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Remote Python Financial Jobs in Levittown, PA (NOW HIRING)

Staff AI Engineer

Philadelphia, PA · Remote

$175K - $250K/yr

Career Renew is recruiting for one of its clients a Staff AI Engineer - this is a fully remote role ... Strong software engineering -- Python is your primary language, comfortable with Go or TypeScript ...

Principal Engineer - Agentic AI

Philadelphia, PA · On-site +1

$136K - $182K/yr

Hands-on experience with Agent Development Kit (ADK) and Python * Experience with Gemini Enterprise ... physically, financially and emotionally through the big milestones and in your everyday life.

Engineer 3, Agentic AI

Philadelphia, PA · On-site +1

$98K - $134K/yr

Hands-on experience with Agent Development Kit (ADK) and Python * Experience with Gemini Enterprise ... physically, financially and emotionally through the big milestones and in your everyday life.

This is a remote-first role with occasional (~1x month) travel. Responsibilities and Duties ... Develop financial models and data-driven insights to support strategic initiatives and business ...

Sr. Software Engineer - Agentic AI

Philadelphia, PA · On-site +1

$123K - $163K/yr

Hands-on experience with Agent Development Kit (ADK) and Python * Experience with Gemini Enterprise ... physically, financially and emotionally through the big milestones and in your everyday life.

This is a remote-first role with occasional (~1x month) travel. Responsibilities and Duties ... Develop financial models and data-driven insights to support strategic initiatives and business ...

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Remote Python Financial information

See Levittown, PA salary details

$12

$56

$82

How much do remote python financial jobs pay per hour?

As of Jun 11, 2026, the average hourly pay for remote python financial in Levittown, PA is $56.33, according to ZipRecruiter salary data. Most workers in this role earn between $46.44 and $63.99 per hour, depending on experience, location, and employer.

What is the difference between Remote Python Financial vs Remote Data Analyst?

AspectRemote Python FinancialRemote Data Analyst
Required CredentialsBachelor's in Finance, Economics, or related; Python programming skillsBachelor's in Statistics, Data Science, or related; proficiency in data analysis tools
Work EnvironmentFinancial institutions, fintech companies, or investment firmsCorporate, consulting firms, or tech companies
Industry UsageFinance, banking, investment managementBusiness, marketing, healthcare, tech
Common Search/ComparisonYesYes

Remote Python Financial professionals focus on developing financial models and algorithms using Python within finance-related industries. In contrast, Remote Data Analysts interpret data across various sectors, utilizing analytical tools to inform business decisions. While both roles require data analysis skills, Remote Python Financial emphasizes finance-specific knowledge and Python programming, making it distinct in industry focus and skill set.

What are popular job titles related to Remote Python Financial jobs in Levittown, PA? For Remote Python Financial jobs in Levittown, PA, the most frequently searched job titles are:
What job categories do people searching Remote Python Financial jobs in Levittown, PA look for? The top searched job categories for Remote Python Financial jobs in Levittown, PA are:
What cities near Levittown, PA are hiring for Remote Python Financial jobs? Cities near Levittown, PA with the most Remote Python Financial job openings:

Staff AI Engineer

Career Renew

Philadelphia, PA • Remote

$175K - $250K/yr

Full-time

Posted 4 days ago


Job description

Career Renew is recruiting for one of its clients a Staff AI Engineer - this is a fully remote role for US-based candidates, as long as they can work EST hours. Salary range: 175-250K USD yearly plus benefits and equity.

building the Hyperliquid Agent Runtime. Senpi agents make real trades with real money 24/7, generating a continuous stream of decisions and outcomes across dozens of concurrent strategies.

Today, our agents are effective but independent. Each one runs its own logic, and when one discovers a winning pattern, a human has to manually propagate that insight across the fleet. We’re hiring a Staff AI Engineer to make that process autonomous: build the intelligence layer where the fleet learns from itself and gets smarter with every trade.

