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Software Infrastructure Engineer, ML Ops

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Full Remote
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Offer summary

Qualifications:

BS in computer science with a focus on data engineering and large scale ML systems., 3+ years of industry experience in building and improving large-volume ML training and validation pipelines., Proficient in at least one programming language such as C++, Python, or Go., Hands-on experience with Computer Vision and Deep Learning..

Key responsabilities:

  • Develop and maintain ML infrastructure including ETL pipelines and continuous training pipelines.
  • Create MLOps systems for managing the lifecycle of ML training and inference pipelines.
  • Collaborate with ML engineers to design metrics for mining sensor data.
  • Implement algorithms for ranking and scoring annotation candidates.

Serve Robotics logo
Serve Robotics Information Technology & Services Scaleup https://www.serverobotics.com/
51 - 200 Employees
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Job description

At Serve Robotics, we’re reimagining how things move in cities. Our personable sidewalk robot is our vision for the future. It’s designed to take deliveries away from congested streets, make deliveries available to more people, and benefit local businesses.

The Serve fleet has been delighting merchants, customers, and pedestrians along the way in Los Angeles while doing commercial deliveries. We’re looking for talented individuals who will grow robotic deliveries from surprising novelty to efficient ubiquity.

Who We Are

We are tech industry veterans in software, hardware, and design who are pooling our skills to build the future we want to live in. We are solving real-world problems leveraging robotics, machine learning and computer vision, among other disciplines, with a mindful eye towards the end-to-end user experience. Our team is agile, diverse, and driven. We believe that the best way to solve complicated dynamic problems is collaboratively and respectfully.

Serve’s Machine Learning (ML) platform is an important core part of our autonomy. It empowers us to train and test all kinds of ML models for various real-world tasks. We also use it to mine useful data from terabytes of sensor recordings that we capture every day.

We are looking for an engineer who will join our Machine Learning Infrastructure (ML Infra) team on a mission to build and improve this platform. We use Apache Beam (Dataflow) for our pipelines, Bazel as our build system, BigQuery via dbt, MongoDB and GCS for storage, Kubernetes for service deployment, and Airflow as our orchestration engine.

Responsibilities

  • Develop and maintain ML infrastructure, such as sensor data ETL pipelines, hard example data mining, continuous training pipelines, annotation platform, etc.

  • Develop MLOps system for managing lifecycle of ML cloud training and inference as a service pipelines. Continuously improve ML model development, management and deployment processes.

  • Work together with ML engineers, design metrics for ML tasks to mine sensor data of interest.

  • Design and implement algorithms, such as collaborative filtering, active learning, etc., to rank/score annotation candidates.

  • Work with annotation provider on setting up the annotation process, quality control and feedback loops.

  • Make sensor data and its derivatives widely discoverable and accessible for Robotics Engineers across the entire company.

Qualifications

  • BS in computer science with focus in data engineering and large scale ML systems

  • 3+ years of industry experience building, running and improving large-volume ML training and validation pipelines.

  • Experience with building native cloud applications.

  • Experience building large scale data processing pipelines in production.

  • Proficient in at least one of the following languages: C++, Python, or Go.

  • Hands-on experience and good knowledge of Computer Vision and Deep Learning.

  • Strong tendency to automate own and others’ workflows.

What Makes You Standout

  • MS in computer science with focus in data engineering and large scale ML systems

  • Experience with data discovery and visualization tools like Voxel51, Facets

  • Experience with database systems like BigQuery, MongoDB

  • Experience with Nvidia Jetson platform, e.g. CUDA, TensorRT, etc.

  • Experience with Big Data products such as Apache Beam/Spark/Hadoop, GCP BigQuery, AWS Redshift.

Required profile

Experience

Industry :
Information Technology & Services
Spoken language(s):
English
Check out the description to know which languages are mandatory.

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