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The Rocking-Horse Winner byD. H. Lawrence (1885-1930)Word Count: 6015 There was a woman who was beautiful, who started with all the advantages, yet she had no luck. She married for love, and the love turned to dust. She had bonny children, yet she felt they had been thrust upon her, and she could not love them. They looked at her coldly, as if they were finding fault with her. And hurriedly she felt she must cover up some fault in herself. Yet what it was that she must cover up she never knew. Nevertheless, when her children were present, she always felt the centre of her heart go hard. This troubled her, and in her manner she was all the more gentle and anxious for her children, as if she loved them very much. Only she herself knew that at the centre of her heart was a hard little place that could not feel love, no, not for anybody. Everybody else said of her: "She is such a good mother. She adores her children." Only she herself, and her children themselves, knew it was not so. They read it in each other's eyes. There were a boy and two little girls. They lived in a pleasant house, with a garden, and they had discreet servants, and felt themselves superior to anyone in the neighbourhood. Although they lived in style, they felt always an anxiety in the house. There was never enough money. The mother had a small income, and the father had a small income, but not nearly enough for the social position which they had to keep up. The father went into town to some office. But though he had good prospects, these prospects never materialised. There was always the grinding sense of the shortage of money, though the style was always kept up. At last the mother said: "I will see if I can't make something." But she did not know where to begin. She racked her brains, and tried this thing and the other, but could not find anything successful. The failure made deep lines come into her face. Her children were growing up, they would have to go to school. There must be more money, there must be more money. The father, who was always very handsome and expensive in his tastes, seemed as if he never would be able to do anything worth doing. And the mother, who had a great belief in herself, did not succeed any better, and her tastes were just as expensive. And so the house came to be haunted by the unspoken phrase: There must be more money! There must be more money! The children could hear it all the time though nobody said it aloud. They heard it at Christmas, when the expensive and splendid toys filled the nursery. Behind the shining modern rocking-horse, behind the smart doll's house, a voice would start whispering: "There must be more money! There must be more money!" And the children would stop playing, to listen for a moment. They would look into each other's eyes, to see if they had all heard. And each one saw in the eyes of the other two that they too had heard. "There must be more money! There must be more money!" It came whispering from the ...
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. H. Lawrence: THE ROCKING-HORSE WINNER 1933 D. H. Lawrence There was a woman who was beautiful, who started with all the advantages, yet she had no luck. She married for love, and the love turned to dust. She had bonny children, yet she felt they had been thrust upon her, and she could not love them. They looked at her coldly, as if they were finding fault with her. And hurriedly she felt she must cover up some fault in herself. Yet what it was that she must cover up she never knew. Nevertheless, when her children were present, she always felt the center of her heart go hard. This troubled her, and in her manner she was all the more gentle and anxious for her children, as if she loved them very much. Only she herself knew that at the center of her heart was a hard little place that could not feel love, no, not for anybody. Everybody else said of her: “She is such a good mother. She adores her children.” Only she herself, and her children themselves, knew it was not so. They read it in each other’s eyes. There were a boy and two little girls. They lived in a pleasant house, with a garden, and they had discreet servants, and felt themselves superior to anyone in the neighborhood. Although they lived in style, they felt always an anxiety in the house. There was never enough money. The mother had a small income, and the father had a small income, but not nearly enough for the social position which they had to keep up. The father went into town to some office. But though he had good prospects, these prospects never materialized. There was always the grinding sense of the shortage of money, though the style was always kept up. At last the mother said: “I will see if I can’t make something.” But she did not know where to begin. She racked her brains, and tried this thing and the other, but could not find anything successful. The failure made deep lines come into her face. Her children were growing up, they would have to go to school. There must be more money, there must be more money. The father, who was always very handsome and expensive in his tastes, seemed as if he never would be able to do anything worth doing. And the mother, who had a great belief in herself, did not succeed any better, and her tastes were just as expensive. And so the house came to be haunted by the unspoken phrase: There must be more money! There must be more money! The children could hear it all the time, though nobody said it aloud. They heard it at Christmas, when the expensive and splendid toys filled the nursery. Behind the shining modern rocking-horse, behind the smart doll’s house, a voice would start whispering: “There must be more money! There must be more money!” And the children would stop playing, to listen for a moment. They would look into each other’s eyes, to see if they had all heard. And each one saw in the eyes of the other two that they too had heard. “There must be more money! There must be more money!” 5 It came whispering from the springs ...
