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HomeCompaniesCutsforthSr. Data Scientist - Industrial Industry Focused

Sr. Data Scientist - Industrial Industry Focused

Cutsforth · Ferndale, WA · Remote · Deleted · $98,837–$154,546 / year · JazzHR / ApplyToJob

Job facts

FieldValue
CompanyCutsforth
TitleSr. Data Scientist - Industrial Industry Focused
Normalized title-
Department / team-
LocationFerndale, WA, United States
Work modelRemote / Remote
Employment typeFull Time
Salary$98,837–$154,546 / year
Statusdeleted
ATS providerJazzHR / ApplyToJob
Posted / first seen2026-05-22 / 2026-05-30
Changed / last seen2026-06-13 / 2026-06-11

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Linked records

CompanyCutsforth
Source85604323-ef5d-480b-81bc-b1acad29ea33
ATS providerJazzHR / ApplyToJob

Description

Role Information: Job Title: Sr. Data Scientist- Industrial Industry Focused Work Location: Fully remote position, home office Employment Type: Full-time Employment Status: Exempt, salaried Visa sponsorship is not available for this position. Must reside in the United States. We are not accepting applicants for remote workers in California, Illinois, and New York at this time. Compensation: $98,837 - $154,546, depending on years of experience Role Overview: We are building the intelligence layer for industrial operations – transforming raw sensor telemetry, time-series data, and field equipment signals into predictive diagnostics that keep critical assets running. As a Data Scientist on our team, you will work at the intersection of time-series analytics, machine learning, and engineering domain-knowledge, turning field equipment sensor data, time-series telemetry, and operational data into actionable insights – designing and deploying production-grade solutions for predictive maintenance and anomaly detection across our customers’ industrial environments. You will partner directly with engineering, product, and domain experts to translate business and operational challenges into scalable, production-ready data science solutions that drive measurable impact on reliability, efficiency, and revenue – with direct visibility into how your work reduces downtime and keeps critical operations running. We actively support team members to publish, present, and contribute to the industrial AI community. Key Responsibilities: Design, develop, train, and deploy machine learning and AI models that process and analyze field equipment sensor data (time-series IoT, embedded device telemetry) alongside structured and unstructured datasets. Build and refine predictive, prescriptive, and anomaly detection models using techniques such as regression, time-series forecasting, classification, clustering, and deep learning to support real-time or near-real-time decision-making. Perform exploratory data analysis (EDA), data preprocessing, feature engineering/signal processing, and feature extraction on high-volume, noisy sensor data and multimodal datasets to surface patterns, correlations, and actionable insights. Contribute to end-to-end AI workflows, including automated data ingestion, model training pipelines, inference at the edge or in the cloud, and continuous monitoring for model drift and performance degradation. Apply statistical modeling, hypothesis testing, and experimentation methods (A/B testing, causal inference where applicable) to validate model performance and ensure robustness in dynamic operational environments. Support the development and maintenance of reproducible, scalable ML pipelines using MLOps best practices, including model versioning, retraining, deployment (including edge/embedded constraints), and lifecycle management. Collaborate with engineering, product, and domain experts to translate business problems (e.g., predictive maintenance, fault detection, process optimization) into well-defined data science solutions. Perform data cleansing, validation, and collation activities to ensure models are accurate, reliable, and aligned with real-world operating conditions. Solve complex technical challenges related to analytical toolsets that support engineering and operational decision-making. Communicate technical findings, model performance metrics, and business value to internal stakeholders through clear visualizations, written reports, and presentations. Explore and evaluate emerging techniques (e.g., generative AI for synthetic sensor data, edge AI optimization, multimodal data fusion) and recommend incorporation into production workflows where appropriate. Assist in formulating and managing data-driven project requirements aligned with business needs and strategic company goals. Provide subject matter input on analytical tools and methods to cross-functional product development teams. Work with software and business development teams to support revenue opportunities tied to data science initiatives and product/service enhancements. Support internal resources involved in research, product development, and ongoing production of data analytics deliverables. Required Qualifications: Bachelor's degree in Engineering required; Mechanical, Electrical, Chemical, or Aerospace strongly preferred. Formal training or demonstrated proficiency in data science, machine learning, and applied analytics required. 5+ years of professional experience in data science, machine learning, signal processing, and applied analytics; Master’s or PhD in a relevant field may substitute for up to 2 years of required experience. Direct industry experience required in one or more of the following sectors: Power Generation, Oil & Gas, Aerospace, Pulp & Paper, Manufacturing, or similar industries. Demonstrated experience working with time-series data, sensor data, and operational/IoT data within an industrial environment. Has independently owned at least one ML model from prototype through production, including monitoring and retraining in a live environment. Experience supporting use cases such as predictive maintenance, fault/anomaly detection, asset health monitoring, or process optimization. Proficiency in Python (NumPy, pandas, scikit-learn, TensorFlow/PyTorch), SQL, time-series databases (InfluxDB, TimescaleDB, Snowflake), and visualization tools (Power BI, Tableau, Plotly). Hands-on experience with time-series modeling techniques (e.g., ARIMA, Prophet, LSTMs, transformers for sequence data). Practical experience with anomaly detection methods on streaming or batch sensor data. Familiarity with cloud platforms (AWS, Azure, GCP) and MLOps practices including MLflow, Airflow, Docker, and CI/CD pipelines. Strong analytical and problem-solving skills with attention to detail. Excellent written and verbal communication skills, with the ability to present complex findings to non-technical