News | June 16, 2026
New offering bridges the gap between technology expectations and real-world performance, helping clients manage disputes, remediation efforts, and emerging technologies.
Mr. Mazhar excels in providing data driven solutions for expert testimony on matters relating to antitrust, class actions, litigation, arbitration, and M&A. His expertise lies in formulating the framework for processing and analyzing crude data for econometric analysis, end-to-end process automation, and data integrity.
San Francisco
Mr. Mazhar brings four years of professional experience collaborating with testifying experts to consult clients on matters related to antitrust, class actions, litigation, arbitration, and M&A. He has provided consulting services for AmLaw 200 law firms, Fortune 500 companies, healthcare systems, national insurance agencies, sporting organizations and government agencies.
Specializing in data analytics and strategy, Mr. Mazhar has experience in cases involving contract disputes, healthcare mergers, market sizing and definitions, commercial damages valuations, collusion damages valuations, and class action settlement valuations.
New offering bridges the gap between technology expectations and real-world performance, helping clients manage disputes, remediation efforts, and emerging technologies.
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