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Core Competencies
Role fitCore Competencies
Use this summary to align your resume positioning with the role.
Proficient in building and maintaining scalable machine learning solutions, with extensive experience in Python and frameworks such as PyTorch, TensorFlow, and Keras. Demonstrates strong capabilities in designing large-scale experiments, collaborating with cross-functional teams, and upholding engineering best practices in production environments.
Highest-signal resume keywords
Machine Learning ExperiencePython ProficiencyDeep Learning FrameworksML Ops ConceptsAWS Experience
ATS Keywords
Tailor your resumeApplicant Tracking System Keywords
Tip: use these terms in your resume and cover letter to boost ATS matches.
Hard Skills
Machine LearningDeep LearningPythonModel TrainingModel ValidationData Pipeline DevelopmentBig Data ComponentsAutomated TestingCode ReviewsStatistical Modeling
Soft Skills
CollaborationMentoringProblem SolvingCommunicationAdaptability
Tools & Technologies
PyTorchTensorFlowKerasKafkaApache SparkHadoopPrestoDynamoDBAWSML Ops
Industry Keywords
Machine Learning SolutionsProduction ModelsData PipelinesAgile EnvironmentBusiness Analysis
Tech Stack
Tools & technologiesApacheAWSDynamoDBHadoopKafkaKerasPythonPyTorchSparkTensorflow
About the role
Key responsibilities & impact- Build and maintain scalable machine learning solutions in production
- Train and validate both deep learning-based and statistical-based models considering use-case, complexity, performance, and robustness
- Demonstrate end-to-end understanding of applications and develop a deep understanding of the “why” behind our models & systems
- Partner with product managers, tech leads, and stakeholders to analyze business problems, clarify requirements and define the scope of the systems needed
- Work closely with data platform teams to build robust scalable batch and realtime data pipelines
- Collaborate with software engineers, build tools to enhance productivity and to ship and maintain ML models
- Drive high engineering standards on the team through mentoring and knowledge sharing
- Uphold engineering best practices around code reviews, automated testing and monitoring
Requirements
What you’ll need- 7+ years of applied ML experience with proficiency in Python
- Strong background in the foundations of Machine Learning and building blocks of modern Deep Learning
- Track record of building, shipping and maintaining Machine Learning models in production in an ambiguous and fast paced environment.
- Track record of designing and architecting large scale experiments and analysis to inform product roadmap.
- You have a clear understanding of frameworks like - PyTorch, TensorFlow, or Keras, why and how these frameworks do what they do
- Familiarity with ML Ops concepts related to testing and maintaining models in production such as testing, retraining, and monitoring.
- Demonstrated ability to ramp up, understand, and operate effectively in new application / business domains.
- You’ve explored modern data storage, messaging, and processing tools (Kafka, Apache Spark, Hadoop, Presto, DynamoDB etc.) and demonstrated experience designing and coding in big-data components such as DynamoDB or similar
- Experience working in an agile team environment with changing priorities
- Experience of working on AWS
Benefits
Comp & perks- Competitive pay
- Generous time off
- Ample parental and wellness leave
- Healthcare
- Retirement savings program