audiences. Effective collaborator across engineering, product, and business teams. Self-motivated and capable of managing multiple priorities in a fast-paced environment. Active contributes to the broader data science and industrial AI community through open-source projects, technical publications, conference presentations, or patents; a track record of knowledge sharing is valued and supported. Preferred Qualifications: Master's or PhD degree in Data Science, Engineering (Electrical, Mechanical, or Chemical), or a related quantitative discipline. Background in reliability engineering, condition monitoring, or asset performance management. Familiarity with causal inference techniques applied to operational or process data. Experience working with multimodal data fusion (e.g., combining sensor data with images, text logs, or maintenance records). Experience deploying ML models to edge or embedded devices with compute and memory constraints. Familiarity with industrial communication protocols and data sources (e.g., OPC UA, Modbus, MQTT, SCADA, historians such as OSIsoft PI). Exposure to digital twin concepts, physics-informed machine learning, or hybrid modeling approaches that combine first-principles engineering models with data-driven methods. Experience with generative AI techniques, including the use of synthetic data generation for sensor and operational datasets. Other Qualifications: Successfully pass background check for cybersecurity access requirements. Cybersecurity Role Expectations: Candidate will be responsible for reviewing policies and procedures related to cybersecurity and those relevant to the functions of their role. Candidate is expected to maintain a cybersecure work environment. Benefit s: Paid Time Off Medical, Vision, Dental Insurance Health Savings Account with Employer contributions 401(k) with Employer match Short-term & Long-term Disability Coverage Accidental Death & Dismemberment Coverage Life Insurance Coverage Eight paid holidays per year All other benefits required by applicable law Alignment with Corporate Values All Cutsforth employees are expected to perform their work in a manner that exhibits understanding and adherence to the Company Mission and Core Attributes of Cutsforth Employees. Employees in management roles must exhibit continual improvement along Cutsforth’s Leadership Traits. Further, each employee must read and adhere to corporate policies and safety protocols. Learn more about Cutsforth here: Cutsforth.com/About Read our Mission & Values here: Cutsforth.com/Values Equal Employment Opportunity Statement: Cutsforth will not discriminate against any employee or applicant for employment because of race, color, religion, sex, sexual orientation, gender identity, or national origin. Cutsforth will take affirmative action to ensure that applicants are employed, and that employees are treated during employment, without regard to their race, color, religion, sex, sexual orientation, gender identity, or national origin. Such action shall include, but not be limited to the following: Employment, upgrading, demotion, or transfer, recruitment or recruitment advertising; layoff or termination; rates of pay or other forms of compensation; and selection for training, including apprenticeship. Cutsforth agrees to post in conspicuous places, available to employees and applicants for employment, notices to be provided by the provisions of this nondiscrimination clause. For Cutsforth's full Equal Employment Opportunity Policy, click here: EEO Notice to Employees & Applicants

Full job record

Job IDe917b9ab907c29fc8b5184903be55d3ec1af347f
Org ID585c5a55-9991-4447-a688-ce5b753228ff
Source ID85604323-ef5d-480b-81bc-b1acad29ea33
Board ID85604323-ef5d-480b-81bc-b1acad29ea33
Providerjazzhr
Provider Job Key5koAxFIDv6
TitleSr. Data Scientist - Industrial Industry Focused
Normalized Title
Statusdeleted
Activeno
Location TextFerndale, WA
Department
Team
Employment Typefull_time
Workplace Typeremote
Remote Policyremote
CountryUnited States
RegionWA
CityFerndale
Salary RawCompensation: $98,837 - $154,546, depending on years of experience Role Overview: We are building the intelligenc
Salary Min98,837
Salary Max154,546
Salary CurrencyUSD
Salary Periodyear
Source URLhttps://careers.cutsforth.com/apply/5koAxFIDv6/Sr-Data-Scientist-Industrial-Industry-Focused
Apply URLhttps://careers.cutsforth.com/apply/5koAxFIDv6/Sr-Data-Scientist-Industrial-Industry-Focused
First Seen At2026-05-30 05:55:59Z
Last Seen At2026-06-11 11:53:51Z
Last Checked At2026-06-13 12:11:07Z
Last Changed At2026-06-13 12:11:07Z
Inactive At2026-06-13 12:11:07Z
Source Posted At2026-05-22 00:00:00Z
Source Updated At
Raw Payload Uris3://job-postings-prod-raw-590183727216/raw/provider=jazzhr/board=cutsforth/date=2026-06-11/2026-06-11T11-53-51-487Z-f8e795f22b7566688d0372570f4f10fd4760b3d1d3879497e4449f9a48e6c0e4.json
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    "description_html": "<span style=\"font-size:12pt;\"><span style=\"font-family:Calibri, sans-serif;\"><b><u><span style=\"font-family:Arial, sans-serif;\">Role Information:</span></u></b></span></span><ul><li style=\"margin-left:8px;text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\"><strong>Job Title: </strong>Sr. <span style=\"font-weight:normal;\">Data Scientist- Industrial Industry Focused</span></span></span></li><li style=\"margin-left:8px;text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\"><strong>Work Location:</strong> <span style=\"font-weight:normal;\">Fully remote position, home office</span></span></span></li><li style=\"margin-left:8px;text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\"><strong>Employment Type:</strong><span style=\"font-weight:normal;\"> Full-time</span></span></span></li><li style=\"margin-left:8px;text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\"><strong>Employment Status:</strong> <span style=\"font-weight:normal;\">Exempt, salaried</span></span></span></li><li style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Visa sponsorship is <strong>not</strong> available for this position.</span></span></li><li style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\"><strong>Must</strong> reside in the United States.</span></span></li><li style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">We are <strong>not</strong> accepting applicants for remote workers in California, Illinois, and New York at this time.