XX
Staff AI EngineerMLabs LtdNew York, New York, United States
XX

Staff AI Engineer

MLabs Ltd
  • US
    New York, New York, United States
  • US
    New York, New York, United States

Über

Location: Need to be able to work EST timezone.
Remote | Full-time
Compensation: $175K - $250K
We are hiring on behalf of our client who is developing a cutting‑edge autonomous agent runtime focused on high‑frequency financial environments. While current agents operate effectively as independent units, the next phase of evolution involves building a sophisticated intelligence layer where the entire fleet learns autonomously from real‑time market outcomes.
The
Staff AI Engineer
will be responsible for moving beyond manual propagation of insights to a system where the fleet gets smarter with every trade. This is a high‑stakes production role, not a research position. The feedback loop is immediate and measurable: the work produced either enhances agent profitability or it does not. The successful candidate will own the intelligence layer that turns thousands of daily trading decisions into compounding, autonomous growth.
Key Responsibilities Learning & Optimization
Feedback Loop Implementation:
Design and implement systems that connect trade outcomes back to strategy improvement, specifically focusing on signal selection, risk parameters, position sizing, and timing.
Evaluation Frameworks:
Build frameworks to quantify which signals and market conditions accurately predict profitable trades versus noise.
Automated Strategy Generation:
Develop systems to explore new configurations, backtest them against real fleet data, and surface candidates for deployment autonomously.
Market Adaptation:
Build mechanisms to detect shifts in market conditions (e.g., trending vs. choppy) and adapt fleet behavior in real‑time.
Autonomous Fleet Intelligence
Fleet Monitoring:
Create higher‑order agents for automated monitoring to catch configuration errors and performance degradation across all concurrent agents.
Performance Attribution:
Decompose trades into component drivers—signal accuracy, execution efficiency, and exit timing—to feed insights back into strategy design.
Coordination & Risk:
Manage concentration risk and capital allocation across the fleet, balancing the exploration of new approaches with the exploitation of proven strategies.
Model & Inference
Infrastructure Ownership:
Transition from external LLM dependence to controlled intelligence, evaluating hosting strategies ranging from proxied external models to fine‑tuned, domain‑specific models.
Data Capture:
Build the telemetry and data capture layer to ensure every decision and outcome is structured and queryable.
Domain‑Specific Training:
Determine the efficacy of domain‑specific training over general‑purpose prompting and build the necessary pipelines for implementation.
Inference Optimization:
Optimize inference for many concurrent agents, ensuring structured decision outputs and cost‑efficiency at scale.
Essential Qualifications
Production ML Engineering:
Proven experience training, deploying, and maintaining models that run in production and directly impact business outcomes.
Reinforcement/Online Learning:
Deep understanding of the practical challenges of learning from real‑world outcomes rather than static datasets.
Closed‑Loop Systems:
A track record of building systems where predictions lead to actions that generate outcomes, which then feed back into improved predictions.
Software Engineering:
Proficiency in
Python
is required, with additional comfort in
Go
or
TypeScript
for production services. Experience building data pipelines and distributed systems is essential.
Preferred Experience
Financial ML:
Background in signal generation, alpha research, portfolio optimization, or execution.
LLM Specialization:
Experience with fine‑tuning and serving (PEFT/LoRA, vLLM, TGI) or custom inference pipelines.
Multi‑Agent Systems:
Experience designing environments where autonomous agents coordinate or learn from one another.
Domain Knowledge:
Background in on‑chain data, DeFi protocols, or sectors where agents make sequential decisions under uncertainty (e.g., robotics, game AI).
Compensation & Benefits
Base Salary:
$175,000 – $250,000 USD (dependent on location and experience).
Equity:
Approximately 1% initial stock grant, with significant valuation growth potential.
Performance Incentives:
Eligibility for salary increases and bonuses tied directly to revenue and usage.
Token Participation:
Pro‑rata participation in the client’s planned 2026 token launch.
Ownership:
High‑impact role with meaningful upside tied directly to the success of the autonomous fleet.
Commitment to Equality and Accessibility At MLabs, we are committed to offer equal opportunities to all candidates. We ensure no discrimination, accessible job adverts, and providing information in accessible formats. Our goal is to foster a diverse, inclusive workplace with equal opportunities for all. If you need any reasonable adjustments during any part of the hiring process or you would like to see the job‑advert in an accessible format please let us know at the earliest opportunity by emailing
human-resources@mlabs.city .
#J-18808-Ljbffr
  • New York, New York, United States

Sprachkenntnisse

  • English
Hinweis für Nutzer

Dieses Stellenangebot stammt von einer Partnerplattform von TieTalent. Klick auf „Jetzt Bewerben”, um deine Bewerbung direkt auf deren Website einzureichen.