drjobs Lead AIML Engineer - Onsite

Lead AIML Engineer - Onsite

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Job Location drjobs

Alexander City - USA

Salary drjobs

Not Disclosed

drjobs

Salary Not Disclosed

Job Description

Position: Lead AI/ML Engineer

Location: Irving TX (From Day One)

Duration: Fulltime

Number of positions: 2

Job Description:

Position Summary:

As a Lead ML/AI Engineer you will drive the design and implementation of functionality related to the endtoend ML/AI and Feature lifecycle management on Azure/Google Cloud Platform leveraging and integrating the cloud native services with other standard operational and automation tools.

Key responsibilities include:

Support the deployment of ML/AI pipelines on the platform.

Enable functionality to support analysis model optimization statistical testing model versioning deployment and monitoring of model and data.

Ability to translate functionality into scalable tested and configurable platform architecture and software.

Establish strong software engineering principles for development in Python on the Azure/Google Cloud Platform.

Deliver features aligned to enterprise AutoML Feature Engineering and MLOPS capability.

Innovative thinking and great communication skills.

Strong ownership of deliverables with design decisions aligned to scale and industry best practices.

Provide technical leadership and mentorship to a team of machine learning engineers. Collaborate with crossfunctional teams to align ML initiatives with overall business goals.

Design implement and optimize machine learning algorithms and models. Stay abreast of the latest advancements in ML research and apply them to solve complex business problems.

Architect and implement scalable and efficient machine learning systems. Collaborate with software engineers to integrate ML models into production systems.

Work closely with data engineers to ensure the availability and quality of data for training and evaluation of machine learning models.

Develop strategies for deploying machine learning models at scale. Ensure models are integrated into production systems with high reliability and performance.

Design and conduct experiments to evaluate the performance of machine learning models. Iterate on models based on feedback and evolving business requirements.

Required Qualifications:

6 years of experience in analytics domains and deep understanding of ML operationalization and lifecycle management.

5 years of deploying and monitoring analytical assets in batch/realtime business processes.

5 years of SQL & Python programming experience leveraging strong software development principles.

Experience in designing and developing AI applications and systems.

Experience with realtime and streaming technology (i.e. Azure Event Hubs Azure Functions Pub/Sub Kafka Spark Streaming etc.)

Experience with REST API/Microservice development using Python/Java.

Experience with deployment/scaling of apps on containerized environment (AKS and/or GKE)

Experience with Snowflake/Big Query Google Dataproc/Databricks or any big data frameworks on Spark

Experience with RDBMS and NoSQL Databases and handson query tuning/optimization.

Preferred Qualifications:

Hands on experience in building solutions using cloud native services (Azure GCP preferred)

Understanding of DevOps Infrastructure as Code automation for self service

Education:

Required: bachelors degree in computer science Engineering Statistics Physics Math or related field or equivalent experience

Preferred: masters degree or PhD with coursework focused on advanced algorithms mathematics in computing data structures etc.

Employment Type

Full Time

Company Industry

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