</span></span></li></ul><span style=\"font-size:12pt;\"><span style=\"font-family:Calibri, sans-serif;\"><b><u><span style=\"font-family:Arial, sans-serif;\">Compensation:</span></u></b></span></span><div style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">$98,837 - $154,546, depending on years of experience</span></span><br><br><span style=\"font-size:11pt;\"><span style=\"font-family:Calibri, sans-serif;\"><span style=\"font-weight:bold;\"><u><span style=\"font-size:12pt;\"><span style=\"font-family:Arial, sans-serif;\">Role <span style=\"letter-spacing:-0.1pt;\">Overview:</span></span></span></u></span></span></span></div><br><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\"><span style=\"line-height:107%;\"><span style=\"line-height:107%;\">We are building the intelligence layer for industrial operations – transforming raw sensor telemetry, time-series data, and field equipment signals into predictive diagnostics that keep critical assets running.</span></span><br><br><span style=\"line-height:107%;\"><span style=\"line-height:107%;\">As a Data Scientist on our team, you will work at the intersection of time-series analytics, machine learning, and engineering domain-knowledge, turning field equipment sensor data, time-series telemetry, and operational data into actionable insights – designing and deploying production-grade solutions for predictive maintenance and anomaly detection across our customers’ industrial environments.</span></span><br><br><span style=\"line-height:107%;\"><span style=\"line-height:107%;\">You will partner directly with engineering, product, and domain experts to translate business and operational challenges into scalable, production-ready data science solutions that drive measurable impact on reliability, efficiency, and revenue – with direct visibility into how your work reduces downtime and keeps critical operations running.</span></span><br><br><span style=\"line-height:107%;\"><span style=\"line-height:107%;\">We actively support team members to publish, present, and contribute to the industrial AI community.</span></span></span></span><br><br><span style=\"font-size:12pt;\"><span style=\"font-family:Calibri, sans-serif;\"><b><u><span style=\"font-family:Arial, sans-serif;\">Key Responsibilities:</span></u></b></span></span><ul style=\"margin-bottom:8px;\"><li style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Design, develop, train, and deploy machine learning and AI models that process and analyze field equipment sensor data (time-series IoT, embedded device telemetry) alongside structured and unstructured datasets.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Build and refine predictive, prescriptive, and anomaly detection models using techniques such as regression, time-series forecasting, classification, clustering, and deep learning to support real-time or near-real-time decision-making.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Perform exploratory data analysis (EDA), data preprocessing, feature engineering/signal processing, and feature extraction on high-volume, noisy sensor data and multimodal datasets to surface patterns, correlations, and actionable insights.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Contribute to end-to-end AI workflows, including automated data ingestion, model training pipelines, inference at the edge or in the cloud, and continuous monitoring for model drift and performance degradation.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Apply statistical modeling, hypothesis testing, and experimentation methods (A/B testing, causal inference where applicable) to validate model performance and ensure robustness in dynamic operational environments.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Support the development and maintenance of reproducible, scalable ML pipelines using MLOps best practices, including model versioning, retraining, deployment (including edge/embedded constraints), and lifecycle management.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Collaborate with engineering, product, and domain experts to translate business problems (e.g., predictive maintenance, fault detection, process optimization) into well-defined data science solutions.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Perform data cleansing, validation, and collation activities to ensure models are accurate, reliable, and aligned with real-world operating conditions.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Solve complex technical challenges related to analytical toolsets that support engineering and operational decision-making.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Communicate technical findings, model performance metrics, and business value to internal stakeholders through clear visualizations, written reports, and presentations.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Explore and evaluate emerging techniques (e.g., generative AI for synthetic sensor data, edge AI optimization, multimodal data fusion) and recommend incorporation into production workflows where appropriate.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Assist in formulating and managing data-driven project requirements aligned with business needs and strategic company goals.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Provide subject matter input on analytical tools and methods to cross-functional product development teams.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Work with software and business development teams to support revenue opportunities tied to data science initiatives and product/service enhancements.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Support internal resources involved in research, product development, and ongoing production of data analytics deliverables.</span></span></li></ul><br><span style=\"font-size:12pt;\"><span style=\"font-family:Calibri, sans-serif;\"><b><u><span style=\"font-family:Arial, sans-serif;\">Required Qualifications:</span></u></b></span></span><ul style=\"margin-bottom:8px;\"><li style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Bachelor's degree in Engineering required; Mechanical, Electrical, Chemical, or Aerospace strongly preferred. Formal training or demonstrated proficiency in data science, machine learning, and applied analytics required.</span></span></li><li style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">5+ years of professional experience in data science, machine learning, signal processing, and applied analytics; Master’s or PhD in a relevant field may substitute for up to 2 years of required experience.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Direct industry experience required in one or more of the following sectors: Power Generation, Oil & Gas, Aerospace, Pulp & Paper, Manufacturing, or similar industries.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Demonstrated experience working with time-series data, sensor data, and operational/IoT data within an industrial environment.