Machine learning engineer [h1.location_city]
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Machine learning engineer • berkeley ca
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Reveal HealthTech is a dedicated healthcare life sciences focused technology services company – helping our clients with a range of AI and product engineering services. Reveal’s mission is to unleash the full potential of technology for our clients by prioritizing trust, agility, and expertise. We bring together domain understanding and engineering excellence to create meaningful products and platforms. Our multi-dimensional team is made up of industry experts, product designers and passionate software engineers located across the US and India.
If all of this resonates with you and building a business from 0 to 1 excites you, read on to the JD.
Requirements
What do we need?
We are looking for a talented and passionate Machine Learning Engineer to join our growing team. As a Machine Learning Engineer at Reveal Health Tech, you will be responsible for developing, implementing, and deploying machine learning models and algorithms to help us tackle complex healthcare and lifesciences challenges. You will work closely with our cross-functional teams to gather requirements, design solutions, and ensure effective implementation to meet our clients' needs.
Responsibilities
As a Machine Learning Engineer, your key responsibilities would include :
- Data Exploration and Preprocessing : Work with large and complex healthcare datasets, cleaning and preprocessing the data to ensure data quality for model training and evaluation.
- Model Development : Design, develop, and train machine learning models and algorithms using appropriate techniques and frameworks.
- Evaluation and Optimization : Evaluate the performance of machine learning models and optimize them for better accuracy, reliability, and efficiency.
- Feature Engineering : Extract and engineer relevant features from healthcare data to enhance model performance and predictive power.
- Deployment and Integration : Deploy machine learning models and algorithms into production environments and integrate them with existing systems or workflows.
- Monitoring and Maintenance : Continuously monitor and maintain machine learning models to ensure their performance and effectiveness over time.
- Collaboration : Collaborate with data scientists, software engineers, and other cross-functional teams to understand requirements, facilitate data-driven decision making, and drive innovative solutions.
- Documentation : Document and communicate methodologies, algorithms, findings, and recommendations to technical and non-technical stakeholders.
Key Skills and Qualifications
How you will enrich us?
Benefits
What do you get in return?
Next Steps