P. N. Sathya
P. N. Sathya (died. 5 May 2018) was an Indian film director, writer and actor working in Kannada cinema.[2] He was known for writing and directing crime drama films.[3] He debuted with the crime film Majestic (2002) which introduced actor Darshan in the lead role and went on to direct many such films like Don (2003), Daasa (2003), Shashtri (2005), Thangigagi (2006), Sugreeva (2010) and Shivajinagara (2014). He has also acted in 21 films.[4]
P. N. Sathya | |
---|---|
Born | Karnataka, India |
Died | May 5, 2018[1] |
Occupation | Film director, actor, producer, screenwriter |
Years active | 2002–2018 |
Spouse(s) | Roopashree S |
Children | Ruthick and Charvi |
Filmography
As director
Year | Title | Starring | Note |
---|---|---|---|
2002 | Majestic | Darshan, Rekha | |
2003 | Don | Shiva Rajkumar, Meghana Naidu | |
2003 | Daasa | Darshan, Amrutha | |
2004 | Sardaara | Darshan, Gurleen Chopra | |
2005 | Udees | Mayur Patel, Sonali Joshi | |
2005 | Shastri | Darshan, Manya | |
2006 | Thangigagi | Darshan, Poonam Bajwa | |
2008 | Gooli | Sudeep, Mamta Mohandas | |
2009 | Kencha | Prajwal Devaraj, Pragna Shetty | |
2009 | Hatrick Hodi Maga | Shiva Rajkumar, Nicolette Bird | |
2010 | Sugreeva | Shiva Rajkumar, Yagna Shetty | |
2011 | Paagal | P. N. Sathya, Pooja Gandhi | |
2011 | Jedarahalli | Krishnamurthy, Sushma | |
2014 | Shivajinagara | Duniya Vijay, Parul Yadav | |
2017 | Bangalore Underworld | Auditya | |
2018 | Mari Tiger | Vinod Prabhakar, Teju | |
As actor
Year | Film | Role | Notes |
---|---|---|---|
2002 | Dhruva | ||
2003 | Don | ||
2004 | Sardara | ||
2005 | Udees | ||
2006 | Thirupathi | ||
2006 | Ambi | ||
2007 | Arasu | ||
2008 | Bidda | ||
2008 | Chaitrada Chandrama | ||
2008 | Aakasha Gange | ||
2009 | Devru | ||
2009 | Kencha | ||
2009 | Preethse Preethse | ||
2010 | Chiru | ||
2010 | Krishnan Love Story | ||
2011 | Paagal | ||
2011 | Chennamma IPS | ||
2011 | Gun | ||
2013 | Ale | ||
2015 | Ram-Leela | ||
2016 | One Time | ||
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References
External links
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