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Has independently owned at least one ML model from prototype through production, including monitoring and retraining in a live environment.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Experience supporting use cases such as predictive maintenance, fault/anomaly detection, asset health monitoring, or process optimization.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Proficiency in Python (NumPy, pandas, scikit-learn, TensorFlow/PyTorch), SQL, time-series databases (InfluxDB, TimescaleDB, Snowflake), and visualization tools (Power BI, Tableau, Plotly).</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Hands-on experience with time-series modeling techniques (e.g., ARIMA, Prophet, LSTMs, transformers for sequence data).</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Practical experience with anomaly detection methods on streaming or batch sensor data.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Familiarity with cloud platforms (AWS, Azure, GCP) and MLOps practices including MLflow, Airflow, Docker, and CI/CD pipelines.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Strong analytical and problem-solving skills with attention to detail.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Excellent written and verbal communication skills, with the ability to present complex findings to non-technical audiences.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Effective collaborator across engineering, product, and business teams.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Self-motivated and capable of managing multiple priorities in a fast-paced environment.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Active contributes to the broader data science and industrial AI community through open-source projects, technical publications, conference presentations, or patents; a track record of knowledge sharing is valued and supported.</span></span></li></ul><br><span style=\"font-size:12pt;\"><span style=\"font-family:Calibri, sans-serif;\"><b><u><span style=\"font-family:Arial, sans-serif;\">Preferred Qualifications:</span></u></b></span></span><ul style=\"margin-bottom:8px;\"><li style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Master's or PhD degree in Data Science, Engineering (Electrical, Mechanical, or Chemical), or a related quantitative discipline.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Background in reliability engineering, condition monitoring, or asset performance management.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Familiarity with causal inference techniques applied to operational or process data.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Experience working with multimodal data fusion (e.g., combining sensor data with images, text logs, or maintenance records).</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Experience deploying ML models to edge or embedded devices with compute and memory constraints.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Familiarity with industrial communication protocols and data sources (e.g., OPC UA, Modbus, MQTT, SCADA, historians such as OSIsoft PI).</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Exposure to digital twin concepts, physics-informed machine learning, or hybrid modeling approaches that combine first-principles engineering models with data-driven methods.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Experience with generative AI techniques, including the use of synthetic data generation for sensor and operational datasets.</span></span></li></ul><br><span style=\"font-size:12pt;\"><span style=\"font-family:Calibri, sans-serif;\"><b><u><span style=\"font-family:Arial, sans-serif;\">Other Qualifications:</span></u></b></span></span><ul><li style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Successfully pass background check for cybersecurity access requirements.</span></span></li></ul><span style=\"font-size:12pt;\"><span style=\"font-family:Calibri, sans-serif;\"><b><u><span style=\"font-family:Arial, sans-serif;\">Cybersecurity Role Expectations:</span></u></b></span></span><ul><li><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Candidate will be responsible for reviewing policies and procedures related to cybersecurity and those relevant to the functions of their role.</span></span></li><li><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Candidate is expected to maintain a cybersecure work environment.</span></span></li></ul><span style=\"font-size:12pt;\"><span style=\"font-family:Calibri, sans-serif;\"><b><u><span style=\"font-family:Arial, sans-serif;\">Benefit</span></u></b><b><u><span style=\"font-family:Arial, sans-serif;\">s:</span></u></b></span></span><ul><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Paid Time Off</span></span></li><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Medical, Vision, Dental Insurance</span></span></li><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Health Savings Account with Employer contributions</span></span></li><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">401(k) with Employer match</span></span></li><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Short-term & Long-term Disability Coverage</span></span></li><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Accidental Death & Dismemberment Coverage</span></span></li><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Life Insurance Coverage</span></span></li><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Eight paid holidays per year</span></span></li><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">All other benefits required by applicable law</span></span></li></ul><p><strong>Alignment with Corporate Values</strong></p>\n\n<p>All Cutsforth employees are expected to perform their work in a manner that exhibits understanding and adherence to the Company Mission and Core Attributes of Cutsforth Employees. Employees in management roles must exhibit continual improvement along Cutsforth’s Leadership Traits. Further, each employee must read and adhere to corporate policies and safety protocols.</p>\n\n<ul>\n\t<li>Learn more about Cutsforth here: <a href=\\\"https://www.cutsforth.com/about-us/about-cutsforth/\\\">Cutsforth.com/About</a></li>\n\t<li>Read our Mission & Values here: <a href=\\\"https://www.cutsforth.com/about-us/mission-values/\\\">Cutsforth.com/Values</a></li>\n</ul>\n\n<p><strong>Equal Employment Opportunity Statement:</strong></p>\n\n<p>Cutsforth will not discriminate against any employee or applicant for employment because of race, color, religion, sex, sexual orientation, gender identity, or national origin. Cutsforth will take affirmative action to ensure that applicants are employed, and that employees are treated during employment, without regard to their race, color, religion, sex, sexual orientation, gender identity, or national origin. Such action shall include, but not be limited to the following: Employment, upgrading, demotion, or transfer, recruitment or recruitment advertising; layoff or termination; rates of pay or other forms of compensation; and selection for training, including apprenticeship. Cutsforth agrees to post in conspicuous places, available to employees and applicants for employment, notices to be provided by the provisions of this nondiscrimination clause.</p>\n\n<p>For Cutsforth's full Equal Employment Opportunity Policy, click here: <a href=\\\"https://www.cutsforth.com/wp-content/uploads/2024/07/2024-Notice-to-Employees-Applicants.pdf\\\">EEO Notice to Employees & Applicants</a></p>",
