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Ai Engineer (Agentic Ai / Rag / Wealth) (W2 / Usc / Gc / Hybrid)

Company:
Bitsoft International, Inc
Location:
Dallas, TX
Posted:
June 23, 2026
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Description:

Job Title: AI Engineer (Agentic AI / RAG / Wealth Management)

Location: Multiple Client Locations in US (Hybrid 2 days Onsite/Week)

Duration: 6+ Months

Rate: $00/Hour on W2

Eligibility: W2 only – Open to US Citizens, Green Card Holders (C2C not allowed)

Description:

Primary Skill Required: AI Architect (6-9 years’ experience)

Required Qualifications:

• Bachelor’s degree in Computer Science, Engineering, Data Science, Information Systems, or related field

• 6+ years of experience in software engineering, AI/ML engineering, search engineering, or related technical roles

• Experience building AI applications with LLMs, APIs, and orchestration or agent frameworks

• Experience with retrieval-augmented generation, semantic search, vector databases, or enterprise knowledge systems

• Strong programming skills in Java, Python and/or another modern language

• Experience designing and deploying production systems with cloud services, APIs, and data pipelines

• Ability to communicate effectively with technical and non-technical stakeholders

Preferred Qualifications:

• Experience supporting financial advisors, wealth management platforms, or client/advisor digital experiences

• Familiarity with agent frameworks, tool-calling patterns, workflow orchestration, or multi-step reasoning systems

• Exposure to LLM evaluation, prompt engineering, observability, and experimentation practices

• Knowledge of CRM, portfolio, planning, or client servicing workflows in wealth management

• Experience in regulated industries with privacy, security, compliance, and responsible AI requirements

• Strong engineering and problem-solving skills

• Ability to translate business needs into practical AI solutions

• Curiosity and adaptability in a fast-moving AI landscape

• Collaborative mindset and clear communication

• Attention to quality, reliability, and user trust

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