Data Science & Value Creation Consultant
Budget: $50.0 - $130.0
HOURLY / PART_TIME
⭐ 0.00 (0)
CAN
data-analysis, python, sql, statistical-analysis, business-intelligence, business-analysis, financial-analysis, data-modeling, private-equity
About Valitas
Valitas helps private company shareholders unlock their full value potential, targeting $1B in client value by 2030 and at least $100M per client. We work with a select number of clients, applying our Shareholder Value Architect system to drive focused, disciplined execution backed by proprietary value creation tools and a curated network of high-calibre experts.
Job overview
Valitas is seeking a Data Science & Value Creation Consultant to support project-based engagements as a remote contractor. The role focuses on analyzing client datasets to identify opportunities to improve profitability, revenue, margins, and operational performance. The successful candidate will be able to uncover non-obvious insights, quantify potential business impact, and communicate findings clearly to support decision-making. The emphasis is on deep analytical discovery and value creation rather than reporting.
Responsibilities
- Analyze operational, financial, customer, and commercial datasets, which are often large and fragmented.
- Identify opportunities to improve EBITDA, margins, revenue growth, customer retention, and operational performance.
- Assess pricing, customer profitability, commercial performance, and other key business drivers.
- Investigate trends, performance gaps, and underlying drivers across large datasets.
- Quantify the potential impact of identified opportunities.
- Present findings and recommendations in a format that can be used by management teams and decision-makers.
- Work alongside the Valitas team on value creation and performance improvement initiatives across multiple engagements.
Required Capabilities
Business & Analytical
- Strong analytical and business problem-solving skills.
- Ability to connect analytical findings to EBITDA and ROI outcomes and quantify the financial impact of identified opportunities.
- Experience identifying performance drivers and improvement opportunities through data.
Technical
- Strong experience with Python, SQL, or comparable analytical tools.
- Practical experience applying methods such as regression analysis, clustering, segmentation, and statistical analysis.
- Experience working with large, complex, and fragmented datasets.
Communication
- Ability to communicate analytical findings to non-technical audiences.
- Experience presenting recommendations to business leaders, operators, investors, or management teams.
Preferred Background
Preference will be given to candidates with experience in:
- Private equity portfolio analytics
- Value creation teams
- Analytics-heavy operational, strategic, or consulting roles
Candidates should be able to demonstrate examples of analysis that led to measurable operational or financial improvements.
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