    "description_text": "Role Information: Job Title: Sr. Data Scientist- Industrial Industry Focused\n Work Location: Fully remote position, home office\n Employment Type: Full-time\n Employment Status: Exempt, salaried\n Visa sponsorship is not available for this position.\n Must reside in the United States.\n We are not accepting applicants for remote workers in California, Illinois, and New York at this time.\n Compensation: $98,837 - $154,546, depending on years of experience\n Role Overview:\n We are building the intelligence layer for industrial operations – transforming raw sensor telemetry, time-series data, and field equipment signals into predictive diagnostics that keep critical assets running.\n As a Data Scientist on our team, you will work at the intersection of time-series analytics, machine learning, and engineering domain-knowledge, turning field equipment sensor data, time-series telemetry, and operational data into actionable insights – designing and deploying production-grade solutions for predictive maintenance and anomaly detection across our customers’ industrial environments.\n You will partner directly with engineering, product, and domain experts to translate business and operational challenges into scalable, production-ready data science solutions that drive measurable impact on reliability, efficiency, and revenue – with direct visibility into how your work reduces downtime and keeps critical operations running.\n We actively support team members to publish, present, and contribute to the industrial AI community.\n Key Responsibilities: Design, develop, train, and deploy machine learning and AI models that process and analyze field equipment sensor data (time-series IoT, embedded device telemetry) alongside structured and unstructured datasets.\n Build and refine predictive, prescriptive, and anomaly detection models using techniques such as regression, time-series forecasting, classification, clustering, and deep learning to support real-time or near-real-time decision-making.\n Perform exploratory data analysis (EDA), data preprocessing, feature engineering/signal processing, and feature extraction on high-volume, noisy sensor data and multimodal datasets to surface patterns, correlations, and actionable insights.\n Contribute to end-to-end AI workflows, including automated data ingestion, model training pipelines, inference at the edge or in the cloud, and continuous monitoring for model drift and performance degradation.\n Apply statistical modeling, hypothesis testing, and experimentation methods (A/B testing, causal inference where applicable) to validate model performance and ensure robustness in dynamic operational environments.\n Support the development and maintenance of reproducible, scalable ML pipelines using MLOps best practices, including model versioning, retraining, deployment (including edge/embedded constraints), and lifecycle management.\n Collaborate with engineering, product, and domain experts to translate business problems (e.g., predictive maintenance, fault detection, process optimization) into well-defined data science solutions.\n Perform data cleansing, validation, and collation activities to ensure models are accurate, reliable, and aligned with real-world operating conditions.\n Solve complex technical challenges related to analytical toolsets that support engineering and operational decision-making.\n Communicate technical findings, model performance metrics, and business value to internal stakeholders through clear visualizations, written reports, and presentations.\n Explore and evaluate emerging techniques (e.g., generative AI for synthetic sensor data, edge AI optimization, multimodal data fusion) and recommend incorporation into production workflows where appropriate.\n Assist in formulating and managing data-driven project requirements aligned with business needs and strategic company goals.\n Provide subject matter input on analytical tools and methods to cross-functional product development teams.\n Work with software and business development teams to support revenue opportunities tied to data science initiatives and product/service enhancements.\n Support internal resources involved in research, product development, and ongoing production of data analytics deliverables.\n Required Qualifications: Bachelor's degree in Engineering required; Mechanical, Electrical, Chemical, or Aerospace strongly preferred. Formal training or demonstrated proficiency in data science, machine learning, and applied analytics required.\n 5+ years of professional experience in data science, machine learning, signal processing, and applied analytics; Master’s or PhD in a relevant field may substitute for up to 2 years of required experience.\n Direct industry experience required in one or more of the following sectors: Power Generation, Oil & Gas, Aerospace, Pulp & Paper, Manufacturing, or similar industries.\n Demonstrated experience working with time-series data, sensor data, and operational/IoT data within an industrial environment.\n Has independently owned at least one ML model from prototype through production, including monitoring and retraining in a live environment.\n Experience supporting use cases such as predictive maintenance, fault/anomaly detection, asset health monitoring, or process optimization.\n Proficiency in Python (NumPy, pandas, scikit-learn, TensorFlow/PyTorch), SQL, time-series databases (InfluxDB, TimescaleDB, Snowflake), and visualization tools (Power BI, Tableau, Plotly).\n Hands-on experience with time-series modeling techniques (e.g., ARIMA, Prophet, LSTMs, transformers for sequence data).\n Practical experience with anomaly detection methods on streaming or batch sensor data.\n Familiarity with cloud platforms (AWS, Azure, GCP) and MLOps practices including MLflow, Airflow, Docker, and CI/CD pipelines.\n Strong analytical and problem-solving skills with attention to detail.\n Excellent written and verbal communication skills, with the ability to present complex findings to non-technical audiences.