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Gold Standard Ventures Corp.

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Summary

Project:

Railroad

Deposit:Dark Star
Location:United States
Commodities:Gold
Date:11/7/2017
Report Code:NI43-101
Report Type:Exploration/Drilling Update
Project Stage:Pursuing Resource Increase/Upgrade
Report details:7-11-2017: Gold Standard Ventures Corp. announces an Exploration/Drilling Update report for its Dark Star deposit at the Railroad project. Drilling results incl. 136m @ 2.67g/t Au from 37.8m. November 7, 2017 – Vancouver, B.C. – Gold Standard Ventures Cor
Resources:(Resource): 15.38Mt @ 0.54g/t Au (Ind.) and 17.05Mt @ 1.31g/t Au (Inf.) at Dark Star
CP/QP:[Overall Report]: Steven R. Koehler (Internal)
ABSTRACT:November 7, 2017 – Vancouver, B.C. – Gold Standard Ventures Corp. (TSX: GSV; NYSE AMERICAN:GSV) (“Gold Standard” or the “Company) today announced results from 11 exploration and infill holes at the Dark Star oxide gold deposit on its 100%-owned/controlled Railroad Project in Nevada’s Carlin Trend. These drill holes are a portion of Gold Standard’s 2017 US$15.5 million program which includes up to 48,800 m of reverse-circulation (RC) and core drilling in 117 holes (see February 2, 2017 news release). The infill drilling is designed to reduce drill spacing in critical portions of Dark Star to 30m. Recent results either confirm or outperform the current resource block model. Infill core hole DS17-20 intersected 136.0m of 2.67 g Au/t approximately 30m north of DS16-03B (101.2m of 1.54 g Au/t) and approximately 90m south of DS16-08 (126.2m of 4.07 g Au/t). These new results are expected to significantly improve the grade of the current block model in the northern portion of Dark Star (please go to the following link - https://goldstandardv.com/lp/dark-star-nov2017-map).

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