Training 101
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Terms To Know
Terms To Know -
Anatomy and BiomechanicsAnatomy and Biomechanics
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Deciphering Training ConceptsDeciphering Training Concepts
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Exercise Order
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Exercise Selection
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Set/Rep Prescription
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Tempo
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Rest Periods
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Intent
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Recommendations, Cues and Details
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Range-of-Motion (ROM)
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Failure and IntensityTypes of Failure
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Modulators of Intensity2 Topics
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Warming Up and Cooling DownGeneral Warm-Ups
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Specific Warm-Ups
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Feeder Sets
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Warm-Up Sets
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Cooling Down
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Biofeedback
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Progression ModelsProgression Models
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Linear Progression
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Double Progression
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Triple Progression
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Volume Progression
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Technical Progression
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Neurological Progression
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Modifying The PlanModifying the Plan
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Injury/Pain
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Unavailable Equipment
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Changing Order of Exercises
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Short on Time
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Bad Workouts
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Different Gyms/Equipment
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Intentional and Unprogrammed Rest Days
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Unintentional and Unprogrammed Rest Days
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Plateaus and SetbacksPlateaus and Setbacks
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Injury
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Sickness
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Consistently Poor Biofeedback
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Missing Workouts
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Stalled Progress
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Recovery StrategiesRecovery Strategies
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Caloric Balance
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Sleep
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Stress Management
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Light Cardio
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Foam Rolling
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Stretching
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Cold Therapy
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Heat Therapy
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Contrast Therapy
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DeloadingDeloading
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When To Deload5 Topics
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How To Deload5 Topics
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What’s Next?Assess Progress
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Run It Back
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Modify
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Beginning The Next Phase
Quizzes
Participants 350
Before we can decide how to move forward with our training, we must be able to objectively look at how well we progressed during the previous mesocycle.
We need to be able to filter what worked well (thus, can potentially remain in the program) from that which was a flop (thus, needs to be replaced ASAP).
It is crucial to look at quantitative data — such as reps achieved and loads used — to track how well we are utilizing progressive overload to drive our muscle/strength gains.
Additionally, we should be evaluating qualitative data — such as measures of biofeedback — to add context and see if they validate or contradict the quantitative story.
This process should pull data from not just the preceding training but also from the accumulation of information that we have (hopefully) been tracking for months, if not years.