\n Effective collaborator across engineering, product, and business teams.\n Self-motivated and capable of managing multiple priorities in a fast-paced environment.\n Active contributes to the broader data science and industrial AI community through open-source projects, technical publications, conference presentations, or patents; a track record of knowledge sharing is valued and supported.\n Preferred Qualifications: Master's or PhD degree in Data Science, Engineering (Electrical, Mechanical, or Chemical), or a related quantitative discipline.\n Background in reliability engineering, condition monitoring, or asset performance management.\n Familiarity with causal inference techniques applied to operational or process data.\n Experience working with multimodal data fusion (e.g., combining sensor data with images, text logs, or maintenance records).\n Experience deploying ML models to edge or embedded devices with compute and memory constraints.\n Familiarity with industrial communication protocols and data sources (e.g., OPC UA, Modbus, MQTT, SCADA, historians such as OSIsoft PI).\n Exposure to digital twin concepts, physics-informed machine learning, or hybrid modeling approaches that combine first-principles engineering models with data-driven methods.\n Experience with generative AI techniques, including the use of synthetic data generation for sensor and operational datasets.\n Other Qualifications: Successfully pass background check for cybersecurity access requirements.\n Cybersecurity Role Expectations: Candidate will be responsible for reviewing policies and procedures related to cybersecurity and those relevant to the functions of their role.\n Candidate is expected to maintain a cybersecure work environment.\n Benefit s: Paid Time Off\n Medical, Vision, Dental Insurance\n Health Savings Account with Employer contributions\n 401(k) with Employer match\n Short-term & Long-term Disability Coverage\n Accidental Death & Dismemberment Coverage\n Life Insurance Coverage\n Eight paid holidays per year\n All other benefits required by applicable law\n Alignment with Corporate Values\n All Cutsforth employees are expected to perform their work in a manner that exhibits understanding and adherence to the Company Mission and Core Attributes of Cutsforth Employees. Employees in management roles must exhibit continual improvement along Cutsforth’s Leadership Traits. Further, each employee must read and adhere to corporate policies and safety protocols.\n Learn more about Cutsforth here: Cutsforth.com/About\n Read our Mission & Values here: Cutsforth.com/Values\n Equal Employment Opportunity Statement:\n Cutsforth will not discriminate against any employee or applicant for employment because of race, color, religion, sex, sexual orientation, gender identity, or national origin. Cutsforth will take affirmative action to ensure that applicants are employed, and that employees are treated during employment, without regard to their race, color, religion, sex, sexual orientation, gender identity, or national origin. Such action shall include, but not be limited to the following: Employment, upgrading, demotion, or transfer, recruitment or recruitment advertising; layoff or termination; rates of pay or other forms of compensation; and selection for training, including apprenticeship. Cutsforth agrees to post in conspicuous places, available to employees and applicants for employment, notices to be provided by the provisions of this nondiscrimination clause.\n For Cutsforth's full Equal Employment Opportunity Policy, click here: EEO Notice to Employees & Applicants",
    "jsonld_jobposting": {
      "url": "https://careers.cutsforth.com/apply/5koAxFIDv6/Sr-Data-Scientist-Industrial-Industry-Focused",
      "@type": "JobPosting",
      "title": "Sr. Data Scientist - Industrial Industry Focused",
      "@context": "http://schema.org/",
      "datePosted": "2026-05-22",
      "description": "<span style=\"font-size:12pt;\"><span style=\"font-family:Calibri, sans-serif;\"><b><u><span style=\"font-family:Arial, sans-serif;\">Role Information:</span></u></b></span></span><ul><li style=\"margin-left:8px;text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\"><strong>Job Title: </strong>Sr. <span style=\"font-weight:normal;\">Data Scientist- Industrial Industry Focused</span></span></span></li><li style=\"margin-left:8px;text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\"><strong>Work Location:</strong> <span style=\"font-weight:normal;\">Fully remote position, home office</span></span></span></li><li style=\"margin-left:8px;text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\"><strong>Employment Type:</strong><span style=\"font-weight:normal;\"> Full-time</span></span></span></li><li style=\"margin-left:8px;text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\"><strong>Employment Status:</strong> <span style=\"font-weight:normal;\">Exempt, salaried</span></span></span></li><li style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Visa sponsorship is <strong>not</strong> available for this position.</span></span></li><li style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\"><strong>Must</strong> reside in the United States.</span></span></li><li style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">We are <strong>not</strong> accepting applicants for remote workers in California, Illinois, and New York at this time.</span></span></li></ul><span style=\"font-size:12pt;\"><span style=\"font-family:Calibri, sans-serif;\"><b><u><span style=\"font-family:Arial, sans-serif;\">Compensation:</span></u></b></span></span><div style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">$98,837 - $154,546, depending on years of experience</span></span><br><br><span style=\"font-size:11pt;\"><span style=\"font-family:Calibri, sans-serif;\"><span style=\"font-weight:bold;\"><u><span style=\"font-size:12pt;\"><span style=\"font-family:Arial, sans-serif;\">Role <span style=\"letter-spacing:-0.1pt;\">Overview:</span></span></span></u></span></span></span></div><br><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\"><span style=\"line-height:107%;\"><span style=\"line-height:107%;\">We are building the intelligence layer for industrial operations – transforming raw sensor telemetry, time-series data, and field equipment signals into predictive diagnostics that keep critical assets running.</span></span><br><br><span style=\"line-height:107%;\"><span style=\"line-height:107%;\">As a Data Scientist on our team, you will work at the intersection of time-series analytics, machine learning, and engineering domain-knowledge, turning field equipment sensor data, time-series telemetry, and operational data into actionable insights – designing and deploying production-grade solutions for predictive maintenance and anomaly detection across our customers’ industrial environments.