$70 C2C
Position:
Gen AI Lead Consultant
Location: NYC, NY Only From NY,
NJ, CT, DE (3 days Onsite Per Week)
Duration:
12 Months
Job
Type: C2C
Job
Summary
The
AI Pod Lead is a senior, hands-on leadership position responsible for the
strategic oversight and execution of Generative AI (GenAI) and Agentic AI
solutions tailored to Private Alternatives use cases within the investment
lifecycle. This role will spearhead initiatives that optimize efficiencies from
deal research through acquisition and disposition of Private Alternative assets
with a targeted focus on Private Equity, Private Credit, Real Assets, Infra
funds.
Role
Purpose
The
primary objective of the AI Pod Lead is to architect, develop, and deploy
advanced AI capabilities that streamline and automate critical stages of the
investment lifecycle. By leveraging state-of-the-art GenAI and Agentic AI
technologies, the role aims to enhance decision-making, accelerate deal
processing, and improve data-driven outcomes for Private Alternatives teams.
The AI Pod Lead serves as the principal driver for innovation and operational
excellence across all lifecycle phases, including deal sourcing, diligence,
structuring, monitoring, and exit.
Key
Responsibilities
- Lead
the end-to-end development and deployment of Generative and Agentic AI
solutions for Private Alternatives investment processes.
- Work
closely with a multidisciplinary AI pod squad, including data engineers,
front end developers, and investment domain experts.
- Collaborate
closely with investment professionals, technology partners, and external
vendors to identify and prioritize high-impact use cases.
- Design
and implement AI-driven tools for deal research, pipeline management,
diligence automation, portfolio monitoring, and disposition analysis.
- Ensure
AI solutions align with regulatory requirements, data privacy standards,
and industry best practices.
- Establish
and monitor key performance indicators (KPIs) to measure efficiency gains,
automation impact, and investment outcomes.
- Drive
continuous improvement and scalability of AI models and agentic workflows
across multiple funds and investment strategies.
- Stay
abreast of emerging AI technologies, frameworks, and market trends
relevant to Private Equity and Private Credit.
- Champion
a culture of experimentation, rapid prototyping, and knowledge sharing
within the AI pod and across the organization.
Required
Qualifications
- Bachelor’s
in computer science, Data Science, Artificial Intelligence, or a related
quantitative discipline.
- Minimum
10 years of hands-on experience in building Enterprise Scale front to back
applications with strong recent exposure to AI/ML development, with at
least 3 years in a leadership role overseeing cross-functional teams
specially in GenAI or Agentic AI space.
- Demonstrated
expertise in GenAI (large language models, generative frameworks) and
Agentic AI (autonomous agents, workflow orchestration).
- Strong
understanding of Private Alternatives, particularly Private Equity and
Private Credit investment processes.
- Proven
track record in designing and implementing AI solutions for financial
services, investment management, or asset management domains.
- Familiarity
with compliance, data governance, and security considerations in regulated
financial environments.
Technical
Skills
- Core
skill required great leadership, communication and collaborations skill
along with AI acumen.
- Advanced
proficiency in Python, Java, or similar programming languages for AI
development utilizing OpenAI or other leading LLM Model providers.
- Exposure
to Microsoft Copilot Studio and Microsoft Power Apps in building AI
Enabled low-code/no-code solutions.
- Hands-on
experience with ML frameworks such as TensorFlow, PyTorch, Keras, and
agentic orchestration platforms (e.g., LangChain, AutoGPT).
- Expertise
in data engineering, feature extraction, and model deployment (cloud and
on-premise).
- Experience
integrating AI tools with investment lifecycle management systems (e.g.,
Salesforce CRM, DealPath, DealCloud, eFront, Investran, Snowflake).
- Knowledge
of NLP, generative modeling, reinforcement learning, and agent-based
simulation.
- Ability
to troubleshoot, optimize, and scale AI models in production environments.
Leadership
and Soft Skills
- Proven
ability to lead and inspire high-performing technical teams.
- Exceptional
stakeholder management and cross-functional collaboration skills.
- Strong
written and verbal communication skills, with the ability to translate
complex technical concepts for non-technical audiences.
- Strategic
thinker with a bias for action and results-oriented execution.
- Commitment
to fostering a culture of inclusion, innovation, and continuous learning.
Preferred
Experience
- Prior
work in Private Alternatives (Private Equity, Private Credit, or related
asset classes).
- Experience
automating investment lifecycle stages through intelligent workflows and
AI-driven tools.
- Track
record of delivering measurable process improvements in investment
research, deal execution, or portfolio management.
Success
Metrics
- Reduction
in manual effort and process turnaround times across investment lifecycle
stages.
- Increase
in actionable insights, data accuracy, and automation adoption within
Private Alternatives teams.
- Achievement
of targeted KPIs related to deal throughput, diligence efficiency, and
portfolio monitoring effectiveness.
- Positive
feedback from investment professionals and stakeholders regarding AI
solution usability and impact.