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Backtesting Jobs in Georgia (NOW HIRING)

Conduct model validation, backtesting, and performance evaluation to ensure accuracy, robustness, and business relevance. * Evaluate model performance over time and diagnose issues related to data ...

Conduct model validation, backtesting, and performance evaluation to ensure accuracy, robustness, and business relevance. * Evaluate model performance over time and diagnose issues related to data ...

Conduct model validation, backtesting, and performance evaluation to ensure accuracy, robustness, and business relevance. * Evaluate model performance over time and diagnose issues related to data ...

Backtesting information

What are the key skills and qualifications needed to thrive as a Backtesting Analyst, and why are they important?

To thrive as a Backtesting Analyst, you need a strong background in quantitative analysis, statistics, programming (typically in Python or R), and familiarity with financial markets, usually supported by a degree in mathematics, finance, or a related field. Proficiency with backtesting platforms (such as QuantConnect or Zipline), data analysis tools, and version control systems like Git is often required. Attention to detail, critical thinking, and strong problem-solving abilities are key soft skills that help ensure robust model evaluation and development. These skills are vital for accurately assessing trading strategies and minimizing risk in real-world financial applications.

What is backtesting?

Backtesting is the process of evaluating a trading strategy or investment model by applying it to historical market data. This helps traders and analysts see how the strategy would have performed in the past, which can provide insights into its potential effectiveness and risks. While backtesting can help identify strengths and weaknesses, it's important to remember that past performance is not always indicative of future results. The reliability of backtesting depends on data quality, strategy design, and how well it simulates real trading conditions.

What are some common challenges faced when backtesting trading strategies, and how can they be managed?

One common challenge in backtesting trading strategies is the risk of overfitting, where a model performs exceptionally well on historical data but fails in live markets. Data quality and availability can also pose issues, as incomplete or inaccurate data may skew results. To manage these challenges, it's important to use out-of-sample testing, robust data cleaning processes, and to validate strategies on multiple datasets. Collaborating with quantitative analysts and developers can also help ensure the backtesting process is thorough and reliable.

What is the difference between Backtesting vs Quantitative Analyst?

AspectBacktestingQuantitative Analyst
Primary RoleTesting trading strategies using historical dataDeveloping and implementing quantitative models for investment decisions
Required SkillsData analysis, programming, finance knowledgeMathematics, programming, financial theory
Work EnvironmentTrading firms, hedge funds, financial institutionsAsset management firms, hedge funds, banks
CertificationsOften none required, but CFA or CQF helpfulCFA, CQF, or advanced degrees common

Backtesting focuses on evaluating trading strategies with historical data, while a Quantitative Analyst develops models to inform investment decisions. Both roles require strong analytical skills and finance knowledge but differ in scope and responsibilities.

What are popular job titles related to Backtesting jobs in Georgia? For Backtesting jobs in Georgia, the most frequently searched job titles are:
What job categories do people searching Backtesting jobs in Georgia look for? The top searched job categories for Backtesting jobs in Georgia are:
Sr Applied AI Engineer-Finance

Sr Applied AI Engineer-Finance

Dematic

Atlanta, GA

$113K - $174K/yr

Other

Posted 10 days ago


Dematic rating

8.0

Company rating: 8.0 out of 10

Based on 16 frontline employees who took The Breakroom Quiz

141st of 418 rated machine equipment manufacturers


Job description

Dematic is standing up a Finance AI enablement team to drive adoption, build, and roll out AI and sophisticated analytics use cases across the global function.
As the Applied AI / Machine Learning Engineer, you will play a handson role crafting, developing, deploying, and operating AI and ML solutions tailored to Finance use cases such as financial planning, predictive analysis, irregularity identification, and management reporting.
This role is ideal for someone who can build productionready models, translate business problems into AI solutions, and operate optimally in an environment that is early in its AI maturity with limited existing technical infrastructure.
The position will partner closely with Finance team members, IT (Dematic & parent co.), and other enterprise AI initiatives to ensure solutions are scalable, auditable, and aligned with standards.

We offer:
  • Career Development
  • Competitive Compensation and Benefits
  • Pay Transparency
  • Global Opportunities

Learn More Here: https://www.dematic.com/en-us/about/careers/what-we-offer

Dematic provides equal employment opportunities to all employees and applicants for employment and prohibits discrimination and harassment of any type without regard to race, color, religion, age, sex, national origin, disability status, genetics, protected veteran status, sexual orientation, gender identity or expression, or any other characteristic protected by federal, state or local laws.

This policy applies to all terms and conditions of employment, including recruiting, hiring, placement, promotion, termination, layoff, recall, transfer, leaves of absence, compensation and training.

The base pay range for this role is estimated to be $113,625 - $174,225 at the time of posting. Final compensation will be determined by various factors such as work location, education, experience, knowledge, and skills.

Tasks and Qualifications:

What you will do in this role:

AI / ML Solution Development

  • Design, develop, and deploy machine learning models and AI solutions tailored to Finance use cases (e.g., forecasting, planning, variance analysis, anomaly and risk detection).
  • Build and maintain ML models for financial planning, forecasting, trend analysis, and anomaly detection across large, structured datasets.
  • Develop LLMpowered tools to support financial analysis, commentary generation, summarization, and scripted insights for Finance users.
  • Translate Finance requirements into data pipelines, feature engineering, model architecture, and deployment approaches.

Model Validation & Governance

  • Conduct model validation, backtesting, and performance evaluation to ensure accuracy, robustness, and business relevance.
  • Evaluate model performance over time and diagnose issues related to data quality, concept drift, and changing business conditions.
  • Implement appropriate controls, explain-ability, and documentation to support Finance governance, audit, and compliance requirements.
  • Document model assumptions, methodologies, limitations, and change history for audit and risk review.

ML Ops & Deployment

  • Implement MLOps standard methodologies, including model versioning and lifecycle management, drift detection and performance monitoring, retraining schedules and automated pipelines, and reproducibility and rollback procedures.
  • Partner with IT to deploy models into enterprise environments (cloud, Salesforce, SAP, Snowflake, proprietary tools, etc.).
  • Ensure AI solutions are secure, scalable, and maintainable within enterprise standards.

Collaboration & Enablement

  • Collaborate with Finance, IT, data teams, and other AI workstreams to promote consistent standards, tooling, and patterns across the organization.
  • Serve as a technical thought partner to Finance leaders, helping shape the AI roadmap and identify highvalue use cases.
  • Help educate Finance partners on AI capabilities, limitations, and responsible usage.
  • Contribute to establishing foundational AI practices for a growing Finance AI team.

What we are looking for:

  • Bachelor's degree in Computer Science, Data Science, Engineering, Applied Mathematics, Finance, or a related field.
  • 4-7+ years of proven experience in machine learning, data science, or applied AI with handson production deployment experience.
  • Strong experience building ML models using Python and common libraries (e.g., pandas, scikitlearn, PyTorch, TensorFlow).
  • Experience developing or integrating LLMbased solutions (prompt engineering, embeddings, retrievalaugmented generation, summarization).
  • Proven understanding of timeseries forecasting, anomaly detection, regression, and classification techniques.
  • Experience with model validation, backtesting, performance monitoring, and explain-ability.
  • Practical experience implementing MLOps concepts (CI/CD for models, monitoring, version control).
  • Ability to work in a lowmaturity AI environment, creating structure where little exists.
  • Strong communication skills with the ability to explain technical concepts to Finance and business audiences.

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