play a critical role in helping to set up directions and goals for the team.
- Build and ship high-quality code, provide thorough code reviews, testing, monitoring and proactive changes to improve stability.
- You are the one who implements the hardest part of the system or feature.
WHAT YOU WILL NEED
- Ability to solve technical problems that few others can do
- Ability to lead/coordinate rollout and releases of major initiatives
- Experience with developing end-to-end machine learning pipelines that ensure consistency between development and production environments.
- Experience working with distributed storage systems
- Ability to design ML architectures for scale with site traffic and complexity of features for predictive algorithms.
- Care with regards to model and data versioning, resource allocation and scaling, and logging to build optimal systems.
- Experience with creating systems that monitor and react to faults in resources, data streams and model responses.
- Deep experience with MLOps tools for scalable, production-level deployment including past work with feature stores, model hosting and versioning, data versioning, prediction and drift monitoring, and automated remediation
Nice to have
- Experience with Airflow or Google Composer
- Experiences with python and other programming languages such as Java, Kotlin or Scala
- Experience with Spark or other Big Data frameworks
- Experience with Kubernetes for data and ML workloads
- Experience working with open-source machine learning libraries
- 8+ years of commercial experience in a related role
- Commonly used ML Libraries experience: Xgboost, lgbm, sklearn
- Competitive full-time salary based on experience and meaningful equity in an industry-leading company
- The opportunity to be a key player and build your career at a rapidly expanding, global technology company in an exciting, emerging industry.
- Unlimited vacation policy; work hard and take time when you need it.
- Crypto bonuses
- Performance-based bonuses paid in cash
- Apple equipment provided by the company
- Awesome office locations and remote working options.
Apply Now:
This job is closed
Compensation: $39k - $70k estimated
Location: CA San Francisco, California, United States
This job is closed
Benefits: Unlimited Vacation
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