</span></span><br><br><span style=\"line-height:107%;\"><span style=\"line-height:107%;\">You will partner directly with engineering, product, and domain experts to translate business and operational challenges into scalable, production-ready data science solutions that drive measurable impact on reliability, efficiency, and revenue – with direct visibility into how your work reduces downtime and keeps critical operations running.</span></span><br><br><span style=\"line-height:107%;\"><span style=\"line-height:107%;\">We actively support team members to publish, present, and contribute to the industrial AI community.</span></span></span></span><br><br><span style=\"font-size:12pt;\"><span style=\"font-family:Calibri, sans-serif;\"><b><u><span style=\"font-family:Arial, sans-serif;\">Key Responsibilities:</span></u></b></span></span><ul style=\"margin-bottom:8px;\"><li style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Design, develop, train, and deploy machine learning and AI models that process and analyze field equipment sensor data (time-series IoT, embedded device telemetry) alongside structured and unstructured datasets.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Build and refine predictive, prescriptive, and anomaly detection models using techniques such as regression, time-series forecasting, classification, clustering, and deep learning to support real-time or near-real-time decision-making.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Perform exploratory data analysis (EDA), data preprocessing, feature engineering/signal processing, and feature extraction on high-volume, noisy sensor data and multimodal datasets to surface patterns, correlations, and actionable insights.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Contribute to end-to-end AI workflows, including automated data ingestion, model training pipelines, inference at the edge or in the cloud, and continuous monitoring for model drift and performance degradation.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Apply statistical modeling, hypothesis testing, and experimentation methods (A/B testing, causal inference where applicable) to validate model performance and ensure robustness in dynamic operational environments.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Support the development and maintenance of reproducible, scalable ML pipelines using MLOps best practices, including model versioning, retraining, deployment (including edge/embedded constraints), and lifecycle management.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Collaborate with engineering, product, and domain experts to translate business problems (e.g., predictive maintenance, fault detection, process optimization) into well-defined data science solutions.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Perform data cleansing, validation, and collation activities to ensure models are accurate, reliable, and aligned with real-world operating conditions.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Solve complex technical challenges related to analytical toolsets that support engineering and operational decision-making.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Communicate technical findings, model performance metrics, and business value to internal stakeholders through clear visualizations, written reports, and presentations.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Explore and evaluate emerging techniques (e.g., generative AI for synthetic sensor data, edge AI optimization, multimodal data fusion) and recommend incorporation into production workflows where appropriate.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Assist in formulating and managing data-driven project requirements aligned with business needs and strategic company goals.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Provide subject matter input on analytical tools and methods to cross-functional product development teams.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Work with software and business development teams to support revenue opportunities tied to data science initiatives and product/service enhancements.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Support internal resources involved in research, product development, and ongoing production of data analytics deliverables.</span></span></li></ul><br><span style=\"font-size:12pt;\"><span style=\"font-family:Calibri, sans-serif;\"><b><u><span style=\"font-family:Arial, sans-serif;\">Required Qualifications:</span></u></b></span></span><ul style=\"margin-bottom:8px;\"><li style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Bachelor's degree in Engineering required; Mechanical, Electrical, Chemical, or Aerospace strongly preferred. Formal training or demonstrated proficiency in data science, machine learning, and applied analytics required.</span></span></li><li style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">5+ years of professional experience in data science, machine learning, signal processing, and applied analytics; Master’s or PhD in a relevant field may substitute for up to 2 years of required experience.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Direct industry experience required in one or more of the following sectors: Power Generation, Oil & Gas, Aerospace, Pulp & Paper, Manufacturing, or similar industries.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Demonstrated experience working with time-series data, sensor data, and operational/IoT data within an industrial environment.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Has independently owned at least one ML model from prototype through production, including monitoring and retraining in a live environment.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Experience supporting use cases such as predictive maintenance, fault/anomaly detection, asset health monitoring, or process optimization.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Proficiency in Python (NumPy, pandas, scikit-learn, TensorFlow/PyTorch), SQL, time-series databases (InfluxDB, TimescaleDB, Snowflake), and visualization tools (Power BI, Tableau, Plotly).</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Hands-on experience with time-series modeling techniques (e.g., ARIMA, Prophet, LSTMs, transformers for sequence data).</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Practical experience with anomaly detection methods on streaming or batch sensor data.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Familiarity with cloud platforms (AWS, Azure, GCP) and MLOps practices including MLflow, Airflow, Docker, and CI/CD pipelines.