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  • Spark Insights - Data Scientist - Computer Vision

    Job Locations US-MA-Boston
    Posted Date 3 months ago(3/5/2019 2:32 PM)
    Job ID
    2019-1291
    Name
    Spark Insights
    # of Openings
    2
    Category
    Engineering
  • Overview

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    Spark Insights is an early stage stealth mode company on a mission to develop a broad range of solutions in big data, machine learning, and artificial intelligence.

     

    We are looking for new graduates with science/engineering backgrounds to join our Data Science team as Data Scientists. The mission of our Data Science team is to develop new machine learning solutions in the computer vision area. The ideal candidates are those who have solid science and/or engineering backgrounds and are willing to learn!! We will provide training programs and mentorship to help you grow with the company, converting you into a mature data scientist.  You will contribute and lead to the success of company. 

     

    As a Data Scientist, you will be focused on developing and deploying image processing, machine learning and deep learning solutions that will have an impact in the financial services and insurance industries.

    One of the advantages of the startup environment at Spark Insights is it will provide you opportunities to get hands on experience with the full product R&D cycles.  You will have many options of career paths to choose from, including but not limited to, pure algorithm research, prototype development, commercial product design and scalable production in cloud. This Data Scientist position is based in Boston, MA.  You must be authorized to work in the US.

    Responsibilities

    As a computer vision and deep learning data scientist you will:

    • Research, design, implement, and deploy full-stack scalable computer vision, deep learning, and machine learning solutions to novel and R&D problems.
    • Keep up with state-of-the-art methods in computer vision and deep learning and apply them to improve and create new solutions.
    • Develop and implement state-of-the-art computer vision algorithms for object detection, classification, segmentation, or recognition.
    • Collaborate with team members on developing computer vision systems starting from prototype to production.
    • Translate business requirements into quick prototypes or proof of concepts and work with customers directly to uncover operational objectives.

    Qualifications

    • PhD or MS in science, engineering, math, statistics or related fields.
    • Strong foundation in courses taken in programming (4+ yrs in Python, Java, Scala, R, or combined).
    • Computer vision related courses, CNN, image classification, semantic segmentation, RNN, etc.
    • Experience with machine learning / deep learning tools or frameworks like Scikit learn, XGBoost, Spark, Tensorflow, Keras, or PyTorch.
    • Excellent written and verbal communication skills and ability to communicate effectively to both technical and nontechnical audiences.
    • Technical fluency; comfortable understanding and discussing architectural concepts and algorithms, assessing tradeoffs and new opportunities with technical team members.

    Desired Skills:

    • Experience with maps, QGIS, OpenLayers, spatial databases, or similar tools.
    • Large-scale geospatial querying and analytics on distributed computing systems like GeoMesa is another big plus (and/or with spatio-temporal indexing on top of the Accumulo, HBase, Google Bigtable and Cassandra)
    • Experience with cloud computing environments (AWS, Azure, Google cloud)
    • Proficient with a distributed computing platform (Hadoop, Spark, etc.).

    Spark Insights is committed to providing equal opportunity for all employees and applicants without regard to race, color, religion, sex, sexual preference/orientation, gender identity or expression, age, marital status, national origin, physical or mental disability, veteran status, or any other protected classification under applicable law.

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