About The Position

Alchemy is seeking a qualified Practitioner with applied, real-world experience in Generative AI Integration for Developers to participate in a skills assessment validation engagement. This is a short-term, contract, remote engagement in which the Practitioner will complete a practitioner-level skills assessment and a brief post-assessment survey. This role does not involve teaching, instructional design, content creation, or ongoing advisory responsibilities. Engagement Details Engagement Type: Contract / 1099 – Short-term engagement Location: Remote Estimated Item Count: ~90 Estimated Time to Completion: Approximately 1.5–2.5 hours Assessment Window: Work must be completed within a defined access window. Scope of Work Complete a practitioner-level skills assessment used for validation and standard-setting purposes. Complete a short post-assessment survey providing feedback on the assessment experience. This role does not include: • Teaching or facilitation responsibilities • Instructional or curriculum design work • Content authoring or SME review of materials • Ongoing advisory or consulting responsibilities

Requirements

  • The Practitioner should be a current software engineer / developer with applied, real-world experience related to the following knowledge areas and skills:
  • Integrating Generative AI for Developers
  • Develop a comprehensive technical implementation plan for integrating generative AI into existing systems
  • Identify key technical requirements and dependencies for generative AI deployment
  • Decide on architecture that supports scalable generative AI operations
  • Create a phased rollout strategy to minimize disruption and manage risks
  • Establish performance metrics and monitoring processes for generative AI systems
  • Aligning Generative AI with Business Cases
  • Analyze business processes to identify opportunities for generative AI implementation
  • Evaluate the potential ROI of generative AI applications across different business functions
  • Develop use-case-specific strategies for integrating generative AI into product workflows
  • Apply a framework for prioritizing generative AI initiatives based on business value and feasibility
  • Design a pilot program to test generative AI in real-world contexts
  • Ensuring Interoperability in Generative AI Systems
  • Assess the interoperability requirements for generative AI within an organization's technology ecosystem
  • Create protocols to facilitate seamless integration with existing systems
  • Develop strategies for managing version compatibility and updates across integrated AI systems
  • Establish governance for maintaining interoperability as generative AI technologies evolve
  • Security for Generative AI Integrations
  • Identify security vulnerabilities specific to generative AI
  • Apply mitigations for various types of GenAI security vulnerabilities
  • Develop strategies to protect against adversarial attacks and model manipulation
  • Create incident response plans tailored to generative AI security breaches
  • Effective Cost Management for Generative AI
  • Estimate the total cost of ownership for generative AI implementations
  • Optimize computational resources for transfer learning models
  • Evaluate the factors that impact Generative AI costs
  • Apply techniques for reducing data storage and transfer costs associated with large/complex AI models
  • Create budgeting and forecasting models for long-term generative AI initiatives
  • Scaling Integrated Generative AI
  • Assess infrastructure requirements for supporting large-scale generative AI initiatives
  • Design scalable architectures capable of handling increasing AI workloads and data volumes
  • Implement load balancing and distributed computing strategies for integrated generative AI
  • Build disaster recovery and product continuity plans specific to generative AI infrastructure
  • Applied Developer Workflow Integration
  • Leverage AI-powered tools in day-to-day development workflows, including code generation, code completion, testing, and documentation

Nice To Haves

  • Active software engineer or developer with hands-on experience integrating generative AI into production systems or developer workflows.
  • Practical, working knowledge of how the concepts listed above are applied in real professional settings.
  • Does not need to be an academic researcher or industry thought leader — applied experience is what matters.

Responsibilities

  • Complete a practitioner-level skills assessment used for validation and standard-setting purposes.
  • Complete a short post-assessment survey providing feedback on the assessment experience.
© 2024 Teal Labs, Inc
Privacy PolicyTerms of Service