Deep Understanding of Agentic Systems Candidates must be able to confidently discuss: Memory management in agentic applications How agents: Maintain context……
Collaborate with functional and technical SMEs to build, test, and refine user-configurable matching logic, validate algorithm outputs, and develop generative……
You'll work with cutting-edge AI tools, evaluate and refine code outputs, and provide expert feedback on correctness, efficiency, scalability, and best……
On a typical day, you will review and annotate AI-generated code, assess outputs for logical and structural soundness, identify and document error patterns, and……
Provide live-site support for production applications by monitoring systems, ensuring rapid incident resolution, and driving continuous improvement.…
Within this capacity, you will be responsible for the design, development, and deployment of autonomous AI agents, skills, MCP servers, AI tools engineered for……
We view the advancement of AI as critical to enhancing employee experience, improving productivity, and driving business growth across the enterprise.…
Use AI tools to design, write, and improve code for software solutions. The ideal candidate understands technology and is comfortable using modern AI tools to……
This role supports Engineering leadership in driving appropriate change control, maintaining project schedules and quality standards, designing and programming……
You will work closely with development partners and key stakeholders to iteratively design, develop, and deliver products and surfaces that will delight our……
You see a manual, "boring" insurance process and immediately start mapping out the agents needed to automate it. The appeals process is the same in either case.…
Experience building or integrating MCP servers to manage tools, context, and state across LLMs and external systems. Go To Market/Full time/Hybrid.…
You’ll own the technical direction for AI platform systems, establish standards and patterns, and lay the architectural groundwork to enable reliable, scalable,……
To maintain confidentiality and ensure a fair evaluation process, the use of note-taking tools, reference materials, or AI-powered tools (including generative……
Stand up prototype front-ends in Next.js, React, and TypeScript to make ideas tangible quickly knowing a front-end specialist will own the polished, production……
Tabs agents automate the entire contract-to-cash lifecycle, including billing, collections, revenue recognition, and reporting, to help teams eliminate manual……
Hands-on experience in developing AI agents using frameworks like Google ADK, LangChain, CrewAI, AutoGen, or similar. Competitive Benefits and Vacation package.…
Ability to design and implement custom logic, tools, and integrations (not just out‑of‑the‑box solutions). Build systems leveraging LLMs, AI agents, reasoning……
PerfectServe's cloud-based solutions enhance patient safety and reduce provider burnout by automating workflows, speeding time to treatment, optimizing shift……
Final contract terms — including scope, weekly hours, duration, and payment structure — will be determined based on the needs of the engagement and the selected……
Collaborative across product, design, data science, and engineering. Strong communicator, written and verbal, with technical and non-technical audiences.…
Identity verification: Applicants will be required to verify their identity and confirm they have valid documentation to work as an independent contractor in……
Identity verification: Applicants will be required to verify their identity and confirm they have valid documentation to work as an independent contractor in……
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Job Description: This is NOT a traditional full stack or backend role anymore. ✅ Built end-to-end AI / agentic applications ✅ Understand what goes into an LLM, what comes out, and how to use it ✅ Can productionize AI systems (not just prototype) 2. Ability to Turn LLM Output into Action Key expectation: “Don’t just call an LLM — do something meaningful with the output” Candidates should demonstrate: Structured output handling Workflow orchestration Turning AI responses into usable application features 3. Productionization > Prototyping This is where candidates are currently falling short. Ross is heavily focused on: How AI apps are moved into production environments Understanding of: CI/CD in enterprise environments Deployment workflows Reliability & operational considerations ✅ They don’t have to build CI/CD pipelines themselves ✅ But must understand how production systems work at a high level 4. Deep Understanding of Agentic Systems Candidates must be able to confidently discuss: Memory management in agentic applications How agents: Maintain context Store/retrieve information Execute multi-step workflows