Expoint - all jobs in one place

המקום בו המומחים והחברות הטובות ביותר נפגשים

Limitless High-tech career opportunities - Expoint

Uber Technical Lead Manager Staff Software Engineer 
United States, West Virginia 
925611440

24.06.2024

What You'll Do:

  • Apply leading Models to solve business problems
  • Use models from GPT- * to LLama- * to solve wide range of business problems from sales tech, employee productivity, coding and automation
  • Build RAG frameworks
  • Build Langchain modules

Model Development and Implementation:

  • Design, develop, and deploy machine learning models to solve complex problems and improve user experiences, operational efficiency, or system performance.
  • Utilize a variety of data sources, types, and structures to extract actionable insights through predictive analytics and data mining techniques.

Research and Innovation:

  • Stay abreast of the latest developments in the field of machine learning and artificial intelligence. Evaluate emerging trends and technologies for potential adoption to maintain and expand competitive advantage.
  • Lead research initiatives that test new algorithms, evaluate new methodologies, and explore innovative uses of data that can lead to scalable solutions.

Team Leadership and Development:

  • Lead and mentor a team of machine learning engineers and data scientists. Ensure the continuous professional growth of team members through clear goal-setting, regular feedback, and development opportunities.
  • Foster a collaborative and inclusive team environment that encourages innovation and iterative learning.

Cross-Functional Collaboration:

  • Work closely with product management, software engineering, and data engineering teams to integrate machine learning models into larger software systems and product offerings.
  • Partner with stakeholders across the organization to understand business needs and translate them into technical requirements and actionable machine learning projects.

Project Management:

  • Oversee the full project lifecycle for multiple machine learning initiatives, from ideation and data collection to model development and deployment.
  • Manage resources, timelines, and risks effectively, ensuring that projects meet their objectives and are delivered on schedule.

Performance Monitoring and Model Optimization:

  • Continuously monitor the performance of deployed models, identifying opportunities for improvement and optimization.
  • Implement robust testing and validation strategies to ensure model accuracy and reliability over time.

What You'll Need:

  • Experience in applying Gen-AI/LLM in production
  • Managed at least a team 4+ engineers for end-to-end deliverables, for more than 2 years
  • Education: Bachelor's degree in Computer Science, Engineering, or a closely related field. Advanced degrees (Master’s or PhD) in fields that emphasize software engineering or machine learning are preferred.
  • Professional Experience: At least 8 years of experience in software development with a proven track record in both software engineering and research or applied machine learning projects.
  • Expertise in programming using languages such as Python, Java, C++, or Scala.
  • Proficient with modern software engineering tools and methodologies (e.g., version control, CI/CD, agile development practices).
  • Extensive experience with machine learning libraries and frameworks like TensorFlow, PyTorch, or Keras.
  • Strong capabilities in handling large datasets, with skills in SQL, NoSQL databases, data modeling, and ETL processes.
  • Experience designing and implementing systems that collect, manage, and convert raw data into actionable insights through machine learning models.
  • Solid foundation in applying machine learning algorithms to real-world problems, optimizing algorithms for scalability and performance.
  • Hands-on experience in building, scaling, and maintaining production-level machine learning models.

* Accommodations may be available based on religious and/or medical conditions, or as required by applicable law. To request an accommodation, please reach out to .