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Strong analytical and problem-solving skills with attention to detail.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Excellent written and verbal communication skills, with the ability to present complex findings to non-technical audiences.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Effective collaborator across engineering, product, and business teams.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Self-motivated and capable of managing multiple priorities in a fast-paced environment.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Active contributes to the broader data science and industrial AI community through open-source projects, technical publications, conference presentations, or patents; a track record of knowledge sharing is valued and supported.</span></span></li></ul><br><span style=\"font-size:12pt;\"><span style=\"font-family:Calibri, sans-serif;\"><b><u><span style=\"font-family:Arial, sans-serif;\">Preferred Qualifications:</span></u></b></span></span><ul style=\"margin-bottom:8px;\"><li style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Master's or PhD degree in Data Science, Engineering (Electrical, Mechanical, or Chemical), or a related quantitative discipline.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Background in reliability engineering, condition monitoring, or asset performance management.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Familiarity with causal inference techniques applied to operational or process data.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Experience working with multimodal data fusion (e.g., combining sensor data with images, text logs, or maintenance records).</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Experience deploying ML models to edge or embedded devices with compute and memory constraints.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Familiarity with industrial communication protocols and data sources (e.g., OPC UA, Modbus, MQTT, SCADA, historians such as OSIsoft PI).</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Exposure to digital twin concepts, physics-informed machine learning, or hybrid modeling approaches that combine first-principles engineering models with data-driven methods.</span></span></li><li style=\"margin-bottom:8px;margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Experience with generative AI techniques, including the use of synthetic data generation for sensor and operational datasets.</span></span></li></ul><br><span style=\"font-size:12pt;\"><span style=\"font-family:Calibri, sans-serif;\"><b><u><span style=\"font-family:Arial, sans-serif;\">Other Qualifications:</span></u></b></span></span><ul><li style=\"margin-left:8px;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Successfully pass background check for cybersecurity access requirements.</span></span></li></ul><span style=\"font-size:12pt;\"><span style=\"font-family:Calibri, sans-serif;\"><b><u><span style=\"font-family:Arial, sans-serif;\">Cybersecurity Role Expectations:</span></u></b></span></span><ul><li><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Candidate will be responsible for reviewing policies and procedures related to cybersecurity and those relevant to the functions of their role.</span></span></li><li><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Candidate is expected to maintain a cybersecure work environment.</span></span></li></ul><span style=\"font-size:12pt;\"><span style=\"font-family:Calibri, sans-serif;\"><b><u><span style=\"font-family:Arial, sans-serif;\">Benefit</span></u></b><b><u><span style=\"font-family:Arial, sans-serif;\">s:</span></u></b></span></span><ul><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Paid Time Off</span></span></li><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Medical, Vision, Dental Insurance</span></span></li><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Health Savings Account with Employer contributions</span></span></li><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">401(k) with Employer match</span></span></li><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Short-term & Long-term Disability Coverage</span></span></li><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Accidental Death & Dismemberment Coverage</span></span></li><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Life Insurance Coverage</span></span></li><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">Eight paid holidays per year</span></span></li><li style=\"text-align:justify;\"><span style=\"font-size:14px;\"><span style=\"font-family:Arial, Helvetica, sans-serif;\">All other benefits required by applicable law</span></span></li></ul><p><strong>Alignment with Corporate Values</strong></p>\n\n<p>All Cutsforth employees are expected to perform their work in a manner that exhibits understanding and adherence to the Company Mission and Core Attributes of Cutsforth Employees. Employees in management roles must exhibit continual improvement along Cutsforth’s Leadership Traits. Further, each employee must read and adhere to corporate policies and safety protocols.</p>\n\n<ul>\n\t<li>Learn more about Cutsforth here: <a href=\\\"https://www.cutsforth.com/about-us/about-cutsforth/\\\">Cutsforth.com/About</a></li>\n\t<li>Read our Mission & Values here: <a href=\\\"https://www.cutsforth.com/about-us/mission-values/\\\">Cutsforth.com/Values</a></li>\n</ul>\n\n<p><strong>Equal Employment Opportunity Statement:</strong></p>\n\n<p>Cutsforth will not discriminate against any employee or applicant for employment because of race, color, religion, sex, sexual orientation, gender identity, or national origin. Cutsforth will take affirmative action to ensure that applicants are employed, and that employees are treated during employment, without regard to their race, color, religion, sex, sexual orientation, gender identity, or national origin. Such action shall include, but not be limited to the following: Employment, upgrading, demotion, or transfer, recruitment or recruitment advertising; layoff or termination; rates of pay or other forms of compensation; and selection for training, including apprenticeship. Cutsforth agrees to post in conspicuous places, available to employees and applicants for employment, notices to be provided by the provisions of this nondiscrimination clause.</p>\n\n<p>For Cutsforth's full Equal Employment Opportunity Policy, click here: <a href=\\\"https://www.cutsforth.com/wp-content/uploads/2024/07/2024-Notice-to-Employees-Applicants.pdf\\\">EEO Notice to Employees & Applicants</a></p>",
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