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The Rocking-Horse Winner byD. H. Lawrence (1885-1930)Word Count: 6015 There was a woman who was beautiful, who started with all the advantages, yet she had no luck. She married for love, and the love turned to dust. She had bonny children, yet she felt they had been thrust upon her, and she could not love them. They looked at her coldly, as if they were finding fault with her. And hurriedly she felt she must cover up some fault in herself. Yet what it was that she must cover up she never knew. Nevertheless, when her children were present, she always felt the centre of her heart go hard. This troubled her, and in her manner she was all the more gentle and anxious for her children, as if she loved them very much. Only she herself knew that at the centre of her heart was a hard little place that could not feel love, no, not for anybody. Everybody else said of her: "She is such a good mother. She adores her children." Only she herself, and her children themselves, knew it was not so. They read it in each other's eyes. There were a boy and two little girls. They lived in a pleasant house, with a garden, and they had discreet servants, and felt themselves superior to anyone in the neighbourhood. Although they lived in style, they felt always an anxiety in the house. There was never enough money. The mother had a small income, and the father had a small income, but not nearly enough for the social position which they had to keep up. The father went into town to some office. But though he had good prospects, these prospects never materialised. There was always the grinding sense of the shortage of money, though the style was always kept up. At last the mother said: "I will see if I can't make something." But she did not know where to begin. She racked her brains, and tried this thing and the other, but could not find anything successful. The failure made deep lines come into her face. Her children were growing up, they would have to go to school. There must be more money, there must be more money. The father, who was always very handsome and expensive in his tastes, seemed as if he never would be able to do anything worth doing. And the mother, who had a great belief in herself, did not succeed any better, and her tastes were just as expensive. And so the house came to be haunted by the unspoken phrase: There must be more money! There must be more money! The children could hear it all the time though nobody said it aloud. They heard it at Christmas, when the expensive and splendid toys filled the nursery. Behind the shining modern rocking-horse, behind the smart doll's house, a voice would start whispering: "There must be more money! There must be more money!" And the children would stop playing, to listen for a moment. They would look into each other's eyes, to see if they had all heard. And each one saw in the eyes of the other two that they too had heard. "There must be more money! There must be more money!" It came whispering from the ...
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The Revolt of “Mother” “Father!” “What is it?” “What are them men diggin’ over there in the field for?” There was a sudden dropping and enlarging of the lower part of the old man’s face, as if some heavy weight had settled therein; he shut his mouth tight, and went on harnessing the great bay mare. He hustled the collar on to her neck with a jerk. “Father!” The old man slapped the saddle upon the mare’s back. “Look here, father, I want to know what them men are diggin’ over in the field for, an’ I’m goin’ to know.” “I wish you’d go into the house, mother, an’ ’tend to your own affairs,” the old man said then. He ran his words together, and his speech was almost as inarticulate as a growl. But the woman understood; it was her most native tongue. “I ain’t goin’ into the house till you tell me what them men are doin’ over there in the field,” said she. Then she stood waiting. She was a small woman, short and straight-waisted like a child in her brown cotton gown. Her forehead was mild and benevolent between the smooth curves of gray hair; there were meek downward lines about her nose and mouth; but her eyes, fixed upon the old man, looked as if the meekness had been the result of her own will, never of the will of another. They were in the barn, standing before the wide open doors. The spring air, full of the smell of growing grass and unseen blossoms, came in their faces. The deep yard in front was littered with farm wagons and piles of wood; on the edges, close to the fence and the house, the grass was a vivid green, and there were some dandelions. The old man glanced doggedly at his wife as he tightened the last buckles on the harness. She looked as immovable to him as one of the rocks in his pasture-land, bound to the earth with generations of blackberry vines. He slapped the reins over the horse, and started forth from the barn. “Father!” said she. The old man pulled up. “What is it?” “I want to know what them men are diggin’ over there in that field for.” “They’re diggin’ a cellar, I s’pose, if you’ve got to know.” “A cellar for what?” “A barn.” “A barn? You ain’t goin’ to build a barn over there where we was goin’ to have a house, father?” The old man said not another word. He hurried the horse into the farm wagon, and clattered out of the yard, jouncing as sturdily on his seat as a boy. The woman stood a moment looking after him, then she went out of the barn across a corner of the yard to the house. The house, standing at right angles with the great barn and a long reach of sheds and out-buildings, was p. 663 infinitesimal compared with them. It was scarcely as commodious for people as the little boxes under the barn eaves were for doves. A pretty girl’s face, pink and delicate as a flower, was looking out of one of the house windows. She was watching three men who were digging over in the field which bounded the yard near the road line. She turned quietly when the woman entered. “What are they digging for, mother?” said she. “Did he te ...
The Revolt of Mother”Father!”What is it”What are them.docx
The Revolt of Mother”Father!”What is it”What are them.docx
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The Revolt of Mother”Father!”What is it”What are them.docx
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A rupee earned
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Bertolini Sara Smith Kalayah Sargeant Blake Bowman
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