AI Analyst (The Data Decoder)

Unreal Gigs
Edinburgh
1 year ago
Applications closed

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Introduction:

Do you have a knack for uncovering insights hidden within massive datasets? Are you passionate about transforming raw data into actionable strategies using cutting-edge AI tools and techniques? If you love combining analytical skills with artificial intelligence to solve real-world problems, thenour clienthas the perfect role for you. We’re looking for anAI Analyst(aka The Data Decoder) to analyze complex datasets and derive meaningful insights using AI models, helping shape the future of our data-driven decision-making.

As an AI Analyst atour client, you’ll collaborate with data scientists, product managers, and business stakeholders to analyze data and deploy AI models that drive actionable insights. You’ll use a mix of machine learning, statistical analysis, and AI tools to transform data into strategies that propel business growth and innovation.

Key Responsibilities:

  1. Data Analysis and Interpretation:
  • Analyze large datasets using machine learning techniques and AI tools to uncover trends, patterns, and insights that inform business decisions. You’ll use predictive analytics, regression models, clustering, and other techniques to derive actionable insights.
Apply AI Models to Business Challenges:
  • Work closely with data scientists and AI engineers to apply AI models to real-world business problems. You’ll analyze model outputs, validate results, and ensure that AI-driven insights align with business objectives.
Predictive and Prescriptive Analytics:
  • Use AI tools to create predictive models that forecast future outcomes based on historical data. You’ll help businesses make data-driven decisions by providing insights on future trends, risks, and opportunities through prescriptive analytics.
Visualization and Reporting:
  • Create compelling data visualizations and reports using tools like Tableau, Power BI, or Matplotlib to communicate AI-driven insights to stakeholders. You’ll translate complex AI outputs into easy-to-understand, actionable recommendations.
Collaborate with Cross-Functional Teams:
  • Partner with product managers, marketing teams, and other business units to understand their data needs. You’ll help translate business requirements into data-driven AI solutions and insights that support strategic decisions.
Monitor and Validate AI Models:
  • Continuously monitor the performance of AI models in production, ensuring their accuracy and relevance. You’ll validate model outputs and work with data scientists to retrain or fine-tune models as needed to maintain high performance.
Stay Updated on AI Trends:
  • Stay current with the latest advancements in AI, machine learning, and data analysis. You’ll explore new tools, techniques, and algorithms that can be applied to improve business processes and uncover deeper insights.

Requirements

Required Skills:

  • AI and Machine Learning Knowledge:Solid understanding of machine learning techniques such as regression, classification, clustering, and natural language processing (NLP). You’re experienced in applying AI models to analyze large datasets.
  • Data Analysis Expertise:Strong analytical skills with experience in data mining, statistical analysis, and AI-driven insights. You’re proficient in Python, R, or SQL and comfortable working with tools like TensorFlow, Scikit-learn, and Pandas.
  • Data Visualization and Reporting:Proficiency in data visualization tools like Tableau, Power BI, or Matplotlib. You can effectively communicate AI insights to non-technical stakeholders through compelling visualizations.
  • Business Acumen:Ability to translate complex data into actionable business insights. You have a keen understanding of how data-driven strategies can impact key business decisions and objectives.
  • Collaboration and Communication:Strong communication skills with the ability to work closely with cross-functional teams. You’re comfortable explaining complex AI concepts and analysis to both technical and non-technical audiences.

Educational Requirements:

  • Bachelor’s or Master’s degree in Data Science, AI, Statistics, Business Analytics, or a related field.Equivalent experience in data analysis or AI-driven insights is also highly valued.
  • Certifications or additional coursework in AI, data analytics, or machine learning are a plus.

Experience Requirements:

  • 3+ years of experience in data analysis or AI analytics,with hands-on experience applying machine learning models to derive insights from large datasets.
  • Proven track record of using data and AI tools to solve business problems and provide actionable recommendations.
  • Experience working with cloud-based AI services (AWS, GCP, Azure) and tools for deploying and monitoring AI models is highly desirable.

Benefits

  • Health and Wellness: Comprehensive medical, dental, and vision insurance plans with low co-pays and premiums.
  • Paid Time Off: Competitive vacation, sick leave, and 20 paid holidays per year.
  • Work-Life Balance: Flexible work schedules and telecommuting options.
  • Professional Development: Opportunities for training, certification reimbursement, and career advancement programs.
  • Wellness Programs: Access to wellness programs, including gym memberships, health screenings, and mental health resources.
  • Life and Disability Insurance: Life insurance and short-term/long-term disability coverage.
  • Employee Assistance Program (EAP): Confidential counseling and support services for personal and professional challenges.
  • Tuition Reimbursement: Financial assistance for continuing education and professional development.
  • Community Engagement: Opportunities to participate in community service and volunteer activities.
  • Recognition Programs: Employee recognition programs to celebrate achievements and milestones.

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