This is a production role, not a research role. The feedback loop is immediate — your work either makes the agents more money or it doesn’t. Every trade is a measurable outcome.

What You’ll Own

Learning & Optimization

The fleet generates thousands of trading decisions per day, each with a measurable outcome. You’ll build the systems that turn this stream into compounding intelligence:

  • Design and implement the feedback loop that connects trade outcomes back to strategy improvement — signal selection, risk parameters, position sizing, and timing

  • Build the evaluation framework that quantifies which signals, market conditions, and agent configurations actually predict profitable trades versus which ones are noise

  • Develop automated strategy generation and testing — the system should explore new configurations, backtest them against real fleet data, and surface candidates for deployment

  • Detect shifts in market conditions and adapt fleet behavior accordingly — what works in trending markets fails in choppy ones, and the system should recognize the difference

Autonomous Fleet Intelligence

Build the higher-order agents that manage and improve the fleet without human intervention:

  • Automated fleet monitoring that catches configuration errors, degraded performance, and infrastructure issues across all agents continuously

  • Performance attribution that decomposes every trade into its component drivers — was the signal right, was the execution efficient, was the exit well-timed — and feeds those insights back into strategy design

  • Fleet coordination that manages concentration risk, capital allocation across strategies, and the balance between exploration (testing new approaches) and exploitation (scaling what works)

Model & Inference

Own the path from external LLM dependence to Senpi-controlled intelligence:

  • Evaluate and implement the right model hosting strategy — from proxied external models with full telemetry, to fine-tuned domain-specific models on owned infrastructure

  • Build the telemetry and data capture layer that makes learning possible — every decision, every evaluation, every outcome structured and queryable

  • Determine whether and how domain-specific training (on trading data, market patterns, and fleet performance) outperforms general-purpose prompted models — then build the pipeline to make it happen

  • Optimize inference for the specific demands of autonomous trading: many concurrent agents, structured decision outputs, cost-efficient at scale

What We’re Looking For

Must Have

  • ML engineering in production — you’ve trained, deployed, and maintained models that run in production and directly impact business outcomes. Shipped systems, not just notebooks

  • Reinforcement learning or online learning experience — you understand the practical challenges of learning from real-world outcomes rather than static datasets. You’ve built systems where model outputs generate actions that generate feedback that improves the model

  • Strong software engineering — Python is your primary language, comfortable with Go or TypeScript for production services. You build data pipelines and distributed systems, not just models

  • You’ve closed the loop — the single most important qualification. You’ve built a system where predictions lead to actions that generate outcomes that feed back into better predictions. End-to-end, in production, with measurable improvement over time

Strong Plus

  • Experience with financial ML — signal generation, alpha research, portfolio optimization, or execution optimization

  • LLM fine-tuning and serving — PEFT/LoRA, vLLM, TGI, or custom inference pipelines in production

  • Multi-agent systems — designing systems where autonomous agents coordinate, compete, or learn from each other

  • Onchain data or DeFi protocol experience

  • Background in domains where agents make sequential decisions under uncertainty — robotics, autonomous systems, game AI

What This Role Is Not

This is not an ML research role where you publish papers and hand off models to an engineering team. You own the full stack from data pipeline to deployed model to production outcome.

This is also not a prompt engineering role. While today’s agents use prompted LLMs, the trajectory is toward learned behavior — agents that improve through experience, not through better instructions.

Compensation & Package

Compensation

  • Total starting all-in comp: ~$450k

    • Base salary: $175,000–$250,000 USD (location and experience dependent)

    • Equity: ~1% initial stock grant, valued at $230,000 in last round, projected to double in next 6 months

  • Plus: Team-wide eligibility for salary increases and bonuses tied to revenue and usage

  • Plus: Token upside: pro-rata participation in Senpi’s token launch (planned for 2026)

This role is meaningfully ownership-driven, with upside tied directly to company success.