Managing Software Engineer - Senior Gen AI/Agentic Engineer at Capgemini
Dallas, Texas, USA -
Full Time


Start Date

Immediate

Expiry Date

05 Aug, 25

Salary

0.0

Posted On

05 May, 25

Experience

0 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

Integration, Multi Agent Systems, Testing, Docker, Python, Mongodb, Reinforcement Learning, Redis, Debugging, Azure, Machine Learning, Tokens, Design, Research, Programming Languages, Sql, Documentation

Industry

Information Technology/IT

Description

ABOUT THE JOB YOU’RE CONSIDERING

Job Description
We are seeking a creative and innovative Senior GenAI /Agentic Engineer to join our team. This role involves developing cutting-edge custom GEN AI solutions and predictive AI models, deploying them in production environments, and driving the integration of AI technologies across our business operations. As a key member of our AI team, you will collaborate with diverse teams to design solutions that deliver tangible business value through AI-driven insights

YOUR SKILLS AND EXPERIENCE

  • Skilled in constructing agentic systems through techniques such as multi-agent systems, reinforcement learning, dynamic workflows, caching/memory management, and concurrent orchestration.
  • Demonstrated excellence in Agentic AI architecture, encompassing development, testing, and research of GenAI agents, utilizing current-generation deployments and pioneering next-generation patterns and research.
  • Proficient in various AI and Agentic AI frameworks, including LangChain/LangGraph, Crew AI, Semantic Kernel or Open AI Agentic SDK.
  • Strong skills in prompt engineering and its techniques including design, development, and refinement of prompts (zero-shot, few-shot, and chain-of-thought approaches) to maximize accuracy and leverage optimization tools.
  • Proficiency in programming languages such as Python and SQL, as well as machine learning libraries like TensorFlow, PyTorch, and scikit-learn.
  • Proficiency in URLs and API Endpoints, HTTP Requests, Authentication Methods, Response Types, JSON/REST, Parameters and Data Filtering, Error Handling, Debugging, Rate Limits, Tokens, Integration, and Documentation.
  • Experience with cloud platforms (e.g., AWS, Azure) and big data tools (e.g., Databricks, PySpark).
  • Knowledge of deployment tools (e.g., Azure DevOps, Docker, AWS ECS/EKS/Fargate) and CI/CD pipelines (AWS CloudFormation, CodeDeploy).
  • Strong understanding of data engineering principles, including experience with SQL and NoSQL databases (e.g., MySQL, MongoDB, Redis).
Responsibilities

Gen AI & Machine Learning Models Development

  • Design, develop, and implement both generative and predictive AI models (including NLP, computer vision, etc.).
  • Lead the development of innovative solutions such as intelligent autonomous agents for complex tasks and multimodal interactions.
  • Integrate agentic workflows that utilize AI agents to automate tasks and improve operational efficiency.
  • Work closely with cross-functional teams, including data scientists, software engineers, and product managers, to align AI solutions with business objectives.

Application Architecture Design, Development, & Integration

  • Demonstrates proficiency in API architecture and design to develop custom generative AI applications built with external interfacing, traffic control, runtime execution of business logic, data access, authentication, and deployment components.
  • Work with cloud platforms (e.g., Azure, AWS, GCP) and big data tools (e.g., Databricks, PySpark) to develop AI solutions.
  • Optimize AI models and algorithms for performance, scalability, and efficiency.
  • Ensure the security and compliance of AI solutions, adhering to best practices and regulations.
  • Implement monitoring and logging mechanisms to track performance, reliability, and usage of AI solutions

Model Deployment & Maintenance

  • Work closely with DevOps and IT teams to deploy AI models into production environments, ensuring scalability, performance, and optimization.
  • Monitor and troubleshoot deployed models and pipelines for optimal performance.
  • Design and maintain data pipelines for efficient data collection, processing, and storage (e.g., data lakes, data warehouses).
  • Create comprehensive documentation for deployment processes and provide training to relevant teams to ensure proper model management.

AI Research & Integration

  • Conduct research to stay at the forefront of emerging AI techniques, tools, and trends.
  • Integrate new AI tools and methodologies into existing business processes and applications.
  • Lead the development of private GenAI tools, including LLMs and specialized AI use cases.

Collaboration & Communication:

  • Collaborate with cross-functional teams to align AI projects with business requirements and strategic goals.
  • Lead and contribute to GenAI and AI business development efforts such as capability pitches, demos, proposals, and overall project planning.
  • Communicate complex AI concepts and results to non-technical stakeholders.
  • Lead and mentor a small team of junior engineers and data scientists.
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