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New EDRM Pricing Model




Lawyer Solutions Group is moving the pieces to the EDRM puzzle
The Old EDRM Model
The Old EDRM Model (e-Discovery Reference Model) resulted in a very
significant portion of the expense being apportioned to the processing,
review and analysis of ESI.
How do we reduce these costs?
By inventing a new model! In the new model most of the work is done in-place
during the collection phase. This models appraisal results in significant savings in
terms of time, resources and cost. If litigation expenses are going to be reduced
your can’t approach e-Discovery with a just give me everything perspective.




                                                        Planning is imperative!
The Old EDRM Pricing Model
• Based on Per GB pricing

• Emails charged at uncompressed price

• Charged for re-runs (Keywords did not produce the
  needed information)

• Keywords left out

• Always $$$ surprises on the backend.(Clients not
  happy, your not happy)
The New EDRM Pricing Model
• Per *Case or Subscription pricing
• Planning done on the front end (Who, What,
  When, Where & Why)
• Data reduced during the collection phase
• Logical in-place interrogation of the data upfront
• No Surprises, No Charge for Re-runs, No charge
  for adding keywords and re-categorizing data,
  Cost up-front before you start.
• Unlimited Data processed per case
  *Case pricing (Flat fee) & Subscription pricing has a license fee and a $25 per GB export fee.
Cost Comparison on 100GB PST

       Old Pricing                             New Pricing
•e.g. 100 GB Compressed = 150GB          •e.g. 100 GB Compressed = 150GB
•Pre-Processing $100 per GB =            •No Pre-Processing (One Process)
$15,000.00                               •Native Processing $1000 = $1000 No
•After Pre-Processing 120GB Left         Surprises!
•Native Processing $250 per GB =         •Tech Time Est.$150 x 16 hrs = $2400
$30,000.00                               •Est. Total Cost $3,400.00
•Est. Total Cost $45,000.00




        This new pricing reduces upfront eDiscovery cost by over 75%
Overall Savings

$45,000 Old Way
  -3,400 New Way
$41,600 Savings
Company Information




  Lawyer Solutions Group 900 S. Fourth St., #100, Las Vegas, NV 89101
          Lawyer Solutions Group an IES & SOS Litigation Company
T:1.800.421.7718           C: 702.308.0296                O:702.430.5003

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New e-Discovery Reference Model Pricing

  • 1. New EDRM Pricing Model Lawyer Solutions Group is moving the pieces to the EDRM puzzle
  • 2. The Old EDRM Model The Old EDRM Model (e-Discovery Reference Model) resulted in a very significant portion of the expense being apportioned to the processing, review and analysis of ESI.
  • 3. How do we reduce these costs? By inventing a new model! In the new model most of the work is done in-place during the collection phase. This models appraisal results in significant savings in terms of time, resources and cost. If litigation expenses are going to be reduced your can’t approach e-Discovery with a just give me everything perspective. Planning is imperative!
  • 4. The Old EDRM Pricing Model • Based on Per GB pricing • Emails charged at uncompressed price • Charged for re-runs (Keywords did not produce the needed information) • Keywords left out • Always $$$ surprises on the backend.(Clients not happy, your not happy)
  • 5. The New EDRM Pricing Model • Per *Case or Subscription pricing • Planning done on the front end (Who, What, When, Where & Why) • Data reduced during the collection phase • Logical in-place interrogation of the data upfront • No Surprises, No Charge for Re-runs, No charge for adding keywords and re-categorizing data, Cost up-front before you start. • Unlimited Data processed per case *Case pricing (Flat fee) & Subscription pricing has a license fee and a $25 per GB export fee.
  • 6. Cost Comparison on 100GB PST Old Pricing New Pricing •e.g. 100 GB Compressed = 150GB •e.g. 100 GB Compressed = 150GB •Pre-Processing $100 per GB = •No Pre-Processing (One Process) $15,000.00 •Native Processing $1000 = $1000 No •After Pre-Processing 120GB Left Surprises! •Native Processing $250 per GB = •Tech Time Est.$150 x 16 hrs = $2400 $30,000.00 •Est. Total Cost $3,400.00 •Est. Total Cost $45,000.00 This new pricing reduces upfront eDiscovery cost by over 75%
  • 7. Overall Savings $45,000 Old Way -3,400 New Way $41,600 Savings
  • 8. Company Information Lawyer Solutions Group 900 S. Fourth St., #100, Las Vegas, NV 89101 Lawyer Solutions Group an IES & SOS Litigation Company T:1.800.421.7718 C: 702.308.0296 O:702.430.5003