AI Data Scientist - Manager

Columbia, MD, United States

Blend360

Blend360 co-creates value with leading companies through the integration of data, advanced analytics, technology & people. Get in touch with us today.

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Company Description

Blend360 is a world class marketing, analytics, and technology company that delivers the best results for our clients. Our primary focus is Data Sciences; leveraging data and applied mathematics to solve our clients’ business challenges. Blend360 is known for our exceptional people, our get-it-done mentality, and delivering high impact and sustainable results. If you love to solve difficult problems and deliver results; if you like to learn new things and apply innovative, state-of-the-art methodology, join us at Blend360.

Job Description

  • You will work as part of our global Data Science team to provide data driven AI solutions for our customers using state-of-the-art methods and tools. 
  • Work with practice leaders and clients to understand business problems, industry context, data sources, potential risks, and constraints 
  • Work with practice leaders to get stakeholder feedback, get alignment on approaches, deliverables, and roadmaps 
  • Create and maintain efficient data pipelines, often within clients’ architecture. Typically, data are from a wide variety of sources, internal and external, and manipulated using SQL, spark, and Cloud big data technologies 
  • Assemble large, complex data sets from client and external sources that meet functional business requirements. 
  • Build analytics tools to provide actionable insights into customer acquisition, operational efficiency, and other key business performance metrics.  
  • Perform data cleaning/hygiene, data QC, and integrate data from both client internal and external data sources on Advanced Data Science Platform. Be able to summarize and describe data and data issues  
  • Utilize deep learning principles and architectures, including CNNs, RNNs, and transformers,  apply these techniques to natural language processing tasks.
  • Manipulate model parameters to achieve desired outcomes in text generation.
  • Craft effective prompts that guide AI models to generate desired outputs. Understand how different prompt structures influence AI behavior.
  • Use RAG models, and combine a retrieval component with a generator to enhance the quality and relevance of the AI's output. Understand how to effectively integrate external knowledge sources into AI responses.
  • Train and fine-tune models on specific datasets to improve performance and ensure the relevance of the outputs to the task at hand.
  • Conduct statistical data analysis, including exploratory data analysis, data mining, and document key insights and findings toward decision making 
  • Document predictive models/machine learning results that can be incorporated into client-deliverable documentation 
  • Assist client to deploy models and algorithms within their own architecture 

Qualifications

  • Profound knowledge of deep learning principles and architectures, including CNNs, RNNs, and transformers, with the ability to apply these techniques to natural language processing tasks.
  • Deployment experience - Understanding of how to integrate models into production
  • Engineering experience
  • In-depth understanding of the workings of LLMs and the ability to manipulate model parameters to achieve desired outcomes in text generation.
  • Expertise in crafting effective prompts that guide AI models to generate desired outputs. Understand how different prompt structures influence AI behavior.
  • Experience with RAG models, which combine a retrieval component with a generator to enhance the quality and relevance of the AI's output. Understand how to effectively integrate external knowledge sources into AI responses.
  • Capability to train and fine-tune models on specific datasets to improve performance and ensure the relevance of the outputs to the task at hand.
  • MS degree in Statistics, Math, Data Analytics, or a related quantitative field 
  • At least 3 years of post graduate professional experience in Advanced Data Science, such as predictive modeling, statistical analysis, machine learning, text mining, geospatial analytics, time series forecasting, optimization 
  • Demonstrated Experience with NLP and other components of AI
  • Experience implementing AI solutions
  • Experience with one or more Advanced Data Science software languages (Python, R, SAS)  
  • Proven ability to deploy machine learning models from the research environment (Jupyter Notebooks) to production via procedural or pipeline approaches 
  • Experience with SQL and relational databases, query authoring and tuning as well as working familiarity with a variety of databases including Hadoop/Hive 
  • Experience with spark and data-frames in PySpark or Scala 
  • Strong problem-solving skills; ability to pivot complex data to answer business questions. Proven ability to visualize data for influencing. 
  • Comfortable with cloud-based platforms (AWS, Azure, Google) 
  • Experience with Google Analytics, Adobe Analytics, Optimizely a plus 
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Tags: Architecture AWS Azure Big Data Data analysis Data Analytics Data Mining Data pipelines Deep Learning EDA Engineering Hadoop Jupyter LLMs Machine Learning Mathematics ML models NLP Pipelines Predictive modeling PySpark Python R RAG RDBMS Research SAS Scala Spark SQL Statistics Transformers

Region: North America
Country: United States

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